LIBERO

LIBERO is a benchmark designed to study lifelong robot learning. The idea is that robots won’t just be pretrained once in a factory, they’ll need to keep learning and adapting with their human users over time. This ongoing adaptation is called lifelong learning in decision making (LLDM), and it’s a key step toward building robots that become truly personalized helpers.

To make progress on this challenge, LIBERO provides a set of standardized tasks that focus on knowledge transfer: how well a robot can apply what it has already learned to new situations. By evaluating on LIBERO, different algorithms can be compared fairly and researchers can build on each other’s work.

LIBERO includes five task suites:

Together, these suites cover 130 tasks, ranging from simple object manipulations to complex multi-step scenarios. LIBERO is meant to grow over time, and to serve as a shared benchmark where the community can test and improve lifelong learning algorithms.

An overview of the LIBERO benchmark

Evaluating with LIBERO

At LeRobot, we ported LIBERO into our framework and used it mainly to evaluate SmolVLA, our lightweight Vision-Language-Action model.

LIBERO is now part of our multi-eval supported simulation, meaning you can benchmark your policies either on a single suite of tasks or across multiple suites at once with just a flag.

To Install LIBERO, after following LeRobot official instructions, just do: pip install -e ".[libero]"

Single-suite evaluation

Evaluate a policy on one LIBERO suite:

python src/lerobot/scripts/eval.py \
  --policy.path="your-policy-id" \
  --env.type=libero \
  --env.task=libero_object \
  --eval.batch_size=2 \
  --eval.n_episodes=3

Multi-suite evaluation

Benchmark a policy across multiple suites at once:

python src/lerobot/scripts/eval.py \
  --policy.path="your-policy-id" \
  --env.type=libero \
  --env.task=libero_object,libero_spatial \
  --eval.batch_size=1 \
  --eval.n_episodes=2

Policy inputs and outputs

When using LIBERO through LeRobot, policies interact with the environment via observations and actions:

We also provide a notebook for quick testing: Training with LIBERO

Training with LIBERO

When training on LIBERO tasks, make sure your dataset parquet and metadata keys follow the LeRobot convention.

The environment expects:

⚠️ Cleaning the dataset upfront is cleaner and more efficient than remapping keys inside the code. To avoid potential mismatches and key errors, we provide a preprocessed LIBERO dataset that is fully compatible with the current LeRobot codebase and requires no additional manipulation: πŸ‘‰ HuggingFaceVLA/libero

For reference, here is the original dataset published by Physical Intelligence: πŸ‘‰ physical-intelligence/libero


Example training command

python src/lerobot/scripts/train.py \
  --policy.type=smolvla \
  --policy.repo_id=${HF_USER}/libero-test \
  --dataset.repo_id=jadechoghari/smol-libero3 \
  --env.type=libero \
  --env.task=libero_10 \
  --output_dir=./outputs/ \
  --steps=100000 \
  --batch_size=4 \
  --eval.batch_size=1 \
  --eval.n_episodes=1 \
  --eval_freq=1000 \

Note on rendering

LeRobot uses MuJoCo for simulation. You need to set the rendering backend before training or evaluation:

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