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* Add normalization processor and related components - Introduced `NormalizationProcessor` to handle both observation normalization and action unnormalization. - Added `ObservationNormalizer` and `ActionUnnormalizer` classes for specific normalization tasks. - Updated `__init__.py` to include the new `NormalizationProcessor` in the module exports. - Enhanced `ObservationProcessor` with registration in the `ProcessorStepRegistry` for better modularity. - Created `RenameProcessor` for renaming keys in observations, improving flexibility in data processing. * [pre-commit.ci] auto fixes from pre-commit.com hooks for more information, see https://pre-commit.ci * Enhance processing architecture with new components - Added `RenameProcessor` to facilitate key renaming in observations, improving data handling flexibility. - Updated `__init__.py` to include `RenameProcessor` in module exports. - Refactored `NormalizationProcessor` and `ObservationNormalizer` to use `rsplit` for better key handling. - Introduced comprehensive tests for `NormalizationProcessor` and `RenameProcessor` to ensure functionality and robustness. * chore (docs): add docstring for processor * fix (test): test factory * fix(test): policies * Update tests/processor/test_observation_processor.py Co-authored-by: Copilot <175728472+Copilot@users.noreply.github.com> Signed-off-by: Adil Zouitine <adilzouitinegm@gmail.com> * chore(test): add suggestion made by copilot regarding numpy test * fix(test): import issue * Refactor normalization components and update tests - Renamed `ObservationNormalizer` to `NormalizerProcessor` and `ActionUnnormalizer` to `UnnormalizerProcessor` for clarity. - Consolidated normalization logic for both observations and actions into `NormalizerProcessor` and `UnnormalizerProcessor`. - Updated tests to reflect the new class names and ensure proper functionality of normalization and unnormalization processes. - Enhanced handling of missing statistics in normalization processes. * chore (docstrin):Improve docstring for NormalizerProcessor * feat (device processor): Implement device processor * chore (batch handling): Enhance processing components with batch conversion utilities * [pre-commit.ci] auto fixes from pre-commit.com hooks for more information, see https://pre-commit.ci * fix(test): linting issue * chore (output format): improves output format * chore (type): add typing for multiprocess envs * feat (overrides): Implement support for loading processors with parameter overrides - Added the ability to provide non-serializable objects when loading processors from saved configurations using the `overrides` parameter. - Enhanced error handling for invalid override keys and instantiation errors. - Updated documentation and examples to illustrate the usage of overrides for both registered and unregistered steps. - Added comprehensive tests to validate the new functionality and ensure backward compatibility. * chore(normalization): addressing comments from copilot * chore(learner): nit comment from copilot * feat(pipeline): Enhance step_through method to support both tuple and dict inputs * refactor(pipeline): Simplify observation and padding data handling in batch transitions * Apply suggestions from code review Co-authored-by: Simon Alibert <75076266+aliberts@users.noreply.github.com> Signed-off-by: Adil Zouitine <adilzouitinegm@gmail.com> * [pre-commit.ci] auto fixes from pre-commit.com hooks for more information, see https://pre-commit.ci * refactor(pipeline): Introduce ComplementaryDataProcessor for handling complementary data in transitions * fix(ci): temporary fix on dataset deps version * feat(processors): Introduce processors for various policy types - Added `make_processor` function to create processor instances for different policy types, including `tdmpc`, `diffusion`, `act`, `vqbet`, `pi0`, `pi0fast`, `sac`, and `reward_classifier`. - Implemented corresponding processor files for each policy type, encapsulating normalization and unnormalization steps. - Updated existing policies to remove direct normalization dependencies, enhancing modularity and clarity. - Enhanced test coverage to validate the integration of new processors with existing policy configurations. * refactor(learner): Remove normalization from cached image features retrieval - Simplified the retrieval of observation features by removing the normalization step from the `get_cached_image_features` method calls. - This change enhances clarity and aligns with the recent updates to policy processors. * refactor(policies): Remove unnormalization step from action predictions - Eliminated the unnormalization of actions in both `TDMPCPolicy` and `VQBeTPolicy` classes to streamline action prediction. - This change improves code clarity and aligns with recent updates to policy processors. * feat(train): Integrate preprocessor into training pipeline * refactor(train): Update preprocessor initialization to include dataset statistics * refactor(policies): Enhance processor creation and add NaN detection hook * refactor(train): Update memory pinning logic for mps compatibility * feat: initial commit phone teleop * ugly delta control * use quaternion * Refactor observation preprocessing to use a modular pipeline system - Introduced `RobotPipeline` and `ObservationProcessor` for handling observation transformations. - Updated `preprocess_observation` to maintain backward compatibility while leveraging the new pipeline. - Added tests for the new processing components and ensured they match the original functionality. - Removed hardcoded logic in favor of a more flexible, composable architecture. * [pre-commit.ci] auto fixes from pre-commit.com hooks for more information, see https://pre-commit.ci * Refactor observation processing and improve modularity - Updated `ObservationProcessor` to enhance the modular design for processing observations. - Cleaned up imports and improved code readability by removing unnecessary lines and comments. - Ensured backward compatibility while integrating new processing components. - Added tests to validate the functionality of the updated processing architecture. * Remove redundant tests for None observation and serialization methods in `test_observation_processor.py` to streamline the test suite and improve maintainability. * Refactor processing architecture to use RobotProcessor - Replaced instances of RobotPipeline with RobotProcessor across the codebase for improved modularity and clarity. - Introduced ProcessorStepRegistry for better management of processing steps. - Updated relevant documentation and tests to reflect the new processing structure. - Enhanced the save/load functionality to support the new processor design. - Added a model card template for RobotProcessor to facilitate sharing and documentation. * Add RobotProcessor tutorial to documentation - Introduced a new tutorial on using RobotProcessor for preprocessing robot data. - Added a section in the table of contents for easy navigation to the new tutorial. - The tutorial covers key concepts, real-world scenarios, and practical examples for effective use of the RobotProcessor pipeline. * [pre-commit.ci] auto fixes from pre-commit.com hooks for more information, see https://pre-commit.ci * Add normalization processor and related components - Introduced `NormalizationProcessor` to handle both observation normalization and action unnormalization. - Added `ObservationNormalizer` and `ActionUnnormalizer` classes for specific normalization tasks. - Updated `__init__.py` to include the new `NormalizationProcessor` in the module exports. - Enhanced `ObservationProcessor` with registration in the `ProcessorStepRegistry` for better modularity. - Created `RenameProcessor` for renaming keys in observations, improving flexibility in data processing. * [pre-commit.ci] auto fixes from pre-commit.com hooks for more information, see https://pre-commit.ci * Enhance processing architecture with new components - Added `RenameProcessor` to facilitate key renaming in observations, improving data handling flexibility. - Updated `__init__.py` to include `RenameProcessor` in module exports. - Refactored `NormalizationProcessor` and `ObservationNormalizer` to use `rsplit` for better key handling. - Introduced comprehensive tests for `NormalizationProcessor` and `RenameProcessor` to ensure functionality and robustness. * chore (docs): add docstring for processor * fix (test): test factory * fix(test): policies * Update tests/processor/test_observation_processor.py Co-authored-by: Copilot <175728472+Copilot@users.noreply.github.com> Signed-off-by: Adil Zouitine <adilzouitinegm@gmail.com> * chore(test): add suggestion made by copilot regarding numpy test * fix(test): import issue * Refactor normalization components and update tests - Renamed `ObservationNormalizer` to `NormalizerProcessor` and `ActionUnnormalizer` to `UnnormalizerProcessor` for clarity. - Consolidated normalization logic for both observations and actions into `NormalizerProcessor` and `UnnormalizerProcessor`. - Updated tests to reflect the new class names and ensure proper functionality of normalization and unnormalization processes. - Enhanced handling of missing statistics in normalization processes. * chore (docstrin):Improve docstring for NormalizerProcessor * feat (device processor): Implement device processor * chore (batch handling): Enhance processing components with batch conversion utilities * [pre-commit.ci] auto fixes from pre-commit.com hooks for more information, see https://pre-commit.ci * fix(test): linting issue * chore (output format): improves output format * chore (type): add typing for multiprocess envs * feat (overrides): Implement support for loading processors with parameter overrides - Added the ability to provide non-serializable objects when loading processors from saved configurations using the `overrides` parameter. - Enhanced error handling for invalid override keys and instantiation errors. - Updated documentation and examples to illustrate the usage of overrides for both registered and unregistered steps. - Added comprehensive tests to validate the new functionality and ensure backward compatibility. * chore(normalization): addressing comments from copilot * chore(learner): nit comment from copilot * feat(pipeline): Enhance step_through method to support both tuple and dict inputs * refactor(pipeline): Simplify observation and padding data handling in batch transitions * Apply suggestions from code review Co-authored-by: Simon Alibert <75076266+aliberts@users.noreply.github.com> Signed-off-by: Adil Zouitine <adilzouitinegm@gmail.com> * [pre-commit.ci] auto fixes from pre-commit.com hooks for more information, see https://pre-commit.ci * refactor(pipeline): Introduce ComplementaryDataProcessor for handling complementary data in transitions * [pre-commit.ci] auto fixes from pre-commit.com hooks for more information, see https://pre-commit.ci * refactor(pipeline): Transition from tuple to dictionary format for EnvTransition - Updated the EnvTransition structure to use a dictionary format instead of a tuple, enhancing readability and maintainability. - Replaced instances of TransitionIndex with TransitionKey for accessing transition components. - Adjusted related processing functions and tests to accommodate the new dictionary format, ensuring consistent handling of transitions across the codebase. * refactor(observation_processor): Improve observation processing by using constants and simplifying pixel handling - Introduced constants for observation keys to enhance readability. - Streamlined the handling of the "pixels" key by copying observations first and processing images more clearly. - Updated the environment state and agent position assignments to use the new constants, improving maintainability. * feat(pipeline): Add hook unregistration functionality and enhance documentation - Implemented methods to unregister before, after, and reset hooks in the RobotProcessor class, allowing for more flexible hook management. - Enhanced documentation to clarify hook execution semantics and the implications of modifying transitions within hooks. - Added comprehensive tests to verify the correct behavior of hook registration and unregistration, including error handling for non-existent hooks. * refactor(pipeline): Clarify hook behavior and improve documentation - Updated the RobotProcessor class to ensure hooks are strictly for observation and do not modify transitions, enhancing clarity and maintainability. - Refactored hook registration methods to reflect the new behavior, ensuring they accept only functions that do not return modified transitions. - Enhanced documentation to clearly outline the purpose of hooks and their execution semantics. - Added tests to verify that hooks are not executed during the step_through method while ensuring they function correctly during the __call__ method. * feat(pipeline): Add __repr__ method to RobotProcessor for improved readability - Implemented a __repr__ method in the RobotProcessor class to provide a clear string representation of the processor, including step names and optional parameters like name and seed. - Added comprehensive tests to validate the __repr__ output for various scenarios, including empty processors, single and multiple steps, custom names, and seed values. - Ensured that the representation handles long lists of steps with truncation for better readability. * chore(pipeline): Move _CFG_NAME along other class member * refactor(pipeline): Utilize get_safe_torch_device for device assignment - Replaced direct torch.device instantiation with get_safe_torch_device to ensure safe device handling. - This change enhances code readability and maintains consistency in device management across the RobotProcessor class. * refactor(pipeline): Enhance state filename generation and profiling method - Updated state filename generation to use the registry name when available, improving clarity in saved files. - Modified the profile_steps method to include a warmup_runs parameter, allowing for more controlled performance profiling. - Ensured consistent conditions during profiling by deep copying transitions for each run, enhancing accuracy in timing results. * chore(doc): address pip install commant lerobot that not exist yet * feat(pipeline): Enhance configuration filename handling and state file naming - Introduced support for custom configuration filenames in the `save_pretrained` method, allowing users to specify a filename instead of the default. - Improved state file naming to include step indices, preventing conflicts when multiple processors of the same type are saved. - Added automatic detection for configuration files when loading from a directory, with error handling for multiple files. - Updated tests to validate new features, including custom filenames and automatic config detection. * refactor(pipeline): Improve state file naming conventions for clarity and uniqueness - Enhanced state file naming to include the processor's sanitized name, ensuring uniqueness when multiple processors are saved in the same directory. - Updated tests to reflect changes in state file naming, verifying that filenames now include the processor name and step indices to prevent conflicts. - Added a new test to validate state file naming when using multiple processors, ensuring distinct filenames for each processor's state files. * docs(pipeline): Add clarification for repo name sanitization process * feat(processors): Introduce processors for various policy types - Added `make_processor` function to create processor instances for different policy types, including `tdmpc`, `diffusion`, `act`, `vqbet`, `pi0`, `pi0fast`, `sac`, and `reward_classifier`. - Implemented corresponding processor files for each policy type, encapsulating normalization and unnormalization steps. - Updated existing policies to remove direct normalization dependencies, enhancing modularity and clarity. - Enhanced test coverage to validate the integration of new processors with existing policy configurations. * refactor(learner): Remove normalization from cached image features retrieval - Simplified the retrieval of observation features by removing the normalization step from the `get_cached_image_features` method calls. - This change enhances clarity and aligns with the recent updates to policy processors. * refactor(policies): Remove unnormalization step from action predictions - Eliminated the unnormalization of actions in both `TDMPCPolicy` and `VQBeTPolicy` classes to streamline action prediction. - This change improves code clarity and aligns with recent updates to policy processors. * feat(train): Integrate preprocessor into training pipeline * refactor(train): Update preprocessor initialization to include dataset statistics * refactor(policies): Enhance processor creation and add NaN detection hook * feat(record): Integrate RobotProcessor into recording loop and update policy handling - Added support for RobotProcessor in the record_loop function to enhance data processing capabilities. - Updated the logic to reset both policy and processor when provided, ensuring proper state management. - Modified action prediction to utilize the processor, improving the overall functionality of the recording process. - Adjusted the save_checkpoint function to include preprocessor state saving, enhancing checkpointing capabilities. * feat(migration): Add script for migrating policy models with normalization layers * [pre-commit.ci] auto fixes from pre-commit.com hooks for more information, see https://pre-commit.ci * [pre-commit.ci] auto fixes from pre-commit.com hooks for more information, see https://pre-commit.ci * feat(migrate): Enhance migration script to create preprocessor and postprocessor for policy models - Updated the migration script to generate both a preprocessor and a postprocessor, improving the handling of normalization for training and inference. - Added functionality to convert features to PolicyFeature objects, ensuring compatibility with the new processor architecture. - Refined the extraction and removal of normalization statistics and layers, streamlining the migration process. - Improved error handling for missing mandatory configuration fields during model instantiation. * feat(migrate): Add model card generation and saving to migration script - Implemented functionality to generate and save a model card for the migrated model, including metadata such as dataset repository ID, license, and tags. - Enhanced the script to push the model card to the hub if requested, improving model documentation and accessibility. - Refactored the saving process to ensure the model card is saved locally and uploaded correctly when pushing to the hub. * feat(processor): Introduce ToBatchProcessor for handling observation batching - Added ToBatchProcessor to ensure observations have proper batch dimensions for model processing. - Implemented functionality to add batch dimensions to state and image observations as needed. - Created comprehensive unit tests to validate the processor's behavior with various tensor dimensions and types. - Ensured compatibility with existing transition keys and maintained the integrity of non-observation data. * feat(processors): Add ToBatchProcessor to multiple policy processors - Integrated ToBatchProcessor into various policy processors to handle observation batching. - Updated make functions for act, diffusion, pi0, pi0fast, sac, smolvla, tdmpc, and vqbet processors to include the new batching functionality. - Ensured consistency across all processor implementations for improved data handling. * refactor(factory): Remove unused imports and NaN detection hook from processor creation * feat(batch_processor): Enhance ToBatchProcessor to handle action batching - Updated ToBatchProcessor to add batch dimensions to actions in addition to observations. - Implemented separate methods for processing observations and actions, improving code readability. - Added comprehensive unit tests to validate action batching functionality across various tensor dimensions and types. * [pre-commit.ci] auto fixes from pre-commit.com hooks for more information, see https://pre-commit.ci * feat(factory): Enhance make_processor to support preprocessor and postprocessor configuration - Introduced ProcessorConfigKwargs TypedDict for better type safety in processor configuration. - Updated make_processor to accept preprocessor and postprocessor configuration filenames, improving flexibility in processor instantiation. - Refactored the loading of pretrained processors to utilize the new configuration options. * refactor(factory): Clean up imports in factory.py - Removed unused import of IdentityProcessor to streamline the code. * feat(migrate): Extend load_model_from_hub to include train configuration - Updated load_model_from_hub to return the train configuration alongside the model state_dict and config. - Modified main function to handle the additional train configuration when loading models from both the hub and local paths. - Adjusted dataset_repo_id extraction to utilize the train configuration for improved accuracy. * refactor(record): Rename processor parameters and update processing logic - Renamed `processor` to `preprocessor` and added `postprocessor` parameter for clarity. - Updated the `record_loop` and `predict_action` functions to utilize the new preprocessor and postprocessor, enhancing the processing flow. - Ensured compatibility with existing functionality while improving code readability. * feat(batch_processor): Add task field processing to ToBatchProcessor - Enhanced ToBatchProcessor to wrap string tasks in a list, adding batch dimensions for compatibility with model inference. - Implemented a new method for processing complementary data, ensuring that task values are correctly handled as either strings or lists of strings. - Added comprehensive unit tests to validate task processing, including edge cases and in-place mutation of complementary data. * feat(normalization): Implement IDENTITY mode for normalization and unnormalization - Enhanced NormalizerProcessor and UnnormalizerProcessor to support IDENTITY mode, allowing features to bypass normalization when specified. - Updated processing logic to check normalization modes and handle missing statistics gracefully. - Added comprehensive unit tests to validate IDENTITY mode functionality for both observations and actions, ensuring correct behavior across various scenarios. - Improved error handling for unsupported normalization modes. * fix(rebase): remove residual normalization layer: * refactor(diffusion): remove normalization layer from input processing * Add debug + calib * cleanup * Add pipeline * fix int * Add record example * nit * Add feature contract to pipelinestep and pipeline * Add tests * Add processor tests * PR feedback * encorperate pr feedback * type in doc * oops * cleaned up steps and integrated pipeline with feature_contract * refactor steps and robot to pipeline * cleanup pipeline * cleanup code further * make it run * feat(processors): Introduce processors for various policy types - Added `make_processor` function to create processor instances for different policy types, including `tdmpc`, `diffusion`, `act`, `vqbet`, `pi0`, `pi0fast`, `sac`, and `reward_classifier`. - Implemented corresponding processor files for each policy type, encapsulating normalization and unnormalization steps. - Updated existing policies to remove direct normalization dependencies, enhancing modularity and clarity. - Enhanced test coverage to validate the integration of new processors with existing policy configurations. * refactor(learner): Remove normalization from cached image features retrieval - Simplified the retrieval of observation features by removing the normalization step from the `get_cached_image_features` method calls. - This change enhances clarity and aligns with the recent updates to policy processors. * refactor(policies): Remove unnormalization step from action predictions - Eliminated the unnormalization of actions in both `TDMPCPolicy` and `VQBeTPolicy` classes to streamline action prediction. - This change improves code clarity and aligns with recent updates to policy processors. * feat(train): Integrate preprocessor into training pipeline * refactor(train): Update preprocessor initialization to include dataset statistics * refactor(policies): Enhance processor creation and add NaN detection hook * feat(record): Integrate RobotProcessor into recording loop and update policy handling - Added support for RobotProcessor in the record_loop function to enhance data processing capabilities. - Updated the logic to reset both policy and processor when provided, ensuring proper state management. - Modified action prediction to utilize the processor, improving the overall functionality of the recording process. - Adjusted the save_checkpoint function to include preprocessor state saving, enhancing checkpointing capabilities. * feat(migration): Add script for migrating policy models with normalization layers * [pre-commit.ci] auto fixes from pre-commit.com hooks for more information, see https://pre-commit.ci * [pre-commit.ci] auto fixes from pre-commit.com hooks for more information, see https://pre-commit.ci * feat(migrate): Enhance migration script to create preprocessor and postprocessor for policy models - Updated the migration script to generate both a preprocessor and a postprocessor, improving the handling of normalization for training and inference. - Added functionality to convert features to PolicyFeature objects, ensuring compatibility with the new processor architecture. - Refined the extraction and removal of normalization statistics and layers, streamlining the migration process. - Improved error handling for missing mandatory configuration fields during model instantiation. * feat(migrate): Add model card generation and saving to migration script - Implemented functionality to generate and save a model card for the migrated model, including metadata such as dataset repository ID, license, and tags. - Enhanced the script to push the model card to the hub if requested, improving model documentation and accessibility. - Refactored the saving process to ensure the model card is saved locally and uploaded correctly when pushing to the hub. * feat(processor): Introduce ToBatchProcessor for handling observation batching - Added ToBatchProcessor to ensure observations have proper batch dimensions for model processing. - Implemented functionality to add batch dimensions to state and image observations as needed. - Created comprehensive unit tests to validate the processor's behavior with various tensor dimensions and types. - Ensured compatibility with existing transition keys and maintained the integrity of non-observation data. * feat(processors): Add ToBatchProcessor to multiple policy processors - Integrated ToBatchProcessor into various policy processors to handle observation batching. - Updated make functions for act, diffusion, pi0, pi0fast, sac, smolvla, tdmpc, and vqbet processors to include the new batching functionality. - Ensured consistency across all processor implementations for improved data handling. * refactor(factory): Remove unused imports and NaN detection hook from processor creation * feat(batch_processor): Enhance ToBatchProcessor to handle action batching - Updated ToBatchProcessor to add batch dimensions to actions in addition to observations. - Implemented separate methods for processing observations and actions, improving code readability. - Added comprehensive unit tests to validate action batching functionality across various tensor dimensions and types. * [pre-commit.ci] auto fixes from pre-commit.com hooks for more information, see https://pre-commit.ci * feat(factory): Enhance make_processor to support preprocessor and postprocessor configuration - Introduced ProcessorConfigKwargs TypedDict for better type safety in processor configuration. - Updated make_processor to accept preprocessor and postprocessor configuration filenames, improving flexibility in processor instantiation. - Refactored the loading of pretrained processors to utilize the new configuration options. * refactor(factory): Clean up imports in factory.py - Removed unused import of IdentityProcessor to streamline the code. * feat(migrate): Extend load_model_from_hub to include train configuration - Updated load_model_from_hub to return the train configuration alongside the model state_dict and config. - Modified main function to handle the additional train configuration when loading models from both the hub and local paths. - Adjusted dataset_repo_id extraction to utilize the train configuration for improved accuracy. * refactor(record): Rename processor parameters