Generative AI-Driven Application Development with Java
Leveraging Large Language Models in Modern Java Applications
- Publisher's listprice EUR 40.65
-
16 859 Ft (16 056 Ft + 5% VAT)
The price is estimated because at the time of ordering we do not know what conversion rates will apply to HUF / product currency when the book arrives. In case HUF is weaker, the price increases slightly, in case HUF is stronger, the price goes lower slightly.
- Discount 12% (cc. 2 023 Ft off)
- Discounted price 14 836 Ft (14 129 Ft + 5% VAT)
Subcribe now and take benefit of a favourable price.
Subscribe
16 859 Ft
Availability
Not yet published.
Why don't you give exact delivery time?
Delivery time is estimated on our previous experiences. We give estimations only, because we order from outside Hungary, and the delivery time mainly depends on how quickly the publisher supplies the book. Faster or slower deliveries both happen, but we do our best to supply as quickly as possible.
Product details:
- Edition number First Edition
- Publisher Apress
- Date of Publication 13 December 2025
- Number of Volumes 1 pieces, Book
- ISBN 9798868816086
- Binding Paperback
- No. of pages377 pages
- Size 254x178 mm
- Language English
- Illustrations II, 377 p. 219 illus., 203 illus. in color. Illustrations, black & white 700
Categories
Long description:
"
This is the first hands-on guide that takes you from a simple “Hello, LLM” to production-ready microservices, all within the JVM. You’ll integrate hosted models such as OpenAI’s GPT-4o, run alternatives with Ollama or Jlama, and embed them in Spring Boot or Quarkus apps for cloud or on-pre deployment.
You’ll learn how prompt-engineering patterns, Retrieval-Augmented Generation (RAG), vector stores such as Pinecone and Milvus, and agentic workflows come together to solve real business problems. Robust test suites, CI/CD pipelines, and security guardrails ensure your AI features reach production safely, while detailed observability playbooks help you catch hallucinations before your users do. You’ll also explore DJL, the future of machine learning in Java.
This book delivers runnable examples, clean architectural diagrams, and a GitHub repo you can clone on day one. Whether you’re modernizing a legacy platform or launching a green-field service, you’ll have a roadmap for adding state-of-the-art generative AI without abandoning the language—and ecosystem—you rely on.
What You Will Learn
- Establish generative AI and LLM foundations
- Integrate hosted or local models using Spring Boot, Quarkus, LangChain4j, Spring AI, OpenAI, Ollama, and Jlama
- Craft effective prompts and implement RAG with Pinecone or Milvus for context-rich answers
- Build secure, observable, scalable AI microservices for cloud or on-prem deployment
- Test outputs, add guardrails, and monitor performance of LLMs and applications
- Explore advanced patterns, such as agentic workflows, multimodal LLMs, and practical image-processing use cases
Who This Book Is For
Java developers, architects, DevOps engineers, and technical leads who need to add AI features to new or existing enterprise systems. Data scientists and educators will also appreciate the code-first, Java-centric approach.
" MoreTable of Contents:
"
1: Megabrains 101: Generative AI & LLMs Unboxed.- 2: First Contact: “Hello, LLM” with Spring Boot.- 3: Bring Your Own Model: Self-Hosting with Ollama.- 4: Power Tools: LangChain4j Quick-Start.- 5: Integrating LLMs with Java Applications.- 6: From Chatty to Clever: Retrieval-Augmented Generation.- 7: Spring AI Ninja Moves.- 8: Prompt Alchemy: Patterns that Make Models Look Smarter.- 9: Swiss-Army LLMs: Tool Calls in Spring AI.- 10: Agents Assemble! Building Autonomous Workflows.- 11: The Transformer Saga—From Attention to Fine-Tuning.- 12: Does It Even Work? Testing & Evaluating LLM Apps.- 13: Cloud Power-Ups—Bedrock, Vertex & Azure OpenAI.- 14: Talking in Protocols: The MCP Revolution.- 15: Quarkus + LangChain4j: Lightning-Fast Gen AI.- 16: Jlama & Friends: Hosting Models the Java Way.- 17: Seeing Is Believing: Multimodal LLMs & Image Hacking.- 18: Native-Speed Machine Learning in Java: DJL, ONNX & JNI.- 19: Can You See Me Now? Observability for LLM Pipelines.- 20: Architectures of Tomorrow: From Monoliths to Modular Minds.
" More