# Imitation Learning on Real-World Robots This tutorial will explain how to train a neural network to control a real robot autonomously. **You'll learn:** 1. How to record and visualize your dataset. 2. How to train a policy using your data and prepare it for evaluation. 3. How to evaluate your policy and visualize the results. By following these steps, you'll be able to replicate tasks, such as picking up a Lego block and placing it in a bin with a high success rate, as shown in the video below.
Video: pickup lego block task
This tutorial isn’t tied to a specific robot: we walk you through the commands and API snippets you can adapt for any supported platform. During data collection, you’ll use a “teloperation” device, such as a leader arm or keyboard to teleoperate the robot and record its motion trajectories. Once you’ve gathered enough trajectories, you’ll train a neural network to imitate these trajectories and deploy the trained model so your robot can perform the task autonomously. If you run into any issues at any point, jump into our [Discord community](https://discord.com/invite/s3KuuzsPFb) for support. Want to quickly get the right commands for your setup? The [quickstart notebook](https://github.com/huggingface/lerobot/blob/main/examples/notebooks/quickstart.ipynb) [![Open in Colab](https://colab.research.google.com/assets/colab-badge.svg)](https://colab.research.google.com/github/huggingface/lerobot/blob/main/examples/notebooks/quickstart.ipynb) lets you configure your robot once and generates all the commands below ready to paste. ## Set up and Calibrate If you haven't yet set up and calibrated your robot and teleop device, please do so by following the robot-specific tutorial. ## Teleoperate In this example, we’ll demonstrate how to teleoperate the SO101 robot. For each command, we also provide a corresponding API example. Note that the `id` associated with a robot is used to store the calibration file. It's important to use the same `id` when teleoperating, recording, and evaluating when using the same setup. ```bash lerobot-teleoperate \ --robot.type=so101_follower \ --robot.port=/dev/tty.usbmodem58760431541 \ --robot.id=my_awesome_follower_arm \ --teleop.type=so101_leader \ --teleop.port=/dev/tty.usbmodem58760431551 \ --teleop.id=my_awesome_leader_arm ``` ```python from lerobot.teleoperators.so_leader import SO101Leader, SO101LeaderConfig from lerobot.robots.so_follower import SO101Follower, SO101FollowerConfig robot_config = SO101FollowerConfig( port="/dev/tty.usbmodem5AB90687491", id="my_follower_arm", ) teleop_config = SO101LeaderConfig( port="/dev/tty.usbmodem5AB90689011", id="my_leader_arm", ) robot = SO101Follower(robot_config) teleop_device = SO101Leader(teleop_config) robot.connect() teleop_device.connect() while True: action = teleop_device.get_action() robot.send_action(action) ``` The teleoperate command will automatically: 1. Identify any missing calibrations and initiate the calibration procedure. 2. Connect the robot and teleop device and start teleoperation. ## Cameras To add cameras to your setup, follow this [Guide](./cameras#setup-cameras). ## Teleoperate with cameras With `rerun`, you can teleoperate again while simultaneously visualizing the camera feeds and joint positions. In this example, we’re using the Koch arm. ```bash lerobot-teleoperate \ --robot.type=so101_follower \ --robot.port=/dev/tty.usbmodem5AB90687491 \ --robot.id=my_follower_arm \ --robot.cameras="{front: {type: opencv, index_or_path: 0, width: 640, height: 480, fps: 30}}" \ --teleop.type=so101_leader \ --teleop.port=/dev/tty.usbmodem5AB90689011 \ --teleop.id=my_leader_arm \ --display_data=true ``` ```python import time from lerobot.teleoperators.so_leader import SO101Leader, SO101LeaderConfig from lerobot.robots.so_follower import SO101Follower, SO101FollowerConfig from lerobot.cameras.opencv import OpenCVCameraConfig from lerobot.utils.visualization_utils import init_rerun, log_rerun_data, shutdown_rerun robot_config = SO101FollowerConfig( port="/dev/tty.usbmodem5AB90687491", id="my_follower_arm", cameras={ "wrist": OpenCVCameraConfig(index_or_path=0, width=640, height=480, fps=30), "top": OpenCVCameraConfig(index_or_path=1, width=640, height=480, fps=30) } ) teleop_config = SO101LeaderConfig( port="/dev/tty.usbmodem5AB90689011", id="my_leader_arm", ) init_rerun(session_name="teleoperation") robot = SO101Follower(robot_config) teleop_device = SO101Leader(teleop_config) robot.connect() teleop_device.connect() TARGET_HZ = 30 TIME_PER_FRAME = 1.0 / TARGET_HZ while True: start_time = time.perf_counter() observation = robot.get_observation() action = teleop_device.get_action() robot.send_action(action) log_rerun_data(observation=observation, action=action) elapsed_time = time.perf_counter() - start_time sleep_time = TIME_PER_FRAME - elapsed_time if sleep_time > 0: time.sleep(sleep_time) ``` ## Record a dataset Once you're familiar with teleoperation, you can record your first dataset. We use the Hugging Face hub features for uploading your dataset. If you haven't previously used the Hub, make sure you can login via the cli using a write-access token, this token can be generated from the [Hugging Face settings](https://huggingface.co/settings/tokens). Add your token to the CLI by running this command: ```bash hf auth login --token ${HUGGINGFACE_TOKEN} --add-to-git-credential ``` Then store your Hugging Face repository name in a variable: ```bash HF_USER=$(NO_COLOR=1 hf auth whoami | awk -F': *' 'NR==1 {print $2}') echo $HF_USER ``` Now you can record a dataset. To record 5 episodes and upload your dataset to the hub, adapt the code below for your robot and execute the command or API example. ```bash lerobot-record \ --robot.type=so101_follower \ --robot.port=/dev/tty.usbmodem585A0076841 \ --robot.id=my_awesome_follower_arm \ --robot.cameras="{ front: {type: opencv, index_or_path: 0, width: 1920, height: 1080, fps: 30}}" \ --teleop.type=so101_leader \ --teleop.port=/dev/tty.usbmodem58760431551 \ --teleop.id=my_awesome_leader_arm \ --display_data=true \ --dataset.repo_id=${HF_USER}/record-test \ --dataset.num_episodes=5 \ --dataset.single_task="Grab the black cube" \ --dataset.streaming_encoding=true \ # --dataset.rgb_encoder.vcodec=auto \ --dataset.encoder_threads=2 ``` ```python from lerobot.cameras.opencv import OpenCVCameraConfig from lerobot.datasets.lerobot_dataset import LeRobotDataset from lerobot.utils.feature_utils import hw_to_dataset_features from lerobot.robots.so_follower import SO101Follower, SO101FollowerConfig from lerobot.teleoperators.so_leader.config_so_leader import SO101LeaderConfig from lerobot.teleoperators.so_leader.so_leader import SO101Leader from lerobot.common.control_utils import init_keyboard_listener from lerobot.utils.utils import log_say from lerobot.utils.visualization_utils import init_rerun from lerobot.scripts.lerobot_record import record_loop from lerobot.processor import make_default_processors NUM_EPISODES = 5 FPS = 30 EPISODE_TIME_SEC = 60 RESET_TIME_SEC = 10 TASK_DESCRIPTION = "My task description" def main(): # Create robot configuration robot_config = SO101FollowerConfig( port="/dev/tty.usbmodem5AB90687491", id="my_follower_arm", cameras={ "wrist": OpenCVCameraConfig(index_or_path=0, width=640, height=480, fps=30), "top": OpenCVCameraConfig(index_or_path=1, width=640, height=480, fps=30) } ) teleop_config = SO101LeaderConfig( port="/dev/tty.usbmodem5AB90689011", id="my_leader_arm", ) # Initialize the robot and teleoperator robot = SO101Follower(robot_config) teleop = SO101Leader(teleop_config) # Configure the dataset features action_features = hw_to_dataset_features(robot.action_features, "action") obs_features = hw_to_dataset_features(robot.observation_features, "observation") dataset_features = {**action_features, **obs_features} # Create the dataset dataset = LeRobotDataset.create( repo_id="/", fps=FPS, features=dataset_features, robot_type=robot.name, use_videos=True, image_writer_threads=4, ) # Initialize the keyboard listener and rerun visualization _, events = init_keyboard_listener() init_rerun(session_name="recording") # Connect the robot and teleoperator robot.connect() teleop.connect() # Create the required processors teleop_action_processor, robot_action_processor, robot_observation_processor = make_default_processors() episode_idx = 0 while episode_idx < NUM_EPISODES and not events["stop_recording"]: log_say(f"Recording episode {episode_idx + 1} of {NUM_EPISODES}") record_loop( robot=robot, events=events, fps=FPS, teleop_action_processor=teleop_action_processor, robot_action_processor=robot_action_processor, robot_observation_processor=robot_observation_processor, teleop=teleop, dataset=dataset, control_time_s=EPISODE_TIME_SEC, single_task=TASK_DESCRIPTION, display_data=True, ) # Reset the environment if not stopping or re-recording if not events["stop_recording"] and (episode_idx < NUM_EPISODES - 1 or events["rerecord_episode"]): log_say("Reset the environment") record_loop( robot=robot, events=events, fps=FPS, teleop_action_processor=teleop_action_processor, robot_action_processor=robot_action_processor, robot_observation_processor=robot_observation_processor, teleop=teleop, control_time_s=RESET_TIME_SEC, single_task=TASK_DESCRIPTION, display_data=True, ) if