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Author SHA1 Message Date
javadcc_mac f9b8f297b4 Fix EVO1 LIBERO rollout processors 2026-06-09 15:10:10 +08:00
javadcc_mac 95527f6051 Merge remote-tracking branch 'upstream/main' into codex/add-evo1-policy 2026-05-12 17:40:59 +08:00
javadcc_mac 407ee867b9 docs(evo1): format results table 2026-05-12 17:40:18 +08:00
Steven Palma 26ff40ddd7 chore(deps): cap torch ceiling at <2.12, pin Linux wheels to cu128 (#3570)
* chore(deps): ceiling + cuda

* ci: bump cuda version docker image

* ci: add cpu wheel to release workflow

* chore(deps): update uv.lock

* docs: update installation with cuda note
2026-05-11 19:47:55 +02:00
javadcc_mac a5e6409985 fix(evo1): finalize policy guide alignment 2026-05-11 21:51:41 +08:00
Maxime Ellerbach 6d269b28c8 docs(omx): adding some examples and scripts (#3566)
* docs(omx): adding some examples and scripts

* cleaning up and reviewing the cli args

* adding __init__.py to example folder, adjusting the examples

* adding reference to pretrained act policy

* moving `.send_action` before `dataset.add_frame` for consistency

Co-authored-by: Copilot Autofix powered by AI <175728472+Copilot@users.noreply.github.com>
Signed-off-by: Maxime Ellerbach <maxime@ellerbach.net>

* adjusting docstring

Co-authored-by: Copilot Autofix powered by AI <175728472+Copilot@users.noreply.github.com>
Signed-off-by: Maxime Ellerbach <maxime@ellerbach.net>

* adressing hardcoded dataset fps

* removed init as it worked without

---------

Signed-off-by: Maxime Ellerbach <maxime@ellerbach.net>
2026-05-11 15:36:32 +02:00
Steven Palma b607c8458e docs: add policy & compute guide (#3534)
* docs(policy): contributing a policy guide

* docs(training): HW compute guide

* chore(docs): add to readme and index

* Apply suggestions from code review

Co-authored-by: Haoming Song <1847575517@qq.com>
Signed-off-by: Steven Palma <imstevenpmwork@ieee.org>

* chore(docs): slight improvements

* refactor(docs): consolidate add policy docs

* chore(style): fix pre-commit

---------

Signed-off-by: Steven Palma <imstevenpmwork@ieee.org>
Co-authored-by: Haoming Song <1847575517@qq.com>
2026-05-11 15:19:12 +02:00
Jash Shah 9e83510c99 fix(datasets): close file handle on VideoDecoder init failure in cache (#3542)
If VideoDecoder() raises during initialization, the fsspec file handle
was leaked since it was opened via __enter__() but never closed on the
exception path. Now explicitly closes the handle before re-raising.
2026-05-10 17:30:37 +02:00
javadcc_mac 1c9fbba9a9 chore(evo1): align with policy contribution guide conventions
- Add `src/lerobot/policies/evo1/README.md` symlink into `docs/source/evo1.mdx`
  to match the in-tree README convention (mirroring the EO-1 layout).
- Convert `transformers` import in `internvl3_embedder.py` to the standard
  `TYPE_CHECKING + _transformers_available` two-step gating used by other
  optional-backbone policies (e.g. diffusion). The previous lazy-in-`__init__`
  import was functionally equivalent for runtime gating but didn't expose the
  real symbols to type checkers.
- Add `lerobot[evo1]` to the `all` extra in `pyproject.toml` so
  `pip install 'lerobot[all]'` keeps installing every optional policy.

Per the guidance in https://moon-ci-docs.huggingface.co/docs/lerobot/pr_3534/en/contributing_a_policy.
2026-05-10 23:14:23 +08:00
javadcc_mac 6a1b5ceb9d Merge remote-tracking branch 'upstream/main' into codex/add-evo1-policy
# Conflicts:
#	uv.lock
2026-05-10 22:48:17 +08:00
javadcc_mac daa4c4dd30 chore(lock): regenerate uv.lock for evo1 extra
Adds the `evo1` entry to `[package.metadata.requires-dist]` and the
`provides-extras` list so that `uv sync --locked --extra test` (used by
fast_tests.yml) no longer reports the lockfile as stale.

Generated with `uv 0.8.0` (matching `UV_VERSION` in fast_tests.yml).
The non-evo1 marker tweaks are produced by `uv lock` re-resolving the
existing dep graph and are not introduced by this PR.
2026-05-10 22:43:26 +08:00
Anthony Shoumikhin 1f7b03f5f2 chore(deps): allow torch 2.11/2.12 and fix autocast deprecation (#3435)
* chore(deps): allow torch 2.11/2.12 and fix autocast deprecation

- Bump torch to >=2.7,<2.13 (was <2.11), torchvision to <0.28 (was <0.26),
  and torchcodec to <0.13 (was <0.11) to allow installs against the latest
  stable torch 2.11 and the upcoming 2.12 line.
- Replace removed torch.get_autocast_gpu_dtype() with torch.get_autocast_dtype("cuda")
  in Florence2 and Qwen2.5-VL-MoE FlashAttention paths (the former is removed in 2.11+).
- Refresh uv.lock for the new resolution (torch 2.11.0+cu130, torchvision 0.26.0+cu130,
  torchcodec 0.11.1, full CUDA 13 stack).

Verified locally with `uv sync --locked` from a clean .venv and the lerobot
test suite (pytest -n 8 --dist=loadfile --timeout=300). Failure set is
identical to the pre-bump baseline: 18 pre-existing failures
(test_sac_policy*, test_pi0_rtc*, test_pi05_rtc*, test_replay_buffer*),
0 new, 0 fixed.

AI assistance: this change was authored with Claude Code per AI_POLICY.md.

* fix(policies): use device-agnostic autocast dtype lookup

Pass query_states.device.type to torch.get_autocast_dtype() instead of
hardcoding 'cuda', so the cast matches the active autocast context when
running under CPU/MPS/XPU autocast.

---------

Co-authored-by: Steven Palma <imstevenpmwork@ieee.org>
2026-05-10 13:05:35 +02:00
Yiming Wang ff992a7a1d Merge branch 'main' into codex/add-evo1-policy 2026-05-10 18:54:35 +08:00
Steven Palma cb8edf17e6 chore(dependencies): update uv.lock (#3475) 2026-05-10 12:24:22 +02:00
Steven Palma 5699f6cbf4 chore(ci): disable auto-stale (#3550) 2026-05-10 11:49:31 +02:00
javadcc_mac 48269dddb3 fix(evo1): infer batch size after normalizing image dims
`_collect_image_batches` read `batch_size = batch[camera_keys[0]].shape[0]`
before normalizing per-camera tensors to `(B, C, H, W)`. For an unbatched
`(C, H, W)` input (which the function tries to support via the `image.dim() == 3`
branch), this picked up the channel count `C` instead of the real batch size,
making the subsequent per-sample loop iterate `C` times and indexing go
out of bounds.

Normalize each camera tensor up-front, then read `batch_size` from the
normalized batch dim. Adds `test_collect_image_batches_handles_unbatched_chw`
covering the regression.

Reported by Copilot review on huggingface/lerobot#3545.
2026-05-10 11:29:23 +08:00
javadcc_mac 8df8d3d866 feat(policies): add EVO1 policy 2026-05-09 21:39:19 +08:00
masato-ka 0e6114ac36 fix(train): restrict legacy RA-BC migration to JSON checkpoints only (#3490)
* fix(train): restrict legacy RA-BC migration to JSON checkpoints only

_migrate_legacy_rabc_fields was called for all config files, causing
json.load to raise DecodeError when a YAML/TOML config was passed to
lerobot-train for a new training run. Guard the block with an
.endswith(".json") check so migration only runs when resuming from
a JSON checkpoint.
2026-05-08 20:27:01 +02:00
Steven Palma c8ce413d73 fix(robots): allign lekiwi default with so100 use_degrees (#3531) 2026-05-07 17:52:34 +02:00
Pepijn 82dffde7fa fix(ci): speed up multi-task benchmark evals (parallelize + cap VLABench steps) (#3529)
* fix(ci): run multi-task benchmark evals 5-at-a-time in parallel

The eval script supports running tasks concurrently via a
ThreadPoolExecutor (env.max_parallel_tasks). Apply it to the four
multi-task benchmark CI jobs (RoboTwin, RoboCasa, RoboMME, LIBERO-plus
— 8-10 tasks/task_ids each) so they finish in ~2 waves of 5 instead of
running sequentially. Single-task jobs (Libero, MetaWorld, RoboCerebra)
are unchanged.

* fix(ci): cap VLABench smoke eval at 50 steps per task

VLABench's default episode_length is 500 steps; with 10 tasks at ~1 it/s
the smoke eval took ~80 minutes of rollouts on top of the image build.
The eval is a pipeline smoke test (running_success_rate stays at 0% on
this short rollout anyway), so we don't need full episodes — cap each
task at 50 steps to bring total rollout time down ~10x.

* fix(ci): run VLABench tasks 5-at-a-time in parallel

The eval script already supports running multiple tasks concurrently via
a ThreadPoolExecutor (env.max_parallel_tasks). Set it to 5 so the 10
VLABench tasks finish in ~2 waves instead of running sequentially.
2026-05-07 13:37:16 +02:00
Ville Kuosmanen eaf0218bc8 feat(policy): use pretrained vision encoder weights by default for diffusion and vqbet (#3202)
* feat: add pretrained vision encoder weights for diffusion and vqbet

* fix test by re-generating artifacts

---------

Co-authored-by: Steven Palma <imstevenpmwork@ieee.org>
2026-05-07 12:10:38 +02:00
Pepijn a0e52d52fe fix(ci): bump robotwin benchmark image to CUDA 12.6 (#3525)
The robotwin benchmark Dockerfile still installed cuda-nvcc-12-4 and
cuda-cudart-dev-12-4 after #3505 upgraded the base image to CUDA 12.6.3
on Ubuntu 24.04. Those packages aren't available in the ubuntu2404 CUDA
repo, so the build failed at apt-get install. Bumping both to -12-6 to
match the base image.
2026-05-07 11:11:12 +02:00
Haoming Song e99c55af4b feat(policies): add EO-1 model (#3403)
* feat(policies): add EO-1 model

* chore(eo1): adjust policy_eo1_README.md to to avoid duplicate with eo1.mdx

* chore(eo1): remove policy_eo1_README.md, link eo1.mdx in policy folder

---------

Co-authored-by: Pepijn <138571049+pkooij@users.noreply.github.com>
2026-05-06 18:01:16 +02:00
Steven Palma 408e0ca763 fix(robots): openarm features with openarmmini (#3524) 2026-05-06 17:03:09 +02:00
Maxime Ellerbach ce24063efd feat(dagger): adding smooth handover (#3506)
* feat(dagger): adding smooth handover


* update docstring


* small phase fix and documenting potential issues


* cleaning up
2026-05-05 14:44:32 +02:00
Steven Palma 82934719db chore(dep): bump transformers to 5.4.0 (#3374)
* fix(deps): breaking change from transformers 5.4.0

* Update src/lerobot/policies/xvla/modeling_florence2.py

Signed-off-by: Maxime Ellerbach <maxime@ellerbach.net>

* Update src/lerobot/policies/wall_x/qwen_model/qwen2_5_vl_moe.py

Signed-off-by: Maxime Ellerbach <maxime@ellerbach.net>

* removing dataclass

* bumping transformers 5.4.0

* weird i can't even pass the test on main

* oops, typo

* chore(style): fix pre-commit run

* chore: update uv.lock

* seems like a weird numerical precision issue, lets check in runners

* chore: update uv.lock

* chore(dependecies): adjust transformers version

* chore: update uv.lock

---------

Signed-off-by: Maxime Ellerbach <maxime@ellerbach.net>
Co-authored-by: Maximellerbach <maxime.ellerbach@huggingface.co>
Co-authored-by: raushan <raushan@huggingface.co>
2026-05-05 14:19:09 +02:00
Steven Palma 401a217597 chore(ci): increase time stale (#3507) 2026-05-04 22:35:16 +02:00
Steven Palma 40094b0464 chore(ci): upgrade docker internal (#3505) 2026-05-04 21:28:52 +02:00
Jash Shah fdbfc015a2 fix(peft): fix LoRA resume from Hub (PosixPath + double wrap) (#3485) 2026-05-04 10:52:37 +02:00
Haoming Song d656da8ccc fix(pi): keep training sampling outside compiled forwards (#3487)
Move PI0 and PI0.5 noise/time sampling into the policy wrappers so the compiled PyTorch cores receive them as tensor inputs.

This keeps Beta sampling out of torch.compile on MPS, avoiding aten::_sample_dirichlet compilation errors while preserving the CUDA training path.

Validation: .venv/bin/python -m pre_commit run --files src/lerobot/policies/pi0/modeling_pi0.py src/lerobot/policies/pi05/modeling_pi05.py; .venv/bin/python -m pytest -sv -rs tests/policies/pi0_pi05/test_pi0.py tests/policies/pi0_pi05/test_pi05.py tests/policies/pi0_pi05/test_pi0_rtc.py tests/policies/pi0_pi05/test_pi05_rtc.py

Co-authored-by: Pepijn <138571049+pkooij@users.noreply.github.com>
2026-04-30 13:21:17 +02:00
Khalil Meftah b5f65e5332 Expose sarm package API and ship reward model card template (#3477)
* chore: List lerobot_rewardmodel_modelcard_template.md in MANIFEST.in

* chore: export SARMConfig, SARMRewardModel, and make_sarm_pre_post_processors from rewards.sarm.
2026-04-29 16:17:16 +02:00
Khalil Meftah cd6b43ea7a fix(train): migrate legacy RA-BC fields in train config loading (#3480) 2026-04-29 16:17:00 +02:00
Steven Palma 2236bbe7a3 fix(rollout): propagate policy-specific CLI config paramaters (#3483)
Co-authored-by: Maxime Ellerbach <maxime.ellerbach@huggingface.co>
2026-04-29 16:13:10 +02:00
Maxime Ellerbach cb0a944941 refactor(datasets): replace untyped dict with typed DatasetInfo dataclass (#3472)
* refactor(datasets): replace untyped dict with typed DatasetInfo dataclass

Introduce typed DatasetInfo dataclass to replace untyped dict representation of info.json.

Changes:
- Add DatasetInfo dataclass with explicit fields and validation
- Implement __post_init__ for shape conversion (list ↔ tuple)
- Add dict-style compatibility layer (__getitem__, __setitem__, .get())
- Add from_dict() and to_dict() for JSON serialization
- Update io_utils to use load_info/write_info with DatasetInfo
- Update dataset utilities and metadata to use attribute access
- Remove aggregate.py dict-style field access
- Add tests fixture support for DatasetInfo

Benefits:
- Type safety with IDE auto-completion
- Validation at construction time
- Explicit schema documentation

* fix pre-commit

* update docstring inside DatasetInfo.from_dict()

* sorts the unknown to have deterministic output

Signed-off-by: Maxime Ellerbach <maxime@ellerbach.net>

* refactoring the last few old fieds


* fix crop dataset roi type mismatch


* use consistantly int for data and video_files_size_in_mb

---------

Signed-off-by: Maxime Ellerbach <maxime@ellerbach.net>
Co-authored-by: jjolla93 <jjolla93@gmail.com>
2026-04-28 18:40:30 +02:00
Khalil Meftah 8a3d64033f Reward models refactor (#3142)
* feat(rewards): add RewardModelConfig and PreTrainedRewardModel base classes

* refactor(rewards): migrate Classifier from policies/sac/reward_model/ to rewards/classifier/

* refactor(rewards): migrate SARM from policies/sarm/ to rewards/sarm/

* refactor(rewards): add rewards/factory.py and remove reward model code from policies/factory.py

* refactor(rewards): update imports and delete old reward model locations

* test(rewards): add reward model tests and update existing test imports

* fix(rewards): restore full Classifier and SARM implementations

* test(rewards): restore missing CUDA and mixed precision classifier processor tests

* refactor(lerobot_train.py): remove rabc specific configuration and replace it with a generic samplerweight class in lerobot_train

* refactor(lerobot_train.py): add missing sampling weight script

* linter + missing files

* add testing for sampl weighter

* revert some useless changes, improve typing

* update docs

* add automatic detection of the progress path

* remove type exp

* improve comment

* fix: move rabc.py to rewards/sarm/ and update import paths

* refactor(imports): update reward model imports to new module structure

* refactor(imports): update reward model imports to reflect new module structure

* refactor(imports): conditionally import pandas based on availability

* feat(configs): add reward_model field to TrainPipelineConfig and Hub fields to RewardModelConfig

* refactor(policies): remove reward model branches from policy factory and __init__

* refactor(rewards): expand __init__ facade and fix SARMConfig __post_init__ crash

* feat(train): route reward model training through rewards/factory instead of policies/factory

* refactor(train): streamline reward model training logic

* fix(rewards): ensure FileNotFoundError is raised for missing config_file

* refactor(train): update __get_path_fields__ to include reward_model for config loading

* refactor(classifier): remove redundant input normalization in predict_reward method

* fix(train): raise ValueError for non-trainable reward models in train function

* refactor(pretrained_rm): add model card template

* refactor(tests): reward models

* refactor(sarm): update reset method and remove unused action prediction methods

* refactor(wandb): differentiate tags for reward model and policy training in cfg_to_group function

* fix(train): raise ValueError for PEFT usage in reward model training

* refactor(rewards): enhance RewardModelConfig with device handling and delta indices properties

---------

Co-authored-by: Michel Aractingi <michel.aractingi@huggingface.co>
2026-04-28 17:56:24 +02:00
Steven Palma 03ee50e08f chore(ci): bump docs workflows (#3476) 2026-04-28 15:06:44 +02:00
Steven Palma ca87ccd941 feat(rollout): decouple policy deployment from data recording with new lerobot-rollout CLI (#3413)
* feat(scripts): lerobot-rollout

* fix(rollout) require dataset in dagger + use duration too

* fix(docs): dagger num_episodes

* test(rollout): fix expectations

* fix(rollout): features check

* fix(rollout): device and task propagation + feature pos + warn fps + move rename_map config

* docs(rollout): edit rename_map instructions

* chore(rollout): multiple minor improvements

* chore(rollout): address coments + minor improvements

* fix(rollout): enable default

* fix(tests): default value RTCConfig

* fix(rollout): robot_observation_processor and notify_observation at policy frequency instead of interpolator rate

Co-authored-by: Pepijn <138571049+pkooij@users.noreply.github.com>

* fix(rollout): prevent relativeactions with sync inference engine

Co-authored-by: Pepijn <138571049+pkooij@users.noreply.github.com>

* fix(rollout): rtc reanchor to non normalized state

Co-authored-by: Pepijn <138571049+pkooij@users.noreply.github.com>

* fix(rollout): fixing the episode length to use hwc (#3469)

also reducing default length to 5 minutes

* feat(rollout): go back to initial position is now a config

* fix(rollout): properly propagating video_files_size_in_mb to lerobot_dataset (#3470)

* chore(rollout): note about dagger correction stage

* chore(docs): update comments and docstring

* fix(test): move rtc relative out of rollout module

* fix(rollout): address the review comments

---------

Co-authored-by: Pepijn <138571049+pkooij@users.noreply.github.com>
Co-authored-by: Maxime Ellerbach <maxime.ellerbach@huggingface.co>
2026-04-28 00:57:35 +02:00
Steven Palma 77352c495c chore(dependencies): update uv.lock (#3437)
Co-authored-by: github-actions[bot] <github-actions[bot]@users.noreply.github.com>
2026-04-27 23:15:46 +02:00
Steven Palma 05a5223885 fix(pi): avoid peak RAM in PiGemma construction by freeing replaced submodules (#3454)
Co-Authored-By: Daiki Kamata <daiki.kamata@access-company.com>
Co-Authored-By: Jack Vial <jackvial@users.noreply.github.com>
Co-Authored-By: Ajay Anubolu <AjAnubolu@users.noreply.github.com>
Co-Authored-By: Finn F. <F-Fer@users.noreply.github.com>
2026-04-24 17:50:12 +02:00
Steven Palma 580d818aa9 fix(dataset): no default overwrite in lerobot tool recompute stats (#3452) 2026-04-24 15:07:19 +02:00
Steven Palma 587aa82021 fix(imports): realsense import name is platform dependent (#3451) 2026-04-24 12:55:38 +02:00
Chuyao Shen 12b88fce02 not use dataclass (#3414)
Co-authored-by: Pepijn <138571049+pkooij@users.noreply.github.com>
2026-04-24 11:26:59 +02:00
masato-ka fc6c94c82a fix(sarm): handle BaseModelOutputWithPooling from transformers 5.x in… (#3419)
* fix(sarm): handle BaseModelOutputWithPooling from transformers 5.x in CLIP encoding

In transformers 5.x, CLIPModel.get_image_features() and get_text_features()
return BaseModelOutputWithPooling instead of a plain torch.FloatTensor.
Added isinstance check to extract pooler_output when the return value is not
a tensor, maintaining backward compatibility with transformers 4.x.

Fixes AttributeError: 'BaseModelOutputWithPooling' object has no attribute 'detach'

* Adding assertion check for pooler_output of CLIP. This change is response to below comment.
https://github.com/huggingface/lerobot/pull/3419#discussion_r3112594387

* Adding assertion check for pooler_output of CLIP. This change is response to below comment. Change to simple check and rise
https://github.com/huggingface/lerobot/pull/3419#discussion_r3126953776

---------
Co-authored-by: Pepijn <138571049+pkooij@users.noreply.github.com>
2026-04-23 16:26:58 +02:00
Steven Palma 1add460678 fix(policy): loss normalization for padded actions in ACT, Diffusion, and MultiTaskDiT (#3442)
* Fix loss normalization for padded actions in ACT, Diffusion, and MultiTaskDiT

When action_is_pad masks out padded timesteps, the subsequent .mean()
still divides by the total element count (including zeroed-out padding),
underestimating the loss. With 60-70% padding this can cut the effective
gradient signal by 2-3x.

Replace mask-then-mean with mask-then-sum / valid-count for all three
affected policies. TDMPC is not affected because it sums over time
before averaging over batch.

Fixes #3353

* linting

Co-authored-by: whats2000 <60466660+whats2000@users.noreply.github.com>
Signed-off-by: Maxime Ellerbach <maxime@ellerbach.net>

* Update src/lerobot/policies/diffusion/modeling_diffusion.py

Co-authored-by: whats2000 <60466660+whats2000@users.noreply.github.com>
Signed-off-by: Steven Palma <imstevenpmwork@ieee.org>

* Update src/lerobot/policies/multi_task_dit/modeling_multi_task_dit.py

Co-authored-by: whats2000 <60466660+whats2000@users.noreply.github.com>
Signed-off-by: Steven Palma <imstevenpmwork@ieee.org>

* Update src/lerobot/policies/multi_task_dit/modeling_multi_task_dit.py

Co-authored-by: whats2000 <60466660+whats2000@users.noreply.github.com>
Signed-off-by: Steven Palma <imstevenpmwork@ieee.org>

* apply ACT loss normalization suggestion from review

Divide by num_valid (timesteps * action_dim) instead of just timesteps,
matching the diffusion/multi_task_dit fix. Addresses review from
@whats2000 (https://github.com/huggingface/lerobot/pull/3377#discussion_r3106845791).

* fix(test): update safetensor act

---------

Signed-off-by: Maxime Ellerbach <maxime@ellerbach.net>
Signed-off-by: Steven Palma <imstevenpmwork@ieee.org>
Co-authored-by: Yufeng He <40085740+he-yufeng@users.noreply.github.com>
Co-authored-by: Maxime Ellerbach <maxime@ellerbach.net>
Co-authored-by: whats2000 <60466660+whats2000@users.noreply.github.com>
2026-04-23 15:23:54 +02:00
Qi Jia 4587c2b648 fix xvla docs (#3291)
Co-authored-by: Qi Jia <kaufou@gmail.com>
Co-authored-by: Steven Palma <imstevenpmwork@ieee.org>
2026-04-23 14:50:32 +02:00
whats2000 2236cdb302 fix(smolvla): correct loss normalization for padded actions (#3434)
Apply the same per-scalar-mean fix to SmolVLA that #3377 landed for
ACT / Diffusion / MultiTaskDiT. The pre-patch form applies the
`action_is_pad` mask to zero out padded timesteps, then calls `.mean()`
(or `.mean(dim=(1, 2))`). Because `.mean()` divides by the total number
of elements including the zeroed padding, the loss is diluted by the
padding fraction.

Fixed by normalizing only over valid (non-padded) scalar entries:

    num_valid = ((~actions_is_pad).sum(...) * losses.shape[-1]).clamp_min(1)
    loss = losses.sum(...) / num_valid

`clamp_min(1)` preserves the all-padded-batch edge case (0/1 = 0). Both
reduction paths are updated. Behavior when `action_is_pad` is missing is
unchanged (`losses.mean()`).

Empirical A/B on aloha_sim_transfer_cube_human (chunk_size=40, batch=2,
30 steps, fixed seed, GB200) shows `loss_A / loss_B = 0.9672 (±0.088)` —
same direction and magnitude as PR #3377's `loss_A / loss_C ≈ 0.96` for
ACT. Heavier-padding recipes will see a larger gap.

