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    Context Engineering for AI Agents : Designing, Managing, and Optimizing Context with MCP, LangGraph, and CrewAI

    Posted By: TiranaDok
    Context Engineering for AI Agents : Designing, Managing, and Optimizing Context with MCP, LangGraph, and CrewAI

    Context Engineering for AI Agents : Designing, Managing, and Optimizing Context with MCP, LangGraph, and CrewAI by James Wiglow
    English | September 11, 2025 | ISBN: N/A | ASIN: B0FQWNG9R2 | 662 pages | EPUB | 0.74 Mb

    Build AI agents that are grounded, safe, and scalable—by design.
    “Context Engineering for AI Agents” is a practical guide to designing, managing, and optimizing the information your agents need to think clearly and act responsibly. Instead of hoping prompts will hold, you’ll learn to build small, typed seams between data, tools, and models—so outputs stay factual, costs stay predictable, and behavior is easy to audit.
    What you’ll learn
    • Design the four context streams—instructional, data, memory, and environmental—and route only what matters.
    • Expose deterministic tools with MCP (JSON-RPC + JSON Schema) so models read truth, not guess APIs.
    • Orchestrate reliable workflows in LangGraph using typed state, checkpoints, and approval interrupts.
    • Coordinate multi-agent work with CrewAI while partitioning sensitive context and enforcing roles.
    • Ship RAG that cites sources: smart chunking, hybrid search, re-ranking, and freshness guards.
    • Compress long materials without losing facts; fit tight context windows with extractive/abstractive techniques.
    • Defend against prompt injection and data leaks; log for privacy, compliance, and audits.
    • Scale with confidence: vector stores and knowledge graphs, caching, SLOs, and cost tuning.
    Hands-on and production-shaped
    Each chapter pairs clear explanations with step-by-step patterns you can drop into a codebase: a customer-support agent with live policy retrieval, a research assistant with context-driven RAG, an approval-gated action loop, and a disciplined multi-agent handoff—no external repos required.
    Who this book is for
    Software engineers, ML/AI engineers, and tech leads who need agents that work in the real world—grounded, auditable, and easy to evolve.
    Make context your competitive edge. Build agents that read, decide, and act—by contract.