CybORG++: An Enhanced Gym for the Development of Autonomous Cyber Agents
Emerson, Harry, Bates, Liz, Hicks, Chris, Mavroudis, Vasilios
–arXiv.org Artificial Intelligence
CybORG++ is an advanced toolkit for reinforcement learning research focused on network defence. Building on the CAGE 2 CybORG environment, it introduces key improvements, including enhanced debugging capabilities, refined agent implementation support, and a streamlined environment that enables faster training and easier customisation. Along with addressing several software bugs from its predecessor, CybORG++ introduces MiniCAGE, a lightweight version of CAGE 2, which improves performance dramatically, up to 1000x faster execution in parallel iterations, without sacrificing accuracy or core functionality. CybORG++ serves as a robust platform for developing and evaluating defensive agents, making it a valuable resource for advancing enterprise network defence research.
arXiv.org Artificial Intelligence
Oct-18-2024
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