mirror of
https://github.com/huggingface/lerobot.git
synced 2026-06-30 14:47:10 +00:00
3dd19d043e
* feat(depth): add depth quantization helpers and tests
* feat(video): add ffv1 to supported codecs
* feat(depth): persist depth metadata
* feat(depth): extend quantization tools to better fit the encoding/decoding pipeline
* feat(depth): plumb DepthEncoderConfig through LeRobotDataset and DatasetWriter
* feat(depth): wire StreamingVideoEncoder + writer to depth encoder
* feat(depth): wire DatasetReader to decode_depth_frames
* feat(cameras/realsense): expose async depth in metric meters
* feat(features): route 2D camera shapes to observation.depth.<key>
* feat(robots/so_follower): emit + populate depth keys when use_depth
* feat(record): plumb DepthEncoderConfig through lerobot-record
* feat(viz): render depth observations as rr.DepthImage in Viridis
* feat(depth maps writer): adding support for raw depth maps recording with image writer
* chore(format): format code
* feat(depth shape): ensuring depth maps shape is always including the channel
* feat(is_depth): simplifying is_depth nested name + legacy support
* fix(stop_event): fixing stop_event race condition in camera classes
* fix(plumbing): fixing missing parts in the depth maps pipeline
* chore(typos): fixing typos
* test(fix): fixing exisiting tests to still work with latest features
* tests(depth): adding new tests for depth integration validation
* feat(pix_fmt channels): use PyAv to check get pixel formats number of channels
* 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.
* fix(pre-commit): fixing mutable defautl value
* fix(info): fixing info metadata update when is_depth_map was set
* tests(typos): fixing typos in tests
* fix(realsense): fixing typo in realsense serial number
* fix(normalization): restricting 255 normalization to non depth/uint8 images only
* fix(typo): fixing typo
* fix(TIFF): add missing quantization and cleanup for TIFF files
* feat(batched dequantization): optimizing dequantize_depth for torch based batched dequantization
* feat(tools): adding depth support in LeRobotDataset edition tools
* test(aggregate): extending aggregation tests to depth frames
* test(cleaning): cleaning up tests
* fix(from_video_info): fixing early validation issue in from_video_info
* fix(typo): fixing typo
* fix(is_depth): adding missing doctrings and is_depth arguments in video decoding functions
Co-authored-by: Wensi (Vince) Ai <59036629+wensi-ai@users.noreply.github.com>
* fix(depth units): fixing depth units output for the realsense cameras
* feat(output unit): adding support for output unit specification at dataset reading/training time
Co-authored-by: Wensi (Vince) Ai <59036629+wensi-ai@users.noreply.github.com>
* test(depth): cleaning up depth tests
* test(depth encoding): updating and cleaning video/depth encoding tests
* chore(format): formatting code
* docs(depth): improving depth maps docs
* test(fix): fixing depth tests
* test(dataset tools): adding missing tests for new dataset edition tools features
* chore(format): formatting code
* fix(pyav check): fixing PyAV option validation for integer codec options by normalizing
numeric values before calling `is_integer()`
Co-authored-by: Wensi (Vince) Ai <59036629+wensi-ai@users.noreply.github.com>
* docs(mermaid): fixing mermaid diagram
* fix(rebase): rebase follow up corrections
* feat(dataset tools): adding missing docstrings and features for depth fill support in dataset edition tools
* docs(docstring): updating docstrings
* docs(dataset tools): updating docs
* fix(save images): fixing image saving in dataset tools
* fix(update video info): fixing update video info logic to match the recording and editing use cases
* test(reencode): fixing reencoding monkeypatch
* fix(review): add Claude review
* chore(format): format code
* fix(update video info): ditching the differentiated approahces for video info update - video info are always updated unless for preserved keys.
* chore(rebase): fixing rebase merge conflicts
* test(visualization): fixing visualization tests
* feat(docstrings): adding explicit docstring for encoding parameters. Docstrigns will now show up as description in the CLI --help.
* feat(mm as default): adding a global DEFAULT_DEPTH_UNIT variable setting mm as default depth unit
* fix(RGB <-> camera): renaming camera_encoder to rgb_encoder for clarity
* chore(TODO): removing deprecated TODO
* doc(write_u16_plane): improving docstrings for write_u16_plane
* feat(units): adding constants for depth frames units (m and mm)
* fix(spam): replacing spamming warning but a debug log
* feat(leagcy metadata): adding automatic metadata update for legacy 'video.is_depth_map' feature
* fix(copy&reindex): fixing metadat reshaping for single channel frames
* fix(ImageNet): excluding dpeth frames from ImageNet stats
* fix(PyAV container seek): fixing initial PyAV container seek to be robust againsy codec choice
* feat(lerobot-dataset-viz): adding support for depth in lerobot-dataset-viz
* fix(compress): removing rerun compression for DepthImages
* fix(signle channel squeeze): fixing single channel squeezing
* chore(format): format code
* fix(streaming): adding support for dequantization in streaming_dataset.py
* refactor(read depth): factorizing depth reading methods for realsense camera and adding support for depth-only usage
* chore(renaming): fixing missed RGBEncoderConfig renamings
* docs(renaming): reflecting renamings in a clearer way in the docs
* chore(annotation): excluding depth from the annotation pipeline
* feat(robots): adding depth support in compatible follower robots
* feat(LeSadKiwi): excluding LeKiwi from depth support (for now)
* chore(fail): removing misplaced file
* chore(fail): removing misplaced file
* fix(remove ffv1): removing ffv1 as it does not support MP4
* docs(cheat sheet): adding depth and video encoding to the cheat sheet
* fix(lossless): tuning depth encoding parameters for lossless depth storage
* test(fix): fixing failing tests
* depth(ZMQ): excluding ZMQ from depth support
* Revert "depth(ZMQ): excluding ZMQ from depth support"
This reverts commit b95cf4e4c2.
