1
/
of
1
Demystifying Large Language Models: Unraveling the Mysteries of Language Transformer Models, Build from Ground up, Pre-train, Fine-tune and Deployment
- Regular price
-
$33.07 USD - Regular price
-
- Sale price
-
$33.07 USD
Couldn't load pickup availability
Guaranteed Safe Checkout
Description
This book is a comprehensive guide aiming to demystify the world of transformers -- the architecture that powers Large Language Models (LLMs) like GPT and BERT. From PyTorch basics and mathematical foundations to implementing a Transformer from scratch, you'll gain a deep understanding of the inner workings of these models.
That's just the beginning. Get ready to dive into the realm of pre-training your own Transformer from scratch, unlocking the power of transfer learning to fine-tune LLMs for your specific use cases, explore advanced techniques like PEFT (Prompting for Efficient Fine-Tuning) and LoRA (Low-Rank Adaptation) for fine-tuning.
Step into the deployment of LLMs, delivering these state-of-the-art language models into the real-world, whether integrating them into cloud platforms or optimizing them for edge devices, this section ensures you're equipped with the know-how to bring your AI solutions to life.
Whether you're a seasoned AI practitioner, a data scientist, or a curious developer eager to advance your knowledge on the powerful LLMs, this book is your ultimate guide to mastering these cutting-edge models. By translating convoluted concepts into understandable explanations and offering a practical hands-on approach, this treasure trove of knowledge is invaluable to both aspiring beginners and seasoned professionals. Table of Contents 1. INTRODUCTION
1.1 What is AI, ML, DL, Generative AI and Large Language Model
1.2 Lifecycle of Large Language Models
1.3 Whom This Book Is For
1.4 How This Book Is Organized
1.5 Source Code and Resources
2. PYTORCH BASICS AND MATH FUNDAMENTALS
2.1 Tensor and Vector
2.2 Tensor and Matrix
2.3 Dot Product
2.4 Softmax
2.5 Cross Entropy
2.6 GPU Support
2.7 Linear Transformation
2.8 Embedding
2.9 Neural Network
2.10 Bigram and N-gram Models
2.11 Greedy, Random Sampling and Beam
2.12 Rank of Matrices
2.13 Singular Value Decomposition (SVD)
2.14 Conclusion
3. TRANSFORMER
3.1 Dataset and Tokenization
3.2 Embedding
3.3 Positional Encoding
3.4 Layer Normalization
3.5 Feed Forward
3.6 Scaled Dot-Product Attention
3.7 Mask
3.8 Multi-Head Attention
3.9 Encoder Layer and Encoder
3.10 Decoder Layer and Decoder
3.11 Transformer
3.12 Training
3.13 Inference
3.14 Conclusion
4. PRE-TRAINING
4.1 Machine Translation
4.2 Dataset and Tokenization
4.3 Load Data in Batch
4.4 Pre-Training nn.Transformer Model
4.5 Inference
4.6 Popular Large Language Models
4.7 Computational Resources
4.8 Prompt Engineering and In-context Learning (ICL)
4.9 Prompt Engineering on FLAN-T5
4.10 Pipelines
4.11 Conclusion
5. FINE-TUNING
5.1 Fine-Tuning
5.2 Parameter Efficient Fine-tuning (PEFT)
5.3 Low-Rank Adaptation (LoRA)
5.4 Adapter
5.5 Prompt Tuning
5.6 Evaluation
5.7 Reinforcement Learning
5.8 Reinforcement Learning Human Feedback (RLHF)
5.9 Implementation of RLHF
5.10 Conclusion
6. DEPLOYMENT OF LLMS
6.1 Challenges and Considerations
6.2 Pre-Deployment Optimization
6.3 Security and Privacy
6.4 Deployment Architectures
6.5 Scalability and Load Balancing
6.6 Compliance and Ethics Review
6.7 Model Versioning and Updates
6.8 LLM-Powered Applications
6.9 Vector Database
6.10 LangChain
6.11 Chatbot, Example of LLM-Powered Application
6.12 WebUI, Example of LLM-Power Application
6.13 Future Trends and Challenges
6.14 Conclusion
INDEX
REFERENCES
ABOUT THE AUTHOR
ASIN: 1738908488
VSKU: GBV.1738908488.A
Condition: Acceptable
Author/Artist:Chen, James
Binding: Paperback
Note: Any images shown are stock photographs and product may differ from what is shown.
Condition Notes: This book is in acceptable condition and may have highlighting and or writing throughout. The actual cover image may not match the stock photo, dust jacket may be damaged or missing. Book may show internal and or external wear on spine or cover and may be slightly skewed or have creased pages. This is a used book so codes may be invalid or accompanying media may be missing. May be an Ex library book with stickers and stamps.
ASIN: 1738908488
VSKU: GBV.1738908488.A
Condition: Acceptable
Author/Artist:Chen, James
Binding: Paperback
Note: Any images shown are stock photographs and product may differ from what is shown.
Condition Notes: This book is in acceptable condition and may have highlighting and or writing throughout. The actual cover image may not match the stock photo, dust jacket may be damaged or missing. Book may show internal and or external wear on spine or cover and may be slightly skewed or have creased pages. This is a used book so codes may be invalid or accompanying media may be missing. May be an Ex library book with stickers and stamps.
Isbn
9781738908486
Shipping
- No EU import duties.
- Ships within 1-2 business days.
- Ships in our fully recyclable and biodegradable signature boxes.
Returns
Free Refunds up to 7 days

Demystifying Large Language Models: Unraveling the Mysteries of Language Transformer Models, Build from Ground up, Pre-train, Fine-tune and Deployment
- Regular price
-
$33.07 USD - Regular price
-
- Sale price
-
$33.07 USD

