Large Language Models: A Deep Dive: Bridging Theory and Practice
Original price was: $84,99.$19,99Current price is: $19,99.
- 100% Satisfaction Guaranteed!
- Immediate Digital Delivery
- Download Risk-Free
✔️ File: PDF 30,70 MB • Pages: 496
Large Language Models (LLMs) have emerged as a cornerstone technology, transforming how we interact with information and redefining the boundaries of artificial intelligence. LLMs offer an unprecedented ability to understand, generate, and interact with human language in an intuitive and insightful manner, leading to transformative applications across domains like content creation, chatbots, search engines, and research tools. While fascinating, the complex workings of LLMs―their intricate architecture, underlying algorithms, and ethical considerations―require thorough exploration, creating a need for a comprehensive book on this subject.
This book provides an authoritative exploration of the design, training, evolution, and application of LLMs. It begins with an overview of pre-trained language models and Transformer architectures, laying the groundwork for understanding prompt-based learning techniques. Next, it dives into methods for fine-tuning LLMs, integrating reinforcement learning for value alignment, and the convergence of LLMs with computer vision, robotics, and speech processing. The book strongly emphasizes practical applications, detailing real-world use cases such as conversational chatbots, retrieval-augmented generation (RAG), and code generation. These examples are carefully chosen to illustrate the diverse and impactful ways LLMs are being applied in various industries and scenarios.
Readers will gain insights into operationalizing and deploying LLMs, from implementing modern tools and libraries to addressing challenges like bias and ethical implications. The book also introduces the cutting-edge realm of multimodal LLMs that can process audio, images, video, and robotic inputs. With hands-on tutorials for applying LLMs to natural language tasks, this thorough guide equips readers with both theoretical knowledge and practical skills for leveraging the full potential of large language models.
This comprehensive resource is appropriate for a wide audience: students, researchers and academics in AI or NLP, practicing data scientists, and anyone looking to grasp the essence and intricacies of LLMs.
Key Features:
- Over 100 techniques and state-of-the-art methods, including pre-training, prompt-based tuning, instruction tuning, parameter-efficient and compute-efficient fine-tuning, end-user prompt engineering, and building and optimizing Retrieval-Augmented Generation systems, along with strategies for aligning LLMs with human values using reinforcement learning
- Over 200 datasets compiled in one place, covering everything from pre- training to multimodal tuning, providing a robust foundation for diverse LLM applications
- Over 50 strategies to address key ethical issues such as hallucination, toxicity, bias, fairness, and privacy. Gain comprehensive methods for measuring, evaluating, and mitigating these challenges to ensure responsible LLM deployment
- Over 200 benchmarks covering LLM performance across various tasks, ethical considerations, multimodal applications, and more than 50 evaluation metrics for the LLM lifecycle
- Nine detailed tutorials that guide readers through pre-training, fine- tuning, alignment tuning, bias mitigation, multimodal training, and deploying large language models using tools and libraries compatible with Google Colab, ensuring practical application of theoretical concepts
- Over 100 practical tips for data scientists and practitioners, offering implementation details, tricks, and tools to successfully navigate the LLM life- cycle and accomplish tasks efficiently
1 review for Large Language Models: A Deep Dive: Bridging Theory and Practice
You must be logged in to post a review.
ASHWIN –
Just read the first three chapters on release day! Brilliantly written and thoroughly/painstakingly researched. I would ditch all those Youtube videos and embrace this book in its entirety if I want to go anywhere near AI. Kudos to the team. Take a big bow!
Steven –
May I have the full chapter titles covered in this book as I need to know what is being covered before buying?
Math Digital –
Part I: Foundations of Large Language Models
Introduction to Large Language Models
Pre-trained Language Models: A Primer
Transformer Architectures: The Building Blocks of LLMs
Prompt-Based Learning: Enabling Task Adaptation
Fine-Tuning LLMs for Specific Tasks
Part II: Advanced Techniques and Applications
Reinforcement Learning for Value Alignment in LLMs
Multimodal LLMs: Processing Text, Images, and More
LLMs in Conversational AI: Building Chatbots and Virtual Assistants
Retrieval-Augmented Generation (RAG): Enhancing LLM Capabilities
Code Generation and Automated Programming with LLMs
LLMs in Scientific Research: Accelerating Discovery
Part III: Operationalizing and Deploying LLMs
Tools and Libraries for LLM Deployment
Addressing Bias and Ethical Considerations in LLMs
Evaluating and Measuring LLM Performance
Scaling LLMs for Large-Scale Applications
The Future of LLMs: Emerging Trends and Challenges
Part IV: Hands-On Tutorials
Tutorial: Pre-training a Language Model from Scratch
Tutorial: Fine-Tuning an LLM for a Specific Task
Tutorial: Building a Conversational Chatbot with an LLM
Tutorial: Implementing Retrieval-Augmented Generation
Tutorial: Deploying an LLM as a REST API