Success stories of applied machine learning can be traced back to the datasets and environments that were put forward as challenges for the community. The challenge that the community sets as a benchmark is usually the challenge that the community eventually solves. The ultimate challenge of reinforcement learning research is to train real agents to operate in the real environment, but until now there has not been a common real-world RL benchmark. In this work, we present a prototype real-world environment from OffWorld Gym -- a collection of real-world environments for reinforcement learning in robotics with free public remote access. Close integration into existing ecosystem allows the community to start using OffWorld Gym without any prior experience in robotics and takes away the burden of managing a physical robotics system, abstracting it under a familiar API. We introduce a navigation task, where a robot has to reach a visual beacon on an uneven terrain using only the camera input and provide baseline results in both the real environment and the simulated replica. To start training, visit https://gym.offworld.ai
翻译:应用机器学习的成功故事可以追溯到作为社区挑战而提出的数据集和环境。社区作为基准确定的挑战通常是社区最终要解决的挑战。强化学习研究的最终挑战是培训真正的代理人员在实际环境中运作,但迄今为止还没有一个共同的现实世界RL基准。在这项工作中,我们展示了一个来自OffWorld Gym的原型真实世界环境,这是一套真实世界环境的集合,用于加强机器人的学习,并免费公开远程访问。与现有生态系统的紧密结合使得社区能够开始使用OffWorld Gym,而无需任何机器人的经验,并摆脱管理物理机器人系统的负担,在熟悉的API下将其抽取。我们引入了导航任务,在这种任务中,机器人只能使用摄像器输入在不均匀的地形上达到视觉灯塔,并在真实环境和模拟复制品中提供基线结果。开始培训,访问 https://gym.offworld。