* fix(image transforms): excluding depth frames from images transforms
* fix(typo): typo
* fix(stats): fixing stats computation for depth frames
* fix(TIFF vs. pytorch): adding an extra uint16 to float32 conversion for depth maps stored as raw TIFF images
* fix(typos): fixing typos
* test(dtype): fixing stats computation typing tests
---------
Signed-off-by: Steven Palma <imstevenpmwork@ieee.org>
Co-authored-by: Wensi (Vince) Ai <59036629+wensi-ai@users.noreply.github.com>
Co-authored-by: Steven Palma <imstevenpmwork@ieee.org>
Co-authored-by: Wensi Ai <wsai@stanford.edu>
860 lines
36 KiB
Python
860 lines
36 KiB
Python
#!/usr/bin/env python
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# Copyright 2025 The HuggingFace Inc. team. All rights reserved.
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#
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# Licensed under the Apache License, Version 2.0 (the "License");
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# you may not use this file except in compliance with the License.
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# You may obtain a copy of the License at
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#
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# http://www.apache.org/licenses/LICENSE-2.0
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#
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# Unless required by applicable law or agreed to in writing, software
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# distributed under the License is distributed on an "AS IS" BASIS,
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# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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# See the License for the specific language governing permissions and
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# limitations under the License.
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import json
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import logging
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from unittest.mock import patch
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import pytest
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pytest.importorskip("datasets", reason="datasets is required (install lerobot[dataset])")
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import datasets # noqa: E402
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import torch
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from lerobot.configs import VIDEO_ENCODER_INFO_KEYS
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from lerobot.datasets.aggregate import aggregate_datasets
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from lerobot.datasets.feature_utils import features_equal_for_merge
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from lerobot.datasets.lerobot_dataset import LeRobotDataset
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from tests.fixtures.constants import (
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DUMMY_CAMERA_FEATURES_WITH_DEPTH,
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DUMMY_REPO_ID,
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)
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def assert_data_shards_one_row_group_per_episode(root):
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"""Every aggregated DATA shard must have exactly one parquet row group per episode."""
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import pyarrow.parquet as pq
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shards = sorted((root / "data").rglob("*.parquet"))
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assert shards, f"no data shards found under {root}/data"
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n_episodes = 0
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for shard in shards:
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pf = pq.ParquetFile(shard)
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episodes = pf.read(columns=["episode_index"]).column("episode_index").to_pylist()
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assert pf.metadata.num_row_groups == len(set(episodes)), shard
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for i in range(pf.metadata.num_row_groups):
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rg_episodes = set(
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pf.read_row_group(i, columns=["episode_index"]).column("episode_index").to_pylist()
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)
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assert len(rg_episodes) == 1, f"{shard} row group {i} spans episodes {rg_episodes}"
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n_episodes += len(set(episodes))
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return n_episodes
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def assert_episode_and_frame_counts(aggr_ds, expected_episodes, expected_frames):
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"""Test that total number of episodes and frames are correctly aggregated."""
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assert aggr_ds.num_episodes == expected_episodes, (
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f"Expected {expected_episodes} episodes, got {aggr_ds.num_episodes}"
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)
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assert aggr_ds.num_frames == expected_frames, (
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f"Expected {expected_frames} frames, got {aggr_ds.num_frames}"
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)
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def assert_dataset_content_integrity(aggr_ds, ds_0, ds_1):
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"""Test that the content of both datasets is preserved correctly in the aggregated dataset."""
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keys_to_ignore = ["episode_index", "index", "timestamp"]
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# Test first part of dataset corresponds to ds_0, check first item (index 0) matches ds_0[0]
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aggr_first_item = aggr_ds[0]
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ds_0_first_item = ds_0[0]
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# Compare all keys except episode_index and index which should be updated
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for key in ds_0_first_item:
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if key not in keys_to_ignore:
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# Handle both tensor and non-tensor data
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if torch.is_tensor(aggr_first_item[key]) and torch.is_tensor(ds_0_first_item[key]):
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assert torch.allclose(aggr_first_item[key], ds_0_first_item[key], atol=1e-6), (
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f"First item key '{key}' doesn't match between aggregated and ds_0"
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)
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else:
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assert aggr_first_item[key] == ds_0_first_item[key], (
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f"First item key '{key}' doesn't match between aggregated and ds_0"
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)
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# Check last item of ds_0 part (index len(ds_0)-1) matches ds_0[-1]
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aggr_ds_0_last_item = aggr_ds[len(ds_0) - 1]
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ds_0_last_item = ds_0[-1]
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for key in ds_0_last_item:
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if key not in keys_to_ignore:
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# Handle both tensor and non-tensor data
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if torch.is_tensor(aggr_ds_0_last_item[key]) and torch.is_tensor(ds_0_last_item[key]):
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assert torch.allclose(aggr_ds_0_last_item[key], ds_0_last_item[key], atol=1e-6), (
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f"Last ds_0 item key '{key}' doesn't match between aggregated and ds_0"
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)
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else:
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assert aggr_ds_0_last_item[key] == ds_0_last_item[key], (
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f"Last ds_0 item key '{key}' doesn't match between aggregated and ds_0"
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)
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# Test second part of dataset corresponds to ds_1
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# Check first item of ds_1 part (index len(ds_0)) matches ds_1[0]
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aggr_ds_1_first_item = aggr_ds[len(ds_0)]
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ds_1_first_item = ds_1[0]
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for key in ds_1_first_item:
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if key not in keys_to_ignore:
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# Handle both tensor and non-tensor data
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if torch.is_tensor(aggr_ds_1_first_item[key]) and torch.is_tensor(ds_1_first_item[key]):
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assert torch.allclose(aggr_ds_1_first_item[key], ds_1_first_item[key], atol=1e-6), (
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f"First ds_1 item key '{key}' doesn't match between aggregated and ds_1"
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)
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else:
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assert aggr_ds_1_first_item[key] == ds_1_first_item[key], (
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f"First ds_1 item key '{key}' doesn't match between aggregated and ds_1"
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)
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# Check last item matches ds_1[-1]
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aggr_last_item = aggr_ds[-1]
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ds_1_last_item = ds_1[-1]
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for key in ds_1_last_item:
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if key not in keys_to_ignore:
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# Handle both tensor and non-tensor data
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if torch.is_tensor(aggr_last_item[key]) and torch.is_tensor(ds_1_last_item[key]):
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assert torch.allclose(aggr_last_item[key], ds_1_last_item[key], atol=1e-6), (
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f"Last item key '{key}' doesn't match between aggregated and ds_1"
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)
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else:
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assert aggr_last_item[key] == ds_1_last_item[key], (
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f"Last item key '{key}' doesn't match between aggregated and ds_1"
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)
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def assert_metadata_consistency(aggr_ds, ds_0, ds_1):
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"""Test that metadata is correctly aggregated."""
