Commit Graph

1535 Commits

Author SHA1 Message Date
CarolinePascal 67ee4cfbb2 fix(normalization): restricting 255 normalization to non depth/uint8 images only 2026-06-22 17:17:45 +02:00
CarolinePascal 722eab2d07 fix(realsense): fixing typo in realsense serial number 2026-06-22 17:17:45 +02:00
CarolinePascal 509622ce41 tests(typos): fixing typos in tests 2026-06-22 17:17:45 +02:00
CarolinePascal 454f9f7d43 fix(info): fixing info metadata update when is_depth_map was set 2026-06-22 17:17:45 +02:00
CarolinePascal f3db25adce fix(pre-commit): fixing mutable defautl value 2026-06-22 17:17:45 +02:00
CarolinePascal 765bfabbb9 feat(refactor): refactor DepthEncoderConfig quantization pipeline, so that the methods do not live in the config class. Add pixel format - channels validation.Move the default pixel format for depth in the config file. 2026-06-22 17:17:45 +02:00
CarolinePascal 8f6dd077fa feat(pix_fmt channels): use PyAv to check get pixel formats number of channels 2026-06-22 17:17:45 +02:00
CarolinePascal aaec453190 tests(depth): adding new tests for depth integration validation 2026-06-22 17:17:44 +02:00
CarolinePascal 04b841dfb5 test(fix): fixing exisiting tests to still work with latest features 2026-06-22 17:17:44 +02:00
CarolinePascal eca73edbe2 chore(typos): fixing typos 2026-06-22 17:17:44 +02:00
CarolinePascal 71b3bce19a fix(plumbing): fixing missing parts in the depth maps pipeline 2026-06-22 17:17:44 +02:00
CarolinePascal aae75346b4 fix(stop_event): fixing stop_event race condition in camera classes 2026-06-22 17:17:38 +02:00
CarolinePascal e55a883b0a feat(is_depth): simplifying is_depth nested name + legacy support 2026-06-22 14:44:51 +02:00
CarolinePascal edd2854a2c feat(depth shape): ensuring depth maps shape is always including the channel 2026-06-22 14:44:51 +02:00
CarolinePascal 520c19904f chore(format): format code 2026-06-22 14:44:51 +02:00
CarolinePascal 4566a8d285 feat(depth maps writer): adding support for raw depth maps recording with image writer 2026-06-22 14:44:51 +02:00
CarolinePascal 11aa5d7785 feat(viz): render depth observations as rr.DepthImage in Viridis 2026-06-22 14:44:51 +02:00
CarolinePascal b05df095f5 feat(record): plumb DepthEncoderConfig through lerobot-record 2026-06-22 14:44:51 +02:00
CarolinePascal 2ccf794c80 feat(robots/so_follower): emit + populate depth keys when use_depth 2026-06-22 14:44:51 +02:00
CarolinePascal 52321f7bef feat(features): route 2D camera shapes to observation.depth.<key> 2026-06-22 14:44:50 +02:00
CarolinePascal 443a4a7445 feat(cameras/realsense): expose async depth in metric meters 2026-06-22 14:44:50 +02:00
CarolinePascal e3afbca893 feat(depth): wire DatasetReader to decode_depth_frames 2026-06-22 14:44:48 +02:00
CarolinePascal 4374bb4368 feat(depth): wire StreamingVideoEncoder + writer to depth encoder 2026-06-22 14:21:53 +02:00
CarolinePascal 172cdee0cc feat(depth): plumb DepthEncoderConfig through LeRobotDataset and DatasetWriter 2026-06-22 14:21:53 +02:00
CarolinePascal ee87804cb8 feat(depth): extend quantization tools to better fit the encoding/decoding pipeline 2026-06-22 14:21:53 +02:00
CarolinePascal 0826676c5e feat(depth): persist depth metadata 2026-06-22 14:21:52 +02:00
CarolinePascal b802ec163d feat(video): add ffv1 to supported codecs 2026-06-22 14:21:52 +02:00
CarolinePascal 0509162456 feat(depth): add depth quantization helpers and tests 2026-06-22 14:21:52 +02:00
Maxime Ellerbach 73782447f2 feat(train): FSDP checkpoint saving (#3810)
* feat(train): FSDP checkpoint saving

