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from __future__ import annotations
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from collections.abc import Sequence
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from functools import singledispatch
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from typing import Any
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import numpy as np
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import torch
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from lerobot.utils.constants import ACTION, DONE, OBS_PREFIX, REWARD, TRUNCATED
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from .core import EnvTransition, PolicyAction, RobotAction, RobotObservation, TransitionKey
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@singledispatch
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def to_tensor(
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value: Any,
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*,
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dtype: torch.dtype | None = torch.float32,
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device: torch.device | str | None = None,
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) -> torch.Tensor:
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"""
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Convert various data types to PyTorch tensors with configurable options.
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This is a unified tensor conversion function using single dispatch to handle
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different input types appropriately.
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Args:
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value: Input value to convert (tensor, array, scalar, sequence, etc.).
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dtype: Target tensor dtype. If None, preserves original dtype.
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device: Target device for the tensor.
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Returns:
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A PyTorch tensor.
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Raises:
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TypeError: If the input type is not supported.
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"""
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raise TypeError(f"Unsupported type for tensor conversion: {type(value)}")
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@to_tensor.register(torch.Tensor)
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def _(value: torch.Tensor, *, dtype=torch.float32, device=None, **kwargs) -> torch.Tensor:
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"""Handle conversion for existing PyTorch tensors."""
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if dtype is not None:
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value = value.to(dtype=dtype)
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if device is not None:
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value = value.to(device=device)
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return value
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@to_tensor.register(np.ndarray)
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def _(
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value: np.ndarray,
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*,
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dtype=torch.float32,
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device=None,
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**kwargs,
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) -> torch.Tensor:
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"""Handle conversion for numpy arrays."""
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if value.ndim == 0:
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scalar_value = value.item()
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return torch.tensor(scalar_value, dtype=dtype, device=device)
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tensor = torch.from_numpy(value)
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if dtype is not None:
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tensor = tensor.to(dtype=dtype)
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if device is not None:
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tensor = tensor.to(device=device)
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return tensor
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@to_tensor.register(int)
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@to_tensor.register(float)
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@to_tensor.register(np.integer)
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@to_tensor.register(np.floating)
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def _(value, *, dtype=torch.float32, device=None, **kwargs) -> torch.Tensor:
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"""Handle conversion for scalar values including numpy scalars."""
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return torch.tensor(value, dtype=dtype, device=device)
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@to_tensor.register(list)
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@to_tensor.register(tuple)
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def _(value: Sequence, *, dtype=torch.float32, device=None, **kwargs) -> torch.Tensor:
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"""Handle conversion for sequences (lists, tuples)."""
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return torch.tensor(value, dtype=dtype, device=device)
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@to_tensor.register(dict)
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def _(value: dict, *, device=None, **kwargs) -> dict:
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"""Handle conversion for dictionaries by recursively converting their values to tensors."""
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if not value:
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return {}
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result = {}
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for key, sub_value in value.items():
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if sub_value is None:
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continue
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if isinstance(sub_value, dict):
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result[key] = to_tensor(
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sub_value,
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device=device,
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**kwargs,
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)
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continue
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result[key] = to_tensor(
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sub_value,
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device=device,
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**kwargs,
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)
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return result
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def from_tensor_to_numpy(x: torch.Tensor | Any) -> np.ndarray | float | int | Any:
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"""
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Convert a PyTorch tensor to a numpy array or scalar if applicable.
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If the input is not a tensor, it is returned unchanged.
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Args:
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x: The input, which can be a tensor or any other type.
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Returns:
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A numpy array, a scalar, or the original input.
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"""
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if isinstance(x, torch.Tensor):
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return x.item() if x.numel() == 1 else x.detach().cpu().numpy()
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return x
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def _extract_complementary_data(batch: dict[str, Any]) -> dict[str, Any]:
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"""
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Extract complementary data from a batch dictionary.
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This includes padding flags, task description, and indices.
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Args:
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batch: The batch dictionary.
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Returns:
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A dictionary with the extracted complementary data.