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# Test basic info
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assert aggr_ds.fps == ds_0.fps == ds_1.fps, "FPS should be the same across all datasets"
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assert aggr_ds.meta.info.robot_type == ds_0.meta.info.robot_type == ds_1.meta.info.robot_type, (
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"Robot type should be the same"
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)
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# Schema matches; merged video ``info`` is reconciled separately from per-source ``info``.
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assert features_equal_for_merge(aggr_ds.features, ds_0.features)
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assert features_equal_for_merge(aggr_ds.features, ds_1.features)
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# Test tasks aggregation
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expected_tasks = set(ds_0.meta.tasks.index) | set(ds_1.meta.tasks.index)
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actual_tasks = set(aggr_ds.meta.tasks.index)
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assert actual_tasks == expected_tasks, f"Expected tasks {expected_tasks}, got {actual_tasks}"
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def assert_episode_indices_updated_correctly(aggr_ds, ds_0, ds_1):
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"""Test that episode indices are correctly updated after aggregation."""
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# ds_0 episodes should have episode_index 0 to ds_0.num_episodes-1
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for i in range(len(ds_0)):
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assert aggr_ds[i]["episode_index"] < ds_0.num_episodes, (
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f"Episode index {aggr_ds[i]['episode_index']} at position {i} should be < {ds_0.num_episodes}"
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)
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def ds1_episodes_condition(ep_idx):
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return (ep_idx >= ds_0.num_episodes) and (ep_idx < ds_0.num_episodes + ds_1.num_episodes)
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# ds_1 episodes should have episode_index ds_0.num_episodes to total_episodes-1
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for i in range(len(ds_0), len(ds_0) + len(ds_1)):
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expected_min_episode_idx = ds_0.num_episodes
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assert ds1_episodes_condition(aggr_ds[i]["episode_index"]), (
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f"Episode index {aggr_ds[i]['episode_index']} at position {i} should be >= {expected_min_episode_idx}"
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)
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def assert_video_frames_integrity(aggr_ds, ds_0, ds_1):
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"""Test that video frames are correctly preserved and frame indices are updated."""
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def visual_frames_equal(frame1, frame2):
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return torch.allclose(frame1, frame2)
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video_keys = list(
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filter(
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lambda key: aggr_ds.meta.info.features[key]["dtype"] == "video",
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aggr_ds.meta.info.features.keys(),
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)
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)
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# Test the section corresponding to the first dataset (ds_0)
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for i in range(len(ds_0)):
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assert aggr_ds[i]["index"] == i, (
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f"Frame index at position {i} should be {i}, but got {aggr_ds[i]['index']}"
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)
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for key in video_keys:
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assert visual_frames_equal(aggr_ds[i][key], ds_0[i][key]), (
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f"Visual frames at position {i} should be equal between aggregated and ds_0"
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)
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# Test the section corresponding to the second dataset (ds_1)
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for i in range(len(ds_0), len(ds_0) + len(ds_1)):
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# The frame index in the aggregated dataset should also match its position.
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assert aggr_ds[i]["index"] == i, (
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f"Frame index at position {i} should be {i}, but got {aggr_ds[i]['index']}"
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)
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for key in video_keys:
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assert visual_frames_equal(aggr_ds[i][key], ds_1[i - len(ds_0)][key]), (
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f"Visual frames at position {i} should be equal between aggregated and ds_1"
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)
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def assert_dataset_iteration_works(aggr_ds):
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"""Test that we can iterate through the entire dataset without errors."""
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for _ in aggr_ds:
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pass
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def assert_depth_keys_preserved(aggr_ds, ds_0, ds_1):
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"""Test that depth keys are correctly preserved after aggregation.
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Ensures that the ``is_depth_map`` marker on visual features survives
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aggregation, so that downstream consumers (e.g. the dataset reader's
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depth decoding path) keep working on the merged dataset.
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"""
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expected_depth_keys = set(ds_0.meta.depth_keys)
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assert expected_depth_keys == set(ds_1.meta.depth_keys), (
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"Source datasets disagree on depth_keys; test setup is inconsistent"
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)
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actual_depth_keys = set(aggr_ds.meta.depth_keys)
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assert actual_depth_keys == expected_depth_keys, (
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f"Expected depth_keys {expected_depth_keys}, got {actual_depth_keys}"
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)
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for key in expected_depth_keys:
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info = aggr_ds.meta.info.features[key].get("info") or {}
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assert info.get("is_depth_map") is True, f"Depth marker lost on feature {key!r} after aggregation"
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def assert_video_timestamps_within_bounds(aggr_ds):
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"""Test that all video timestamps are within valid bounds for their respective video files.
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This catches bugs where timestamps point to frames beyond the actual video length,
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which would cause "Invalid frame index" errors during data loading.
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"""
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try:
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from torchcodec.decoders import VideoDecoder
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except ImportError:
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return
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for ep_idx in range(aggr_ds.num_episodes):
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ep = aggr_ds.meta.episodes[ep_idx]
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for vid_key in aggr_ds.meta.video_keys:
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from_ts = ep[f"videos/{vid_key}/from_timestamp"]
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to_ts = ep[f"videos/{vid_key}/to_timestamp"]
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video_path = aggr_ds.root / aggr_ds.meta.get_video_file_path(ep_idx, vid_key)
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if not video_path.exists():
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continue
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from_frame_idx = round(from_ts * aggr_ds.fps)
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to_frame_idx = round(to_ts * aggr_ds.fps)
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try:
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decoder = VideoDecoder(str(video_path))
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num_frames = len(decoder)
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# Verify timestamps don't exceed video bounds
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assert from_frame_idx >= 0, (
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f"Episode {ep_idx}, {vid_key}: from_frame_idx ({from_frame_idx}) < 0"
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)
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assert from_frame_idx < num_frames, (
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f"Episode {ep_idx}, {vid_key}: from_frame_idx ({from_frame_idx}) >= video frames ({num_frames})"
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)
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assert to_frame_idx <= num_frames, (
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f"Episode {ep_idx}, {vid_key}: to_frame_idx ({to_frame_idx}) > video frames ({num_frames})"
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)
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assert from_frame_idx < to_frame_idx, (
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f"Episode {ep_idx}, {vid_key}: from_frame_idx ({from_frame_idx}) >= to_frame_idx ({to_frame_idx})"
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)
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except Exception as e:
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raise AssertionError(
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f"Failed to verify timestamps for episode {ep_idx}, {vid_key}: {e}"
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) from e
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def test_aggregate_datasets(tmp_path, lerobot_dataset_factory):
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"""Test basic aggregation functionality with standard parameters.