events["rerecord_episode"]: log_say("Re-recording episode") events["rerecord_episode"] = False events["exit_early"] = False dataset.clear_episode_buffer() continue dataset.save_episode() episode_idx += 1 # finalize dataset log_say("Finalizing dataset...") dataset.finalize() # Clean up log_say("Stop recording") robot.disconnect() teleop.disconnect() dataset.push_to_hub() if __name__ == "__main__": main() ``` #### Dataset upload Locally, your dataset is stored in this folder: `~/.cache/huggingface/lerobot/{repo-id}`. At the end of data recording, your dataset will be uploaded on your Hugging Face page (e.g. `https://huggingface.co/datasets/${HF_USER}/so101_test`) that you can obtain by running: ```bash echo https://huggingface.co/datasets/${HF_USER}/so101_test ``` Your dataset will be automatically tagged with `LeRobot` for the community to find it easily, and you can also add custom tags (in this case `tutorial` for example). You can look for other LeRobot datasets on the hub by searching for `LeRobot` [tags](https://huggingface.co/datasets?other=LeRobot). You can also push your local dataset to the Hub manually, running: ```bash hf upload ${HF_USER}/record-test ~/.cache/huggingface/lerobot/{repo-id} --repo-type dataset ``` #### Record function The `record` function provides a suite of tools for capturing and managing data during robot operation: ##### 1. Data Storage - Data is stored using the `LeRobotDataset` format and is stored on disk during recording. - By default, the dataset is pushed to your Hugging Face page after recording. - To disable uploading, use `--dataset.push_to_hub=False`. ##### 2. Checkpointing and Resuming - Checkpoints are automatically created during recording. - If an issue occurs or you want to record additional episodes in the same dataset, you can resume by re-running the same command with `--resume=true`. When resuming a recording, `--dataset.num_episodes` must be set to the **number of additional episodes to be recorded**, and not to the targeted total number of episodes in the dataset! Make sure that you also set `--dataset.root="local_path"`, it's a local path to save the new part of the dataset and is required to resume. - To start recording from scratch, **manually delete** the dataset directory. ##### 3. Recording Parameters Set the flow of data recording using command-line arguments: - `--dataset.episode_time_s=60` Duration of each data recording episode (default: **60 seconds**). - `--dataset.reset_time_s=60` Duration for resetting the environment after each episode (default: **60 seconds**). - `--dataset.num_episodes=50` Total number of episodes to record (default: **50**). ##### 4. Keyboard Controls During Recording Control the data recording flow using keyboard shortcuts: - Press **Right Arrow (`→`)** or **`n`**: Early stop the current episode or reset time and move to the next. - Press **Left Arrow (`←`)** or **`r`**: Cancel the current episode and re-record it. - Press **Escape (`ESC`)** or **`q`**: Immediately stop the session, encode videos, and upload the dataset. These control-flow shortcuts work on **X11, Wayland, and headless/SSH** sessions. When a global keyboard backend isn't available (Wayland, a headless machine, or macOS without Accessibility permission), `lerobot-record` automatically reads the same keys from the terminal — launch it from an interactive terminal and keep it focused. You can also use the letter equivalents **`n`** (next, same as `→`), **`r`** (re-record, same as `←`) and **`q`** (quit, same as `ESC`). No `$DISPLAY` setup is required. This applies to the recording control flow only. Keyboard **teleoperation** (driving the robot with the keyboard) still needs a global key backend, so it works only on an X11 session, a Windows desktop, or macOS with Accessibility/Input Monitoring granted — not on Wayland or headless sessions. #### Tips for gathering data Once you're comfortable with data recording, you can create a larger dataset for training. A good starting task is grasping an object at different locations and placing it in a bin. We suggest recording at least 50 episodes, with 10 episodes per location. Keep the cameras fixed and maintain consistent grasping behavior throughout the recordings. Also make sure the object you are manipulating is visible on the camera's. A good rule of thumb is you should be able to do the task yourself by only looking at the camera images. In the following sections, you’ll train your neural