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2020

TanksWorld: A Multi-Agent Environment for AI Safety Research


Abstract

The ability to create artificial intelligence (AI) capable of performing complex tasks is rapidly outpacing our ability to ensure the safe and assured operation of AI-enabled systems. Fortunately, a landscape of AI safety research is emerging in response to this asymmetry and yet there is a long way to go. In particular, recent simulation environments created to illustrate AI safety risks are relatively simple or narrowly-focused on a particular issue. Hence, we see a critical need for AI safety research environments that abstract essential aspects of complex real-world applications. In this work, we introduce the AI safety TanksWorld as an environment for AI safety research with three essential aspects: competing performance objectives, human-machine teaming, and multi-agent competition. The AI safety TanksWorld aims to accelerate the advancement of safe multi-agent decision-making algorithms by providing a software framework to support competitions with both system performance and safety objectives. As a work in progress, this paper introduces our research objectives and learning environment with reference code and baseline performance metrics to follow in a future work.

Citation

@onlineRivera_2020 author: Rivera Corban G. and Lyons Olivia and Summitt Arielle and Fatima Ayman and Pak Ji and Shao William and Chalmers Robert and Englander Aryeh and Staley Edward W. and Wang I-Jeng and Llorens Ashley J. title: TanksWorld: A Multi-Agent Environment for AI Safety Research year: 2020 month: Feb eprinttype: arXiv eprint: 2002.11174v1 howpublished: arXiv:2002.11174v1 url: http://arxiv.org/abs/2002.11174v1

Citation

@onlineRivera_2020 author: Rivera Corban G. and Lyons Olivia and Summitt Arielle and Fatima Ayman and Pak Ji and Shao William and Chalmers Robert and Englander Aryeh and Staley Edward W. and Wang I-Jeng and Llorens Ashley J. title: TanksWorld: A Multi-Agent Environment for AI Safety Research year: 2020 month: Feb eprinttype: arXiv eprint: 2002.11174v1 howpublished: arXiv:2002.11174v1 url: http://arxiv.org/abs/2002.11174v1