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Source datasets include both RGB and depth video features so the same
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aggregation flow is exercised on the ``is_depth_map`` branch.
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"""
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ds_0_num_frames = 400
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ds_1_num_frames = 800
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ds_0_num_episodes = 10
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ds_1_num_episodes = 25
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# Create two datasets with different number of frames and episodes
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ds_0 = lerobot_dataset_factory(
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root=tmp_path / "test_0",
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repo_id=f"{DUMMY_REPO_ID}_0",
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total_episodes=ds_0_num_episodes,
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total_frames=ds_0_num_frames,
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camera_features=DUMMY_CAMERA_FEATURES_WITH_DEPTH,
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)
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ds_1 = lerobot_dataset_factory(
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root=tmp_path / "test_1",
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repo_id=f"{DUMMY_REPO_ID}_1",
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total_episodes=ds_1_num_episodes,
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total_frames=ds_1_num_frames,
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camera_features=DUMMY_CAMERA_FEATURES_WITH_DEPTH,
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)
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# Confirm depth was actually wired into the source datasets so the
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# rest of the assertions exercise the depth aggregation path.
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assert len(ds_0.meta.depth_keys) > 0, "ds_0 should expose at least one depth key"
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assert len(ds_1.meta.depth_keys) > 0, "ds_1 should expose at least one depth key"
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aggregate_datasets(
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repo_ids=[ds_0.repo_id, ds_1.repo_id],
|
|
roots=[ds_0.root, ds_1.root],
|
|
aggr_repo_id=f"{DUMMY_REPO_ID}_aggr",
|
|
aggr_root=tmp_path / "test_aggr",
|
|
)
|
|
|
|
# Mock the revision to prevent Hub calls during dataset loading
|
|
with (
|
|
patch("lerobot.datasets.dataset_metadata.get_safe_version") as mock_get_safe_version,
|
|
patch("lerobot.datasets.dataset_metadata.snapshot_download") as mock_snapshot_download,
|
|
):
|
|
mock_get_safe_version.return_value = "v3.0"
|
|
mock_snapshot_download.return_value = str(tmp_path / "test_aggr")
|
|
aggr_ds = LeRobotDataset(f"{DUMMY_REPO_ID}_aggr", root=tmp_path / "test_aggr")
|
|
|
|
# Run all assertion functions
|
|
expected_total_episodes = ds_0.num_episodes + ds_1.num_episodes
|
|
expected_total_frames = ds_0.num_frames + ds_1.num_frames
|
|
|
|
assert_episode_and_frame_counts(aggr_ds, expected_total_episodes, expected_total_frames)
|
|
assert_dataset_content_integrity(aggr_ds, ds_0, ds_1)
|
|
assert_metadata_consistency(aggr_ds, ds_0, ds_1)
|
|
assert_episode_indices_updated_correctly(aggr_ds, ds_0, ds_1)
|
|
assert_video_frames_integrity(aggr_ds, ds_0, ds_1)
|
|
assert_video_timestamps_within_bounds(aggr_ds)
|
|
assert_depth_keys_preserved(aggr_ds, ds_0, ds_1)
|
|
assert_dataset_iteration_works(aggr_ds)
|
|
|
|
|
|
def test_aggregate_datasets_without_concatenation(tmp_path, lerobot_dataset_factory):
|
|
"""With concatenation disabled, each source file is kept as its own destination file."""
|
|
ds_0 = lerobot_dataset_factory(
|
|
root=tmp_path / "no_stitch_0",
|
|
repo_id=f"{DUMMY_REPO_ID}_no_stitch_0",
|
|
total_episodes=3,
|
|
total_frames=60,
|
|
)
|
|
ds_1 = lerobot_dataset_factory(
|
|
root=tmp_path / "no_stitch_1",
|
|
repo_id=f"{DUMMY_REPO_ID}_no_stitch_1",
|
|
total_episodes=4,
|
|
total_frames=80,
|
|
)
|
|
|
|
aggr_root = tmp_path / "no_stitch_aggr"
|
|
aggregate_datasets(
|
|
repo_ids=[ds_0.repo_id, ds_1.repo_id],
|
|
roots=[ds_0.root, ds_1.root],
|
|
aggr_repo_id=f"{DUMMY_REPO_ID}_no_stitch_aggr",
|
|
aggr_root=aggr_root,
|
|
concatenate_videos=False,
|
|
concatenate_data=False,
|
|
)
|
|
|
|
with (
|
|
patch("lerobot.datasets.dataset_metadata.get_safe_version") as mock_get_safe_version,
|
|
patch("lerobot.datasets.dataset_metadata.snapshot_download") as mock_snapshot_download,
|
|
):
|
|
mock_get_safe_version.return_value = "v3.0"
|
|
mock_snapshot_download.return_value = str(aggr_root)
|
|
aggr_ds = LeRobotDataset(f"{DUMMY_REPO_ID}_no_stitch_aggr", root=aggr_root)
|
|
|
|
assert_episode_and_frame_counts(
|
|
aggr_ds, ds_0.num_episodes + ds_1.num_episodes, ds_0.num_frames + ds_1.num_frames
|
|
)
|
|
assert_dataset_iteration_works(aggr_ds)
|
|
assert_video_timestamps_within_bounds(aggr_ds)
|
|
|
|
# Two single-file sources stay as two files each, instead of being packed together.
|
|
assert len(list((aggr_root / "data").rglob("*.parquet"))) == 2
|
|
assert aggr_ds.meta.video_keys, "Test fixture should produce at least one video feature"
|
|
for key in aggr_ds.meta.video_keys:
|
|
assert len(list((aggr_root / "videos" / key).rglob("*.mp4"))) == 2
|
|
|
|
|
|
@pytest.mark.parametrize("mutation", ["mismatched_value", "missing_key"])
|
|
def test_aggregate_incomplete_video_encoder_info_warns_and_nuls_encoders(
|
|
tmp_path, lerobot_dataset_factory, caplog, mutation
|
|
):
|
|
"""Mismatched or missing encoder ``info`` is merged per-key with fallbacks and a warning."""