Refs: #3353 (original report for ACT), #3377 (fix for the other three
policies).
2026-04-23 10:34:11 +02:00
149 changed files with 9560 additions and 1972 deletions
+6
View File
@@ -382,6 +382,7 @@ jobs:
--policy.path=\"\$ROBOTWIN_POLICY\" \
--env.type=robotwin \
--env.task=\"\$ROBOTWIN_TASKS\" \
--env.max_parallel_tasks=5 \
--eval.batch_size=1 \
--eval.n_episodes=1 \
--eval.use_async_envs=false \
@@ -482,6 +483,7 @@ jobs:
--policy.path=lerobot/smolvla_robocasa \
--env.type=robocasa \
--env.task=CloseFridge,OpenCabinet,OpenDrawer,TurnOnMicrowave,TurnOffStove,CloseToasterOvenDoor,SlideDishwasherRack,TurnOnSinkFaucet,NavigateKitchen,TurnOnElectricKettle \
--env.max_parallel_tasks=5 \
--eval.batch_size=1 \
--eval.n_episodes=1 \
--eval.use_async_envs=false \
@@ -693,6 +695,7 @@ jobs:
--env.task=\"\$ROBOMME_TASKS\" \
--env.dataset_split=test \
--env.task_ids=[0] \
--env.max_parallel_tasks=5 \
--eval.batch_size=1 \
--eval.n_episodes=1 \
--eval.use_async_envs=false \
@@ -800,6 +803,7 @@ jobs:
--env.type=libero_plus \
--env.task=\"\$LIBERO_PLUS_SUITE\" \
--env.task_ids=\"\$LIBERO_PLUS_TASK_IDS\" \
--env.max_parallel_tasks=5 \
--eval.batch_size=1 \
--eval.n_episodes=1 \
--eval.use_async_envs=false \
@@ -900,6 +904,8 @@ jobs:
--policy.path=lerobot/smolvla_vlabench \
--env.type=vlabench \
--env.task=select_fruit,select_toy,select_book,select_painting,select_drink,select_ingredient,select_billiards,select_poker,add_condiment,insert_flower \
--env.episode_length=50 \
--env.max_parallel_tasks=5 \
--eval.batch_size=1 \
--eval.n_episodes=1 \
--eval.use_async_envs=false \
@@ -33,7 +33,7 @@ jobs:
github.event.workflow_run.event == 'pull_request' &&
github.event.workflow_run.conclusion == 'success' &&
github.repository == 'huggingface/lerobot'
uses: huggingface/doc-builder/.github/workflows/upload_pr_documentation.yml@9ad2de8582b56c017cb530c1165116d40433f1c6 # main
uses: huggingface/doc-builder/.github/workflows/upload_pr_documentation.yml@2430c1ec91d04667414e2fa31ecfc36c153ea391 # main
with:
package_name: lerobot
secrets:
+2 -2
View File
@@ -55,7 +55,7 @@ jobs:
github.repository == 'huggingface/lerobot'
permissions:
contents: read
uses: huggingface/doc-builder/.github/workflows/build_main_documentation.yml@90b4ee2c10b81b5c1a6367c4e6fc9e2fb510a7e3 # main
uses: huggingface/doc-builder/.github/workflows/build_main_documentation.yml@2430c1ec91d04667414e2fa31ecfc36c153ea391 # main
with:
commit_sha: ${{ github.sha }}
package: lerobot
@@ -78,7 +78,7 @@ jobs:
permissions:
contents: read
pull-requests: write
uses: huggingface/doc-builder/.github/workflows/build_pr_documentation.yml@90b4ee2c10b81b5c1a6367c4e6fc9e2fb510a7e3 # main
uses: huggingface/doc-builder/.github/workflows/build_pr_documentation.yml@2430c1ec91d04667414e2fa31ecfc36c153ea391 # main
with:
commit_sha: ${{ github.event.pull_request.head.sha }}
pr_number: ${{ github.event.number }}
+2 -1
View File
@@ -152,13 +152,14 @@ jobs:
BASE_VERSION="${VERSION%%-*}"
echo "Installing pre-release version $BASE_VERSION from TestPyPI..."
uv pip install \
--torch-backend cpu \
--index-url https://test.pypi.org/simple/ \
--extra-index-url https://pypi.org/simple \
--index-strategy unsafe-best-match \
"lerobot[all]==$BASE_VERSION"
else
echo "Installing release version $VERSION from PyPI..."
uv pip install "lerobot[all]==$VERSION"
uv pip install --torch-backend cpu "lerobot[all]==$VERSION"
fi
- name: Check lerobot version
run: uv run python -c "import lerobot; print(lerobot.__version__)"
+8 -8
View File
@@ -19,19 +19,19 @@ on:
workflow_dispatch:
# Runs at 02:00
schedule:
- cron: "0 2 * * *"
# schedule:
# - cron: "0 2 * * *"
env:
CLOSE_ISSUE_MESSAGE: >
This issue was closed because it has been stalled for 14 days with no activity.
This issue was closed because it has been stalled for 30 days with no activity.
Feel free to reopen if is still relevant, or to ping a collaborator if you have any questions.
CLOSE_PR_MESSAGE: >
This PR was closed because it has been stalled for 21 days with no activity.
This PR was closed because it has been stalled for 30 days with no activity.
Feel free to reopen if is still relevant, or to ping a collaborator if you have any questions.
WARN_ISSUE_MESSAGE: >
This issue has been automatically marked as stale because it has not had
recent activity (6 months). It will be closed if no further activity occurs.
recent activity (1 year). It will be closed if no further activity occurs.
Any change, comment or update to this issue will reset this count.
Thank you for your contributions.
WARN_PR_MESSAGE: >
@@ -59,10 +59,10 @@ jobs:
stale-pr-label: stale
exempt-issue-labels: never-stale
exempt-pr-labels: never-stale
days-before-issue-stale: 180
days-before-issue-close: 14
days-before-issue-stale: 365
days-before-issue-close: 30
days-before-pr-stale: 365
days-before-pr-close: 21
days-before-pr-close: 30
delete-branch: true
close-issue-message: ${{ env.CLOSE_ISSUE_MESSAGE }}
close-pr-message: ${{ env.CLOSE_PR_MESSAGE }}
+2
View File
@@ -232,6 +232,8 @@ Match the policy to the user's **GPU memory** and **time budget**. Numbers below
All policies typically train for **510 epochs** (see §7).
> **Human-facing version:** the [Compute Hardware Guide](./docs/source/hardware_guide.mdx) reuses the table below and adds a cloud-GPU tier guide and a Hugging Face Jobs pointer.
| Policy | Batch | Update (ms) | Peak GPU mem (GB) | Best for |
| ----------- | ----: | ----------: | ----------------: | ------------------------------------------------------------------------------------------------ |
| `act` | 4 | **83.9** | **0.94** | First-time users, laptops, single-task. Fast and reliable. |
+1
View File
@@ -1,3 +1,4 @@
include src/lerobot/templates/lerobot_modelcard_template.md
include src/lerobot/templates/lerobot_rewardmodel_modelcard_template.md
include src/lerobot/datasets/card_template.md
include src/lerobot/envs/metaworld_config.json
+1 -1
View File
@@ -109,7 +109,7 @@ lerobot-train \
Similarly to the hardware, you can easily implement your own policy & leverage LeRobot's data collection, training, and visualization tools, and share your model to the HF Hub
For detailed policy setup guides, see the [Policy Documentation](https://huggingface.co/docs/lerobot/bring_your_own_policies).
For detailed policy setup guides, see the [Policy Documentation](https://huggingface.co/docs/lerobot/bring_your_own_policies). For GPU/RAM requirements and expected training time per policy, see the [Compute Hardware Guide](https://huggingface.co/docs/lerobot/hardware_guide).
## Inference & Evaluation
+1 -1
View File
@@ -35,7 +35,7 @@ USER root
ARG ROBOTWIN_SHA=0aeea2d669c0f8516f4d5785f0aa33ba812c14b4
RUN apt-get update \
&& apt-get install -y --no-install-recommends \
cuda-nvcc-12-4 cuda-cudart-dev-12-4 \
cuda-nvcc-12-8 cuda-cudart-dev-12-8 \
libvulkan1 vulkan-tools \
&& mkdir -p /usr/share/vulkan/icd.d \
&& echo '{"file_format_version":"1.0.0","ICD":{"library_path":"libGLX_nvidia.so.0","api_version":"1.3.0"}}' \
+7 -11
View File
@@ -18,9 +18,8 @@
# docker build -f docker/Dockerfile.internal -t lerobot-internal .
# Configure the base image for CI with GPU access
# TODO(Steven): Bump these versions
ARG CUDA_VERSION=12.4.1
ARG OS_VERSION=22.04
ARG CUDA_VERSION=12.8.1
ARG OS_VERSION=24.04
FROM nvidia/cuda:${CUDA_VERSION}-base-ubuntu${OS_VERSION}
# Define Python version argument
@@ -36,16 +35,13 @@ ENV DEBIAN_FRONTEND=noninteractive \
# Install Python, system dependencies, and uv (as root)
RUN apt-get update && apt-get install -y --no-install-recommends \
software-properties-common build-essential git curl \
libglib2.0-0 libgl1-mesa-glx libegl1-mesa ffmpeg \
build-essential git curl \
libglib2.0-0 libgl1 libegl1 ffmpeg \
libusb-1.0-0-dev speech-dispatcher libgeos-dev portaudio19-dev \
cmake pkg-config ninja-build \
&& add-apt-repository -y ppa:deadsnakes/ppa \
&& apt-get update \
&& apt-get install -y --no-install-recommends \
python${PYTHON_VERSION} \
python${PYTHON_VERSION}-venv \
python${PYTHON_VERSION}-dev \
python${PYTHON_VERSION} \
python${PYTHON_VERSION}-venv \
python${PYTHON_VERSION}-dev \
&& curl -LsSf https://astral.sh/uv/install.sh | sh \
&& mv /root/.local/bin/uv /usr/local/bin/uv \
&& useradd --create-home --shell /bin/bash user_lerobot \
+11 -5
View File
@@ -8,7 +8,7 @@
- local: il_robots
title: Imitation Learning for Robots
- local: bring_your_own_policies
title: Bring Your Own Policies
title: Adding a Policy
- local: integrate_hardware
title: Bring Your Own Hardware
- local: hilserl
@@ -24,6 +24,12 @@
- local: rename_map
title: Using Rename Map and Empty Cameras
title: "Tutorials"
- sections:
- local: hardware_guide
title: Compute Hardware Guide
- local: torch_accelerators
title: PyTorch accelerators
title: "Compute & Hardware"
- sections:
- local: lerobot-dataset-v3
title: Using LeRobotDataset
@@ -47,6 +53,10 @@
title: π₀-FAST (Pi0Fast)
- local: pi05
title: π₀.₅ (Pi05)
- local: eo1
title: EO-1
- local: evo1
title: EVO1
- local: groot
title: NVIDIA GR00T N1.5
- local: xvla
@@ -140,10 +150,6 @@
- local: cameras
title: Cameras
title: "Sensors"
- sections:
- local: torch_accelerators
title: PyTorch accelerators
title: "Supported Hardware"
- sections:
- local: notebooks
title: Notebooks
+220 -81
View File
@@ -1,60 +1,37 @@
# Bring Your Own Policies
# Adding a Policy
This tutorial explains how to integrate your own custom policy implementations into the LeRobot ecosystem, allowing you to leverage all LeRobot tools for training, evaluation, and deployment while using your own algorithms.
This guide walks you through implementing a custom policy and getting it to work with LeRobot's training, evaluation, and deployment tools. There are two paths:
## Step 1: Create a Policy Package
- **Plugin (out-of-tree)** — ship your policy as a standalone `lerobot_policy_*` package. Faster, no PR required, easy to iterate. Right for experimentation, internal use, or when you want to publish independently.
- **In-tree (contributed to LeRobot)** — land your policy directly in `src/lerobot/policies/`. Requires a PR, but makes your policy a first-class citizen of the library.
Your custom policy should be organized as an installable Python package following LeRobot's plugin conventions.
The plugin route is usually the right starting point — promote to in-tree once the policy has stabilized and there's clear value in shipping it with the library.
### Package Structure
Either way, the building blocks are the same: a configuration class, a policy class, and a processor factory. The first half of this guide covers those shared pieces; the second half covers the path-specific scaffolding ([Path A](#path-a-out-of-tree-plugin), [Path B](#path-b-contributing-in-tree)).
Create a package with the prefix `lerobot_policy_` (IMPORTANT!) followed by your policy name:
A note on tone: robot-learning is an actively evolving field, and "what a policy looks like" can shift with each new architecture. The conventions described here exist because they let `lerobot-train` and `lerobot-eval` work uniformly across very different models. When a new policy genuinely doesn't fit them, raise it (in your PR, or an issue) — the conventions are not sacred.
```bash
lerobot_policy_my_custom_policy/
├── pyproject.toml
└── src/
└── lerobot_policy_my_custom_policy/
├── __init__.py
├── configuration_my_custom_policy.py
├── modeling_my_custom_policy.py
└── processor_my_custom_policy.py
```
---
### Package Configuration
## Anatomy of a policy
Set up your `pyproject.toml`:
Three building blocks make up every policy. The names below use `my_policy` as a placeholder — replace with your policy's name. That name is load-bearing: it must match the string you pass to `@PreTrainedConfig.register_subclass`, the `MyPolicy.name` class attribute, and the `make_<name>_pre_post_processors` factory function (more on each below).
```toml
[project]
name = "lerobot_policy_my_custom_policy"
version = "0.1.0"
dependencies = [
# your policy-specific dependencies
]
requires-python = ">= 3.12"
### Configuration class
[build-system]
build-backend = # your-build-backend
requires = # your-build-system
```
## Step 2: Define the Policy Configuration
Create a configuration class that inherits from [`PreTrainedConfig`](https://github.com/huggingface/lerobot/blob/main/src/lerobot/configs/policies.py) and registers your policy type:
Here is a template to get you started, customize the parameters and methods as needed for your policy's architecture and training requirements.
Inherit from [`PreTrainedConfig`](https://github.com/huggingface/lerobot/blob/main/src/lerobot/configs/policies.py) and register your policy type. Here is a template — customize the parameters and methods as needed for your policy's architecture and training requirements.
```python
# configuration_my_custom_policy.py
# configuration_my_policy.py
from dataclasses import dataclass, field
from lerobot.configs import PreTrainedConfig
from lerobot.optim import AdamWConfig
from lerobot.optim import CosineDecayWithWarmupSchedulerConfig
@PreTrainedConfig.register_subclass("my_custom_policy")
@PreTrainedConfig.register_subclass("my_policy")
@dataclass
class MyCustomPolicyConfig(PreTrainedConfig):
"""Configuration class for MyCustomPolicy.
class MyPolicyConfig(PreTrainedConfig):
"""Configuration class for MyPolicy.
Args:
n_obs_steps: Number of observation steps to use as input
@@ -77,16 +54,20 @@ class MyCustomPolicyConfig(PreTrainedConfig):
raise ValueError("n_action_steps cannot exceed horizon")
def validate_features(self) -> None:
"""Validate input/output feature compatibility."""
"""Validate input/output feature compatibility.
Call this explicitly from your policy's __init__ — the base class does not.
"""
if not self.image_features:
raise ValueError("MyCustomPolicy requires at least one image feature.")
raise ValueError("MyPolicy requires at least one image feature.")
if self.action_feature is None:
raise ValueError("MyCustomPolicy requires 'action' in output_features.")
raise ValueError("MyPolicy requires 'action' in output_features.")
def get_optimizer_preset(self) -> AdamWConfig:
return AdamWConfig(lr=self.optimizer_lr, weight_decay=self.optimizer_weight_decay)
def get_scheduler_preset(self):
"""Return a LRSchedulerConfig from lerobot.optim, or None."""
return None
@property
@@ -101,8 +82,7 @@ class MyCustomPolicyConfig(PreTrainedConfig):
@property
def action_delta_indices(self) -> list[int]:
"""Relative timestep offsets for the action chunk the dataset loader returns.
"""
"""Relative timestep offsets for the action chunk the dataset loader returns."""
return list(range(self.horizon))
@property
@@ -110,32 +90,34 @@ class MyCustomPolicyConfig(PreTrainedConfig):
return None
```
## Step 3: Implement the Policy Class
The string you pass to `@register_subclass` must match `MyPolicy.name` (next section) and is what users supply as `--policy.type` on the CLI. Default to `AdamW` from `lerobot.optim` for `get_optimizer_preset` unless you genuinely need otherwise.
Create your policy implementation by inheriting from [`PreTrainedPolicy`](https://github.com/huggingface/lerobot/blob/main/src/lerobot/policies/pretrained.py):
### Policy class
Inherit from [`PreTrainedPolicy`](https://github.com/huggingface/lerobot/blob/main/src/lerobot/policies/pretrained.py) and set two class attributes — both are checked by `__init_subclass__`:
```python
# modeling_my_custom_policy.py
# modeling_my_policy.py
import torch
import torch.nn as nn
from typing import Any
from lerobot.policies import PreTrainedPolicy
from lerobot.utils.constants import ACTION
from .configuration_my_custom_policy import MyCustomPolicyConfig
from .configuration_my_policy import MyPolicyConfig
class MyCustomPolicy(PreTrainedPolicy):
config_class = MyCustomPolicyConfig # must match the string in @register_subclass
name = "my_custom_policy"
class MyPolicy(PreTrainedPolicy):
config_class = MyPolicyConfig # must match the string in @register_subclass
name = "my_policy"
def __init__(self, config: MyCustomPolicyConfig, dataset_stats: dict[str, Any] = None):
def __init__(self, config: MyPolicyConfig, dataset_stats: dict[str, Any] = None):
super().__init__(config, dataset_stats)
config.validate_features() # not called automatically by the base class
self.config = config
self.model = ... # your nn.Module here
def reset(self):
"""Reset episode state."""
"""Reset per-episode state. Called by lerobot-eval at the start of each episode."""
...
def get_optim_params(self) -> dict:
@@ -147,35 +129,51 @@ class MyCustomPolicy(PreTrainedPolicy):
...
def select_action(self, batch: dict[str, torch.Tensor], **kwargs) -> torch.Tensor:
"""Return a single action for the current timestep (called at inference)."""
"""Return a single action for the current timestep (called every step at inference)."""
...
def forward(self, batch: dict[str, torch.Tensor]) -> dict[str, torch.Tensor]:
def forward(self, batch: dict[str, torch.Tensor]) -> tuple[torch.Tensor, dict | None]:
"""Compute the training loss.
Returns `(loss, output_dict)`. `output_dict` may be `None`; everything in it must be
logging-friendly Python natives (no tensors with gradients).
`batch["action_is_pad"]` is a bool mask of shape (B, horizon) that marks
timesteps padded because the episode ended before `horizon` steps, you
timesteps padded because the episode ended before `horizon` steps; you
can exclude those from your loss.
"""
actions = batch[ACTION]
action_is_pad = batch.get("action_is_pad")
...
return {"loss": ...}
return loss, {"some_loss_component": some_loss_component.item()}
```
## Step 4: Add Data Processors
The methods called by the train/eval loops:
Create processor functions. For a concrete reference, see [processor_act.py](https://github.com/huggingface/lerobot/blob/main/src/lerobot/policies/act/processor_act.py) or [processor_diffusion.py](https://github.com/huggingface/lerobot/blob/main/src/lerobot/policies/diffusion/processor_diffusion.py).
| Method | Used by | What it does |
| ----------------------------------------------------------------- | ----------------- | ---------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------- |
| `reset() -> None` | `lerobot-eval` | Clear per-episode state at the start of each episode. |
| `select_action(batch, **kwargs) -> Tensor` | `lerobot-eval` | Return the next action `(B, action_dim)`. Called every step. |
| `predict_action_chunk(batch, **kwargs) -> Tensor` | the policy itself | Return an action chunk `(B, chunk_size, action_dim)`. Currently abstract on the base class — raise `NotImplementedError` if your policy doesn't chunk. |
| `forward(batch, reduction="mean") -> tuple[Tensor, dict \| None]` | `lerobot-train` | Return `(loss, output_dict)`. Accept `reduction="none"` if you want to support per-sample weighting. |
| `get_optim_params() -> dict` | the optimizer | Return `self.parameters()` for simple policies; return a named parameter dict for [multi-optimizer policies](https://github.com/huggingface/lerobot/blob/ecd38c50d7d15b4184cf42649ff1185ee2e11eeb/src/lerobot/policies/sac/modeling_sac.py#L61-L73). |
| `update() -> None` _(optional)_ | `lerobot-train` | Called after each optimizer step _if defined_. Use for EMA, target nets, replay buffers (TDMPC uses this). |
Batches are flat dictionaries keyed by the constants in [`lerobot.utils.constants`](https://github.com/huggingface/lerobot/blob/main/src/lerobot/utils/constants.py): `OBS_STATE` (`observation.state.<motor>`), `OBS_IMAGES` (`observation.images.<camera>`), `OBS_LANGUAGE`, `ACTION`, etc. Reuse the constants — don't invent new prefixes.
### Processor functions
LeRobot uses `PolicyProcessorPipeline`s to normalize inputs and de-normalize outputs around your policy. For a concrete reference, see [`processor_act.py`](https://github.com/huggingface/lerobot/blob/main/src/lerobot/policies/act/processor_act.py) or [`processor_diffusion.py`](https://github.com/huggingface/lerobot/blob/main/src/lerobot/policies/diffusion/processor_diffusion.py).
```python
# processor_my_custom_policy.py
# processor_my_policy.py
from typing import Any
import torch
from lerobot.processor import PolicyAction, PolicyProcessorPipeline
def make_my_custom_policy_pre_post_processors(
def make_my_policy_pre_post_processors(
config,
dataset_stats: dict[str, dict[str, torch.Tensor]] | None = None,
) -> tuple[
@@ -187,11 +185,48 @@ def make_my_custom_policy_pre_post_processors(
return preprocessor, postprocessor
```
**Important - function naming:** LeRobot discovers your processor by name. The function **must** be called `make_{policy_name}_pre_post_processors` (matching the string you passed to `@PreTrainedConfig.register_subclass`).
**Important function naming:** LeRobot discovers your processor by name. The function **must** be called `make_{policy_name}_pre_post_processors` (matching the string you passed to `@PreTrainedConfig.register_subclass`).
## Step 5: Package Initialization
---
Expose your classes in the package's `__init__.py`:
## Path A: Out-of-tree plugin
The fastest way to ship a policy: package it as a standalone Python distribution and install it alongside LeRobot. No PR required, you own the release cycle, and you can publish to PyPI under your own namespace.
### Package structure
Create a package with the prefix `lerobot_policy_` (IMPORTANT!) followed by your policy name:
```bash
lerobot_policy_my_policy/
├── pyproject.toml
└── src/
└── lerobot_policy_my_policy/
├── __init__.py
├── configuration_my_policy.py
├── modeling_my_policy.py
└── processor_my_policy.py
```
### `pyproject.toml`
```toml
[project]
name = "lerobot_policy_my_policy"
version = "0.1.0"
dependencies = [
# your policy-specific dependencies
]
requires-python = ">= 3.12"
[build-system]
build-backend = # your-build-backend
requires = # your-build-system
```
### Package `__init__.py`
Expose your classes in the package's `__init__.py` and guard against missing `lerobot`:
```python
# __init__.py
@@ -204,44 +239,148 @@ except ImportError:
"lerobot is not installed. Please install lerobot to use this policy package."
)
from .configuration_my_custom_policy import MyCustomPolicyConfig
from .modeling_my_custom_policy import MyCustomPolicy
from .processor_my_custom_policy import make_my_custom_policy_pre_post_processors
from .configuration_my_policy import MyPolicyConfig
from .modeling_my_policy import MyPolicy
from .processor_my_policy import make_my_policy_pre_post_processors
__all__ = [
"MyCustomPolicyConfig",
"MyCustomPolicy",
"make_my_custom_policy_pre_post_processors",
"MyPolicyConfig",
"MyPolicy",
"make_my_policy_pre_post_processors",
]
```
## Step 6: Installation and Usage
### Install Your Policy Package
### Install and use
```bash
cd lerobot_policy_my_custom_policy
cd lerobot_policy_my_policy
pip install -e .
# Or install from PyPI if published
pip install lerobot_policy_my_custom_policy
pip install lerobot_policy_my_policy
```
### Use Your Policy
Once installed, your policy automatically integrates with LeRobot's training and evaluation tools:
```bash
lerobot-train \
--policy.type my_custom_policy \
--policy.type my_policy \
--env.type pusht \
--steps 200000
```
## Examples and Community Contributions
---
## Path B: Contributing in-tree
When your policy has stabilized and there's clear value in shipping it with the library, you can land it directly in LeRobot. Read the general [contribution guide](./contributing) and the [PR template](https://github.com/huggingface/lerobot/blob/main/.github/PULL_REQUEST_TEMPLATE.md) first — that's where you'll find the testing/quality expectations every PR has to meet (`pre-commit run -a`, `pytest`, the community-review rule, etc.). What's below is the policy-specific layer on top of that.
### In-tree layout
```
src/lerobot/policies/my_policy/
├── __init__.py # re-exports config + modeling + processor factory
├── configuration_my_policy.py # MyPolicyConfig + @register_subclass
├── modeling_my_policy.py # MyPolicy(PreTrainedPolicy)
├── processor_my_policy.py # make_my_policy_pre_post_processors
└── README.md # symlink → ../../../../docs/source/policy_my_policy_README.md
```
Two notes:
- The `README.md` next to the source is a **symlink** into `docs/source/policy_<name>_README.md` — the actual file lives under `docs/`. Existing policies (act, smolvla, diffusion, …) all do this; copy one of those symlinks. The policy README is conventionally minimal: paper link + BibTeX citation.
- The user-facing tutorial — what to install, how to train, hyperparameters, benchmark numbers — lives separately at `docs/source/<my_policy>.mdx` and is registered in `_toctree.yml` under "Policies".
The file names are load-bearing: the factory does lazy imports by name, and the processor is discovered by the `make_<policy_name>_pre_post_processors` convention.
### Wiring
Three places need to know about your policy. All by name.
1. **`policies/__init__.py`** — re-export `MyPolicyConfig` and add it to `__all__`. **Don't** re-export the modeling class; it loads lazily through the factory (so `import lerobot` stays fast).
2. **`factory.py:get_policy_class`** — add a branch returning `MyPolicy` from a lazy import.
3. **`factory.py:make_policy_config`** and **`factory.py:make_pre_post_processors`** — same idea, two more branches.
Mirror an existing policy that's structurally similar to yours; the diff is small.
### Heavy / optional dependencies
Most policies need a heavy backbone (transformers, diffusers, a specific VLM SDK). The convention is **two-step gating**: a `TYPE_CHECKING`-guarded import at module top, and a `require_package` runtime check in the constructor. [`modeling_diffusion.py`](https://github.com/huggingface/lerobot/blob/main/src/lerobot/policies/diffusion/modeling_diffusion.py) is the canonical reference:
```python
from typing import TYPE_CHECKING
from lerobot.utils.import_utils import _diffusers_available, require_package
if TYPE_CHECKING or _diffusers_available:
from diffusers.schedulers.scheduling_ddim import DDIMScheduler
else:
DDIMScheduler = None # keeps the symbol bindable at import time
class DiffusionPolicy(PreTrainedPolicy):
def __init__(self, config):
require_package("diffusers", extra="diffusion")
super().__init__(config)
...
```
This way:
- `import lerobot.policies` keeps working without the extra installed (the symbol is just bound to `None`).
- Type checkers see the real symbol.
- Instantiating the policy without the extra raises a clear `ImportError` pointing at `pip install 'lerobot[diffusion]'`.
Add a matching extra to [`pyproject.toml`](https://github.com/huggingface/lerobot/blob/main/pyproject.toml) `[project.optional-dependencies]` and include it in the `all` extra so `pip install 'lerobot[all]'` keeps installing everything.
### Benchmarks and a published checkpoint
A new policy is much easier to review — and far more useful — when it ships with a working checkpoint and at least one number you can reproduce.
**Pick at least one in-tree benchmark.** LeRobot ships sim benchmarks with per-benchmark Docker images (LIBERO, LIBERO-plus, Meta-World, RoboTwin 2.0, RoboCasa365, RoboCerebra, RoboMME, VLABench and more). Pick the one that matches your policy's modality — VLAs usually go to LIBERO or VLABench; image-only BC to LIBERO or Meta-World. The full list lives under [Benchmarks](./libero) in the docs sidebar.
**Push the checkpoint & processors** to the Hub under `lerobot/<policy>_<benchmark>` (or your namespace if you don't have write access; a maintainer can mirror it). Use `PreTrainedPolicy.push_model_to_hub` so the repo gets `config.json`, `model.safetensors`, and a model card.
**Report results in your policy's MDX**, with the exact `lerobot-eval` command and hardware so anyone can re-run:
```markdown
## Results
Evaluated on LIBERO with `lerobot/<policy>_libero`:
| Suite | Success rate | n_episodes |
| -------------- | -----------: | ---------: |
| libero_spatial | 87.5% | 50 |
| libero_object | 93.0% | 50 |
| libero_goal | 81.5% | 50 |
| libero_10 | 62.0% | 50 |
| **average** | **81.0%** | 200 |
Reproduce: `lerobot-eval --policy.path=lerobot/<policy>_libero --env.type=libero --env.task=libero_spatial --eval.n_episodes=50` (1× A100 40 GB).
```
Use `n_episodes ≥ 50` per suite for stable success-rate estimates.
If your policy is real-robot-only and no sim benchmark applies, swap the sim eval for: a public training dataset on the Hub, the `lerobot-train` command, the checkpoint, and a real-robot success rate over ≥10 episodes via `lerobot-rollout --policy.path=...`.
### PR checklist
The general expectations are in [`CONTRIBUTING.md`](https://github.com/huggingface/lerobot/blob/main/CONTRIBUTING.md) and the [PR template](https://github.com/huggingface/lerobot/blob/main/.github/PULL_REQUEST_TEMPLATE.md). On top of those, reviewers will look for:
- [ ] `MyPolicy` and `MyPolicyConfig` cover the surface above; `__init_subclass__` accepts the class.
- [ ] `factory.py` and `policies/__init__.py` are wired (lazy imports for modeling).
- [ ] `make_my_policy_pre_post_processors` follows the naming convention.
- [ ] Optional deps live behind a `[project.optional-dependencies]` extra and the `TYPE_CHECKING + require_package` guard.
- [ ] `tests/policies/` updated; backward-compat artifact committed & policy-specific tests.
- [ ] `src/lerobot/policies/<name>/README.md` symlinked into `docs/source/policy_<name>_README.md`; user-facing `docs/source/<name>.mdx` written and added to `_toctree.yml`.
- [ ] At least one reproducible benchmark eval in the policy MDX with a published checkpoint (sim benchmark, or real-robot dataset + checkpoint).
The fastest way to get a clean PR is to copy the directory of the existing policy closest to yours, rename, and replace contents method by method. Don't wait until everything is polished — open a draft PR early and iterate with us; reviewers would much rather give feedback on a half-finished branch than a fully-merged one.
---
## Examples and community contributions
Check out these example policy implementations:
- [DiTFlow Policy](https://github.com/danielsanjosepro/lerobot_policy_ditflow) - Diffusion Transformer policy with flow-matching objective. Try it out in this example: [DiTFlow Example](https://github.com/danielsanjosepro/test_lerobot_policy_ditflow)
- [DiTFlow Policy](https://github.com/danielsanjosepro/lerobot_policy_ditflow) Diffusion Transformer policy with flow-matching objective. Try it out in this example: [DiTFlow Example](https://github.com/danielsanjosepro/test_lerobot_policy_ditflow)
Share your policy implementations with the community! 🤗
Thanks for taking the time to bring a new policy into LeRobot. Every architecture that lands in `main` — and every plugin published by the community — makes the library a little more useful for the next person, and a little more representative of where robot learning is going. We're looking forward to seeing what you ship. 🤗
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# EO-1
EO-1 is a **Vision-Language-Action policy for robot control**. The LeRobot implementation integrates EO-1 with the standard LeRobot training, evaluation, processor interface.
## Model Overview
EO-1 uses a Qwen2.5-VL backbone for vision-language understanding and adds a continuous flow-matching action head for robot control. The policy formats each robot-control sample as a multimodal conversation: camera images are passed to Qwen2.5-VL, the robot state is represented with EO-1 state tokens, and the future action chunk is represented with EO-1 action tokens.
<img
src="https://huggingface.co/datasets/HaomingSong/lerobot-documentation-images/resolve/main/lerobot/eo_pipeline.png"
alt="An overview of EO-1"
width="85%"
/>
During training, EO-1 learns to denoise continuous action chunks at the action-token positions. During inference, it samples an action chunk, returns continuous actions, and executes `n_action_steps` from the chunk before sampling again.
### What the LeRobot Integration Covers
- Standard `policy.type=eo1` configuration through LeRobot
- Qwen2.5-VL image and text preprocessing through policy processors
- Continuous flow-matching action prediction
- Checkpoint save/load through LeRobot policy APIs
- Training with `lerobot-train` and evaluation with `lerobot-eval`
The broader EO-1 project also includes interleaved vision-text-action pretraining and multimodal reasoning workflows. This page focuses on the LeRobot robot-control policy path.
## Installation Requirements
1. Install LeRobot by following the [Installation Guide](./installation).
2. Install EO-1 dependencies by running:
```bash
pip install -e ".[eo1]"
```
3. If you want to train or evaluate on LIBERO, install the LIBERO dependencies too:
```bash
pip install -e ".[eo1,libero]"
```
EO-1 can use the standard PyTorch scaled-dot-product attention backend through `policy.attn_implementation=sdpa`. If your environment has a compatible `flash_attn` installation, you can request `policy.attn_implementation=flash_attention_2`.
## Data Requirements
EO-1 expects a LeRobot dataset with:
- At least one visual observation, for example `observation.images.image`
- `observation.state`
- `action`
- A language task instruction through the dataset `task` field
If your dataset uses different observation names, use `rename_map` to align them with the names expected by your training or evaluation setup.
## Usage
To use EO-1 in a LeRobot configuration, specify the policy type as:
```python
policy.type=eo1
```
By default, a new EO-1 policy initializes its backbone from:
```python
policy.vlm_base=Qwen/Qwen2.5-VL-3B-Instruct
```
Once a LeRobot-format EO-1 checkpoint is available, load it with:
```python
policy.path=your-org/your-eo1-checkpoint
```
## Training
### Training Command Example
```bash
lerobot-train \
--dataset.repo_id=your_org/your_dataset \
--policy.type=eo1 \
--policy.vlm_base=Qwen/Qwen2.5-VL-3B-Instruct \
--policy.dtype=bfloat16 \
--policy.attn_implementation=sdpa \
--policy.gradient_checkpointing=false \
--output_dir=./outputs/eo1_training \
--job_name=eo1_training \
--steps=300000 \
--batch_size=16 \
--policy.device=cuda
```
### Key Training Parameters
| Parameter | Default | Description |
| -------------------------------------- | ----------------------------- | ----------------------------------------------------------------------- |
| `policy.vlm_base` | `Qwen/Qwen2.5-VL-3B-Instruct` | Qwen2.5-VL checkpoint used to initialize a new policy |
| `policy.dtype` | `auto` | Backbone dtype request: `auto`, `bfloat16`, or `float32` |
| `policy.attn_implementation` | `None` | Optional Qwen attention backend, such as `sdpa` |
| `policy.gradient_checkpointing` | `false` | Reduces memory usage during training |
| `policy.chunk_size` | `8` | Number of future actions predicted per chunk |
| `policy.n_action_steps` | `8` | Number of actions consumed from a sampled chunk |
| `policy.num_denoise_steps` | `10` | Number of flow-matching denoising steps used during sampling |
| `policy.max_state_dim` | `32` | State padding dimension |
| `policy.max_action_dim` | `32` | Action padding dimension |
| `policy.force_fp32_autocast` | `true` | Keeps the flow head in fp32 even when the backbone uses mixed precision |
| `policy.supervise_padding_action_dims` | `true` | Controls whether padded action dimensions are supervised |
| `policy.supervise_padding_actions` | `true` | Controls whether padded future action rows are supervised |
## Evaluation
EO-1 can be evaluated through `lerobot-eval` once you have a LeRobot-format checkpoint:
```bash
lerobot-eval \
--policy.path=your-org/your-eo1-checkpoint \
--env.type=libero \
--env.task=libero_object \
--eval.batch_size=1 \
--eval.n_episodes=20
```
For datasets or environments whose camera names differ from the checkpoint configuration, pass a `rename_map`:
```bash
lerobot-eval \
--policy.path=your-org/your-eo1-checkpoint \
--env.type=libero \
--env.task=libero_object \
--rename_map='{"observation.images.image2":"observation.images.wrist_image"}'
```
## Configuration Notes
### Image Processing
EO-1 uses the Qwen2.5-VL processor. The `policy.image_min_pixels` and `policy.image_max_pixels` settings control the image resizing bounds before the visual tokens are passed into the backbone.
### State and Action Dimensions
The policy pads state and action vectors to `policy.max_state_dim` and `policy.max_action_dim` before the EO-1 flow head. Predictions are cropped back to the original action dimension before being returned by the policy.
### Attention Backend
Use `policy.attn_implementation=sdpa` for a portable setup. Use `flash_attention_2` only when `flash_attn` is installed and compatible with your environment.
## References
- [EO-1 project](https://github.com/EO-Robotics/EO1)
- [EO-1 paper](https://arxiv.org/abs/2508.21112)
- [Qwen2.5-VL-3B-Instruct](https://huggingface.co/Qwen/Qwen2.5-VL-3B-Instruct)
## Citation
```bibtex
@article{eo1,
title={EO-1: Interleaved Vision-Text-Action Pretraining for General Robot Control},
author={Delin Qu and Haoming Song and Qizhi Chen and Zhaoqing Chen and Xianqiang Gao and Xinyi Ye and Qi Lv and Modi Shi and Guanghui Ren and Cheng Ruan and Maoqing Yao and Haoran Yang and Jiacheng Bao and Bin Zhao and Dong Wang},
journal={arXiv preprint},
year={2025},
url={https://arxiv.org/abs/2508.21112}
}
```
## License
This LeRobot integration follows the **Apache 2.0 License** used by LeRobot. Check the upstream EO-1 model and dataset pages for the licenses of released EO-1 checkpoints and data.
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# EVO1
EVO1 is a Vision-Language-Action policy for robot control built around an InternVL3 backbone and a continuous flow-matching action head. This LeRobot integration exposes EVO1 as a standard policy type so it can be trained and evaluated with the usual LeRobot dataset, checkpoint, and processor APIs.
## Model Overview
The policy embeds one or more camera images and the language task prompt with InternVL3, pads robot state/action vectors to fixed maximum dimensions, and predicts future action chunks with a flow-matching action head. During inference, the policy samples an action chunk and returns `n_action_steps` actions from that chunk before sampling again.
### What the LeRobot Integration Covers
- Standard `policy.type=evo1` configuration through LeRobot
- InternVL3 image/text embedding with optional FlashAttention fallback
- Stage-based finetuning controls for action-head-only and VLM finetuning runs
- Continuous flow-matching action prediction
- Checkpoint save/load through LeRobot policy APIs
- Training with `lerobot-train` and evaluation with standard policy inference APIs
The broader EVO1 project may include additional training scripts and dataset tooling. This page focuses on the LeRobot robot-control policy path.
## Installation Requirements
1. Install LeRobot by following the [Installation Guide](./installation).
2. Install EVO1 dependencies:
```bash
pip install -e ".[evo1]"
```
For LIBERO evaluation, install the LIBERO extra as well:
```bash
pip install -e ".[evo1,libero]"
```
3. Install a `flash-attn` wheel only if it is compatible with your Python, PyTorch, CUDA, and GPU stack. EVO1 falls back to standard attention when `flash_attn` is not available, but reproducing the official LIBERO checkpoint conversion result below requires the same FlashAttention path used by the original EVO1 checkpoint.
EVO1 uses InternVL3 through the Hugging Face `transformers` remote-code path, so the first run may download the configured VLM checkpoint unless `policy.vlm_model_name` points to a local model directory.
## Data Requirements
EVO1 expects a LeRobot dataset with:
- One to `policy.max_views` visual observations, for example `observation.images.image`
- `observation.state`
- `action`
- A language task instruction in the dataset `task` field, or another field configured with `policy.task_field`
State and action vectors are padded to `policy.max_state_dim` and `policy.max_action_dim`. Predictions are cropped back to the dataset action dimension before being returned.
## Usage
To use EVO1 in a LeRobot configuration, specify:
```python
policy.type=evo1
```
By default, a new EVO1 policy initializes its VLM from:
```python
policy.vlm_model_name=OpenGVLab/InternVL3-1B
```
Once a LeRobot-format EVO1 checkpoint is available, load it with:
```python
policy.path=your-org/your-evo1-checkpoint
```
The converted LIBERO checkpoint used for this PR is available at:
```python
policy.path=javadcc/evo1-libero-lerobot
```
## Training
### Stage 1
Stage 1 freezes the VLM and trains the action head:
```bash
lerobot-train \
--dataset.repo_id=your_org/your_dataset \
--policy.type=evo1 \
--policy.training_stage=stage1 \
--policy.vlm_model_name=OpenGVLab/InternVL3-1B \
--policy.device=cuda \
--policy.chunk_size=50 \
--policy.n_action_steps=50 \
--policy.max_state_dim=24 \
--policy.max_action_dim=24 \
--policy.optimizer_lr=1e-5 \
--batch_size=4 \
--steps=5000 \
--output_dir=./outputs/evo1_stage1
```
### Stage 2
Stage 2 finetunes the VLM branches and action head. A common workflow starts from a Stage 1 checkpoint:
```bash
lerobot-train \
--dataset.repo_id=your_org/your_dataset \
--policy.path=./outputs/evo1_stage1/checkpoints/005000/pretrained_model \
--policy.training_stage=stage2 \
--policy.vlm_model_name=OpenGVLab/InternVL3-1B \
--policy.device=cuda \
--policy.chunk_size=50 \
--policy.n_action_steps=50 \
--policy.max_state_dim=24 \
--policy.max_action_dim=24 \
--policy.optimizer_lr=1e-5 \
--batch_size=4 \
--steps=80000 \
--output_dir=./outputs/evo1_stage2
```
By default, `policy.training_stage` reapplies the finetuning defaults for that stage. This is important when
starting Stage 2 from a Stage 1 checkpoint, because the Stage 1 checkpoint config stores the VLM finetuning
flags as disabled. These stage defaults take precedence over saved or manually supplied `policy.finetune_*`
flags unless `policy.apply_training_stage_defaults=false`, so set that flag only when manually controlling
every finetuning flag.
### Key Training Parameters
| Parameter | Default | Description |
| --------------------------------------------- | ------------------------ | ----------------------------------------------------------------- |
| `policy.vlm_model_name` | `OpenGVLab/InternVL3-1B` | InternVL3 checkpoint or local model directory |
| `policy.training_stage` | `stage1` | `stage1` trains the action head; `stage2` finetunes VLM branches |
| `policy.apply_training_stage_defaults` | `true` | Reapplies stage finetuning defaults after loading a checkpoint |
| `policy.vlm_num_layers` | `14` | Number of InternVL3 language layers kept for the policy |
| `policy.vlm_dtype` | `bfloat16` | Requested VLM dtype |
| `policy.use_flash_attn` | `true` | Requests FlashAttention when installed; otherwise falls back |
| `policy.enable_gradient_checkpointing` | `true` | Enables checkpointing on supported InternVL3 modules |
| `policy.gradient_checkpointing_use_reentrant` | `false` | Reentrant setting passed to gradient checkpointing when supported |
| `policy.chunk_size` | `50` | Number of future actions predicted per chunk |
| `policy.n_action_steps` | `50` | Number of actions consumed from a sampled chunk |
| `policy.max_state_dim` | `24` | State padding dimension |
| `policy.max_action_dim` | `24` | Action padding dimension |
| `policy.task_field` | `task` | Batch field used as the language prompt |
## Results
### LIBERO Object Checkpoint Conversion
The checkpoint [javadcc/evo1-libero-lerobot](https://huggingface.co/javadcc/evo1-libero-lerobot)
is the LeRobot-format conversion of the official EVO1 LIBERO checkpoint. The conversion was checked against
the official EVO1 checkpoint with the same LIBERO Object initial states and action postprocessing.
| Checkpoint | Suite | Episodes | Success Rate |
| ---------------------------- | --------------- | ---------------- | ------------ |
| Official EVO1 checkpoint | `libero_object` | 10, one per task | 100% |
