Building Transformer Models with PyTorch 2.0 NLP, computer vision, and speech processing with PyTorch and Hugging Face

booksz

U P L O A D E R
aca1d21ffbcc22dfd41e8e650843d3f7.webp

Free Download Building Transformer Models with PyTorch 2.0: NLP, computer vision, and speech processing with PyTorch and Hugging Face (English Edition) by Prem Timsina
English | March 8, 2024 | ISBN: 9355517491 | 310 pages | PDF | 7.53 Mb
Your key to transformer based NLP, vision, speech, and multimodalities

Key Features
● Transformer architecture for different modalities and multimodalities.
● Practical guidelines to build and fine-tune transformer models.
● Comprehensive code samples with detailed documentation.
Description
This book covers transformer architecture for various applications including NLP, computer vision, speech processing, and predictive modeling with tabular data. It is a valuable resource for anyone looking to harness the power of transformer architecture in their machine learning projects.
The book provides a step-by-step guide to building transformer models from scratch and fine-tuning pre-trained open-source models. It explores foundational model architecture, including GPT, VIT, Whisper, TabTransformer, Stable Diffusion, and the core principles for solving various problems with transformers. The book also covers transfer learning, model training, and fine-tuning, and discusses how to utilize recent models from Hugging Face. Additionally, the book explores advanced topics such as model benchmarking, multimodal learning, reinforcement learning, and deploying and serving transformer models.
In conclusion, this book offers a comprehensive and thorough guide to transformer models and their various applications.
What you will learn
● Understand the core architecture of various foundational models, including single and multimodalities.
● Step-by-step approach to developing transformer-based Machine Learning models.
● Utilize various open-source models to solve your business problems.
● Train and fine-tune various open-source models using PyTorch 2.0 and the Hugging Face ecosystem.
● Deploy and serve transformer models.
● Best practices and guidelines for building transformer-based models.
Who this book is for
This book caters to data scientists, Machine Learning engineers, developers, and software architects interested in the world of generative AI.
Table of Contents
1. Transformer Architecture
2. Hugging Face Ecosystem
3. Transformer Model in PyTorch
4. Transfer Learning with PyTorch and Hugging Face
5. Large Language Models: BERT, GPT-3, and BART
6. NLP Tasks with Transformers
7. CV Model Anatomy: ViT, DETR, and DeiT
8. Computer Vision Tasks with Transformers
9. Speech Processing Model Anatomy: Whisper, SpeechT5, and Wav2Vec
10. Speech Tasks with Transformers
11. Transformer Architecture for Tabular Data Processing
12. Transformers for Tabular Data Regression and Classification
13. Multimodal Transformers, Architectures and Applications
14. Explore Reinforcement Learning for Transformer
15. Model Export, Serving, and Deployment
16. Transformer Model Interpretability, and Experimental Visualization
17. PyTorch Models: Best Practices and Debugging


Code:
Bitte Anmelden oder Registrieren um Code Inhalt zu sehen!
Links are Interchangeable - Single Extraction
 
Kommentar

In der Börse ist nur das Erstellen von Download-Angeboten erlaubt! Ignorierst du das, wird dein Beitrag ohne Vorwarnung gelöscht. Ein Eintrag ist offline? Dann nutze bitte den Link  Offline melden . Möchtest du stattdessen etwas zu einem Download schreiben, dann nutze den Link  Kommentieren . Beide Links findest du immer unter jedem Eintrag/Download.

Data-Load.in | Dataload.in

Auf Data-Load.in findest du Links zu kostenlosen Downloads für Filme, Serien, Dokumentationen, Anime, Animation & Zeichentrick, Audio / Musik, Software und Dokumente / Ebooks / Zeitschriften. Wir sind deine Boerse für kostenlose Downloads!

Ist Data-Load.in / Dataload.in legal?

Data-Load.in ist nicht illegal. Es werden keine zum Download angebotene Inhalte auf den Servern von Data-Load.in gespeichert.
Oben Unten