|
|
suffix = "enc_mismatch" if mutation == "mismatched_value" else "enc_missing"
|
|
ds_0 = lerobot_dataset_factory(
|
|
root=tmp_path / f"{suffix}_a",
|
|
repo_id=f"{DUMMY_REPO_ID}_{suffix}_a",
|
|
total_episodes=2,
|
|
total_frames=20,
|
|
)
|
|
ds_1 = lerobot_dataset_factory(
|
|
root=tmp_path / f"{suffix}_b",
|
|
repo_id=f"{DUMMY_REPO_ID}_{suffix}_b",
|
|
total_episodes=2,
|
|
total_frames=20,
|
|
)
|
|
|
|
info_path = ds_1.root / "meta" / "info.json"
|
|
data = json.loads(info_path.read_text())
|
|
for ft in data["features"].values():
|
|
if ft.get("dtype") != "video":
|
|
continue
|
|
inf = ft.setdefault("info", {})
|
|
if mutation == "mismatched_value":
|
|
inf["video.crf"] = 99
|
|
inf["video.extra_options"] = {"tune": "film"}
|
|
else:
|
|
inf.pop("video.crf", None)
|
|
inf.pop("video.extra_options", None)
|
|
info_path.write_text(json.dumps(data))
|
|
|
|
aggr_id = f"{DUMMY_REPO_ID}_{suffix}_aggr"
|
|
aggr_root = tmp_path / f"{suffix}_aggr"
|
|
with caplog.at_level(logging.WARNING):
|
|
aggregate_datasets(
|
|
repo_ids=[ds_0.repo_id, ds_1.repo_id],
|
|
roots=[ds_0.root, ds_1.root],
|
|
aggr_repo_id=aggr_id,
|
|
aggr_root=aggr_root,
|
|
)
|
|
|
|
assert "heterogeneous" in caplog.text.lower() or "incomplete" in caplog.text.lower()
|
|
|
|
with (
|
|
patch("lerobot.datasets.dataset_metadata.get_safe_version") as mock_get_safe_version,
|
|
patch("lerobot.datasets.dataset_metadata.snapshot_download") as mock_snapshot_download,
|
|
):
|
|
mock_get_safe_version.return_value = "v3.0"
|
|
mock_snapshot_download.return_value = str(aggr_root)
|
|
aggr_ds = LeRobotDataset(aggr_id, root=aggr_root)
|
|
|
|
for key, ft in aggr_ds.meta.info.features.items():
|
|
if ft.get("dtype") != "video":
|
|
continue
|
|
info = ft["info"]
|
|
reference = ds_0.meta.info.features[key]["info"]
|
|
for info_key in VIDEO_ENCODER_INFO_KEYS:
|
|
if info_key == "video.crf":
|
|
assert info[info_key] is None
|
|
elif info_key == "video.extra_options":
|
|
assert info[info_key] == {}
|
|
else:
|
|
assert info[info_key] == reference[info_key]
|
|
|
|
|
|
def test_aggregate_with_low_threshold(tmp_path, lerobot_dataset_factory):
|
|
"""Test aggregation with small file size limits to force file rotation/sharding.
|
|
|
|
Depth video features are included to verify that file rotation/concat
|
|
correctly handles depth-marked features alongside regular RGB ones.
|
|
"""
|
|
ds_0_num_episodes = ds_1_num_episodes = 10
|
|
ds_0_num_frames = ds_1_num_frames = 400
|
|
|
|
ds_0 = lerobot_dataset_factory(
|
|
root=tmp_path / "small_0",
|
|
repo_id=f"{DUMMY_REPO_ID}_small_0",
|
|
total_episodes=ds_0_num_episodes,
|
|
total_frames=ds_0_num_frames,
|
|
camera_features=DUMMY_CAMERA_FEATURES_WITH_DEPTH,
|
|
)
|
|
ds_1 = lerobot_dataset_factory(
|
|
root=tmp_path / "small_1",
|
|
repo_id=f"{DUMMY_REPO_ID}_small_1",
|
|
total_episodes=ds_1_num_episodes,
|
|
total_frames=ds_1_num_frames,
|
|
camera_features=DUMMY_CAMERA_FEATURES_WITH_DEPTH,
|
|
)
|
|
|
|
assert len(ds_0.meta.depth_keys) > 0, "ds_0 should expose at least one depth key"
|
|
assert len(ds_1.meta.depth_keys) > 0, "ds_1 should expose at least one depth key"
|
|
|
|
# Use the new configurable parameters to force file rotation
|
|
aggregate_datasets(
|
|
repo_ids=[ds_0.repo_id, ds_1.repo_id],
|
|
roots=[ds_0.root, ds_1.root],
|
|
aggr_repo_id=f"{DUMMY_REPO_ID}_small_aggr",
|
|
aggr_root=tmp_path / "small_aggr",
|
|
# Tiny file size to trigger new file instantiation
|
|
data_files_size_in_mb=0.01,
|
|
video_files_size_in_mb=0.1,
|
|
)
|
|
|
|
# Mock the revision to prevent Hub calls during dataset loading
|
|
with (
|
|
patch("lerobot.datasets.dataset_metadata.get_safe_version") as mock_get_safe_version,
|
|
patch("lerobot.datasets.dataset_metadata.snapshot_download") as mock_snapshot_download,
|
|
):
|
|
mock_get_safe_version.return_value = "v3.0"
|
|
mock_snapshot_download.return_value = str(tmp_path / "small_aggr")
|
|
aggr_ds = LeRobotDataset(f"{DUMMY_REPO_ID}_small_aggr", root=tmp_path / "small_aggr")
|
|
|
|
# Verify aggregation worked correctly despite file size constraints
|
|
expected_total_episodes = ds_0_num_episodes + ds_1_num_episodes
|
|
expected_total_frames = ds_0_num_frames + ds_1_num_frames
|
|
|
|
assert_episode_and_frame_counts(aggr_ds, expected_total_episodes, expected_total_frames)
|
|
assert_dataset_content_integrity(aggr_ds, ds_0, ds_1)
|
|
assert_metadata_consistency(aggr_ds, ds_0, ds_1)
|
|
assert_episode_indices_updated_correctly(aggr_ds, ds_0, ds_1)
|
|
assert_video_frames_integrity(aggr_ds, ds_0, ds_1)
|
|
assert_video_timestamps_within_bounds(aggr_ds)
|
|
assert_depth_keys_preserved(aggr_ds, ds_0, ds_1)
|
|
assert_dataset_iteration_works(aggr_ds)
|
|
|
|
# Check that multiple files were actually created due to small size limits
|
|
data_dir = tmp_path / "small_aggr" / "data"
|
|
video_dir = tmp_path / "small_aggr" / "videos"
|
|
|
|
if data_dir.exists():
|
|
parquet_files = list(data_dir.rglob("*.parquet"))
|
|
assert len(parquet_files) > 1, "Small file size limits should create multiple parquet files"
|
|
|
|
if video_dir.exists():
|
|
video_files = list(video_dir.rglob("*.mp4"))
|
|
assert len(video_files) > 1, "Small file size limits should create multiple video files"
|
|
|
|
|
|
def test_video_timestamps_regression(tmp_path, lerobot_dataset_factory):
|
|
"""Regression test for video timestamp bug when merging datasets.