and update processing logic - Renamed `processor` to `preprocessor` and added `postprocessor` parameter for clarity. - Updated the `record_loop` and `predict_action` functions to utilize the new preprocessor and postprocessor, enhancing the processing flow. - Ensured compatibility with existing functionality while improving code readability. * feat(batch_processor): Add task field processing to ToBatchProcessor - Enhanced ToBatchProcessor to wrap string tasks in a list, adding batch dimensions for compatibility with model inference. - Implemented a new method for processing complementary data, ensuring that task values are correctly handled as either strings or lists of strings. - Added comprehensive unit tests to validate task processing, including edge cases and in-place mutation of complementary data. * feat(normalization): Implement IDENTITY mode for normalization and unnormalization - Enhanced NormalizerProcessor and UnnormalizerProcessor to support IDENTITY mode, allowing features to bypass normalization when specified. - Updated processing logic to check normalization modes and handle missing statistics gracefully. - Added comprehensive unit tests to validate IDENTITY mode functionality for both observations and actions, ensuring correct behavior across various scenarios. - Improved error handling for unsupported normalization modes. * fix(rebase): remove residual normalization layer: * refactor(diffusion): remove normalization layer from input processing * refactor(normalization): Remove unused state dict transformation methods and streamline imports - Eliminated the _transform_state_dict_keys and _load_as_safetensor methods from PI0Policy, simplifying the model loading process. - Cleaned up imports in modeling_pi0.py by removing log_model_loading_keys and init_logging. - Updated TDMPCPolicy and VQBeTPolicy to handle action removal from batches during offline evaluation. - Introduced hotswap_stats function in normalize_processor.py to update normalization statistics dynamically, with corresponding tests to ensure functionality. * refactor(normalization): Clean up imports in normalize_processor.py * feat(batch_processor): Add feature_contract method to ToBatchProcessor - Introduced feature_contract method that returns features without modification, maintaining the no-op behavior of the processor. - This addition enhances the flexibility of the ToBatchProcessor for future feature processing needs. * fix(dependencies): Update transformers dependency constraint to allow only versions up to 4.52.0 * [pre-commit.ci] auto fixes from pre-commit.com hooks for more information, see https://pre-commit.ci * feat(tokenizer): Introduce TokenizerProcessor for text tokenization - Added TokenizerProcessor class to handle tokenization of task strings using Hugging Face's AutoTokenizer. - Supports both string and list inputs, with customizable parameters for task key, output key, and tokenization settings. - Implemented comprehensive unit tests to validate functionality, including handling of various input scenarios and integration with RobotProcessor. - Updated types.py to include LANGUAGE feature type and modified __init__.py to register the new processor. * feat(language): Enhance language processing in TokenizerProcessor - Added OBS_LANGUAGE constant to define the observation language key. - Updated TokenizerProcessor to store tokenized task data in the observation dictionary, ensuring compatibility with the new language feature. - Introduced Pi0NewLineProcessor to append newlines to tasks for proper tokenization. - Modified tests to validate the integration of language tokens and attention masks in the observation structure. * feat(tokenizer): Add padding configuration to TokenizerProcessor - Introduced `padding_side` parameter to the TokenizerProcessor for customizable padding direction. - Updated the `make_pi0_processor` function to include the new padding configuration. - Enhanced unit tests to validate the functionality of the `padding_side` parameter in various scenarios. * feat(processor): Add state management methods to Pi0NewLineProcessor * feat(normalization): Track normalization and unnormalization info in complementary data - Updated NormalizerProcessor and UnnormalizerProcessor to accept additional parameters for tracking normalization modes. - Enhanced the __call__ methods to store normalization and unnormalization information in the complementary data of transitions. - Added unit tests to verify the correct tracking of normalization info, including scenarios with missing stats and selective normalization keys. * feat(factory): Add preprocessor and postprocessor overrides to ProcessorConfigKwargs - Updated ProcessorConfigKwargs to include optional overrides for preprocessor and postprocessor configurations. - Enhanced the make_processor function to utilize the new overrides, allowing for more flexible processor initialization. * feat(processors): Integrate RenameProcessor into various processor configurations - Added RenameProcessor to the input steps of multiple processor functions, including make_act_processor, make_diffusion_processor, make_pi0_processor, make_sac_processor, make_tdmpc_processor, make_vqbet_processor, and make_smolvla_processor. - Consolidated normalization features from input and output into a single NormalizerProcessor for improved efficiency. - Updated the input steps to ensure compatibility with the new RenameProcessor integration. * Do some todos and cleanup * change feature_contract to dataset_features * use one method for conversion pipeline output to add_frame dict and use base processors where possible * Add back in and use record_loop * update todo * rename to_dataset_frame * feat(smolvla): Refactor language processing and introduce new line processor (#1658) - Removed the prepare_language method and directly accessed language tokens and masks from the batch using the OBS_LANGUAGE constant. - Added SmolVLANewLineProcessor to ensure tasks end with a newline, enhancing tokenization compatibility. - Updated the make_smolvla_processor function to include the new line processor and tokenizer processor for improved input handling. * feat(processors): Integrate DeviceProcessor into multiple processor configurations - Added DeviceProcessor to the input and output steps of various processor functions, including make_act_processor, make_diffusion_processor, make_pi0_processor, make_pi0fast_processor, make_sac_processor, make_tdmpc_processor, make_vqbet_processor, and make_smolvla_processor. - Enhanced the DeviceProcessor class with state management methods and ensured compatibility with existing processor pipelines. - Introduced unit tests for DeviceProcessor to validate functionality across different scenarios, including CPU and CUDA operations. * [pre-commit.ci] auto fixes from pre-commit.com hooks for more information, see https://pre-commit.ci * fix * fix reference frame * refactor(pipeline): Remove to() method for device management - Eliminated the to() method from RobotProcessor, which was responsible for moving tensor states to specified devices. - Removed associated unit tests that validated the functionality of the to() method across various scenarios. - Streamlined the pipeline code by focusing on other device management strategies. * feat(processor): Enhance DeviceProcessor with float dtype conversion - Added support for optional float dtype conversion in DeviceProcessor, allowing tensors to be converted to specified floating-point types while preserving non-float types. - Implemented validation for float dtype input and updated the processor's configuration methods to include float dtype. - Refactored tensor processing logic to streamline device movement and dtype conversion. - Introduced comprehensive unit tests to validate the new float dtype functionality across various scenarios. * update data visualization * update teleop example * fix record bugs * Add replay * Not code * feature(pipeline): port tokenizer pipeline for VLA (#1645) * feat(tokenizer): Introduce TokenizerProcessor for text tokenization - Added TokenizerProcessor class to handle tokenization of task strings using Hugging Face's AutoTokenizer. - Supports both string and list inputs, with customizable parameters for task key, output key, and tokenization settings. - Implemented comprehensive unit tests to validate functionality, including handling of various input scenarios and integration with RobotProcessor. - Updated types.py to include LANGUAGE feature type and modified __init__.py to register the new processor. * feat(language): Enhance language processing in TokenizerProcessor - Added OBS_LANGUAGE constant to define the observation language key. - Updated TokenizerProcessor to store tokenized task data in the observation dictionary, ensuring compatibility with the new language feature. - Introduced Pi0NewLineProcessor to append newlines to tasks for proper tokenization. - Modified tests to validate the integration of language tokens and attention masks in the observation structure. * feat(tokenizer): Add padding configuration to TokenizerProcessor - Introduced `padding_side` parameter to the TokenizerProcessor for customizable padding direction. - Updated the `make_pi0_processor` function to include the new padding configuration. - Enhanced unit tests to validate the functionality of the `padding_side` parameter in various scenarios. * feat(processor): Add state management methods to Pi0NewLineProcessor * feat(normalization): Track normalization and unnormalization info in complementary data - Updated NormalizerProcessor and UnnormalizerProcessor to accept additional parameters for tracking normalization modes. - Enhanced the __call__ methods to store normalization and unnormalization information in the complementary data of transitions. - Added unit tests to verify the correct tracking of normalization info, including scenarios with missing stats and selective normalization keys. * feat(factory): Add preprocessor and postprocessor overrides to ProcessorConfigKwargs - Updated ProcessorConfigKwargs to include optional overrides for preprocessor and postprocessor configurations. - Enhanced the make_processor function to utilize the new overrides, allowing for more flexible processor initialization. * feat(processors): Integrate RenameProcessor into various processor configurations - Added RenameProcessor to the input steps of multiple processor functions, including make_act_processor, make_diffusion_processor, make_pi0_processor, make_sac_processor, make_tdmpc_processor, make_vqbet_processor, and make_smolvla_processor. - Consolidated normalization features from input and output into a single NormalizerProcessor for improved efficiency. - Updated the input steps to ensure compatibility with the new RenameProcessor integration. * feat(smolvla): Refactor language processing and introduce new line processor (#1658) - Removed the prepare_language method and directly accessed language tokens and masks from the batch using the OBS_LANGUAGE constant. - Added SmolVLANewLineProcessor to ensure tasks end with a newline, enhancing tokenization compatibility. - Updated the make_smolvla_processor function to include the new line processor and tokenizer processor for improved input handling. * feture(policies): add device processor (#1659) * feat(processors): Integrate DeviceProcessor into multiple processor configurations - Added DeviceProcessor to the input and output steps of various processor functions, including make_act_processor, make_diffusion_processor, make_pi0_processor, make_pi0fast_processor, make_sac_processor, make_tdmpc_processor, make_vqbet_processor, and make_smolvla_processor. - Enhanced the DeviceProcessor class with state management methods and ensured compatibility with existing processor pipelines. - Introduced unit tests for DeviceProcessor to validate functionality across different scenarios, including CPU and CUDA operations. * [pre-commit.ci] auto fixes from pre-commit.com hooks for more information, see https://pre-commit.ci * refactor(pipeline): Remove to() method for device management - Eliminated the to() method from RobotProcessor, which was responsible for moving tensor states to specified devices. - Removed associated unit tests that validated the functionality of the to() method across various scenarios. - Streamlined the pipeline code by focusing on other device management strategies. * feat(processor): Enhance DeviceProcessor with float dtype conversion - Added support for optional float dtype conversion in DeviceProcessor, allowing tensors to be converted to specified floating-point types while preserving non-float types. - Implemented validation for float dtype input and updated the processor's configuration methods to include float dtype. - Refactored tensor processing logic to streamline device movement and dtype conversion. - Introduced comprehensive unit tests to validate the new float dtype functionality across various scenarios. * feat(policies): Add new line processors and update module exports * feat(processor): Enhance batch and device processors to handle index and task_index fields - Added logic to ToBatchProcessor for unsqueezing 0D tensors for index and task_index fields, ensuring they are processed as 1D tensors. - Updated DeviceProcessor to process index and task_index fields in complementary data, preserving their tensor types and ensuring non-tensor fields remain unchanged. - Enhanced unit tests to validate the correct handling of index and task_index fields across various scenarios, including device compatibility and dtype preservation. * Add eval script * fix `q_curr` in InverseKinematicsEEToJoints to the IK solution * feat(processors): Introduce processors for various policy types - Added `make_processor` function to create processor instances for different policy types, including `tdmpc`, `diffusion`, `act`, `vqbet`, `pi0`, `pi0fast`, `sac`, and `reward_classifier`. - Implemented corresponding processor files for each policy type, encapsulating normalization and unnormalization steps. - Updated existing policies to remove direct normalization dependencies, enhancing modularity and clarity. - Enhanced test coverage to validate the integration of new processors with existing policy configurations. * refactor(learner): Remove normalization from cached image features retrieval - Simplified the retrieval of observation features by removing the