Qualys has introduced TotalAI, a solution aimed at tackling security challenges linked to generative AI and large language models (LLMs). This launch, announced at Black Hat 2024, responds to the urgent need for enhanced security measures as organizations increasingly adopt AI technologies. TotalAI extends Qualys' capabilities in asset visibility, vulnerability detection, and remediation specifically for AI applications.
The solution focuses on the OWASP Top 10 risks for LLM applications, addressing issues like prompt injection and sensitive data disclosure. With features such as AI asset discovery and model theft prevention, TotalAI empowers organizations to adopt AI confidently. Early access to the solution will be available in Q4 2024, along with a custom Risk Insights Report for interested organizations.
• Qualys TotalAI addresses security for generative AI and LLM applications.
• The solution targets OWASP Top 10 risks for LLM applications.
The article discusses how organizations face security challenges as they integrate generative AI into their products.
The article highlights the security risks associated with LLM applications that TotalAI aims to mitigate.
The article mentions that TotalAI specifically targets these risks for LLM applications.
The company is relevant for its new TotalAI solution aimed at enhancing security for AI applications.
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