Mastering Google ADK: Build AI Agents with Gemini and Automate Real-World Workflows: 2 (Building Intelligent Agents: The Complete Framework Series) - Softcover

Book 2 of 4: Building Intelligent Agents: The Complete Framework Series

Steele, Nathan

 
9798288593918: Mastering Google ADK: Build AI Agents with Gemini and Automate Real-World Workflows: 2 (Building Intelligent Agents: The Complete Framework Series)

Synopsis

Mastering Google ADK is the first deep-dive guide that shows developers—today and in the years ahead—how to design, build, and deploy production-ready AI agents with Google’s Agent Development Kit (ADK) and the latest Gemini 1.5 / 2.5 models. Written by cloud-architecture specialist Nathan Steele, this book strips away hype and teaches a proven, modular workflow that leading engineering teams are already using to automate research, customer support, data analysis, and more.


Why This Book Stands Out
  • End-to-End Blueprint: Learn every stage—from local prototyping to secure cloud deployment—so your agents run reliably at scale.

  • Tool-First Methodology: Schema-driven tools and the AgentLoop replace brittle prompt chains, giving you deterministic, traceable results.

  • Multi-Agent Orchestration: Design collaborative or competitive agent teams with the A2A protocol and Agent Engine for real-world complexity.

  • Gemini Expertise: Practical guidance on streaming output, vision inputs, and model tuning—perfect for both Gemini beginners and power users.

  • Enterprise-Ready Patterns: CI/CD pipelines, observability, safety filters, auto-evaluation, and cost controls ensure you meet production SLAs.

  • Future-Proof Content: Covers the 2025 ADK roadmap, Java bindings, and integrations with LangChain, AutoGen, DSPy, Neo4j, and Vertex AI.


Inside the Book
PartKey Topics & Skills You’ll Gain
1 — Foundations: Core concepts, ADK vs. LangChain/AutoGen, high-value use cases
2 — Environment Setup: CLI, folder structure, Gemini config, Google Cloud keys & billing
3 — First Agent Build: Tool schemas, AgentLoop execution, debugging with traces
4 — Multi-Agent Design: Role assignment, memory sharing, task routing, collaboration vs. competition
5 — Gemini & Tools: Streaming, tool calling, vision, external APIs, cloud functions, RAG pipelines
6 — Advanced Features: State management, evaluators, adapters, export & deployment
7 — Agent Engine Deployments: Tracing UI, scaling sessions, secure API gateways, CI/CD
8 — A2A & MCP: Secure messaging, identity, cross-agent governance
9 — Real-World Recipes: Doc-parser notifier, research team, internal support agent, Neo4j graph app, custom modular assistant
10 — Evaluation & Ethics: Auto-scoring, success metrics, hallucination handling, content moderation
11 — Troubleshooting & Optimization: Latency, quotas, observability, anti-patterns, Gemini performance tuning
12 — Looking Forward: ADK roadmap, open-source templates, fully autonomous systems, staying current
About the Author

Nathan Steele is a veteran solutions architect who has helped Fortune 500 companies modernize data pipelines and deploy large-scale AI systems on Google Cloud. His workshops on agentic workflows and Gemini best practices have trained teams across five continents. In this book, Nathan distills years of hands-on experience into a pragmatic playbook any developer can follow.


Perfect For
  • Python engineers and ML practitioners who want to move beyond prompt hacking.

  • Cloud architects seeking a secure, observable framework for AI automation.

  • Product teams aiming to embed intelligent, tool-calling agents into SaaS or enterprise apps.

  • Consultants and tech leaders tasked with future-proofing their organization’s AI strategy.

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