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BOL <scp>e</scp> R <scp>o</scp> : Behavior optimization and learning for robots

Alexander Fabisch, Malte Langosz, Frank Kirchner

Year
2020
Citations
3
Access
Open access

Abstract

Reinforcement learning and behavior optimization are becoming more and more popular in the field of robotics because algorithms are mature enough to tackle real problems in this domain. Robust implementations of state-of-the-art algorithms are often not publicly available though, and experiments are hardly reproducible because open-source implementations are often not available or are still in a stage of research code. Consequently, often it is infeasible to deploy these algorithms on robotic systems. BOLeRo closes this gap for policy search and evolutionary algorithms by delivering open-source implementations of behavior learning algorithms for robots. It is easy to integrate in robotic middlewares and it can be used to compare methods and develop prototypes in simulation.

Keywords

Computer scienceImplementationReinforcement learningRobotRoboticsDomain (mathematical analysis)Source codeField (mathematics)Code (set theory)Artificial intelligence

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