LIBRISTO
LIBROAMANTO
задължително
Станете част от общност от любители на книгите от цял свят и получавате много предимства. Създай на безплатен акаунт
0
Безплатна доставка със Еконт над 69.99 €
Куриер Speedy 3.49 Пункт на Speedy 3.49 ЕКОНТ 3.99 Еконтомат/Офис на Еконт 3.99 Ekont Box 3.99 Sameday 3.99 Sameday box 3.99 Box Now 3.99

Над 4 милиона заглавия на английски и други езици! Открийте новата си история още днес! Безплатна доставка за поръчки над 69.99€

Generative AI with Large Language Models

A Comprehensive Guide

Език Английски езикАнглийски език
Книга С меки корици
Книга Generative AI with Large Language Models Anand Vemula
Код Либристо: 50789600
Издателство Independently published, май 2024
This book delves into the fascinating world of Generative AI, exploring the two key technologies dri... Цялото описание
? points 34 b Top Top
13.92
27.22  лв
Външен склад Изпращаме след 9-15 дни

До 30 дни за връщане на стоки


Клиентите са закупили също


OS SIMPLES Guerra Junqueiro / Книга С твърди корици
common.buy 42.49 83.11 лв
DIRECCION DE LA ACTIVIDAD EMPRESARIAL DE PEQUEÑOS NEGOCIOS O GARCIA PRADO / Книга Книга
common.buy 11.12 21.76 лв
Introduction ? la technologie du commerce électronique Sridhar Seshadri / Книга С меки корици
common.buy 34.06 66.61 лв
La Chica Cuervo / The Crow Girl Hakan Axlander Sundquist / Книга С меки корици
common.buy 30.48 59.62 лв

This book delves into the fascinating world of Generative AI, exploring the two key technologies driving its advancements: Large Language Models (LLMs) and Foundation Models (FMs).

Part 1: Foundations

  • LLMs Demystified: We begin by understanding LLMs, powerful AI models trained on massive amounts of text data. These models can generate human-quality text, translate languages, write different creative formats, and even answer your questions in an informative way.
  • The Rise of FMs: However, LLMs are just a piece of the puzzle. We explore Foundation Models, a broader category encompassing models trained on various data types like images, audio, and even scientific data. These models represent a significant leap forward in AI, offering a more versatile approach to information processing.

Part 2: LLMs and Generative AI Applications

  • Training LLMs: We delve into the intricate process of training LLMs, from data acquisition and pre-processing to different training techniques like supervised and unsupervised learning. The chapter also explores challenges like computational resources and data bias, along with best practices for responsible LLM training.
  • Fine-Tuning for Specific Tasks: LLMs can be further specialized for targeted tasks through fine-tuning. We explore how fine-tuning allows LLMs to excel in areas like creative writing, code generation, drug discovery, and even music composition.

Part 3: Advanced Topics

  • LLM Architectures: We take a deep dive into the technical aspects of LLMs, exploring the workings of Transformer networks, the backbone of modern LLMs. We also examine the role of attention mechanisms in LLM processing and learn about different prominent LLM architectures like GPT-3 and Jurassic-1 Jumbo.
  • Scaling Generative AI: Scaling up LLMs presents significant computational challenges. The chapter explores techniques like model parallelism and distributed training to address these hurdles, along with hardware considerations like GPUs and TPUs that facilitate efficient LLM training. Most importantly, we discuss the crucial role of safety and ethics in generative AI development. Mitigating bias, addressing potential risks like deepfakes, and ensuring transparency are all essential for responsible AI development.

Part 4: The Future

  • Evolving Generative AI Landscape: We explore emerging trends in LLM research, like the development of even larger and more capable models, along with advancements in explainable AI and the rise of multimodal LLMs that can handle different data types. We also discuss the potential applications of generative AI in unforeseen areas like personalized education and healthcare.
  • Societal Impact and the Future of Work: The book concludes by examining the societal and economic implications of generative AI. We explore the potential transformation of industries, the need for workforce reskilling, and the importance of human-AI collaboration. Additionally, the book emphasizes the need for robust regulations to address concerns like bias, data privacy, and transparency in generative AI development.

This book equips you with a comprehensive understanding of generative AI, its core technologies, its applications, and the considerations for its responsible development and deployment.

Героиня & Полиглот
EWA KASP за
Пусни видеото
Ewa Kasp
В Libristo има най-богатия избор от чуждоезична литература. Затова купувам книгите си тук.

Информация за книгата

Пълно заглавие Generative AI with Large Language Models
Автор Anand Vemula
Език Английски език
Корици Книга - С меки корици
Дата на издаване 2024
Брой страници 68
Баркод 9798325967917
Код Либристо 50789600
Издателство Independently published
Тегло 105
Размери 152 x 229 x 4
Подарете тази книга днес
Лесно е
1 Добавете книгата в количката си и изберете Доставка като подарък 2 В замяна ще ви изпратим ваучер 3 Книгата ще пристигне на адреса на получателя

Може би ще Ви заинтересува


Exo-Vaticana Cris Putnam / Книга С меки корици
common.buy 23.29 45.55 лв
...or Worse - The Seminar of Jacques Lacan, Book X IX J Lacan / Книга С меки корици
common.buy 21.74 42.51 лв
War, Peace and the British Free Churches, 1914-1945 Andrew Chandler / Книга С твърди корици
common.buy 120.71 236.09 лв

Вход

Влезте в акаунта си. Още нямате акаунт за Libristo? Създайте го сега!

 
задължително
задължително

Нямате акаунт? Използвайте предимствата на акаунта за Libristo!

Благодарение на акаунта за Libristo държите всичко под контрол.

Създаване на акаунт за Libristo
Книжен съветник Libroamiko
Здравейте, аз съм Libroamiko, мога ли да помогна?