Mastering NLP From Foundations to Agents - Second Edition: Building AI Agents through Agentic Automation and RAG Workflows with Python
暫譯: 掌握自然語言處理:從基礎到智能代理(第二版):使用 Python 建立 AI 代理,透過代理自動化和 RAG 工作流程
Gazit, Lior, Ghaffari, Meysam
- 出版商: Packt Publishing
- 出版日期: 2026-02-28
- 售價: $2,040
- 貴賓價: 9.5 折 $1,938
- 語言: 英文
- 頁數: 694
- 裝訂: Quality Paper - also called trade paper
- ISBN: 1806106132
- ISBN-13: 9781806106134
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相關分類:
Natural Language Processing
海外代購書籍(需單獨結帳)
相關主題
商品描述
This second edition spans NLP foundations to LLMs, RAG, & agentic systems, teaching you to design and fine-tune production-ready AI solutions in Python.
Free with your book: DRM-free PDF version + access to Packt's next-gen Reader*
Key Features:
- Engineer NLP systems from ML foundations to LLM architectures
- Implement RAG pipelines, routing layers, and agent workflows
- Fine-tune and align LLMs using LoRA, RLHF, and DPO methods
- Design production-grade AI systems with governance and safety
Book Description:
Natural Language Processing has evolved beyond rule-based systems and classical machine learning (ML). This second edition guides you through that transformation from mathematical and ML foundations to large language models, retrieval pipelines, agentic automation, and AI-native system design. It strengthens core NLP concepts while expanding into modern architectures such as transformers, parameter-efficient fine-tuning (LoRA and QLoRA), and alignment methods like RLHF and DPO.
You'll begin with essential linear algebra, probability, and ML principles before moving into text preprocessing, feature engineering, classification pipelines, and deep learning architectures. From there, the focus shifts to system design: building Retrieval-Augmented Generation (RAG) pipelines, implementing model routing strategies that balance cost and performance, and orchestrating structured multi-agent workflows. You'll also introduce structured interoperability patterns, including the Model Context Protocol (MCP). Governance and safety will be treated as architectural concerns, demonstrating how policy and compliance can be integrated directly into AI systems. By the end, you will have the tools to implement NLP techniques and be equipped to design, govern, and deploy intelligent systems built on them.
*Email sign-up and proof of purchase required
What You Will Learn:
- Build strong NLP foundations in math and ML
- Engineer text classification and NLP pipelines
- Train and fine-tune modern LLM architectures
- Implement RAG systems with LangChain
- Orchestrate multiple AI agents and tools to solve complex tasks
- Evaluate NLP model performance and apply AI safety best practices
- Integrate external data and tools using Model Context Protocol (MCP)
- Fine-tune transformers with LoRA, QLoRA, and DPO techniques
Who this book is for:
This book is for machine learning engineers, data scientists, and NLP practitioners looking to deepen their expertise and build advanced AI solutions. It also benefits professionals and researchers who want to apply the latest NLP and LLM techniques in real-world projects. Software engineers entering the AI field and tech enthusiasts keen on modern NLP advancements will find it valuable. A solid understanding of Python and basic Machine Learning concepts is assumed.
Table of Contents
- An Introduction to the NLP Landscape
- Mathematical Foundations for Machine Learning in NLP
- Unleashing Machine Learning Potential in NLP
- Streamlining Text Preprocessing Techniques for Optimal NLP Performance
- Text Classification Using Traditional ML Techniques
- Text Classification Using Deep Learning Language Models
- Demystifying LLM Theory, Design, and Implementation
- Parameter-Efficient Fine-Tuning and Reasoning in LLMs
- Advanced Setup and Integration with RAG and MCP
- Advanced LLM Practices Using RAG and LangChain
- Multi-Agent Solutions and Advanced Agent Frameworks
- Technical Guardrails of AI Safety and Responsible Implementation
- Designing and Managing AI-Native Products
商品描述(中文翻譯)
這第二版涵蓋了自然語言處理(NLP)的基礎到大型語言模型(LLMs)、檢索增強生成(RAG)及代理系統,教您如何在 Python 中設計和微調生產就緒的 AI 解決方案。
隨書附贈:無 DRM 的 PDF 版本 + Packt 的下一代閱讀器訪問權限*
主要特點:
- 從機器學習(ML)基礎到 LLM 架構,工程化 NLP 系統
- 實現 RAG 管道、路由層和代理工作流程
- 使用 LoRA、RLHF 和 DPO 方法微調和對齊 LLM
- 設計具有治理和安全性的生產級 AI 系統
書籍描述:
自然語言處理已經超越了基於規則的系統和傳統的機器學習(ML)。這第二版將引導您從數學和 ML 基礎轉變到大型語言模型、檢索管道、代理自動化和 AI 原生系統設計。它加強了核心 NLP 概念,同時擴展到現代架構,如變壓器、參數高效微調(LoRA 和 QLoRA)以及對齊方法,如 RLHF 和 DPO。
您將從基本的線性代數、概率和 ML 原則開始,然後進入文本預處理、特徵工程、分類管道和深度學習架構。接下來,重點轉向系統設計:構建檢索增強生成(RAG)管道,實施平衡成本和性能的模型路由策略,以及協調結構化的多代理工作流程。您還將介紹結構化的互操作性模式,包括模型上下文協議(MCP)。治理和安全將被視為架構考量,展示如何將政策和合規性直接整合到 AI 系統中。到最後,您將擁有實施 NLP 技術的工具,並具備設計、治理和部署基於這些技術的智能系統的能力。
*需要電子郵件註冊和購買證明
您將學到的內容:
- 在數學和 ML 中建立堅實的 NLP 基礎
- 工程化文本分類和 NLP 管道
- 訓練和微調現代 LLM 架構
- 使用 LangChain 實現 RAG 系統
- 協調多個 AI 代理和工具以解決複雜任務
- 評估 NLP 模型性能並應用 AI 安全最佳實踐
- 使用模型上下文協議(MCP)整合外部數據和工具
- 使用 LoRA、QLoRA 和 DPO 技術微調變壓器
本書適合對象:
本書適合希望深化專業知識並構建先進 AI 解決方案的機器學習工程師、數據科學家和 NLP 從業者。它也對希望在實際項目中應用最新 NLP 和 LLM 技術的專業人士和研究人員有幫助。進入 AI 領域的軟體工程師和對現代 NLP 進展感興趣的技術愛好者將會覺得這本書很有價值。假設讀者對 Python 和基本的機器學習概念有扎實的理解。
目錄:
- NLP 環境介紹
- NLP 中機器學習的數學基礎
- 釋放 NLP 中的機器學習潛力
- 精簡文本預處理技術以達到最佳 NLP 性能
- 使用傳統 ML 技術進行文本分類
- 使用深度學習語言模型進行文本分類
- 解密 LLM 理論、設計和實施
- LLM 中的參數高效微調和推理
- 與 RAG 和 MCP 的高級設置和整合
- 使用 RAG 和 LangChain 的高級 LLM 實踐
- 多代理解決方案和高級代理框架
- AI 安全和負責任實施的技術護欄
- 設計和管理 AI 原生產品