network. After achieving reliable grasping performance, you can start introducing more variations during data collection, such as additional grasp locations, different grasping techniques, and altering camera positions. Avoid adding too much variation too quickly, as it may hinder your results. If you want to dive deeper into this important topic, you can check out the [blog post](https://huggingface.co/blog/lerobot-datasets#what-makes-a-good-dataset) we wrote on what makes a good dataset. #### Troubleshooting: - On Linux, the recording control-flow keys (arrow keys, Escape) work on X11, Wayland, and headless/SSH sessions as long as `lerobot-record` runs in an interactive terminal — no `$DISPLAY` setup is needed. If the keys have no effect, make sure you are in an interactive (TTY) terminal, not a piped/non-TTY session, and that it is focused; the letter equivalents `n` / `r` / `q` also work. Keyboard _teleoperation_ (as opposed to the recording control flow) still requires a global key backend — an X11 session, a Windows desktop, or macOS with Accessibility/Input Monitoring granted — and is unavailable on Wayland or headless machines. See [pynput limitations](https://pynput.readthedocs.io/en/latest/limitations.html#linux). ## Visualize a dataset If you uploaded your dataset to the hub with `--control.push_to_hub=true`, you can [visualize your dataset online](https://huggingface.co/spaces/lerobot/visualize_dataset) by copy pasting your repo id given by: ```bash echo ${HF_USER}/so101_test ``` ## Replay an episode A useful feature is the `replay` function, which allows you to replay any episode that you've recorded or episodes from any dataset out there. This function helps you test the repeatability of your robot's actions and assess transferability across robots of the same model. You can replay the first episode on your robot with either the command below or with the API example: ```bash lerobot-replay \ --robot.type=so101_follower \ --robot.port=/dev/tty.usbmodem58760431541 \ --robot.id=my_awesome_follower_arm \ --dataset.repo_id=${HF_USER}/record-test \ --dataset.episode=0 # choose the episode you want to replay ``` ```python import time from lerobot.datasets import LeRobotDataset from lerobot.robots.so_follower import SO100Follower, SO100FollowerConfig from lerobot.utils.robot_utils import precise_sleep from lerobot.utils.utils import log_say episode_idx = 0 robot_config = SO100FollowerConfig(port="/dev/tty.usbmodem5AB90687491", id="my_follower_arm") robot = SO100Follower(robot_config) robot.connect() dataset = LeRobotDataset("/", episodes=[episode_idx]) actions = dataset.select_columns("action") log_say(f"Replaying episode {episode_idx}") for idx in range(dataset.num_frames): t0 = time.perf_counter() action = { name: float(actions[idx]["action"][i]) for i, name in enumerate(dataset.features["action"]["names"]) } robot.send_action(action) precise_sleep(max(1.0 / dataset.fps - (time.perf_counter() - t0), 0.0)) robot.disconnect() ``` Your robot should replicate movements similar to those you recorded. For example, check out [this video](https://x.com/RemiCadene/status/1793654950905680090) where we use `replay` on a Aloha robot from [Trossen Robotics](https://www.trossenrobotics.com). ## Train a policy To train a policy to control your robot, use the [`lerobot-train`](https://github.com/huggingface/lerobot/blob/main/src/lerobot/scripts/lerobot_train.py) script. A few arguments are required. Here is an example command: ```bash lerobot-train \ --dataset.repo_id=${HF_USER}/so101_test \ --policy.type=act \ --output_dir=outputs/train/act_so101_test \ --job_name=act_so101_test \ --policy.device=cuda \ --wandb.enable=true \ --policy.repo_id=${HF_USER}/my_policy ``` Let's explain the command: 1. We provided the dataset as argument with `--dataset.repo_id=${HF_USER}/so101_test`. 2. We provided the policy with `policy.type=act`. This loads configurations from [`configuration_act.py`](https://github.com/huggingface/lerobot/blob/main/src/lerobot/policies/act/configuration_act.py). Importantly, this policy will automatically adapt to the number of motor states, motor actions and cameras of your robot (e.g. `laptop` and `phone`) which have been saved in your dataset. 3. We provided `policy.device=cuda` since we are training on a Nvidia GPU, but you could use `policy.device=mps` to train on Apple silicon. 