ray/rllib/agents/cql
2021-12-04 13:26:33 +01:00
..
tests [RLlib] Allow for evaluation to run by timesteps (alternative to episodes) and add auto-setting to make sure train doesn't ever have to wait for eval (e.g. long episodes) to finish. (#20757) 2021-12-04 13:26:33 +01:00
__init__.py [RLlib] New Offline RL Algorithm: CQL (based on SAC) (#13118) 2020-12-30 10:11:57 -05:00
cql.py [RLlib] Report total_train_steps correctly for offline agents like CQL. (#20541) 2021-11-22 21:46:45 +01:00
cql_tf_policy.py [RLlib] Use SampleBrach instead of input dict whenever possible (#20746) 2021-12-02 13:11:26 +01:00
cql_torch_policy.py [RLlib] Use SampleBrach instead of input dict whenever possible (#20746) 2021-12-02 13:11:26 +01:00
README.md [RLlib] CQL Documentation + Tests (#14531) 2021-03-11 18:51:39 +01:00

Conservative Q-Learning (CQL)

Overview

CQL is an offline RL algorithm that mitigates the overestimation of Q-values outside the dataset distribution via convservative critic estimates. CQL does this by adding a simple Q regularizer loss to the standard Belman update loss. This ensures that the critic does not output overly-optimistic Q-values and can be added on top of any off-policy Q-learning algorithm (in this case, we use SAC).

Documentation & Implementation:

Conservative Q-Learning (CQL).

Detailed Documentation

Implementation