|
|
|
|
This test specifically checks that video timestamps are correctly calculated
|
|
and accumulated when merging multiple datasets. Depth video features are
|
|
included so depth timestamps are also covered by the regression.
|
|
"""
|
|
datasets = []
|
|
for i in range(3):
|
|
ds = lerobot_dataset_factory(
|
|
root=tmp_path / f"regression_{i}",
|
|
repo_id=f"{DUMMY_REPO_ID}_regression_{i}",
|
|
total_episodes=2,
|
|
total_frames=100,
|
|
camera_features=DUMMY_CAMERA_FEATURES_WITH_DEPTH,
|
|
)
|
|
datasets.append(ds)
|
|
|
|
for i, ds in enumerate(datasets):
|
|
assert len(ds.meta.depth_keys) > 0, f"Dataset {i} should expose at least one depth key"
|
|
|
|
aggregate_datasets(
|
|
repo_ids=[ds.repo_id for ds in datasets],
|
|
roots=[ds.root for ds in datasets],
|
|
aggr_repo_id=f"{DUMMY_REPO_ID}_regression_aggr",
|
|
aggr_root=tmp_path / "regression_aggr",
|
|
)
|
|
|
|
with (
|
|
patch("lerobot.datasets.dataset_metadata.get_safe_version") as mock_get_safe_version,
|
|
patch("lerobot.datasets.dataset_metadata.snapshot_download") as mock_snapshot_download,
|
|
):
|
|
mock_get_safe_version.return_value = "v3.0"
|
|
mock_snapshot_download.return_value = str(tmp_path / "regression_aggr")
|
|
aggr_ds = LeRobotDataset(f"{DUMMY_REPO_ID}_regression_aggr", root=tmp_path / "regression_aggr")
|
|
|
|
assert_video_timestamps_within_bounds(aggr_ds)
|
|
# Depth keys must survive the merge for the regression to cover the
|
|
# ``is_depth_map`` decoding branch.
|
|
assert set(aggr_ds.meta.depth_keys) == set(datasets[0].meta.depth_keys)
|
|
|
|
depth_keys = set(aggr_ds.meta.depth_keys)
|
|
for i in range(len(aggr_ds)):
|
|
item = aggr_ds[i]
|
|
for key in aggr_ds.meta.video_keys:
|
|
assert key in item, f"Video key {key} missing from item {i}"
|
|
# Depth frames are single-channel (1, H, W) after dequantization;
|
|
# standard RGB frames keep the 3-channel layout.
|
|
expected_channels = 1 if key in depth_keys else 3
|
|
assert item[key].shape[0] == expected_channels, (
|
|
f"Expected {expected_channels} channels for video key {key}, got {item[key].shape}"
|
|
)
|
|
|
|
|
|
def assert_image_schema_preserved(aggr_ds):
|
|
"""Test that HuggingFace Image feature schema is preserved in aggregated parquet files.
|
|
|
|
This verifies the fix for a bug where image columns were written with a generic
|
|
struct schema {'bytes': Value('binary'), 'path': Value('string')} instead of
|
|
the proper Image() feature type, causing HuggingFace Hub viewer to display
|
|
raw dict objects instead of image thumbnails.
|
|
"""
|
|
image_keys = aggr_ds.meta.image_keys
|
|
if not image_keys:
|
|
return
|
|
|
|
# Check that parquet files have proper Image schema
|
|
data_dir = aggr_ds.root / "data"
|
|
parquet_files = list(data_dir.rglob("*.parquet"))
|
|
assert len(parquet_files) > 0, "No parquet files found in aggregated dataset"
|
|
|
|
for parquet_file in parquet_files:
|
|
# Load with HuggingFace datasets to check schema
|
|
ds = datasets.Dataset.from_parquet(str(parquet_file))
|
|
|
|
for image_key in image_keys:
|
|
feature = ds.features.get(image_key)
|
|
assert feature is not None, f"Image key '{image_key}' not found in parquet schema"
|
|
assert isinstance(feature, datasets.Image), (
|
|
f"Image key '{image_key}' should have Image() feature type, "
|
|
f"but got {type(feature).__name__}: {feature}. "
|
|
"This indicates image schema was not preserved during aggregation."
|
|
)
|
|
|
|
|
|
def assert_image_frames_integrity(aggr_ds, ds_0, ds_1):
|
|
"""Test that image frames are correctly preserved after aggregation."""
