Modern Large Language Models

About The Book

<p>Large language models now sit at the core of modern software systems. They power search recommendation engines coding assistants conversational interfaces and autonomous agents. Yet for many engineers and practitioners these models remain opaque-understood through fragments of code borrowed recipes or surface-level explanations.</p><p><strong>This book was written to change that.</strong></p><p><em>Modern Large Language Models</em> is a clear systems-level guide to understanding how transformer-based language models actually work-starting from first principles and building upward toward complete modern LLM systems.</p><p>Rather than treating large language models as black boxes this book explains the fundamental ideas that make them possible: probabilistic language modeling vector representations attention mechanisms optimization and architectural composition. Concepts are introduced gradually with visual intuition and concrete reasoning before full implementations allowing readers to develop understanding that transfers beyond any single framework or model version.</p><p>The book takes you from the foundations of language modeling to the realities of training fine-tuning evaluation and deployment. Along the way it connects theory to practice showing how design decisions shape model behavior performance and limitations.</p><p>This is not a collection of shortcuts or prompt recipes. It is a guide for readers who want to reason about large language models as <strong>engineered systems</strong>-systems that can be analyzed debugged improved and deployed with confidence.</p><p>What You'll Learn</p><p>• How language modeling works at a probabilistic level-and why it matters<br>• How tokens embeddings and vector spaces encode meaning<br>• How self-attention and transformer architectures operate internally<br>• How complete GPT-style models are built from first principles<br>• How training pipelines work including optimization and scaling considerations<br>• How fine-tuning instruction tuning and preference optimization fit together<br>• How embeddings retrieval and RAG systems extend model capabilities<br>• How modern LLM systems are evaluated deployed and monitored responsibly</p><p>What Makes This Book Different</p><p>Most books on large language models focus either on high-level descriptions or narrow implementation details. This book takes a <strong>first-principles systems-oriented approach</strong> emphasizing understanding over memorization and architecture over tools.</p><p>The examples use PyTorch for clarity but the ideas are framework-agnostic and designed to remain relevant as tooling and architectures evolve. Clean diagrams structured explanations and carefully reasoned trade-offs replace hype and jargon.</p><p>Who This Book Is For</p><p>This book is written for software engineers data scientists machine learning practitioners researchers and technically curious readers who want to move beyond surface familiarity with LLMs.</p><p>You do not need to be an expert in machine learning to begin but you should be comfortable with programming and willing to engage with ideas thoughtfully. Readers looking for quick tutorials or platform-specific recipes may want supplementary resources; readers seeking durable understanding will find this book invaluable.</p><p>What This Book Is Not</p><p>This book does not promise instant mastery viral tricks or platform-specific shortcuts. It does not focus on prompt engineering in isolation nor does it attempt to catalog every model variant or benchmark.</p><p>Instead it focuses on what lasts: the principles that explain why large language models work-and how to think clearly about the systems built around them.</p><p><strong>If you want to understand modern large language models deeply-not just use them-this book provides the foundation.</strong></p>
Piracy-free
Piracy-free
Assured Quality
Assured Quality
Secure Transactions
Secure Transactions
Delivery Options
Please enter pincode to check delivery time.
*COD & Shipping Charges may apply on certain items.
Review final details at checkout.
downArrow

Details


LOOKING TO PLACE A BULK ORDER?CLICK HERE