| Management number | 232084902 | Release Date | 2026/06/18 | List Price | $8.62 | Model Number | 232084902 | ||
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Build real AI agent systems, not fragile demos.Systems Thinking for Agentic AI is a practical architecture book for software engineers, backend developers, technical leads, and architects who want to design production-ready applications with large language models.LLMs are powerful, but an LLM alone is not a system. Real AI applications need prompts, retrieval, tools, memory, and orchestration working together with guardrails, evaluation, observability, and runtime control — all inside clear engineering boundaries.This book explains how to move from simple chatbot experiments to reliable AI-enabled software systems. It focuses on the production realities that matter after the demo works: latency, cost, failure handling, tool execution, structured outputs, testing, tracing, safety controls, and maintainability.Who This Book Is ForThis book is for software engineers, backend developers, technical leads, and software architects who want to build practical AI systems. You do not need a machine learning background. If you already build backend services with APIs, distributed systems, and system design in mind, this book helps you extend that skill set directly into AI-powered systems.What You Will LearnHow LLMs process language through tokens, embeddings, and transformersHow to control model behavior with prompting, structured output, and decoding strategies such as temperature, top-k, and top-pHow to connect LLMs to production systems through function calling, tool integration, and Model Context Protocol (MCP)How to build RAG pipelines using embeddings, retrieval, and vector databasesHow to design agent workflows with planning, memory, orchestration, and controlled executionHow to use guardrails, validation, permissions, and human approval boundariesHow to evaluate quality, reduce hallucination risk, and build regression testsHow to monitor and debug AI systems with logs, metrics, traces, and tool call inspectionHow to reason about performance, cost, scaling, timeouts, retries, and fallback designHow an end-to-end Code Review Agent can be implemented with Spring BootWhy This Book ExistsMany developers know how to call an AI API. Far fewer know how to design a reliable system around it. That gap is where many AI projects start to fail.Prompts become trial-and-error experiments. Hallucinations feel unpredictable. Retrieval is added without enough attention to chunking, ranking, or grounding. Tool calls are wired in before validation and failure handling are clear. Observability arrives too late, after the workflow is already hard to debug.These are usually not model problems. They are system design problems. Production AI software still needs boundaries, trusted data flow, validation, orchestration, evaluation, monitoring, and operational control.If you're building AI-powered software and want it to actually work in production, this is your engineering guide. Read more
| ASIN | B0H2QLW56D |
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| ISBN13 | 979-8197120960 |
| Language | English |
| Publisher | Independently published |
| Dimensions | 6 x 1.1 x 9 inches |
| Item Weight | 1.8 pounds |
| Print length | 488 pages |
| Publication date | May 21, 2026 |
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