# Copyright 2024 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. """ Records a dataset. Actions for the robot can be either generated by teleoperation or by a policy. Example: ```shell python -m lerobot.record \ --robot.type=so100_follower \ --robot.port=/dev/tty.usbmodem58760431541 \ --robot.cameras="{laptop: {type: opencv, camera_index: 0, width: 640, height: 480}}" \ --robot.id=black \ --dataset.repo_id=aliberts/record-test \ --dataset.num_episodes=2 \ --dataset.single_task="Grab the cube" \ # <- Teleop optional if you want to teleoperate to record or in between episodes with a policy \ # --teleop.type=so100_leader \ # --teleop.port=/dev/tty.usbmodem58760431551 \ # --teleop.id=blue \ # <- Policy optional if you want to record with a policy \ # --policy.path=${HF_USER}/my_policy \ ``` """ import logging import time from dataclasses import asdict, dataclass from pathlib import Path from pprint import pformat from typing import List from lerobot.cameras import ( # noqa: F401 CameraConfig, # noqa: F401 ) from lerobot.cameras.opencv.configuration_opencv import OpenCVCameraConfig # noqa: F401 from lerobot.cameras.realsense.configuration_realsense import RealSenseCameraConfig # noqa: F401 from lerobot.configs import parser from lerobot.configs.policies import PreTrainedConfig from lerobot.datasets.image_writer import safe_stop_image_writer from lerobot.datasets.lerobot_dataset import LeRobotDataset from lerobot.datasets.utils import build_dataset_frame, hw_to_dataset_features from lerobot.policies.factory import make_policy from lerobot.policies.pretrained import PreTrainedPolicy from lerobot.robots import ( # noqa: F401 Robot, RobotConfig, hope_jr, koch_follower, make_robot_from_config, so100_follower, so101_follower, ) from lerobot.teleoperators import ( # noqa: F401 Teleoperator, TeleoperatorConfig, homunculus, koch_leader, make_teleoperator_from_config, so100_leader, so101_leader, ) from lerobot.teleoperators.keyboard.teleop_keyboard import KeyboardTeleop from lerobot.utils.control_utils import ( init_keyboard_listener, is_headless, predict_action, sanity_check_dataset_name, sanity_check_dataset_robot_compatibility, ) from lerobot.utils.robot_utils import busy_wait from lerobot.utils.utils import ( get_safe_torch_device, init_logging, log_say, ) from lerobot.utils.visualization_utils import _init_rerun, log_rerun_data @dataclass class DatasetRecordConfig: # Dataset identifier. By convention it should match '{hf_username}/{dataset_name}' (e.g. `lerobot/test`). repo_id: str # A short but accurate description of the task performed during the recording (e.g. "Pick the Lego block and drop it in the box on the right.") single_task: str # Root directory where the dataset will be stored (e.g. 'dataset/path'). root: str | Path | None = None # Limit the frames per second. fps: int = 30 # Number of seconds for data recording for each episode. episode_time_s: int | float = 60 # Number of seconds for resetting the environment after each episode. reset_time_s: int | float = 60 # Number of episodes to record. num_episodes: int = 50 # Encode frames in the dataset into video video: bool = True # Upload dataset to Hugging Face hub. push_to_hub: bool = True # Upload on private repository on the Hugging Face hub. private: bool = False # Add tags to your dataset on the hub. tags: list[str] | None = None # Number of subprocesses handling the saving of frames as PNG. Set to 0 to use threads only; # set to ≥1 to use subprocesses, each using threads to write images. The best number of processes # and threads depends on your system. We recommend 4 threads per camera with 0 processes. # If fps is unstable, adjust the thread count. If still unstable, try using 1 or more subprocesses. num_image_writer_processes: int = 0 # Number of threads writing the frames as png images on disk, per camera. # Too many threads might cause unstable teleoperation fps due to main thread being blocked. # Not enough threads might cause low camera fps. num_image_writer_threads_per_camera: int = 4 def __post_init__(self): if self.single_task is None: raise ValueError("You need to provide a task as argument in `single_task`.") @dataclass class RecordConfig: robot: RobotConfig dataset: DatasetRecordConfig # Whether to control the robot with a teleoperator teleop: TeleoperatorConfig | None = None # Whether to control the robot with a policy policy: PreTrainedConfig | None = None # Display all cameras on screen display_data: bool = False # Use vocal synthesis to read events. play_sounds: bool = True # Resume recording on an existing dataset. resume: bool = False def __post_init__(self): # HACK: We parse again the cli args here to get the pretrained path if there was one. policy_path = parser.get_path_arg("policy") if policy_path: cli_overrides = parser.get_cli_overrides("policy") self.policy = PreTrainedConfig.from_pretrained(policy_path, cli_overrides=cli_overrides) self.policy.pretrained_path = policy_path if self.teleop is None and self.policy is None: raise ValueError("Choose a policy, a teleoperator or both to control the robot") @classmethod def __get_path_fields__(cls) -> list[str]: """This enables the parser to load config from the policy using `--policy.path=local/dir`""" return ["policy"] @safe_stop_image_writer def record_loop( robot: Robot, events: dict, fps: int, dataset: LeRobotDataset | None = None, teleop: Teleoperator | List[Teleoperator] | None = None, policy: PreTrainedPolicy | None = None, control_time_s: int | None = None, single_task: str | None = None, display_data: bool = False, ): if dataset is not None and dataset.fps != fps: raise ValueError(f"The dataset fps should be equal to requested fps ({dataset.fps} != {fps}).") teleop_arm = teleop_keyboard = None if isinstance(teleop, list): teleop_keyboard = next((t for t in teleop if isinstance(t, KeyboardTeleop)), None) teleop_arm = next( ( t for t in teleop if isinstance(t, (so100_leader.SO100Leader, so101_leader.SO101Leader, koch_leader.KochLeader)) ), None, ) if not (teleop_arm and teleop_keyboard and len(teleop) == 2 and robot.name == "lekiwi_client"): raise ValueError( "For multi-teleop, the list must contain exactly one KeyboardTeleop and one arm teleoperator. Currently only supported for LeKiwi robot." ) # if policy is given it needs cleaning up if policy is not None: policy.reset() timestamp = 0 start_episode_t = time.perf_counter() while timestamp < control_time_s: start_loop_t = time.perf_counter() if events["exit_early"]: events["exit_early"] = False break observation = robot.get_observation() if policy is not None or dataset is not None: observation_frame = build_dataset_frame(dataset.features, observation, prefix="observation") if policy is not None: action_values = predict_action( observation_frame, policy, get_safe_torch_device(policy.config.device), policy.config.use_amp, task=single_task, robot_type=robot.robot_type, ) action = {key: action_values[i].item() for i, key in enumerate(robot.action_features)} elif policy is None and isinstance(teleop, Teleoperator): action = teleop.get_action() elif policy is None and isinstance(teleop, list): # TODO(pepijn, steven): clean the record loop for use of multiple robots (possibly with pipeline) arm_action = teleop_arm.get_action() arm_action = {f"arm_{k}": v for k, v in arm_action.items()} keyboard_action = teleop_keyboard.get_action() base_action = robot._from_keyboard_to_base_action(keyboard_action) action = {**arm_action, **base_action} if len(base_action) > 0 else arm_action else: logging.info( "No policy or teleoperator provided, skipping action generation." "This is likely to happen when resetting the environment without a teleop device." "The robot won't be at its rest position at the start of the next episode." ) continue # Action can eventually be clipped using `max_relative_target`, # so action actually sent is saved in the dataset. sent_action = robot.send_action(action) if dataset is not None: action_frame = build_dataset_frame(dataset.features, sent_action, prefix="action") frame = {**observation_frame, **action_frame} dataset.add_frame(frame, task=single_task) if display_data: log_rerun_data(observation, action) dt_s = time.perf_counter() - start_loop_t busy_wait(1 / fps - dt_s) timestamp = time.perf_counter() - start_episode_t @parser.wrap() def record(cfg: RecordConfig) -> LeRobotDataset: init_logging() logging.info(pformat(asdict(cfg))) if cfg.display_data: _init_rerun(session_name="recording") robot = make_robot_from_config(cfg.robot) teleop = make_teleoperator_from_config(cfg.teleop) if cfg.teleop is not None else None action_features = hw_to_dataset_features(robot.action_features, "action", cfg.dataset.video) obs_features = hw_to_dataset_features(robot.observation_features, "observation", cfg.dataset.video) dataset_features = {**action_features, **obs_features} if cfg.resume: dataset = LeRobotDataset( cfg.dataset.repo_id, root=cfg.dataset.root, ) if hasattr(robot, "cameras") and len(robot.cameras) > 0: dataset.start_image_writer( num_processes=cfg.dataset.num_image_writer_processes, num_threads=cfg.dataset.num_image_writer_threads_per_camera * len(robot.cameras), ) sanity_check_dataset_robot_compatibility(dataset, robot, cfg.dataset.fps, dataset_features) else: # Create empty dataset or load existing saved episodes sanity_check_dataset_name(cfg.dataset.repo_id, cfg.policy) dataset = LeRobotDataset.create( cfg.dataset.repo_id, cfg.dataset.fps, root=cfg.dataset.root, robot_type=robot.name, features=dataset_features, use_videos=cfg.dataset.video, image_writer_processes=cfg.dataset.num_image_writer_processes, image_writer_threads=cfg.dataset.num_image_writer_threads_per_camera * len(robot.cameras), ) # Load pretrained policy policy = None if cfg.policy is None else make_policy(cfg.policy, ds_meta=dataset.meta) robot.connect() if teleop is not None: teleop.connect() listener, events = init_keyboard_listener() recorded_episodes = 0 while recorded_episodes < cfg.dataset.num_episodes and not events["stop_recording"]: log_say(f"Recording episode {dataset.num_episodes}", cfg.play_sounds) record_loop( robot=robot, events=events, fps=cfg.dataset.fps, teleop=teleop, policy=policy, dataset=dataset, control_time_s=cfg.dataset.episode_time_s, single_task=cfg.dataset.single_task, display_data=cfg.display_data, ) # Execute a few seconds without recording to give time to manually reset the environment # Skip reset for the last episode to be recorded if not events["stop_recording"] and ( (recorded_episodes < cfg.dataset.num_episodes - 1) or events["rerecord_episode"] ): log_say("Reset the environment", cfg.play_sounds) record_loop( robot=robot, events=events, fps=cfg.dataset.fps, teleop=teleop, control_time_s=cfg.dataset.reset_time_s, single_task=cfg.dataset.single_task, display_data=cfg.display_data, ) if events["rerecord_episode"]: log_say("Re-record episode", cfg.play_sounds) events["rerecord_episode"] = False events["exit_early"] = False dataset.clear_episode_buffer() continue dataset.save_episode() recorded_episodes += 1 log_say("Stop recording", cfg.play_sounds, blocking=True) robot.disconnect() if teleop is not None: teleop.disconnect() if not is_headless() and listener is not None: listener.stop() if cfg.dataset.push_to_hub: dataset.push_to_hub(tags=cfg.dataset.tags, private=cfg.dataset.private) log_say("Exiting", cfg.play_sounds) return dataset if __name__ == "__main__": record()