Publisher's Synopsis
Mastering Google Agent-to-Agent (A2A): Building Autonomous Multi-Agent AI Systems to Architect Scalable AI Workflows
What if your AI systems could talk to each other like intelligent collaborators-passing tasks, sharing context, adapting in real time, and scaling without breaking down? That's the promise of Google's Agent-to-Agent (A2A) protocol, and this book shows you exactly how to harness it.
Mastering Google Agent-to-Agent (A2A) is a hands-on developer's guide for building intelligent multi-agent systems using Google's Agent Development Kit (ADK), the Model Context Protocol (MCP), and Gemini-powered workflows. Whether you're orchestrating autonomous agents with Autogen, designing agentic systems in Python, or deploying next-gen AI pipelines using JSON-RPC and REST, this book gives you the practical tools and examples you need-fast.
You'll learn to architect scalable AI workflows from the ground up, define robust MCP context envelopes, structure real-world agent communications using the Google ADK Agent Architecture, and deploy action-based, context-aware agents across hybrid cloud environments. This book includes step-by-step guidance on creating end-to-end AI agent pipelines, implementing Python examples for A2A and JSON-RPC endpoints, and using Gemini models in decision agents and tool-using frameworks.
What makes this book different?
It's structured for builders. Each chapter delivers focused lessons:
Chapter 3: Creating Your First A2A Agent - Walks you through Python implementation and schema definition.
Chapter 4: Context Management with MCP - Shows how to pass memory, goals, and persona across agent chains.
Chapter 5: Secure Authentication - Covers OAuth2, role-based access, and credential strategies in multi-tenant setups.
Chapter 6: Observability - Teaches distributed tracing, SLA monitoring, and structured logging.
Chapter 7: Human-in-the-Loop Checkpoints - Adds approval UIs and auditability to your pipelines.
Chapter 10: Real-World Use Case - Automate reports with n8n and A2A agents in a complete enterprise pipeline.
Are you designing AI systems that need to scale without becoming unmanageable? Do you need to coordinate multiple LLM-based agents in production? This book gives you the architecture, the tools, and the confidence to do it right.
Take your multi-agent AI development to the next level. Start building autonomous systems that communicate, adapt, and scale-efficiently, reliably, and with real-world impact. Buy the book now and start engineering intelligent pipelines with precision.