Mastering NLP From Foundations to Agents: A Python Guide to LLMs, RAG, and Agentic Automation (2nd Edition) - Book Listing
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This is a product listing for the second edition of "Mastering NLP From Foundations to Agents," a technical book by Lior Gazit and Meysam Ghaffari. The book covers NLP foundations, large language models (LLMs), retrieval-augmented generation (RAG), and agentic automation systems, teaching readers to build production-ready AI solutions in Python. It is available on Amazon with a DRM-free PDF version included.
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· 3 pulledThis second edition spans NLP foundations to LLMs, RAG, & agentic systems, teaching you to design and fine-tune production-ready AI solutions in Python.
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.
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