
Large Language Model
Theoretical Concept
Failed to add items
Sorry, we are unable to add the item because your shopping cart is already at capacity.
Add to Cart failed.
Please try again later
Add to Wish List failed.
Please try again later
Remove from wishlist failed.
Please try again later
Adding to library failed
Please try again
Follow podcast failed
Please try again
Unfollow podcast failed
Please try again

Get 2 free audiobooks during trial.
Pick 1 audiobook a month from our unmatched collection.
Listen all you want to thousands of included audiobooks, Originals, and podcasts.
Access exclusive sales and deals.
Premium Plus auto-renews for $14.95/mo after 30 days. Cancel anytime.
Buy for $6.50
No default payment method selected.
We are sorry. We are not allowed to sell this product with the selected payment method
Pay using card ending in
By confirming your purchase, you agree to Audible's Conditions of Use, License, and Amazon's Privacy Notice. Taxes where applicable.
-
Narrated by:
-
Virtual Voice
-
By:
-
Ajit Singh

This title uses virtual voice narration
Virtual voice is computer-generated narration for audiobooks.
About this listen
The book is designed with an academic audience in mind, particularly B.Tech, M.Tech, MCA, and other undergraduate and postgraduate learners specializing in Computer Science, Artificial Intelligence, or Data Science. Its structure aligns with syllabi from leading global institutions like MIT, Stanford, IITs, and ETH Zurich. However, the book’s appeal extends far beyond the classroom—it is equally suited for industry professionals seeking to deepen their understanding of LLMs or pivot into AI research and development.
Organized into ten comprehensive chapters, Large Language Models provides a progressive learning experience. It begins with a historical and conceptual introduction to Natural Language Processing (NLP) and the evolution of language models, followed by core principles of machine learning as applied to language, including probability, linear algebra, neural networks, embeddings, and sequence modeling. It then delves into the revolutionary Transformer architecture—the backbone of modern LLMs like GPT, BERT, and LLaMA—before addressing training strategies, benchmarking, fine-tuning techniques, ethical considerations, and real-world applications.
What sets this book apart is its commitment to humanizing AI education. The author avoids overly technical jargon and instead employs storytelling, analogies, and illustrative examples to make complex ideas more accessible. This approach not only enhances comprehension but also stimulates curiosity and critical thinking—skills essential for innovation in AI.
Whether you are a student stepping into the world of AI, a researcher looking to expand your toolkit, or a professional transitioning into NLP, Large Language Models offers a rich, engaging, and thoughtful roadmap to mastering this groundbreaking domain.
adbl_web_global_use_to_activate_T1_webcro805_stickypopup
No reviews yet