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Book Overview & Buying
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Table Of Contents
AI-Native LLM Security
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In recent years, LLMs have emerged as transformative tools across industries, enabling unprecedented capabilities in natural language processing, content generation, and decision support. However, with this power comes significant security challenges. This chapter provides a comprehensive framework for designing secure LLM systems, focusing on architectural principles, security controls, and industry best practices that ensure robust protection against both known and emerging threats. The architectural design principles discussed align with industry standards such as the MITRE ATLAS framework for an adversarial threat landscape and the NIST AI Risk Management Framework (AI RMF 1.0), providing a foundation for systematic risk assessment and mitigation.
As organizations increasingly deploy LLMs in production environments, the need for secure-by-design approaches has become paramount. Traditional...
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