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"""
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pad_keys = {k: v for k, v in batch.items() if "_is_pad" in k}
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task_key = {"task": batch["task"]} if "task" in batch else {}
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index_key = {"index": batch["index"]} if "index" in batch else {}
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task_index_key = {"task_index": batch["task_index"]} if "task_index" in batch else {}
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return {**pad_keys, **task_key, **index_key, **task_index_key}
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def create_transition(
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observation: dict[str, Any] | None = None,
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action: PolicyAction | RobotAction | None = None,
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reward: float = 0.0,
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done: bool = False,
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truncated: bool = False,
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info: dict[str, Any] | None = None,
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complementary_data: dict[str, Any] | None = None,
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) -> EnvTransition:
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"""
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Create an `EnvTransition` dictionary with sensible defaults.
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Args:
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observation: Observation dictionary.
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action: Action dictionary.
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reward: Scalar reward value.
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done: Episode termination flag.
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truncated: Episode truncation flag.
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info: Additional info dictionary.
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complementary_data: Complementary data dictionary.
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Returns:
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A complete `EnvTransition` dictionary.
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"""
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return {
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TransitionKey.OBSERVATION: observation,
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TransitionKey.ACTION: action,
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TransitionKey.REWARD: reward,
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TransitionKey.DONE: done,
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TransitionKey.TRUNCATED: truncated,
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TransitionKey.INFO: info if info is not None else {},
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TransitionKey.COMPLEMENTARY_DATA: complementary_data if complementary_data is not None else {},
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}
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def robot_action_observation_to_transition(
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action_observation: tuple[RobotAction, RobotObservation],
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) -> EnvTransition:
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"""
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Convert a raw robot action and observation dictionary into a standardized `EnvTransition`.
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Args:
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action: The raw action dictionary from a teleoperation device or controller.
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observation: The raw observation dictionary from the environment.
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Returns:
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An `EnvTransition` containing the formatted observation.
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"""
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if not isinstance(action_observation, tuple):
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raise ValueError("action_observation should be a tuple type with an action and observation")
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action, observation = action_observation
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if action is not None and not isinstance(action, dict):
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raise ValueError(f"Action should be a RobotAction type got {type(action)}")
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if observation is not None and not isinstance(observation, dict):
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raise ValueError(f"Observation should be a RobotObservation type got {type(observation)}")
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return create_transition(action=action, observation=observation)
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def robot_action_to_transition(action: RobotAction) -> EnvTransition:
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"""
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Convert a raw robot action dictionary into a standardized `EnvTransition`.
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Args:
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action: The raw action dictionary from a teleoperation device or controller.
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Returns:
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An `EnvTransition` containing the formatted action.
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"""
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if not isinstance(action, dict):
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raise ValueError(f"Action should be a RobotAction type got {type(action)}")
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return create_transition(action=action)
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def observation_to_transition(observation: RobotObservation) -> EnvTransition:
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"""
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Convert a raw robot observation dictionary into a standardized `EnvTransition`.
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Args:
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observation: The raw observation dictionary from the environment.
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Returns:
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An `EnvTransition` containing the formatted observation.
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"""
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if not isinstance(observation, dict):
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raise ValueError(f"Observation should be a RobotObservation type got {type(observation)}")
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return create_transition(observation=observation)
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def transition_to_robot_action(transition: EnvTransition) -> RobotAction:
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"""
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Extract a raw robot action dictionary for a robot from an `EnvTransition`.
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This function searches for keys in the format "action.*.pos" or "action.*.vel"
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and converts them into a flat dictionary suitable for sending to a robot controller.
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Args:
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transition: The `EnvTransition` containing the action.
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Returns:
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A dictionary representing the raw robot action.
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"""
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if not isinstance(transition, dict):
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raise ValueError(f"Transition should be a EnvTransition type (dict) got {type(transition)}")
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action = transition.get(TransitionKey.ACTION)
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if not isinstance(action, dict):
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raise ValueError(f"Action should be a RobotAction type (dict) got {type(action)}")
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return transition.get(TransitionKey.ACTION)
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def transition_to_policy_action(transition: EnvTransition) -> PolicyAction:
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"""
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Convert an `EnvTransition` to a `PolicyAction`.
