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Mastering NLP From Foundations to Agents

Mastering NLP From Foundations to Agents - Second Edition

By : Lior Gazit, Meysam Ghaffari
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Mastering NLP From Foundations to Agents

Mastering NLP From Foundations to Agents

By: Lior Gazit, Meysam Ghaffari

Overview of this book

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
Table of Contents (19 chapters)
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14
Index
15
Other Books You May Enjoy
3
Appendix C

Mathematical Foundations for Machine Learning in NLP

Modern machine learning (ML) and NLP are grounded in a rich mathematical framework. To build, analyze, and improve today’s AI systems, you must understand the fundamental mathematical tools that allow these models to represent data, quantify uncertainty, and optimize performance. In this chapter, you’ll explore several of these essential concepts, including:

  • An introduction to linear algebra
  • Eigenvalues and eigenvectors
  • Basic probability for machine learning

These topics form the backbone of NLP and ML because they provide the language and structure with which models operate. Linear algebra enables you to express text, images, and signals as vectors and matrices, making it possible to apply transformations, extract meaningful features, compute similarities, and ultimately model relationships within data. Probability theory equips you to quantify uncertainty, estimate distributions, and...

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