|
|
image_keys = aggr_ds.meta.image_keys
|
|
if not image_keys:
|
|
return
|
|
|
|
def images_equal(img1, img2):
|
|
return torch.allclose(img1, img2)
|
|
|
|
# Test the section corresponding to the first dataset (ds_0)
|
|
for i in range(len(ds_0)):
|
|
assert aggr_ds[i]["index"] == i, (
|
|
f"Frame index at position {i} should be {i}, but got {aggr_ds[i]['index']}"
|
|
)
|
|
for key in image_keys:
|
|
assert images_equal(aggr_ds[i][key], ds_0[i][key]), (
|
|
f"Image frames at position {i} should be equal between aggregated and ds_0"
|
|
)
|
|
|
|
# Test the section corresponding to the second dataset (ds_1)
|
|
for i in range(len(ds_0), len(ds_0) + len(ds_1)):
|
|
assert aggr_ds[i]["index"] == i, (
|
|
f"Frame index at position {i} should be {i}, but got {aggr_ds[i]['index']}"
|
|
)
|
|
for key in image_keys:
|
|
assert images_equal(aggr_ds[i][key], ds_1[i - len(ds_0)][key]), (
|
|
f"Image frames at position {i} should be equal between aggregated and ds_1"
|
|
)
|
|
|
|
|
|
@pytest.mark.parametrize("use_videos", [True, False], ids=["video", "image"])
|
|
def test_aggregate_one_row_group_per_episode(tmp_path, lerobot_dataset_factory, use_videos):
|
|
"""Aggregated DATA shards keep one row group per episode (not one collapsed group).
|
|
|
|
Covers both the non-image (``df.to_parquet``) and image
|
|
(``to_parquet_with_hf_images``) write branches, including the merge-into-
|
|
existing-file branch via a low file-size threshold that forces packing.
|
|
"""
|
|
ds_0 = lerobot_dataset_factory(
|
|
root=tmp_path / "rg_0",
|
|
repo_id=f"{DUMMY_REPO_ID}_rg_0",
|
|
total_episodes=3,
|
|
total_frames=60,
|
|
use_videos=use_videos,
|
|
)
|
|
ds_1 = lerobot_dataset_factory(
|
|
root=tmp_path / "rg_1",
|
|
repo_id=f"{DUMMY_REPO_ID}_rg_1",
|
|
total_episodes=4,
|
|
total_frames=80,
|
|
use_videos=use_videos,
|
|
)
|
|
|
|
aggr_root = tmp_path / "rg_aggr"
|
|
aggregate_datasets(
|
|
repo_ids=[ds_0.repo_id, ds_1.repo_id],
|
|
roots=[ds_0.root, ds_1.root],
|
|
aggr_repo_id=f"{DUMMY_REPO_ID}_rg_aggr",
|
|
aggr_root=aggr_root,
|
|
)
|
|
|
|
n_episodes = assert_data_shards_one_row_group_per_episode(aggr_root)
|
|
assert n_episodes == ds_0.num_episodes + ds_1.num_episodes
|
|
|
|
|
|
def test_aggregate_image_datasets(tmp_path, lerobot_dataset_factory):
|
|
"""Test aggregation of image-based datasets preserves HuggingFace Image schema.
|
|
|
|
This test specifically verifies that:
|
|
1. Image-based datasets can be aggregated correctly
|
|
2. The HuggingFace Image() feature type is preserved in parquet files
|
|
3. Image data integrity is maintained across aggregation
|
|
4. Images can be properly decoded after aggregation
|
|
|
|
This catches the bug where to_parquet_with_hf_images() was not passing
|
|
the features schema, causing image columns to be written as generic
|
|
struct types instead of Image() types.
|
|
"""
|
|
ds_0_num_frames = 50
|
|
ds_1_num_frames = 75
|
|
ds_0_num_episodes = 2
|
|
ds_1_num_episodes = 3
|
|
|
|
# Create two image-based datasets (use_videos=False) with a mix of RGB
|
|
# and depth-marked cameras so the depth path is exercised in image mode.
|
|
ds_0 = lerobot_dataset_factory(
|
|
root=tmp_path / "image_0",
|
|
repo_id=f"{DUMMY_REPO_ID}_image_0",
|
|
total_episodes=ds_0_num_episodes,
|
|
total_frames=ds_0_num_frames,
|
|
use_videos=False,
|
|
camera_features=DUMMY_CAMERA_FEATURES_WITH_DEPTH,
|
|
)
|
|
ds_1 = lerobot_dataset_factory(
|
|
root=tmp_path / "image_1",
|
|
repo_id=f"{DUMMY_REPO_ID}_image_1",
|
|
total_episodes=ds_1_num_episodes,
|
|
total_frames=ds_1_num_frames,
|
|
use_videos=False,
|
|
camera_features=DUMMY_CAMERA_FEATURES_WITH_DEPTH,
|
|
)
|
|
|
|
# Verify source datasets have image keys
|
|
assert len(ds_0.meta.image_keys) > 0, "ds_0 should have image keys"
|
|
assert len(ds_1.meta.image_keys) > 0, "ds_1 should have image keys"