* adding docs for FSDP

* adding a test for the fsdp checkpoint path

* cleanup

* fixing final upload to hub

* refactored initial implementation to use torch fsdp api and adding new tests
2026-06-22 13:51:21 +02:00
Khalil Meftah 2d7a42011a fix(policies): support offline batch inference for ACT and Diffusion (#3822)
- Guard ACT's KL divergence computation against None latent params to
prevent crashes during eval when use_vae is set but the forward path
returns no VAE outputs.
- Add offline batch fallback to Diffusion's predict_action_chunk() so
it works with dataloader batches (empty queues) in addition to the
existing online rollout path (populated queues). This enables batched
action prediction for offline evaluation.
2026-06-21 11:48:45 +02:00
Khalil Meftah b06ad40888 feat(hub): add pretrained_revision to pin Hub model versions (#3820)
- Add pretrained_revision field to PreTrainedConfig (policies) and
RewardModelConfig (reward models), and thread it through make_policy(),
make_pre_post_processors(), and make_reward_model() so that weights and
processor configs can be loaded from a specific Hub commit, branch, or
tag. Defaults to None (latest version, preserving current behavior).
Dataset and env hub loading already supported revision pinning.

Co-authored-by: Steven Palma <imstevenpmwork@ieee.org>
2026-06-19 18:32:47 +02:00
Khalil Meftah b3d74f80f0 Fix batch wandb logging metrics and handle scalar stats (#3821)
* fix(logging): batch wandb metrics

- Batch all metrics into a single wandb.log() call instead of one per
key, reducing API overhead.

- Add support for list-valued metrics by expanding them to indexed keys (e.g.
metric_0, metric_1).

* fix(stats): handle scalar stats robustly

- Wrap cast_stats_to_numpy with np.atleast_1d to prevent 0-d arrays
from scalar stats causing shape mismatches downstream.

* fix(logging): remove unused list-valued metric expansion

---------

Co-authored-by: Steven Palma <imstevenpmwork@ieee.org>
2026-06-19 18:31:12 +02:00
Khalil Meftah 552b4c3563 Add third-party env plugin discovery (#3823)
* feat(envs): add env plugin discovery

- Add 'lerobot_env_' to third-party plugin discovery prefixes, completing
the plugin system for all component types (robots, cameras, teleoperators,
policies, and now environments). External packages named lerobot_env_*
can self-register EnvConfig subclasses on import, enabling --env.type=
resolution without lerobot code changes.

* feat(envs): add generic observation passthrough

- Add generic observation passthrough in preprocess_observation() for
unhandled ndarray/tensor keys, replacing the pattern of adding per-env
hardcoded key handlers. Extra keys are forwarded as observation.<key>
and can be shaped by env-specific ProcessorSteps via get_env_processors().

---------

Co-authored-by: Steven Palma <imstevenpmwork@ieee.org>
2026-06-19 18:30:00 +02:00
Nicolas Rabault 8bf6056d14 docs: add LeLab web interface to README (#3831) 2026-06-17 18:22:21 +02:00
Caroline Pascal da92db8fc0 fix(image transforms): cleaning up image_transforms implementation in LeRobotDataset (#3829) 2026-06-17 11:50:09 +02:00
Caroline Pascal 2b0834bcb8 fix(cameras): snapshot stop_event in read loops to avoid None deref (#3812)
* Do not set stop_event to None when stopping thread

* fix(cameras): snapshot stop_event in read loops to avoid None deref
The background read loops accessed self.stop_event repeatedly while
_stop_read_thread() can reassign it to None after join(). Reading the
attribute across the loop condition (and a mid-loop re-check) was a
time-of-check/time-of-use race: stop_event could flip to None between
the `is None` test and the `.is_set()` call, raising AttributeError on
the worker thread.
Snapshot self.stop_event into a local once, guard it, and loop on the
local Event. The Event object is thread-safe and lives for the thread's
lifetime; _stop_read_thread() always calls .set() before nulling the
attribute, so the local observes the stop and exits cleanly. This also
lets us drop the redundant pre-lock stop check.
Applies to OpenCVCamera, RealSenseCamera, and ZMQ camera.

