10:00am-10:00pm (Fri Off)

061-6511828, 061-6223080 / 0333-6110619

Hands-On Large Language Models by Jay Alammar

  • Publisher: COMPUTER SCIENCE
  • Availability: In Stock
  • SKU: 58189
  • Number of Pages: 403

Rs.1,190.00

Rs.1,450.00

Tags: AI , AI applications , AI research , automated summarization , BERT , chatbot development , content creation , fine-tuning , GPT , hands-on guide , Hands-On Large Language Models , Hugging Face , Jay Alammar , language generation , language tasks. , language understanding , Large Language Models , LLMs , Maarten Grootendorst , machine learning models , natural language generation , NLP , NLP libraries , O'Reilly , Oreilly Hands-On Large Language Models , practical coding , Python , PyTorch , TensorFlow , tokenization , transformer models , transformers

 Hands-On Large Language Models

Author: Jay Alammar
Binding: Paperback
Paper Quality: White Paper
Category: Artificial Intelligence / Machine Learning / Natural Language Processing
Recommended For: AI and ML enthusiasts, data scientists, NLP engineers, students, and professionals seeking practical knowledge of large language models (LLMs).

Key Features:

  1. Practical Approach: The book emphasizes a hands-on, practical approach to working with large language models, providing step-by-step tutorials and code examples for building and deploying LLMs.
  2. Comprehensive Introduction: It offers a thorough introduction to LLMs, including an overview of their architecture, working principles, and the mathematics behind them.
  3. Focus on Language Understanding and Generation: The book covers both aspects of LLMs—language understanding (e.g., natural language processing tasks) and language generation (e.g., creating coherent text, creative writing).
  4. Real-World Applications: The authors showcase how LLMs can be applied in real-world scenarios, such as chatbots, content creation, automated summarization, and other language-based applications.
  5. Deep Dive into Transformer Models: It provides an in-depth look at transformer models like GPT and BERT, which are the backbone of many LLMs, explaining their structure and how they handle language tasks.
  6. Code Examples and Projects: The book includes practical code examples in Python, allowing readers to implement their own LLM-based projects and explore various use cases.
  7. Preprocessing and Tokenization: Readers will learn how to preprocess text data, tokenize it, and convert it into the format required for training and working with LLMs.
  8. Fine-Tuning and Customization: The book covers the fine-tuning process, helping readers understand how to adapt pre-trained models for specific tasks or domains.
  9. Evaluation Metrics: The book explains various evaluation techniques for LLMs, including accuracy, perplexity, and other relevant metrics used to assess model performance.
  10. State-of-the-Art Tools and Libraries: The authors introduce popular libraries and frameworks like Hugging Face’s Transformers, PyTorch, and TensorFlow, which are essential tools for working with LLMs.

Conclusion:

Hands-On Large Language Models: Language Understanding and Generation is an essential guide for anyone interested in working with large language models. With its clear explanations, practical code examples, and in-depth exploration of LLMs, the book is a valuable resource for developers, researchers, and AI practitioners who want to understand and implement advanced natural language processing and generation techniques.

Recently Viewed Products

Customer Reviews

Based on 1 review
100%
(1)
0%
(0)
0%
(0)
0%
(0)
0%
(0)
G
Ghullam Qadir
Best

Amazing