normalization step from the `get_cached_image_features` method calls. - This change enhances clarity and aligns with the recent updates to policy processors. * refactor(policies): Remove unnormalization step from action predictions - Eliminated the unnormalization of actions in both `TDMPCPolicy` and `VQBeTPolicy` classes to streamline action prediction. - This change improves code clarity and aligns with recent updates to policy processors. * feat(train): Integrate preprocessor into training pipeline * refactor(train): Update preprocessor initialization to include dataset statistics * refactor(policies): Enhance processor creation and add NaN detection hook * feat(record): Integrate RobotProcessor into recording loop and update policy handling - Added support for RobotProcessor in the record_loop function to enhance data processing capabilities. - Updated the logic to reset both policy and processor when provided, ensuring proper state management. - Modified action prediction to utilize the processor, improving the overall functionality of the recording process. - Adjusted the save_checkpoint function to include preprocessor state saving, enhancing checkpointing capabilities. * feat(migration): Add script for migrating policy models with normalization layers * [pre-commit.ci] auto fixes from pre-commit.com hooks for more information, see https://pre-commit.ci * [pre-commit.ci] auto fixes from pre-commit.com hooks for more information, see https://pre-commit.ci * feat(migrate): Enhance migration script to create preprocessor and postprocessor for policy models - Updated the migration script to generate both a preprocessor and a postprocessor, improving the handling of normalization for training and inference. - Added functionality to convert features to PolicyFeature objects, ensuring compatibility with the new processor architecture. - Refined the extraction and removal of normalization statistics and layers, streamlining the migration process. - Improved error handling for missing mandatory configuration fields during model instantiation. * feat(migrate): Add model card generation and saving to migration script - Implemented functionality to generate and save a model card for the migrated model, including metadata such as dataset repository ID, license, and tags. - Enhanced the script to push the model card to the hub if requested, improving model documentation and accessibility. - Refactored the saving process to ensure the model card is saved locally and uploaded correctly when pushing to the hub. * feat(processor): Introduce ToBatchProcessor for handling observation batching - Added ToBatchProcessor to ensure observations have proper batch dimensions for model processing. - Implemented functionality to add batch dimensions to state and image observations as needed. - Created comprehensive unit tests to validate the processor's behavior with various tensor dimensions and types. - Ensured compatibility with existing transition keys and maintained the integrity of non-observation data. * feat(processors): Add ToBatchProcessor to multiple policy processors - Integrated ToBatchProcessor into various policy processors to handle observation batching. - Updated make functions for act, diffusion, pi0, pi0fast, sac, smolvla, tdmpc, and vqbet processors to include the new batching functionality. - Ensured consistency across all processor implementations for improved data handling. * refactor(factory): Remove unused imports and NaN detection hook from processor creation * feat(batch_processor): Enhance ToBatchProcessor to handle action batching - Updated ToBatchProcessor to add batch dimensions to actions in addition to observations. - Implemented separate methods for processing observations and actions, improving code readability. - Added comprehensive unit tests to validate action batching functionality across various tensor dimensions and types. * [pre-commit.ci] auto fixes from pre-commit.com hooks for more information, see https://pre-commit.ci * feat(factory): Enhance make_processor to support preprocessor and postprocessor configuration - Introduced ProcessorConfigKwargs TypedDict for better type safety in processor configuration. - Updated make_processor to accept preprocessor and postprocessor configuration filenames, improving flexibility in processor instantiation. - Refactored the loading of pretrained processors to utilize the new configuration options. * refactor(factory): Clean up imports in factory.py - Removed unused import of IdentityProcessor to streamline the code. * feat(migrate): Extend load_model_from_hub to include train configuration - Updated load_model_from_hub to return the train configuration alongside the model state_dict and config. - Modified main function to handle the additional train configuration when loading models from both the hub and local paths. - Adjusted dataset_repo_id extraction to utilize the train configuration for improved accuracy. * refactor(record): Rename processor parameters and update processing logic - Renamed `processor` to `preprocessor` and added `postprocessor` parameter for clarity. - Updated the `record_loop` and `predict_action` functions to utilize the new preprocessor and postprocessor, enhancing the processing flow. - Ensured compatibility with existing functionality while improving code readability. * feat(batch_processor): Add task field processing to ToBatchProcessor - Enhanced ToBatchProcessor to wrap string tasks in a list, adding batch dimensions for compatibility with model inference. - Implemented a new method for processing complementary data, ensuring that task values are correctly handled as either strings or lists of strings. - Added comprehensive unit tests to validate task processing, including edge cases and in-place mutation of complementary data. * feat(normalization): Implement IDENTITY mode for normalization and unnormalization - Enhanced NormalizerProcessor and UnnormalizerProcessor to support IDENTITY mode, allowing features to bypass normalization when specified. - Updated processing logic to check normalization modes and handle missing statistics gracefully. - Added comprehensive unit tests to validate IDENTITY mode functionality for both observations and actions, ensuring correct behavior across various scenarios. - Improved error handling for unsupported normalization modes. * fix(rebase): remove residual normalization layer: * refactor(diffusion): remove normalization layer from input processing * refactor(normalization): Remove unused state dict transformation methods and streamline imports - Eliminated the _transform_state_dict_keys and _load_as_safetensor methods from PI0Policy, simplifying the model loading process. - Cleaned up imports in modeling_pi0.py by removing log_model_loading_keys and init_logging. - Updated TDMPCPolicy and VQBeTPolicy to handle action removal from batches during offline evaluation. - Introduced hotswap_stats function in normalize_processor.py to update normalization statistics dynamically, with corresponding tests to ensure functionality. * refactor(normalization): Clean up imports in normalize_processor.py * feat(batch_processor): Add feature_contract method to ToBatchProcessor - Introduced feature_contract method that returns features without modification, maintaining the no-op behavior of the processor. - This addition enhances the flexibility of the ToBatchProcessor for future feature processing needs. * fix(dependencies): Update transformers dependency constraint to allow only versions up to 4.52.0 * [pre-commit.ci] auto fixes from pre-commit.com hooks for more information, see https://pre-commit.ci * feature(pipeline): port tokenizer pipeline for VLA (#1645) * feat(tokenizer): Introduce TokenizerProcessor for text tokenization - Added TokenizerProcessor class to handle tokenization of task strings using Hugging Face's AutoTokenizer. - Supports both string and list inputs, with customizable parameters for task key, output key, and tokenization settings. - Implemented comprehensive unit tests to validate functionality, including handling of various input scenarios and integration with RobotProcessor. - Updated types.py to include LANGUAGE feature type and modified __init__.py to register the new processor. * feat(language): Enhance language processing in TokenizerProcessor - Added OBS_LANGUAGE constant to define the observation language key. - Updated TokenizerProcessor to store tokenized task data in the observation dictionary, ensuring compatibility with the new language feature. - Introduced Pi0NewLineProcessor to append newlines to tasks for proper tokenization. - Modified tests to validate the integration of language tokens and attention masks in the observation structure. * feat(tokenizer): Add padding configuration to TokenizerProcessor - Introduced `padding_side` parameter to the TokenizerProcessor for customizable padding direction. - Updated the `make_pi0_processor` function to include the new padding configuration. - Enhanced unit tests to validate the functionality of the `padding_side` parameter in various scenarios. * feat(processor): Add state management methods to Pi0NewLineProcessor * feat(normalization): Track normalization and unnormalization info in complementary data - Updated NormalizerProcessor and UnnormalizerProcessor to accept additional parameters for tracking normalization modes. - Enhanced the __call__ methods to store normalization and unnormalization information in the complementary data of transitions. - Added unit tests to verify the correct tracking of normalization info, including scenarios with missing stats and selective normalization keys. * feat(factory): Add preprocessor and postprocessor overrides to ProcessorConfigKwargs - Updated ProcessorConfigKwargs to include optional overrides for preprocessor and postprocessor configurations. - Enhanced the make_processor function to utilize the new overrides, allowing for more flexible processor initialization. * feat(processors): Integrate RenameProcessor into various processor configurations - Added RenameProcessor to the input steps of multiple processor functions, including make_act_processor, make_diffusion_processor, make_pi0_processor, make_sac_processor, make_tdmpc_processor, make_vqbet_processor, and make_smolvla_processor. - Consolidated normalization features from input and output into a single NormalizerProcessor for improved efficiency. - Updated the input steps to ensure compatibility with the new RenameProcessor integration. * feat(smolvla): Refactor language processing and introduce new line processor (#1658) - Removed the prepare_language method and directly accessed language tokens and masks from the batch using the OBS_LANGUAGE constant. - Added SmolVLANewLineProcessor to ensure tasks end with a newline, enhancing tokenization compatibility. - Updated the make_smolvla_processor function to include the new line processor and tokenizer processor for improved input handling. * feture(policies): add device processor (#1659) * feat(processors): Integrate DeviceProcessor into multiple processor configurations - Added DeviceProcessor to the input and output steps of various processor functions, including make_act_processor, make_diffusion_processor, make_pi0_processor, make_pi0fast_processor, make_sac_processor, make_tdmpc_processor, make_vqbet_processor, and make_smolvla_processor. - Enhanced the DeviceProcessor class with state management methods and ensured compatibility with existing processor pipelines. - Introduced unit tests for DeviceProcessor to validate functionality across different scenarios, including CPU and CUDA operations. * [pre-commit.ci] auto fixes from pre-commit.com hooks for more information, see https://pre-commit.ci * refactor(pipeline): Remove to() method for device management - Eliminated the to() method from RobotProcessor, which was responsible for moving tensor states to specified devices. - Removed associated unit tests that validated the functionality of the to() method across various scenarios. - Streamlined the pipeline code by focusing on other device management strategies. * feat(processor): Enhance DeviceProcessor with float dtype conversion - Added support for optional float dtype conversion in DeviceProcessor, allowing tensors to be converted to specified floating-point types while preserving non-float types. - Implemented validation for float dtype input and updated the processor's configuration methods to include float dtype. - Refactored tensor processing logic to streamline device movement and dtype conversion. - Introduced comprehensive unit tests to validate the new float dtype functionality across various scenarios. * feat(policies): Add new line processors and update module exports * feat(processor): Enhance batch and device processors to handle index and task_index fields - Added logic to ToBatchProcessor for unsqueezing 0D tensors for index and task_index fields, ensuring they are processed as 1D tensors. - Updated DeviceProcessor to process index and task_index fields in complementary data, preserving their tensor types and ensuring non-tensor fields remain unchanged. - Enhanced unit tests to validate the correct handling of index and task_index fields across various scenarios, including device compatibility and dtype preservation. * refactor(processors): Standardize processor naming conventions - Updated processor names across various files to use a consistent "robot_preprocessor" and "robot_postprocessor" format. - Modified the make_processor functions in factory, act, diffusion, pi0, pi0fast, sac, smolvla, tdmpc, and vqbet to reflect the new naming scheme. - Enhanced the pipeline configuration to align with the updated processor names, improving clarity and maintainability. * refactor(factory): Update processor configuration and type hints - Changed return type of get_policy_class to type[PreTrainedPolicy] for improved type safety. - Enhanced make_processor function to utilize dataset_stats in processor creation for better flexibility. - Updated ProcessorConfigKwargs to include dataset_stats, allowing for more comprehensive processor configurations. - Streamlined processor initialization by removing unnecessary kwargs and ensuring clarity in processor type handling. * Fix eval and android gripper * add some tests * refactor(factory, pi0fast): Update processor function names and parameters - Renamed make_pi0_processor to make_pi0fast_processor for clarity and consistency. - Updated parameter names in the factory's make_processor function to use pretrained_model_name_or_path instead of source, enhancing readability and alignment with naming conventions. * fix(train.py) push postprocessor with preprocessor - Add preprocesser policy overrides for device and rename_map - Add rename_map to DatasetRecordConfig (record.py) * Cleanup pr * fix more git diff pr issues * add path as type in save_pretrained * small nit * [pre-commit.ci] auto fixes from pre-commit.com hooks for more information, see https://pre-commit.ci * rename test file * fix: make dataset_features/feature_contract is optional * fix tests * Encorperate pr feedback * clean up record.py * add ascii art, fix normal record * remove merge issues * fix merge * remove features * Add feedback PR * fix last 4 tests * remove features check * rename to transform_features * add transform_features * fix lekiwi eval and update eval api example --------- Signed-off-by: Adil Zouitine <adilzouitinegm@gmail.com> Signed-off-by: Pepijn <138571049+pkooij@users.noreply.github.com> Co-authored-by: Adil Zouitine <adilzouitinegm@gmail.com> Co-authored-by: pre-commit-ci[bot] <66853113+pre-commit-ci[bot]@users.noreply.github.com> Co-authored-by: Copilot <175728472+Copilot@users.noreply.github.com> Co-authored-by: Simon Alibert <75076266+aliberts@users.noreply.github.com> Co-authored-by: Michel Aractingi <michel.aractingi@huggingface.co>
