Unlock the power of
agentic AI with this definitive, hands-on guide to architecting
production-ready intelligent systems using
Python,
LangGraph,
Model Context Protocol (MCP), and
RAG 2.0. Unlike traditional AI pipelines,
agentic systems leverage
stateful reasoning,
context-aware memory,
tool-driven execution, and
dynamic retrieval to deliver autonomous, scalable solutions for real-world applications. Written by
Yuan Zhu, this book provides
fully executable code,
architectural patterns, and
best practices to transform you into a master of
next-generation AI development.
Dive into building
modular agents capable of orchestrating
complex tasks, from
research assistants and
customer support agents to
compliance tools and
autonomous workflows. You’ll learn to design
LangGraph-based reasoning pipelines with
stateful control flows, integrate
secure tools with validated I/O and retries, and implement
advanced RAG 2.0 retrieval with
metadata filtering,
hybrid ranking, and
source traceability. Explore
multi-agent collaboration with
role-based systems,
shared memory, and
message-passing, while embedding
safety critics and
constitutional reasoning for reliable, ethical outputs.
This isn’t just theory it’s a
practical engineering blueprint packed with complete
Python code,
FastAPI deployment scripts,
Docker containerization,
CI/CD pipelines, and
real-time observability. From
modular MCP context injectors for dynamic memory routing to
scalable agent architectures, every chapter equips you with the tools to build
production-ready AI systems that excel in performance, safety, and scalability.
What You’ll Master:- Architect LangGraph workflows for dynamic reasoning and task orchestration
- Build secure tool integrations with robust error handling and fallback logic
- Implement MCP for context-aware memory and user profiling
- Create RAG 2.0 pipelines with metadata-driven retrieval and low-latency ranking
- Design multi-agent systems with role separation and shared memory coordination
- Embed safety guardrails and constitutional reasoning for auditable outputs
- Deploy production-grade agents with FastAPI, Docker, and real-time metrics
Whether you’re a
developer,
data scientist, or
AI engineer, this book delivers
step-by-step implementations to take your
agentic AI projects from prototype to production. Build
intelligent systems that reason, adapt, and scale—your blueprint for mastering
agentic AI starts here.