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How to Guard Against the OWASP LLM Top Ten

As organizations deploy LLMs and agentic AI, a new class of security risks emerges. From prompt injection and data leakage to excessive agency and unbounded resource consumption, the OWASP LLM Top Ten highlights the most critical vulnerabilities facing AI-powered applications today. This guide breaks down each risk and provides practical, actionable guardrails to help security and engineering teams protect their LLM deployments, reduce exposure, and build safer AI systems from the start.


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