AI infrastructure security assessment tool to discover and detect potential security risks in AI systems.
AI Infra Guard is an AI infrastructure security assessment tool developed by Tencent. It focuses on discovering and detecting potential security risks in AI systems, supports 28 types of AI framework fingerprint recognition, and covers more than 200 security vulnerability databases. The tool is lightweight, easy to use, requires no complex configuration, has flexible matching syntax and cross-platform support. It provides an efficient assessment method for the security of AI infrastructure and helps enterprises and developers protect their AI systems from security threats.
This product is suitable for AI developers, security researchers and enterprise IT teams to help them evaluate and protect the security of AI infrastructure. It can quickly identify potential security vulnerabilities and ensure the stable operation of AI systems.
Enterprise IT teams use AI Infra Guard to regularly scan AI systems to discover and fix security vulnerabilities.
AI developers use this tool to assess whether newly developed AI models pose security risks.
Security researchers use AI Infra Guard to conduct security research and explore the potential attack surface of AI systems.
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