| LeRobot converted checkpoint | `libero_object` | 10, one per task | 100% |
For a fixed `libero_object` rollout, the official checkpoint and LeRobot checkpoint produced identical
pixel embeddings, VLM fused tokens, normalized actions, and denormalized actions for the checked action step
(`max_abs_diff=0.0`).
The published checkpoint expects the raw LIBERO camera feature names
`observation.images.agentview_image` and `observation.images.robot0_eye_in_hand_image`. To run the converted
checkpoint with LeRobot LIBERO evaluation for the same one-episode-per-task setting, keep those camera names
instead of the default `image`/`image2` mapping:
```bash
lerobot-eval \
--policy.path=javadcc/evo1-libero-lerobot \
--policy.device=cuda \
--env.type=libero \
--env.task=libero_object \
--env.camera_name_mapping="{agentview_image: agentview_image, robot0_eye_in_hand_image: robot0_eye_in_hand_image}" \
--env.observation_height=448 \
--env.observation_width=448 \
--eval.batch_size=1 \
--eval.n_episodes=1
```
## References
- [EVO1 repository](https://github.com/MINT-SJTU/Evo-1)
- [InternVL3-1B](https://huggingface.co/OpenGVLab/InternVL3-1B)
## License
This LeRobot integration follows the Apache 2.0 License used by LeRobot. Check the upstream EVO1 and InternVL3 model pages for the licenses of released checkpoints and data.
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# Compute HW Guide for LeRobot Training
Rough sizing for training a LeRobot policy: how much VRAM each policy needs, what training time looks like, and where to run when local hardware isn't enough.
The numbers below are **indicative** — order-of-magnitude figures for picking hardware, not exact predictions. Throughput depends heavily on dataset I/O, image resolution, batch size, and number of GPUs.
## Memory by policy group
Policies cluster by backbone size; the groupings below give a single VRAM envelope per group instead of repeating numbers per policy. Memory scales roughly linearly with batch size; AdamW (the LeRobot default) carries optimizer state that adds ~30100% over a forward+backward pass alone.
| Group | Policies | Peak VRAM (BS 8, AdamW) | Suitable starter GPUs |
| ---------- | ------------------------------------------- | ----------------------: | --------------------------------- |
| Light BC | `act`, `vqbet`, `tdmpc` | ~26GB | Laptop GPU (RTX 3060), L4, A10G |
| Diffusion | `diffusion`, `multi_task_dit` | ~814GB | RTX 4070+ / L4 / A10G |
| Small VLA | `smolvla` | ~1016GB | RTX 4080+ / L4 / A10G |
| Large VLA | `pi0`, `pi0_fast`, `pi05`, `xvla`, `wall_x` | ~2440GB | A100 40 GB+ (24 GB tight at BS 1) |
| Multimodal | `groot`, `eo1` | ~2440GB | A100 40 GB+ |
| RL | `sac` | config-dep. | See [HIL-SERL guide](./hilserl) |
Memory-bound? Drop the batch size (~linear), use gradient accumulation to recover effective batch, or for SmolVLA leave `freeze_vision_encoder=True`.
## Training time
Robotics imitation learning typically converges in **510 epochs over the dataset**, not hundreds of thousands of raw steps. Once you know your epoch count, wall-clock is essentially:
```text
total_frames = sum of frames over all episodes # 50 ep × 30 fps × 30 s ≈ 45,000
steps_per_epoch = ceil(total_frames / (num_gpus × batch_size))
total_steps = epochs × steps_per_epoch
wall_clock ≈ total_steps × per_step_time
```
Per-step time depends on the policy and the GPU. The numbers in the table below are anchors — pick the row closest to your setup and scale linearly with `total_steps` if you train longer or shorter.
### Common scenarios
Indicative wall-clock for **5 epochs on a ~50-episode dataset (~45k frames at 30 fps × 30 s)**, default optimizer (AdamW), 640×480 images:
| Setup | Policy | Batch | Wall-clock |
| ------------------------------------ | -------------- | ----- | ---------: |
| Single RTX 4090 / RTX 3090 (24 GB) | `act` | 8 | ~3060min |
| Single RTX 4090 / RTX 3090 (24 GB) | `diffusion` | 8 | ~24h |
| Single L4 / A10G (24 GB) | `act` | 8 | ~12h |
| Single L4 / A10G (24 GB) | `smolvla` | 4 | ~36h |
| Single A100 40 GB | `smolvla` | 16 | ~12h |
| Single A100 40 GB | `pi0` / `pi05` | 4 | ~48h |
| 4× H100 80 GB cluster (`accelerate`) | `diffusion` | 32 | ~3060min |
| 4× H100 80 GB cluster (`accelerate`) | `smolvla` | 32 | ~12h |
| Apple Silicon M1/M2/M3 Max (MPS) | `act` | 4 | ~614h |
These are order-of-magnitude figures. Real runs deviate by ±50% depending on image resolution, dataset I/O, dataloader threading, and exact GPU SKU. They are useful as "is this run going to take an hour or a day?" intuition, not as SLAs.
### Multi-GPU matters a lot
`accelerate launch --num_processes=N` is the easiest way to cut training time. Each optimizer step processes `N × batch_size` samples in roughly the same wall-clock as a single-GPU step, so 4 GPUs ≈ 4× speedup for compute-bound runs. See the [Multi GPU training](./multi_gpu_training) guide for the full setup.
Reference data points on a 4×H100 80 GB cluster (`accelerate launch --num_processes=4`), 5000 steps, batch 32, AdamW, dataset [`imstevenpmwork/super_poulain_draft`](https://huggingface.co/datasets/imstevenpmwork/super_poulain_draft) (~50 episodes, ~640×480 images):
| Policy | Wall-clock | `update_s` | `dataloading_s` | GPU util | Notable flags |
| ----------- | ---------- | ---------: | --------------: | -------- | ------------------------------------------------------------------------------------------------------------------------------ |
| `diffusion` | 16m 17s | 0.167 | 0.015 | ~90% | defaults (training from scratch) |
| `smolvla` | 27m 49s | 0.312 | 0.011 | ~80% | `--policy.path=lerobot/smolvla_base`, `freeze_vision_encoder=false`, `train_expert_only=false` |
| `pi05` | 3h 41m | 2.548 | 0.014 | ~95% | `--policy.pretrained_path=lerobot/pi05_base`, `gradient_checkpointing=true`, `dtype=bfloat16`, vision encoder + expert trained |
The `dataloading_s` vs. `update_s` ratio is the diagnostic that matters: when `dataloading_s` approaches `update_s`, more GPUs stop helping — your dataloader is the bottleneck and you should look at `--num_workers`, image resolution, and disk speed before adding compute.
### Schedule and checkpoints
If you shorten training (e.g. 5k10k steps on a small dataset), also shorten the LR schedule with `--policy.scheduler_decay_steps≈--steps`. Otherwise the LR stays near its peak and never decays. Same for `--save_freq`.
## Where to run
VRAM is the first filter. Within a tier, pick by budget and availability — the `$``$$$$` columns are relative; check current pricing on the provider you actually use.
| Class | VRAM | Tier | Comfortable for |
| -------------------------- | ----- | ------ | ----------------------------------------------------------- |
| RTX 3090 / 4090 (consumer) | 24 GB | `$` | Light BC, Diffusion, SmolVLA. Tight for VLAs at batch 1. |
| L4 / A10G (cloud) | 24 GB | `$$$` | Same envelope; common on Google Cloud, RunPod, AWS `g5/g6`. |
| A100 40 GB | 40 GB | `$$$` | Any policy at reasonable batch sizes. |
| A100 80 GB / H100 80 GB | 80 GB | `$$$$` | Multi-GPU clusters; large batches for VLAs. |
| **CPU only** | — | — | Don't train. Use Colab or rent a GPU. |
### Hugging Face Jobs
[Hugging Face Jobs](https://huggingface.co/docs/hub/jobs) lets you run training on managed HF infrastructure, billed by the second. The repo publishes a ready-to-use image: **`huggingface/lerobot-gpu:latest`**, rebuilt **every night at 02:00 UTC from `main`** ([`docker_publish.yml`](https://github.com/huggingface/lerobot/blob/main/.github/workflows/docker_publish.yml)) — so it tracks the current state of the repo, not a tagged release.
```bash
hf jobs run --flavor a10g-large huggingface/lerobot-gpu:latest \
bash -c "nvidia-smi && lerobot-train \
--policy.type=act --dataset.repo_id=<USER>/<DATASET> \
--policy.repo_id=<USER>/act_<task> --batch_size=8 --steps=50000"
```
Notes:
- The leading `nvidia-smi` is a quick sanity check that CUDA is visible inside the container — useful to fail fast if the flavor or driver mismatched.
- The default Job timeout is 30 minutes; pass `--timeout 4h` (or longer) for real training.
- `--flavor` maps onto the table above: `t4-small`/`t4-medium` (T4, ACT only), `l4x1`/`l4x4` (L4 24 GB), `a10g-small/large/largex2/largex4` (A10G 24 GB scaled out), `a100-large` (A100). For the current full catalogue + pricing see [https://huggingface.co/docs/hub/jobs](https://huggingface.co/docs/hub/jobs).
+50
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@@ -207,6 +207,56 @@ pip install 'lerobot[feetech]' # Feetech motor support
_Multiple extras can be combined (e.g., `.[core_scripts,pi,pusht]`). For a full list of available extras, refer to `pyproject.toml`._
### PyTorch CUDA variant (Linux only)
On Linux, the install path determines which CUDA wheel you get. macOS and Windows installs use the PyPI default (MPS / CPU / CUDA-Windows wheel respectively) and can skip this section.
<!-- prettier-ignore-start -->
<hfoptions id="cuda_variant">
<hfoption id="uv-source">
**Source install via `uv` (`uv sync` or `uv pip install -e .`)**
`torch` and `torchvision` are pinned by the project to the **CUDA 12.8** PyTorch index (`https://download.pytorch.org/whl/cu128`, driver floor **570.86**) — covers Ampere/Ada/Hopper/Blackwell GPUs. No action needed for typical NVIDIA setups.
To override for a different CUDA variant:
```bash
uv pip install --force-reinstall torch torchvision \
--index-url https://download.pytorch.org/whl/cu126 # older drivers; or cu130 for Blackwell on driver ≥ 580
```
</hfoption>
<hfoption id="pip-conda">
**Source install via `pip`/`conda`, or `pip install lerobot` from PyPI**
PyPI default torch wheel is currently a cu130-bundled Linux wheel, driver floor **580.65**.
To pick a specific CUDA variant:
**Using `pip` or `conda`** — install torch first with an explicit index, then lerobot:
```bash
pip install --index-url https://download.pytorch.org/whl/cu128 torch torchvision
pip install -e ".[all]" # source
# — or —
pip install lerobot # from PyPI
```
**Using `uv` to install from PyPI** — one-liner via `--torch-backend` (uv ≥ 0.6):
```bash
uv pip install --torch-backend cu128 lerobot
```
Supported values include `auto`, `cpu`, `cu126`, `cu128`, `cu129`, `cu130`, plus various `rocm*` and `xpu`. Swap as needed for your driver.
</hfoption>
</hfoptions>
<!-- prettier-ignore-end -->
### Troubleshooting
If you encounter build errors, you may need to install additional system dependencies: `cmake`, `build-essential`, and `ffmpeg libs`.
+18
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@@ -0,0 +1,18 @@
# EVO1
EVO1 is a Vision-Language-Action policy for robot control. The LeRobot
integration uses an InternVL3 vision-language backbone with a flow-matching
action head, and supports staged training through the standard LeRobot policy
APIs.
The upstream EVO1 project is available at
[MINT-SJTU/Evo-1](https://github.com/MINT-SJTU/Evo-1).
```bibtex
@misc{evo1,
title = {EVO1},
author = {{MINT-SJTU}},
year = {2026},
howpublished = {\url{https://github.com/MINT-SJTU/Evo-1}},
}
```
+29 -28
View File
@@ -46,7 +46,7 @@ This ensures identical task states map to consistent progress values, even acros
## Inputs and Targets (What the new code expects)
SARM is trained through its processor (`src/lerobot/policies/sarm/processor_sarm.py`), which:
SARM is trained through its processor (`src/lerobot/rewards/sarm/processor_sarm.py`), which:
- **Encodes** images and task text with CLIP (ViT-B/32) into `video_features` and `text_features`
- **Pads/truncates** robot state into `state_features` (up to `max_state_dim`)
@@ -347,7 +347,7 @@ Use `compute_rabc_weights.py` with `--visualize-only` to visualize model predict
<hfoption id="single_stage">
```bash
python src/lerobot/policies/sarm/compute_rabc_weights.py \
python -m lerobot.rewards.sarm.compute_rabc_weights \
--dataset-repo-id your-username/your-dataset \
--reward-model-path your-username/sarm-model \
--visualize-only \
@@ -360,7 +360,7 @@ python src/lerobot/policies/sarm/compute_rabc_weights.py \
<hfoption id="dense_only">
```bash
python src/lerobot/policies/sarm/compute_rabc_weights.py \
python -m lerobot.rewards.sarm.compute_rabc_weights \
--dataset-repo-id your-username/your-dataset \
--reward-model-path your-username/sarm-model \
--visualize-only \
@@ -373,7 +373,7 @@ python src/lerobot/policies/sarm/compute_rabc_weights.py \
<hfoption id="dual">
```bash
python src/lerobot/policies/sarm/compute_rabc_weights.py \
python -m lerobot.rewards.sarm.compute_rabc_weights \
--dataset-repo-id your-username/your-dataset \
--reward-model-path your-username/sarm-model \
--visualize-only \
@@ -429,7 +429,7 @@ The weighting follows **Equations 8-9** from the paper:
First, run the SARM model on all frames in your dataset to compute progress values:
```bash
python src/lerobot/policies/sarm/compute_rabc_weights.py \
python -m lerobot.rewards.sarm.compute_rabc_weights \
--dataset-repo-id your-username/your-dataset \
--reward-model-path your-username/sarm-model \
--head-mode sparse \
@@ -465,15 +465,15 @@ This script:
### Step 5b: Train Policy with RA-BC
Once you have the progress file, train your policy with RA-BC weighting. The progress file is auto-detected from the dataset path (`sarm_progress.parquet`). Currently PI0, PI0.5 and SmolVLA are supported with RA-BC:
Once you have the progress file, train your policy with RA-BC weighting. The progress file is auto-detected from the dataset path (`sarm_progress.parquet`) if not explicitly provided. Currently PI0, PI0.5 and SmolVLA are supported with RA-BC:
```bash
lerobot-train \
--dataset.repo_id=your-username/your-dataset \
--policy.type=pi0 \
--use_rabc=true \
--rabc_head_mode=sparse \
--rabc_kappa=0.01 \
--sample_weighting.type=rabc \
--sample_weighting.head_mode=sparse \
--sample_weighting.kappa=0.01 \
--output_dir=outputs/train/policy_rabc \
--batch_size=32 \
--steps=40000
@@ -488,12 +488,13 @@ The training script automatically:
**RA-BC Arguments:**
| Argument | Description | Default |
| ---------------------- | ---------------------------------------------------------- | ---------------------------------- |
| `--use_rabc` | Enable RA-BC sample weighting | `false` |
| `--rabc_progress_path` | Path to progress parquet file (auto-detected from dataset) | `sarm_progress.parquet` in dataset |
| `--rabc_head_mode` | Which SARM head's progress to use: `sparse` or `dense` | `sparse` |
| `--rabc_kappa` | Threshold κ for high-quality samples | `0.01` |
| Argument | Description | Default |
| ---------------------------------- | ------------------------------------------------------ | ----------------------- |
| `--sample_weighting.type` | Weighting strategy type (`rabc` or `uniform`) | `rabc` |
| `--sample_weighting.progress_path` | Path to progress parquet file | `sarm_progress.parquet` |
| `--sample_weighting.head_mode` | Which SARM head's progress to use: `sparse` or `dense` | `sparse` |
| `--sample_weighting.kappa` | Threshold κ for high-quality samples | `0.01` |
| `--sample_weighting.epsilon` | Small constant for numerical stability | `1e-6` |
### Tuning RA-BC Kappa
@@ -511,30 +512,30 @@ The `kappa` parameter is the threshold that determines which samples get full we
Monitor these WandB metrics during training:
| Metric | Healthy Range | Problem Indicator |
| ------------------ | ------------- | ------------------------- |
| `rabc_mean_weight` | 0.3 - 0.8 | ≈ 1.0 means kappa too low |
| `rabc_delta_mean` | > 0 | Should be positive |
| `rabc_delta_std` | > 0 | Variance in data quality |
| Metric | Healthy Range | Problem Indicator |
| ----------------------------- | ------------- | ------------------------- |
| `sample_weight_mean_weight` | 0.3 - 0.8 | ≈ 1.0 means kappa too low |
| `sample_weighting/delta_mean` | > 0 | Should be positive |
| `sample_weighting/delta_std` | > 0 | Variance in data quality |
**If `rabc_mean_weight ≈ 1.0`:** Your kappa is too low. Most samples have `delta > kappa` and bypass the soft-weighting entirely. RA-BC becomes equivalent to vanilla BC.
**If `sample_weight_mean_weight ≈ 1.0`:** Your kappa is too low. Most samples have `delta > kappa` and bypass the soft-weighting entirely. RA-BC becomes equivalent to vanilla BC.
**Setting kappa based on your data:**
The default `kappa=0.01` was tuned for the paper's T-shirt folding task (~90s episodes at 30fps). For your dataset, check the logged `rabc_delta_mean` and `rabc_delta_std`:
The default `kappa=0.01` was tuned for the paper's T-shirt folding task (~90s episodes at 30fps). For your dataset, check the logged `sample_weighting/delta_mean` and `sample_weighting/delta_std`:
```
# If delta_mean ≈ 0.03 and delta_std ≈ 0.02:
# Most deltas fall in range [0.01, 0.05]
# Option 1: Set kappa = delta_mean (medium selectivity)
--rabc_kappa=0.03
--sample_weighting.kappa=0.03
# Option 2: Set kappa = delta_mean + delta_std (high selectivity)
--rabc_kappa=0.05
--sample_weighting.kappa=0.05
# Option 3: Set kappa = delta_mean + 2*delta_std (very selective)
--rabc_kappa=0.07
--sample_weighting.kappa=0.07
```
**When RA-BC may not help:**
@@ -550,8 +551,8 @@ accelerate launch \
src/lerobot/scripts/lerobot_train.py \
--dataset.repo_id=your-username/your-dataset \
--policy.type=pi0 \
--use_rabc=true \
--rabc_kappa=0.01 \
--sample_weighting.type=rabc \
--sample_weighting.kappa=0.01 \
--output_dir=outputs/train/policy_rabc \
--batch_size=32 \
--steps=40000
@@ -576,7 +577,7 @@ accelerate launch \
### RA-BC
1. **Train SARM first**: RA-BC quality depends entirely on SARM quality
2. **Monitor `rabc_mean_weight`**: If it's ≈ 1.0, increase kappa (see [Tuning RA-BC Kappa](#tuning-ra-bc-kappa))
2. **Monitor `sample_weight_mean_weight`**: If it's ≈ 1.0, increase kappa (see [Tuning RA-BC Kappa](#tuning-ra-bc-kappa))
---
+4 -4
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@@ -220,7 +220,7 @@ REAL_DIM = 12
# Postprocessing: Trim 20D predictions to 12D for deployment
```
See the [action_hub.py](/home/jade_choghari/robot/lerobot/src/lerobot/policies/xvla/action_hub.py) implementation for details.
See the [action_hub.py](https://github.com/huggingface/lerobot/blob/main/src/lerobot/policies/xvla/action_hub.py) implementation for details.
#### Auto Action Mode (Recommended)
@@ -519,9 +519,9 @@ If you use X-VLA in your research, please cite:
- [X-VLA Paper](https://arxiv.org/pdf/2510.10274)
- [LeRobot Documentation](https://github.com/huggingface/lerobot)
- [Action Registry Implementation](https://github.com/huggingface/lerobot/src/lerobot/policies/xvla/action_hub.py)
- [Processor Implementation](https://github.com/huggingface/lerobot/src/lerobot/policies/xvla/processor_xvla.py)
- [Model Configuration](https://github.com/huggingface/lerobot/src/lerobot/policies/xvla/configuration_xvla.py)
- [Action Registry Implementation](https://github.com/huggingface/lerobot/blob/main/src/lerobot/policies/xvla/action_hub.py)
- [Processor Implementation](https://github.com/huggingface/lerobot/blob/main/src/lerobot/policies/xvla/processor_xvla.py)
- [Model Configuration](https://github.com/huggingface/lerobot/blob/main/src/lerobot/policies/xvla/configuration_xvla.py)
## Contributing
+1 -1
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@@ -69,7 +69,7 @@ class ComputeProgressShards(PipelineStep):
import torch
from tqdm import tqdm
from lerobot.policies.sarm.compute_rabc_weights import (
from lerobot.rewards.sarm.compute_rabc_weights import (
generate_all_frame_indices,
interpolate_progress,
load_sarm_resources,
+136
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@@ -0,0 +1,136 @@
# OMX Follower — Cube Pick And Place Example
This is an example of what is possible to do with LeRobot on a physical setup.
It is a WIP and being used internally at LeRobot and specific to our setup, but we hope it can be a useful reference for how to use LeRobot APIs and CLIs.
It includes an end-to-end example for the **OMX Follower** robot arm: pick and place a cube dataset, train a policy, and deploy it autonomously.
## Hardware
| Component | Value |
| --------- | ------------------------------------ |
| Robot | OMX Follower |
| Cameras | 2× OpenCV cameras (wrist + top-down) |
## Scripts
| Script | Purpose |
| ---------------------- | --------------------------------------------------------------- |
| `reset_environment.py` | Standalone utility: sweep workspace, grab cube, place cube |
| `record_grab.py` | Automated data collection: reset → place → record grab episodes |
## Setup
Make sure you have LeRobot installed in your env. (See [the installation guide](https://huggingface.co/docs/lerobot/installation))
Next, we will declare some environment variables for convenience. Adjust the camera indices and robot port to match your system configuration.
```bash
export ROBOT_PORT=/dev/ttyACM0
export TELEOP_PORT=/dev/ttyACM1
export HF_USERNAME=<your_hf_username>
export ROBOT_CAMERAS="{ wrist: {type: opencv, index_or_path: 0, width: 640, height: 480, fps: 30, fourcc: MJPG}, top: {type: opencv, index_or_path: 2, width: 640, height: 480, fps: 30, fourcc: MJPG} }"
```
## Step 1 — Collect Data
```bash
lerobot-record \
--robot.type=omx_follower \
--robot.port=$ROBOT_PORT \
--robot.id=omx_follower \
--robot.cameras="$ROBOT_CAMERAS" \
--teleop.type=omx_leader \
--teleop.port=$TELEOP_PORT \
--teleop.id=omx_leader \
--dataset.repo_id=$HF_USERNAME/omx_pickandplace \
--dataset.root=data/omx_pickandplace \
--dataset.num_episodes=50 \
--dataset.single_task="Pick the cube and place it in the blue square" \
--dataset.streaming_encoding=true \
--dataset.push_to_hub=true
```
### Bonus Auto-Collect script
/!\ This is specific to our setup and the task of picking and placing a cube. It is not a general-purpose data collection script. As you may notice, it doesn't require a teleop.
```bash
python -m examples.omx.record_grab \
--robot.type=omx_follower \
--robot.port=$ROBOT_PORT \
--robot.id=omx_follower \
--robot.cameras="$ROBOT_CAMERAS" \
--dataset.repo_id=$HF_USERNAME/omx_pickandplace \
--dataset.root=data/omx_pickandplace \
--dataset.num_episodes=50 \
--dataset.single_task="Pick the cube and place it in the blue square" \
--dataset.streaming_encoding=true \
--dataset.push_to_hub=true
```
Each episode:
1. The arm grabs the cube from the center of the workspace and places it at a random position.
2. The arm returns to HOME.
3. A targeted grab is recorded: HOME → approach raised → lower onto cube → grasp → lift → carry → drop → HOME.
A dataset is already available here [`maximellerbach/omx_pickandplace`](https://huggingface.co/datasets/maximellerbach/omx_pickandplace), so you can skip directly to training if you want.
## Step 2 — Train
To train a simple `ACT` policy on the collected dataset, you can use the `lerobot-train` CLI:
```bash
lerobot-train \
--dataset.repo_id=$HF_USERNAME/omx_pickandplace \
--policy.type=act \
--output_dir=outputs/train/omx_pickandplace_act \
--policy.device=cuda \
--policy.repo_id=$HF_USERNAME/omx_pickandplace_act \
--steps=20000 \
--wandb.enable=true
```
A pretrained `ACT` policy is already available here [`maximellerbach/omx_pickandplace_act`](https://huggingface.co/maximellerbach/omx_pickandplace_act).
## Step 3 — Rollout
Use the `lerobot-rollout` CLI with base strategy:
```bash
lerobot-rollout \
--strategy.type=base \
--robot.type=omx_follower \
--robot.port=$ROBOT_PORT \
--robot.id=omx_follower \
--robot.cameras="$ROBOT_CAMERAS" \
--policy.path=$HF_USERNAME/omx_pickandplace_act \
```
For continuous recording with automatic upload (sentry mode):
```bash
lerobot-rollout \
--strategy.type=sentry \
--strategy.upload_every_n_episodes=10 \
--robot.type=omx_follower \
--robot.port=$ROBOT_PORT \
--robot.id=omx_follower \
--robot.cameras="$ROBOT_CAMERAS" \
--policy.path=$HF_USERNAME/omx_pickandplace_act \
--dataset.repo_id=$HF_USERNAME/rollout_omx_pickandplace_act \
```
## Environment Reset Utility
Those are specific to this particular physical setup. Those are scripts that execute hardcoded sequences of actions on the robot to reset the environment, which is useful for data collection and evaluation. They are not general-purpose scripts.
`reset_environment.py` can be run standalone to prepare the workspace:
```bash
# Grab cube + place it at a random position on the left side
python -m examples.omx.reset_environment --port $ROBOT_PORT --mode grab_and_place
```
It also exposes `grab_cube(robot)` and `place_cube(robot)` for use in custom scripts.
+422
View File
@@ -0,0 +1,422 @@
#!/usr/bin/env python3
"""
Auto-record grab episodes for the OMX robot arm.
Each episode cycle:
1. grab_and_place — grab cube from workspace center and place at a random (pan, reach) position
2. HOME — return arm to home with gripper open
3. record_grab — execute a targeted grab to the stored position while recording
observations + actions to a LeRobotDataset
Usage (run from repo root):
python -m examples.omx.record_grab \\
--robot.type=omx_follower \\
--robot.port=/dev/ttyACM0 \\
--robot.id=omx_follower \\
--robot.cameras="{ wrist: {type: opencv, index_or_path: 6, width: 640, height: 480, fps: 30, fourcc: MJPG}, top: {type: opencv, index_or_path: 4, width: 640, height: 480, fps: 30, fourcc: MJPG} }" \\
--dataset.repo_id=<hf_username>/<dataset_name> \\
--dataset.root=data/omx_grab \\
--dataset.num_episodes=50 \\
--dataset.single_task="Grab the cube" \\
--dataset.streaming_encoding=true
"""
import logging
from dataclasses import dataclass
from pprint import pformat
import numpy as np
from lerobot.cameras import CameraConfig # noqa: F401
from lerobot.cameras.opencv import OpenCVCameraConfig # noqa: F401
from lerobot.configs import parser
from lerobot.configs.dataset import DatasetRecordConfig
from lerobot.datasets import (
LeRobotDataset,
VideoEncodingManager,
aggregate_pipeline_dataset_features,
create_initial_features,
)
from lerobot.processor import make_default_processors
from lerobot.robots import RobotConfig, make_robot_from_config
from lerobot.robots.omx_follower import OmxFollower
from lerobot.utils.constants import ACTION, OBS_STR
from lerobot.utils.feature_utils import build_dataset_frame, combine_feature_dicts
from lerobot.utils.robot_utils import precise_sleep
from .reset_environment import (
APPROACH_SPEED,
GRIPPER_CLOSE_POS,
HOME_POSE,
PUSH_END_ELBOW_FLEX,
PUSH_END_SHOULDER_LIFT,
PUSH_START_ELBOW_FLEX,
PUSH_START_SHOULDER_LIFT,
array_to_pose,
grab_cube,
horizontal_wrist_flex,
move_to_pose,
place_cube,
pose_to_array,
)
# ── Grab-episode motion parameters ────────────────────────────────────────────
# Shoulder-lift offset for the raised approach phase (subtracted from the target sl, arm is higher).
GRAB_RAISE_SL_OFFSET = 20.0
GRAB_LOWER_SPEED = 20.0
RECORD_SPEED = 30.0
# Pose the arm travels to after closing the gripper (cube held).
GRAB_CARRY_POSE = {
"shoulder_pan.pos": -23.0,
"shoulder_lift.pos": 5.0,
"elbow_flex.pos": 18.0,
"wrist_flex.pos": -14.0,
"wrist_roll.pos": 0.0,
"gripper.pos": GRIPPER_CLOSE_POS,
}
# Per-joint jitter limits (degrees) applied to transit waypoints for human-like variation.
# Cube-approach and carry poses are never jittered to preserve precision.
_JITTER_LIMITS: dict[str, float] = {
"shoulder_pan.pos": 5.0,
"shoulder_lift.pos": 4.0,
"elbow_flex.pos": 4.0,
"wrist_flex.pos": 3.0,
"wrist_roll.pos": 2.0,
"gripper.pos": 0.0,
}
def _jitter_pose(pose: dict, rng: np.random.Generator) -> dict:
"""Return a copy of pose with independent per-joint random perturbations."""
return {
k: v + rng.uniform(-_JITTER_LIMITS.get(k, 0.0), _JITTER_LIMITS.get(k, 0.0)) for k, v in pose.items()
}
def _random_stuck_pose(rng: np.random.Generator) -> dict:
"""Return a physically plausible stuck pose (failed grasp), gripper closed.
ef bounds are piecewise-linear in sl so the arm stays in a reachable,
table-safe envelope across the full sl range:
sl=-50 → ef ∈ [ 0, 50] (arm raised, can be bent forward)
sl= 0 → ef ∈ [-25, 25] (mid reach)
sl= 30 → ef ∈ [-20, 0] (arm extended, little room to flex)
wrist_flex is randomly offset from the horizontal value.
"""
pan = float(rng.uniform(-5.0, 35.0))
sl = float(rng.uniform(-50.0, 30.0))
if sl <= 0.0:
alpha = (sl + 50.0) / 50.0 # 0 at sl=-50, 1 at sl=0
ef_lo = alpha * -25.0 # 0 → -25
ef_hi = 50.0 + alpha * -25.0 # 50 → 25
else:
alpha = sl / 30.0 # 0 at sl=0, 1 at sl=30
ef_lo = -25.0 + alpha * 5.0 # -25 → -20
ef_hi = 25.0 + alpha * -25.0 # 25 → 0
ef = float(rng.uniform(ef_lo, ef_hi))
wf = horizontal_wrist_flex(sl, ef) + float(rng.uniform(-15.0, 15.0))
return {
"shoulder_pan.pos": pan,
"shoulder_lift.pos": sl,
"elbow_flex.pos": ef,
"wrist_flex.pos": wf,
"wrist_roll.pos": float(rng.uniform(-15.0, 15.0)),
"gripper.pos": GRIPPER_CLOSE_POS,
}
logger = logging.getLogger(__name__)
@dataclass
class OmxRecordGrabConfig:
robot: RobotConfig
dataset: DatasetRecordConfig
# Resume recording on an existing dataset.
resume: bool = False
# Fraction of episodes that start from a random stuck pose (gripper closed) to
# generate recovery data. 0.0 = disabled, 1.0 = all episodes are recovery starts.
recovery_prob: float = 0.5
def record_episode_spline(
robot: OmxFollower,
waypoints: list[dict],
speeds: list[float],
dataset: LeRobotDataset,
task: str,
) -> None:
"""Execute a Catmull-Rom-style spline through waypoints, recording each frame.
Segment durations are parameterized from the maximum absolute joint delta
between consecutive waypoints divided by the requested segment speed,
producing non-uniform timing in joint space. Interior tangents are derived
from the adjacent per-segment velocities, with clamped (zero-velocity)
endpoints so the arm starts and stops smoothly. Each segment is cubic
Hermite, giving C1 continuity at every waypoint.
"""
pts = [pose_to_array(w) for w in waypoints]
n = len(pts)
# Steps and duration per segment
n_steps_list = []
timestamps = []
for i in range(n - 1):
max_dist = float(np.max(np.abs(pts[i + 1] - pts[i])))
ns = max(1, int(max_dist / speeds[i] * dataset.fps)) if max_dist >= 0.5 else 0
n_steps_list.append(ns)
timestamps.append(ns / dataset.fps)
# Velocity tangents (deg/sec) — clamped at endpoints, Catmull-Rom for interior
vels = [np.zeros_like(pts[0])]
for i in range(1, n - 1):
v_prev = (pts[i] - pts[i - 1]) / timestamps[i - 1] if timestamps[i - 1] > 0 else np.zeros_like(pts[0])
v_next = (pts[i + 1] - pts[i]) / timestamps[i] if timestamps[i] > 0 else np.zeros_like(pts[0])
vels.append(0.5 * (v_prev + v_next))
vels.append(np.zeros_like(pts[0]))
dt = 1.0 / dataset.fps
for seg in range(n - 1):
ns = n_steps_list[seg]
if ns == 0:
continue
p0, p1 = pts[seg], pts[seg + 1]
# Scale velocity (deg/sec) to t-space tangent (deg/t-unit, where t: 0→1 over ns steps)
m0 = vels[seg] * timestamps[seg]
m1 = vels[seg + 1] * timestamps[seg]
for step in range(1, ns + 1):
t = step / ns
h00 = 2 * t**3 - 3 * t**2 + 1
h10 = t**3 - 2 * t**2 + t
h01 = -2 * t**3 + 3 * t**2
h11 = t**3 - t**2
commanded = h00 * p0 + h10 * m0 + h01 * p1 + h11 * m1
action = array_to_pose(commanded)
robot.send_action(action)
obs = robot.get_observation()
obs_frame = build_dataset_frame(dataset.features, obs, prefix=OBS_STR)
action_frame = build_dataset_frame(dataset.features, action, prefix=ACTION)
dataset.add_frame({**obs_frame, **action_frame, "task": task})
precise_sleep(dt)
def record_grab_episode(
robot: OmxFollower,
dataset: LeRobotDataset,
pan: float,
t: float,
task: str,
recovery_start: bool = False,
) -> None:
"""Execute a targeted grab to the stored (pan, t) position, recording every frame.
Normal sequence (initial HOME move is NOT recorded):
HOME → raised approach above cube → lower → close gripper
→ raise [jittered] → retract [jittered] → GRAB_CARRY_POSE → drop → HOME
Recovery sequence (recovery_start=True): arm is moved to a random stuck pose
(gripper closed) without recording, then recording begins from there:
stuck_pose → raised approach above cube → [normal grab sequence from there]
All segments are joined by a Catmull-Rom spline (C1-continuous velocities).
"""
sl = PUSH_START_SHOULDER_LIFT + t * (PUSH_END_SHOULDER_LIFT - PUSH_START_SHOULDER_LIFT)
ef = PUSH_START_ELBOW_FLEX + t * (PUSH_END_ELBOW_FLEX - PUSH_START_ELBOW_FLEX)
sl_raised = sl - GRAB_RAISE_SL_OFFSET
wf_horizontal = horizontal_wrist_flex(sl, ef)
rng = np.random.default_rng()
if recovery_start:
stuck_pose = _random_stuck_pose(rng)
logger.info(f"Recovery start: {stuck_pose}")
move_to_pose(robot, stuck_pose, APPROACH_SPEED)
first_waypoints = [stuck_pose]
first_speeds = []
else:
jittery_start = _jitter_pose(HOME_POSE, rng)
move_to_pose(robot, jittery_start, APPROACH_SPEED)
first_waypoints = [jittery_start]
first_speeds = []
waypoints = first_waypoints + [
{ # raised approach: arm above cube
"shoulder_pan.pos": pan,
"shoulder_lift.pos": sl_raised,
"elbow_flex.pos": ef,
"wrist_flex.pos": horizontal_wrist_flex(sl_raised, ef),
"wrist_roll.pos": 0.0,
"gripper.pos": 60.0,
},
{ # lower onto cube — no jitter: precision needed
"shoulder_pan.pos": pan,
"shoulder_lift.pos": sl,
"elbow_flex.pos": ef,
"wrist_flex.pos": wf_horizontal,
"wrist_roll.pos": 0.0,
"gripper.pos": 60.0,
},
{ # close gripper — no jitter: precision needed
"shoulder_pan.pos": pan,
"shoulder_lift.pos": sl,
"elbow_flex.pos": ef,
"wrist_flex.pos": wf_horizontal,
"wrist_roll.pos": 0.0,
"gripper.pos": GRIPPER_CLOSE_POS,
},
_jitter_pose(
{ # raise with cube
"shoulder_pan.pos": pan,
"shoulder_lift.pos": sl_raised,
"elbow_flex.pos": ef,
"wrist_flex.pos": horizontal_wrist_flex(sl_raised, ef),
"wrist_roll.pos": 0.0,
"gripper.pos": GRIPPER_CLOSE_POS,
},
rng,
),
_jitter_pose(
{ # retract: fold arm toward HOME before sweeping to carry zone
"shoulder_pan.pos": pan * 0.25,
"shoulder_lift.pos": HOME_POSE["shoulder_lift.pos"] + 5.0,
"elbow_flex.pos": HOME_POSE["elbow_flex.pos"] - 5.0,
"wrist_flex.pos": 0.0,
"wrist_roll.pos": 0.0,
"gripper.pos": GRIPPER_CLOSE_POS,
},
rng,
),
GRAB_CARRY_POSE, # no jitter: target drop zone
{**GRAB_CARRY_POSE, "gripper.pos": 60.0}, # drop cube
HOME_POSE,
]
speeds = first_speeds + [
RECORD_SPEED, # (HOME →) raised approach
GRAB_LOWER_SPEED, # raised approach → lower
GRAB_LOWER_SPEED, # lower → close gripper
RECORD_SPEED, # close gripper → raise
RECORD_SPEED, # raise → retract
RECORD_SPEED, # retract → carry pose
RECORD_SPEED, # carry pose → drop
RECORD_SPEED, # drop → HOME
]
record_episode_spline(robot, waypoints, speeds, dataset, task)
# Dwell at HOME for ~0.5 s before next episode
home_action = build_dataset_frame(dataset.features, HOME_POSE, prefix=ACTION)
dt = 1.0 / dataset.fps
for _ in range(int(dataset.fps * 0.5)):
robot.send_action(HOME_POSE)
obs = robot.get_observation()
obs_frame = build_dataset_frame(dataset.features, obs, prefix=OBS_STR)
dataset.add_frame({**obs_frame, **home_action, "task": task})
precise_sleep(dt)
@parser.wrap()
def record_grab(cfg: OmxRecordGrabConfig) -> LeRobotDataset:
logging.basicConfig(level=logging.INFO, format="%(levelname)s: %(message)s")
logger.info(pformat(cfg))
robot = make_robot_from_config(cfg.robot)
use_videos = cfg.dataset.video
teleop_action_processor, _, robot_obs_processor = make_default_processors()
dataset_features = combine_feature_dicts(
aggregate_pipeline_dataset_features(
pipeline=teleop_action_processor,
initial_features=create_initial_features(action=robot.action_features),
use_videos=use_videos,
),
aggregate_pipeline_dataset_features(
pipeline=robot_obs_processor,
initial_features=create_initial_features(observation=robot.observation_features),
use_videos=use_videos,
),
)
num_cameras = len(robot.cameras) if hasattr(robot, "cameras") else 0
dataset = None
try:
if cfg.resume:
dataset = LeRobotDataset.resume(
cfg.dataset.repo_id,
root=cfg.dataset.root,
streaming_encoding=cfg.dataset.streaming_encoding,
batch_encoding_size=cfg.dataset.video_encoding_batch_size,
vcodec=cfg.dataset.vcodec,
encoder_threads=cfg.dataset.encoder_threads,
image_writer_processes=cfg.dataset.num_image_writer_processes if num_cameras > 0 else 0,
image_writer_threads=cfg.dataset.num_image_writer_threads_per_camera * num_cameras
if num_cameras > 0
else 0,
)
else:
cfg.dataset.stamp_repo_id()
dataset = LeRobotDataset.create(
cfg.dataset.repo_id,
cfg.dataset.fps,
root=cfg.dataset.root,
robot_type=robot.name,
features=dataset_features,
use_videos=use_videos,
streaming_encoding=cfg.dataset.streaming_encoding,
batch_encoding_size=cfg.dataset.video_encoding_batch_size,
vcodec=cfg.dataset.vcodec,
encoder_threads=cfg.dataset.encoder_threads,
image_writer_processes=cfg.dataset.num_image_writer_processes if num_cameras > 0 else 0,
image_writer_threads=cfg.dataset.num_image_writer_threads_per_camera * num_cameras
if num_cameras > 0
else 0,
)
robot.connect(calibrate=True)
rng = np.random.default_rng()
with VideoEncodingManager(dataset):
for episode_idx in range(cfg.dataset.num_episodes):
logger.info(f"=== Episode {episode_idx + 1}/{cfg.dataset.num_episodes} ===")
logger.info("Step 1: grabbing and placing cube...")
grab_cube(robot)
pan, t = place_cube(robot)
logger.info(f"Cube placed at pan={pan:.1f}, reach={t:.2f}")
recovery_start = cfg.recovery_prob > 0 and float(rng.random()) < cfg.recovery_prob
logger.info(f"Step 2: recording {'recovery ' if recovery_start else ''}grab episode...")
record_grab_episode(
robot,
dataset,
pan,
t,
cfg.dataset.single_task,
recovery_start=recovery_start,
)
dataset.save_episode()
logger.info(f"Episode {episode_idx + 1} saved.")
finally:
if dataset:
dataset.finalize()
if robot.is_connected:
robot.disconnect()
if cfg.dataset.push_to_hub and dataset and dataset.num_episodes > 0:
dataset.push_to_hub(tags=cfg.dataset.tags, private=cfg.dataset.private)
return dataset
if __name__ == "__main__":
record_grab()
+267
View File
@@ -0,0 +1,267 @@
#!/usr/bin/env python3
"""
Auto-reset and cube-grab utility for the OMX robot arm.
Provides:
- grab_cube(robot): sweep workspace, center cube, close gripper
- place_cube(robot): carry cube to a random position, release
Standalone usage (run from repo root):
python -m examples.omx.reset_environment --port /dev/ttyACM1 --mode grab
python -m examples.omx.reset_environment --port /dev/ttyACM1 --mode grab_and_place
Joint range: -100 to 100 for arm joints; gripper: 50 = closed, 80 = open.
To read current joint values for calibration, add after robot.connect():
obs = robot.get_observation()
print({k: round(obs[k], 1) for k in JOINT_NAMES})
robot.disconnect(); raise SystemExit
Parallel-to-ground IK: wrist_flex = WRIST_HORIZONTAL_OFFSET - shoulder_lift - elbow_flex.
Linear interpolation preserves this constraint between any two poses that satisfy it.
"""
import argparse
import logging
import numpy as np
from lerobot.robots.omx_follower import OmxFollower, OmxFollowerConfig
from lerobot.robots.robot import Robot
from lerobot.utils.robot_utils import precise_sleep
logger = logging.getLogger(__name__)
# ── Poses ─────────────────────────────────────────────────────────────────────
HOME_POSE = {
"shoulder_pan.pos": 0.0,
"shoulder_lift.pos": -50.0,
"elbow_flex.pos": 50.0,
"wrist_flex.pos": 0.0,
"wrist_roll.pos": 0.0,
"gripper.pos": 60.0,
}
SWEEP_WAYPOINTS = [
{
"shoulder_pan.pos": -60.0,
"shoulder_lift.pos": 50.0,
"elbow_flex.pos": -60.0,
"wrist_flex.pos": -20.0,
"wrist_roll.pos": 0.0,
"gripper.pos": 60.0,
},
{
"shoulder_pan.pos": -30.0,
"shoulder_lift.pos": 50.0,
"elbow_flex.pos": -60.0,
"wrist_flex.pos": -5.0,
"wrist_roll.pos": 0.0,
"gripper.pos": 60.0,
},
{
"shoulder_pan.pos": 20.0,
"shoulder_lift.pos": 50.0,
"elbow_flex.pos": -55.0,
"wrist_flex.pos": -5.0,
"wrist_roll.pos": 0.0,
"gripper.pos": 60.0,
},
]
# ── Motion parameters ─────────────────────────────────────────────────────────
CONTROL_HZ = 30
APPROACH_SPEED = 50.0
SWEEP_SPEED = 40.0
# ── Grab-sequence parameters ──────────────────────────────────────────────────
GRAB_PAN = 0.0
SWEEP_LEFT_PAN = -60.0
SWEEP_RIGHT_PAN = 60.0
SWEEP_END_OFFSET = 5.0 # stop before center so the cube isn't pushed past GRAB_PAN
SWEEP_END_PAN_RANGE = (15.0, 20.0)
SWEEP_LOW_SHOULDER_LIFT = 50.0
SWEEP_LOW_ELBOW_FLEX_START = -60.0
SWEEP_LOW_ELBOW_FLEX_END = -55.0
SWEEP_HIGH_WRIST_FLEX = -20.0 # wrist tilted up during high approach to clear obstacles
PUSH_START_SHOULDER_LIFT = 0.0
PUSH_START_ELBOW_FLEX = 45.0
PUSH_END_SHOULDER_LIFT = 50.0
PUSH_END_ELBOW_FLEX = -50.0
# Subtracted from shoulder_lift during the push sweep to clear the platform surface.
# Does not affect the grab-target interpolation in record_grab.py.
PUSH_RAISE_OFFSET = 5.0
WRIST_HORIZONTAL_OFFSET = 0.0 # tune if gripper tilts during push: + tilts nose up, - down
GRIPPER_CLOSE_POS = 50.0
PLACE_LEFT_PAN_RANGE = (5.0, 30.0) # random pan range for cube placement on the left side
PLACE_REACH_RANGE = (0.1, 0.7) # 0 = arm retracted (PUSH_START), 1 = fully extended (PUSH_END)
JOINT_NAMES = [
"shoulder_pan.pos",
"shoulder_lift.pos",
"elbow_flex.pos",
"wrist_flex.pos",
"wrist_roll.pos",
"gripper.pos",
]
# ── Helpers ───────────────────────────────────────────────────────────────────
def pose_to_array(pose: dict) -> np.ndarray:
return np.array([pose[k] for k in JOINT_NAMES])
def array_to_pose(arr: np.ndarray) -> dict:
return {k: float(arr[i]) for i, k in enumerate(JOINT_NAMES)}
def horizontal_wrist_flex(shoulder_lift: float, elbow_flex: float) -> float:
return WRIST_HORIZONTAL_OFFSET - shoulder_lift - elbow_flex
def _low_sweep_pose(pan: float, elbow_flex: float, wrist_flex: float | None = None) -> dict:
sl = SWEEP_LOW_SHOULDER_LIFT
return {
"shoulder_pan.pos": pan,
"shoulder_lift.pos": sl,
"elbow_flex.pos": elbow_flex,
"wrist_flex.pos": horizontal_wrist_flex(sl, elbow_flex) if wrist_flex is None else wrist_flex,
"wrist_roll.pos": 0.0,
"gripper.pos": 60.0,
}
def _high_sweep_pose(pan: float) -> dict:
return {**HOME_POSE, "shoulder_pan.pos": pan, "wrist_flex.pos": SWEEP_HIGH_WRIST_FLEX}
def _push_pose(shoulder_lift: float, elbow_flex: float, pan: float = GRAB_PAN, gripper: float = 70.0) -> dict:
return {
"shoulder_pan.pos": pan,
"shoulder_lift.pos": shoulder_lift,
"elbow_flex.pos": elbow_flex,
"wrist_flex.pos": horizontal_wrist_flex(shoulder_lift, elbow_flex),
"wrist_roll.pos": 0.0,
"gripper.pos": gripper,
}
def move_to_pose(robot: Robot, target: dict, speed: float) -> None:
"""Interpolate from current position to target at the given speed (units/s)."""
obs = robot.get_observation()
current = np.array([obs[k] for k in JOINT_NAMES])
goal = pose_to_array(target)
max_distance = float(np.max(np.abs(goal - current)))
if max_distance < 0.5:
return
n_steps = max(1, int(max_distance / speed * CONTROL_HZ))
dt = 1.0 / CONTROL_HZ
for step in range(1, n_steps + 1):
t = step / n_steps
robot.send_action(array_to_pose(current + t * (goal - current)))
precise_sleep(dt)
# ── Sequences ─────────────────────────────────────────────────────────────────
def grab_cube(robot: Robot) -> None:
"""Left sweep → right sweep → extend arm parallel to ground → close gripper."""
move_to_pose(robot, HOME_POSE, APPROACH_SPEED)
for pan, end_pan in [
(SWEEP_LEFT_PAN, GRAB_PAN - SWEEP_END_OFFSET),
(SWEEP_RIGHT_PAN, GRAB_PAN + SWEEP_END_OFFSET),
]:
logger.info(f"Sweeping {'left' if pan < 0 else 'right'} → center...")
move_to_pose(robot, _high_sweep_pose(pan), APPROACH_SPEED)
move_to_pose(
robot, _low_sweep_pose(pan, SWEEP_LOW_ELBOW_FLEX_START, wrist_flex=-20.0), APPROACH_SPEED
)
move_to_pose(robot, _low_sweep_pose(end_pan, SWEEP_LOW_ELBOW_FLEX_END, wrist_flex=0.0), SWEEP_SPEED)
move_to_pose(robot, HOME_POSE, APPROACH_SPEED)
logger.info("Extending to push cube into gripper...")
move_to_pose(
robot,
_push_pose(PUSH_START_SHOULDER_LIFT - PUSH_RAISE_OFFSET, PUSH_START_ELBOW_FLEX),
APPROACH_SPEED,
)
move_to_pose(
robot,
_push_pose(PUSH_END_SHOULDER_LIFT - PUSH_RAISE_OFFSET, PUSH_END_ELBOW_FLEX),
SWEEP_SPEED,
)
logger.info("Closing gripper...")
move_to_pose(
robot,
_push_pose(PUSH_END_SHOULDER_LIFT, PUSH_END_ELBOW_FLEX, gripper=GRIPPER_CLOSE_POS),
APPROACH_SPEED,
)
logger.info("Grab complete.")
def place_cube(robot: Robot) -> tuple[float, float]:
"""Carry the cube (gripper closed) to a random position on the left side, then release.
Returns:
(pan, t): pan angle and reach scalar [0, 1] of the placement position.
"""
pan = float(np.random.uniform(*PLACE_LEFT_PAN_RANGE))