---------

Co-authored-by: Anes Benmerzoug <anes.benmerzoug@gmail.com>
2026-06-17 11:40:17 +02:00
Caroline Pascal 287c823f13 fix(features copy): adding deepcopy on LeRobot dataset features to avoid shallow copy leaks (#3826)
* fix(features copy): adding deepcopy on LeRobot dataset features to avoid shallow copy leaks

* tests(test): adding new test
2026-06-16 17:58:59 +02:00
Pepijn 58ccc01508 fix(datasets): enforce one parquet row group per episode in v3 data writes (#3807)
* fix(datasets): enforce one parquet row group per episode in v3 data writes

LeRobot v3 data shards must hold exactly one row group per episode so a
reader can fetch episode i with pq.ParquetFile(path).read_row_group(i)
(a byte-range read) instead of loading the whole shard. The recording
writer already does this (one write_table per episode); the aggregate
and lerobot-annotate re-write paths instead concatenated many episodes
and wrote them in one shot, collapsing the file to a single row group.

- io_utils: add write_table_one_row_group_per_episode (one ParquetWriter,
  one write_table per episode — same pattern as the recording writer);
  to_parquet_with_hf_images embeds images then writes per-episode row
  groups; to_parquet_one_row_group_per_episode wraps it for plain frames
- aggregate: route non-image data writes through the per-episode writer;
  leave the episodes-metadata parquet untouched (already one row/episode)
- annotate: rewrite shards via the per-episode writer instead of a single
  bulk pq.write_table
- tests: invariant coverage through the aggregate (image + video) and
  annotate paths

No change to on-disk schema, paths, naming, rollover thresholds, or
compression. Readers stay backward-compatible (old collapsed files load).

* Update src/lerobot/datasets/io_utils.py

Co-authored-by: Caroline Pascal <caroline8.pascal@gmail.com>
Signed-off-by: Pepijn <138571049+pkooij@users.noreply.github.com>

* Update src/lerobot/datasets/io_utils.py

Co-authored-by: Caroline Pascal <caroline8.pascal@gmail.com>
Signed-off-by: Pepijn <138571049+pkooij@users.noreply.github.com>

* fix(datasets): correct indentation and add strict= in row-group helper

The web-edited numpy version of write_table_one_row_group_per_episode had an
over-indented line (IndentationError, breaking pre-commit + test collection)
and a zip() without strict=. Fix both; behaviour unchanged.

---------

Signed-off-by: Pepijn <138571049+pkooij@users.noreply.github.com>
Co-authored-by: Caroline Pascal <caroline8.pascal@gmail.com>
2026-06-16 12:15:48 +02:00
Caroline Pascal 38327fdc84 fix(images/videos): fixing aggregate_pipeline_dataset_features to avoid unwanted images features deletion (#3783)
* fix(images/videos): fixing aggregate_pipeline_dataset_features to avoid unwanted images features deletion when videos are not used

* fix(docstrings): improving docstrings

Signed-off-by: Caroline Pascal <caroline8.pascal@gmail.com>

---------

Signed-off-by: Caroline Pascal <caroline8.pascal@gmail.com>
2026-06-15 17:55:52 +02:00
Steven Palma 9555efc02c chore(dependencies): update uv.lock (#3595)
Co-authored-by: github-actions[bot] <github-actions[bot]@users.noreply.github.com>
2026-06-15 16:29:44 +02:00
Steven Palma d576c59afb refactor(robots): homogenize bi-manual setups implementations (#3772)
* chore(robots): homogenize bi setups

* feat(robots): split openarm mini into single and bi

* refactor(robots): mixin for bi classes

* docs: update docs
2026-06-15 16:28:54 +02:00
Altman 8515d456be fix(datasets): avoid uint8 overflow in image stats (#3697)
* fix(datasets): avoid uint8 overflow in image stats

* fix(datasets): promote stats batches dynamically
2026-06-13 12:09:43 +02:00
Mahbod 30790de178 feat(edit-dataset): add concatenate_videos opt-out to merge (#3663)
* feat(edit-dataset): add `concatenate_videos` opt-out to merge

When merging datasets, source mp4s are concatenated into shards capped at
`video_files_size_in_mb` (default 200 MB). This is great for dataloader
throughput but destroys per-episode (or per-source) video boundaries,
which is undesirable when you want to inspect, ship, or reuse the
individual mp4s.

