Artículo: AMZ-B0FTWJFM88

Evaluation-Driven Development for Agentic AI Systems : Building Reliable, Scalable, and Trustworthy AI Agents Through Continuous Testing and Metrics

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Kindle

Kindle

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0.20 kg
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Amazon
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USA

Sobre este producto
  • Evaluation-Driven Development for Agentic AI SystemsBuilding Reliable, Scalable, and Trustworthy AI Agents Through Continuous Testing and Metrics Unlock the future of autonomous intelligence where AI agents are not just smart, but measurable, accountable, and continuously improving. This book reveals how to make reliability the foundation of innovation. Evaluation-Driven Development for Agentic AI Systems presents a groundbreaking framework for building, testing, and scaling intelligent agents with precision and trust. As AI rapidly evolves from simple models to autonomous, self-directing systems, traditional development and testing methods fall short. This book bridges that gap, introducing a comprehensive methodology that integrates continuous evaluation, benchmarking, and governance into every stage of the AI lifecycle.Drawing from cutting-edge practices in software engineering, DevOps, and AI safety research, it guides readers through designing evaluation pipelines, defining meaningful metrics, and building self-assessing agents that learn from their own performance. Whether you’re developing conversational assistants, autonomous decision systems, or multi-agent frameworks, this book shows how to operationalize reliability turning evaluation into a competitive advantage.Written with clarity and depth, it combines conceptual insight with hands-on implementation, offering code examples, practical frameworks, and proven metrics. The result is a structured approach for professionals who want to ensure their AI systems remain robust, transparent, and scalable in real-world deployment.Benefits:Practical Evaluation Frameworks: Learn how to design continuous testing loops, feedback metrics, and AI audit systems.Reliability by Design: Apply engineering-grade principles to ensure your AI behaves consistently under uncertainty.Agentic Self-Evaluation: Implement “agent-as-a-judge” models for autonomous performance monitoring and correction.Governance and Trust: Build compliant, auditable systems aligned with emerging AI safety and ethics standards.Future-Proof Methodology: Prepare for the next generation of intelligent systems with scalable, transparent evaluation pipelines.Transform how you build and trust AI. Get your copy of Evaluation-Driven Development for Agentic AI Systems today and start building agents that are not only powerful but provably reliable.

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