Summary
As AI systems become more prevalent in critical domains, their inherent security vulnerabilities present significant risks, yet systematic evaluation methods are underdeveloped. To address this gap, researchers have introduced AVISE, a modular open-source framework designed to identify vulnerabilities and evaluate the security of AI systems and models. This framework aims to provide a much-needed systematic approach to AI security assessment.
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[Paper] Ruka-v2: Tendon Driven Open-Source Dexterous Hand with Wrist and Abduction for Robot Learning
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