Add a `concatenate_videos: bool = True` knob plumbed through
`MergeConfig` → `merge_datasets` → `aggregate_datasets` → `aggregate_videos`.
When False, each source mp4 is copied 1:1 to its own destination mp4 with
no re-muxing, so the merge preserves source video boundaries.

Usage:

    lerobot-edit-dataset \
        --new_repo_id user/merged \
        --operation.type=merge \
        --operation.repo_ids "['user/a', 'user/b']" \
        --operation.concatenate_videos=false

Defaults are unchanged; the dataloader path is unaffected because the
`episodes.parquet` `from_timestamp`/`to_timestamp` index keeps working
regardless of whether each mp4 holds one or many episodes.

* feat(edit-dataset): extend concatenate opt-out to data files

Following review, add a concatenate_data flag mirroring concatenate_videos,
threaded through MergeConfig, merge_datasets, aggregate_datasets, aggregate_data
and append_or_create_parquet_file. Metadata index files still always concatenate.

Also trim the verbose docstrings and comments since the names are
self-explanatory, and extend the existing merge test to cover data files.
2026-06-12 20:05:04 +02:00
Pepijn cec8ee0be6 feat: language annotation pipeline (#3471)
Steerable annotation pipeline (lerobot-annotate) that populates the language_persistent and language_events columns introduced in PR 1 (#3467) directly into data/chunk-*/file-*.parquet.

This is PR 2 of the three-PR plan:

PR 1 (Add extensive language support #3467): schema + DSL + rendering, base of this PR
PR 2 (this PR): annotation pipeline writing into PR 1's columns
PR 3: model with language prediction and runtime
A VLM (Qwen-VL family, served on vLLM) watches each episode's video and emits grounded language annotations: subtasks, plans, memory, task rephrasings, interjections + speech, and per-camera VQA. The pipeline is built for production annotation at scale — single-camera grounding, embedded-frame inputs, a describe-then-segment grounding flow, and a deterministic full-episode coverage guarantee — informed by Scale's dense-captioning findings (representation > sampling, rules > reasoning, model capacity is the biggest lever, two-pass systems compound errors)
2026-06-12 15:12:33 +02:00
Nikodem Bartnik 02b315ab6a Docs/model card improvements (#3634)
* update policy deployment instruction with rollout

* add port and fix formatting

* add more base models to generate model card

* updated and extended model descriptions

* fix bug

* improved and extended structure

* exclude the templates from config

* add images and visualize dataset button

* add all policies we have docs for

* remove policies without the docs

* new fields, improved examples
2026-06-12 13:26:52 +02:00
Pepijn 234c768dfb feat(datasets): deterministic, resumable shuffling for EpisodeAwareSampler (#3769)
* fix(datasets): expose a generator on EpisodeAwareSampler for distributed shuffle sync

In distributed training, accelerate can only synchronize the shuffle
permutation across ranks when the sampler exposes a generator attribute.
EpisodeAwareSampler shuffled via the global torch RNG, so disjoint batch
shards relied on every rank's global CPU RNG staying in lockstep forever;
any rank-asymmetric RNG consumption (e.g. eval rollouts on the main
process only) silently desynced the permutations and ranks trained on
overlapping/missing samples.

Co-Authored-By: Claude Fable 5 <noreply@anthropic.com>

* fix(train): seed sampler generator and gate dataset download per node

- Pass a generator seeded with cfg.seed to EpisodeAwareSampler so
  accelerator.prepare registers it as the synchronized RNG and the
  shuffle order is reproducible.
- Gate the initial make_dataset call on is_local_main_process instead of
  is_main_process: the global main process only exists on node 0, so on
  every other node all local ranks were downloading the dataset and
  building the Arrow cache concurrently.

Co-Authored-By: Claude Fable 5 <noreply@anthropic.com>

* feat(datasets): add DeterministicEpisodeAwareSampler with O(1) memory and sample-exact resume

Add a sampler that never materializes frame indices: it stores only
per-episode boundaries (numpy, a few bytes per episode) and maps logical
positions to frame indices on the fly with searchsorted. Shuffling uses a
seeded Feistel permutation over [0, num_frames) (cycle-walking to the
exact domain), so the data order is a pure function of (seed, epoch):

- no RNG state to synchronize across distributed ranks,
- constant memory and zero epoch-boundary cost at any dataset size,
- O(1) seek to any position, enabling sample-exact resume.