4. We provided `wandb.enable=true` to use [Weights and Biases](https://docs.wandb.ai/quickstart) for visualizing training plots. This is optional but if you use it, make sure you are logged in by running `wandb login`. Training should take several hours. You will find checkpoints in `outputs/train/act_so101_test/checkpoints`. To resume training from a checkpoint, below is an example command to resume from `last` checkpoint of the `act_so101_test` policy: ```bash lerobot-train \ --config_path=outputs/train/act_so101_test/checkpoints/last/pretrained_model/train_config.json \ --resume=true ``` `--config_path` also accepts a **Hub repo id**: if a run pushed its checkpoints to the Hub (with `--save_checkpoint_to_hub=true`), you can resume straight from the repo — its latest checkpoint is downloaded and training continues, restoring the optimizer, scheduler, step counter and data order: ```bash lerobot-train --config_path=${HF_USER}/my_policy --resume=true ``` If you do not want to push your model to the hub after training use `--policy.push_to_hub=false`. Additionally you can provide extra `tags` or specify a `license` for your model or make the model repo `private` by adding this: `--policy.private=true --policy.tags=\[ppo,rl\] --policy.license=mit` #### Train using Google Colab If your local computer doesn't have a powerful GPU you could utilize Google Colab to train your model by following the [ACT training notebook](./notebooks#training-act). #### Train using Hugging Face Jobs Hugging Face jobs let's you easily select hardware and run the training in the cloud. So if you don't have a powerful GPU or you need more VRAM or just want to train a model much faster use HF Jobs! It's pay as you go and you simply pay for each second of use, you can see the pricing and additional information [here](https://huggingface.co/docs/hub/jobs). > **Tip:** if you just want to launch a standard training run, you can skip building the command below and use the integrated **Train on HF Jobs via `--job.target`** flow described further down — `lerobot-train` then submits the job, uploads a local-only dataset for you, and streams the logs. To run the training manually use this command: ```bash hf jobs run \ --flavor a10g-small \ --timeout 4h \ --secrets HF_TOKEN \ huggingface/lerobot-gpu:latest \ -- \ python -m lerobot.scripts.lerobot_train \ --dataset.repo_id=username/dataset \ --policy.type=act \ --steps=5000 \ --batch_size=16 \ --policy.device=cuda \ --policy.repo_id=username/your_policy \ --log_freq=100 ``` ```python from huggingface_hub import run_job, get_token run_name = "act_so101_hf_jobs" dataset_id = "username/dataset" user_hub_id = "username" command_args = [ "python", "-m", "lerobot.scripts.lerobot_train", "--dataset.repo_id", dataset_id, "--policy.type", "act", "--steps", "5000", "--batch_size", "16", "--num_workers", "4", "--policy.device", "cuda", "--log_freq", "100", "--save_freq", "1000", "--save_checkpoint", "true", "--wandb.enable", "false", "--policy.repo_id", f"{user_hub_id}/{run_name}" ] print(f"Submitting job '{run_name}' to Hugging Face Infrastructure...") job_info = run_job( image="huggingface/lerobot-gpu:latest", command=command_args, flavor="a10g-small", timeout="4h", secrets={"HF_TOKEN": get_token()} ) print("\n🚀 Job successfully launched!") print(f"🔹 Job ID: {job_info.id}") print(f"🔗 Live UI Dashboard & Logs: {job_info.url}") ``` You can modify the `--flavor` to use different hardware, for example: `t4-small`, `a100-large`, `h200`. Use `hf jobs hardware` to see the full list with pricing. Depending on the model you want to train and the hardware you selected you can also modify the `--batch_size` and `--number_of_workers`. For longer training sessions increase the timeout. Once the training is started you can go to [Jobs](https://huggingface.co/settings/jobs) and see if your jobs is running as well as all the outputs. Sometimes it takes a few minutes to schedule your job so be patient. After training the model will be pushed to hub and you can use it as any other model with LeRobot. #### Train on HF Jobs via `--job.target` (integrated CLI) `lerobot-train` runs locally by default. To run on a HuggingFace GPU without constructing the Docker command yourself, pass `--job.target` with a hardware flavor name: ```bash lerobot-train \ --dataset.repo_id=${HF_USER}/so101_test \ --policy.type=act \ --policy.repo_id=${HF_USER}/my_policy \ --job.target=a10g-small ``` List available flavors and pricing with `hf jobs hardware`. The run streams its logs to your terminal; press Ctrl-C to detach (the job keeps running in the cloud). Re-attach or cancel with: ```bash hf jobs logs hf jobs cancel ``` If your dataset exists only locally (not yet on the Hub), it is automatically pushed to a **private** Hub repo so the job can download it by `repo_id` (nothing is made public). The trained model is pushed to the model repo at the end of the run. To also push every intermediate checkpoint to the Hub as it is saved (so you can monitor progress mid-run), add `--save_checkpoint_to_hub=true` — this requires a runtime image that includes this feature. Every job (and any dataset pushed by the run) is tagged `lerobot` so it's easy to find on the Hub. Add your own with `--job.tags '["my-tag"]'`. By default the job is capped at `2d` (48h) of wall-clock. Override it with an HF Jobs duration string, e.g. `--job.timeout=4h` to fail faster or `--job.timeout=7d` for a longer run. > **Note:** the model repo is created up front (it holds the staged training config the job runs from). If a run fails before the model is pushed, that repo is left on the Hub so you can inspect it — it is not deleted automatically, so repeated failures can leave empty repos behind. Remove one with `hf repo delete `. **Prerequisites:** run `hf auth login` before submitting. For Weights & Biases integration, run `wandb login` or set `WANDB_API_KEY` on your machine — the key is forwarded to the job automatically. **Resuming on a job.** Adding `--job.target` to a resume command runs the resume in the cloud — the same command works locally or remotely. The checkpoint repo is the source of truth, and new checkpoints continue the lineage in the same repo: ```bash # resume a Hub run on a job (its checkpoints are already on the Hub) lerobot-train --config_path=${HF_USER}/my_policy --resume=true --job.target=a10g-small # resume a LOCAL run on a job — the checkpoint is uploaded to a private Hub repo first, # then the job resumes from it (a local-only dataset is uploaded the same way) lerobot-train \ --config_path=outputs/train/act_so101_test/checkpoints/last/pretrained_model/train_config.json \ --resume=true \ --job.target=a10g-small ``` Job settings come from the current command, so override `--job.target`, `--job.timeout`, etc. as needed; for the resumed run to itself be resumable later, keep `--save_checkpoint_to_hub=true`. #### Upload policy checkpoints Once training is done, upload the latest checkpoint with: ```bash hf upload ${HF_USER}/act_so101_test \ outputs/train/act_so101_test/checkpoints/last/pretrained_model ``` You can also upload intermediate checkpoints with: ```bash CKPT=010000 hf upload ${HF_USER}/act_so101_test${CKPT} \ outputs/train/act_so101_test/checkpoints/${CKPT}/pretrained_model ``` ## Run inference and evaluate your policy Use `lerobot-rollout` to deploy a trained policy on your robot. You can choose different strategies depending on your needs: The examples below load the model from `--policy.path`. To pin a specific pushed version — useful once `--save_checkpoint_to_hub=true` has committed several checkpoints — add `--policy.pretrained_revision` with a commit hash, branch, or tag. Each pushed checkpoint is tagged with its step (e.g. `--policy.pretrained_revision=010000`), so you can recover a checkpoint by step without looking up its commit sha. ```bash lerobot-rollout \ --strategy.type=base \ --policy.path=${HF_USER}/my_policy \ --robot.type=so100_follower \ --robot.port=/dev/ttyACM1 \ --robot.cameras="{ up: {type: opencv, index_or_path: /dev/video10, width: 640, height: 480, fps: 30}, side: {type: intelrealsense, serial_number_or_name: 233522074606, width: 640, height: 480, fps: 30}}" \ --task="Put lego brick into the transparent box" \ --duration=60 ``` ```bash lerobot-rollout \ --strategy.type=sentry \ --strategy.upload_every_n_episodes=5 \ --policy.path=${HF_USER}/my_policy \ --robot.type=so100_follower \ --robot.port=/dev/ttyACM1 \ --robot.cameras="{ up: {type: opencv, index_or_path: /dev/video10, width: 640, height: 480, fps: 30}, side: {type: intelrealsense, serial_number_or_name: 233522074606, width: 640, height: 480, fps: 30}}" \ --dataset.repo_id=${HF_USER}/eval_so100 \ --dataset.single_task="Put lego brick into the transparent box" \ --duration=600 ``` The `--strategy.type` flag selects the execution mode: - `base`: Autonomous rollout with no data recording (useful for quick evaluation) - `sentry`: Continuous recording with auto-upload (useful for large-scale evaluation) - `highlight`: Ring buffer recording with keystroke save (useful for capturing interesting events) - `dagger`: Human-in-the-loop data collection (see [HIL Data Collection](./hil_data_collection)) - `episodic`: Episode-oriented policy recording with reset phases between episodes All strategies support `--inference.type=rtc` for smooth execution with slow VLA models (Pi0, Pi0.5, SmolVLA).