AI systems are evolving beyond simple chatbots. Cognitive agents can remember, reason, and adapt, but they only succeed if context is engineered correctly. Without the right memory pipelines, retrieval strategies, and safeguards, even the most powerful language models fail to deliver.
Context Engineering for Cognitive Agents is the first technical guide dedicated to solving this challenge. It provides developers, researchers, and innovators with a complete framework for designing agents that use context effectively to think, learn, and act.
Inside, you will learn how to:
Understand context windows, memory types, and retrieval strategies
Build memory architectures that extend beyond LLM limits
Implement Retrieval-Augmented Generation (RAG) with vector databases
Apply summarization and compression to manage context efficiently
Orchestrate reasoning and context pipelines for complex tasks
Compare frameworks like LangChain, LlamaIndex, AutoGen, and CrewAI
Secure your agents against context injection and adversarial prompts
Explore case studies of cognitive agents in research, support, and automation
Whether you are building next-generation applications, designing multi-agent systems, or researching the limits of AI cognition, this book equips you with the tools and practices to move from fragile prototypes to reliable, context-aware systems.
If you are ready to master the missing piece of AI agent engineering, this book is your essential guide.