Opt in with --deterministic_sampler=true. On resume, lerobot-train maps
the checkpointed step back to (epoch, start_index) via
compute_sampler_state and continues at the exact sample where the run
left off (up to accelerate's even_batches padding at epoch boundaries).
The shuffle is pseudo-random rather than a true uniform permutation, the
standard trade-off in large-scale training loaders.

Co-Authored-By: Claude Fable 5 <noreply@anthropic.com>

* refactor(datasets): fold deterministic mode into EpisodeAwareSampler

Instead of a parallel DeterministicEpisodeAwareSampler class, extend the
existing EpisodeAwareSampler with a deterministic=True mode (seeded
Feistel permutation, epoch auto-advance, state_dict/load_state_dict).

The default mode is behavior-identical: same torch.randperm consumption
and the same generator contract accelerate synchronizes; the O(N) Python
index list is replaced by O(num_episodes) boundary arrays in both modes,
with `indices` kept as a back-compat property. Passing a generator
together with deterministic=True is rejected, and the state/seek methods
raise outside deterministic mode.

Co-Authored-By: Claude Fable 5 <noreply@anthropic.com>

* feat(train): enable deterministic_sampler by default

Deterministic data order (sample-exact resume, no cross-rank RNG sync,
O(1) sampler memory) is now the default for map-style training; set
deterministic_sampler=false to restore the legacy RNG-based shuffle.
Streaming datasets ignore the flag (the sampler path only applies to
map-style datasets), replacing the previous hard validation error so
streaming configs keep working with the new default.

Co-Authored-By: Claude Fable 5 <noreply@anthropic.com>

* feat(datasets): default EpisodeAwareSampler to deterministic mode and trim comments

deterministic=True is now the class default as well as the training
default; the legacy RNG path requires an explicit deterministic=False
(the train script's non-deterministic branch passes it). Docstrings and
inline comments slimmed down across the changed files.

Co-Authored-By: Claude Fable 5 <noreply@anthropic.com>

* test(sampler): drain resumed trillion-frame sampler via iter() to avoid list() prealloc

list(sampler) calls PyObject_LengthHint -> __len__ (the full 10**12 epoch length) and
preallocates that many slots before iterating, OOMing even though the resumed epoch only
yields 3 frames. Collect through the iterator (no length hint) so the test exercises the
real O(1) seek/drain instead of CPython's list growth heuristic.

* fix(datasets): guard Feistel cycle-walking loop against non-convergence

Replace the unbounded while True in EpisodeAwareSampler._permute with a
bounded for loop capped at _MAX_CYCLE_WALK_STEPS (100) and raise
RuntimeError if the cycle-walk fails to land in [0, num_frames). The
loop is expected to converge in <4 steps on the chosen power-of-two
domain, so the bound is a safety net that should never trip in practice
but prevents a pathological infinite loop.

https://claude.ai/code/session_01HQ15tFrBsHYScjGWosEv22

* fix(datasets): make deterministic-sampler resume robust to world-size changes

compute_sampler_state mapped a checkpointed step back to (epoch, start_index)
using the *current* num_processes, but the number of sampler positions a step
consumes scales with the world size that produced it. Resuming on a different
GPU count therefore landed on the wrong epoch/offset, silently re-seeing or
skipping data.

Record num_processes in training_step.json at checkpoint time and feed the
checkpoint's value into compute_sampler_state on resume, so the data order
resumes at the right position regardless of the new world size. Warn when the
world size changed (the global offset is correct, but per-rank sample-exactness
needs the same topology). Old checkpoints without the field fall back to the
current world size.

Also document compute_sampler_state's assumptions explicitly: num_processes /
batch_size must match the checkpointing run, and accelerate's even_batches=True
padding is mirrored by the ceil(... / num_processes) term.

Co-Authored-By: Claude Fable 5 <noreply@anthropic.com>
Co-authored-by: Cursor <cursoragent@cursor.com>

* style: apply ruff-format to lerobot_train.py

Collapse the compute_sampler_state(...) call onto one line so the
ruff-format pre-commit hook passes (fixes the failing CI check).