|
|
# And that the depth marker actually made it onto an image feature.
|
|
assert len(ds_0.meta.depth_keys) > 0, "ds_0 should expose at least one depth key"
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|
assert len(ds_1.meta.depth_keys) > 0, "ds_1 should expose at least one depth key"
|
|
|
|
# Aggregate the datasets
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|
aggregate_datasets(
|
|
repo_ids=[ds_0.repo_id, ds_1.repo_id],
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|
roots=[ds_0.root, ds_1.root],
|
|
aggr_repo_id=f"{DUMMY_REPO_ID}_image_aggr",
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|
aggr_root=tmp_path / "image_aggr",
|
|
)
|
|
|
|
# Load the aggregated dataset
|
|
with (
|
|
patch("lerobot.datasets.dataset_metadata.get_safe_version") as mock_get_safe_version,
|
|
patch("lerobot.datasets.dataset_metadata.snapshot_download") as mock_snapshot_download,
|
|
):
|
|
mock_get_safe_version.return_value = "v3.0"
|
|
mock_snapshot_download.return_value = str(tmp_path / "image_aggr")
|
|
aggr_ds = LeRobotDataset(f"{DUMMY_REPO_ID}_image_aggr", root=tmp_path / "image_aggr")
|
|
|
|
# Verify aggregated dataset has image keys
|
|
assert len(aggr_ds.meta.image_keys) > 0, "Aggregated dataset should have image keys"
|
|
assert aggr_ds.meta.image_keys == ds_0.meta.image_keys, "Image keys should match source datasets"
|
|
|
|
# Run standard aggregation assertions
|
|
expected_total_episodes = ds_0_num_episodes + ds_1_num_episodes
|
|
expected_total_frames = ds_0_num_frames + ds_1_num_frames
|
|
|
|
assert_episode_and_frame_counts(aggr_ds, expected_total_episodes, expected_total_frames)
|
|
assert_dataset_content_integrity(aggr_ds, ds_0, ds_1)
|
|
assert_metadata_consistency(aggr_ds, ds_0, ds_1)
|
|
assert_episode_indices_updated_correctly(aggr_ds, ds_0, ds_1)
|
|
|
|
# Image-specific assertions
|
|
assert_image_schema_preserved(aggr_ds)
|
|
assert_image_frames_integrity(aggr_ds, ds_0, ds_1)
|
|
assert_depth_keys_preserved(aggr_ds, ds_0, ds_1)
|
|
|
|
# Verify images can be accessed and have correct shape
|
|
sample_item = aggr_ds[0]
|
|
for image_key in aggr_ds.meta.image_keys:
|
|
img = sample_item[image_key]
|
|
assert isinstance(img, torch.Tensor), f"Image {image_key} should be a tensor"
|
|
assert img.dim() == 3, f"Image {image_key} should have 3 dimensions (C, H, W)"
|
|
assert img.shape[0] == 3, f"Image {image_key} should have 3 channels"
|
|
|
|
assert_dataset_iteration_works(aggr_ds)
|
|
|
|
|
|
def test_aggregate_already_merged_dataset(tmp_path, lerobot_dataset_factory):
|
|
"""Regression test for aggregating a dataset that is itself a result of a previous merge.
|
|
|
|
This test reproduces the bug where merging datasets with multiple parquet files
|
|
(e.g., from a previous merge with file rotation) would cause FileNotFoundError
|
|
because metadata file indices were incorrectly preserved instead of being mapped
|
|
to their actual destination files.
|
|
|
|
The fix adds src_to_dst tracking in aggregate_data() to correctly map source
|
|
file indices to destination file indices.
|
|
"""
|
|
# Step 1: Create datasets A and B
|
|
ds_a = lerobot_dataset_factory(
|
|
root=tmp_path / "ds_a",
|
|
repo_id=f"{DUMMY_REPO_ID}_a",
|
|
total_episodes=4,
|
|
total_frames=200,
|
|
)
|
|
ds_b = lerobot_dataset_factory(
|
|
root=tmp_path / "ds_b",
|
|
repo_id=f"{DUMMY_REPO_ID}_b",
|
|
total_episodes=4,
|
|
total_frames=200,
|
|
)
|
|
|
|
# Step 2: Merge A+B into AB with small file size to force multiple files
|
|
aggregate_datasets(
|
|
repo_ids=[ds_a.repo_id, ds_b.repo_id],
|
|
roots=[ds_a.root, ds_b.root],
|
|
aggr_repo_id=f"{DUMMY_REPO_ID}_ab",
|
|
aggr_root=tmp_path / "ds_ab",
|
|
data_files_size_in_mb=0.01, # Force file rotation
|
|
)
|
|
|
|
with (
|
|
patch("lerobot.datasets.dataset_metadata.get_safe_version") as mock_get_safe_version,
|
|
patch("lerobot.datasets.dataset_metadata.snapshot_download") as mock_snapshot_download,
|
|
):
|
|
mock_get_safe_version.return_value = "v3.0"
|
|
mock_snapshot_download.return_value = str(tmp_path / "ds_ab")
|
|
ds_ab = LeRobotDataset(f"{DUMMY_REPO_ID}_ab", root=tmp_path / "ds_ab")
|
|
|
|
# Verify AB has multiple data files (file rotation occurred)
|
|
ab_data_files = list((tmp_path / "ds_ab" / "data").rglob("*.parquet"))
|
|
assert len(ab_data_files) > 1, "First merge should create multiple parquet files"
|
|
|
|
# Step 3: Create dataset C
|
|
ds_c = lerobot_dataset_factory(
|
|
root=tmp_path / "ds_c",
|
|
repo_id=f"{DUMMY_REPO_ID}_c",
|
|
total_episodes=2,
|
|
total_frames=100,
|
|
)
|
|
|
|
# Step 4: Merge AB+C into final - THIS IS WHERE THE BUG OCCURRED
|
|
aggregate_datasets(
|
|
repo_ids=[ds_ab.repo_id, ds_c.repo_id],
|
|
roots=[ds_ab.root, ds_c.root],
|
|
aggr_repo_id=f"{DUMMY_REPO_ID}_abc",
|
|
aggr_root=tmp_path / "ds_abc",
|
|
)
|
|
|
|
with (
|
|
patch("lerobot.datasets.dataset_metadata.get_safe_version") as mock_get_safe_version,
|
|
patch("lerobot.datasets.dataset_metadata.snapshot_download") as mock_snapshot_download,
|
|
):
|
|
mock_get_safe_version.return_value = "v3.0"
|
|
mock_snapshot_download.return_value = str(tmp_path / "ds_abc")
|
|
ds_abc = LeRobotDataset(f"{DUMMY_REPO_ID}_abc", root=tmp_path / "ds_abc")
|
|
|
|
# Step 5: Verify all data files referenced in metadata actually exist
|
|
for ep_idx in range(ds_abc.num_episodes):
|
|
data_file_path = ds_abc.root / ds_abc.meta.get_data_file_path(ep_idx)
|
|
assert data_file_path.exists(), (
|
|
f"Episode {ep_idx} references non-existent file: {data_file_path}\n"
|
|
"This indicates the src_to_dst mapping fix is not working correctly."
|
|
)
|
|
|
|
# Step 6: Verify we can iterate through the entire dataset without FileNotFoundError
|
|
expected_episodes = ds_a.num_episodes + ds_b.num_episodes + ds_c.num_episodes
|
|
expected_frames = ds_a.num_frames + ds_b.num_frames + ds_c.num_frames
|
|
|
|
assert ds_abc.num_episodes == expected_episodes
|
|
assert ds_abc.num_frames == expected_frames
|
|
|
|
# This would raise FileNotFoundError before the fix
|
|
assert_dataset_iteration_works(ds_abc)
|