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Multi-Goal Reinforcement Learning: Challenging robotics environments and request for research

OpenAI February 26, 2018 Publication Multi-Goal Reinforcement Learning: Challenging robotics environments and request for research Read paper (opens in a new window) Loading… Share Abstract The purpose of...

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February 26, 2018

Multi-Goal Reinforcement Learning: Challenging robotics environments and request for research

Multi Goal Reinforcement Learning Challenging Robotics Environments And Request For Research

Abstract

The purpose of this technical report is two-fold. First of all, it introduces a suite of challenging continuous control tasks (integrated with OpenAI Gym) based on currently existing robotics hardware. The tasks include pushing, sliding and pick & place with a Fetch robotic arm as well as in-hand object manipulation with a Shadow Dexterous Hand. All tasks have sparse binary rewards and follow a Multi-Goal Reinforcement Learning (RL) framework in which an agent is told what to do using an additional input. The second part of the paper presents a set of concrete research ideas for improving RL algorithms, most of which are related to Multi-Goal RL and Hindsight Experience Replay.

  • Learning Paradigms
  • Robotics

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