886 lines
34 KiB
Python
886 lines
34 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 tempfile
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import pytest
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import torch
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from lerobot.configs.types import FeatureType, PolicyFeature
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from lerobot.processor import DeviceProcessor, RobotProcessor
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from lerobot.processor.pipeline import TransitionKey
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def create_transition(
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observation=None, action=None, reward=None, done=None, truncated=None, info=None, complementary_data=None
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):
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"""Helper function to create a transition dictionary."""
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transition = {}
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if observation is not None:
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transition[TransitionKey.OBSERVATION] = observation
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if action is not None:
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transition[TransitionKey.ACTION] = action
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if reward is not None:
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transition[TransitionKey.REWARD] = reward
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if done is not None:
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transition[TransitionKey.DONE] = done
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if truncated is not None:
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transition[TransitionKey.TRUNCATED] = truncated
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if info is not None:
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transition[TransitionKey.INFO] = info
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if complementary_data is not None:
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transition[TransitionKey.COMPLEMENTARY_DATA] = complementary_data
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return transition
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def test_basic_functionality():
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"""Test basic device processor functionality on CPU."""
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processor = DeviceProcessor(device="cpu")
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# Create a transition with CPU tensors
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observation = {"observation.state": torch.randn(10), "observation.image": torch.randn(3, 224, 224)}
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action = torch.randn(5)
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reward = torch.tensor(1.0)
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done = torch.tensor(False)
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truncated = torch.tensor(False)
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transition = create_transition(
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observation=observation, action=action, reward=reward, done=done, truncated=truncated
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)
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result = processor(transition)
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# Check that all tensors are on CPU
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assert result[TransitionKey.OBSERVATION]["observation.state"].device.type == "cpu"
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assert result[TransitionKey.OBSERVATION]["observation.image"].device.type == "cpu"
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assert result[TransitionKey.ACTION].device.type == "cpu"
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assert result[TransitionKey.REWARD].device.type == "cpu"
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assert result[TransitionKey.DONE].device.type == "cpu"
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assert result[TransitionKey.TRUNCATED].device.type == "cpu"
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@pytest.mark.skipif(not torch.cuda.is_available(), reason="CUDA not available")
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def test_cuda_functionality():
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"""Test device processor functionality on CUDA."""
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processor = DeviceProcessor(device="cuda")
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# Create a transition with CPU tensors
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observation = {"observation.state": torch.randn(10), "observation.image": torch.randn(3, 224, 224)}
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action = torch.randn(5)
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reward = torch.tensor(1.0)
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done = torch.tensor(False)
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truncated = torch.tensor(False)
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transition = create_transition(
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observation=observation, action=action, reward=reward, done=done, truncated=truncated
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)
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result = processor(transition)
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# Check that all tensors are on CUDA
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assert result[TransitionKey.OBSERVATION]["observation.state"].device.type == "cuda"
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assert result[TransitionKey.OBSERVATION]["observation.image"].device.type == "cuda"
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assert result[TransitionKey.ACTION].device.type == "cuda"
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assert result[TransitionKey.REWARD].device.type == "cuda"
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assert result[TransitionKey.DONE].device.type == "cuda"
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assert result[TransitionKey.TRUNCATED].device.type == "cuda"
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@pytest.mark.skipif(not torch.cuda.is_available(), reason="CUDA not available")
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def test_specific_cuda_device():
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"""Test device processor with specific CUDA device."""
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processor = DeviceProcessor(device="cuda:0")
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observation = {"observation.state": torch.randn(10)}
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action = torch.randn(5)
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transition = create_transition(observation=observation, action=action)
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result = processor(transition)
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assert result[TransitionKey.OBSERVATION]["observation.state"].device.type == "cuda"
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assert result[TransitionKey.OBSERVATION]["observation.state"].device.index == 0
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assert result[TransitionKey.ACTION].device.type == "cuda"
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assert result[TransitionKey.ACTION].device.index == 0
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def test_non_tensor_values():
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"""Test that non-tensor values are preserved."""
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processor = DeviceProcessor(device="cpu")
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observation = {
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"observation.state": torch.randn(10),
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"observation.metadata": {"key": "value"}, # Non-tensor data
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"observation.list": [1, 2, 3], # Non-tensor data
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}
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action = torch.randn(5)
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info = {"episode": 1, "step": 42}
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transition = create_transition(observation=observation, action=action, info=info)
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result = processor(transition)
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# Check tensors are processed
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assert isinstance(result[TransitionKey.OBSERVATION]["observation.state"], torch.Tensor)
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assert isinstance(result[TransitionKey.ACTION], torch.Tensor)
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# Check non-tensor values are preserved
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assert result[TransitionKey.OBSERVATION]["observation.metadata"] == {"key": "value"}
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assert result[TransitionKey.OBSERVATION]["observation.list"] == [1, 2, 3]
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assert result[TransitionKey.INFO] == {"episode": 1, "step": 42}
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def test_none_values():
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"""Test handling of None values."""
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processor = DeviceProcessor(device="cpu")
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# Test with None observation
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transition = create_transition(observation=None, action=torch.randn(5))
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result = processor(transition)
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assert TransitionKey.OBSERVATION not in result
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assert result[TransitionKey.ACTION].device.type == "cpu"
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# Test with None action
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transition = create_transition(observation={"observation.state": torch.randn(10)}, action=None)
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result = processor(transition)
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assert result[TransitionKey.OBSERVATION]["observation.state"].device.type == "cpu"
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assert TransitionKey.ACTION not in result
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def test_empty_observation():
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"""Test handling of empty observation dictionary."""
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processor = DeviceProcessor(device="cpu")
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transition = create_transition(observation={}, action=torch.randn(5))
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result = processor(transition)
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assert result[TransitionKey.OBSERVATION] == {}
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assert result[TransitionKey.ACTION].device.type == "cpu"
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def test_scalar_tensors():
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"""Test handling of scalar tensors."""
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processor = DeviceProcessor(device="cpu")
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observation = {"observation.scalar": torch.tensor(1.5)}
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action = torch.tensor(2.0)
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reward = torch.tensor(0.5)
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transition = create_transition(observation=observation, action=action, reward=reward)
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result = processor(transition)
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assert result[TransitionKey.OBSERVATION]["observation.scalar"].item() == 1.5
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assert result[TransitionKey.ACTION].item() == 2.0
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assert result[TransitionKey.REWARD].item() == 0.5
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def test_dtype_preservation():
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"""Test that tensor dtypes are preserved."""