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"""
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if not isinstance(transition, dict):
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raise ValueError(f"Transition should be a EnvTransition type (dict) got {type(transition)}")
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action = transition.get(TransitionKey.ACTION)
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if not isinstance(action, PolicyAction):
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raise ValueError(f"Action should be a PolicyAction type got {type(action)}")
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return action
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def transition_to_observation(transition: EnvTransition) -> RobotObservation:
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"""
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Convert an `EnvTransition` to a `RobotObservation`.
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"""
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if not isinstance(transition, dict):
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raise ValueError(f"Transition should be a EnvTransition type (dict) got {type(transition)}")
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observation = transition.get(TransitionKey.OBSERVATION)
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if not isinstance(observation, dict):
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raise ValueError(f"Observation should be a RobotObservation (dict) type got {type(observation)}")
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return observation
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def policy_action_to_transition(action: PolicyAction) -> EnvTransition:
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"""
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Convert a `PolicyAction` to an `EnvTransition`.
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"""
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if not isinstance(action, PolicyAction):
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raise ValueError(f"Action should be a PolicyAction type got {type(action)}")
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return create_transition(action=action)
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def batch_to_transition(batch: dict[str, Any]) -> EnvTransition:
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"""
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Convert a batch dictionary from a dataset/dataloader into an `EnvTransition`.
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This function maps recognized keys from a batch to the `EnvTransition` structure,
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filling in missing keys with sensible defaults.
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Args:
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batch: A batch dictionary.
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Returns:
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An `EnvTransition` dictionary.
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Raises:
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ValueError: If the input is not a dictionary.
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"""
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if not isinstance(batch, dict):
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raise ValueError(f"EnvTransition must be a dictionary. Got {type(batch).__name__}")
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action = batch.get(ACTION)
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if action is not None and not isinstance(action, PolicyAction):
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raise ValueError(f"Action should be a PolicyAction type got {type(action)}")
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observation_keys = {k: v for k, v in batch.items() if k.startswith(OBS_PREFIX)}
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complementary_data = _extract_complementary_data(batch)
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return create_transition(
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observation=observation_keys if observation_keys else None,
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action=batch.get(ACTION),
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reward=batch.get(REWARD, 0.0),
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done=batch.get(DONE, False),
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truncated=batch.get(TRUNCATED, False),
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info=batch.get("info", {}),
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complementary_data=complementary_data if complementary_data else None,
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)
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def transition_to_batch(transition: EnvTransition) -> dict[str, Any]:
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"""
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Convert an `EnvTransition` back to the canonical batch format used in LeRobot.
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This is the inverse of `batch_to_transition`.
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Args:
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transition: The `EnvTransition` to convert.
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Returns:
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A batch dictionary with canonical LeRobot field names.
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"""
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if not isinstance(transition, dict):
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raise ValueError(f"Transition should be a EnvTransition type (dict) got {type(transition)}")
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batch = {
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ACTION: transition.get(TransitionKey.ACTION),
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REWARD: transition.get(TransitionKey.REWARD, 0.0),
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DONE: transition.get(TransitionKey.DONE, False),
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TRUNCATED: transition.get(TransitionKey.TRUNCATED, False),
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"info": transition.get(TransitionKey.INFO, {}),
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}
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comp_data = transition.get(TransitionKey.COMPLEMENTARY_DATA, {})
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if comp_data:
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batch.update(comp_data)
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observation = transition.get(TransitionKey.OBSERVATION)
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if isinstance(observation, dict):
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batch.update(observation)
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return batch
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def identity_transition(transition: EnvTransition) -> EnvTransition:
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"""
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An identity function for transitions, returning the input unchanged.
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Useful as a default or placeholder in processing pipelines.
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Args:
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tr: An `EnvTransition`.
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Returns:
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The same `EnvTransition`.
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"""
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return transition
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