t = float(np.random.uniform(*PLACE_REACH_RANGE))
sl = PUSH_START_SHOULDER_LIFT + t * (PUSH_END_SHOULDER_LIFT - PUSH_START_SHOULDER_LIFT)
ef = PUSH_START_ELBOW_FLEX + t * (PUSH_END_ELBOW_FLEX - PUSH_START_ELBOW_FLEX)
logger.info(f"Placing cube at pan={pan:.1f}, reach={t:.2f}...")
move_to_pose(robot, {**HOME_POSE, "gripper.pos": GRIPPER_CLOSE_POS}, APPROACH_SPEED)
move_to_pose(
robot, {**HOME_POSE, "shoulder_pan.pos": pan, "gripper.pos": GRIPPER_CLOSE_POS}, APPROACH_SPEED
)
move_to_pose(robot, _push_pose(sl, ef, pan=pan, gripper=GRIPPER_CLOSE_POS), APPROACH_SPEED)
move_to_pose(robot, _push_pose(sl, ef, pan=pan, gripper=80.0), APPROACH_SPEED)
move_to_pose(robot, HOME_POSE, APPROACH_SPEED)
logger.info("Place complete.")
return pan, t
# ── Entry point ───────────────────────────────────────────────────────────────
def main():
parser = argparse.ArgumentParser(description="OMX arm reset / grab script")
parser.add_argument("--port", default="/dev/ttyACM1")
parser.add_argument("--robot_id", default="omx_follower")
parser.add_argument("--mode", choices=["grab", "grab_and_place"], default="grab_and_place")
args = parser.parse_args()
logging.basicConfig(level=logging.INFO, format="%(levelname)s: %(message)s")
robot = OmxFollower(OmxFollowerConfig(port=args.port, id=args.robot_id))
robot.connect(calibrate=True)
try:
if args.mode == "grab":
grab_cube(robot)
elif args.mode == "grab_and_place":
grab_cube(robot)
place_cube(robot)
finally:
robot.disconnect()
if __name__ == "__main__":
main()
+1 -1
View File
@@ -10,7 +10,7 @@ from lerobot.datasets import LeRobotDataset
from lerobot.envs.configs import HILSerlProcessorConfig, HILSerlRobotEnvConfig
from lerobot.policies import SACConfig
from lerobot.policies.sac.modeling_sac import SACPolicy
from lerobot.policies.sac.reward_model.modeling_classifier import Classifier
from lerobot.rewards.classifier.modeling_classifier import Classifier
from lerobot.rl.buffer import ReplayBuffer
from lerobot.rl.gym_manipulator import make_robot_env
from lerobot.robots.so_follower import SO100FollowerConfig
@@ -1,7 +1,7 @@
import torch
from lerobot.datasets import LeRobotDataset
from lerobot.policies import RewardClassifierConfig, make_policy, make_pre_post_processors
from lerobot.rewards import RewardClassifierConfig, make_reward_model, make_reward_pre_post_processors
def main():
@@ -22,10 +22,10 @@ def main():
model_name="microsoft/resnet-18",
)
# Make policy, preprocessor, and optimizer
policy = make_policy(config, ds_meta=dataset.meta)
optimizer = config.get_optimizer_preset().build(policy.parameters())
preprocessor, _ = make_pre_post_processors(policy_cfg=config, dataset_stats=dataset.meta.stats)
# Make reward model, preprocessor, and optimizer
reward_model = make_reward_model(config, dataset_stats=dataset.meta.stats)
optimizer = config.get_optimizer_preset().build(reward_model.parameters())
preprocessor, _ = make_reward_pre_post_processors(config, dataset_stats=dataset.meta.stats)
classifier_id = "<user>/reward_classifier_hil_serl_example"
@@ -42,7 +42,7 @@ def main():
batch = preprocessor(batch)
# Forward pass
loss, output_dict = policy.forward(batch)
loss, output_dict = reward_model.forward(batch)
# Backward pass and optimization
optimizer.zero_grad()
@@ -58,8 +58,8 @@ def main():
print("Training finished!")
# You can now save the trained policy.
policy.push_to_hub(classifier_id)
# You can now save the trained reward model.
reward_model.push_to_hub(classifier_id)
if __name__ == "__main__":
+22 -4
View File
@@ -59,8 +59,8 @@ keywords = ["lerobot", "huggingface", "robotics", "machine learning", "artifici
dependencies = [
# Core ML
"torch>=2.7,<2.11.0",
"torchvision>=0.22.0,<0.26.0",
"torch>=2.7,<2.12.0",
"torchvision>=0.22.0,<0.27.0",
"numpy>=2.0.0,<2.3.0", # NOTE: Explicitly listing numpy helps the resolver converge faster. Upper bound imposed by opencv-python-headless.
"opencv-python-headless>=4.9.0,<4.14.0",
"Pillow>=10.0.0,<13.0.0",
@@ -99,7 +99,7 @@ dataset = [
"pandas>=2.0.0,<3.0.0", # NOTE: Transitive dependency of datasets
"pyarrow>=21.0.0,<30.0.0", # NOTE: Transitive dependency of datasets
"lerobot[av-dep]",
"torchcodec>=0.3.0,<0.11.0; sys_platform != 'win32' and (sys_platform != 'linux' or (platform_machine != 'aarch64' and platform_machine != 'arm64' and platform_machine != 'armv7l')) and (sys_platform != 'darwin' or platform_machine != 'x86_64')", # NOTE: Windows support starts at version 0.7 (needs torch==2.8), ffmpeg>=8 support starts at version 0.8.1 (needs torch==2.9), system-wide ffmpeg support starts at version 0.10 (needs torch==2.10).
"torchcodec>=0.3.0,<0.12.0; sys_platform != 'win32' and (sys_platform != 'linux' or (platform_machine != 'aarch64' and platform_machine != 'arm64' and platform_machine != 'armv7l')) and (sys_platform != 'darwin' or platform_machine != 'x86_64')", # NOTE: Windows support starts at version 0.7 (needs torch==2.8), ffmpeg>=8 support starts at version 0.8.1 (needs torch==2.9), system-wide ffmpeg support starts at version 0.10 (needs torch==2.10), 0.11 needs torch==2.11, 0.12 needs torch==2.12.
"jsonlines>=4.0.0,<5.0.0",
]
training = [
@@ -128,7 +128,7 @@ dataset_viz = ["lerobot[dataset]", "lerobot[viz]"]
av-dep = ["av>=15.0.0,<16.0.0"]
pygame-dep = ["pygame>=2.5.1,<2.7.0"]
placo-dep = ["placo>=0.9.6,<0.9.17"]
transformers-dep = ["transformers==5.3.0"] # TODO(Steven): https://github.com/huggingface/lerobot/pull/3249
transformers-dep = ["transformers>=5.4.0,<5.6.0"]
grpcio-dep = ["grpcio==1.73.1", "protobuf>=6.31.1,<6.32.0"]
can-dep = ["python-can>=4.2.0,<5.0.0"]
peft-dep = ["peft>=0.18.0,<1.0.0"]
@@ -194,6 +194,8 @@ groot = [
]
sarm = ["lerobot[transformers-dep]", "pydantic>=2.0.0,<3.0.0", "faker>=33.0.0,<35.0.0", "lerobot[matplotlib-dep]", "lerobot[qwen-vl-utils-dep]"]
xvla = ["lerobot[transformers-dep]"]
eo1 = ["lerobot[transformers-dep]", "lerobot[qwen-vl-utils-dep]"]
evo1 = ["lerobot[transformers-dep]", "timm>=1.0.0,<1.1.0"]
hilserl = ["lerobot[transformers-dep]", "gym-hil>=0.1.13,<0.2.0", "lerobot[grpcio-dep]", "lerobot[placo-dep]"]
# Features
@@ -257,6 +259,7 @@ all = [
"lerobot[smolvla]",
# "lerobot[groot]", TODO(Steven): Gr00t requires specific installation instructions for flash-attn
"lerobot[xvla]",
"lerobot[evo1]",
"lerobot[hilserl]",
"lerobot[async]",
"lerobot[dev]",
@@ -292,6 +295,20 @@ lerobot-setup-can="lerobot.scripts.lerobot_setup_can:main"
lerobot-rollout="lerobot.scripts.lerobot_rollout:main"
# ---------------- Tool Configurations ----------------
# cu128 wheels keep broad hardware reach; the driver floor is 570.86.
# To use a different CUDA variant, reinstall torch with an explicit index, e.g.:
# uv pip install --force-reinstall torch torchvision \
# --index-url https://download.pytorch.org/whl/cu130
[[tool.uv.index]]
name = "pytorch-cu128"
url = "https://download.pytorch.org/whl/cu128"
explicit = true
[tool.uv.sources]
torch = [{ index = "pytorch-cu128", marker = "sys_platform == 'linux'" }]
torchvision = [{ index = "pytorch-cu128", marker = "sys_platform == 'linux'" }]
[tool.setuptools.package-data]
lerobot = ["envs/*.json"]
@@ -333,6 +350,7 @@ ignore = [
# E402: conditional-import guards (TYPE_CHECKING / is_package_available) must precede the imports they protect
"src/lerobot/scripts/convert_dataset_v21_to_v30.py" = ["E402"]
"src/lerobot/policies/wall_x/**" = ["N801", "N812", "SIM102", "SIM108", "SIM210", "SIM211", "B006", "B007", "SIM118"] # Supprese these as they are coming from original Qwen2_5_vl code TODO(pepijn): refactor original
"src/lerobot/policies/evo1/**" = ["N801", "N812"]
[tool.ruff.lint.isort]
combine-as-imports = true
@@ -17,6 +17,7 @@ Provides the RealSenseCamera class for capturing frames from Intel RealSense cam
"""
import logging
import sys
import time
from threading import Event, Lock, Thread
from typing import TYPE_CHECKING, Any
@@ -41,6 +42,7 @@ from ..utils import get_cv2_rotation
from .configuration_realsense import RealSenseCameraConfig
logger = logging.getLogger(__name__)
pkg_name = "pyrealsense2-macosx" if sys.platform == "darwin" else "pyrealsense2"
class RealSenseCamera(Camera):
@@ -114,7 +116,7 @@ class RealSenseCamera(Camera):
Args:
config: The configuration settings for the camera.
"""
require_package("pyrealsense2", extra="intelrealsense")
require_package(pkg_name, extra="intelrealsense", import_name="pyrealsense2")
super().__init__(config)
self.config = config
+5 -1
View File
@@ -41,8 +41,12 @@ def cfg_to_group(
return tag
return tag[:max_tag_length]
if cfg.is_reward_model_training:
trainable_tag = f"reward_model:{cfg.reward_model.type}"
else:
trainable_tag = f"policy:{cfg.policy.type}"
lst = [
f"policy:{cfg.policy.type}",
trainable_tag,
f"seed:{cfg.seed}",
]
if cfg.dataset is not None:
+163
View File
@@ -0,0 +1,163 @@
# Copyright 2026 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
import abc
import builtins
import json
import logging
import os
import tempfile
from dataclasses import dataclass, field
from pathlib import Path
from typing import Any, TypeVar
import draccus
from huggingface_hub import hf_hub_download
from huggingface_hub.constants import CONFIG_NAME
from huggingface_hub.errors import HfHubHTTPError
from lerobot.configs.types import PolicyFeature
from lerobot.optim.optimizers import OptimizerConfig
from lerobot.optim.schedulers import LRSchedulerConfig
from lerobot.utils.device_utils import auto_select_torch_device, is_torch_device_available
from lerobot.utils.hub import HubMixin
T = TypeVar("T", bound="RewardModelConfig")
logger = logging.getLogger(__name__)
@dataclass
class RewardModelConfig(draccus.ChoiceRegistry, HubMixin, abc.ABC):
"""Base configuration for reward models.
Args:
input_features: A dictionary defining the PolicyFeature of the input data for the reward. The key represents
the input data name, and the value is PolicyFeature, which consists of FeatureType and shape attributes.
output_features: A dictionary defining the PolicyFeature of the output data for the reward. The key represents
the output data name, and the value is PolicyFeature, which consists of FeatureType and shape attributes.
"""
# Reuses PolicyFeature
input_features: dict[str, PolicyFeature] = field(default_factory=dict)
output_features: dict[str, PolicyFeature] = field(default_factory=dict)
device: str | None = None
pretrained_path: str | None = None
push_to_hub: bool = False
repo_id: str | None = None
# Hub metadata
license: str | None = None
tags: list[str] | None = None
private: bool | None = None
def __post_init__(self) -> None:
if not self.device or not is_torch_device_available(self.device):
auto_device = auto_select_torch_device()
logger.warning(f"Device '{self.device}' is not available. Switching to '{auto_device}'.")
self.device = auto_device.type
@property
def type(self) -> str:
choice_name = self.get_choice_name(self.__class__)
if not isinstance(choice_name, str):
raise TypeError(f"Expected string from get_choice_name, got {type(choice_name)}")
return choice_name
@property
def observation_delta_indices(self) -> list | None: # type: ignore[type-arg]
return None
@property
def action_delta_indices(self) -> list | None: # type: ignore[type-arg]
return None
@property
def reward_delta_indices(self) -> list | None: # type: ignore[type-arg]
return None
@abc.abstractmethod
def get_optimizer_preset(self) -> OptimizerConfig:
raise NotImplementedError
def get_scheduler_preset(self) -> LRSchedulerConfig | None:
return None
def validate_features(self) -> None:
pass
def _save_pretrained(self, save_directory: Path) -> None:
with open(save_directory / CONFIG_NAME, "w") as f, draccus.config_type("json"):
draccus.dump(self, f, indent=4)
@classmethod
def from_pretrained(
cls: builtins.type[T],
pretrained_name_or_path: str | Path,
*,
force_download: bool = False,
resume_download: bool | None = None,
proxies: dict[Any, Any] | None = None,
token: str | bool | None = None,
cache_dir: str | Path | None = None,
local_files_only: bool = False,
revision: str | None = None,
**reward_kwargs: Any,
) -> T:
model_id = str(pretrained_name_or_path)
config_file: str | None = None
if Path(model_id).is_dir():
if CONFIG_NAME in os.listdir(model_id):
config_file = os.path.join(model_id, CONFIG_NAME)
else:
logger.error(f"{CONFIG_NAME} not found in {Path(model_id).resolve()}")
else:
try:
config_file = hf_hub_download(
repo_id=model_id,
filename=CONFIG_NAME,
revision=revision,
cache_dir=cache_dir,
force_download=force_download,
proxies=proxies,
resume_download=resume_download,
token=token,
local_files_only=local_files_only,
)
except HfHubHTTPError as e:
raise FileNotFoundError(
f"{CONFIG_NAME} not found on the HuggingFace Hub in {model_id}"
) from e
if config_file is None:
raise FileNotFoundError(f"{CONFIG_NAME} not found in {model_id}")
# HACK: Parse the original config to get the config subclass, so that we can
# apply cli overrides.
with draccus.config_type("json"):
orig_config = draccus.parse(cls, config_file, args=[])
with open(config_file) as f:
config = json.load(f)
config.pop("type", None)
with tempfile.NamedTemporaryFile("w+", delete=False, suffix=".json") as f:
json.dump(config, f)
config_file = f.name
cli_overrides = reward_kwargs.pop("cli_overrides", [])
with draccus.config_type("json"):
return draccus.parse(orig_config.__class__, config_file, args=cli_overrides)
+89 -29
View File
@@ -13,7 +13,9 @@
# limitations under the License.
import builtins
import datetime as dt
import json
import os
import tempfile
from dataclasses import dataclass, field
from pathlib import Path
from typing import Any
@@ -26,18 +28,57 @@ from lerobot import envs
from lerobot.configs import parser
from lerobot.optim import LRSchedulerConfig, OptimizerConfig
from lerobot.utils.hub import HubMixin
from lerobot.utils.sample_weighting import SampleWeightingConfig
from .default import DatasetConfig, EvalConfig, PeftConfig, WandBConfig
from .policies import PreTrainedConfig
from .rewards import RewardModelConfig
TRAIN_CONFIG_NAME = "train_config.json"
def _migrate_legacy_rabc_fields(config: dict[str, Any]) -> dict[str, Any] | None:
"""Return migrated payload for legacy RA-BC fields, or None when no migration is needed."""
legacy_fields = (
"use_rabc",
"rabc_progress_path",
"rabc_kappa",
"rabc_epsilon",
"rabc_head_mode",
)
if not any(key in config for key in legacy_fields):
return None
migrated_config = dict(config)
use_rabc = bool(migrated_config.pop("use_rabc", False))
rabc_progress_path = migrated_config.pop("rabc_progress_path", None)
rabc_kappa = migrated_config.pop("rabc_kappa", None)
rabc_epsilon = migrated_config.pop("rabc_epsilon", None)
rabc_head_mode = migrated_config.pop("rabc_head_mode", None)
# New configs may already define sample_weighting explicitly. In that case,
# legacy fields are ignored after being stripped from the payload.
if migrated_config.get("sample_weighting") is None and use_rabc:
sample_weighting: dict[str, Any] = {"type": "rabc"}
if rabc_progress_path is not None:
sample_weighting["progress_path"] = rabc_progress_path
if rabc_kappa is not None:
sample_weighting["kappa"] = rabc_kappa
if rabc_epsilon is not None:
sample_weighting["epsilon"] = rabc_epsilon
if rabc_head_mode is not None:
sample_weighting["head_mode"] = rabc_head_mode
migrated_config["sample_weighting"] = sample_weighting
return migrated_config
@dataclass
class TrainPipelineConfig(HubMixin):
dataset: DatasetConfig
env: envs.EnvConfig | None = None
policy: PreTrainedConfig | None = None
reward_model: RewardModelConfig | None = None
# Set `dir` to where you would like to save all of the run outputs. If you run another training session
# with the same value for `dir` its contents will be overwritten unless you set `resume` to true.
output_dir: Path | None = None
@@ -72,27 +113,41 @@ class TrainPipelineConfig(HubMixin):
wandb: WandBConfig = field(default_factory=WandBConfig)
peft: PeftConfig | None = None
# RA-BC (Reward-Aligned Behavior Cloning) parameters
use_rabc: bool = False # Enable reward-weighted training
rabc_progress_path: str | None = None # Path to precomputed SARM progress parquet file
rabc_kappa: float = 0.01 # Hard threshold for high-quality samples
rabc_epsilon: float = 1e-6 # Small constant for numerical stability
rabc_head_mode: str | None = "sparse" # For dual-head models: "sparse" or "dense"
# Sample weighting configuration (e.g., for RA-BC training)
sample_weighting: SampleWeightingConfig | None = None
# Rename map for the observation to override the image and state keys
rename_map: dict[str, str] = field(default_factory=dict)
checkpoint_path: Path | None = field(init=False, default=None)
@property
def is_reward_model_training(self) -> bool:
"""True when the config targets a reward model rather than a policy."""
return self.reward_model is not None
@property
def trainable_config(self) -> PreTrainedConfig | RewardModelConfig:
"""Return whichever config (policy or reward_model) is active."""
if self.is_reward_model_training:
return self.reward_model # type: ignore[return-value]
return self.policy # type: ignore[return-value]
def validate(self) -> None:
# HACK: We parse again the cli args here to get the pretrained paths if there was some.
policy_path = parser.get_path_arg("policy")
if policy_path:
# Only load the policy config
reward_model_path = parser.get_path_arg("reward_model")
if reward_model_path:
cli_overrides = parser.get_cli_overrides("reward_model")
self.reward_model = RewardModelConfig.from_pretrained(
reward_model_path, cli_overrides=cli_overrides
)
self.reward_model.pretrained_path = str(Path(reward_model_path))
elif policy_path:
cli_overrides = parser.get_cli_overrides("policy")
self.policy = PreTrainedConfig.from_pretrained(policy_path, cli_overrides=cli_overrides)
self.policy.pretrained_path = Path(policy_path)
elif self.resume:
# The entire train config is already loaded, we just need to get the checkpoint dir
config_path = parser.parse_arg("config_path")
if not config_path:
raise ValueError(
@@ -108,18 +163,22 @@ class TrainPipelineConfig(HubMixin):
policy_dir = Path(config_path).parent
if self.policy is not None:
self.policy.pretrained_path = policy_dir
if self.reward_model is not None:
self.reward_model.pretrained_path = str(policy_dir)
self.checkpoint_path = policy_dir.parent
if self.policy is None:
if self.policy is None and self.reward_model is None:
raise ValueError(
"Policy is not configured. Please specify a pretrained policy with `--policy.path`."
"Neither policy nor reward_model is configured. "
"Please specify one with `--policy.path` or `--reward_model.path`."
)
active_cfg = self.trainable_config
if not self.job_name:
if self.env is None:
self.job_name = f"{self.policy.type}"
self.job_name = f"{active_cfg.type}"
else:
self.job_name = f"{self.env.type}_{self.policy.type}"
self.job_name = f"{self.env.type}_{active_cfg.type}"
if not self.resume and isinstance(self.output_dir, Path) and self.output_dir.is_dir():
raise FileExistsError(
@@ -137,26 +196,16 @@ class TrainPipelineConfig(HubMixin):
if not self.use_policy_training_preset and (self.optimizer is None or self.scheduler is None):
raise ValueError("Optimizer and Scheduler must be set when the policy presets are not used.")
elif self.use_policy_training_preset and not self.resume:
self.optimizer = self.policy.get_optimizer_preset()
self.scheduler = self.policy.get_scheduler_preset()
self.optimizer = active_cfg.get_optimizer_preset()
self.scheduler = active_cfg.get_scheduler_preset()
if self.policy.push_to_hub and not self.policy.repo_id:
raise ValueError(
"'policy.repo_id' argument missing. Please specify it to push the model to the hub."
)
if self.use_rabc and not self.rabc_progress_path:
# Auto-detect from dataset path
repo_id = self.dataset.repo_id
if self.dataset.root:
self.rabc_progress_path = str(Path(self.dataset.root) / "sarm_progress.parquet")
else:
self.rabc_progress_path = f"hf://datasets/{repo_id}/sarm_progress.parquet"
if hasattr(active_cfg, "push_to_hub") and active_cfg.push_to_hub and not active_cfg.repo_id:
raise ValueError("'repo_id' argument missing. Please specify it to push the model to the hub.")
@classmethod
def __get_path_fields__(cls) -> list[str]:
"""This enables the parser to load config from the policy using `--policy.path=local/dir`"""
return ["policy"]
"""Keys for draccus pretrained-path loading."""
return ["policy", "reward_model"]
def to_dict(self) -> dict[str, Any]:
return draccus.encode(self) # type: ignore[no-any-return] # because of the third-party library draccus uses Any as the return type
@@ -207,6 +256,17 @@ class TrainPipelineConfig(HubMixin):
) from e
cli_args = kwargs.pop("cli_args", [])
# Legacy RA-BC migration only applies to framework-saved checkpoints (always JSON).
# Hand-written YAML/TOML configs are expected to use the current sample_weighting schema.
if config_file is not None and config_file.endswith(".json"):
with open(config_file) as f:
config = json.load(f)
migrated_config = _migrate_legacy_rabc_fields(config)
if migrated_config is not None:
with tempfile.NamedTemporaryFile("w+", delete=False, suffix=".json") as f:
json.dump(migrated_config, f)
config_file = f.name
with draccus.config_type("json"):
return draccus.parse(cls, config_file, args=cli_args)
+13 -17
View File
@@ -97,8 +97,8 @@ def update_data_df(df, src_meta, dst_meta):
pd.DataFrame: Updated DataFrame with adjusted indices.
"""
df["episode_index"] = df["episode_index"] + dst_meta.info["total_episodes"]
df["index"] = df["index"] + dst_meta.info["total_frames"]
df["episode_index"] = df["episode_index"] + dst_meta.info.total_episodes
df["index"] = df["index"] + dst_meta.info.total_frames
src_task_names = src_meta.tasks.index.take(df["task_index"].to_numpy())
df["task_index"] = dst_meta.tasks.loc[src_task_names, "task_index"].to_numpy()
@@ -225,9 +225,9 @@ def update_meta_data(
# Clean up temporary columns
df = df.drop(columns=["_orig_chunk", "_orig_file"])
df["dataset_from_index"] = df["dataset_from_index"] + dst_meta.info["total_frames"]
df["dataset_to_index"] = df["dataset_to_index"] + dst_meta.info["total_frames"]
df["episode_index"] = df["episode_index"] + dst_meta.info["total_episodes"]
df["dataset_from_index"] = df["dataset_from_index"] + dst_meta.info.total_frames
df["dataset_to_index"] = df["dataset_to_index"] + dst_meta.info.total_frames
df["episode_index"] = df["episode_index"] + dst_meta.info.total_episodes
return df
@@ -237,8 +237,8 @@ def aggregate_datasets(
aggr_repo_id: str,
roots: list[Path] | None = None,
aggr_root: Path | None = None,
data_files_size_in_mb: float | None = None,
video_files_size_in_mb: float | None = None,
data_files_size_in_mb: int | None = None,
video_files_size_in_mb: int | None = None,
chunk_size: int | None = None,
):
"""Aggregates multiple LeRobot datasets into a single unified dataset.
@@ -313,8 +313,8 @@ def aggregate_datasets(
# to avoid interference between different source datasets
data_idx.pop("src_to_dst", None)
dst_meta.info["total_episodes"] += src_meta.total_episodes
dst_meta.info["total_frames"] += src_meta.total_frames
dst_meta.info.total_episodes += src_meta.total_episodes
dst_meta.info.total_frames += src_meta.total_frames
finalize_aggregation(dst_meta, all_metadata)
logging.info("Aggregation complete.")
@@ -640,14 +640,10 @@ def finalize_aggregation(aggr_meta, all_metadata):
write_tasks(aggr_meta.tasks, aggr_meta.root)
logging.info("write info")
aggr_meta.info.update(
{
"total_tasks": len(aggr_meta.tasks),
"total_episodes": sum(m.total_episodes for m in all_metadata),
"total_frames": sum(m.total_frames for m in all_metadata),
"splits": {"train": f"0:{sum(m.total_episodes for m in all_metadata)}"},
}
)
aggr_meta.info.total_tasks = len(aggr_meta.tasks)
aggr_meta.info.total_episodes = sum(m.total_episodes for m in all_metadata)
aggr_meta.info.total_frames = sum(m.total_frames for m in all_metadata)
aggr_meta.info.splits = {"train": f"0:{sum(m.total_episodes for m in all_metadata)}"}
write_info(aggr_meta.info, aggr_meta.root)
logging.info("write stats")
+21 -23
View File
@@ -37,13 +37,11 @@ from .io_utils import (
load_subtasks,
load_tasks,
write_info,
write_json,
write_stats,
write_tasks,
)
from .utils import (
DEFAULT_EPISODES_PATH,
INFO_PATH,
check_version_compatibility,
get_safe_version,
has_legacy_hub_download_metadata,
@@ -228,7 +226,7 @@ class LeRobotDatasetMetadata:
@property
def _version(self) -> packaging.version.Version:
"""Codebase version used to create this dataset."""
return packaging.version.parse(self.info["codebase_version"])
return packaging.version.parse(self.info.codebase_version)
def get_data_file_path(self, ep_index: int) -> Path:
"""Return the relative parquet file path for the given episode index.
@@ -283,27 +281,27 @@ class LeRobotDatasetMetadata:
@property
def data_path(self) -> str:
"""Formattable string for the parquet files."""
return self.info["data_path"]
return self.info.data_path
@property
def video_path(self) -> str | None:
"""Formattable string for the video files."""
return self.info["video_path"]
return self.info.video_path
@property
def robot_type(self) -> str | None:
"""Robot type used in recording this dataset."""
return self.info["robot_type"]
return self.info.robot_type
@property
def fps(self) -> int:
"""Frames per second used during data collection."""
return self.info["fps"]
return self.info.fps
@property
def features(self) -> dict[str, dict]:
"""All features contained in the dataset."""
return self.info["features"]
return self.info.features
@property
def image_keys(self) -> list[str]:
@@ -333,32 +331,32 @@ class LeRobotDatasetMetadata:
@property
def total_episodes(self) -> int:
"""Total number of episodes available."""
return self.info["total_episodes"]
return self.info.total_episodes
@property
def total_frames(self) -> int:
"""Total number of frames saved in this dataset."""
return self.info["total_frames"]
return self.info.total_frames
@property
def total_tasks(self) -> int:
"""Total number of different tasks performed in this dataset."""
return self.info["total_tasks"]
return self.info.total_tasks
@property
def chunks_size(self) -> int:
"""Max number of files per chunk."""
return self.info["chunks_size"]
return self.info.chunks_size
@property
def data_files_size_in_mb(self) -> int:
"""Max size of data file in mega bytes."""
return self.info["data_files_size_in_mb"]
return self.info.data_files_size_in_mb
@property
def video_files_size_in_mb(self) -> int:
"""Max size of video file in mega bytes."""
return self.info["video_files_size_in_mb"]
return self.info.video_files_size_in_mb
def get_task_index(self, task: str) -> int | None:
"""
@@ -502,10 +500,10 @@ class LeRobotDatasetMetadata:
self._save_episode_metadata(episode_dict)
# Update info
self.info["total_episodes"] += 1
self.info["total_frames"] += episode_length
self.info["total_tasks"] = len(self.tasks)
self.info["splits"] = {"train": f"0:{self.info['total_episodes']}"}
self.info.total_episodes += 1
self.info.total_frames += episode_length
self.info.total_tasks = len(self.tasks)
self.info.splits = {"train": f"0:{self.info.total_episodes}"}
write_info(self.info, self.root)
@@ -524,7 +522,7 @@ class LeRobotDatasetMetadata:
for key in video_keys:
if not self.features[key].get("info", None):
video_path = self.root / self.video_path.format(video_key=key, chunk_index=0, file_index=0)
self.info["features"][key]["info"] = get_video_info(video_path)
self.info.features[key]["info"] = get_video_info(video_path)
def update_chunk_settings(
self,
@@ -546,17 +544,17 @@ class LeRobotDatasetMetadata:
if chunks_size is not None:
if chunks_size <= 0:
raise ValueError(f"chunks_size must be positive, got {chunks_size}")
self.info["chunks_size"] = chunks_size
self.info.chunks_size = chunks_size
if data_files_size_in_mb is not None:
if data_files_size_in_mb <= 0:
raise ValueError(f"data_files_size_in_mb must be positive, got {data_files_size_in_mb}")
self.info["data_files_size_in_mb"] = data_files_size_in_mb
self.info.data_files_size_in_mb = data_files_size_in_mb
if video_files_size_in_mb is not None:
if video_files_size_in_mb <= 0:
raise ValueError(f"video_files_size_in_mb must be positive, got {video_files_size_in_mb}")
self.info["video_files_size_in_mb"] = video_files_size_in_mb
self.info.video_files_size_in_mb = video_files_size_in_mb
# Update the info file on disk
write_info(self.info, self.root)
@@ -653,7 +651,7 @@ class LeRobotDatasetMetadata:
f"Features contain video keys {obj.video_keys}, but 'use_videos' is set to False. "
"Either remove video features from the features dict, or set 'use_videos=True'."
)
write_json(obj.info, obj.root / INFO_PATH)
write_info(obj.info, obj.root)
obj.revision = None
obj._pq_writer = None
obj.latest_episode = None
+19 -24
View File
@@ -897,14 +897,10 @@ def _copy_and_reindex_episodes_metadata(
dst_meta.finalize()
dst_meta.info.update(
{
"total_episodes": len(episode_mapping),
"total_frames": total_frames,
"total_tasks": len(dst_meta.tasks) if dst_meta.tasks is not None else 0,
"splits": {"train": f"0:{len(episode_mapping)}"},
}
)
dst_meta.info.total_episodes = len(episode_mapping)
dst_meta.info.total_frames = total_frames
dst_meta.info.total_tasks = len(dst_meta.tasks) if dst_meta.tasks is not None else 0
dst_meta.info.splits = {"train": f"0:{len(episode_mapping)}"}
write_info(dst_meta.info, dst_meta.root)
if not all_stats:
@@ -1069,21 +1065,20 @@ def _copy_episodes_metadata_and_stats(
if episodes_dir.exists():
shutil.copytree(episodes_dir, dst_episodes_dir, dirs_exist_ok=True)
dst_meta.info.update(
{
"total_episodes": src_dataset.meta.total_episodes,
"total_frames": src_dataset.meta.total_frames,
"total_tasks": src_dataset.meta.total_tasks,
"splits": src_dataset.meta.info.get("splits", {"train": f"0:{src_dataset.meta.total_episodes}"}),
}
dst_meta.info.total_episodes = src_dataset.meta.total_episodes
dst_meta.info.total_frames = src_dataset.meta.total_frames
dst_meta.info.total_tasks = src_dataset.meta.total_tasks
# Preserve original splits if available, otherwise create default
dst_meta.info.splits = (
src_dataset.meta.info.splits
if src_dataset.meta.info.splits
else {"train": f"0:{src_dataset.meta.total_episodes}"}
)
if dst_meta.video_keys and src_dataset.meta.video_keys:
for key in dst_meta.video_keys:
if key in src_dataset.meta.features:
dst_meta.info["features"][key]["info"] = src_dataset.meta.info["features"][key].get(
"info", {}
)
dst_meta.info.features[key]["info"] = src_dataset.meta.info.features[key].get("info", {})
write_info(dst_meta.info, dst_meta.root)
@@ -1525,7 +1520,7 @@ def modify_tasks(
write_tasks(new_task_df, root)
# Update info.json
dataset.meta.info["total_tasks"] = len(unique_tasks)
dataset.meta.info.total_tasks = len(unique_tasks)
write_info(dataset.meta.info, root)
# Reload metadata to reflect changes
@@ -1858,10 +1853,10 @@ def convert_image_to_video_dataset(
episodes_df.to_parquet(episodes_path, index=False)
# Update metadata info
new_meta.info["total_episodes"] = len(episode_indices)
new_meta.info["total_frames"] = sum(ep["length"] for ep in all_episode_metadata.values())
new_meta.info["total_tasks"] = dataset.meta.total_tasks
new_meta.info["splits"] = {"train": f"0:{len(episode_indices)}"}
new_meta.info.total_episodes = len(episode_indices)
new_meta.info.total_frames = sum(ep["length"] for ep in all_episode_metadata.values())
new_meta.info.total_tasks = dataset.meta.total_tasks
new_meta.info.splits = {"train": f"0:{len(episode_indices)}"}
# Update video info for all image keys (now videos)
# We need to manually set video info since update_video_info() checks video_keys first
@@ -1870,7 +1865,7 @@ def convert_image_to_video_dataset(
video_path = new_meta.root / new_meta.video_path.format(
video_key=img_key, chunk_index=0, file_index=0
)
new_meta.info["features"][img_key]["info"] = get_video_info(video_path)
new_meta.info.features[img_key]["info"] = get_video_info(video_path)
write_info(new_meta.info, new_meta.root)
+7 -4
View File
@@ -19,6 +19,7 @@ from pprint import pformat
import torch
from lerobot.configs import PreTrainedConfig
from lerobot.configs.rewards import RewardModelConfig
from lerobot.configs.train import TrainPipelineConfig
from lerobot.transforms import ImageTransforms
from lerobot.utils.constants import ACTION, IMAGENET_STATS, OBS_PREFIX, REWARD
@@ -30,12 +31,14 @@ from .streaming_dataset import StreamingLeRobotDataset
def resolve_delta_timestamps(
cfg: PreTrainedConfig, ds_meta: LeRobotDatasetMetadata
cfg: PreTrainedConfig | RewardModelConfig, ds_meta: LeRobotDatasetMetadata
) -> dict[str, list] | None:
"""Resolves delta_timestamps by reading from the 'delta_indices' properties of the PreTrainedConfig.
"""Resolves delta_timestamps by reading from the 'delta_indices' properties of the config.
Args:
cfg (PreTrainedConfig): The PreTrainedConfig to read delta_indices from.
cfg (PreTrainedConfig | RewardModelConfig): The config to read delta_indices from. Both
``PreTrainedConfig`` and concrete ``RewardModelConfig`` subclasses expose the
``{observation,action,reward}_delta_indices`` properties used below.
ds_meta (LeRobotDatasetMetadata): The dataset from which features and fps are used to build
delta_timestamps against.
@@ -82,7 +85,7 @@ def make_dataset(cfg: TrainPipelineConfig) -> LeRobotDataset | MultiLeRobotDatas
ds_meta = LeRobotDatasetMetadata(
cfg.dataset.repo_id, root=cfg.dataset.root, revision=cfg.dataset.revision
)
delta_timestamps = resolve_delta_timestamps(cfg.policy, ds_meta)
delta_timestamps = resolve_delta_timestamps(cfg.trainable_config, ds_meta)
if not cfg.dataset.streaming:
dataset = LeRobotDataset(
cfg.dataset.repo_id,
+18 -18
View File
@@ -28,6 +28,7 @@ from .utils import (
DEFAULT_DATA_PATH,
DEFAULT_VIDEO_FILE_SIZE_IN_MB,
DEFAULT_VIDEO_PATH,
DatasetInfo,
)
@@ -78,8 +79,8 @@ def create_empty_dataset_info(
chunks_size: int | None = None,
data_files_size_in_mb: int | None = None,
video_files_size_in_mb: int | None = None,
) -> dict:
"""Create a template dictionary for a new dataset's `info.json`.
) -> DatasetInfo:
"""Create a template ``DatasetInfo`` object for a new dataset's ``meta/info.json``.
Args:
codebase_version (str): The version of the LeRobot codebase.
@@ -87,25 +88,24 @@ def create_empty_dataset_info(
features (dict): The LeRobot features dictionary for the dataset.
use_videos (bool): Whether the dataset will store videos.
robot_type (str | None): The type of robot used, if any.
chunks_size (int | None): Max files per chunk directory. Defaults to ``DEFAULT_CHUNK_SIZE``.
data_files_size_in_mb (int | None): Max parquet file size in MB. Defaults to ``DEFAULT_DATA_FILE_SIZE_IN_MB``.
video_files_size_in_mb (int | None): Max video file size in MB. Defaults to ``DEFAULT_VIDEO_FILE_SIZE_IN_MB``.
Returns:
dict: A dictionary with the initial dataset metadata.
DatasetInfo: A typed dataset information object with initial metadata.
"""
return {
"codebase_version": codebase_version,
"robot_type": robot_type,
"total_episodes": 0,
"total_frames": 0,
"total_tasks": 0,
"chunks_size": chunks_size or DEFAULT_CHUNK_SIZE,
"data_files_size_in_mb": data_files_size_in_mb or DEFAULT_DATA_FILE_SIZE_IN_MB,
"video_files_size_in_mb": video_files_size_in_mb or DEFAULT_VIDEO_FILE_SIZE_IN_MB,
"fps": fps,
"splits": {},
"data_path": DEFAULT_DATA_PATH,
"video_path": DEFAULT_VIDEO_PATH if use_videos else None,
"features": features,
}
return DatasetInfo(
codebase_version=codebase_version,
fps=fps,
features=features,
robot_type=robot_type,
chunks_size=chunks_size or DEFAULT_CHUNK_SIZE,
data_files_size_in_mb=data_files_size_in_mb or DEFAULT_DATA_FILE_SIZE_IN_MB,
video_files_size_in_mb=video_files_size_in_mb or DEFAULT_VIDEO_FILE_SIZE_IN_MB,
data_path=DEFAULT_DATA_PATH,
video_path=DEFAULT_VIDEO_PATH if use_videos else None,
)
def check_delta_timestamps(
+7 -10
View File
@@ -39,6 +39,7 @@ from .utils import (
EPISODES_DIR,
INFO_PATH,
STATS_PATH,
DatasetInfo,
serialize_dict,
)
@@ -115,25 +116,21 @@ def embed_images(dataset: datasets.Dataset) -> datasets.Dataset:
return dataset
def write_info(info: dict, local_dir: Path) -> None:
write_json(info, local_dir / INFO_PATH)
def write_info(info: DatasetInfo, local_dir: Path) -> None:
write_json(info.to_dict(), local_dir / INFO_PATH)
def load_info(local_dir: Path) -> dict:
def load_info(local_dir: Path) -> DatasetInfo:
"""Load dataset info metadata from its standard file path.
Also converts shape lists to tuples for consistency.
Args:
local_dir (Path): The root directory of the dataset.
Returns:
dict: The dataset information dictionary.
DatasetInfo: The typed dataset information object.
"""
info = load_json(local_dir / INFO_PATH)
for ft in info["features"].values():
ft["shape"] = tuple(ft["shape"])
return info
raw = load_json(local_dir / INFO_PATH)
return DatasetInfo.from_dict(raw)
def write_stats(stats: dict, local_dir: Path) -> None:
+4
View File
@@ -630,6 +630,8 @@ class LeRobotDataset(torch.utils.data.Dataset):
streaming_encoding: bool = False,
encoder_queue_maxsize: int = 30,
encoder_threads: int | None = None,
video_files_size_in_mb: int | None = None,
data_files_size_in_mb: int | None = None,
) -> "LeRobotDataset":
"""Create a new LeRobotDataset from scratch for recording data.
@@ -677,6 +679,8 @@ class LeRobotDataset(torch.utils.data.Dataset):
root=root,
use_videos=use_videos,
metadata_buffer_size=metadata_buffer_size,
video_files_size_in_mb=video_files_size_in_mb,
data_files_size_in_mb=data_files_size_in_mb,
)
obj.repo_id = obj.meta.repo_id
obj._requested_root = obj.meta.root
+2 -2
View File
@@ -123,7 +123,7 @@ class MultiLeRobotDataset(torch.utils.data.Dataset):
NOTE: Fow now, this relies on a check in __init__ to make sure all sub-datasets have the same info.
"""
return self._datasets[0].meta.info["fps"]
return self._datasets[0].meta.info.fps
@property
def video(self) -> bool:
@@ -133,7 +133,7 @@ class MultiLeRobotDataset(torch.utils.data.Dataset):
NOTE: Fow now, this relies on a check in __init__ to make sure all sub-datasets have the same info.
"""
return self._datasets[0].meta.info.get("video", False)
return len(self._datasets[0].meta.video_keys) > 0
@property
def features(self) -> datasets.Features:
+1 -1
View File
@@ -434,7 +434,7 @@ class StreamingLeRobotDataset(torch.utils.data.IterableDataset):
def _make_padding_camera_frame(self, camera_key: str):
"""Variable-shape padding frame for given camera keys, given in (H, W, C)"""
return torch.zeros(self.meta.info["features"][camera_key]["shape"]).permute(-1, 0, 1)
return torch.zeros(self.meta.info.features[camera_key]["shape"]).permute(-1, 0, 1)
def _get_video_frame_padding_mask(
self,
+127 -5
View File
@@ -14,9 +14,11 @@
# See the License for the specific language governing permissions and
# limitations under the License.
import contextlib
import dataclasses
import importlib.resources
import json
import logging
from dataclasses import dataclass, field
from pathlib import Path
import datasets
@@ -70,9 +72,12 @@ class ForwardCompatibilityError(CompatibilityError):
super().__init__(message)
logger = logging.getLogger(__name__)
DEFAULT_CHUNK_SIZE = 1000 # Max number of files per chunk
DEFAULT_DATA_FILE_SIZE_IN_MB = 50 # Max size per file
DEFAULT_VIDEO_FILE_SIZE_IN_MB = 100 # Max size per file
DEFAULT_DATA_FILE_SIZE_IN_MB = 100 # Max size per file
DEFAULT_VIDEO_FILE_SIZE_IN_MB = 200 # Max size per file
INFO_PATH = "meta/info.json"
STATS_PATH = "meta/stats.json"
@@ -94,6 +99,123 @@ LEGACY_EPISODES_STATS_PATH = "meta/episodes_stats.jsonl"
LEGACY_TASKS_PATH = "meta/tasks.jsonl"
@dataclass
class DatasetInfo:
"""Typed representation of the ``meta/info.json`` file for a LeRobot dataset.
Replaces the previously untyped ``dict`` returned by ``load_info()`` and
created by ``create_empty_dataset_info()``. Using a dataclass provides
explicit field definitions, IDE auto-completion, and validation at
construction time.
"""
codebase_version: str
fps: int
features: dict[str, dict]
# Episode / frame counters — start at zero for new datasets
total_episodes: int = 0
total_frames: int = 0
total_tasks: int = 0
# Storage settings
chunks_size: int = field(default=DEFAULT_CHUNK_SIZE)
data_files_size_in_mb: int = field(default=DEFAULT_DATA_FILE_SIZE_IN_MB)
video_files_size_in_mb: int = field(default=DEFAULT_VIDEO_FILE_SIZE_IN_MB)
# File path templates
data_path: str = field(default=DEFAULT_DATA_PATH)
video_path: str | None = field(default=DEFAULT_VIDEO_PATH)
# Optional metadata
robot_type: str | None = None
splits: dict[str, str] = field(default_factory=dict)
def __post_init__(self) -> None:
# Coerce feature shapes from list to tuple — JSON deserialisation
# returns lists, but the rest of the codebase expects tuples.
for ft in self.features.values():
if isinstance(ft.get("shape"), list):
ft["shape"] = tuple(ft["shape"])
if self.fps <= 0:
raise ValueError(f"fps must be positive, got {self.fps}")
if self.chunks_size <= 0:
raise ValueError(f"chunks_size must be positive, got {self.chunks_size}")
if self.data_files_size_in_mb <= 0:
raise ValueError(f"data_files_size_in_mb must be positive, got {self.data_files_size_in_mb}")
if self.video_files_size_in_mb <= 0:
raise ValueError(f"video_files_size_in_mb must be positive, got {self.video_files_size_in_mb}")
def to_dict(self) -> dict:
"""Return a JSON-serialisable dict.
Converts tuple shapes back to lists so ``json.dump`` can handle them.
"""
d = dataclasses.asdict(self)
for ft in d["features"].values():
if isinstance(ft.get("shape"), tuple):
ft["shape"] = list(ft["shape"])
return d
@classmethod
def from_dict(cls, data: dict) -> "DatasetInfo":
"""Construct from a raw dict (e.g. loaded directly from JSON).
Unknown keys are ignored for forward compatibility with datasets that
carry additional fields (e.g. ``total_videos`` from v2.x). A warning is
logged when such fields are present.
"""
known = {f.name for f in dataclasses.fields(cls)}
unknown = sorted(k for k in data if k not in known)
if unknown:
logger.warning(f"Unknown fields in DatasetInfo: {unknown}. These will be ignored.")
return cls(**{k: v for k, v in data.items() if k in known})
# ---------------------------------------------------------------------------
# Temporary dict-style compatibility layer
# Allows existing ``info["key"]`` call-sites to keep working without changes.
# Once all callers have been migrated to attribute access, remove these.
# ---------------------------------------------------------------------------
def __getitem__(self, key: str):
import warnings
warnings.warn(
f"Accessing DatasetInfo with dict-style syntax info['{key}'] is deprecated. "
f"Use attribute access info.{key} instead.",
DeprecationWarning,
stacklevel=2,
)
try:
return getattr(self, key)
except AttributeError as err:
raise KeyError(key) from err
def __setitem__(self, key: str, value) -> None:
import warnings
warnings.warn(
f"Setting DatasetInfo with dict-style syntax info['{key}'] = ... is deprecated. "
f"Use attribute assignment info.{key} = ... instead.",
DeprecationWarning,
stacklevel=2,
)
if not hasattr(self, key):
raise KeyError(f"DatasetInfo has no field '{key}'")
setattr(self, key, value)
def __contains__(self, key: str) -> bool:
"""Check if a field exists (dict-like interface)."""
return hasattr(self, key)
def get(self, key: str, default=None):
"""Get attribute value with default fallback (dict-like interface)."""
try:
return getattr(self, key)
except AttributeError:
return default
def has_legacy_hub_download_metadata(root: Path) -> bool:
"""Return ``True`` when *root* looks like a legacy Hub ``local_dir`` mirror.
@@ -294,7 +416,7 @@ def create_branch(repo_id: str, *, branch: str, repo_type: str | None = None) ->
def create_lerobot_dataset_card(
tags: list | None = None,
dataset_info: dict | None = None,
dataset_info: DatasetInfo | None = None,
**kwargs,
) -> DatasetCard:
"""Create a `DatasetCard` for a LeRobot dataset.
@@ -305,7 +427,7 @@ def create_lerobot_dataset_card(
Args:
tags (list | None): A list of tags to add to the dataset card.
dataset_info (dict | None): The dataset's info dictionary, which will
dataset_info (DatasetInfo | None): The dataset's info object, which will
be displayed on the card.