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processor = DeviceProcessor(device="cpu")
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observation = {
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"observation.float32": torch.randn(5, dtype=torch.float32),
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"observation.float64": torch.randn(5, dtype=torch.float64),
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"observation.int32": torch.randint(0, 10, (5,), dtype=torch.int32),
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"observation.bool": torch.tensor([True, False, True], dtype=torch.bool),
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}
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action = torch.randn(3, dtype=torch.float16)
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transition = create_transition(observation=observation, action=action)
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result = processor(transition)
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assert result[TransitionKey.OBSERVATION]["observation.float32"].dtype == torch.float32
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assert result[TransitionKey.OBSERVATION]["observation.float64"].dtype == torch.float64
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assert result[TransitionKey.OBSERVATION]["observation.int32"].dtype == torch.int32
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assert result[TransitionKey.OBSERVATION]["observation.bool"].dtype == torch.bool
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assert result[TransitionKey.ACTION].dtype == torch.float16
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def test_shape_preservation():
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"""Test that tensor shapes are preserved."""
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processor = DeviceProcessor(device="cpu")
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|
|
observation = {
|
|
"observation.1d": torch.randn(10),
|
|
"observation.2d": torch.randn(5, 10),
|
|
"observation.3d": torch.randn(3, 224, 224),
|
|
"observation.4d": torch.randn(2, 3, 224, 224),
|
|
}
|
|
action = torch.randn(2, 5, 3)
|
|
|
|
transition = create_transition(observation=observation, action=action)
|
|
result = processor(transition)
|
|
|
|
assert result[TransitionKey.OBSERVATION]["observation.1d"].shape == (10,)
|
|
assert result[TransitionKey.OBSERVATION]["observation.2d"].shape == (5, 10)
|
|
assert result[TransitionKey.OBSERVATION]["observation.3d"].shape == (3, 224, 224)
|
|
assert result[TransitionKey.OBSERVATION]["observation.4d"].shape == (2, 3, 224, 224)
|
|
assert result[TransitionKey.ACTION].shape == (2, 5, 3)
|
|
|
|
|
|
@pytest.mark.skipif(not torch.cuda.is_available(), reason="CUDA not available")
|
|
def test_mixed_devices():
|
|
"""Test handling of tensors already on different devices."""
|
|
processor = DeviceProcessor(device="cuda")
|
|
|
|
# Create tensors on different devices
|
|
observation = {
|
|
"observation.cpu": torch.randn(5), # CPU
|
|
"observation.cuda": torch.randn(5).cuda(), # Already on CUDA
|
|
}
|
|
action = torch.randn(3).cuda() # Already on CUDA
|
|
|
|
transition = create_transition(observation=observation, action=action)
|
|
result = processor(transition)
|
|
|
|
# All should be on CUDA
|
|
assert result[TransitionKey.OBSERVATION]["observation.cpu"].device.type == "cuda"
|
|
assert result[TransitionKey.OBSERVATION]["observation.cuda"].device.type == "cuda"
|
|
assert result[TransitionKey.ACTION].device.type == "cuda"
|
|
|
|
|
|
def test_non_blocking_flag():
|
|
"""Test that non_blocking flag is set correctly."""
|
|
# CPU processor should have non_blocking=False
|
|
cpu_processor = DeviceProcessor(device="cpu")
|
|
assert cpu_processor.non_blocking is False
|
|
|
|
if torch.cuda.is_available():
|
|
# CUDA processor should have non_blocking=True
|
|
cuda_processor = DeviceProcessor(device="cuda")
|
|
assert cuda_processor.non_blocking is True
|
|
|
|
cuda_0_processor = DeviceProcessor(device="cuda:0")
|
|
assert cuda_0_processor.non_blocking is True
|
|
|
|
|
|
def test_serialization_methods():
|
|
"""Test get_config, state_dict, and load_state_dict methods."""
|
|
device = "cuda" if torch.cuda.is_available() else "cpu"
|
|
processor = DeviceProcessor(device=device)
|
|
|
|
# Test get_config
|
|
config = processor.get_config()
|
|
assert config == {"device": device, "float_dtype": None}
|
|
|
|
# Test state_dict (should be empty)
|
|
state = processor.state_dict()
|
|
assert state == {}
|
|
|
|
# Test load_state_dict (should be no-op)
|
|
processor.load_state_dict({})
|
|
assert processor.device == device
|
|
|
|
# Test reset (should be no-op)
|
|
processor.reset()
|
|
assert processor.device == device
|
|
|
|
|
|
def test_features():
|
|
"""Test that features returns features unchanged."""
|
|
processor = DeviceProcessor(device="cpu")
|
|
|
|
features = {
|
|
"observation.state": PolicyFeature(type=FeatureType.STATE, shape=(10,)),
|
|
"action": PolicyFeature(type=FeatureType.ACTION, shape=(5,)),
|
|
}
|
|
|
|
result = processor.transform_features(features)
|
|
assert result == features
|
|
assert result is features # Should return the same object
|
|
|
|
|
|
def test_integration_with_robot_processor():
|
|
"""Test integration with RobotProcessor."""
|
|
from lerobot.constants import OBS_STATE
|
|
from lerobot.processor import ToBatchProcessor
|
|
|
|
# Create a pipeline with DeviceProcessor
|
|
device_processor = DeviceProcessor(device="cpu")
|
|
batch_processor = ToBatchProcessor()
|
|
|
|
processor = RobotProcessor(steps=[batch_processor, device_processor], name="test_pipeline")
|
|
|
|
# Create test data
|
|
observation = {OBS_STATE: torch.randn(10)}
|
|
action = torch.randn(5)
|
|
|
|
transition = create_transition(observation=observation, action=action)
|
|
result = processor(transition)
|
|
|
|
# Check that tensors are batched and on correct device
|
|
# The result has TransitionKey.OBSERVATION as the key, with observation.state inside
|
|
assert result[TransitionKey.OBSERVATION][OBS_STATE].shape[0] == 1 # Batched
|
|
assert result[TransitionKey.OBSERVATION][OBS_STATE].device.type == "cpu"
|
|
assert result[TransitionKey.ACTION].shape[0] == 1 # Batched
|
|
assert result[TransitionKey.ACTION].device.type == "cpu"
|
|
|
|
|
|
def test_save_and_load_pretrained():
|
|
"""Test saving and loading processor with DeviceProcessor."""
|
|
device = "cuda:0" if torch.cuda.is_available() else "cpu"
|
|
processor = DeviceProcessor(device=device, float_dtype="float16")
|
|
robot_processor = RobotProcessor(steps=[processor], name="device_test_processor")
|
|
|
|
with tempfile.TemporaryDirectory() as tmpdir:
|
|
# Save
|
|
robot_processor.save_pretrained(tmpdir)
|
|
|
|
# Load
|
|
loaded_processor = RobotProcessor.from_pretrained(tmpdir)
|
|
|
|
assert len(loaded_processor.steps) == 1
|
|
loaded_device_processor = loaded_processor.steps[0]
|
|
assert isinstance(loaded_device_processor, DeviceProcessor)
|
|
# Use getattr to access attributes safely
|
|
assert (
|
|
getattr(loaded_device_processor, "device", None) == device.split(":")[0]
|
|
) # Device normalizes cuda:0 to cuda
|
|
assert getattr(loaded_device_processor, "float_dtype", None) == "float16"
|
|
|
|
|
|
def test_registry_functionality():
|
|
"""Test that DeviceProcessor is properly registered."""
|
|
from lerobot.processor.pipeline import ProcessorStepRegistry
|
|
|
|
# Check that DeviceProcessor is registered
|
|
registered_class = ProcessorStepRegistry.get("device_processor")
|
|
assert registered_class is DeviceProcessor
|
|
|
|
|
|
@pytest.mark.skipif(not torch.cuda.is_available(), reason="CUDA not available")
|
|
def test_performance_with_large_tensors():
|
|
"""Test performance with large tensors and non_blocking flag."""
|
|
processor = DeviceProcessor(device="cuda")
|
|
|
|
# Create large tensors
|
|
observation = {
|
|
"observation.large_image": torch.randn(10, 3, 512, 512), # Large image batch
|
|
"observation.features": torch.randn(10, 2048), # Large feature vector
|
|
}
|
|
action = torch.randn(10, 100) # Large action space
|
|
|
|
transition = create_transition(observation=observation, action=action)
|
|
|
|
# Process should not raise any errors
|
|
result = processor(transition)
|
|
|
|
# Verify all tensors are on CUDA
|
|
assert result[TransitionKey.OBSERVATION]["observation.large_image"].device.type == "cuda"
|
|
assert result[TransitionKey.OBSERVATION]["observation.features"].device.type == "cuda"
|
|
assert result[TransitionKey.ACTION].device.type == "cuda"
|
|
|
|
|
|
def test_reward_done_truncated_types():
|
|
"""Test handling of different types for reward, done, and truncated."""
|
|
processor = DeviceProcessor(device="cpu")
|
|
|
|
# Test with scalar values (not tensors)
|
|
transition = create_transition(
|
|
observation={"observation.state": torch.randn(5)},
|
|
action=torch.randn(3),
|
|
reward=1.0, # float
|
|
done=False, # bool
|
|
truncated=True, # bool
|
|
)
|
|
|
|
result = processor(transition)
|
|
|
|
# Non-tensor values should be preserved as-is
|
|
assert result[TransitionKey.REWARD] == 1.0
|
|
assert result[TransitionKey.DONE] is False
|
|
assert result[TransitionKey.TRUNCATED] is True
|
|
|
|
# Test with tensor values
|
|
transition = create_transition(
|
|
observation={"observation.state": torch.randn(5)},
|
|
action=torch.randn(3),
|
|
reward=torch.tensor(1.0),
|
|
done=torch.tensor(False),
|
|
truncated=torch.tensor(True),
|
|
)
|
|
|
|
result = processor(transition)
|
|
|
|
# Tensor values should be moved to device
|
|
assert isinstance(result[TransitionKey.REWARD], torch.Tensor)
|
|
assert isinstance(result[TransitionKey.DONE], torch.Tensor)
|
|
assert isinstance(result[TransitionKey.TRUNCATED], torch.Tensor)
|
|
assert result[TransitionKey.REWARD].device.type == "cpu"
|
|
assert result[TransitionKey.DONE].device.type == "cpu"
|
|
assert result[TransitionKey.TRUNCATED].device.type == "cpu"
|
|
|
|
|
|
def test_complementary_data_preserved():
|
|
"""Test that complementary_data is preserved unchanged."""