Co-authored-by: Cursor <cursoragent@cursor.com>

* refactor(datasets): use seeded torch.randperm instead of Feistel in EpisodeAwareSampler

Drop the Feistel permutation (and its SplitMix64 hash / cycle-walking) in favor of a
torch.randperm seeded from (seed, epoch). The deterministic mode keeps its key properties
- data order is a pure function of (seed, epoch), so it reproduces on every rank with no
  global-RNG synchronization, and
- state_dict / load_state_dict still resume sample-exactly, now by regenerating the epoch's
  permutation and slicing from the saved offset.

Construction stays O(num_episodes) (only episode boundaries are stored, never a per-frame
index list). The trade-off vs Feistel: the per-epoch shuffle is again O(num_frames) memory
(the randperm tensor) and no longer O(1)-seekable, in exchange for ~30 fewer LOC and a truly
uniform shuffle. Tests updated: the trillion-frame O(1) test is replaced with a
boundary-storage check and a scale resume-exactness test.

Co-authored-by: Cursor <cursoragent@cursor.com>

* refactor(datasets): make EpisodeAwareSampler always deterministic

With Feistel gone, deterministic and legacy modes were both just torch.randperm and the
deterministic path strictly dominated (reproducible across ranks via the (seed, epoch) seed,
no accelerate generator sync, resumable). Collapse to a single path and drop the redundant
flag:

- remove the `deterministic` and `generator` constructor args, `_iter_default`, and
  `_require_deterministic`; `set_epoch` / `state_dict` / `load_state_dict` are now unconditional
- remove the `deterministic_sampler` train config field and the legacy generator branch in
  lerobot_train.py (non-streaming map datasets always use the sampler)
- drop the now-obsolete generator/legacy tests

Note: removes the `generator` kwarg from EpisodeAwareSampler (back-compat break vs main); the
order is now a pure function of (seed, epoch), so no cross-rank RNG sync is needed.

Co-authored-by: Cursor <cursoragent@cursor.com>

* fix(datasets): address sampler review (batch_size resume guard + docs)

- Record batch_size in training_step.json alongside num_processes and feed
  the checkpoint's value into compute_sampler_state on resume; warn when it
  differs (per-rank sample-exactness needs the same batch size).
- Document the set_epoch vs __iter__ auto-advance coupling on EpisodeAwareSampler
  (callers should rely on exactly one mechanism per run).
- Note the broadened (reproducibility-breaking) sampler guard and the no-generator
  distributed sharding correctness in lerobot_train.py.
- Add load_training_batch_size + parallel tests.

Co-authored-by: Cursor <cursoragent@cursor.com>

* fix(train): download dataset once on the global main process

Gate the training dataset download on the global is_main_process (download once to the
shared dataset root, barrier, then every other rank reads the already-populated copy)
instead of per-node is_local_main_process. LeRobotDataset skips its snapshot_download
when try_load() succeeds, so no rank re-downloads. Assumes the dataset root / HF cache is
on storage shared across nodes.

Co-authored-by: Cursor <cursoragent@cursor.com>

* chore(datasets): trim sampler comment and drop duplicate tests

Remove the verbose dataloader-guard comment and the two EpisodeAwareSampler tests
that duplicated existing validation/warning coverage (no coverage loss).

Co-authored-by: Cursor <cursoragent@cursor.com>

---------

Co-authored-by: Claude Fable 5 <noreply@anthropic.com>
Co-authored-by: Cursor <cursoragent@cursor.com>
2026-06-12 11:47:16 +02:00
Caroline Pascal 0e9bd9e6fb feat(trim): adding optional trimming option in reencode_video (#3779)
* feat(trim): adding optional trimming option in reencode_video

* tests(trim): add triming test

---------

Co-authored-by: Pepijn <138571049+pkooij@users.noreply.github.com>
2026-06-12 11:29:26 +02:00
Steven Palma 87242cfced chore(dependecies): relax grpc-related bounds (#3777)
Signed-off-by: Steven Palma <imstevenpmwork@ieee.org>
2026-06-11 19:13:14 +02:00
Steven Palma 1edc83a0ef feat(training): bump accelerate + use reduction types for tracked metrics in a multi rank setup (#3773)
* feat(training): bump accelerate + use reduction types for tracked metrics in a multi rank setup

* chore: address feedback
2026-06-11 19:07:28 +02:00
Steven Palma 6fbcf67249 chore: update readme (#3774)
* chore: update readme

* chore: update authors in project readme
2026-06-11 18:17:26 +02:00