**kwargs: Additional keyword arguments to populate the card template.
@@ -318,7 +440,7 @@ def create_lerobot_dataset_card(
card_tags += tags
if dataset_info:
dataset_structure = "[meta/info.json](meta/info.json):\n"
dataset_structure += f"```json\n{json.dumps(dataset_info, indent=4)}\n```\n"
dataset_structure += f"```json\n{json.dumps(dataset_info.to_dict(), indent=4)}\n```\n"
kwargs = {**kwargs, "dataset_structure": dataset_structure}
card_data = DatasetCardData(
license=kwargs.get("license"),
+5 -1
View File
@@ -282,7 +282,11 @@ class VideoDecoderCache:
with self._lock:
if video_path not in self._cache:
file_handle = fsspec.open(video_path).__enter__()
decoder = VideoDecoder(file_handle, seek_mode="approximate")
try:
decoder = VideoDecoder(file_handle, seek_mode="approximate")
except Exception:
file_handle.close()
raise
self._cache[video_path] = (decoder, file_handle)
return self._cache[video_path][0]
+14 -6
View File
@@ -24,7 +24,12 @@ import gymnasium as gym
from gymnasium.envs.registration import registry as gym_registry
from lerobot.configs import FeatureType, PolicyFeature
from lerobot.processor import IsaaclabArenaProcessorStep, LiberoProcessorStep, PolicyProcessorPipeline
from lerobot.processor import (
IsaaclabArenaProcessorStep,
LiberoActionProcessorStep,
LiberoProcessorStep,
PolicyProcessorPipeline,
)
from lerobot.robots import RobotConfig
from lerobot.teleoperators.config import TeleoperatorConfig
from lerobot.utils.constants import (
@@ -123,7 +128,7 @@ class EnvConfig(draccus.ChoiceRegistry, abc.ABC):
vec = env_cls([_make_one for _ in range(n_envs)], **extra_kwargs)
return {self.type: {0: vec}}
def get_env_processors(self):
def get_env_processors(self, policy_cfg: Any | None = None):
"""Return (preprocessor, postprocessor) for this env. Default: identity."""
return PolicyProcessorPipeline(steps=[]), PolicyProcessorPipeline(steps=[])
@@ -436,10 +441,13 @@ class LiberoEnv(EnvConfig):
is_libero_plus=self.is_libero_plus,
)
def get_env_processors(self):
def get_env_processors(self, policy_cfg: Any | None = None):
max_state_dim = getattr(policy_cfg, "max_state_dim", None) if getattr(policy_cfg, "type", None) == "evo1" else None
action_feature = self.features.get(ACTION)
action_dim = int(action_feature.shape[0]) if action_feature is not None else 7
return (
PolicyProcessorPipeline(steps=[LiberoProcessorStep()]),
PolicyProcessorPipeline(steps=[]),
PolicyProcessorPipeline(steps=[LiberoProcessorStep(max_state_dim=max_state_dim)]),
PolicyProcessorPipeline(steps=[LiberoActionProcessorStep(action_dim=action_dim)]),
)
@@ -705,7 +713,7 @@ class IsaaclabArenaEnv(HubEnvConfig):
def gym_kwargs(self) -> dict:
return {}
def get_env_processors(self):
def get_env_processors(self, policy_cfg: Any | None = None):
state_keys = tuple(k.strip() for k in (self.state_keys or "").split(",") if k.strip())
camera_keys = tuple(k.strip() for k in (self.camera_keys or "").split(",") if k.strip())
if not state_keys and not camera_keys:
+9 -1
View File
@@ -15,6 +15,7 @@
# limitations under the License.
from __future__ import annotations
import inspect
from typing import Any
import gymnasium as gym
@@ -52,7 +53,14 @@ def make_env_pre_post_processors(
return make_xvla_libero_pre_post_processors()
return env_cfg.get_env_processors()
get_processors = env_cfg.get_env_processors
signature = inspect.signature(get_processors)
supports_policy_cfg = "policy_cfg" in signature.parameters or any(
param.kind is inspect.Parameter.VAR_KEYWORD for param in signature.parameters.values()
)
if supports_policy_cfg:
return get_processors(policy_cfg=policy_cfg)
return get_processors()
def make_env(
+4 -4
View File
@@ -16,6 +16,8 @@ from lerobot.utils.action_interpolator import ActionInterpolator as ActionInterp
from .act.configuration_act import ACTConfig as ACTConfig
from .diffusion.configuration_diffusion import DiffusionConfig as DiffusionConfig
from .eo1.configuration_eo1 import EO1Config as EO1Config
from .evo1.configuration_evo1 import Evo1Config as Evo1Config
from .factory import get_policy_class, make_policy, make_policy_config, make_pre_post_processors
from .groot.configuration_groot import GrootConfig as GrootConfig
from .multi_task_dit.configuration_multi_task_dit import MultiTaskDiTConfig as MultiTaskDiTConfig
@@ -24,8 +26,6 @@ from .pi0_fast.configuration_pi0_fast import PI0FastConfig as PI0FastConfig
from .pi05.configuration_pi05 import PI05Config as PI05Config
from .pretrained import PreTrainedPolicy as PreTrainedPolicy
from .sac.configuration_sac import SACConfig as SACConfig
from .sac.reward_model.configuration_classifier import RewardClassifierConfig as RewardClassifierConfig
from .sarm.configuration_sarm import SARMConfig as SARMConfig
from .smolvla.configuration_smolvla import SmolVLAConfig as SmolVLAConfig
from .tdmpc.configuration_tdmpc import TDMPCConfig as TDMPCConfig
from .utils import make_robot_action, prepare_observation_for_inference
@@ -41,14 +41,14 @@ __all__ = [
# Configuration classes
"ACTConfig",
"DiffusionConfig",
"Evo1Config",
"GrootConfig",
"MultiTaskDiTConfig",
"EO1Config",
"PI0Config",
"PI0FastConfig",
"PI05Config",
"RewardClassifierConfig",
"SACConfig",
"SARMConfig",
"SmolVLAConfig",
"TDMPCConfig",
"VQBeTConfig",
+4 -3
View File
@@ -142,9 +142,10 @@ class ACTPolicy(PreTrainedPolicy):
actions_hat, (mu_hat, log_sigma_x2_hat) = self.model(batch)
l1_loss = (
F.l1_loss(batch[ACTION], actions_hat, reduction="none") * ~batch["action_is_pad"].unsqueeze(-1)
).mean()
abs_err = F.l1_loss(batch[ACTION], actions_hat, reduction="none")
valid_mask = ~batch["action_is_pad"].unsqueeze(-1)
num_valid = valid_mask.sum() * abs_err.shape[-1]
l1_loss = (abs_err * valid_mask).sum() / num_valid.clamp_min(1)
loss_dict = {"l1_loss": l1_loss.item()}
if self.config.use_vae:
@@ -100,8 +100,8 @@ class DiffusionConfig(PreTrainedConfig):
# Inputs / output structure.
n_obs_steps: int = 2
horizon: int = 16
n_action_steps: int = 8
horizon: int = 64
n_action_steps: int = 32
normalization_mapping: dict[str, NormalizationMode] = field(
default_factory=lambda: {
@@ -122,10 +122,10 @@ class DiffusionConfig(PreTrainedConfig):
crop_ratio: float = 1.0
crop_shape: tuple[int, int] | None = None
crop_is_random: bool = True
pretrained_backbone_weights: str | None = None
use_group_norm: bool = True
pretrained_backbone_weights: str | None = "ResNet18_Weights.IMAGENET1K_V1"
use_group_norm: bool = False
spatial_softmax_num_keypoints: int = 32
use_separate_rgb_encoder_per_camera: bool = False
use_separate_rgb_encoder_per_camera: bool = True
# Unet.
down_dims: tuple[int, ...] = (512, 1024, 2048)
kernel_size: int = 5
@@ -380,7 +380,9 @@ class DiffusionModel(nn.Module):
f"{self.config.do_mask_loss_for_padding=}."
)
in_episode_bound = ~batch["action_is_pad"]
loss = loss * in_episode_bound.unsqueeze(-1)
mask = in_episode_bound.unsqueeze(-1)
num_valid = mask.sum() * loss.shape[-1]
return (loss * mask).sum() / num_valid.clamp_min(1)
return loss.mean()
+1
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@@ -0,0 +1 @@
../../../../docs/source/eo1.mdx
+7
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@@ -0,0 +1,7 @@
#!/usr/bin/env python
from .configuration_eo1 import EO1Config
from .modeling_eo1 import EO1Policy
from .processor_eo1 import make_eo1_pre_post_processors
__all__ = ["EO1Config", "EO1Policy", "make_eo1_pre_post_processors"]
@@ -0,0 +1,193 @@
#!/usr/bin/env python
# Copyright 2026 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
from __future__ import annotations
from copy import deepcopy
from dataclasses import dataclass, field
from typing import TYPE_CHECKING
from lerobot.configs.policies import PreTrainedConfig
from lerobot.configs.types import FeatureType, NormalizationMode, PolicyFeature
from lerobot.optim.optimizers import AdamWConfig
from lerobot.optim.schedulers import CosineDecayWithWarmupSchedulerConfig
from lerobot.utils.constants import ACTION, OBS_STATE
from lerobot.utils.import_utils import _transformers_available, require_package
if TYPE_CHECKING or _transformers_available:
from transformers.models.qwen2_5_vl.configuration_qwen2_5_vl import (
Qwen2_5_VLConfig,
Qwen2_5_VLTextConfig,
Qwen2_5_VLVisionConfig,
)
else:
Qwen2_5_VLConfig = None
Qwen2_5_VLTextConfig = None
Qwen2_5_VLVisionConfig = None
@PreTrainedConfig.register_subclass("eo1")
@dataclass
class EO1Config(PreTrainedConfig):
"""Configuration for native EO1 policy integration in LeRobot."""
vlm_base: str = "Qwen/Qwen2.5-VL-3B-Instruct"
vlm_config: dict | None = None
# Vision processor settings.
image_min_pixels: int | None = 64 * 28 * 28
image_max_pixels: int | None = 128 * 28 * 28
use_fast_processor: bool = False
# Execution and action horizon.
n_obs_steps: int = 1
chunk_size: int = 8
n_action_steps: int = 8
# State/action padding to match EO1 flow head dimensionality.
max_state_dim: int = 32
max_action_dim: int = 32
# Flow matching sampling.
num_denoise_steps: int = 10
num_action_layers: int = 2
action_act: str = "linear"
time_sampling_beta_alpha: float = 1.5
time_sampling_beta_beta: float = 1.0
time_sampling_scale: float = 0.999
time_sampling_offset: float = 0.001
min_period: float = 4e-3
max_period: float = 4.0
supervise_padding_action_dims: bool = True
supervise_padding_actions: bool = True
# Policy-level dtype request for the Qwen backbone.
# - "auto": follow the backbone config/checkpoint default dtype. For Qwen2.5-VL this resolves to bf16.
# The EO1 flow-matching head still keeps its own parameters in fp32.
# - "bfloat16": force the backbone to initialize/load in bf16 regardless of the saved config default.
# - "float32": force the backbone to initialize/load in fp32 for maximum numerical conservatism.
dtype: str = "auto" # Options: "auto", "bfloat16", "float32"
force_fp32_autocast: bool = True
# Optional attention backend request passed through to the Qwen backbone.
# Common values: None, "eager", "sdpa", "flash_attention_2".
attn_implementation: str | None = None
# Training settings.
gradient_checkpointing: bool = False # Enable gradient checkpointing for memory optimization
normalization_mapping: dict[str, NormalizationMode] = field(
default_factory=lambda: {
"VISUAL": NormalizationMode.IDENTITY,
"STATE": NormalizationMode.MEAN_STD,
"ACTION": NormalizationMode.MEAN_STD,
}
)
# Optimizer settings aligned with EO1/experiments/2_libero/train.sh and EO1 TrainPipelineConfig defaults.
optimizer_lr: float = 1e-4
optimizer_betas: tuple[float, float] = (0.9, 0.999)
optimizer_eps: float = 1e-8
optimizer_weight_decay: float = 0.1
optimizer_grad_clip_norm: float = 1.0
# Scheduler settings aligned with EO1 train.sh: cosine schedule with warmup_ratio=0.03.
# Note: These will auto-scale if --steps < scheduler_decay_steps
# For example, --steps=3000 will scale warmup to 100 and decay to 3000
scheduler_warmup_steps: int = 900 # 0.03 * 30_000 long-run steps
scheduler_decay_steps: int = 30_000
scheduler_decay_lr: float = 0.0
def __post_init__(self):
super().__post_init__()
if self.n_action_steps > self.chunk_size:
raise ValueError(
f"n_action_steps ({self.n_action_steps}) cannot be greater than chunk_size ({self.chunk_size})"
)
# Populate the serialized backbone config only when the caller did not provide one.
if self.vlm_config is None:
require_package("transformers", extra="eo1")
self.vlm_config = Qwen2_5_VLConfig.from_pretrained(self.vlm_base).to_dict()
@property
def vlm_backbone_config(self) -> Qwen2_5_VLConfig:
require_package("transformers", extra="eo1")
config_dict = deepcopy(self.vlm_config)
if self.attn_implementation is not None:
config_dict["attn_implementation"] = self.attn_implementation
return Qwen2_5_VLConfig(**config_dict)
@property
def text_config(self) -> Qwen2_5_VLTextConfig:
return self.vlm_backbone_config.text_config
@property
def vision_config(self) -> Qwen2_5_VLVisionConfig:
return self.vlm_backbone_config.vision_config
def validate_features(self) -> None:
"""Validate and set up EO1 input and output features."""
image_features = [key for key, feat in self.input_features.items() if feat.type == FeatureType.VISUAL]
if not image_features:
raise ValueError(
"EO1 policy requires at least one visual input feature. "
"No features of type FeatureType.VISUAL found in input_features."
)
if OBS_STATE not in self.input_features:
state_feature = PolicyFeature(
type=FeatureType.STATE,
shape=(self.max_state_dim,),
)
self.input_features[OBS_STATE] = state_feature
if ACTION not in self.output_features:
action_feature = PolicyFeature(
type=FeatureType.ACTION,
shape=(self.max_action_dim,),
)
self.output_features[ACTION] = action_feature
def get_optimizer_preset(self) -> AdamWConfig:
return AdamWConfig(
lr=self.optimizer_lr,
betas=self.optimizer_betas,
eps=self.optimizer_eps,
weight_decay=self.optimizer_weight_decay,
grad_clip_norm=self.optimizer_grad_clip_norm,
)
def get_scheduler_preset(self):
return CosineDecayWithWarmupSchedulerConfig(
peak_lr=self.optimizer_lr,
decay_lr=self.scheduler_decay_lr,
num_warmup_steps=self.scheduler_warmup_steps,
num_decay_steps=self.scheduler_decay_steps,
)
@property
def observation_delta_indices(self) -> None:
return None
@property
def action_delta_indices(self) -> list[int]:
return list(range(self.chunk_size))
@property
def reward_delta_indices(self) -> None:
return None
+620
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@@ -0,0 +1,620 @@
#!/usr/bin/env python
# Copyright 2026 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
from __future__ import annotations
import contextlib
import logging
import math
from collections import deque
from typing import TYPE_CHECKING, Any
import torch
import torch.nn as nn
import torch.nn.functional as F # noqa: N812
import torch.utils.checkpoint
from torch import Tensor
from lerobot.policies.eo1.configuration_eo1 import EO1Config
from lerobot.policies.pretrained import PreTrainedPolicy
from lerobot.utils.constants import ACTION, OBS_STATE
from lerobot.utils.import_utils import _transformers_available, require_package
if TYPE_CHECKING or _transformers_available:
from transformers.activations import ACT2FN
from transformers.models.qwen2_5_vl import Qwen2_5_VLForConditionalGeneration
from transformers.utils import torch_compilable_check
else:
ACT2FN = None
Qwen2_5_VLForConditionalGeneration = None
torch_compilable_check = None
logger = logging.getLogger(__name__)
def pad_vector(vector, new_dim):
"""Pad the last dimension of a vector to new_dim with zeros.
Can be (batch_size x sequence_length x features_dimension)
or (batch_size x features_dimension)
"""
if vector.shape[-1] >= new_dim:
return vector
return F.pad(vector, (0, new_dim - vector.shape[-1]))
class EO1Policy(PreTrainedPolicy):
"""EO1 policy wrapper for LeRobot robot-only training/evaluation."""
config_class = EO1Config
name = "eo1"
def __init__(self, config: EO1Config, **kwargs):
require_package("transformers", extra="eo1")
super().__init__(config)
config.validate_features()
self.config = config
if config.pretrained_path is None:
# Initialize from pretrained VLM
vlm_backbone = Qwen2_5_VLForConditionalGeneration.from_pretrained(
config.vlm_base,
dtype=config.dtype,
attn_implementation=config.attn_implementation,
)
else:
vlm_backbone = Qwen2_5_VLForConditionalGeneration._from_config(
config.vlm_backbone_config,
dtype=config.vlm_backbone_config.dtype if config.dtype == "auto" else config.dtype,
)
self.model = EO1VisionFlowMatchingModel(config, vlm_backbone)
if config.gradient_checkpointing:
self.model.gradient_checkpointing_enable()
self.model.to(config.device)
self.reset()
def reset(self):
self._action_queue = deque(maxlen=self.config.n_action_steps)
@staticmethod
def _get_model_inputs(batch: dict[str, Tensor], excluded_keys: set[str]) -> dict[str, Tensor]:
return {key: value for key, value in batch.items() if key not in excluded_keys}
def forward(self, batch: dict[str, Tensor]) -> tuple[Tensor, dict]:
state = self.prepare_state(batch[OBS_STATE])
actions = self.prepare_action(batch[ACTION])
model_inputs = self._get_model_inputs(batch, {OBS_STATE, ACTION})
loss = self.model(states=state, action=actions, **model_inputs)
loss_dict = {"loss": loss.item()}
return loss, loss_dict
@torch.no_grad()
def predict_action_chunk(self, batch: dict[str, Tensor], **kwargs) -> Tensor:
self.eval()
states = self.prepare_state(batch[OBS_STATE])
model_inputs = self._get_model_inputs(batch, {OBS_STATE})
actions = self.model.sample_actions(states=states, **model_inputs).to(torch.float32)
original_action_dim = self.config.output_features[ACTION].shape[0]
return actions[:, :, :original_action_dim]
def prepare_state(self, state: Tensor) -> Tensor:
return pad_vector(state, self.config.max_state_dim)
def prepare_action(self, action: Tensor) -> Tensor:
return pad_vector(action, self.config.max_action_dim)
@torch.no_grad()
def select_action(self, batch: dict[str, Tensor]) -> Tensor:
self.eval()
if len(self._action_queue) == 0:
actions = self.predict_action_chunk(batch)[:, : self.config.n_action_steps]
self._action_queue.extend(actions.transpose(0, 1))
return self._action_queue.popleft()
def get_optim_params(self) -> dict:
return self.parameters()
def get_safe_dtype(target_dtype, device_type):
"""Get a safe dtype for the given device type."""
if device_type == "mps" and target_dtype == torch.float64:
return torch.float32
if device_type == "cpu":
# CPU doesn't support bfloat16, use float32 instead
if target_dtype == torch.bfloat16:
return torch.float32
if target_dtype == torch.float64:
return torch.float64
return target_dtype
def create_sinusoidal_pos_embedding( # see openpi `create_sinusoidal_pos_embedding` (exact copy)
time: torch.Tensor, dimension: int, min_period: float, max_period: float, device="cpu"
) -> Tensor:
"""Computes sine-cosine positional embedding vectors for scalar positions."""
if dimension % 2 != 0:
raise ValueError(f"dimension ({dimension}) must be divisible by 2")
if time.ndim != 1:
raise ValueError("The time tensor is expected to be of shape `(batch_size, )`.")
dtype = get_safe_dtype(torch.float64, device.type)
fraction = torch.linspace(0.0, 1.0, dimension // 2, dtype=dtype, device=device)
period = min_period * (max_period / min_period) ** fraction
# Compute the outer product
scaling_factor = 1.0 / period * 2 * math.pi
sin_input = scaling_factor[None, :] * time[:, None]
return torch.cat([torch.sin(sin_input), torch.cos(sin_input)], dim=1)
def sample_beta(alpha, beta, bsize, device): # see openpi `sample_beta` (exact copy)
# Beta sampling uses _sample_dirichlet which isn't implemented for MPS, so sample on CPU
alpha_t = torch.tensor(alpha, dtype=torch.float32)
beta_t = torch.tensor(beta, dtype=torch.float32)
dist = torch.distributions.Beta(alpha_t, beta_t)
return dist.sample((bsize,)).to(device)
class EO1VisionActionProjector(torch.nn.Sequential):
"""This block implements the multi-layer perceptron (MLP) module."""
def __init__(
self,
in_channels: int,
out_channels: int,
num_layers: int = 2,
activation_layer: str = "linear",
bias: bool = True,
device: Any = None,
dtype: torch.dtype = torch.float32,
):
layers = []
in_dim = in_channels
hidden_channels = [in_dim] * (num_layers - 1) + [out_channels]
for hidden_dim in hidden_channels[:-1]:
layers.append(torch.nn.Linear(in_dim, hidden_dim, bias=bias, dtype=dtype, device=device))
layers.append(ACT2FN[activation_layer])
in_dim = hidden_dim
layers.append(torch.nn.Linear(in_dim, hidden_channels[-1], bias=bias, dtype=dtype, device=device))
super().__init__(*layers)
@property
def dtype(self):
return self[0].weight.dtype
class EO1VisionFlowMatchingModel(nn.Module):
def __init__(
self,
config: EO1Config,
vlm_backbone: Qwen2_5_VLForConditionalGeneration | None = None,
):
require_package("transformers", extra="eo1")
super().__init__()
self.config = config
# Preserve the backbone dtype selected at construction time so Qwen's fp32 rotary buffers stay intact.
self.vlm_backbone = vlm_backbone
self.hidden_size = self.vlm_backbone.config.text_config.hidden_size
max_state_dim = config.max_state_dim
max_action_dim = config.max_action_dim
self.state_proj = nn.Linear(max_state_dim, self.hidden_size, dtype=torch.float32)
self.action_in_proj = nn.Linear(max_action_dim, self.hidden_size, dtype=torch.float32)
self.action_out_proj = EO1VisionActionProjector(
self.hidden_size,
max_action_dim,
config.num_action_layers,
config.action_act,
dtype=torch.float32,
)
self.action_time_mlp_in = nn.Linear(self.hidden_size * 2, self.hidden_size, dtype=torch.float32)
self.action_time_mlp_out = nn.Linear(self.hidden_size, self.hidden_size, dtype=torch.float32)
self.gradient_checkpointing_enabled = False
def get_input_embeddings(self):
return self.vlm_backbone.get_input_embeddings()
def flow_head_autocast_context(self):
if self.config.force_fp32_autocast:
return torch.autocast(
device_type=self.state_proj.weight.device.type,
enabled=False,
)
return contextlib.nullcontext()
def gradient_checkpointing_enable(self):
"""Enable gradient checkpointing for the Qwen2.5-VL backbone."""
self.gradient_checkpointing_enabled = True
self.vlm_backbone.gradient_checkpointing_enable(
gradient_checkpointing_kwargs={"use_reentrant": False}
)
logger.info("Enabled gradient checkpointing for EO1VisionFlowMatchingModel")
def gradient_checkpointing_disable(self):
"""Disable gradient checkpointing for the Qwen2.5-VL backbone."""
self.gradient_checkpointing_enabled = False
self.vlm_backbone.gradient_checkpointing_disable()
logger.info("Disabled gradient checkpointing for EO1VisionFlowMatchingModel")
def _apply_checkpoint(self, func, *args, **kwargs):
"""Apply manual gradient checkpointing to EO1 flow-head computations when training."""
if self.gradient_checkpointing_enabled and self.training and torch.is_grad_enabled():
return torch.utils.checkpoint.checkpoint(
func, *args, use_reentrant=False, preserve_rng_state=False, **kwargs
)
return func(*args, **kwargs)
def sample_noise(self, shape, device):
noise = torch.normal(
mean=0.0,
std=1.0,
size=shape,
dtype=torch.float32,
device=device,
)
return noise
def sample_time(self, bsize, device):
time_beta = sample_beta(
self.config.time_sampling_beta_alpha, self.config.time_sampling_beta_beta, bsize, device
)
time = time_beta * self.config.time_sampling_scale + self.config.time_sampling_offset
return time.to(dtype=torch.float32, device=device)
def get_placeholder_mask(
self,
input_ids: torch.LongTensor | None,
inputs_embeds: torch.FloatTensor | None,
state_features: torch.FloatTensor | None = None,
action_features: torch.FloatTensor | None = None,
*,
state_token_id: int,
action_token_id: int,
) -> tuple[torch.BoolTensor, torch.BoolTensor]:
"""Return EO1 state/action placeholder masks, following Qwen's multimodal mask style."""
if input_ids is None:
special_state_mask = inputs_embeds == self.get_input_embeddings()(
torch.tensor(state_token_id, dtype=torch.long, device=inputs_embeds.device)
)
special_state_mask = special_state_mask.all(-1)
special_action_mask = inputs_embeds == self.get_input_embeddings()(
torch.tensor(action_token_id, dtype=torch.long, device=inputs_embeds.device)
)
special_action_mask = special_action_mask.all(-1)
else:
special_state_mask = input_ids == state_token_id
special_action_mask = input_ids == action_token_id
n_state_tokens = special_state_mask.sum()
special_state_mask = (
special_state_mask.unsqueeze(-1).expand_as(inputs_embeds).to(inputs_embeds.device)
)
if state_features is not None:
torch_compilable_check(
inputs_embeds[special_state_mask].numel() == state_features.numel(),
f"State features and state tokens do not match, tokens: {n_state_tokens}, features: {state_features.shape[0]}",
)
n_action_tokens = special_action_mask.sum()
special_action_mask = (
special_action_mask.unsqueeze(-1).expand_as(inputs_embeds).to(inputs_embeds.device)
)
if action_features is not None:
torch_compilable_check(
inputs_embeds[special_action_mask].numel() == action_features.numel(),
f"Action features and action tokens do not match, tokens: {n_action_tokens}, features: {action_features.shape[0]}",
)
return special_state_mask, special_action_mask
def embed_prefix(
self,
input_ids: torch.LongTensor,
states: torch.Tensor,
*,
state_token_id: int,
action_token_id: int,
) -> torch.FloatTensor:
"""Embed the EO1 prefix tokens before native Qwen injects multimodal features."""
# Get the input embeddings for the input IDs
def input_embed_func(input_ids: torch.LongTensor) -> torch.FloatTensor:
return self.get_input_embeddings()(input_ids)
inputs_embeds = self._apply_checkpoint(input_embed_func, input_ids)
# Project the states to the hidden size
def state_proj_func(states: torch.Tensor) -> torch.FloatTensor:
with self.flow_head_autocast_context():
states = states.to(dtype=self.state_proj.weight.dtype)
return self.state_proj(states)
state_embs = self._apply_checkpoint(state_proj_func, states)
state_mask, _ = self.get_placeholder_mask(
input_ids,
inputs_embeds,
state_features=state_embs,
state_token_id=state_token_id,
action_token_id=action_token_id,
)
state_embs = state_embs.to(inputs_embeds.device, inputs_embeds.dtype)
inputs_embeds = inputs_embeds.masked_scatter(state_mask, state_embs)
return inputs_embeds
def embed_suffix(
self,
timestep: torch.Tensor,
noisy_actions: torch.Tensor,
) -> torch.FloatTensor:
"""Embed the suffix"""
def action_proj_func(noisy_actions: torch.Tensor) -> torch.FloatTensor:
with self.flow_head_autocast_context():
noisy_actions = noisy_actions.to(dtype=self.action_in_proj.weight.dtype)
return self.action_in_proj(noisy_actions)
action_embs = self._apply_checkpoint(action_proj_func, noisy_actions)
time_embs = create_sinusoidal_pos_embedding(
timestep,
self.hidden_size,
min_period=self.config.min_period,
max_period=self.config.max_period,
device=action_embs.device,
)
time_embs = time_embs.to(dtype=action_embs.dtype)
time_embs = time_embs[:, None, :].expand_as(action_embs)
action_time_embs = torch.cat([action_embs, time_embs], dim=2)
def mlp_func(action_time_embs: torch.Tensor) -> torch.FloatTensor:
with self.flow_head_autocast_context():
action_time_embs = action_time_embs.to(dtype=self.action_time_mlp_in.weight.dtype)
action_time_embs = self.action_time_mlp_in(action_time_embs)
action_time_embs = F.silu(action_time_embs)
return self.action_time_mlp_out(action_time_embs)
action_time_embs = self._apply_checkpoint(mlp_func, action_time_embs)
return action_time_embs
def forward(
self,
input_ids: torch.LongTensor | None = None,
attention_mask: torch.LongTensor | None = None,
pixel_values: torch.FloatTensor | None = None,
image_grid_thw: torch.LongTensor | None = None,
mm_token_type_ids: torch.IntTensor | None = None,
states: torch.FloatTensor | None = None,
action: torch.FloatTensor | None = None,
action_is_pad: torch.BoolTensor | None = None,
*,
state_token_id: int,
action_token_id: int,
**kwargs,
) -> Tensor:
"""Run the EO1 training forward pass and compute the flow-matching loss."""
# 1. Build the EO1 prefix with state placeholders resolved.
inputs_embeds = self.embed_prefix(
input_ids,
states=states,
state_token_id=state_token_id,
action_token_id=action_token_id,
)
# 2. Sample the diffusion target and replace the action placeholders.
time = self.sample_time(action.shape[0], inputs_embeds.device)
noise = self.sample_noise(action.shape, inputs_embeds.device)
time_expanded = time[:, None, None]
x_t = time_expanded * noise + (1 - time_expanded) * action
u_t = noise - action
action_time_embs = self.embed_suffix(time, x_t)
_, action_mask = self.get_placeholder_mask(
input_ids,
inputs_embeds,
action_features=action_time_embs,
state_token_id=state_token_id,
action_token_id=action_token_id,
)
action_time_embs = action_time_embs.to(inputs_embeds.device, inputs_embeds.dtype)
inputs_embeds = inputs_embeds.masked_scatter(action_mask, action_time_embs)
# 3. Optionally drop padded action tokens from backbone attention.
if attention_mask is not None:
attention_mask = attention_mask.to(inputs_embeds.device)
if not self.config.supervise_padding_actions:
action_is_pad = action_is_pad.to(device=inputs_embeds.device, dtype=torch.bool)
action_token_mask = action_mask[..., 0]
action_padding_mask = torch.zeros_like(action_token_mask)
action_padding_mask = action_padding_mask.masked_scatter(
action_token_mask,
action_is_pad.reshape(-1),
)
attention_mask = attention_mask.masked_fill(action_padding_mask, 0)
# 4. Run the Qwen backbone on the fused EO1 sequence.
def vlm_forward_func(
input_ids: torch.LongTensor,
attention_mask: torch.Tensor | None,
inputs_embeds: torch.FloatTensor,
pixel_values: torch.Tensor | None,
image_grid_thw: torch.LongTensor | None,
mm_token_type_ids: torch.IntTensor | None,
) -> torch.FloatTensor:
outputs = self.vlm_backbone.model(
input_ids=input_ids,
attention_mask=attention_mask,
inputs_embeds=inputs_embeds,
pixel_values=pixel_values,
image_grid_thw=image_grid_thw,
mm_token_type_ids=mm_token_type_ids,
use_cache=False,
output_hidden_states=False,
return_dict=True,
)
return outputs.last_hidden_state
hidden_states = self._apply_checkpoint(
vlm_forward_func,
input_ids,
attention_mask,
inputs_embeds,
pixel_values,
image_grid_thw,
mm_token_type_ids,
)
action_hidden_states = hidden_states[action_mask[..., 0]]
# 5. Project the action-token hidden states back to the flow target space.
def action_out_proj_func(action_hidden_states: torch.FloatTensor) -> torch.FloatTensor:
with self.flow_head_autocast_context():
action_hidden_states = action_hidden_states.to(dtype=self.action_out_proj.dtype)
return self.action_out_proj(action_hidden_states)
v_t = self._apply_checkpoint(action_out_proj_func, action_hidden_states)
v_t = v_t.reshape(u_t.shape).to(dtype=u_t.dtype)
losses = F.mse_loss(u_t, v_t, reduction="none")
# 6. Apply the configured supervision mask and reduce the loss.
if not self.config.supervise_padding_action_dims:
original_action_dim = self.config.output_features[ACTION].shape[0]
losses = losses[..., :original_action_dim]
if not self.config.supervise_padding_actions:
losses = losses[~action_is_pad]
return losses.mean()
@torch.no_grad()
def sample_actions(
self,
input_ids: torch.LongTensor | None = None,
attention_mask: torch.Tensor | None = None,
pixel_values: torch.Tensor | None = None,
image_grid_thw: torch.LongTensor | None = None,
mm_token_type_ids: torch.IntTensor | None = None,
states: torch.Tensor | None = None,
*,
state_token_id: int,
action_token_id: int,
**kwargs,
) -> Tensor:
"""Sample actions from the model."""
if states is None:
raise ValueError("states are required for EO1 action sampling.")
if mm_token_type_ids is None:
raise ValueError("mm_token_type_ids are required for EO1 action sampling.")
# 1. Resolve the left-padded rollout prompt and locate the action span.
chunk_size = self.config.chunk_size
inputs_embeds = self.embed_prefix(
input_ids,
states=states,
state_token_id=state_token_id,
action_token_id=action_token_id,
).clone()
_, action_placeholder_mask = self.get_placeholder_mask(
input_ids,
inputs_embeds,
state_token_id=state_token_id,
action_token_id=action_token_id,
)
action_mask = action_placeholder_mask[..., 0]
token_counts = action_mask.sum(dim=1)
if not torch.all(token_counts == chunk_size):
raise ValueError(
f"Each sample must contain exactly {chunk_size} action tokens, got {token_counts.tolist()}."
)
if action_mask.ne(action_mask[:1]).any():
raise ValueError(
"Batch inference expects all samples to share the same action token mask after left padding."
)
act_start = int(action_mask[0].to(torch.int64).argmax().item())
act_end = act_start + self.config.chunk_size
if not torch.all(action_mask[:, act_start:act_end]):
raise ValueError("Action tokens must form a contiguous chunk of length chunk_size.")
act_slice = slice(act_start, act_end)
# 2. Encode the fixed prefix once and cache its KV state.
batch_size = input_ids.shape[0]
device = inputs_embeds.device
attention_mask = attention_mask.to(device)
mm_token_type_ids = mm_token_type_ids.to(device)
position_ids, _ = self.vlm_backbone.model.get_rope_index(
input_ids,
image_grid_thw=image_grid_thw,
attention_mask=attention_mask,
mm_token_type_ids=mm_token_type_ids,
)
position_ids = position_ids.to(device)
outputs = self.vlm_backbone.model(
input_ids=input_ids[:, :act_start],
attention_mask=attention_mask[:, :act_start],
position_ids=position_ids[..., :act_start],
inputs_embeds=inputs_embeds[:, :act_start],
pixel_values=pixel_values,
image_grid_thw=image_grid_thw,
mm_token_type_ids=mm_token_type_ids[:, :act_start],
use_cache=True,
return_dict=True,
)
x_t = self.sample_noise(
(batch_size, chunk_size, self.config.max_action_dim),
device,
).to(dtype=self.action_in_proj.weight.dtype)
dt = -1.0 / self.config.num_denoise_steps
past_key_values = outputs.past_key_values
# 3. Denoise only the action chunk while keeping the prefix cache invariant.
for step in range(self.config.num_denoise_steps):
time = torch.full(
(batch_size,),
1.0 + step * dt,
device=device,
dtype=torch.float32,
)
action_time_embs = self.embed_suffix(time, x_t)
inputs_embeds[:, act_slice] = action_time_embs.to(inputs_embeds.dtype)
# Keep the prefix KV cache invariant across denoising steps.
past_key_values.crop(act_start)
outputs = self.vlm_backbone.model(
attention_mask=attention_mask[:, :act_end],
past_key_values=past_key_values,
inputs_embeds=inputs_embeds[:, act_slice],
position_ids=position_ids[..., act_slice],
use_cache=True,
return_dict=True,
)
with self.flow_head_autocast_context():
hidden_states = outputs.last_hidden_state[:, :chunk_size]
hidden_states = hidden_states.to(dtype=self.action_out_proj.dtype)
v_t = self.action_out_proj(hidden_states)
x_t += dt * v_t.reshape(x_t.shape)
return x_t
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#!/usr/bin/env python
# Copyright 2026 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
from __future__ import annotations
from dataclasses import dataclass, field
from typing import TYPE_CHECKING, Any
import torch
from lerobot.configs.types import FeatureType, PipelineFeatureType, PolicyFeature
from lerobot.policies.eo1.configuration_eo1 import EO1Config
from lerobot.processor import (
AddBatchDimensionProcessorStep,
ComplementaryDataProcessorStep,
DeviceProcessorStep,
NormalizerProcessorStep,
PolicyAction,
PolicyProcessorPipeline,
ProcessorStep,
ProcessorStepRegistry,
RenameObservationsProcessorStep,
UnnormalizerProcessorStep,
)
from lerobot.processor.converters import policy_action_to_transition, transition_to_policy_action
from lerobot.types import TransitionKey
from lerobot.utils.constants import (
OBS_STATE,
POLICY_POSTPROCESSOR_DEFAULT_NAME,
POLICY_PREPROCESSOR_DEFAULT_NAME,
)
from lerobot.utils.import_utils import _transformers_available, require_package
if TYPE_CHECKING or _transformers_available:
from transformers.models.qwen2_5_vl import Qwen2_5_VLProcessor
else:
Qwen2_5_VLProcessor = None
SYSTEM_MESSAGE = "You are a helpful physical assistant."
# EO-1 special tokens
ACTION_START_TOKEN = "<|action_start|>" # nosec B105
DEFAULT_ACTION_TOKEN = "<|action_pad|>" # nosec B105
ACTION_END_TOKEN = "<|action_end|>" # nosec B105
STATE_START_TOKEN = "<|state_start|>" # nosec B105
DEFAULT_STATE_TOKEN = "<|state_pad|>" # nosec B105
STATE_END_TOKEN = "<|state_end|>" # nosec B105
TASK_VLA_TOKEN = "<|vla|>" # nosec B105
EO1_SPECIAL_TOKENS = [
ACTION_START_TOKEN,
DEFAULT_ACTION_TOKEN,
ACTION_END_TOKEN,
STATE_START_TOKEN,
DEFAULT_STATE_TOKEN,
STATE_END_TOKEN,
TASK_VLA_TOKEN,
]
@dataclass
@ProcessorStepRegistry.register(name="eo1_conversation_template_processor")
class EO1ConversationTemplateStep(ComplementaryDataProcessorStep):
input_features: dict[str, PolicyFeature] | dict[str, dict[str, Any]]
chunk_size: int
_image_keys: list[str] = field(default_factory=list, init=False, repr=False)
def __post_init__(self):
# Robust JSON deserialization handling (guard empty maps).
if self.input_features:
first_val = next(iter(self.input_features.values()))
if isinstance(first_val, dict):
reconstructed = {}
for key, ft_dict in self.input_features.items():
reconstructed[key] = PolicyFeature(
type=FeatureType(ft_dict["type"]), shape=tuple(ft_dict["shape"])
)
self.input_features = reconstructed
self._image_keys = [
key for key, value in self.input_features.items() if value.type == FeatureType.VISUAL
]
def complementary_data(self, complementary_data):
tasks = complementary_data.get("task")
if tasks is None:
raise ValueError("Task is required for EO1ConversationTemplateStep.")
observation = self.transition.get(TransitionKey.OBSERVATION)
if observation is None:
raise ValueError("Observation is required for EO1ConversationTemplateStep.")
if OBS_STATE in observation and observation[OBS_STATE].shape[0] != len(tasks):
raise ValueError("Batch size mismatch between observation.state and task list.")
# LeRobot visual observations reach in processor as float32 tensors in [0, 1].
# Convert to uint8 in [0, 255] to meet the input requirement of Qwen2.5-VL-3B-Instruct.
images = {
key: observation[key].clamp(0, 1).mul(255.0).round().to(torch.uint8) for key in self._image_keys
}
messages = []
for i in range(len(tasks)):
content = [
*[{"type": "image", "image": images[key][i]} for key in self._image_keys],
{
"type": "text",
"text": (
f"{STATE_START_TOKEN}{DEFAULT_STATE_TOKEN}{STATE_END_TOKEN}{tasks[i]}{TASK_VLA_TOKEN}"
),
},
]
messages.append(
[
{"role": "system", "content": [{"type": "text", "text": SYSTEM_MESSAGE}]},
{"role": "user", "content": content},
{
"role": "assistant",
"content": [
{
"type": "text",
"text": f"{ACTION_START_TOKEN}{DEFAULT_ACTION_TOKEN * self.chunk_size}{ACTION_END_TOKEN}",
}
],
},
]
)
complementary_data["messages"] = messages
return complementary_data
def transform_features(
self, features: dict[PipelineFeatureType, dict[str, PolicyFeature]]
) -> dict[PipelineFeatureType, dict[str, PolicyFeature]]:
"""
This step only materializes EO1-specific message objects in complementary_data.
PipelineFeatureType tracks only ACTION and OBSERVATION, so there is no static
feature contract change to record here.
"""
return features
def get_config(self) -> dict[str, Any]:
return {
"input_features": {
key: {"type": ft.type.value, "shape": ft.shape} for key, ft in self.input_features.items()
},
"chunk_size": self.chunk_size,
}
@dataclass
@ProcessorStepRegistry.register(name="eo1_qwen_processor")
class EO1QwenProcessorStep(ComplementaryDataProcessorStep):
processor_name: str = "Qwen/Qwen2.5-VL-3B-Instruct"
image_min_pixels: int | None = 64 * 28 * 28
image_max_pixels: int | None = 128 * 28 * 28
use_fast_processor: bool = False
_processor: Qwen2_5_VLProcessor | None = field(default=None, init=False, repr=False)
_state_token_id: int | None = field(default=None, init=False, repr=False)
_action_token_id: int | None = field(default=None, init=False, repr=False)
def __post_init__(self):
require_package("transformers", extra="eo1")
self._processor = Qwen2_5_VLProcessor.from_pretrained(
self.processor_name,
use_fast=self.use_fast_processor,
)
self._processor.tokenizer.add_tokens(EO1_SPECIAL_TOKENS, special_tokens=True)
self._state_token_id = self._processor.tokenizer.convert_tokens_to_ids(DEFAULT_STATE_TOKEN)
self._action_token_id = self._processor.tokenizer.convert_tokens_to_ids(DEFAULT_ACTION_TOKEN)
def complementary_data(self, complementary_data):
messages = complementary_data.pop("messages", None)
if messages is None:
raise ValueError("Messages are required for EO1QwenProcessorStep.")
# Rollout batches use left padding so action spans stay aligned across samples.
# Supervised batches use right padding to match standard training collation.
padding_side = "right" if self.transition.get(TransitionKey.ACTION) is not None else "left"
inputs = self._processor.apply_chat_template(
messages,
tokenize=True,
padding=True,
padding_side=padding_side,
min_pixels=self.image_min_pixels,
max_pixels=self.image_max_pixels,
add_generation_prompt=False,
return_dict=True,
return_tensors="pt",
)
complementary_data["input_ids"] = inputs["input_ids"]
complementary_data["pixel_values"] = inputs["pixel_values"]
complementary_data["image_grid_thw"] = inputs["image_grid_thw"]
complementary_data["attention_mask"] = inputs["attention_mask"]
complementary_data["mm_token_type_ids"] = inputs["mm_token_type_ids"]
complementary_data["state_token_id"] = self._state_token_id
complementary_data["action_token_id"] = self._action_token_id
return complementary_data
def get_config(self) -> dict[str, Any]:
return {
"processor_name": self.processor_name,
"image_min_pixels": self.image_min_pixels,
"image_max_pixels": self.image_max_pixels,
"use_fast_processor": self.use_fast_processor,
}
def transform_features(
self, features: dict[PipelineFeatureType, dict[str, PolicyFeature]]
) -> dict[PipelineFeatureType, dict[str, PolicyFeature]]:
"""
This step only converts the messages to the model input format.
"""
return features
def make_eo1_pre_post_processors(
config: EO1Config,
dataset_stats: dict[str, dict[str, torch.Tensor]] | None = None,
) -> tuple[
PolicyProcessorPipeline[dict[str, Any], dict[str, Any]],
PolicyProcessorPipeline[PolicyAction, PolicyAction],
]:
"""Build pre/post processor pipelines for EO1."""
input_steps: list[ProcessorStep] = [
RenameObservationsProcessorStep(rename_map={}),
AddBatchDimensionProcessorStep(),
NormalizerProcessorStep(
features={**config.input_features, **config.output_features},
norm_map=config.normalization_mapping,
stats=dataset_stats,
),
EO1ConversationTemplateStep(input_features=config.input_features, chunk_size=config.chunk_size),
EO1QwenProcessorStep(
processor_name=config.vlm_base,
image_min_pixels=config.image_min_pixels,
image_max_pixels=config.image_max_pixels,
use_fast_processor=config.use_fast_processor,
),
DeviceProcessorStep(device=config.device),
]
output_steps: list[ProcessorStep] = [
UnnormalizerProcessorStep(
features=config.output_features,
norm_map=config.normalization_mapping,
stats=dataset_stats,
),
DeviceProcessorStep(device="cpu"),
]
return (
PolicyProcessorPipeline[dict[str, Any], dict[str, Any]](
steps=input_steps,
name=POLICY_PREPROCESSOR_DEFAULT_NAME,
),
PolicyProcessorPipeline[PolicyAction, PolicyAction](
steps=output_steps,
name=POLICY_POSTPROCESSOR_DEFAULT_NAME,
to_transition=policy_action_to_transition,
to_output=transition_to_policy_action,
),
)
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../../../../docs/source/policy_evo1_README.md
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# Copyright 2026 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
from .configuration_evo1 import Evo1Config
from .modeling_evo1 import EVO1Policy
from .processor_evo1 import make_evo1_pre_post_processors
__all__ = ["Evo1Config", "EVO1Policy", "make_evo1_pre_post_processors"]
@@ -0,0 +1,225 @@
# Copyright 2026 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
from __future__ import annotations
import math
from dataclasses import dataclass, field
from torch.optim import Optimizer
from torch.optim.lr_scheduler import LambdaLR
from lerobot.configs.policies import PreTrainedConfig
from lerobot.configs.types import FeatureType, NormalizationMode, PolicyFeature
from lerobot.optim.optimizers import AdamWConfig
from lerobot.optim.schedulers import LRSchedulerConfig
from lerobot.utils.constants import ACTION, OBS_IMAGES, OBS_STATE
@LRSchedulerConfig.register_subclass("evo1_exact")
@dataclass
class Evo1SchedulerConfig(LRSchedulerConfig):
num_warmup_steps: int
def build(self, optimizer: Optimizer, num_training_steps: int) -> LambdaLR:
def lr_lambda(current_step: int) -> float:
if current_step < self.num_warmup_steps:
return current_step / max(1, self.num_warmup_steps)
progress = (current_step - self.num_warmup_steps) / max(
1, num_training_steps - self.num_warmup_steps
)
return max(0.0, 0.5 * (1.0 + math.cos(math.pi * progress)))
return LambdaLR(optimizer, lr_lambda, -1)
@PreTrainedConfig.register_subclass("evo1")
@dataclass
class Evo1Config(PreTrainedConfig):
training_stage: str = "stage1"
use_amp: bool = True
n_obs_steps: int = 1
chunk_size: int = 50
n_action_steps: int = 50
max_state_dim: int = 24
max_action_dim: int = 24
max_views: int = 3
image_resolution: tuple[int, int] = (448, 448)
empty_cameras: int = 0
normalization_mapping: dict[str, NormalizationMode] = field(
default_factory=lambda: {
