Building Neo4j-Powered Applications with LLMs: Create LLM-driven search and recommendations applications with Haystack, LangChain4j, and Spring AI
暫譯: 使用 LLM 建立 Neo4j 驅動的應用程式:利用 Haystack、LangChain4j 和 Spring AI 創建 LLM 驅動的搜尋與推薦應用程式
Anthapu, Ravindranatha, Agarwal, Siddhant, Webber, Jim
- 出版商: Packt Publishing
- 出版日期: 2025-06-20
- 售價: $1,620
- 貴賓價: 9.5 折 $1,539
- 語言: 英文
- 頁數: 312
- 裝訂: Quality Paper - also called trade paper
- ISBN: 1836206232
- ISBN-13: 9781836206231
-
相關分類:
LangChain
立即出貨 (庫存=1)
買這商品的人也買了...
LLM 大語言模型 詳見活動內容 »
-
78折
零基礎玩轉 LLM 應用全攻略:Python × No-Code 實作 AI 開發超簡單(iThome鐵人賽系列書)$690$538 -
79折
大型語言模型應用實戰:從 Prompt Engineering 到 Agentic RAG 與 MCP$790$624 -
78折
大模型時代:從 ChatGPT 一枝獨秀到全面開戰的 AI 賽局$500$390 -
79折
業界實戰親授 - 大型語言模型微調、最佳化、佈署一次到位$980$774 -
79折
深度學習最佳入門與專題實戰:自然語言處理、大型語言模型與強化學習篇$880$695 -
79折
AIGC 大型語言模型 - 個人應用到企業實戰立刻上手$780$616 -
79折
讓 LLM 飛起來的工具使用 - AI Agent MCP 協議開發、標準、應用$790$624 -
79折
AI Agent 手刻首選 - 使用 LangChain 親手實作 LLM 大型商業專案$880$695 -
79折
LLMOps 打造穩定運行的大型語言模型系統 (LLMOps: Managing Large Language Models in Production)$620$489 -
79折
實用 DeepSeek 技術 - 開發真正可用的 LLM 應用程式$880$695 -
78折
AI 程式設計、深度學習與 LLM 入門到精通:PyTorch × GPT × Transformer × LLaMA 實作指南(iThome鐵人賽系列書)$650$507 -
79折
LLM 工程師開發手冊 (LLM Engineer's Handbook: Master the art of engineering large language models from concept to production)$1,250$987 -
79折
AI Agent 智能工作流:設計與自動化全實戰$760$600 -
79折
不再是 ChatBot - 最新 AI Agent 代理建構$880$695 -
79折
最新 AI 開發範式 - Agent 多重智慧體自動產生應用$680$537 -
79折
LangChain 開發手冊 -- OpenAI × LCEL 表達式 × Agent 自動化流程 × RAG 擴展模型知識 × 圖形資料庫 × LangSmith 除錯工具$680$537 -
79折
LLM 提示工程技術|打造兼具藝術與科學的高效應用 (Prompt Engineering for LLMs: The Art and Science of Building Large Language Model-Based Applications)$620$489 -
79折
LLM 語意理解與生成技術完全開發 (Hands-On Large Language Models)$980$774 -
79折
LLM × 網路爬蟲終極實戰:n8n 串接資料爬取 × Qdrant × RAG 打造本機 AI Agent$980$774 -
79折
LangChain 學習手冊|使用 LangChain 與 LangGraph 建構 AI 與 LLM 應用程式 (Learning LangChain: Building AI and LLM Applications with LangChain and LangGraph)$680$537 -
79折
Node.js 與 LLM 原理與實務:AI 應用程式開發$780$616 -
79折
知道你的下一筆訂單 - 使用 LLM$980$774 -
79折
更少 GPU 卻更強 - LLM 輕量化壓縮及加速訓練$980$774 -
79折
AI Agent 自動化流程超 Easy -- 不寫程式 No Code 聰明完成樣樣事$750$592 -
VIP 95折
AI傳媒學:大模型助力傳媒行業應用與創新$588$558
相關主題
商品描述
A comprehensive guide to building cutting-edge generative AI applications using Neo4j's knowledge graphs and vector search capabilities
Key Features:
- Design vector search and recommendation systems with LLMs using Neo4j GenAI, Haystack, Spring AI, and LangChain4j
- Apply best practices for graph exploration, modeling, reasoning, and performance optimization
- Build and consume Neo4j knowledge graphs and deploy your GenAI apps to Google Cloud
- Purchase of the print or Kindle book includes a free PDF eBook
Book Description:
Embark on an expert-led journey into building LLM-powered applications using Retrieval-Augmented Generation (RAG) and Neo4j knowledge graphs. Written by Ravindranatha Anthapu, Principal Consultant at Neo4j, and Siddhant Agrawal, a Google Developer Expert in GenAI, this comprehensive guide is your starting point for exploring alternatives to LangChain, covering frameworks such as Haystack, Spring AI, and LangChain4j.
As LLMs (large language models) reshape how businesses interact with customers, this book helps you develop intelligent applications using RAG architecture and knowledge graphs, with a strong focus on overcoming one of AI's most persistent challenges-mitigating hallucinations. You'll learn how to model and construct Neo4j knowledge graphs with Cypher to enhance the accuracy and relevance of LLM responses.
Through real-world use cases like vector-powered search and personalized recommendations, the authors help you build hands-on experience with Neo4j GenAI integrations across Haystack and Spring AI. With access to a companion GitHub repository, you'll work through code-heavy examples to confidently build and deploy GenAI apps on Google Cloud.
By the end of this book, you'll have the skills to ground LLMs with RAG and Neo4j, optimize graph performance, and strategically select the right cloud platform for your GenAI applications.
What You Will Learn:
- Design, populate, and integrate a Neo4j knowledge graph with RAG
- Model data for knowledge graphs
- Integrate AI-powered search to enhance knowledge exploration
- Maintain and monitor your AI search application with Haystack
- Use LangChain4j and Spring AI for recommendations and personalization
- Seamlessly deploy your applications to Google Cloud Platform
Who this book is for:
This LLM book is for database developers and data scientists who want to leverage knowledge graphs with Neo4j and its vector search capabilities to build intelligent search and recommendation systems. Working knowledge of Python and Java is essential to follow along. Familiarity with Neo4j, the Cypher query language, and fundamental concepts of databases will come in handy.
Table of Contents
- Introducing LLMs, RAGs, and Neo4j Knowledge Graphs
- Demystifying RAG
- Building a Foundational Understanding of Knowledge Graph for Intelligent Applications
- Building Your Neo4j Graph with Movies Dataset
- Implementing Powerful Search Functionalities with Neo4j and Haystack
- Exploring Advanced Knowledge Graph Capabilities
- Introducing the Neo4j Spring AI and LangChain4j Frameworks for Building Recommendation Systems
- Constructing a Recommendation Graph with H&M Personalization Dataset
- Integrating LangChain4j and SpringAI with Neo4j
- Creating an Intelligent Recommendation System
- Choosing the Right Cloud Platform for GenAI Applications
- Deploying your Application on Cloud
- Epilogue