A rigorous, project-driven engineering guide to designing, implementing, and operating autonomous multi-agent systems. This book moves beyond theory to deliver production-grade patterns, tested code examples, and deployment strategies that enable teams to build resilient, observable, and secure agentic AI solutions.
What’s inside- Concise theoretical foundations for agentic AI and multi-agent coordination.
- Architectural patterns for agent communication, role assignment, and decision policies.
- End-to-end Python implementations and reproducible projects (business automation, conversational agents, orchestrated pipelines).
- Engineering concerns: state management, retries, fault tolerance, monitoring, logging, and observability.
- Integration strategies for external APIs, databases, and vector stores.
- Security, compliance, and production hardening guidance.
Key topics;agentic AI, multi-agent systems, autonomous agents, orchestration, workflow automation, agent communication, decision policies, fault tolerance, observability, Python, API integration, production scaling.
Who should read thisSoftware engineers, ML engineers, platform architects, and technical leads building multi-step LLM workflows or autonomous pipelines that must operate reliably in production. Prior experience with Python and basic ML/LLM concepts is recommended.
Deliverables & format- Practical code examples and templates ready for integration into production codebases.
- Two complete case studies with architecture diagrams and operational checklists.
- Best-practice playbooks for testing, deployment, incident response, and scaling.