|
|
processor = DeviceProcessor(device="cpu")
|
|
|
|
complementary_data = {
|
|
"task": "pick_object",
|
|
"episode_id": 42,
|
|
"metadata": {"sensor": "camera_1"},
|
|
"observation_is_pad": torch.tensor([False, False, True]), # This should be moved to device
|
|
}
|
|
|
|
transition = create_transition(
|
|
observation={"observation.state": torch.randn(5)}, complementary_data=complementary_data
|
|
)
|
|
|
|
result = processor(transition)
|
|
|
|
# Check that complementary_data is preserved
|
|
assert TransitionKey.COMPLEMENTARY_DATA in result
|
|
assert result[TransitionKey.COMPLEMENTARY_DATA]["task"] == "pick_object"
|
|
assert result[TransitionKey.COMPLEMENTARY_DATA]["episode_id"] == 42
|
|
assert result[TransitionKey.COMPLEMENTARY_DATA]["metadata"] == {"sensor": "camera_1"}
|
|
# Note: Currently DeviceProcessor doesn't process tensors in complementary_data
|
|
# This is intentional as complementary_data is typically metadata
|
|
|
|
|
|
def test_float_dtype_conversion():
|
|
"""Test float dtype conversion functionality."""
|
|
processor = DeviceProcessor(device="cpu", float_dtype="float16")
|
|
|
|
# Create tensors of different types
|
|
observation = {
|
|
"observation.float32": torch.randn(5, dtype=torch.float32),
|
|
"observation.float64": torch.randn(5, dtype=torch.float64),
|
|
"observation.int32": torch.randint(0, 10, (5,), dtype=torch.int32),
|
|
"observation.int64": torch.randint(0, 10, (5,), dtype=torch.int64),
|
|
"observation.bool": torch.tensor([True, False, True], dtype=torch.bool),
|
|
}
|
|
action = torch.randn(3, dtype=torch.float32)
|
|
reward = torch.tensor(1.0, dtype=torch.float32)
|
|
|
|
transition = create_transition(observation=observation, action=action, reward=reward)
|
|
result = processor(transition)
|
|
|
|
# Check that float tensors are converted to float16
|
|
assert result[TransitionKey.OBSERVATION]["observation.float32"].dtype == torch.float16
|
|
assert result[TransitionKey.OBSERVATION]["observation.float64"].dtype == torch.float16
|
|
assert result[TransitionKey.ACTION].dtype == torch.float16
|
|
assert result[TransitionKey.REWARD].dtype == torch.float16
|
|
|
|
# Check that non-float tensors are preserved
|
|
assert result[TransitionKey.OBSERVATION]["observation.int32"].dtype == torch.int32
|
|
assert result[TransitionKey.OBSERVATION]["observation.int64"].dtype == torch.int64
|
|
assert result[TransitionKey.OBSERVATION]["observation.bool"].dtype == torch.bool
|
|
|
|
|
|
def test_float_dtype_none():
|
|
"""Test that when float_dtype is None, no dtype conversion occurs."""
|
|
processor = DeviceProcessor(device="cpu", float_dtype=None)
|
|
|
|
observation = {
|
|
"observation.float32": torch.randn(5, dtype=torch.float32),
|
|
"observation.float64": torch.randn(5, dtype=torch.float64),
|
|
"observation.int32": torch.randint(0, 10, (5,), dtype=torch.int32),
|
|
}
|
|
action = torch.randn(3, dtype=torch.float64)
|
|
|
|
transition = create_transition(observation=observation, action=action)
|
|
result = processor(transition)
|
|
|
|
# Check that dtypes are preserved when float_dtype is None
|
|
assert result[TransitionKey.OBSERVATION]["observation.float32"].dtype == torch.float32
|
|
assert result[TransitionKey.OBSERVATION]["observation.float64"].dtype == torch.float64
|
|
assert result[TransitionKey.OBSERVATION]["observation.int32"].dtype == torch.int32
|
|
assert result[TransitionKey.ACTION].dtype == torch.float64
|
|
|
|
|
|
def test_float_dtype_bfloat16():
|
|
"""Test conversion to bfloat16."""
|
|
processor = DeviceProcessor(device="cpu", float_dtype="bfloat16")
|
|
|
|
observation = {"observation.state": torch.randn(5, dtype=torch.float32)}
|
|
action = torch.randn(3, dtype=torch.float64)
|
|
|
|
transition = create_transition(observation=observation, action=action)
|
|
result = processor(transition)
|
|
|
|
assert result[TransitionKey.OBSERVATION]["observation.state"].dtype == torch.bfloat16
|
|
assert result[TransitionKey.ACTION].dtype == torch.bfloat16
|
|
|
|
|
|
def test_float_dtype_float64():
|
|
"""Test conversion to float64."""
|
|
processor = DeviceProcessor(device="cpu", float_dtype="float64")
|
|
|
|
observation = {"observation.state": torch.randn(5, dtype=torch.float16)}
|
|
action = torch.randn(3, dtype=torch.float32)
|
|
|
|
transition = create_transition(observation=observation, action=action)
|
|
result = processor(transition)
|
|
|
|
assert result[TransitionKey.OBSERVATION]["observation.state"].dtype == torch.float64
|
|
assert result[TransitionKey.ACTION].dtype == torch.float64
|
|
|
|
|
|
def test_float_dtype_invalid():
|
|
"""Test that invalid float_dtype raises ValueError."""
|
|
with pytest.raises(ValueError, match="Invalid float_dtype 'invalid_dtype'"):
|
|
DeviceProcessor(device="cpu", float_dtype="invalid_dtype")
|
|
|
|
|
|
def test_float_dtype_aliases():
|
|
"""Test that dtype aliases work correctly."""
|
|
# Test 'half' alias for float16
|
|
processor_half = DeviceProcessor(device="cpu", float_dtype="half")
|
|
assert processor_half._target_float_dtype == torch.float16
|
|
|
|
# Test 'float' alias for float32
|
|
processor_float = DeviceProcessor(device="cpu", float_dtype="float")
|
|
assert processor_float._target_float_dtype == torch.float32
|
|
|
|
# Test 'double' alias for float64
|
|
processor_double = DeviceProcessor(device="cpu", float_dtype="double")
|
|
assert processor_double._target_float_dtype == torch.float64
|
|
|
|
|
|
def test_float_dtype_with_mixed_tensors():
|
|
"""Test float dtype conversion with mixed tensor types."""
|
|
processor = DeviceProcessor(device="cpu", float_dtype="float32")
|
|
|
|
observation = {
|
|
"observation.image": torch.randint(0, 255, (3, 64, 64), dtype=torch.uint8), # Should not convert
|
|
"observation.state": torch.randn(10, dtype=torch.float64), # Should convert
|
|
"observation.mask": torch.tensor([True, False, True], dtype=torch.bool), # Should not convert
|
|
"observation.indices": torch.tensor([1, 2, 3], dtype=torch.long), # Should not convert
|
|
}
|
|
action = torch.randn(5, dtype=torch.float16) # Should convert
|
|
|
|
transition = create_transition(observation=observation, action=action)
|
|
result = processor(transition)
|
|
|
|
# Check conversions
|
|
assert result[TransitionKey.OBSERVATION]["observation.image"].dtype == torch.uint8 # Unchanged
|
|
assert result[TransitionKey.OBSERVATION]["observation.state"].dtype == torch.float32 # Converted
|
|
assert result[TransitionKey.OBSERVATION]["observation.mask"].dtype == torch.bool # Unchanged
|
|
assert result[TransitionKey.OBSERVATION]["observation.indices"].dtype == torch.long # Unchanged
|
|
assert result[TransitionKey.ACTION].dtype == torch.float32 # Converted
|
|
|
|
|
|
def test_float_dtype_serialization():
|
|
"""Test that float_dtype is properly serialized in get_config."""
|
|
device = "cuda" if torch.cuda.is_available() else "cpu"
|
|
processor = DeviceProcessor(device=device, float_dtype="float16")
|
|
config = processor.get_config()
|
|
|
|
assert config == {"device": device, "float_dtype": "float16"}
|
|
|
|
# Test with None float_dtype
|
|
processor_none = DeviceProcessor(device="cpu", float_dtype=None)
|
|
config_none = processor_none.get_config()
|
|
|
|
assert config_none == {"device": "cpu", "float_dtype": None}
|
|
|
|
|
|
@pytest.mark.skipif(not torch.cuda.is_available(), reason="CUDA not available")
|
|
def test_float_dtype_with_cuda():
|
|
"""Test float dtype conversion combined with CUDA device."""
|
|
processor = DeviceProcessor(device="cuda", float_dtype="float16")
|
|
|
|
# Create tensors on CPU with different dtypes
|
|
observation = {
|
|
"observation.float32": torch.randn(5, dtype=torch.float32),
|
|
"observation.int64": torch.tensor([1, 2, 3], dtype=torch.int64),
|
|
}
|
|
action = torch.randn(3, dtype=torch.float64)
|
|
|
|
transition = create_transition(observation=observation, action=action)
|
|
result = processor(transition)
|
|
|
|
# Check that tensors are on CUDA and float types are converted
|
|
assert result[TransitionKey.OBSERVATION]["observation.float32"].device.type == "cuda"
|
|
assert result[TransitionKey.OBSERVATION]["observation.float32"].dtype == torch.float16
|
|
|
|
assert result[TransitionKey.OBSERVATION]["observation.int64"].device.type == "cuda"
|
|
assert result[TransitionKey.OBSERVATION]["observation.int64"].dtype == torch.int64 # Unchanged
|
|
|
|
assert result[TransitionKey.ACTION].device.type == "cuda"
|
|
assert result[TransitionKey.ACTION].dtype == torch.float16
|
|
|
|
|
|
def test_complementary_data_index_fields():
|
|
"""Test processing of index and task_index fields in complementary_data."""
|
|
processor = DeviceProcessor(device="cpu")
|
|
|
|
# Create transition with index and task_index in complementary_data
|
|
complementary_data = {
|
|
"task": ["pick_cube"],
|
|
"index": torch.tensor([42], dtype=torch.int64),
|
|
"task_index": torch.tensor([3], dtype=torch.int64),
|
|
"episode_id": 123, # Non-tensor field
|
|
}
|
|
transition = create_transition(
|
|
observation={"observation.state": torch.randn(1, 7)},
|
|
action=torch.randn(1, 4),
|
|
complementary_data=complementary_data,
|
|
)
|
|
|
|
result = processor(transition)
|
|
|
|
# Check that tensors in complementary_data are processed
|
|
processed_comp_data = result[TransitionKey.COMPLEMENTARY_DATA]
|
|
|
|
# Check index tensor
|
|
assert isinstance(processed_comp_data["index"], torch.Tensor)
|
|
assert processed_comp_data["index"].device.type == "cpu"
|
|
assert torch.equal(processed_comp_data["index"], complementary_data["index"])
|
|
|
|
# Check task_index tensor
|
|
assert isinstance(processed_comp_data["task_index"], torch.Tensor)
|
|
assert processed_comp_data["task_index"].device.type == "cpu"
|
|
assert torch.equal(processed_comp_data["task_index"], complementary_data["task_index"])
|
|
|
|
# Check non-tensor fields remain unchanged
|
|
assert processed_comp_data["task"] == ["pick_cube"]
|
|
assert processed_comp_data["episode_id"] == 123
|
|
|
|
|
|
@pytest.mark.skipif(not torch.cuda.is_available(), reason="CUDA not available")
|
|
def test_complementary_data_index_fields_cuda():
|
|
"""Test moving index and task_index fields to CUDA."""
|
|
processor = DeviceProcessor(device="cuda:0")
|
|
|
|
# Create CPU tensors
|
|
complementary_data = {
|
|
"index": torch.tensor([100, 101], dtype=torch.int64),
|
|
"task_index": torch.tensor([5], dtype=torch.int64),
|
|
}
|
|
transition = create_transition(complementary_data=complementary_data)
|
|
|
|
result = processor(transition)
|
|
|
|
processed_comp_data = result[TransitionKey.COMPLEMENTARY_DATA]
|
|
|
|
# Check tensors moved to CUDA
|
|
assert processed_comp_data["index"].device.type == "cuda"
|
|
assert processed_comp_data["index"].device.index == 0
|
|
assert processed_comp_data["task_index"].device.type == "cuda"
|
|
assert processed_comp_data["task_index"].device.index == 0
|
|
|
|
|
|
def test_complementary_data_without_index_fields():
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"""Test that complementary_data without index/task_index fields works correctly."""
