#!/usr/bin/env python # Copyright 2025 The HuggingFace Inc. team. All rights reserved. # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. from dataclasses import dataclass from lerobot.configs.types import PipelineFeatureType, PolicyFeature from .converters import to_tensor from .core import EnvAction, EnvTransition, PolicyAction from .pipeline import ActionProcessorStep, ProcessorStep, ProcessorStepRegistry @ProcessorStepRegistry.register("torch2numpy_action_processor") @dataclass class Torch2NumpyActionProcessorStep(ActionProcessorStep): """ Converts a PyTorch tensor action to a NumPy array. This step is useful when the output of a policy (typically a torch.Tensor) needs to be passed to an environment or component that expects a NumPy array. Attributes: squeeze_batch_dim: If True, removes the first dimension of the array if it is of size 1. This is useful for converting a batched action of size (1, D) to a single action of size (D,). """ squeeze_batch_dim: bool = True def action(self, action: PolicyAction) -> EnvAction: if not isinstance(action, PolicyAction): raise TypeError( f"Expected PolicyAction or None, got {type(action).__name__}. " "Use appropriate processor for non-tensor actions." ) numpy_action = action.detach().cpu().numpy() # Remove batch dimensions but preserve action dimensions. # Only squeeze if there's a batch dimension (first dim == 1). if ( self.squeeze_batch_dim and numpy_action.shape and len(numpy_action.shape) > 1 and numpy_action.shape[0] == 1 ): numpy_action = numpy_action.squeeze(0) return numpy_action def transform_features( self, features: dict[PipelineFeatureType, dict[str, PolicyFeature]] ) -> dict[PipelineFeatureType, dict[str, PolicyFeature]]: return features @ProcessorStepRegistry.register("numpy2torch_action_processor") @dataclass class Numpy2TorchActionProcessorStep(ProcessorStep): """Converts a NumPy array action to a PyTorch tensor when action is present.""" def __call__(self, transition: EnvTransition) -> EnvTransition: """Converts numpy action to torch tensor if action exists, otherwise passes through.""" from .core import TransitionKey self._current_transition = transition.copy() new_transition = self._current_transition action = new_transition.get(TransitionKey.ACTION) if action is not None: if not isinstance(action, EnvAction): raise TypeError( f"Expected np.ndarray or None, got {type(action).__name__}. " "Use appropriate processor for non-tensor actions." ) torch_action = to_tensor(action, dtype=None) # Preserve original dtype new_transition[TransitionKey.ACTION] = torch_action return new_transition def transform_features( self, features: dict[PipelineFeatureType, dict[str, PolicyFeature]] ) -> dict[PipelineFeatureType, dict[str, PolicyFeature]]: return features