UC Berkeley Researchers Introduce the Unsupervised Reinforcement Learning Benchmark (URLB)

#artificialintelligence 

Reinforcement Learning (RL) is a robust AI paradigm for handling various issues, including autonomous vehicle control, digital assistants, and resource allocation, to mention a few. However, even the best RL agents today are narrow. Most RL algorithms currently can only solve the single job they were trained on and have no cross-task or cross-domain generalization ability. The narrowness of today's RL systems has the unintended consequence of making today's RL agents incredibly data inefficient. Agents overfit to a specific extrinsic incentive, limiting their ability to generalize in RL.

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