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Transformers for Natural Language Processing and Computer Vision

You're reading from   Transformers for Natural Language Processing and Computer Vision Explore Generative AI and Large Language Models with Hugging Face, ChatGPT, GPT-4V, and DALL-E 3

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Product type Paperback
Published in Feb 2024
Publisher Packt
ISBN-13 9781805128724
Length 730 pages
Edition 3rd Edition
Languages
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Author (1):
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Denis Rothman Denis Rothman
Author Profile Icon Denis Rothman
Denis Rothman
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Table of Contents (24) Chapters Close

Preface 1. What Are Transformers? 2. Getting Started with the Architecture of the Transformer Model FREE CHAPTER 3. Emergent vs Downstream Tasks: The Unseen Depths of Transformers 4. Advancements in Translations with Google Trax, Google Translate, and Gemini 5. Diving into Fine-Tuning through BERT 6. Pretraining a Transformer from Scratch through RoBERTa 7. The Generative AI Revolution with ChatGPT 8. Fine-Tuning OpenAI GPT Models 9. Shattering the Black Box with Interpretable Tools 10. Investigating the Role of Tokenizers in Shaping Transformer Models 11. Leveraging LLM Embeddings as an Alternative to Fine-Tuning 12. Toward Syntax-Free Semantic Role Labeling with ChatGPT and GPT-4 13. Summarization with T5 and ChatGPT 14. Exploring Cutting-Edge LLMs with Vertex AI and PaLM 2 15. Guarding the Giants: Mitigating Risks in Large Language Models 16. Beyond Text: Vision Transformers in the Dawn of Revolutionary AI 17. Transcending the Image-Text Boundary with Stable Diffusion 18. Hugging Face AutoTrain: Training Vision Models without Coding 19. On the Road to Functional AGI with HuggingGPT and its Peers 20. Beyond Human-Designed Prompts with Generative Ideation 21. Index
Appendix A: Revolutionizing AI: The Power of Optimized Time Complexity in Transformer Models 1. Appendix B: Answers to the Questions

Summary

We saw that PaLM 2 could match and perhaps surpass other models in some fields. Google AI assistants, cloud tools, and APIs provide general-purpose functionalities. They resemble Microsoft Azure and OpenAI offers. However, the technology is quite different, as we saw with the architecture that led to PaLM 2. Also, many factors will influence the decision, and the outputs might vary from one task to another.

Before making a choice, extensive evaluations must be made with the right questions before working with Microsoft Azure, Google Cloud, and IBM Cloud, among others.

The chapter was divided into the four parts we will probably encounter when we explore new transformer models: architecture improvements, large language generative mainstream assistants, API implementation, and customization (fine-tuning or other methods).

We began the chapter by reviewing the many improvements in the architecture of LLM Generative AI models. Pathways opens the door to increased optimization...

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