"VISUAL": NormalizationMode.IDENTITY,
"STATE": NormalizationMode.MIN_MAX,
"ACTION": NormalizationMode.MIN_MAX,
}
)
vlm_model_name: str = "OpenGVLab/InternVL3-1B"
vlm_num_layers: int | None = 14
vlm_dtype: str = "bfloat16"
use_flash_attn: bool = True
action_head: str = "flowmatching"
embed_dim: int = 896
hidden_dim: int = 1024
state_hidden_dim: int = 1024
num_heads: int = 8
num_layers: int = 8
dropout: float = 0.0
num_inference_timesteps: int = 32
num_categories: int = 1
return_cls_only: bool = False
enable_gradient_checkpointing: bool = True
gradient_checkpointing_use_reentrant: bool = False
finetune_vlm: bool | None = None
finetune_language_model: bool | None = None
finetune_vision_model: bool | None = None
finetune_action_head: bool | None = None
# Reapply stage defaults after loading checkpoint configs so stage2 cannot
# accidentally inherit the frozen VLM flags stored by a stage1 checkpoint.
apply_training_stage_defaults: bool = True
task_field: str = "task"
embodiment_id_field: str | None = None
default_embodiment_id: int = 0
optimizer_lr: float = 1e-5
optimizer_betas: tuple[float, float] = (0.9, 0.999)
optimizer_eps: float = 1e-8
optimizer_weight_decay: float = 1e-5
optimizer_grad_clip_norm: float = 1.0
scheduler_warmup_steps: int = 300
drop_last: bool = True
def __post_init__(self):
super().__post_init__()
if self.training_stage not in {"stage1", "stage2"}:
raise ValueError(
f"Unsupported EVO1 training_stage '{self.training_stage}', expected 'stage1' or 'stage2'"
)
if self.apply_training_stage_defaults:
if self.training_stage == "stage1":
self.finetune_vlm = False
self.finetune_language_model = False
self.finetune_vision_model = False
self.finetune_action_head = True
elif self.training_stage == "stage2":
self.finetune_vlm = True
self.finetune_language_model = True
self.finetune_vision_model = True
self.finetune_action_head = True
elif self.training_stage == "stage1":
if self.finetune_vlm is None:
self.finetune_vlm = False
if self.finetune_language_model is None:
self.finetune_language_model = False
if self.finetune_vision_model is None:
self.finetune_vision_model = False
if self.finetune_action_head is None:
self.finetune_action_head = True
elif self.training_stage == "stage2":
has_explicit_branch_flags = any(
flag is not None for flag in (self.finetune_language_model, self.finetune_vision_model)
)
if not has_explicit_branch_flags:
if self.finetune_vlm is None:
self.finetune_vlm = True
if self.finetune_language_model is None:
self.finetune_language_model = True
if self.finetune_vision_model is None:
self.finetune_vision_model = True
elif self.finetune_vlm is None:
self.finetune_vlm = bool(self.finetune_language_model or self.finetune_vision_model)
if self.finetune_action_head is None:
self.finetune_action_head = True
if self.finetune_vlm is None:
self.finetune_vlm = False
if self.finetune_language_model is None:
self.finetune_language_model = False
if self.finetune_vision_model is None:
self.finetune_vision_model = False
if self.finetune_action_head is None:
self.finetune_action_head = False
branch_vlm = self.finetune_language_model or self.finetune_vision_model
if self.finetune_vlm != branch_vlm:
raise ValueError(
"Inconsistent EVO1 finetune config: "
f"finetune_vlm={self.finetune_vlm} but "
f"(finetune_language_model or finetune_vision_model)={branch_vlm}. "
"When branch-level flags are used, finetune_vlm must match their effective union."
)
if self.n_action_steps > self.chunk_size:
raise ValueError(
f"n_action_steps ({self.n_action_steps}) must be <= chunk_size ({self.chunk_size})"
)
def validate_features(self) -> None:
if self.input_features is None:
self.input_features = {}
if self.output_features is None:
self.output_features = {}
for i in range(self.empty_cameras):
key = OBS_IMAGES + f".empty_camera_{i}"
if key not in self.input_features:
self.input_features[key] = PolicyFeature(
type=FeatureType.VISUAL,
shape=(3, *self.image_resolution),
)
if OBS_STATE not in self.input_features:
self.input_features[OBS_STATE] = PolicyFeature(
type=FeatureType.STATE,
shape=(self.max_state_dim,),
)
if ACTION not in self.output_features:
self.output_features[ACTION] = PolicyFeature(
type=FeatureType.ACTION,
shape=(self.max_action_dim,),
)
def get_optimizer_preset(self) -> AdamWConfig:
return AdamWConfig(
lr=self.optimizer_lr,
betas=self.optimizer_betas,
eps=self.optimizer_eps,
weight_decay=self.optimizer_weight_decay,
grad_clip_norm=self.optimizer_grad_clip_norm,
)
def get_scheduler_preset(self):
return Evo1SchedulerConfig(
num_warmup_steps=self.scheduler_warmup_steps,
)
@property
def observation_delta_indices(self) -> list[int]:
return [0]
@property
def action_delta_indices(self) -> list[int]:
return list(range(self.chunk_size))
@property
def reward_delta_indices(self) -> None:
return None
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# Copyright 2026 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
from __future__ import annotations
from collections.abc import Sequence
from typing import Any
import torch
import torch.nn as nn
from PIL import Image
from lerobot.policies.evo1.flow_matching import FlowmatchingActionHead
from lerobot.policies.evo1.internvl3_embedder import InternVL3Embedder
def _cfgget(config: Any, key: str, default=None):
if isinstance(config, dict):
return config.get(key, default)
return getattr(config, key, default)
class EVO1(nn.Module):
def __init__(self, config: dict):
super().__init__()
self.config = config
self._device = _cfgget(config, "device", "cuda")
self.return_cls_only = _cfgget(config, "return_cls_only", False)
vlm_name = _cfgget(config, "vlm_name", "OpenGVLab/InternVL3-1B")
image_size = _cfgget(config, "image_size", 448)
if image_size is None:
image_resolution = _cfgget(config, "image_resolution", (448, 448))
image_size = int(image_resolution[0])
self.embedder = InternVL3Embedder(
model_name=vlm_name,
image_size=image_size,
device=self._device,
num_language_layers=_cfgget(config, "vlm_num_layers", 14),
model_dtype=_cfgget(config, "vlm_dtype", "bfloat16"),
use_flash_attn=_cfgget(config, "use_flash_attn", True),
enable_gradient_checkpointing=_cfgget(config, "enable_gradient_checkpointing", True),
gradient_checkpointing_use_reentrant=_cfgget(
config, "gradient_checkpointing_use_reentrant", False
),
)
action_head_type = _cfgget(config, "action_head", "flowmatching").lower()
if action_head_type != "flowmatching":
raise NotImplementedError(f"Unknown action_head: {action_head_type}")
horizon = _cfgget(config, "action_horizon", _cfgget(config, "horizon", 16))
per_action_dim = _cfgget(config, "per_action_dim", 7)
action_dim = horizon * per_action_dim
if isinstance(config, dict):
config["horizon"] = horizon
config["per_action_dim"] = per_action_dim
config["action_dim"] = action_dim
self.horizon = horizon
self.per_action_dim = per_action_dim
self.action_head = FlowmatchingActionHead(config=config).to(self._device)
def _normalize_image_batches(
self,
images: Sequence[Image.Image | torch.Tensor] | Sequence[Sequence[Image.Image | torch.Tensor]],
prompt: str | list[str] | None,
image_mask: torch.Tensor,
) -> tuple[list[list[Image.Image | torch.Tensor]], list[str], torch.Tensor]:
if not images:
raise ValueError("EVO1 expects at least one image per sample.")
first = images[0]
if isinstance(first, (Image.Image, torch.Tensor)):
image_batches = [list(images)] # type: ignore[arg-type]
else:
image_batches = [list(sample) for sample in images] # type: ignore[arg-type]
batch_size = len(image_batches)
if prompt is None:
prompts = [""] * batch_size
elif isinstance(prompt, str):
prompts = [prompt] * batch_size
else:
prompts = [str(p) for p in prompt]
if len(prompts) != batch_size:
raise ValueError(
f"Prompt batch size {len(prompts)} does not match image batch size {batch_size}"
)
if image_mask.dim() == 1:
image_mask = image_mask.unsqueeze(0)
if image_mask.shape[0] != batch_size:
raise ValueError(
f"image_mask batch size {image_mask.shape[0]} does not match image batch size {batch_size}"
)
return image_batches, prompts, image_mask
def get_vl_embeddings(
self,
images: list[Image.Image | torch.Tensor] | list[list[Image.Image | torch.Tensor]],
image_mask: torch.Tensor,
prompt: str | list[str] | None = None,
return_cls_only: bool | None = None,
) -> torch.Tensor:
if return_cls_only is None:
return_cls_only = self.return_cls_only
image_batches, prompts, image_mask = self._normalize_image_batches(images, prompt, image_mask)
return self.embedder.get_fused_image_text_embedding_from_tensor_images(
image_tensors_batch=image_batches,
image_masks=image_mask,
text_prompts=prompts,
return_cls_only=return_cls_only,
)
def prepare_state(self, state_input: list | torch.Tensor) -> torch.Tensor:
if isinstance(state_input, list):
state_tensor = torch.tensor(state_input)
elif isinstance(state_input, torch.Tensor):
state_tensor = state_input
else:
raise TypeError(f"Unsupported state input type: {type(state_input)}")
if state_tensor.ndim == 1:
state_tensor = state_tensor.unsqueeze(0)
return state_tensor.to(self._device)
def predict_action(
self,
fused_tokens: torch.Tensor,
state: torch.Tensor,
actions_gt: torch.Tensor | None = None,
action_mask: torch.Tensor | None = None,
embodiment_ids: torch.Tensor | None = None,
):
if actions_gt is None:
return self.action_head.get_action(
fused_tokens,
state=state,
action_mask=action_mask,
embodiment_id=embodiment_ids,
)
return self.action_head(
fused_tokens,
state=state,
actions_gt=actions_gt,
action_mask=action_mask,
embodiment_id=embodiment_ids,
)
@torch.no_grad()
def run_inference(
self,
images: list[Image.Image | torch.Tensor],
image_mask: torch.Tensor,
prompt: str,
state_input: list | torch.Tensor,
return_cls_only: bool | None = None,
action_mask: torch.Tensor | None = None,
embodiment_ids: torch.Tensor | None = None,
) -> torch.Tensor:
if image_mask.dim() == 1:
image_mask = image_mask.unsqueeze(0)
fused_tokens = self.get_vl_embeddings(
images=[images],
image_mask=image_mask,
prompt=[prompt],
return_cls_only=return_cls_only,
)
state_tensor = self.prepare_state(state_input)
action = self.predict_action(
fused_tokens,
state_tensor,
action_mask=action_mask,
embodiment_ids=embodiment_ids,
)
if isinstance(action, torch.Tensor) and action.dtype == torch.bfloat16:
action = action.to(torch.float32)
return action
def forward(
self,
fused_tokens: torch.Tensor,
state: torch.Tensor | None = None,
actions_gt: torch.Tensor | None = None,
action_mask: torch.Tensor | None = None,
embodiment_ids: torch.Tensor | None = None,
):
return self.predict_action(fused_tokens, state, actions_gt, action_mask, embodiment_ids)
def _set_module_trainable(self, module: nn.Module, trainable: bool):
for param in module.parameters():
param.requires_grad = trainable
def set_finetune_flags(self):
finetune_vlm = _cfgget(self.config, "finetune_vlm", False)
finetune_language_model = _cfgget(self.config, "finetune_language_model", False)
finetune_vision_model = _cfgget(self.config, "finetune_vision_model", False)
has_explicit_branch_flags = any(
flag is not None for flag in (finetune_language_model, finetune_vision_model)
)
finetune_language_model = bool(finetune_language_model)
finetune_vision_model = bool(finetune_vision_model)
finetune_vlm = bool(finetune_vlm)
if has_explicit_branch_flags:
self._set_module_trainable(self.embedder, False)
if hasattr(self.embedder.model, "language_model"):
self._set_module_trainable(self.embedder.model.language_model, finetune_language_model)
if hasattr(self.embedder.model, "vision_model"):
self._set_module_trainable(self.embedder.model.vision_model, finetune_vision_model)
if hasattr(self.embedder.model, "mlp1"):
self._set_module_trainable(self.embedder.model.mlp1, finetune_vision_model)
elif not finetune_vlm:
self._set_module_trainable(self.embedder, False)
if not _cfgget(self.config, "finetune_action_head", False):
self._set_module_trainable(self.action_head, False)
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# Copyright 2026 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
from __future__ import annotations
import logging
import math
from types import SimpleNamespace
import torch
import torch.nn as nn
logger = logging.getLogger(__name__)
def _cfgget(config, key: str, default=None):
if isinstance(config, dict):
return config.get(key, default)
return getattr(config, key, default)
class SinusoidalPositionalEncoding(nn.Module):
def __init__(self, dim: int, max_len: int = 1000):
super().__init__()
pe = torch.zeros(max_len, dim)
position = torch.arange(0, max_len).unsqueeze(1)
div_term = torch.exp(torch.arange(0, dim, 2) * -(math.log(10000.0) / dim))
pe[:, 0::2] = torch.sin(position * div_term)
pe[:, 1::2] = torch.cos(position * div_term)
pe = pe.unsqueeze(0)
self.register_buffer("pe", pe)
def forward(self, seq_len: int):
if seq_len > self.pe.size(1):
self._extend_pe(seq_len)
return self.pe[:, :seq_len, :]
def _extend_pe(self, new_max_len):
old_max_len, dim = self.pe.size(1), self.pe.size(2)
if new_max_len <= old_max_len:
return
extra_positions = torch.arange(old_max_len, new_max_len, dtype=torch.float).unsqueeze(1)
div_term = torch.exp(torch.arange(0, dim, 2, dtype=torch.float) * -(math.log(10000.0) / dim))
extra_pe = torch.zeros(new_max_len - old_max_len, dim)
extra_pe[:, 0::2] = torch.sin(extra_positions * div_term)
extra_pe[:, 1::2] = torch.cos(extra_positions * div_term)
extra_pe = extra_pe.unsqueeze(0)
new_pe = torch.cat([self.pe, extra_pe.to(self.pe.device)], dim=1)
self.pe = new_pe
class CategorySpecificLinear(nn.Module):
def __init__(self, in_dim: int, out_dim: int, num_categories: int = 1):
super().__init__()
self.num_categories = num_categories
if num_categories <= 1:
self.linear = nn.Linear(in_dim, out_dim)
else:
self.weight = nn.Parameter(torch.empty(num_categories, in_dim, out_dim))
self.bias = nn.Parameter(torch.zeros(num_categories, out_dim))
nn.init.xavier_uniform_(self.weight)
def forward(self, x: torch.Tensor, category_id: torch.LongTensor):
if self.num_categories <= 1:
if x.dtype != self.linear.weight.dtype:
x = x.to(dtype=self.linear.weight.dtype)
return self.linear(x)
if x.dtype != self.weight.dtype:
x = x.to(dtype=self.weight.dtype)
orig_shape = x.shape
x_flat = x.reshape(-1, orig_shape[-1])
if category_id.dim() == 0:
cid = category_id.item()
out = x_flat @ self.weight[cid] + self.bias[cid]
else:
category_id = category_id.reshape(-1)
if category_id.numel() != x_flat.size(0):
raise ValueError(
f"category_id length {category_id.numel()} does not match flattened batch {x_flat.size(0)}"
)
weight_selected = self.weight[category_id]
bias_selected = self.bias[category_id]
out = torch.bmm(x_flat.unsqueeze(1), weight_selected).squeeze(1) + bias_selected
out_shape = orig_shape[:-1] + (out.shape[-1],)
return out.view(out_shape)
class CategorySpecificMLP(nn.Module):
def __init__(self, input_dim: int, hidden_dim: int, output_dim: int, num_categories: int = 1):
super().__init__()
self.fc1 = CategorySpecificLinear(input_dim, hidden_dim, num_categories)
self.fc2 = CategorySpecificLinear(hidden_dim, output_dim, num_categories)
self.activation = nn.ReLU(inplace=True)
def forward(self, x: torch.Tensor, category_id: torch.LongTensor):
out = self.activation(self.fc1(x, category_id))
out = self.fc2(out, category_id)
return out
class MultiEmbodimentActionEncoder(nn.Module):
def __init__(
self, action_dim: int, embed_dim: int, hidden_dim: int, horizon: int, num_categories: int = 1
):
super().__init__()
self.horizon = horizon
self.embed_dim = embed_dim
self.num_categories = num_categories
self.W1 = CategorySpecificLinear(action_dim, hidden_dim, num_categories)
self.W2 = CategorySpecificLinear(hidden_dim, hidden_dim, num_categories)
self.W3 = CategorySpecificLinear(hidden_dim, embed_dim, num_categories)
self.pos_encoding = SinusoidalPositionalEncoding(hidden_dim, max_len=horizon)
self.activation = nn.ReLU(inplace=True)
def forward(self, action_seq: torch.Tensor, category_id: torch.LongTensor):
batch_size, horizon, action_dim = action_seq.shape
assert self.horizon == horizon, "Action sequence length must match horizon"
x = action_seq.reshape(batch_size * horizon, action_dim)
if category_id.dim() == 0:
cat_ids = category_id.expand(horizon * batch_size)
else:
cat_ids = category_id.unsqueeze(1).expand(batch_size, horizon).reshape(batch_size * horizon)
out = self.activation(self.W1(x, cat_ids))
pos_enc = self.pos_encoding(horizon).to(device=out.device, dtype=out.dtype)
out = out.view(batch_size, horizon, -1) + pos_enc
out = out.view(batch_size * horizon, -1)
out = self.activation(self.W2(out, cat_ids))
out = self.W3(out, cat_ids)
return out.view(batch_size, horizon, self.embed_dim)
class BasicTransformerBlock(nn.Module):
def __init__(self, embed_dim: int, num_heads: int, hidden_dim: int, dropout: float = 0.0):
super().__init__()
self.attn = nn.MultiheadAttention(embed_dim, num_heads, dropout=dropout, batch_first=True)
self.norm1 = nn.LayerNorm(embed_dim)
self.norm2 = nn.LayerNorm(embed_dim)
self.ff = nn.Sequential(nn.Linear(embed_dim, hidden_dim), nn.GELU(), nn.Linear(hidden_dim, embed_dim))
def forward(self, action_tokens: torch.Tensor, context_tokens: torch.Tensor, time_emb: torch.Tensor):
x = self.norm1(action_tokens)
attn_out, _ = self.attn(x, context_tokens, context_tokens)
x = action_tokens + attn_out
x2 = self.norm2(x)
if time_emb is not None:
x2 = x2 + time_emb.unsqueeze(1)
ff_out = self.ff(x2)
return x + ff_out
class FlowmatchingActionHead(nn.Module):
def __init__(
self,
config=None,
embed_dim: int = 896,
hidden_dim: int = 1024,
action_dim: int = 16 * 7,
horizon: int = 16,
per_action_dim: int = 7,
num_heads: int = 8,
num_layers: int = 8,
dropout: float = 0.0,
num_inference_timesteps: int = 20,
num_categories: int = 1,
):
super().__init__()
if config is not None:
embed_dim = _cfgget(config, "embed_dim", embed_dim)
hidden_dim = _cfgget(config, "hidden_dim", hidden_dim)
action_dim = _cfgget(config, "action_dim", action_dim)
horizon = _cfgget(config, "horizon", horizon)
per_action_dim = _cfgget(config, "per_action_dim", per_action_dim)
num_heads = _cfgget(config, "num_heads", num_heads)
num_layers = _cfgget(config, "num_layers", num_layers)
dropout = _cfgget(config, "dropout", dropout)
num_inference_timesteps = _cfgget(config, "num_inference_timesteps", num_inference_timesteps)
num_categories = _cfgget(config, "num_categories", num_categories)
self.config = config
else:
self.config = SimpleNamespace(
embed_dim=embed_dim,
hidden_dim=hidden_dim,
action_dim=action_dim,
horizon=horizon,
per_action_dim=per_action_dim,
num_heads=num_heads,
num_layers=num_layers,
dropout=dropout,
num_inference_timesteps=num_inference_timesteps,
num_categories=num_categories,
)
logger.info("FlowmatchingActionHead num_inference_timesteps=%s", num_inference_timesteps)
self.embed_dim = embed_dim
self.horizon = horizon
self.per_action_dim = _cfgget(self.config, "per_action_dim", per_action_dim)
self.action_dim = _cfgget(self.config, "action_dim", action_dim)
self.time_pos_enc = SinusoidalPositionalEncoding(embed_dim, max_len=1000)
self.transformer_blocks = nn.ModuleList(
[
BasicTransformerBlock(
embed_dim=embed_dim,
num_heads=num_heads,
hidden_dim=embed_dim * 4,
dropout=dropout,
)
for _ in range(num_layers)
]
)
self.norm_out = nn.LayerNorm(embed_dim)
self.seq_pool_proj = nn.Linear(self.horizon * self.embed_dim, self.embed_dim)
self.mlp_head = CategorySpecificMLP(
input_dim=embed_dim,
hidden_dim=hidden_dim,
output_dim=action_dim,
num_categories=num_categories,
)
self.state_encoder = None
state_dim = _cfgget(self.config, "state_dim")
if state_dim is not None:
state_hidden = _cfgget(self.config, "state_hidden_dim", embed_dim)
self.state_encoder = CategorySpecificMLP(
input_dim=state_dim,
hidden_dim=state_hidden,
output_dim=embed_dim,
num_categories=num_categories,
)
if horizon > 1:
self.action_encoder = MultiEmbodimentActionEncoder(
action_dim=self.per_action_dim,
embed_dim=embed_dim,
hidden_dim=embed_dim,
horizon=horizon,
num_categories=num_categories,
)
self.single_action_proj = None
else:
self.action_encoder = None
self.single_action_proj = nn.Linear(self.per_action_dim, self.embed_dim)
def _project_actions(self, action_seq: torch.Tensor, embodiment_id: torch.LongTensor) -> torch.Tensor:
if self.horizon > 1 and self.action_encoder is not None:
return self.action_encoder(action_seq, embodiment_id)
if self.single_action_proj is None:
raise RuntimeError("single_action_proj is not initialized for horizon <= 1.")
return self.single_action_proj(action_seq)
def _expand_action_mask(
self,
action_mask: torch.Tensor,
batch_size: int,
per_action_dim: int,
device: torch.device,
dtype: torch.dtype,
) -> torch.Tensor:
if action_mask is None:
raise ValueError("action_mask must be provided for flow matching inference.")
if action_mask.dim() == 2:
expected_last_dim = self.horizon * per_action_dim
if action_mask.shape == (batch_size, expected_last_dim):
expanded_mask = action_mask.reshape(batch_size, self.horizon, per_action_dim)
elif action_mask.shape == (batch_size, per_action_dim):
expanded_mask = action_mask.unsqueeze(1).expand(batch_size, self.horizon, per_action_dim)
else:
raise ValueError(
f"Expected action_mask shape {(batch_size, expected_last_dim)} or "
f"{(batch_size, per_action_dim)}, got {tuple(action_mask.shape)}"
)
elif action_mask.dim() == 3:
expected_shape = (batch_size, self.horizon, per_action_dim)
if tuple(action_mask.shape) != expected_shape:
raise ValueError(
f"Expected action_mask shape {expected_shape}, got {tuple(action_mask.shape)}"
)
expanded_mask = action_mask
else:
raise ValueError(f"Unsupported action_mask rank: {action_mask.dim()}")
return expanded_mask.to(device=device, dtype=dtype)
def forward(
self,
fused_tokens: torch.Tensor,
state: torch.Tensor = None,
actions_gt: torch.Tensor = None,
embodiment_id: torch.LongTensor = None,
state_mask: torch.Tensor = None,
action_mask: torch.Tensor = None,
):
if actions_gt is None:
return self.get_action(
fused_tokens, state=state, embodiment_id=embodiment_id, action_mask=action_mask
)
batch_size = fused_tokens.size(0)
device = fused_tokens.device
if embodiment_id is None:
embodiment_id = torch.zeros(batch_size, dtype=torch.long, device=device)
context_tokens = fused_tokens
if state is not None and self.state_encoder is not None:
state_emb = self.state_encoder(state, embodiment_id).unsqueeze(1)
context_tokens = torch.cat([context_tokens, state_emb], dim=1)
t = (
torch.distributions.Beta(2, 2)
.sample((batch_size,))
.clamp(0.02, 0.98)
.to(device)
.to(dtype=self.dtype)
)
time_index = (t * 999).long().clamp_(0, 999)
time_emb = self.time_pos_enc(1000)[:, time_index, :].squeeze(0).to(dtype=context_tokens.dtype)
actions_gt_seq = actions_gt
noise = torch.rand_like(actions_gt) * 2 - 1
if action_mask is not None:
action_mask = action_mask.to(dtype=noise.dtype, device=noise.device)
if action_mask.shape != noise.shape:
raise ValueError(f"action_mask shape {action_mask.shape} != noise shape {noise.shape}")
actions_gt_seq = actions_gt_seq * action_mask
noise = noise * action_mask
if self.horizon > 1:
noise_seq = noise.view(batch_size, self.horizon, self.per_action_dim)
else:
noise_seq = noise if noise.dim() == 3 else noise.unsqueeze(1)
t_broadcast = t.view(batch_size, 1, 1)
action_intermediate_seq = (1 - t_broadcast) * noise_seq + t_broadcast * actions_gt_seq
action_tokens = self._project_actions(action_intermediate_seq, embodiment_id)
target_dtype = self.dtype
action_tokens = action_tokens.to(dtype=target_dtype)
context_tokens = context_tokens.to(dtype=target_dtype)
time_emb = time_emb.to(dtype=target_dtype)
x = action_tokens
for block in self.transformer_blocks:
x = block(x, context_tokens, time_emb)
x = self.norm_out(x)
if self.horizon > 1:
x_flat = x.reshape(batch_size, -1)
x_pooled = self.seq_pool_proj(x_flat)
else:
x_pooled = x.squeeze(1)
pred_velocity = self.mlp_head(x_pooled, embodiment_id)
return pred_velocity, noise
def get_action(
self,
fused_tokens: torch.Tensor,
state: torch.Tensor = None,
embodiment_id: torch.LongTensor = None,
action_mask: torch.Tensor = None,
):
batch_size = fused_tokens.size(0)
device = fused_tokens.device
if embodiment_id is None:
embodiment_id = torch.zeros(batch_size, dtype=torch.long, device=device)
context_tokens = fused_tokens
if state is not None and self.state_encoder is not None:
state_emb = self.state_encoder(state, embodiment_id).unsqueeze(1)
context_tokens = torch.cat([context_tokens, state_emb], dim=1)
action_dim_total = _cfgget(self.config, "action_dim", self.action_dim)
per_action_dim = _cfgget(self.config, "per_action_dim", action_dim_total // max(self.horizon, 1))
action = torch.rand(batch_size, action_dim_total, device=device, dtype=context_tokens.dtype) * 2 - 1
action_seq = (
action.view(batch_size, self.horizon, per_action_dim)
if self.horizon > 1
else action.view(batch_size, 1, per_action_dim)
)
action_mask = self._expand_action_mask(
action_mask,
batch_size=batch_size,
per_action_dim=per_action_dim,
device=action_seq.device,
dtype=action_seq.dtype,
)
action_seq = action_seq * action_mask
target_dtype = self.dtype
context_tokens = context_tokens.to(dtype=target_dtype)
num_steps = int(_cfgget(self.config, "num_inference_timesteps", 32))
if num_steps <= 0:
raise ValueError(f"num_inference_timesteps must be positive, got {num_steps}")
dt = 1.0 / num_steps
for i in range(num_steps):
t = i / num_steps
time_index = min(int(t * 999), 999)
time_emb = (
self.time_pos_enc(1000)[:, time_index, :].to(device).squeeze(0).to(dtype=context_tokens.dtype)
)
time_emb = time_emb.unsqueeze(0).repeat(batch_size, 1)
action_seq = action_seq * action_mask
action_tokens = self._project_actions(action_seq, embodiment_id).to(dtype=target_dtype)
time_emb = time_emb.to(dtype=target_dtype)
x = action_tokens
for block in self.transformer_blocks:
x = block(x, context_tokens, time_emb)
x = self.norm_out(x)
if self.horizon > 1:
x_flat = x.reshape(batch_size, -1)
x_pooled = self.seq_pool_proj(x_flat)
else:
x_pooled = x.squeeze(1)
pred = self.mlp_head(x_pooled, embodiment_id)
action = action + dt * pred
action_seq = (
action.view(batch_size, self.horizon, per_action_dim)
if self.horizon > 1
else action.view(batch_size, 1, per_action_dim)
)
action_seq = action_seq * action_mask
return action_seq.reshape(batch_size, -1)
@property
def device(self):
return next(self.parameters()).device
@property
def dtype(self):
return next(self.parameters()).dtype
@@ -0,0 +1,435 @@
# Copyright 2026 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
from __future__ import annotations
import functools
import logging
import types
from collections.abc import Sequence
from contextlib import contextmanager
from typing import TYPE_CHECKING
import torch
import torch.nn as nn
import torch.utils.checkpoint
import torchvision.transforms.functional as TF
from PIL import Image
from torchvision.transforms.functional import to_pil_image
from lerobot.utils.import_utils import _transformers_available, require_package
if TYPE_CHECKING or _transformers_available:
from transformers import AutoModel, AutoTokenizer
else:
AutoModel = None
AutoTokenizer = None
IMAGENET_MEAN = (0.485, 0.456, 0.406)
IMAGENET_STD = (0.229, 0.224, 0.225)
IMG_CONTEXT_TOKEN = "<IMG_CONTEXT>" # nosec B105
IMG_START_TOKEN = "<img>" # nosec B105
IMG_END_TOKEN = "</img>" # nosec B105
logger = logging.getLogger(__name__)
def _patch_vision_encoder_checkpointing(encoder: nn.Module, use_reentrant: bool) -> None:
if getattr(encoder, "_evo1_checkpoint_patch_applied", False):
encoder.gradient_checkpointing_use_reentrant = use_reentrant
return
original_forward = encoder.forward
def forward_with_checkpoint_kwargs(self, *args, **kwargs):
original_checkpoint = torch.utils.checkpoint.checkpoint
def checkpoint(function, *checkpoint_args, **checkpoint_kwargs):
checkpoint_kwargs.setdefault("use_reentrant", self.gradient_checkpointing_use_reentrant)
return original_checkpoint(function, *checkpoint_args, **checkpoint_kwargs)
torch.utils.checkpoint.checkpoint = checkpoint
try:
return original_forward(*args, **kwargs)
finally:
torch.utils.checkpoint.checkpoint = original_checkpoint
encoder.gradient_checkpointing_use_reentrant = use_reentrant
encoder.forward = types.MethodType(forward_with_checkpoint_kwargs, encoder)
encoder._evo1_checkpoint_patch_applied = True
def flash_attn_is_available() -> bool:
try:
import flash_attn # noqa: F401
except ModuleNotFoundError:
return False
return True
@contextmanager
def _internvl_transformers5_load_compatibility():
from transformers.modeling_utils import PreTrainedModel
original_linspace = torch.linspace
original_mark_tied = PreTrainedModel.mark_tied_weights_as_initialized
def linspace(*args, **kwargs):
if kwargs.get("device") is None:
kwargs["device"] = torch.device("cpu")
return original_linspace(*args, **kwargs)
def mark_tied_weights_as_initialized(self, loading_info):
if not hasattr(self, "all_tied_weights_keys"):
self.all_tied_weights_keys = {}
return original_mark_tied(self, loading_info)
torch.linspace = linspace
PreTrainedModel.mark_tied_weights_as_initialized = mark_tied_weights_as_initialized
try:
yield
finally:
torch.linspace = original_linspace
PreTrainedModel.mark_tied_weights_as_initialized = original_mark_tied
@functools.lru_cache(maxsize=10000)
def get_target_aspect_ratio(orig_width: int, orig_height: int, image_size: int, min_num: int, max_num: int):
aspect_ratio = orig_width / orig_height
target_ratios = {
(i, j)
for n in range(min_num, max_num + 1)
for i in range(1, n + 1)
for j in range(1, n + 1)
if i * j <= max_num and i * j >= min_num
}
target_ratios = sorted(target_ratios, key=lambda x: x[0] * x[1])
best_ratio_diff = float("inf")
best_ratio = (1, 1)
area = orig_width * orig_height
for ratio in target_ratios:
target_ar = ratio[0] / ratio[1]
diff = abs(aspect_ratio - target_ar)
if diff < best_ratio_diff:
best_ratio_diff = diff
best_ratio = ratio
elif diff == best_ratio_diff and area > 0.5 * image_size**2 * ratio[0] * ratio[1]:
best_ratio = ratio
return best_ratio
def dynamic_preprocess(image, min_num=1, max_num=1, image_size=448, use_thumbnail=False):
orig_width, orig_height = image.size
ratio_w, ratio_h = get_target_aspect_ratio(orig_width, orig_height, image_size, min_num, max_num)
target_width = image_size * ratio_w
target_height = image_size * ratio_h
blocks = ratio_w * ratio_h
resized_img = image.resize((target_width, target_height))
processed_images = []
for i in range(blocks):
box = (
(i % (target_width // image_size)) * image_size,
(i // (target_width // image_size)) * image_size,
((i % (target_width // image_size)) + 1) * image_size,
((i // (target_width // image_size)) + 1) * image_size,
)
processed_images.append(resized_img.crop(box))
if use_thumbnail and len(processed_images) != 1:
processed_images.append(image.resize((image_size, image_size)))
return processed_images
class InternVL3Embedder(nn.Module):
def __init__(
self,
model_name="OpenGVLab/InternVL3-1B",
image_size=448,
device="cuda",
num_language_layers: int | None = 14,
model_dtype: str | torch.dtype = "bfloat16",
use_flash_attn: bool = True,
enable_gradient_checkpointing: bool = True,
gradient_checkpointing_use_reentrant: bool = False,
):
super().__init__()
self._requested_device = device
self.image_size = image_size
self.num_language_layers = num_language_layers
self.max_text_length = 1024
self.enable_gradient_checkpointing = bool(enable_gradient_checkpointing)
self.gradient_checkpointing_use_reentrant = bool(gradient_checkpointing_use_reentrant)
require_package("transformers", extra="evo1")
self.tokenizer = AutoTokenizer.from_pretrained(model_name, trust_remote_code=True, use_fast=False)
if isinstance(model_dtype, str):
try:
model_dtype = getattr(torch, model_dtype)
except AttributeError as exc:
raise ValueError(f"Unsupported EVO1 vlm_dtype '{model_dtype}'") from exc
resolved_use_flash_attn = bool(use_flash_attn and flash_attn_is_available())
if use_flash_attn and not resolved_use_flash_attn:
logger.warning("flash_attn is not installed. Falling back to standard attention.")
# InternVL3 remote code predates Transformers 5 post-init conventions:
# it computes stochastic-depth scalars via torch.linspace(...).item()
# while Transformers initializes under torch.device("meta"), and it
# does not populate all_tied_weights_keys before loading finalization.
with _internvl_transformers5_load_compatibility():
self.model = AutoModel.from_pretrained(
model_name,
torch_dtype=model_dtype,
trust_remote_code=True,
use_flash_attn=resolved_use_flash_attn,
low_cpu_mem_usage=True,
_fast_init=False,
).to(self._requested_device)
if hasattr(self.model.language_model, "model"):
layers = self.model.language_model.model.layers
else:
layers = self.model.language_model.layers
if self.num_language_layers is not None:
layers = layers[: self.num_language_layers]
if hasattr(self.model.language_model, "model"):
self.model.language_model.model.layers = torch.nn.ModuleList(layers)
else:
self.model.language_model.layers = torch.nn.ModuleList(layers)
self.model.language_model.lm_head = torch.nn.Identity()
self._configure_memory_features()
self.img_context_token_id = self.tokenizer.convert_tokens_to_ids(IMG_CONTEXT_TOKEN)
def _configure_memory_features(self) -> None:
checkpoint_kwargs = {"use_reentrant": self.gradient_checkpointing_use_reentrant}
if not self.enable_gradient_checkpointing:
if hasattr(self.model, "vision_model") and hasattr(self.model.vision_model, "encoder"):
self.model.vision_model.encoder.gradient_checkpointing = False
language_model = getattr(self.model, "language_model", None)
if language_model is not None:
if hasattr(language_model, "gradient_checkpointing_disable"):
language_model.gradient_checkpointing_disable()
elif hasattr(language_model, "gradient_checkpointing"):
language_model.gradient_checkpointing = False
if hasattr(language_model, "model"):
inner = language_model.model
if hasattr(inner, "gradient_checkpointing_disable"):
inner.gradient_checkpointing_disable()
elif hasattr(inner, "gradient_checkpointing"):
inner.gradient_checkpointing = False
return
def _enable_ckpt(module: nn.Module | None) -> bool:
if module is None:
return False
if hasattr(module, "gradient_checkpointing_enable"):
try:
module.gradient_checkpointing_enable(gradient_checkpointing_kwargs=checkpoint_kwargs)
except TypeError:
module.gradient_checkpointing_enable()
return True
if hasattr(module, "gradient_checkpointing"):
module.gradient_checkpointing = True
return True
return False
enabled_any = _enable_ckpt(self.model)
if hasattr(self.model, "vision_model") and hasattr(self.model.vision_model, "encoder"):
encoder = self.model.vision_model.encoder
encoder.gradient_checkpointing = True
_patch_vision_encoder_checkpointing(
encoder, use_reentrant=self.gradient_checkpointing_use_reentrant
)
enabled_any = True
language_model = getattr(self.model, "language_model", None)
if language_model is not None:
enabled_any = _enable_ckpt(language_model) or enabled_any
if hasattr(language_model, "model"):
enabled_any = _enable_ckpt(language_model.model) or enabled_any
if hasattr(language_model, "config"):
language_model.config.use_cache = False
if hasattr(self.model, "config"):
self.model.config.use_cache = False
if hasattr(self.model, "enable_input_require_grads"):
self.model.enable_input_require_grads()
if enabled_any:
logger.info("Gradient checkpointing enabled for InternVL3 embedder.")
else:
logger.warning(
"Requested gradient checkpointing, but model does not expose checkpointing controls."
)
def _preprocess_single_image(self, image: Image.Image | torch.Tensor) -> torch.Tensor:
if isinstance(image, torch.Tensor):
pil_image = to_pil_image(image.detach().cpu())
else:
pil_image = image.convert("RGB")
tiles = dynamic_preprocess(pil_image, image_size=self.image_size)
tile_tensors = torch.stack([TF.to_tensor(tile) for tile in tiles]).to(
device=self.device, dtype=torch.bfloat16
)
mean = torch.tensor(IMAGENET_MEAN, device=self.device, dtype=torch.bfloat16).view(1, 3, 1, 1)
std = torch.tensor(IMAGENET_STD, device=self.device, dtype=torch.bfloat16).view(1, 3, 1, 1)
return (tile_tensors - mean) / std
def _preprocess_images(
self,
image_tensors_batch: Sequence[Sequence[Image.Image | torch.Tensor]],
) -> tuple[torch.Tensor, list[list[int]]]:
pixel_values_list = []
batch_num_tiles_list: list[list[int]] = []
for image_tensors in image_tensors_batch:
num_tiles_list: list[int] = []
for image in image_tensors:
tiles = self._preprocess_single_image(image)
pixel_values_list.append(tiles)
num_tiles_list.append(int(tiles.shape[0]))
batch_num_tiles_list.append(num_tiles_list)
if pixel_values_list:
pixel_values = torch.cat(pixel_values_list, dim=0)
else:
pixel_values = torch.empty(
0, 3, self.image_size, self.image_size, dtype=torch.bfloat16, device=self.device
)
return pixel_values, batch_num_tiles_list
def _build_multimodal_prompts(
self,
batch_num_tiles_list: list[list[int]],
text_prompts: Sequence[str],
) -> list[str]:
prompts = []
for num_tiles_list, text_prompt in zip(batch_num_tiles_list, text_prompts, strict=True):
prompt_segments = []
for i, tile_count in enumerate(num_tiles_list):
token_count = self.model.num_image_token * tile_count
image_tokens = IMG_START_TOKEN + IMG_CONTEXT_TOKEN * token_count + IMG_END_TOKEN
prompt_segments.append(f"Image-{i + 1}: {image_tokens}\n")
prompts.append("".join(prompt_segments) + text_prompt.strip())
return prompts
def _prepare_and_fuse_embeddings(
self,
prompts: Sequence[str],
vit_embeds: torch.Tensor,
image_masks: torch.Tensor,
batch_num_tiles_list: list[list[int]],
) -> tuple[torch.Tensor, torch.Tensor]:
untruncated_ids = self.tokenizer(list(prompts), padding=False, truncation=False)["input_ids"]
true_sequence_length = max((len(ids) for ids in untruncated_ids), default=0)
if true_sequence_length > self.max_text_length:
logger.warning(
"InternVL3 prompt truncated in batch: max_length=%s actual_max_length=%s",
self.max_text_length,
true_sequence_length,
)
model_inputs = self.tokenizer(
list(prompts),
return_tensors="pt",
padding="max_length",
truncation=True,
max_length=self.max_text_length,
).to(self.device)
input_ids = model_inputs["input_ids"]
attention_mask = model_inputs["attention_mask"]
img_token_mask = input_ids == self.img_context_token_id
input_embeds = self.model.language_model.get_input_embeddings()(input_ids).clone()
batch_size, _, channels = input_embeds.shape
vit_embeds = vit_embeds.reshape(-1, channels).to(dtype=input_embeds.dtype, device=input_embeds.device)
tokens_per_tile = self.model.num_image_token
actual_vis_tokens_list = img_token_mask.sum(dim=1).tolist()
vit_idx = 0
for batch_index in range(batch_size):
expected_vis_tokens = sum(batch_num_tiles_list[batch_index]) * tokens_per_tile
mask_b = img_token_mask[batch_index]
actual_vis_tokens = actual_vis_tokens_list[batch_index]
item_vit_embeds = vit_embeds[vit_idx : vit_idx + expected_vis_tokens]
vit_idx += expected_vis_tokens
if actual_vis_tokens > 0:
if item_vit_embeds.shape[0] < actual_vis_tokens:
raise ValueError(
f"InternVL3 produced fewer image tokens than expected for sample {batch_index}: "
f"got {item_vit_embeds.shape[0]}, need {actual_vis_tokens}"
)
input_embeds[batch_index, mask_b] = item_vit_embeds[:actual_vis_tokens]
current_token_idx = 0
img_token_locations = torch.where(mask_b)[0]
for image_index, num_tiles in enumerate(batch_num_tiles_list[batch_index]):
num_tokens_for_image = num_tiles * tokens_per_tile
if not bool(image_masks[batch_index, image_index].item()):
start_offset = current_token_idx
end_offset = min(current_token_idx + num_tokens_for_image, len(img_token_locations))
if start_offset < end_offset:
idxs = img_token_locations[start_offset:end_offset]
attention_mask[batch_index, idxs] = 0
current_token_idx += num_tokens_for_image
return input_embeds, attention_mask
def get_fused_image_text_embedding_from_tensor_images(
self,
image_tensors_batch: Sequence[Sequence[Image.Image | torch.Tensor]],
image_masks: torch.Tensor,
text_prompts: Sequence[str],
return_cls_only: bool = True,
):
pixel_values, batch_num_tiles_list = self._preprocess_images(image_tensors_batch)
if pixel_values.shape[0] == 0:
logger.warning("InternVL3 received an empty image batch after preprocessing.")
hidden_size = getattr(self.model.config, "hidden_size", None)
if hidden_size is None and hasattr(self.model.language_model, "config"):
hidden_size = getattr(self.model.language_model.config, "hidden_size", None)
if hidden_size is None:
raise RuntimeError("Unable to infer hidden size for empty InternVL3 batch.")
empty = torch.empty(0, hidden_size, device=self.device, dtype=torch.float32)
return empty
prompts = self._build_multimodal_prompts(batch_num_tiles_list, text_prompts)
vit_embeds = self.model.extract_feature(pixel_values)
inputs_embeds, attention_mask = self._prepare_and_fuse_embeddings(
prompts,
vit_embeds,
image_masks.to(device=self.device),
batch_num_tiles_list,
)
outputs = self.model.language_model(
inputs_embeds=inputs_embeds,
attention_mask=attention_mask,
output_hidden_states=True,
use_cache=False,
return_dict=True,
)
fused_hidden = outputs.hidden_states[-1].to(torch.float32)
return fused_hidden[:, 0, :] if return_cls_only else fused_hidden
@property
def device(self) -> torch.device:
return next(self.model.parameters()).device
+450
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@@ -0,0 +1,450 @@
# Copyright 2026 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
from __future__ import annotations
import builtins
from collections import deque
from contextlib import nullcontext
from pathlib import Path
import torch
from torch import Tensor
from lerobot.configs.policies import PreTrainedConfig
from lerobot.policies.evo1.configuration_evo1 import Evo1Config
from lerobot.policies.evo1.evo1_model import EVO1
from lerobot.policies.pretrained import PreTrainedPolicy, T
from lerobot.utils.constants import ACTION, OBS_IMAGES, OBS_STATE
class EVO1Policy(PreTrainedPolicy):
config_class = Evo1Config
name = "evo1"
def __init__(self, config: Evo1Config, **kwargs):
super().__init__(config)
config.validate_features()
if len(config.image_features) > config.max_views:
raise ValueError(
f"EVO1 supports at most {config.max_views} camera streams, got {len(config.image_features)}"
)
self.config = config
self.model = EVO1(self._build_model_config(config))
self.model.set_finetune_flags()
self.reset()
@classmethod
def from_pretrained(
cls: builtins.type[T],
pretrained_name_or_path: str | Path,
*,
config: PreTrainedConfig | None = None,
force_download: bool = False,
resume_download: bool | None = None,
proxies: dict | None = None,
token: str | bool | None = None,
cache_dir: str | Path | None = None,
local_files_only: bool = False,
revision: str | None = None,
strict: bool | None = None,
**kwargs,
) -> T:
if strict is None:
strict = not (config is not None and getattr(config, "training_stage", None) == "stage2")
return super().from_pretrained(
pretrained_name_or_path=pretrained_name_or_path,
config=config,
force_download=force_download,
resume_download=resume_download,
proxies=proxies,
token=token,
cache_dir=cache_dir,
local_files_only=local_files_only,
revision=revision,
strict=strict,
**kwargs,
)
@staticmethod
def _build_model_config(config: Evo1Config) -> dict:
return {
"device": config.device,
"return_cls_only": config.return_cls_only,
"vlm_name": config.vlm_model_name,
"vlm_num_layers": config.vlm_num_layers,
"vlm_dtype": config.vlm_dtype,
"use_flash_attn": config.use_flash_attn,
"action_head": config.action_head,
"action_horizon": config.chunk_size,
"per_action_dim": config.max_action_dim,
"state_dim": config.max_state_dim,
"embed_dim": config.embed_dim,
"hidden_dim": config.hidden_dim,
"state_hidden_dim": config.state_hidden_dim,
"num_heads": config.num_heads,
"num_layers": config.num_layers,
"dropout": config.dropout,
"num_inference_timesteps": config.num_inference_timesteps,
"num_categories": config.num_categories,
"enable_gradient_checkpointing": config.enable_gradient_checkpointing,
"gradient_checkpointing_use_reentrant": config.gradient_checkpointing_use_reentrant,
"finetune_vlm": config.finetune_vlm,
"finetune_language_model": config.finetune_language_model,
