RAG-Driven Generative AI : Build MAS-RAG with DualRAG, GraphRAG, multimodal video pipelines, and Oracle Database 23ai, 2/e (Paperback)
暫譯: RAG驅動的生成式AI:使用DualRAG、GraphRAG、多模態視頻管道和Oracle Database 23ai構建MAS-RAG,第二版(平裝本)

Rothman, Denis

  • 出版商: Packt Publishing
  • 出版日期: 2026-04-17
  • 售價: $2,000
  • 貴賓價: 9.5$1,900
  • 語言: 英文
  • 頁數: 430
  • 裝訂: Quality Paper - also called trade paper
  • ISBN: 1807424952
  • ISBN-13: 9781807424954
  • 相關分類: Large language model
  • 立即出貨 (庫存 < 3)

相關主題

商品描述

Building MAS-RAG (multi-agent AI systems for RAG) that reason over real-world data using hybrid retrieval and scalable architectures for production use.

Free with your book: DRM-free PDF version + access to Packt's next-gen Reader*

Key Features:

- Master DualRAG by combining vector search with SQL filtering over structured enterprise data

- Implement GraphRAG, Spatial-RAG, and vector search natively in Oracle Database 23ai

- Build multimodal video pipelines with human-feedback loops and fine-tuned models

Book Description:

Stop moving your data to the AI. This second edition defines a revolutionary architectural shift: bringing the AI to the data. By using Oracle Database 23ai as a converged engine in this book, you will architect Sovereign AI systems that eliminate the fragmentation, latency, and massive security risks inherent in traditional data extraction.

You'll work with DualRAG, synchronizing unstructured vector semantics with the deterministic truth of structured SQL, Graph, and Spatial retrieval. This allows your systems to reason over verified corporate data rather than probabilistic guesses, reducing hallucinations at the source. Moving beyond simple pipelines, you'll also build MAS-RAG (multi-agent systems for RAG), where autonomous agents coordinate across hybrid retrieval workflows, multimodal video pipelines, and graph-based knowledge structures.

Designed for developers and architects, these blueprints transform disconnected data silos into a unified engine to architect autonomous enterprise intelligence that scales with RLHF and model fine-tuning. By the end of the book, you'll be able to design and deploy enterprise AI systems that combine retrieval, reasoning, and structured data to build reliable generative AI applications.

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What You Will Learn:

- Bring intelligence directly to the data within Oracle Database 23ai

- Defeat hallucinations and data poisoning with DualRAG, synchronizing vector semantics with structured SQL

- Build MAS-RAG pipelines with Planner, Agent Registry, and MCP-standardized sovereign agents

- Engineer an inference-time router using hybrid adaptive RAG to switch between reasoning, retrieval, and human feedback

- Fuse vector similarity, Oracle Spatial, and SQL Property Graph traversal into a converged hyper-query

- Multimodal video RAG with version-controlled schema registry and semantic vector search over visual assets

Who this book is for:

This book is for AI engineers, ML engineers, data scientists, and MLOps professionals who want to build production-ready generative AI systems grounded in enterprise data. It will also benefit solutions architects, database engineers, and software developers looking to integrate large language models with structured and unstructured data sources using modern retrieval architectures. Readers should be comfortable with Python and have a basic understanding of machine learning concepts. Prior experience with generative AI or vector databases will help you get the most out of this book.

Table of Contents

- Why Retrieval-Augmented Generation?

- RAG Embeddings in Oracle Vector Stores

- Building a Live Recruiter Agent

- Building Sovereign Enterprise Agents

- Building a Universal Context Engine

- Operationalizing the Universal Context Engine

- Empowering AI Models by Fine-Tuning RAG Data

- Boosting RAG Performance with Human Feedback

- Building a Conversational RAG Agent

- Building an Agent with Spatial-RAG and GraphRAG

- Scaling AI Workloads with Oracle Exadata

- The Autonomous Database Architect

商品描述(中文翻譯)

**建立 MAS-RAG(用於 RAG 的多代理 AI 系統),利用混合檢索和可擴展架構對現實世界數據進行推理,以便於生產使用。**

**隨書附贈:無 DRM 的 PDF 版本 + 訪問 Packt 的下一代閱讀器***

**主要特點:**

- 通過將向量搜索與結構化企業數據的 SQL 過濾結合,掌握 DualRAG
- 在 Oracle Database 23ai 中原生實現 GraphRAG、Spatial-RAG 和向量搜索
- 構建具有人工反饋循環和微調模型的多模態視頻管道

**書籍描述:**

停止將數據移動到 AI。這本第二版定義了一種革命性的架構轉變:將 AI 帶到數據中。通過在本書中使用 Oracle Database 23ai 作為融合引擎,您將設計主權 AI 系統,消除傳統數據提取中固有的碎片化、延遲和巨大的安全風險。

您將使用 DualRAG,將非結構化的向量語義與結構化的 SQL、圖形和空間檢索的確定性真相進行同步。這使您的系統能夠對經過驗證的企業數據進行推理,而不是基於概率的猜測,從源頭減少幻覺。超越簡單的管道,您還將構建 MAS-RAG(用於 RAG 的多代理系統),在混合檢索工作流程、多模態視頻管道和基於圖形的知識結構之間協調自主代理。

這些藍圖專為開發人員和架構師設計,將不連接的數據孤島轉變為統一的引擎,以設計隨著 RLHF 和模型微調而擴展的自主企業智能。在書籍結束時,您將能夠設計和部署結合檢索、推理和結構化數據的企業 AI 系統,以構建可靠的生成 AI 應用程序。

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**您將學到的內容:**

- 將智能直接帶入 Oracle Database 23ai 中的數據
- 通過 DualRAG 擊敗幻覺和數據中毒,將向量語義與結構化 SQL 同步
- 使用 Planner、Agent Registry 和 MCP 標準化的主權代理構建 MAS-RAG 管道
- 使用混合自適應 RAG 設計推理時間路由器,以在推理、檢索和人類反饋之間切換
- 將向量相似性、Oracle Spatial 和 SQL 屬性圖遍歷融合成一個融合的超查詢
- 具有版本控制的模式註冊和對視覺資產進行語義向量搜索的多模態視頻 RAG

**本書適合誰:**

本書適合希望構建基於企業數據的生產就緒生成 AI 系統的 AI 工程師、ML 工程師、數據科學家和 MLOps 專業人員。它也將使解決方案架構師、數據庫工程師和希望使用現代檢索架構將大型語言模型與結構化和非結構化數據源集成的軟件開發人員受益。讀者應該對 Python 感到舒適,並對機器學習概念有基本的理解。擁有生成 AI 或向量數據庫的先前經驗將幫助您充分利用本書。

**目錄**

- 為什麼選擇檢索增強生成?
- Oracle 向量存儲中的 RAG 嵌入
- 構建實時招聘代理
- 構建主權企業代理
- 構建通用上下文引擎
- 將通用上下文引擎運營化
- 通過微調 RAG 數據來增強 AI 模型
- 通過人類反饋提升 RAG 性能
- 構建對話式 RAG 代理
- 構建具有 Spatial-RAG 和 GraphRAG 的代理
- 使用 Oracle Exadata 擴展 AI 工作負載
- 自主數據庫架構師