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--- | ||
layout: "contents" | ||
title: Generate data with expert policies | ||
firstpage: | ||
--- | ||
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# Generate data with expert policies | ||
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## Expert Policies | ||
For each individual environment in Meta-World (i.e. reach, basketball, sweep) there are expert policies that solve the task. These policies can be used to generate expert data for imitation learning tasks. | ||
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## Using Expert Policies | ||
The below example provides sample code for the reach environment. This code can be extended to the ML10/ML45/MT10/MT50 sets if a list of policies is maintained. | ||
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```python | ||
from metaworld import MT1 | ||
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from metaworld.policies.sawyer_reach_v2_policy import SawyerReachV2Policy as p | ||
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mt1 = MT1('reach-v2', seed=42) | ||
env = mt1.train_classes['reach-v2']() | ||
env.set_task(mt1.train_tasks[0]) | ||
obs, info = env.reset() | ||
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policy = p() | ||
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done = False | ||
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while not done: | ||
a = policy.get_action(obs) | ||
obs, _, _, _, info = env.step(a) | ||
done = int(info['success']) == 1 | ||
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``` |