"finetune_vision_model": config.finetune_vision_model,
"finetune_action_head": config.finetune_action_head,
}
@property
def _camera_keys(self) -> list[str]:
return list(self.config.image_features)
@property
def _env_action_dim(self) -> int:
action_feature = self.config.action_feature
if action_feature is None:
return self.config.max_action_dim
return int(action_feature.shape[0])
@property
def _compute_dtype(self) -> torch.dtype:
return next(self.model.action_head.parameters()).dtype
@property
def _training_compute_dtype(self) -> torch.dtype:
if str(self.config.device).startswith("cuda"):
return torch.bfloat16
return self._compute_dtype
@property
def _inference_compute_dtype(self) -> torch.dtype:
if str(self.config.device).startswith("cuda") and self.config.use_amp:
return torch.bfloat16
return self._compute_dtype
def get_optim_params(self) -> list[dict]:
decay, no_decay = [], []
for name, param in self.named_parameters():
if not param.requires_grad:
continue
is_bias = name.endswith("bias") or ".bias" in name
is_norm = param.dim() == 1 or "norm" in name.lower()
if is_bias or is_norm:
no_decay.append(param)
else:
decay.append(param)
return [
{"params": decay, "weight_decay": self.config.optimizer_weight_decay},
{"params": no_decay, "weight_decay": 0.0},
]
def reset(self):
self._action_queue = deque([], maxlen=self.config.n_action_steps)
def _normalize_task_batch(self, batch: dict[str, Tensor | list[str] | str]) -> list[str]:
prompts = batch.get(self.config.task_field)
if prompts is None and self.config.task_field != "task":
prompts = batch.get("task")
if prompts is None:
raise ValueError(f"EVO1 expects a '{self.config.task_field}' text field in the batch.")
if isinstance(prompts, str):
return [prompts]
if isinstance(prompts, (list, tuple)):
return [str(prompt) for prompt in prompts]
raise TypeError(f"Unsupported prompt batch type: {type(prompts)}")
def _prepare_state(self, batch: dict[str, Tensor]) -> tuple[Tensor, Tensor]:
if OBS_STATE not in batch:
raise ValueError(f"EVO1 requires '{OBS_STATE}' in the batch.")
state = batch[OBS_STATE]
if state.dim() == 1:
state = state.unsqueeze(0)
elif state.dim() == 3:
state = state[:, -1]
elif state.dim() != 2:
raise ValueError(f"Unsupported state tensor shape for EVO1: {tuple(state.shape)}")
batch_size, state_dim = state.shape
if state_dim > self.config.max_state_dim:
raise ValueError(
f"State dim {state_dim} exceeds configured max_state_dim {self.config.max_state_dim}"
)
explicit_mask = batch.get("state_mask")
if explicit_mask is not None:
if explicit_mask.dim() == 1:
explicit_mask = explicit_mask.unsqueeze(0)
elif explicit_mask.dim() == 3:
explicit_mask = explicit_mask[:, -1]
elif explicit_mask.dim() != 2:
raise ValueError(
f"Unsupported state_mask tensor shape for EVO1: {tuple(explicit_mask.shape)}"
)
if explicit_mask.shape != (batch_size, state_dim):
raise ValueError(
f"state_mask shape {tuple(explicit_mask.shape)} does not match state shape {(batch_size, state_dim)}"
)
padded = torch.zeros(
batch_size,
self.config.max_state_dim,
dtype=state.dtype,
device=self.config.device,
)
padded[:, :state_dim] = state.to(device=self.config.device)
mask = torch.zeros(
batch_size,
self.config.max_state_dim,
dtype=torch.bool,
device=self.config.device,
)
if explicit_mask is None:
mask[:, :state_dim] = True
else:
mask[:, :state_dim] = explicit_mask.to(device=self.config.device, dtype=torch.bool)
return padded.to(dtype=self._compute_dtype), mask
def _prepare_actions(self, batch: dict[str, Tensor]) -> tuple[Tensor, Tensor]:
if ACTION not in batch:
raise ValueError(f"EVO1 requires '{ACTION}' in the batch for training.")
action = batch[ACTION]
if action.dim() == 2:
action = action.unsqueeze(1)
batch_size, horizon, action_dim = action.shape
if horizon != self.config.chunk_size:
raise ValueError(
f"EVO1 expects chunk_size={self.config.chunk_size}, got action horizon {horizon}"
)
if action_dim > self.config.max_action_dim:
raise ValueError(
f"Action dim {action_dim} exceeds configured max_action_dim {self.config.max_action_dim}"
)
explicit_mask = batch.get("action_mask")
if explicit_mask is not None:
if explicit_mask.dim() == 2:
if horizon == 1:
explicit_mask = explicit_mask.unsqueeze(1)
else:
raise ValueError(
f"2D action_mask is only supported when chunk_size=1, got action horizon {horizon}"
)
elif explicit_mask.dim() != 3:
raise ValueError(
f"Unsupported action_mask tensor shape for EVO1: {tuple(explicit_mask.shape)}"
)
if explicit_mask.shape != (batch_size, horizon, action_dim):
raise ValueError(
"action_mask shape "
f"{tuple(explicit_mask.shape)} does not match action shape {(batch_size, horizon, action_dim)}"
)
padded = torch.zeros(
batch_size,
horizon,
self.config.max_action_dim,
dtype=action.dtype,
device=self.config.device,
)
padded[:, :, :action_dim] = action.to(device=self.config.device)
mask = torch.zeros(
batch_size,
horizon,
self.config.max_action_dim,
dtype=torch.bool,
device=self.config.device,
)
if explicit_mask is None:
mask[:, :, :action_dim] = True
else:
mask[:, :, :action_dim] = explicit_mask.to(device=self.config.device, dtype=torch.bool)
return padded.to(dtype=self._compute_dtype), mask
def _prepare_inference_action_mask(self, batch_size: int) -> Tensor:
mask = torch.zeros(
batch_size,
self.config.max_action_dim,
dtype=torch.bool,
device=self.config.device,
)
mask[:, : self._env_action_dim] = True
return mask
def _get_embodiment_ids(self, batch: dict[str, Tensor], batch_size: int) -> Tensor:
embodiment_ids = batch.get("embodiment_id")
if embodiment_ids is None and self.config.embodiment_id_field:
embodiment_ids = batch.get(self.config.embodiment_id_field)
if embodiment_ids is None:
return torch.full(
(batch_size,),
self.config.default_embodiment_id,
dtype=torch.long,
device=self.config.device,
)
if embodiment_ids.dim() == 0:
embodiment_ids = embodiment_ids.unsqueeze(0)
elif embodiment_ids.dim() > 1:
embodiment_ids = embodiment_ids[:, -1]
return embodiment_ids.to(device=self.config.device, dtype=torch.long)
@property
def _tracks_vlm_gradients(self) -> bool:
return bool(
self.config.finetune_vlm
or self.config.finetune_language_model
or self.config.finetune_vision_model
)
def _collect_image_batches(self, batch: dict[str, Tensor]) -> tuple[list[list[Tensor]], Tensor]:
camera_keys = self._camera_keys or sorted(key for key in batch if key.startswith(f"{OBS_IMAGES}."))
if not camera_keys:
raise ValueError("EVO1 requires at least one visual observation feature.")
# Normalize each camera tensor to (B, C, H, W) up-front so that batch_size is read
# from a real batch dim and not from C in the unbatched (C, H, W) case.
normalized: dict[str, Tensor] = {}
for camera_key in camera_keys[: self.config.max_views]:
image = batch[camera_key]
if image.dim() == 3:
image = image.unsqueeze(0)
elif image.dim() == 5:
image = image[:, -1]
elif image.dim() != 4:
raise ValueError(
f"Unsupported image tensor shape for EVO1: key={camera_key} shape={tuple(image.shape)}"
)
normalized[camera_key] = image
batch_size = normalized[camera_keys[0]].shape[0]
image_batches: list[list[Tensor]] = []
image_masks = torch.zeros(batch_size, self.config.max_views, dtype=torch.bool)
for batch_index in range(batch_size):
sample_images: list[Tensor] = []
for camera_key in camera_keys[: self.config.max_views]:
sample_images.append(normalized[camera_key][batch_index].detach().cpu())
if not sample_images:
raise ValueError("EVO1 received a batch without any image tensor.")
while len(sample_images) < self.config.max_views:
sample_images.append(torch.zeros_like(sample_images[0]))
image_batches.append(sample_images[: self.config.max_views])
image_masks[batch_index, : min(len(camera_keys), self.config.max_views)] = True
return image_batches, image_masks
def _compute_fused_tokens(
self,
prompts: list[str],
image_batches: list[list[Tensor]],
image_masks: Tensor,
) -> Tensor:
track_vlm_gradients = self._tracks_vlm_gradients
grad_context = nullcontext() if track_vlm_gradients else torch.no_grad()
embedder = getattr(self.model, "embedder", None)
embedder_was_training = embedder.training if embedder is not None else None
if not track_vlm_gradients and embedder is not None:
embedder.eval()
try:
with grad_context:
fused_tokens = self.model.get_vl_embeddings(
images=image_batches,
image_mask=image_masks,
prompt=prompts,
return_cls_only=self.config.return_cls_only,
)
finally:
if not track_vlm_gradients and embedder is not None and embedder_was_training is not None:
embedder.train(embedder_was_training)
if not track_vlm_gradients:
fused_tokens = fused_tokens.detach()
return fused_tokens.to(device=self.config.device, dtype=self._compute_dtype)
def _compute_masked_loss(
self,
pred_velocity: Tensor,
target_velocity: Tensor,
action_mask: Tensor,
reduction: str,
) -> Tensor:
flat_mask = action_mask.view(action_mask.shape[0], -1).to(dtype=pred_velocity.dtype)
sq_error = ((pred_velocity - target_velocity) * flat_mask).pow(2)
active = flat_mask.sum(dim=1).clamp_min(1.0)
per_sample_loss = sq_error.sum(dim=1) / active
if reduction == "none":
return per_sample_loss
if reduction != "mean":
raise ValueError(f"Unsupported reduction '{reduction}'")
return sq_error.sum() / active.sum()
def forward(self, batch: dict[str, Tensor], reduction: str = "mean") -> tuple[Tensor, dict]:
prompts = self._normalize_task_batch(batch)
image_batches, image_masks = self._collect_image_batches(batch)
states, _state_mask = self._prepare_state(batch)
actions_gt, action_mask = self._prepare_actions(batch)
fused_tokens = self._compute_fused_tokens(prompts, image_batches, image_masks)
states = states.to(dtype=self._training_compute_dtype)
actions_gt = actions_gt.to(dtype=self._training_compute_dtype)
fused_tokens = fused_tokens.to(dtype=self._training_compute_dtype)
embodiment_ids = self._get_embodiment_ids(batch, states.shape[0])
pred_velocity, noise = self.model(
fused_tokens,
state=states,
actions_gt=actions_gt,
action_mask=action_mask.to(device=self.config.device, dtype=self._compute_dtype),
embodiment_ids=embodiment_ids,
)
flat_action_mask = action_mask.view(action_mask.shape[0], -1).to(dtype=actions_gt.dtype)
target_velocity = (actions_gt - noise).view(actions_gt.shape[0], -1) * flat_action_mask
loss = self._compute_masked_loss(pred_velocity, target_velocity, action_mask, reduction)
loss_mean = loss.mean().item() if loss.ndim > 0 else loss.item()
return loss, {
"loss": loss_mean,
"active_action_dims": float(action_mask.sum(dim=(1, 2)).float().mean().item()),
}
@torch.no_grad()
def predict_action_chunk(self, batch: dict[str, Tensor], **kwargs) -> Tensor:
self.eval()
prompts = self._normalize_task_batch(batch)
image_batches, image_masks = self._collect_image_batches(batch)
states, _state_mask = self._prepare_state(batch)
fused_tokens = self._compute_fused_tokens(prompts, image_batches, image_masks)
states = states.to(dtype=self._inference_compute_dtype)
fused_tokens = fused_tokens.to(dtype=self._inference_compute_dtype)
embodiment_ids = self._get_embodiment_ids(batch, states.shape[0])
action_mask = self._prepare_inference_action_mask(states.shape[0])
with (
torch.autocast(device_type="cuda", dtype=torch.bfloat16)
if self.config.use_amp and str(self.config.device).startswith("cuda")
else nullcontext()
):
actions = self.model(
fused_tokens,
state=states,
action_mask=action_mask,
embodiment_ids=embodiment_ids,
)
actions = actions.view(states.shape[0], self.config.chunk_size, self.config.max_action_dim)
return actions[:, :, : self._env_action_dim]
@torch.no_grad()
def select_action(self, batch: dict[str, Tensor], **kwargs) -> Tensor:
self.eval()
if len(self._action_queue) == 0:
action_chunk = self.predict_action_chunk(batch)[:, : self.config.n_action_steps]
self._action_queue.extend(action_chunk.transpose(0, 1))
return self._action_queue.popleft()
+106
View File
@@ -0,0 +1,106 @@
# Copyright 2026 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
from __future__ import annotations
from typing import Any
import torch
from lerobot.policies.evo1.configuration_evo1 import Evo1Config
from lerobot.processor import (
AddBatchDimensionProcessorStep,
DeviceProcessorStep,
NormalizerProcessorStep,
PolicyAction,
PolicyProcessorPipeline,
RenameObservationsProcessorStep,
UnnormalizerProcessorStep,
)
from lerobot.processor.converters import (
batch_to_transition,
create_transition,
policy_action_to_transition,
transition_to_policy_action,
)
from lerobot.utils.constants import (
ACTION,
DONE,
INFO,
OBS_PREFIX,
POLICY_POSTPROCESSOR_DEFAULT_NAME,
POLICY_PREPROCESSOR_DEFAULT_NAME,
REWARD,
TRUNCATED,
)
def evo1_batch_to_transition(batch: dict[str, Any]):
transition = batch_to_transition(batch)
complementary_data = dict(transition.get("complementary_data") or {})
reserved = {ACTION, REWARD, DONE, TRUNCATED, INFO}
for key, value in batch.items():
if key in reserved or key.startswith(OBS_PREFIX):
continue
complementary_data.setdefault(key, value)
return create_transition(
observation=transition.get("observation"),
action=transition.get("action"),
reward=transition.get("reward", 0.0),
done=transition.get("done", False),
truncated=transition.get("truncated", False),
info=transition.get("info", {}),
complementary_data=complementary_data,
)
def make_evo1_pre_post_processors(
config: Evo1Config,
dataset_stats: dict[str, dict[str, torch.Tensor]] | None = None,
) -> tuple[
PolicyProcessorPipeline[dict[str, Any], dict[str, Any]],
PolicyProcessorPipeline[PolicyAction, PolicyAction],
]:
input_steps = [
RenameObservationsProcessorStep(rename_map={}),
AddBatchDimensionProcessorStep(),
NormalizerProcessorStep(
features={**config.input_features, **config.output_features},
norm_map=config.normalization_mapping,
stats=dataset_stats,
),
DeviceProcessorStep(device=config.device),
]
output_steps = [
UnnormalizerProcessorStep(
features=config.output_features,
norm_map=config.normalization_mapping,
stats=dataset_stats,
),
DeviceProcessorStep(device="cpu"),
]
return (
PolicyProcessorPipeline[dict[str, Any], dict[str, Any]](
steps=input_steps,
name=POLICY_PREPROCESSOR_DEFAULT_NAME,
to_transition=evo1_batch_to_transition,
),
PolicyProcessorPipeline[PolicyAction, PolicyAction](
steps=output_steps,
name=POLICY_POSTPROCESSOR_DEFAULT_NAME,
to_transition=policy_action_to_transition,
to_output=transition_to_policy_action,
),
)
+34 -32
View File
@@ -46,14 +46,14 @@ from lerobot.utils.feature_utils import dataset_to_policy_features
from .act.configuration_act import ACTConfig
from .diffusion.configuration_diffusion import DiffusionConfig
from .eo1.configuration_eo1 import EO1Config
from .evo1.configuration_evo1 import Evo1Config
from .groot.configuration_groot import GrootConfig
from .multi_task_dit.configuration_multi_task_dit import MultiTaskDiTConfig
from .pi0.configuration_pi0 import PI0Config
from .pi05.configuration_pi05 import PI05Config
from .pretrained import PreTrainedPolicy
from .sac.configuration_sac import SACConfig
from .sac.reward_model.configuration_classifier import RewardClassifierConfig
from .sarm.configuration_sarm import SARMConfig
from .smolvla.configuration_smolvla import SmolVLAConfig
from .tdmpc.configuration_tdmpc import TDMPCConfig
from .utils import validate_visual_features_consistency
@@ -89,7 +89,7 @@ def get_policy_class(name: str) -> type[PreTrainedPolicy]:
Args:
name: The name of the policy. Supported names are "tdmpc", "diffusion", "act",
"multi_task_dit", "vqbet", "pi0", "pi05", "sac", "reward_classifier", "smolvla", "wall_x".
"multi_task_dit", "vqbet", "pi0", "pi05", "sac", "smolvla", "wall_x", "eo1", "evo1".
Returns:
The policy class corresponding to the given name.
@@ -132,18 +132,10 @@ def get_policy_class(name: str) -> type[PreTrainedPolicy]:
from .sac.modeling_sac import SACPolicy
return SACPolicy
elif name == "reward_classifier":
from .sac.reward_model.modeling_classifier import Classifier
return Classifier
elif name == "smolvla":
from .smolvla.modeling_smolvla import SmolVLAPolicy
return SmolVLAPolicy
elif name == "sarm":
from .sarm.modeling_sarm import SARMRewardModel
return SARMRewardModel
elif name == "groot":
from .groot.modeling_groot import GrootPolicy
@@ -156,6 +148,14 @@ def get_policy_class(name: str) -> type[PreTrainedPolicy]:
from .wall_x.modeling_wall_x import WallXPolicy
return WallXPolicy
elif name == "eo1":
from .eo1.modeling_eo1 import EO1Policy
return EO1Policy
elif name == "evo1":
from .evo1.modeling_evo1 import EVO1Policy
return EVO1Policy
else:
try:
return _get_policy_cls_from_policy_name(name=name)
@@ -173,7 +173,7 @@ def make_policy_config(policy_type: str, **kwargs) -> PreTrainedConfig:
Args:
policy_type: The type of the policy. Supported types include "tdmpc",
"multi_task_dit", "diffusion", "act", "vqbet", "pi0", "pi05", "sac",
"smolvla", "reward_classifier", "wall_x".
"smolvla", "wall_x", "eo1", "evo1".
**kwargs: Keyword arguments to be passed to the configuration class constructor.
Returns:
@@ -200,14 +200,16 @@ def make_policy_config(policy_type: str, **kwargs) -> PreTrainedConfig:
return SACConfig(**kwargs)
elif policy_type == "smolvla":
return SmolVLAConfig(**kwargs)
elif policy_type == "reward_classifier":
return RewardClassifierConfig(**kwargs)
elif policy_type == "groot":
return GrootConfig(**kwargs)
elif policy_type == "xvla":
return XVLAConfig(**kwargs)
elif policy_type == "wall_x":
return WallXConfig(**kwargs)
elif policy_type == "eo1":
return EO1Config(**kwargs)
elif policy_type == "evo1":
return Evo1Config(**kwargs)
else:
try:
config_cls = PreTrainedConfig.get_choice_class(policy_type)
@@ -378,14 +380,6 @@ def make_pre_post_processors(
dataset_stats=kwargs.get("dataset_stats"),
)
elif isinstance(policy_cfg, RewardClassifierConfig):
from .sac.reward_model.processor_classifier import make_classifier_processor
processors = make_classifier_processor(
config=policy_cfg,
dataset_stats=kwargs.get("dataset_stats"),
)
elif isinstance(policy_cfg, SmolVLAConfig):
from .smolvla.processor_smolvla import make_smolvla_pre_post_processors
@@ -394,14 +388,6 @@ def make_pre_post_processors(
dataset_stats=kwargs.get("dataset_stats"),
)
elif isinstance(policy_cfg, SARMConfig):
from .sarm.processor_sarm import make_sarm_pre_post_processors
processors = make_sarm_pre_post_processors(
config=policy_cfg,
dataset_stats=kwargs.get("dataset_stats"),
dataset_meta=kwargs.get("dataset_meta"),
)
elif isinstance(policy_cfg, GrootConfig):
from .groot.processor_groot import make_groot_pre_post_processors
@@ -427,6 +413,20 @@ def make_pre_post_processors(
config=policy_cfg,
dataset_stats=kwargs.get("dataset_stats"),
)
elif isinstance(policy_cfg, EO1Config):
from .eo1.processor_eo1 import make_eo1_pre_post_processors
processors = make_eo1_pre_post_processors(
config=policy_cfg,
dataset_stats=kwargs.get("dataset_stats"),
)
elif isinstance(policy_cfg, Evo1Config):
from .evo1.processor_evo1 import make_evo1_pre_post_processors
processors = make_evo1_pre_post_processors(
config=policy_cfg,
dataset_stats=kwargs.get("dataset_stats"),
)
else:
try:
@@ -542,7 +542,7 @@ def make_policy(
logging.info("Loading policy's PEFT adapter.")
peft_pretrained_path = cfg.pretrained_path
peft_pretrained_path = str(cfg.pretrained_path)
peft_config = PeftConfig.from_pretrained(peft_pretrained_path)
kwargs["pretrained_name_or_path"] = peft_config.base_model_name_or_path
@@ -555,7 +555,9 @@ def make_policy(
)
policy = policy_cls.from_pretrained(**kwargs)
policy = PeftModel.from_pretrained(policy, peft_pretrained_path, config=peft_config)
policy = PeftModel.from_pretrained(
policy, peft_pretrained_path, config=peft_config, is_trainable=True
)
else:
# Make a fresh policy.
@@ -13,7 +13,7 @@
# See the License for the specific language governing permissions and
# limitations under the License.
from dataclasses import dataclass, field
from dataclasses import field
from typing import TYPE_CHECKING
import torch
@@ -109,7 +109,6 @@ class MultiEmbodimentActionEncoder(nn.Module):
return x
@dataclass
class FlowmatchingActionHeadConfig(PretrainedConfig):
"""NOTE: N1.5 uses XEmbFlowmatchingPolicyHeadConfig as action head"""
+5 -9
View File
@@ -13,7 +13,6 @@
# See the License for the specific language governing permissions and
# limitations under the License.
from dataclasses import dataclass, field
from pathlib import Path
from typing import TYPE_CHECKING
@@ -174,17 +173,14 @@ N_COLOR_CHANNELS = 3
# config
@dataclass
class GR00TN15Config(PretrainedConfig):
model_type = "gr00t_n1_5"
backbone_cfg: dict = field(init=False, metadata={"help": "Backbone configuration."})
action_head_cfg: dict = field(init=False, metadata={"help": "Action head configuration."})
action_horizon: int = field(init=False, metadata={"help": "Action horizon."})
action_dim: int = field(init=False, metadata={"help": "Action dimension."})
compute_dtype: str = field(default="float32", metadata={"help": "Compute dtype."})
backbone_cfg: dict
action_head_cfg: dict
action_horizon: int
action_dim: int
compute_dtype: str = "float32"
def __init__(self, **kwargs):
super().__init__(**kwargs)
@@ -688,8 +688,9 @@ class DiffusionObjective(nn.Module):
loss = F.mse_loss(predicted, target, reduction="none")
if self.do_mask_loss_for_padding and "action_is_pad" in batch:
valid_actions = ~batch["action_is_pad"]
loss = loss * valid_actions.unsqueeze(-1)
mask = ~batch["action_is_pad"].unsqueeze(-1)
num_valid = mask.sum() * loss.shape[-1]
return (loss * mask).sum() / num_valid.clamp_min(1)
return loss.mean()
@@ -752,8 +753,9 @@ class FlowMatchingObjective(nn.Module):
loss = F.mse_loss(predicted_velocity, target_velocity, reduction="none")
if self.do_mask_loss_for_padding and "action_is_pad" in batch:
valid_mask = ~batch["action_is_pad"]
loss = loss * valid_mask.unsqueeze(-1)
mask = ~batch["action_is_pad"].unsqueeze(-1)
num_valid = mask.sum() * loss.shape[-1]
return (loss * mask).sum() / num_valid.clamp_min(1)
return loss.mean()
+8 -14
View File
@@ -444,13 +444,13 @@ class PaliGemmaWithExpertModel(
if image.dtype != torch.float32:
image = image.to(torch.float32)
image_outputs = self.paligemma.model.get_image_features(image)
features = image_outputs.pooler_output * self.paligemma.config.text_config.hidden_size**0.5
features = image_outputs.pooler_output
if features.dtype != out_dtype:
features = features.to(out_dtype)
return features
def embed_language_tokens(self, tokens: torch.Tensor):
return self.paligemma.model.language_model.embed_tokens(tokens)
return self.paligemma.model.language_model.get_input_embeddings()(tokens)
def forward(
self,
@@ -666,8 +666,7 @@ class PI0Pytorch(nn.Module): # see openpi `PI0Pytorch`
# Process language tokens
def lang_embed_func(lang_tokens):
lang_emb = self.paligemma_with_expert.embed_language_tokens(lang_tokens)
lang_emb_dim = lang_emb.shape[-1]
return lang_emb * math.sqrt(lang_emb_dim)
return lang_emb
lang_emb = self._apply_checkpoint(lang_embed_func, lang_tokens)
embs.append(lang_emb)
@@ -748,16 +747,8 @@ class PI0Pytorch(nn.Module): # see openpi `PI0Pytorch`
return embs, pad_masks, att_masks, adarms_cond
def forward(
self, images, img_masks, lang_tokens, lang_masks, state, actions, noise=None, time=None
) -> Tensor:
def forward(self, images, img_masks, lang_tokens, lang_masks, state, actions, noise, time) -> Tensor:
"""Do a full training forward pass and compute the loss."""
if noise is None:
noise = self.sample_noise(actions.shape, actions.device)
if time is None:
time = self.sample_time(actions.shape[0], actions.device)
time_expanded = time[:, None, None]
x_t = time_expanded * noise + (1 - time_expanded) * actions
u_t = noise - actions
@@ -1292,8 +1283,11 @@ class PI0Policy(PreTrainedPolicy):
state = self.prepare_state(batch)
actions = self.prepare_action(batch)
noise = self.model.sample_noise(actions.shape, actions.device)
time = self.model.sample_time(actions.shape[0], actions.device)
# Compute loss
losses = self.model.forward(images, img_masks, lang_tokens, lang_masks, state, actions)
losses = self.model.forward(images, img_masks, lang_tokens, lang_masks, state, actions, noise, time)
# Truncate losses to actual action dimensions
original_action_dim = self.config.output_features[ACTION].shape[0]
+5 -8
View File
@@ -728,14 +728,8 @@ class PI05Pytorch(nn.Module): # see openpi `PI0Pytorch`
return embs, pad_masks, att_masks, adarms_cond
def forward(self, images, img_masks, tokens, masks, actions, noise=None, time=None) -> Tensor:
def forward(self, images, img_masks, tokens, masks, actions, noise, time) -> Tensor:
"""Do a full training forward pass and compute the loss."""
if noise is None:
noise = self.sample_noise(actions.shape, actions.device)
if time is None:
time = self.sample_time(actions.shape[0], actions.device)
time_expanded = time[:, None, None]
x_t = time_expanded * noise + (1 - time_expanded) * actions
u_t = noise - actions
@@ -1262,8 +1256,11 @@ class PI05Policy(PreTrainedPolicy):
actions = self.prepare_action(batch)
noise = self.model.sample_noise(actions.shape, actions.device)
time = self.model.sample_time(actions.shape[0], actions.device)
# Compute loss (no separate state needed for PI05)
losses = self.model.forward(images, img_masks, tokens, masks, actions)
losses = self.model.forward(images, img_masks, tokens, masks, actions, noise, time)
# Truncate losses to actual action dimensions
original_action_dim = self.config.output_features[ACTION].shape[0]
@@ -16,7 +16,6 @@
import builtins
import logging
import math
from collections import deque
from pathlib import Path
from typing import TYPE_CHECKING, Literal, TypedDict, Unpack
@@ -227,6 +226,7 @@ class PI0FastPaliGemma(nn.Module):
# forward(..., adarms_cond=...) is supported (same as pi0/pi05).
if use_adarms[0]:
text_config = self.paligemma.config.text_config
del self.paligemma.model.language_model
self.paligemma.model.language_model = PiGemmaModel(text_config)
self.to_bfloat16_for_selected_params(precision)
@@ -260,13 +260,15 @@ class PI0FastPaliGemma(nn.Module):
if image.dtype != torch.float32:
image = image.to(torch.float32)
image_outputs = self.paligemma.model.get_image_features(image)
features = image_outputs.pooler_output * self.paligemma.config.text_config.hidden_size**0.5
features = image_outputs.pooler_output
norm = 2048**0.5
features = features / norm * norm
if features.dtype != out_dtype:
features = features.to(out_dtype)
return features
def embed_language_tokens(self, tokens: torch.Tensor):
return self.paligemma.model.language_model.embed_tokens(tokens)
return self.paligemma.model.language_model.get_input_embeddings()(tokens)
def forward(
self,
@@ -416,8 +418,7 @@ class PI0FastPytorch(nn.Module): # see openpi `PI0Pytorch`
# Process language instruction tokens
def lang_embed_func(tokens):
lang_emb = self.paligemma_with_expert.embed_language_tokens(tokens)
lang_emb_dim = lang_emb.shape[-1]
return lang_emb * math.sqrt(lang_emb_dim)
return lang_emb
lang_emb = self._apply_checkpoint(lang_embed_func, tokens)
embs.append(lang_emb)
@@ -431,8 +432,7 @@ class PI0FastPytorch(nn.Module): # see openpi `PI0Pytorch`
def fast_action_embed_func(fast_action_tokens):
fast_emb = self.paligemma_with_expert.embed_language_tokens(fast_action_tokens)
fast_emb_dim = fast_emb.shape[-1]
return fast_emb * math.sqrt(fast_emb_dim)
return fast_emb
fast_action_emb = self._apply_checkpoint(fast_action_embed_func, fast_action_tokens)
embs.append(fast_action_emb)
@@ -665,7 +665,6 @@ class PI0FastPytorch(nn.Module): # see openpi `PI0Pytorch`
if t < max_decoding_steps - 1:
# embed the newly generated token
next_token_emb = self.paligemma_with_expert.embed_language_tokens(next_token)
next_token_emb = next_token_emb * math.sqrt(next_token_emb.shape[-1])
if prefix_embs.dtype == torch.bfloat16:
next_token_emb = next_token_emb.to(dtype=torch.bfloat16)
@@ -770,7 +769,6 @@ class PI0FastPytorch(nn.Module): # see openpi `PI0Pytorch`
# Embed the single previous token
# We use embed_language_tokens directly to avoid overhead of full prefix embedding
next_token_emb = self.paligemma_with_expert.embed_language_tokens(next_token)
next_token_emb = next_token_emb * math.sqrt(next_token_emb.shape[-1])
if prefix_embs.dtype == torch.bfloat16:
next_token_emb = next_token_emb.to(dtype=torch.bfloat16)
+6
View File
@@ -197,6 +197,9 @@ class PiGemmaModel(GemmaModel): # type: ignore[misc]
def __init__(self, config: GemmaConfig, **kwargs):
super().__init__(config, **kwargs)
# Free parent-allocated layers/norm before replacing to avoid ~2x peak memory.
del self.layers
del self.norm
# if not getattr(config, "use_adarms", False):
# return
cond_dim = getattr(config, "adarms_cond_dim", None)
@@ -328,6 +331,7 @@ class PiGemmaForCausalLM(GemmaForCausalLM): # type: ignore[misc]
def __init__(self, config: GemmaConfig, **kwargs):
super().__init__(config, **kwargs)
del self.model
self.model = PiGemmaModel(config)
@@ -336,6 +340,7 @@ class PaliGemmaModelWithPiGemma(PaliGemmaModel):
def __init__(self, config):
super().__init__(config)
del self.language_model
self.language_model = PiGemmaModel(config.text_config)
@@ -344,6 +349,7 @@ class PaliGemmaForConditionalGenerationWithPiGemma(PaliGemmaForConditionalGenera
def __init__(self, config):
super().__init__(config)
del self.model
self.model = PaliGemmaModelWithPiGemma(config)
# Make modules available through conditional class for BC
+2
View File
@@ -19,6 +19,7 @@ from .action_queue import ActionQueue
from .configuration_rtc import RTCConfig
from .latency_tracker import LatencyTracker
from .modeling_rtc import RTCProcessor
from .relative import reanchor_relative_rtc_prefix
__all__ = [
"ActionInterpolator",
@@ -26,4 +27,5 @@ __all__ = [
"LatencyTracker",
"RTCConfig",
"RTCProcessor",
"reanchor_relative_rtc_prefix",
]
+58
View File
@@ -0,0 +1,58 @@
#!/usr/bin/env python
# Copyright 2025 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
"""Relative-action helpers for Real-Time Chunking (RTC)."""
from __future__ import annotations
import torch
from lerobot.processor import (
NormalizerProcessorStep,
RelativeActionsProcessorStep,
TransitionKey,
create_transition,
to_relative_actions,
)
def reanchor_relative_rtc_prefix(
prev_actions_absolute: torch.Tensor,
current_state: torch.Tensor,
relative_step: RelativeActionsProcessorStep,
normalizer_step: NormalizerProcessorStep | None,
policy_device: torch.device | str,
) -> torch.Tensor:
"""Convert absolute leftover actions into model-space for relative-action RTC policies.
When using relative actions, the RTC prefix (previous chunk's unexecuted tail)
is stored in absolute coordinates. Before feeding it back to the policy, this
helper re-expresses those actions relative to the robot's current joint state
and optionally normalizes them so the policy receives correctly scaled inputs.
"""
state = current_state.detach().cpu()
if state.dim() == 1:
state = state.unsqueeze(0)
action_cpu = prev_actions_absolute.detach().cpu()
mask = relative_step._build_mask(action_cpu.shape[-1])
relative_actions = to_relative_actions(action_cpu, state, mask)
transition = create_transition(action=relative_actions)
if normalizer_step is not None:
transition = normalizer_step(transition)
return transition[TransitionKey.ACTION].to(policy_device)
-1
View File
@@ -1 +0,0 @@
../../../../docs/source/policy_sarm_README.md
@@ -394,13 +394,21 @@ class SmolVLAPolicy(PreTrainedPolicy):
loss_dict["losses_after_rm_padding"] = losses.clone().mean().item()
if reduction == "none":
# Return per-sample losses (B,) by averaging over time and action dims
per_sample_loss = losses.mean(dim=(1, 2))
# Return per-sample losses (B,) by averaging over valid (time, action) entries
if actions_is_pad is None:
per_sample_loss = losses.mean(dim=(1, 2))
else:
num_valid = ((~actions_is_pad).sum(dim=1) * losses.shape[-1]).clamp_min(1)
per_sample_loss = losses.sum(dim=(1, 2)) / num_valid
loss_dict["loss"] = per_sample_loss.mean().item()
return per_sample_loss, loss_dict
else:
# Default: return scalar mean loss
loss = losses.mean()
# Default: return scalar mean loss over valid (time, action) entries
if actions_is_pad is None:
loss = losses.mean()
else:
num_valid = ((~actions_is_pad).sum() * losses.shape[-1]).clamp_min(1)
loss = losses.sum() / num_valid
loss_dict["loss"] = loss.item()
return loss, loss_dict
@@ -97,8 +97,8 @@ class VQBeTConfig(PreTrainedConfig):
vision_backbone: str = "resnet18"
crop_shape: tuple[int, int] | None = (84, 84)
crop_is_random: bool = True
pretrained_backbone_weights: str | None = None
use_group_norm: bool = True
pretrained_backbone_weights: str | None = "ResNet18_Weights.IMAGENET1K_V1"
use_group_norm: bool = False
spatial_softmax_num_keypoints: int = 32
# VQ-VAE
n_vqvae_training_steps: int = 20000
@@ -22,7 +22,7 @@ from transformers.utils import (
add_start_docstrings,
add_start_docstrings_to_model_forward,
is_flash_attn_2_available,
is_flash_attn_greater_or_equal_2_10,
is_flash_attn_greater_or_equal,
is_torchdynamo_compiling,
logging,
replace_return_docstrings,
@@ -890,7 +890,7 @@ class Qwen2_5_VLFlashAttention2(Qwen2_5_VLAttention):
# TODO: Should be removed once Flash Attention for RoCm is bumped to 2.1.
# flash_attn<2.1 generates top-left aligned causal mask, while what is needed here is bottom-right alignment, that was made default for flash_attn>=2.1. This attribute is used to handle this difference. Reference: https://github.com/Dao-AILab/flash-attention/releases/tag/v2.1.0.
# Beware that with flash_attn<2.1, using q_seqlen != k_seqlen (except for the case q_seqlen == 1) produces a wrong mask (top-left).
self._flash_attn_uses_top_left_mask = not is_flash_attn_greater_or_equal_2_10()
self._flash_attn_uses_top_left_mask = not is_flash_attn_greater_or_equal("2.1.0")
def forward(
self,
@@ -939,7 +939,7 @@ class Qwen2_5_VLFlashAttention2(Qwen2_5_VLAttention):
input_dtype = query_states.dtype
if input_dtype == torch.float32:
if torch.is_autocast_enabled():
target_dtype = torch.get_autocast_gpu_dtype()
target_dtype = torch.get_autocast_dtype(query_states.device.type)
# Handle the case where the model is quantized
elif hasattr(self.config, "_pre_quantization_dtype"):
target_dtype = self.config._pre_quantization_dtype
@@ -45,7 +45,7 @@ from transformers.utils import (
add_start_docstrings,
add_start_docstrings_to_model_forward,
is_flash_attn_2_available,
is_flash_attn_greater_or_equal_2_10,
is_flash_attn_greater_or_equal,
logging,
replace_return_docstrings,
)
@@ -909,7 +909,7 @@ class Florence2FlashAttention2(Florence2Attention):
# TODO: Should be removed once Flash Attention for RoCm is bumped to 2.1.
# flash_attn<2.1 generates top-left aligned causal mask, while what is needed here is bottom-right alignment, that was made default for flash_attn>=2.1. This attribute is used to handle this difference. Reference: https://github.com/Dao-AILab/flash-attention/releases/tag/v2.1.0.
# Beware that with flash_attn<2.1, using q_seqlen != k_seqlen (except for the case q_seqlen == 1) produces a wrong mask (top-left).
self._flash_attn_uses_top_left_mask = not is_flash_attn_greater_or_equal_2_10()
self._flash_attn_uses_top_left_mask = not is_flash_attn_greater_or_equal("2.1.0")
def _reshape(self, tensor: torch.Tensor, seq_len: int, bsz: int):
return tensor.view(bsz, seq_len, self.num_heads, self.head_dim)
@@ -985,7 +985,7 @@ class Florence2FlashAttention2(Florence2Attention):
input_dtype = query_states.dtype
if input_dtype == torch.float32:
if torch.is_autocast_enabled():
target_dtype = torch.get_autocast_gpu_dtype()
target_dtype = torch.get_autocast_dtype(query_states.device.type)
# Handle the case where the model is quantized
elif hasattr(self.config, "_pre_quantization_dtype"):
target_dtype = self.config._pre_quantization_dtype
+2 -1
View File
@@ -40,7 +40,7 @@ from .converters import (
)
from .delta_action_processor import MapDeltaActionToRobotActionStep, MapTensorToDeltaActionDictStep
from .device_processor import DeviceProcessorStep
from .env_processor import IsaaclabArenaProcessorStep, LiberoProcessorStep
from .env_processor import IsaaclabArenaProcessorStep, LiberoActionProcessorStep, LiberoProcessorStep
from .factory import (
make_default_processors,
make_default_robot_action_processor,
@@ -149,6 +149,7 @@ __all__ = [
"RewardProcessorStep",
"DataProcessorPipeline",
"IsaaclabArenaProcessorStep",
"LiberoActionProcessorStep",
"LiberoProcessorStep",
"TimeLimitProcessorStep",
"AddBatchDimensionProcessorStep",
+43 -3
View File
@@ -18,9 +18,9 @@ from dataclasses import dataclass
import torch
from lerobot.configs import FeatureType, PipelineFeatureType, PolicyFeature
from lerobot.utils.constants import OBS_IMAGES, OBS_PREFIX, OBS_STATE, OBS_STR
from lerobot.utils.constants import ACTION, OBS_IMAGES, OBS_PREFIX, OBS_STATE, OBS_STR
from .pipeline import ObservationProcessorStep, ProcessorStepRegistry
from .pipeline import ActionProcessorStep, ObservationProcessorStep, ProcessorStepRegistry
@dataclass
@@ -46,6 +46,8 @@ class LiberoProcessorStep(ObservationProcessorStep):
- This accounts for the HuggingFaceVLA/libero camera orientation convention.
"""
max_state_dim: int | None = None
def _process_observation(self, observation):
"""
Processes both image and robot_state observations from LIBERO.
@@ -78,6 +80,15 @@ class LiberoProcessorStep(ObservationProcessorStep):
state = state.float()
if state.dim() == 1:
state = state.unsqueeze(0)
if self.max_state_dim is not None:
if state.shape[-1] > self.max_state_dim:
raise ValueError(
f"LIBERO state has {state.shape[-1]} dims, which is larger than "
f"configured max_state_dim={self.max_state_dim}."
)
if state.shape[-1] < self.max_state_dim:
pad_width = self.max_state_dim - state.shape[-1]
state = torch.nn.functional.pad(state, (0, pad_width))
processed_obs[OBS_STATE] = state
return processed_obs
@@ -101,7 +112,7 @@ class LiberoProcessorStep(ObservationProcessorStep):
# add our new flattened state
state_feats[OBS_STATE] = PolicyFeature(
type=FeatureType.STATE,
shape=(8,), # [eef_pos(3), axis_angle(3), gripper(2)]
shape=(self.max_state_dim or 8,), # [eef_pos(3), axis_angle(3), gripper(2)] plus padding
)
new_features[FeatureType.STATE] = state_feats
@@ -111,6 +122,9 @@ class LiberoProcessorStep(ObservationProcessorStep):
def observation(self, observation):
return self._process_observation(observation)
def get_config(self) -> dict:
return {"max_state_dim": self.max_state_dim}
def _quat2axisangle(self, quat: torch.Tensor) -> torch.Tensor:
"""
Convert batched quaternions to axis-angle format.
@@ -153,6 +167,32 @@ class LiberoProcessorStep(ObservationProcessorStep):
return result
@dataclass
@ProcessorStepRegistry.register(name="libero_action_processor")
class LiberoActionProcessorStep(ActionProcessorStep):
"""Slices padded policy actions back to the executable LIBERO action space."""
action_dim: int = 7
def action(self, action):
if action.shape[-1] < self.action_dim:
raise ValueError(
f"LIBERO action has {action.shape[-1]} dims, which is smaller than action_dim={self.action_dim}."
)
return action[..., : self.action_dim]
def transform_features(
self, features: dict[PipelineFeatureType, dict[str, PolicyFeature]]
) -> dict[PipelineFeatureType, dict[str, PolicyFeature]]:
new_features = {ft: feats.copy() for ft, feats in features.items()}
action_feats = new_features.setdefault(FeatureType.ACTION, {})
action_feats[ACTION] = PolicyFeature(type=FeatureType.ACTION, shape=(self.action_dim,))
return new_features
def get_config(self) -> dict:
return {"action_dim": self.action_dim}
@dataclass
@ProcessorStepRegistry.register(name="isaaclab_arena_processor")
class IsaaclabArenaProcessorStep(ObservationProcessorStep):
+1 -1
View File
@@ -557,7 +557,7 @@ class RewardClassifierProcessorStep(ProcessorStep):
def __post_init__(self):
"""Initializes the reward classifier model after the dataclass is created."""
if self.pretrained_path is not None:
from lerobot.policies.sac.reward_model.modeling_classifier import Classifier
from lerobot.rewards.classifier.modeling_classifier import Classifier
self.reward_classifier = Classifier.from_pretrained(self.pretrained_path)
self.reward_classifier.to(self.device)
@@ -142,6 +142,10 @@ class RelativeActionsProcessorStep(ProcessorStep):
new_transition[TransitionKey.ACTION] = to_relative_actions(action, state, mask)
return new_transition
def get_cached_state(self) -> torch.Tensor | None:
"""Return the cached ``observation.state`` used as the reference point for relative/absolute action conversions."""
return self._last_state
def get_config(self) -> dict[str, Any]:
return {
"enabled": self.enabled,
@@ -182,7 +186,8 @@ class AbsoluteActionsProcessorStep(ProcessorStep):
"but relative_step is None. Ensure relative_step is set when constructing the postprocessor."
)
if self.relative_step._last_state is None:
cached_state = self.relative_step.get_cached_state()
if cached_state is None:
raise RuntimeError(
"AbsoluteActionsProcessorStep requires state from RelativeActionsProcessorStep "
"but no state has been cached. Ensure the preprocessor runs before the postprocessor."
@@ -194,9 +199,7 @@ class AbsoluteActionsProcessorStep(ProcessorStep):
return new_transition
mask = self.relative_step._build_mask(action.shape[-1])
new_transition[TransitionKey.ACTION] = to_absolute_actions(
action, self.relative_step._last_state, mask
)
new_transition[TransitionKey.ACTION] = to_absolute_actions(action, cached_state, mask)
return new_transition
def get_config(self) -> dict[str, Any]:
+36
View File
@@ -0,0 +1,36 @@
# Copyright 2026 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
from .classifier.configuration_classifier import RewardClassifierConfig as RewardClassifierConfig
from .factory import (
get_reward_model_class as get_reward_model_class,
make_reward_model as make_reward_model,
make_reward_model_config as make_reward_model_config,
make_reward_pre_post_processors as make_reward_pre_post_processors,
)
from .pretrained import PreTrainedRewardModel as PreTrainedRewardModel
from .sarm.configuration_sarm import SARMConfig as SARMConfig
__all__ = [
# Configuration classes
"RewardClassifierConfig",
"SARMConfig",
# Base class
"PreTrainedRewardModel",
# Factory functions
"get_reward_model_class",
"make_reward_model",
"make_reward_model_config",
"make_reward_pre_post_processors",
]
@@ -1,5 +1,3 @@
# !/usr/bin/env python
# Copyright 2025 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
@@ -15,14 +13,15 @@
# limitations under the License.
from dataclasses import dataclass, field
from lerobot.configs import NormalizationMode, PreTrainedConfig
from lerobot.configs import NormalizationMode
from lerobot.configs.rewards import RewardModelConfig
from lerobot.optim import AdamWConfig, LRSchedulerConfig, OptimizerConfig
from lerobot.utils.constants import OBS_IMAGE
@PreTrainedConfig.register_subclass(name="reward_classifier")
@RewardModelConfig.register_subclass(name="reward_classifier")
@dataclass
class RewardClassifierConfig(PreTrainedConfig):
class RewardClassifierConfig(RewardModelConfig):
"""Configuration for the Reward Classifier model."""
name: str = "reward_classifier"
@@ -1,5 +1,3 @@
# !/usr/bin/env python
# Copyright 2025 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
@@ -19,11 +17,10 @@ import logging
import torch
from torch import Tensor, nn
from lerobot.rewards.classifier.configuration_classifier import RewardClassifierConfig
from lerobot.rewards.pretrained import PreTrainedRewardModel
from lerobot.utils.constants import OBS_IMAGE, REWARD
from ...pretrained import PreTrainedPolicy
from .configuration_classifier import RewardClassifierConfig
class ClassifierOutput:
"""Wrapper for classifier outputs with additional metadata."""
@@ -99,7 +96,7 @@ class SpatialLearnedEmbeddings(nn.Module):
return output
class Classifier(PreTrainedPolicy):
class Classifier(PreTrainedRewardModel):
"""Image classifier built on top of a pre-trained encoder."""
name = "reward_classifier"
@@ -235,6 +232,16 @@ class Classifier(PreTrainedPolicy):
return ClassifierOutput(logits=logits, probabilities=probabilities, hidden_states=encoder_outputs)
def compute_reward(self, batch: dict[str, Tensor]) -> Tensor:
"""Returns 1.0 for success, 0.0 for failure based on image observations."""
images = [batch[key] for key in self.config.input_features if key.startswith(OBS_IMAGE)]
