Categories: AI/ML News

Adversarial technique targeting vulnerability in KataGo allows sub-par program to win

A team of researchers with members from MIT, UC Berkely and FAR AI has created a computer program to target vulnerabilities in the KataGo program that allow it to beat the AI-based system. They have published a paper describing their efforts on the arXiv preprint server.
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