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processor = DeviceProcessor(device="cpu")
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|
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complementary_data = {
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"task": ["navigate"],
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"episode_id": 456,
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}
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transition = create_transition(complementary_data=complementary_data)
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|
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result = processor(transition)
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|
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# Should process without errors and preserve non-tensor fields
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processed_comp_data = result[TransitionKey.COMPLEMENTARY_DATA]
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assert processed_comp_data["task"] == ["navigate"]
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assert processed_comp_data["episode_id"] == 456
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|
|
|
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def test_complementary_data_mixed_tensors():
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"""Test complementary_data with mix of tensors and non-tensors."""
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processor = DeviceProcessor(device="cpu")
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|
|
|
complementary_data = {
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"task": ["pick_and_place"],
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|
"index": torch.tensor([42], dtype=torch.int64),
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|
"task_index": torch.tensor([3], dtype=torch.int64),
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|
"metrics": [1.0, 2.0, 3.0], # List, not tensor
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"config": {"speed": "fast"}, # Dict
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|
"episode_id": 789, # Int
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|
}
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transition = create_transition(complementary_data=complementary_data)
|
|
|
|
result = processor(transition)
|
|
|
|
processed_comp_data = result[TransitionKey.COMPLEMENTARY_DATA]
|
|
|
|
# Check tensors are processed
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|
assert isinstance(processed_comp_data["index"], torch.Tensor)
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|
assert isinstance(processed_comp_data["task_index"], torch.Tensor)
|
|
|
|
# Check non-tensors remain unchanged
|
|
assert processed_comp_data["task"] == ["pick_and_place"]
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|
assert processed_comp_data["metrics"] == [1.0, 2.0, 3.0]
|
|
assert processed_comp_data["config"] == {"speed": "fast"}
|
|
assert processed_comp_data["episode_id"] == 789
|
|
|
|
|
|
def test_complementary_data_float_dtype_conversion():
|
|
"""Test that float dtype conversion doesn't affect int tensors in complementary_data."""
|
|
processor = DeviceProcessor(device="cpu", float_dtype="float16")
|
|
|
|
complementary_data = {
|
|
"index": torch.tensor([42], dtype=torch.int64),
|
|
"task_index": torch.tensor([3], dtype=torch.int64),
|
|
"float_tensor": torch.tensor([1.5, 2.5], dtype=torch.float32), # Should be converted
|
|
}
|
|
transition = create_transition(complementary_data=complementary_data)
|
|
|
|
result = processor(transition)
|
|
|
|
processed_comp_data = result[TransitionKey.COMPLEMENTARY_DATA]
|
|
|
|
# Int tensors should keep their dtype
|
|
assert processed_comp_data["index"].dtype == torch.int64
|
|
assert processed_comp_data["task_index"].dtype == torch.int64
|
|
|
|
# Float tensor should be converted
|
|
assert processed_comp_data["float_tensor"].dtype == torch.float16
|
|
|
|
|
|
@pytest.mark.skipif(not torch.cuda.is_available(), reason="CUDA not available")
|
|
def test_complementary_data_full_pipeline_cuda():
|
|
"""Test full transition with complementary_data on CUDA."""
|
|
processor = DeviceProcessor(device="cuda:0", float_dtype="float16")
|
|
|
|
# Create full transition with mixed CPU tensors
|
|
observation = {"observation.state": torch.randn(1, 7, dtype=torch.float32)}
|
|
action = torch.randn(1, 4, dtype=torch.float32)
|
|
reward = torch.tensor(1.5, dtype=torch.float32)
|
|
done = torch.tensor(False)
|
|
complementary_data = {
|
|
"task": ["reach_target"],
|
|
"index": torch.tensor([1000], dtype=torch.int64),
|
|
"task_index": torch.tensor([10], dtype=torch.int64),
|
|
}
|
|
|
|
transition = create_transition(
|
|
observation=observation,
|
|
action=action,
|
|
reward=reward,
|
|
done=done,
|
|
complementary_data=complementary_data,
|
|
)
|
|
|
|
result = processor(transition)
|
|
|
|
# Check all components moved to CUDA
|
|
assert result[TransitionKey.OBSERVATION]["observation.state"].device.type == "cuda"
|
|
assert result[TransitionKey.ACTION].device.type == "cuda"
|
|
assert result[TransitionKey.REWARD].device.type == "cuda"
|
|
assert result[TransitionKey.DONE].device.type == "cuda"
|
|
|
|
# Check complementary_data tensors
|
|
processed_comp_data = result[TransitionKey.COMPLEMENTARY_DATA]
|
|
assert processed_comp_data["index"].device.type == "cuda"
|
|
assert processed_comp_data["task_index"].device.type == "cuda"
|
|
|
|
# Check float conversion happened for float tensors
|
|
assert result[TransitionKey.OBSERVATION]["observation.state"].dtype == torch.float16
|
|
assert result[TransitionKey.ACTION].dtype == torch.float16
|
|
assert result[TransitionKey.REWARD].dtype == torch.float16
|
|
|
|
# Check int tensors kept their dtype
|
|
assert processed_comp_data["index"].dtype == torch.int64
|
|
assert processed_comp_data["task_index"].dtype == torch.int64
|
|
|
|
|
|
def test_complementary_data_empty():
|
|
"""Test empty complementary_data handling."""
|
|
processor = DeviceProcessor(device="cpu")
|
|
|
|
transition = create_transition(
|
|
observation={"observation.state": torch.randn(1, 7)},
|
|
complementary_data={},
|
|
)
|
|
|
|
result = processor(transition)
|
|
|
|
# Should have empty dict
|
|
assert result[TransitionKey.COMPLEMENTARY_DATA] == {}
|
|
|
|
|
|
def test_complementary_data_none():
|
|
"""Test None complementary_data handling."""
|
|
processor = DeviceProcessor(device="cpu")
|
|
|
|
transition = create_transition(
|
|
observation={"observation.state": torch.randn(1, 7)},
|
|
complementary_data=None,
|
|
)
|
|
|
|
result = processor(transition)
|
|
|
|
# Complementary data should not be in the result (same as input)
|
|
assert TransitionKey.COMPLEMENTARY_DATA not in result
|
|
|
|
|
|
@pytest.mark.skipif(not torch.cuda.is_available(), reason="CUDA not available")
|
|
def test_policy_processor_integration():
|
|
"""Test integration with policy processors - input on GPU, output on CPU."""
|
|
from lerobot.configs.types import FeatureType, NormalizationMode, PolicyFeature
|
|
from lerobot.constants import ACTION, OBS_STATE
|
|
from lerobot.processor import NormalizerProcessor, ToBatchProcessor, UnnormalizerProcessor
|
|
|
|
# Create features and stats
|
|
features = {
|
|
OBS_STATE: PolicyFeature(type=FeatureType.STATE, shape=(10,)),
|
|
ACTION: PolicyFeature(type=FeatureType.ACTION, shape=(5,)),
|
|
}
|
|
|
|
stats = {
|
|
OBS_STATE: {"mean": torch.zeros(10), "std": torch.ones(10)},
|
|
ACTION: {"mean": torch.zeros(5), "std": torch.ones(5)},
|
|
}
|
|
|
|
norm_map = {FeatureType.STATE: NormalizationMode.MEAN_STD, FeatureType.ACTION: NormalizationMode.MEAN_STD}
|
|
|
|
# Create input processor (preprocessor) that moves to GPU
|
|
input_processor = RobotProcessor(
|
|
steps=[
|
|
NormalizerProcessor(features=features, norm_map=norm_map, stats=stats),
|
|
ToBatchProcessor(),
|
|
DeviceProcessor(device="cuda"),
|
|
],
|
|
name="test_preprocessor",
|
|
)
|
|
|
|
# Create output processor (postprocessor) that moves to CPU
|
|
output_processor = RobotProcessor(
|
|
steps=[
|
|
DeviceProcessor(device="cpu"),
|
|
UnnormalizerProcessor(features={ACTION: features[ACTION]}, norm_map=norm_map, stats=stats),
|
|
],
|
|
name="test_postprocessor",
|
|
)
|
|
|
|
# Test data on CPU
|
|
observation = {OBS_STATE: torch.randn(10)}
|
|
action = torch.randn(5)
|
|
transition = create_transition(observation=observation, action=action)
|
|
|
|
# Process through input processor
|
|
input_result = input_processor(transition)
|
|
|
|
# Verify tensors are on GPU and batched
|
|
# The result has TransitionKey.OBSERVATION as the key, with observation.state inside
|
|
assert input_result[TransitionKey.OBSERVATION][OBS_STATE].device.type == "cuda"
|
|
assert input_result[TransitionKey.OBSERVATION][OBS_STATE].shape[0] == 1
|
|
assert input_result[TransitionKey.ACTION].device.type == "cuda"
|
|
assert input_result[TransitionKey.ACTION].shape[0] == 1
|
|
|
|
# Simulate model output on GPU
|
|
model_output = create_transition(action=torch.randn(1, 5).cuda())
|
|
|
|
# Process through output processor
|
|
output_result = output_processor(model_output)
|
|
|
|
# Verify action is back on CPU and unnormalized
|
|
assert output_result[TransitionKey.ACTION].device.type == "cpu"
|
|
assert output_result[TransitionKey.ACTION].shape == (1, 5)
|