output = self.predict(images)
if self.config.num_classes == 2:
return (output.probabilities > 0.5).float()
else:
return torch.argmax(output.probabilities, dim=1).float()
def forward(self, batch: dict[str, Tensor]) -> tuple[Tensor, dict[str, Tensor]]:
"""Standard forward pass for training compatible with train.py."""
# Extract images and labels
@@ -269,10 +276,6 @@ class Classifier(PreTrainedPolicy):
def predict_reward(self, batch, threshold=0.5):
"""Eval method. Returns predicted reward with the decision threshold as argument."""
# Check for both OBS_IMAGE and OBS_IMAGES prefixes
batch = self.normalize_inputs(batch)
batch = self.normalize_targets(batch)
# Extract images from batch dict
images = [batch[key] for key in self.config.input_features if key.startswith(OBS_IMAGE)]
@@ -282,28 +285,3 @@ class Classifier(PreTrainedPolicy):
return (probs > threshold).float()
else:
return torch.argmax(self.predict(images).probabilities, dim=1)
def get_optim_params(self):
"""Return optimizer parameters for the policy."""
return self.parameters()
def select_action(self, batch: dict[str, Tensor]) -> Tensor:
"""
This method is required by PreTrainedPolicy but not used for reward classifiers.
The reward classifier is not an actor and does not select actions.
"""
raise NotImplementedError("Reward classifiers do not select actions")
def predict_action_chunk(self, batch: dict[str, Tensor]) -> Tensor:
"""
This method is required by PreTrainedPolicy but not used for reward classifiers.
The reward classifier is not an actor and does not produce action chunks.
"""
raise NotImplementedError("Reward classifiers do not predict action chunks")
def reset(self):
"""
This method is required by PreTrainedPolicy but not used for reward classifiers.
The reward classifier is not an actor and does not select actions.
"""
pass
@@ -1,5 +1,3 @@
# !/usr/bin/env python
# Copyright 2025 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
@@ -27,8 +25,7 @@ from lerobot.processor import (
policy_action_to_transition,
transition_to_policy_action,
)
from .configuration_classifier import RewardClassifierConfig
from lerobot.rewards.classifier.configuration_classifier import RewardClassifierConfig
def make_classifier_processor(
@@ -52,8 +49,6 @@ def make_classifier_processor(
Args:
config: The configuration object for the RewardClassifier.
dataset_stats: A dictionary of statistics for normalization.
preprocessor_kwargs: Additional arguments for the pre-processor pipeline.
postprocessor_kwargs: Additional arguments for the post-processor pipeline.
Returns:
A tuple containing the configured pre-processor and post-processor pipelines.
+238
View File
@@ -0,0 +1,238 @@
#!/usr/bin/env python
# Copyright 2026 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
import importlib
import logging
from typing import Any
import torch
from lerobot.configs.rewards import RewardModelConfig
from lerobot.processor import PolicyAction, PolicyProcessorPipeline
from lerobot.rewards.classifier.configuration_classifier import RewardClassifierConfig
from lerobot.rewards.pretrained import PreTrainedRewardModel
from lerobot.rewards.sarm.configuration_sarm import SARMConfig
def get_reward_model_class(name: str) -> type[PreTrainedRewardModel]:
"""
Retrieves a reward model class by its registered name.
This function uses dynamic imports to avoid loading all reward model classes into
memory at once, improving startup time and reducing dependencies.
Args:
name: The name of the reward model. Supported names are "reward_classifier",
"sarm".
Returns:
The reward model class corresponding to the given name.
Raises:
ValueError: If the reward model name is not recognized.
"""
if name == "reward_classifier":
from lerobot.rewards.classifier.modeling_classifier import Classifier
return Classifier
elif name == "sarm":
from lerobot.rewards.sarm.modeling_sarm import SARMRewardModel
return SARMRewardModel
else:
try:
return _get_reward_model_cls_from_name(name=name)
except Exception as e:
raise ValueError(f"Reward model type '{name}' is not available.") from e
def make_reward_model_config(reward_type: str, **kwargs) -> RewardModelConfig:
"""
Instantiates a reward model configuration object based on the reward type.
This factory function simplifies the creation of reward model configuration objects
by mapping a string identifier to the corresponding config class.
Args:
reward_type: The type of the reward model. Supported types include
"reward_classifier", "sarm".
**kwargs: Keyword arguments to be passed to the configuration class constructor.
Returns:
An instance of a `RewardModelConfig` subclass.
Raises:
ValueError: If the `reward_type` is not recognized.
"""
if reward_type == "reward_classifier":
return RewardClassifierConfig(**kwargs)
elif reward_type == "sarm":
return SARMConfig(**kwargs)
else:
try:
config_cls = RewardModelConfig.get_choice_class(reward_type)
return config_cls(**kwargs)
except Exception as e:
raise ValueError(f"Reward model type '{reward_type}' is not available.") from e
def make_reward_model(cfg: RewardModelConfig, **kwargs) -> PreTrainedRewardModel:
"""
Instantiate a reward model from its configuration.
Args:
cfg: The configuration for the reward model to be created. If
`cfg.pretrained_path` is set, the model will be loaded with weights
from that path.
**kwargs: Additional keyword arguments forwarded to the model constructor
(e.g., ``dataset_stats``, ``dataset_meta``).
Returns:
An instantiated and device-placed reward model.
"""
reward_cls = get_reward_model_class(cfg.type)
kwargs["config"] = cfg
if cfg.pretrained_path:
kwargs["pretrained_name_or_path"] = cfg.pretrained_path
reward_model = reward_cls.from_pretrained(**kwargs)
else:
reward_model = reward_cls(**kwargs)
reward_model.to(cfg.device)
assert isinstance(reward_model, torch.nn.Module)
return reward_model
def make_reward_pre_post_processors(
reward_cfg: RewardModelConfig,
**kwargs,
) -> tuple[
PolicyProcessorPipeline[dict[str, Any], dict[str, Any]],
PolicyProcessorPipeline[PolicyAction, PolicyAction],
]:
"""
Create pre- and post-processor pipelines for a given reward model.
Each reward model type has a dedicated factory function for its processors.
Args:
reward_cfg: The configuration of the reward model for which to create processors.
**kwargs: Additional keyword arguments passed to the processor factory
(e.g., ``dataset_stats``, ``dataset_meta``).
Returns:
A tuple containing the input (pre-processor) and output (post-processor) pipelines.
Raises:
ValueError: If a processor factory is not implemented for the given reward
model configuration type.
"""
# Create a new processor based on reward model type
if isinstance(reward_cfg, RewardClassifierConfig):
from lerobot.rewards.classifier.processor_classifier import make_classifier_processor
return make_classifier_processor(
config=reward_cfg,
dataset_stats=kwargs.get("dataset_stats"),
)
elif isinstance(reward_cfg, SARMConfig):
from lerobot.rewards.sarm.processor_sarm import make_sarm_pre_post_processors
return make_sarm_pre_post_processors(
config=reward_cfg,
dataset_stats=kwargs.get("dataset_stats"),
dataset_meta=kwargs.get("dataset_meta"),
)
else:
try:
processors = _make_processors_from_reward_model_config(
config=reward_cfg,
dataset_stats=kwargs.get("dataset_stats"),
)
except Exception as e:
raise ValueError(
f"Processor for reward model type '{reward_cfg.type}' is not implemented."
) from e
return processors
def _get_reward_model_cls_from_name(name: str) -> type[PreTrainedRewardModel]:
"""Get reward model class from its registered name using dynamic imports.
This is used as a helper function to import reward models from 3rd party lerobot
plugins.
Args:
name: The name of the reward model.
Returns:
The reward model class corresponding to the given name.
"""
if name not in RewardModelConfig.get_known_choices():
raise ValueError(
f"Unknown reward model name '{name}'. "
f"Available reward models: {RewardModelConfig.get_known_choices()}"
)
config_cls = RewardModelConfig.get_choice_class(name)
config_cls_name = config_cls.__name__
model_name = config_cls_name.removesuffix("Config")
if model_name == config_cls_name:
raise ValueError(
f"The config class name '{config_cls_name}' does not follow the expected naming convention. "
f"Make sure it ends with 'Config'!"
)
cls_name = model_name + "RewardModel"
module_path = config_cls.__module__.replace("configuration_", "modeling_")
module = importlib.import_module(module_path)
reward_cls = getattr(module, cls_name)
return reward_cls
def _make_processors_from_reward_model_config(
config: RewardModelConfig,
dataset_stats: dict[str, dict[str, torch.Tensor]] | None = None,
) -> tuple[Any, Any]:
"""Create pre- and post-processors from a reward model configuration using dynamic imports.
This is used as a helper function to import processor factories from 3rd party
lerobot reward model plugins.
Args:
config: The reward model configuration object.
dataset_stats: Dataset statistics for normalization.
Returns:
A tuple containing the input (pre-processor) and output (post-processor) pipelines.
"""
reward_type = config.type
function_name = f"make_{reward_type}_pre_post_processors"
module_path = config.__class__.__module__.replace("configuration_", "processor_")
logging.debug(
f"Instantiating reward pre/post processors using function '{function_name}' "
f"from module '{module_path}'"
)
module = importlib.import_module(module_path)
function = getattr(module, function_name)
return function(config, dataset_stats=dataset_stats)
+244
View File
@@ -0,0 +1,244 @@
# Copyright 2026 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
import abc
import builtins
import logging
import os
from importlib.resources import files
from pathlib import Path
from tempfile import TemporaryDirectory
from typing import TYPE_CHECKING, Any, TypeVar
import packaging
import safetensors
from huggingface_hub import HfApi, ModelCard, ModelCardData, hf_hub_download
from huggingface_hub.constants import SAFETENSORS_SINGLE_FILE
from huggingface_hub.errors import HfHubHTTPError
from safetensors.torch import load_model as load_model_as_safetensor, save_model as save_model_as_safetensor
from torch import Tensor, nn
from lerobot.configs.rewards import RewardModelConfig
from lerobot.utils.hub import HubMixin
if TYPE_CHECKING:
from lerobot.configs.train import TrainPipelineConfig
T = TypeVar("T", bound="PreTrainedRewardModel")
class PreTrainedRewardModel(nn.Module, HubMixin, abc.ABC):
"""Base class for reward models."""
config_class: None
name: None
def __init__(self, config: RewardModelConfig, *inputs, **kwargs):
super().__init__()
if not isinstance(config, RewardModelConfig):
raise ValueError(
f"Parameter config in `{self.__class__.__name__}(config)` should be an instance of class "
"`RewardModelConfig`. To create a model from a pretrained model use "
f"`model = {self.__class__.__name__}.from_pretrained(PRETRAINED_MODEL_NAME)`"
)
self.config = config
def __init_subclass__(cls, **kwargs):
super().__init_subclass__(**kwargs)
if not getattr(cls, "config_class", None):
raise TypeError(f"Class {cls.__name__} must define 'config_class'")
if not getattr(cls, "name", None):
raise TypeError(f"Class {cls.__name__} must define 'name'")
def _save_pretrained(self, save_directory: Path) -> None:
self.config._save_pretrained(save_directory)
model_to_save = self.module if hasattr(self, "module") else self
save_model_as_safetensor(model_to_save, str(save_directory / SAFETENSORS_SINGLE_FILE))
@classmethod
def from_pretrained(
cls: builtins.type[T],
pretrained_name_or_path: str | Path,
*,
config: RewardModelConfig | None = None,
force_download: bool = False,
resume_download: bool | None = None,
proxies: dict | None = None,
token: str | bool | None = None,
cache_dir: str | Path | None = None,
local_files_only: bool = False,
revision: str | None = None,
strict: bool = False,
**kwargs,
) -> T:
"""
The reward model is set in evaluation mode by default using `reward.eval()` (dropout modules are
deactivated). To train it, you should first set it back in training mode with `reward.train()`.
"""
if config is None:
config = RewardModelConfig.from_pretrained(
pretrained_name_or_path=pretrained_name_or_path,
force_download=force_download,
resume_download=resume_download,
proxies=proxies,
token=token,
cache_dir=cache_dir,
local_files_only=local_files_only,
revision=revision,
**kwargs,
)
model_id = str(pretrained_name_or_path)
instance = cls(config, **kwargs)
if os.path.isdir(model_id):
print("Loading weights from local directory")
model_file = os.path.join(model_id, SAFETENSORS_SINGLE_FILE)
reward = cls._load_as_safetensor(instance, model_file, config.device or "cpu", strict)
else:
try:
model_file = hf_hub_download(
repo_id=model_id,
filename=SAFETENSORS_SINGLE_FILE,
revision=revision,
cache_dir=cache_dir,
force_download=force_download,
proxies=proxies,
resume_download=resume_download,
token=token,
local_files_only=local_files_only,
)
reward = cls._load_as_safetensor(instance, model_file, config.device or "cpu", strict)
except HfHubHTTPError as e:
raise FileNotFoundError(
f"{SAFETENSORS_SINGLE_FILE} not found on the HuggingFace Hub in {model_id}"
) from e
reward.to(config.device)
reward.eval()
return reward
@classmethod
def _load_as_safetensor(cls, model: T, model_file: str, map_location: str, strict: bool) -> T:
# Create base kwargs
kwargs = {"strict": strict}
# Add device parameter for newer versions that support it
if packaging.version.parse(safetensors.__version__) >= packaging.version.parse("0.4.3"):
kwargs["device"] = map_location
# Load the model with appropriate kwargs
missing_keys, unexpected_keys = load_model_as_safetensor(model, model_file, **kwargs)
if missing_keys:
logging.warning(f"Missing key(s) when loading model: {missing_keys}")
if unexpected_keys:
logging.warning(f"Unexpected key(s) when loading model: {unexpected_keys}")
# For older versions, manually move to device if needed
if "device" not in kwargs and map_location != "cpu":
logging.warning(
"Loading model weights on other devices than 'cpu' is not supported natively in your version of safetensors."
" This means that the model is loaded on 'cpu' first and then copied to the device."
" This leads to a slower loading time."
" Please update safetensors to version 0.4.3 or above for improved performance."
)
model.to(map_location)
return model
def get_optim_params(self):
"""
Returns the reward-model-specific parameters dict to be passed on to the optimizer.
"""
return self.parameters()
def reset(self) -> None:
"""Reset any internal state."""
pass
@abc.abstractmethod
def compute_reward(self, batch: dict[str, Tensor]) -> Tensor:
"""Compute a scalar reward signal for a batch of observations.
Args:
batch: Dictionary containing at minimum observation tensors.
May also contain "action", "next_observation.*", etc.
Returns:
Tensor of shape ``(batch_size,)`` with reward values.
"""
...
def forward(self, batch: dict[str, Tensor]) -> tuple[Tensor, dict[str, Any]]:
"""Training forward pass — override for trainable reward models."""
raise NotImplementedError(
f"{self.__class__.__name__} is not trainable. Only use compute_reward() for inference."
)
@property
def is_trainable(self) -> bool:
"""Whether this reward model can be trained via ``lerobot-train``.
Trainable reward models override :meth:`forward`; zero-shot models
inherit the base implementation that raises ``NotImplementedError``.
"""
return type(self).forward is not PreTrainedRewardModel.forward
def push_model_to_hub(self, cfg: "TrainPipelineConfig"):
api = HfApi()
repo_id = api.create_repo(
repo_id=self.config.repo_id, private=self.config.private, exist_ok=True
).repo_id
# Push the files to the repo in a single commit
with TemporaryDirectory(ignore_cleanup_errors=True) as tmp:
saved_path = Path(tmp) / repo_id
self.save_pretrained(saved_path) # Calls _save_pretrained and stores model tensors
card = self.generate_model_card(
cfg.dataset.repo_id, self.config.type, self.config.license, self.config.tags
)
card.save(str(saved_path / "README.md"))
cfg.save_pretrained(saved_path) # Calls _save_pretrained and stores train config
commit_info = api.upload_folder(
repo_id=repo_id,
repo_type="model",
folder_path=saved_path,
commit_message="Upload reward model weights, train config and readme",
allow_patterns=["*.safetensors", "*.json", "*.yaml", "*.md"],
ignore_patterns=["*.tmp", "*.log"],
)
logging.info(f"Model pushed to {commit_info.repo_url.url}")
def generate_model_card(
self, dataset_repo_id: str, model_type: str, license: str | None, tags: list[str] | None
) -> ModelCard:
card_data = ModelCardData(
license=license or "apache-2.0",
library_name="lerobot",
pipeline_tag="robotics",
tags=list(set(tags or []).union({"robotics", "lerobot", "reward-model", model_type})),
model_name=model_type,
datasets=dataset_repo_id,
)
template_card = (
files("lerobot.templates")
.joinpath("lerobot_rewardmodel_modelcard_template.md")
.read_text(encoding="utf-8")
)
card = ModelCard.from_template(card_data, template_str=template_card)
card.validate()
return card
@@ -1,4 +1,4 @@
# Copyright 2024 The HuggingFace Inc. team. All rights reserved.
# Copyright 2026 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
@@ -14,5 +14,6 @@
from .configuration_sarm import SARMConfig
from .modeling_sarm import SARMRewardModel
from .processor_sarm import make_sarm_pre_post_processors
__all__ = ["SARMConfig", "SARMRewardModel"]
__all__ = ["SARMConfig", "SARMRewardModel", "make_sarm_pre_post_processors"]
@@ -25,18 +25,18 @@ need ~num_frames/30 queries instead of one per frame (~30x speedup).
Usage:
# Full RA-BC computation with visualizations
python src/lerobot/policies/sarm/compute_rabc_weights.py \\
python src/lerobot/rewards/sarm/compute_rabc_weights.py \\
--dataset-repo-id lerobot/aloha_sim_insertion_human \\
--reward-model-path <USER>/sarm_single_uni4
# Faster computation with stride (compute every 5 frames, interpolate the rest)
python src/lerobot/policies/sarm/compute_rabc_weights.py \\
python src/lerobot/rewards/sarm/compute_rabc_weights.py \\
--dataset-repo-id lerobot/aloha_sim_insertion_human \\
--reward-model-path <USER>/sarm_single_uni4 \\
--stride 5
# Visualize predictions only (no RA-BC computation)
python src/lerobot/policies/sarm/compute_rabc_weights.py \\
python src/lerobot/rewards/sarm/compute_rabc_weights.py \\
--dataset-repo-id lerobot/aloha_sim_insertion_human \\
--reward-model-path <USER>/sarm_single_uni4 \\
--visualize-only \\
@@ -58,10 +58,9 @@ import torch
from tqdm import tqdm
from lerobot.datasets import LeRobotDataset
from .modeling_sarm import SARMRewardModel
from .processor_sarm import make_sarm_pre_post_processors
from .sarm_utils import normalize_stage_tau
from lerobot.rewards.sarm.modeling_sarm import SARMRewardModel
from lerobot.rewards.sarm.processor_sarm import make_sarm_pre_post_processors
from lerobot.rewards.sarm.sarm_utils import normalize_stage_tau
def get_reward_model_path_from_parquet(parquet_path: Path) -> str | None:
@@ -713,12 +712,12 @@ def main():
epilog="""
Examples:
# Full RA-BC computation with visualizations
python src/lerobot/policies/sarm/compute_rabc_weights.py \\
python src/lerobot/rewards/sarm/compute_rabc_weights.py \\
--dataset-repo-id lerobot/aloha_sim_insertion_human \\
--reward-model-path <USER>/sarm_single_uni4
# Visualize predictions only (no RA-BC computation)
python src/lerobot/policies/sarm/compute_rabc_weights.py \\
python src/lerobot/rewards/sarm/compute_rabc_weights.py \\
--dataset-repo-id lerobot/aloha_sim_insertion_human \\
--reward-model-path <USER>/sarm_single_uni4 \\
--visualize-only \\
@@ -1,5 +1,3 @@
#!/usr/bin/env python
# Copyright 2025 Qianzhong Chen, Justin Yu, Mac Schwager, Pieter Abbeel, Yide Shentu, Philipp Wu
# and The HuggingFace Inc. team. All rights reserved.
#
@@ -22,14 +20,15 @@ Paper: https://arxiv.org/abs/2509.25358
from dataclasses import dataclass, field
from lerobot.configs import FeatureType, NormalizationMode, PolicyFeature, PreTrainedConfig
from lerobot.configs import FeatureType, NormalizationMode, PolicyFeature
from lerobot.configs.rewards import RewardModelConfig
from lerobot.optim import AdamWConfig, CosineDecayWithWarmupSchedulerConfig
from lerobot.utils.constants import OBS_IMAGES, OBS_STATE
@PreTrainedConfig.register_subclass("sarm")
@RewardModelConfig.register_subclass("sarm")
@dataclass
class SARMConfig(PreTrainedConfig):
class SARMConfig(RewardModelConfig):
"""Configuration class for SARM (Stage-Aware Reward Modeling).
Supports three annotation modes:
@@ -110,7 +109,6 @@ class SARMConfig(PreTrainedConfig):
def __post_init__(self):
super().__post_init__()
if self.annotation_mode not in ["single_stage", "dense_only", "dual"]:
raise ValueError(
f"annotation_mode must be 'single_stage', 'dense_only', or 'dual', got {self.annotation_mode}"
@@ -1,5 +1,3 @@
#!/usr/bin/env python
# Copyright 2025 Qianzhong Chen, Justin Yu, Mac Schwager, Pieter Abbeel, Yide Shentu, Philipp Wu
# and The HuggingFace Inc. team. All rights reserved.
#
@@ -34,14 +32,13 @@ import torch.nn as nn
import torch.nn.functional as F # noqa: N812
from torch import Tensor
from lerobot.utils.constants import OBS_STR
from ..pretrained import PreTrainedPolicy
from .configuration_sarm import SARMConfig
from .sarm_utils import (
from lerobot.rewards.pretrained import PreTrainedRewardModel
from lerobot.rewards.sarm.configuration_sarm import SARMConfig
from lerobot.rewards.sarm.sarm_utils import (
normalize_stage_tau,
pad_state_to_max_dim,
)
from lerobot.utils.constants import OBS_STR
class StageTransformer(nn.Module):
@@ -353,7 +350,7 @@ def gen_stage_emb(num_classes: int, targets: torch.Tensor) -> torch.Tensor:
return stage_onehot
class SARMRewardModel(PreTrainedPolicy):
class SARMRewardModel(PreTrainedRewardModel):
"""
SARM Reward Model for stage-aware task completion rewards.
@@ -471,6 +468,23 @@ class SARMRewardModel(PreTrainedPolicy):
self.subtask_model.to(device)
return self
def compute_reward(self, batch: dict[str, Tensor]) -> Tensor:
"""Compute dense progress reward in [0, 1] from batch.
Expects batch to contain:
- "observation_features" or video embeddings: (B, T, 512)
- "language_embedding" or text embeddings: (B, 512)
- optionally "observation.state": (B, T, state_dim)
"""
text_emb = batch.get("language_embedding", batch.get("text_features"))
video_emb = batch.get("observation_features", batch.get("video_features"))
state = batch.get("observation.state", batch.get("state_features"))
rewards = self.calculate_rewards(text_emb, video_emb, state)
if isinstance(rewards, np.ndarray):
rewards = torch.from_numpy(rewards).float()
return rewards
@torch.no_grad()
def calculate_rewards(
self,
@@ -631,17 +645,9 @@ class SARMRewardModel(PreTrainedPolicy):
return self.parameters()
def reset(self):
"""Required by PreTrainedPolicy but not used for reward models."""
"""SARM has no episode-level state to reset."""
pass
def predict_action_chunk(self, batch: dict[str, Tensor]) -> Tensor:
"""Required by PreTrainedPolicy but not used for reward models."""
raise NotImplementedError("SARM model does not predict action chunks")
def select_action(self, batch: dict[str, Tensor]) -> Tensor:
"""Required by PreTrainedPolicy but not used for SARM."""
raise NotImplementedError("SARM model does not select actions")
def _train_step(
self,
img_emb: torch.Tensor, # (B, N, T, D)
@@ -1,5 +1,3 @@
#!/usr/bin/env python
# Copyright 2025 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
@@ -60,16 +58,15 @@ from lerobot.processor import (
policy_action_to_transition,
transition_to_policy_action,
)
from lerobot.types import EnvTransition, PolicyAction, TransitionKey
from lerobot.utils.constants import POLICY_POSTPROCESSOR_DEFAULT_NAME, POLICY_PREPROCESSOR_DEFAULT_NAME
from .configuration_sarm import SARMConfig
from .sarm_utils import (
from lerobot.rewards.sarm.configuration_sarm import SARMConfig
from lerobot.rewards.sarm.sarm_utils import (
apply_rewind_augmentation,
compute_absolute_indices,
find_stage_and_tau,
pad_state_to_max_dim,
)
from lerobot.types import EnvTransition, PolicyAction, TransitionKey
from lerobot.utils.constants import POLICY_POSTPROCESSOR_DEFAULT_NAME, POLICY_PREPROCESSOR_DEFAULT_NAME
class SARMEncodingProcessorStep(ProcessorStep):
@@ -455,7 +452,13 @@ class SARMEncodingProcessorStep(ProcessorStep):
inputs = {k: v.to(self.device) for k, v in inputs.items()}
# Get image embeddings
embeddings = self.clip_model.get_image_features(**inputs).detach().cpu()
# transformers 5.x returns BaseModelOutputWithPooling instead of a plain tensor
output = self.clip_model.get_image_features(**inputs)
if not isinstance(output, torch.Tensor):
output = output.pooler_output
if output is None:
raise ValueError("pooler_output should not be None for CLIP models.")
embeddings = output.detach().cpu()
# Handle single frame case
if embeddings.dim() == 1:
@@ -482,7 +485,13 @@ class SARMEncodingProcessorStep(ProcessorStep):
inputs = self.clip_processor.tokenizer([text], return_tensors="pt", padding=True, truncation=True)
inputs = {k: v.to(self.device) for k, v in inputs.items()}
text_embedding = self.clip_model.get_text_features(**inputs).detach().cpu()
# transformers 5.x returns BaseModelOutputWithPooling instead of a plain tensor
output = self.clip_model.get_text_features(**inputs)
if not isinstance(output, torch.Tensor):
output = output.pooler_output
if output is None:
raise ValueError("pooler_output should not be None for CLIP models.")
text_embedding = output.detach().cpu()
text_embedding = text_embedding.expand(batch_size, -1)
return text_embedding
@@ -1,5 +1,3 @@
#!/usr/bin/env python
# Copyright 2025 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
@@ -14,14 +12,38 @@
# See the License for the specific language governing permissions and
# limitations under the License.
"""
RA-BC (Reward-Aligned Behavior Cloning) sample weighting implementation.
This module implements the SampleWeighter protocol for RA-BC training,
which weights training samples based on their task progress as measured
by the SARM reward model.
The weights are computed based on progress deltas:
delta = progress[t + chunk_size] - progress[t]
High-quality samples (positive progress) get higher weights, while
samples with negative progress (going backwards) get zero weight.
See: https://arxiv.org/abs/2509.25358 for the SARM paper.
"""
import logging
from pathlib import Path
from typing import TYPE_CHECKING
import numpy as np
import pandas as pd
import torch
from huggingface_hub import hf_hub_download
from lerobot.utils.import_utils import _pandas_available
from lerobot.utils.sample_weighting import SampleWeighter
if TYPE_CHECKING or _pandas_available:
import pandas as pd
else:
pd = None # type: ignore[assignment]
def resolve_hf_path(path: str | Path) -> Path:
"""Resolve a path that may be a HuggingFace URL (hf://datasets/...) to a local path."""
@@ -34,23 +56,27 @@ def resolve_hf_path(path: str | Path) -> Path:
return Path(path)
class RABCWeights:
class RABCWeights(SampleWeighter):
"""
Load precomputed SARM progress values and compute RA-BC weights during training.
This class implements the SampleWeighter ABC for use with the generic
sample weighting infrastructure in lerobot.
Progress values are loaded from a parquet file (generated by compute_rabc_weights.py).
During training, computes:
- progress_delta = progress[t + chunk_size] - progress[t]
- rabc_weight based on the delta (paper Eq. 8-9)
Args:
progress_path: Path to parquet file with precomputed progress values
chunk_size: Number of frames ahead for computing progress delta
head_mode: Which SARM head to use ("sparse" or "dense")
kappa: Hard threshold for high-quality samples (default: 0.01)
epsilon: Small constant for numerical stability (default: 1e-6)
fallback_weight: Weight to use for frames without valid delta (default: 1.0)
device: Device to return tensors on
progress_path: Path to parquet file with precomputed progress values.
Supports HuggingFace URLs (hf://datasets/...).
chunk_size: Number of frames ahead for computing progress delta.
head_mode: Which SARM head to use ("sparse" or "dense").
kappa: Hard threshold for high-quality samples (default: 0.01).
epsilon: Small constant for numerical stability (default: 1e-6).
fallback_weight: Weight to use for frames without valid delta (default: 1.0).
device: Device to return tensors on.
"""
def __init__(
@@ -61,7 +87,7 @@ class RABCWeights:
kappa: float = 0.01,
epsilon: float = 1e-6,
fallback_weight: float = 1.0,
device: torch.device = None,
device: torch.device | None = None,
):
self.progress_path = resolve_hf_path(progress_path)
self.chunk_size = chunk_size
@@ -87,8 +113,8 @@ class RABCWeights:
logging.info(f"Using progress column: {self.progress_column}")
self.progress_lookup = {}
self.episode_lookup = {}
self.progress_lookup: dict[int, float] = {}
self.episode_lookup: dict[int, int] = {}
for _, row in self.df.iterrows():
global_idx = int(row["index"])
@@ -100,7 +126,7 @@ class RABCWeights:
self.episode_lookup[global_idx] = episode_idx
# Build episode boundaries for delta computation
self.episode_boundaries = {}
self.episode_boundaries: dict[int, dict[str, int]] = {}
for episode_idx in self.df["episode_index"].unique():
ep_df = self.df[self.df["episode_index"] == episode_idx]
self.episode_boundaries[int(episode_idx)] = {
@@ -114,7 +140,7 @@ class RABCWeights:
# Compute global statistics for weight computation
self._compute_global_stats()
def _compute_global_stats(self):
def _compute_global_stats(self) -> None:
"""Compute global mean and std of progress deltas for weight calculation."""
all_deltas = []
@@ -138,8 +164,8 @@ class RABCWeights:
all_deltas.append(delta)
if all_deltas:
self.delta_mean = max(np.mean(all_deltas), 0.0)
self.delta_std = max(np.std(all_deltas), self.epsilon)
self.delta_mean = max(float(np.mean(all_deltas)), 0.0)
self.delta_std = max(float(np.std(all_deltas)), self.epsilon)
logging.info(f"Progress delta stats: mean={self.delta_mean:.4f}, std={self.delta_std:.4f}")
else:
self.delta_mean = 0.0
@@ -157,18 +183,19 @@ class RABCWeights:
4. Compute weight using paper Eq. 8-9
Args:
batch: Training batch containing "index" key with global frame indices
batch: Training batch containing "index" key with global frame indices.
Returns:
Tuple of:
- Weights tensor (batch_size,) normalized to sum to batch_size
- Stats dict with raw_mean_weight, num_zero_weight, num_full_weight
- Weights tensor (batch_size,) normalized to sum to batch_size.
- Stats dict with weighting statistics for logging.
"""
indices = batch.get("index")
if indices is None:
logging.warning("RA-BC: Batch missing 'index' key, using uniform weights")
batch_size = self._get_batch_size(batch)
return torch.ones(batch_size, device=self.device), {"raw_mean_weight": 1.0}
stats = {"mean_weight": 1.0, "num_zero_weight": 0, "num_full_weight": batch_size}
return torch.ones(batch_size, device=self.device), stats
# Convert to list of ints
if isinstance(indices, torch.Tensor):
@@ -183,29 +210,29 @@ class RABCWeights:
delta = self._compute_delta(idx)
deltas.append(delta)
deltas = np.array(deltas, dtype=np.float32)
deltas_array = np.array(deltas, dtype=np.float32)
# Compute weights from deltas
weights = self._compute_weights(deltas)
weights = self._compute_weights(deltas_array)
# Compute stats before normalization for logging
raw_mean_weight = float(np.nanmean(weights))
num_zero_weight = int(np.sum(weights == 0))
num_full_weight = int(np.sum(weights == 1.0))
batch_stats = {
"raw_mean_weight": raw_mean_weight,
"mean_weight": raw_mean_weight,
"num_zero_weight": num_zero_weight,
"num_full_weight": num_full_weight,
}
weights = torch.tensor(weights, device=self.device, dtype=torch.float32)
weights_tensor = torch.tensor(weights, device=self.device, dtype=torch.float32)
# Normalize to sum to batch_size
batch_size = len(weights)
weight_sum = weights.sum() + self.epsilon
weights = weights * batch_size / weight_sum
batch_size = len(weights_tensor)
weight_sum = weights_tensor.sum() + self.epsilon
weights_tensor = weights_tensor * batch_size / weight_sum
return weights, batch_stats
return weights_tensor, batch_stats
def _compute_delta(self, global_idx: int) -> float:
"""Compute progress delta for a single frame."""
@@ -241,7 +268,7 @@ class RABCWeights:
- Final weight: wi = 1{ri > κ} + 1{0 ri κ}˜wi
Returns:
Array of weights
Array of weights.
"""
valid_mask = ~np.isnan(deltas)
@@ -273,12 +300,13 @@ class RABCWeights:
if key in batch:
val = batch[key]
if isinstance(val, (torch.Tensor, np.ndarray)):
return val.shape[0]
return int(val.shape[0])
return 1
def get_stats(self) -> dict:
"""Get statistics."""
"""Get global statistics about the RA-BC weighting."""
return {
"type": "rabc",
"num_frames": len(self.progress_lookup),
"chunk_size": self.chunk_size,
"head_mode": self.head_mode,
@@ -1,5 +1,3 @@
#!/usr/bin/env python
# Copyright 2025 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
+3 -3
View File
@@ -193,15 +193,15 @@ def convert_lerobot_dataset_to_cropped_lerobot_dataset(
fps=int(original_dataset.fps),
root=new_dataset_root,
robot_type=original_dataset.meta.robot_type,
features=original_dataset.meta.info["features"],
features=original_dataset.meta.info.features,
use_videos=len(original_dataset.meta.video_keys) > 0,
)
# Update the metadata for every image key that will be cropped:
# (Here we simply set the shape to be the final resize_size.)
for key in crop_params_dict:
if key in new_dataset.meta.info["features"]:
new_dataset.meta.info["features"][key]["shape"] = [3] + list(resize_size)
if key in new_dataset.meta.info.features:
new_dataset.meta.info.features[key]["shape"] = (3, *resize_size)
# TODO: Directly modify the mp4 video + meta info features, instead of recreating a dataset
prev_episode_index = 0
@@ -54,6 +54,7 @@ class BiOpenArmFollower(Robot):
calibration_dir=config.calibration_dir,
port=config.left_arm_config.port,
disable_torque_on_disconnect=config.left_arm_config.disable_torque_on_disconnect,
use_velocity_and_torque=config.left_arm_config.use_velocity_and_torque,
max_relative_target=config.left_arm_config.max_relative_target,
cameras=left_cameras,
side=config.left_arm_config.side,
@@ -72,6 +73,7 @@ class BiOpenArmFollower(Robot):
calibration_dir=config.calibration_dir,
port=config.right_arm_config.port,
disable_torque_on_disconnect=config.right_arm_config.disable_torque_on_disconnect,
use_velocity_and_torque=config.right_arm_config.use_velocity_and_torque,
max_relative_target=config.right_arm_config.max_relative_target,
cameras=right_cameras,
side=config.right_arm_config.side,
+1 -1
View File
@@ -46,7 +46,7 @@ class LeKiwiConfig(RobotConfig):
cameras: dict[str, CameraConfig] = field(default_factory=lekiwi_cameras_config)
# Set to `True` for backward compatibility with previous policies/dataset
use_degrees: bool = False
use_degrees: bool = True
@dataclass
@@ -66,6 +66,10 @@ class OpenArmFollowerConfigBase:
# Whether to disable torque when disconnecting
disable_torque_on_disconnect: bool = True
# When True, expose `.vel` and `.torque` per motor in observation features.
# Default False for compatibility with the position-only openarm_mini teleoperator.
use_velocity_and_torque: bool = False
# Safety limit for relative target positions
# Set to a positive scalar for all motors, or a dict mapping motor names to limits
max_relative_target: float | dict[str, float] | None = None
@@ -93,8 +93,9 @@ class OpenArmFollower(Robot):
features: dict[str, type] = {}
for motor in self.bus.motors:
features[f"{motor}.pos"] = float
features[f"{motor}.vel"] = float # Add this
features[f"{motor}.torque"] = float # Add this
if self.config.use_velocity_and_torque:
features[f"{motor}.vel"] = float
features[f"{motor}.torque"] = float
return features
@property
@@ -235,8 +236,9 @@ class OpenArmFollower(Robot):
for motor in self.bus.motors:
state = states.get(motor, {})
obs_dict[f"{motor}.pos"] = state.get("position", 0.0)
obs_dict[f"{motor}.vel"] = state.get("velocity", 0.0)
obs_dict[f"{motor}.torque"] = state.get("torque", 0.0)
if self.config.use_velocity_and_torque:
obs_dict[f"{motor}.vel"] = state.get("velocity", 0.0)
obs_dict[f"{motor}.torque"] = state.get("torque", 0.0)
# Capture images from cameras
for cam_key, cam in self.cameras.items():
+9 -3
View File
@@ -75,7 +75,7 @@ class SentryStrategyConfig(RolloutStrategyConfig):
# Target video file size in MB for episode rotation. Episodes are
# saved once the estimated video duration would exceed this limit.
# Defaults to DEFAULT_VIDEO_FILE_SIZE_IN_MB when set to None.
target_video_file_size_mb: float | None = None
target_video_file_size_mb: int | None = None
@RolloutStrategyConfig.register_subclass("highlight")
@@ -90,7 +90,7 @@ class HighlightStrategyConfig(RolloutStrategyConfig):
"""
ring_buffer_seconds: float = 10.0
ring_buffer_max_memory_mb: float = 1024.0
ring_buffer_max_memory_mb: int = 1024
save_key: str = "s"
push_key: str = "h"
@@ -150,7 +150,7 @@ class DAggerStrategyConfig(RolloutStrategyConfig):
upload_every_n_episodes: int = 5
# Target video file size in MB for episode rotation (record_autonomous
# mode only). Defaults to DEFAULT_VIDEO_FILE_SIZE_IN_MB when None.
target_video_file_size_mb: float | None = None
target_video_file_size_mb: int | None = None
input_device: str = "keyboard"
keyboard: DAggerKeyboardConfig = field(default_factory=DAggerKeyboardConfig)
pedal: DAggerPedalConfig = field(default_factory=DAggerPedalConfig)
@@ -209,6 +209,12 @@ class RolloutConfig:
# Rename map for mapping robot/dataset observation keys to policy keys
rename_map: dict[str, str] = field(default_factory=dict)
# Hardware teardown
# When True (default), smoothly interpolate the robot back to the joint
# positions captured at startup before disconnecting. Set to False to
# leave the robot in its final achieved pose at shutdown.
return_to_initial_position: bool = True
# Torch compile
use_torch_compile: bool = False
torch_compile_backend: str = "inductor"
+36 -23
View File
@@ -27,7 +27,7 @@ from threading import Event
import torch
from lerobot.configs import FeatureType, PreTrainedConfig
from lerobot.configs import FeatureType
from lerobot.datasets import (
LeRobotDataset,
aggregate_pipeline_dataset_features,
@@ -43,6 +43,7 @@ from lerobot.processor import (
make_default_processors,
rename_stats,
)
from lerobot.processor.relative_action_processor import RelativeActionsProcessorStep
from lerobot.robots import make_robot_from_config
from lerobot.teleoperators import Teleoperator, make_teleoperator_from_config
from lerobot.utils.feature_utils import combine_feature_dicts, hw_to_dataset_features
@@ -51,6 +52,7 @@ from .configs import BaseStrategyConfig, DAggerStrategyConfig, RolloutConfig
from .inference import (
InferenceEngine,
RTCInferenceConfig,
SyncInferenceConfig,
create_inference_engine,
)
from .robot_wrapper import ThreadSafeRobot
@@ -176,33 +178,26 @@ def build_rollout_context(
policy_config = cfg.policy
policy_class = get_policy_class(policy_config.type)
full_config = PreTrainedConfig.from_pretrained(cfg.policy.pretrained_path)
for attr in ("device", "use_amp"):
if hasattr(cfg.policy, attr) and hasattr(full_config, attr):
cli_val = getattr(cfg.policy, attr)
if cli_val is not None:
setattr(full_config, attr, cli_val)
if hasattr(policy_config, "compile_model"):
policy_config.compile_model = cfg.use_torch_compile
if hasattr(full_config, "compile_model"):
full_config.compile_model = cfg.use_torch_compile
if full_config.type == "vqbet" and cfg.device == "mps":
if policy_config.type == "vqbet" and cfg.device == "mps":
raise NotImplementedError(
"Current implementation of VQBeT does not support `mps` backend. "
"Please use `cpu` or `cuda` backend."
)
if full_config.use_peft:
if policy_config.use_peft:
from peft import PeftConfig, PeftModel
peft_path = cfg.policy.pretrained_path
peft_path = policy_config.pretrained_path
peft_config = PeftConfig.from_pretrained(peft_path)
policy = policy_class.from_pretrained(
pretrained_name_or_path=peft_config.base_model_name_or_path, config=full_config
pretrained_name_or_path=peft_config.base_model_name_or_path, config=policy_config
)
policy = PeftModel.from_pretrained(policy, peft_path, config=peft_config)
else:
policy = policy_class.from_pretrained(cfg.policy.pretrained_path, config=full_config)
policy = policy_class.from_pretrained(policy_config.pretrained_path, config=policy_config)
if is_rtc:
policy.config.rtc_config = cfg.inference.rtc
@@ -257,10 +252,12 @@ def build_rollout_context(
teleop.connect()
logger.info("Teleoperator connected")
# DAgger requires teleop with motor control capabilities (enable_torque,
# disable_torque, write_goal_positions).
# TODO(Steven): either enforce this (meaning all teleop must implement these methods) or
# user is responsible for moving the teleop to the same position as the robot when starting the correction.
# TODO(Steven): once Teleoperator motor-control methods are standardised
# (``enable_torque`` / ``disable_torque`` / ``write_goal_positions``), gate
# the DAgger strategy on their presence here and fail fast with a helpful
# message instead of relying on the operator to pre-align the leader by
# hand. See :func:`DAggerStrategy._apply_transition` for the matching
# disabled call sites.
# if isinstance(cfg.strategy, DAggerStrategyConfig) and teleop is not None:
# required_teleop_methods = ("enable_torque", "disable_torque", "write_goal_positions")
# missing = [m for m in required_teleop_methods if not callable(getattr(teleop, m, None))]
@@ -272,10 +269,13 @@ def build_rollout_context(
# )
# --- 4. Features + action-key reconciliation ---------------------
# TODO(Steven): Only `.pos` joint features are used for policy inference — velocity and
# torque channels are observation-only and must be excluded from the state
# and action tensors that the policy sees.
# TODO(Steven):Only ``.pos`` joint features are routed to the policy as state and as the
# action target; velocity and torque channels (when present) are kept in
# the raw observation but excluded from the policy-facing tensors.
all_obs_features = robot.observation_features
# ``observation_features`` values are either a tuple (camera shape) or the
# ``float`` type itself used as a sentinel for scalar motor features —
# see ``dict[str, type | tuple]`` annotation on ``Robot.observation_features``.
observation_features_hw = {
k: v
for k, v in all_obs_features.items()
@@ -308,7 +308,9 @@ def build_rollout_context(
# Validate visual features if no rename_map is active
rename_map = cfg.rename_map
if not rename_map:
expected_visuals = {k for k, v in full_config.input_features.items() if v.type == FeatureType.VISUAL}
expected_visuals = {
k for k, v in policy_config.input_features.items() if v.type == FeatureType.VISUAL
}
provided_visuals = {
f"observation.images.{k}" for k, v in robot.observation_features.items() if isinstance(v, tuple)
}
@@ -353,6 +355,7 @@ def build_rollout_context(
"Use --dataset.repo_id=<user>/rollout_<name> for policy deployment datasets."
)
cfg.dataset.stamp_repo_id()
target_video_mb = getattr(cfg.strategy, "target_video_file_size_mb", None)
dataset = LeRobotDataset.create(
cfg.dataset.repo_id,
cfg.dataset.fps,
@@ -368,6 +371,7 @@ def build_rollout_context(
streaming_encoding=cfg.dataset.streaming_encoding,
encoder_queue_maxsize=cfg.dataset.encoder_queue_maxsize,
encoder_threads=cfg.dataset.encoder_threads,
video_files_size_in_mb=target_video_mb,
)
if dataset is not None:
@@ -391,6 +395,15 @@ def build_rollout_context(
},
)
if isinstance(cfg.inference, SyncInferenceConfig) and any(
isinstance(step, RelativeActionsProcessorStep) and step.enabled
for step in getattr(preprocessor, "steps", ())
):
raise NotImplementedError(
"SyncInferenceEngine does not support policies with relative actions for now."
"Use --inference.type=rtc or remove relative action processor steps from the policy pipeline."
)
# --- 7. Inference strategy (needs policy + pre/post + hardware) --
logger.info(
"Creating inference engine (type=%s)...",

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