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Mastering Transformers

You're reading from   Mastering Transformers The Journey from BERT to Large Language Models and Stable Diffusion

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Product type Paperback
Published in Jun 2024
Publisher Packt
ISBN-13 9781837633784
Length 462 pages
Edition 2nd Edition
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Savaş Yıldırım Savaş Yıldırım
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Meysam Asgari- Chenaghlu Meysam Asgari- Chenaghlu
Author Profile Icon Meysam Asgari- Chenaghlu
Meysam Asgari- Chenaghlu
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Table of Contents (25) Chapters Close

Preface 1. Part 1: Recent Developments in the Field, Installations, and Hello World Applications
2. Chapter 1: From Bag-of-Words to the Transformers FREE CHAPTER 3. Chapter 2: A Hands-On Introduction to the Subject 4. Part 2: Transformer Models: From Autoencoders to Autoregressive Models
5. Chapter 3: Autoencoding Language Models 6. Chapter 4: From Generative Models to Large Language Models 7. Chapter 5: Fine-Tuning Language Models for Text Classification 8. Chapter 6: Fine-Tuning Language Models for Token Classification 9. Chapter 7: Text Representation 10. Chapter 8: Boosting Model Performance 11. Chapter 9: Parameter Efficient Fine-Tuning 12. Part 3: Advanced Topics
13. Chapter 10: Large Language Models 14. Chapter 11: Explainable AI (XAI) in NLP 15. Chapter 12: Working with Efficient Transformers 16. Chapter 13: Cross-Lingual and Multilingual Language Modeling 17. Chapter 14: Serving Transformer Models 18. Chapter 15: Model Tracking and Monitoring 19. Part 4: Transformers beyond NLP
20. Chapter 16: Vision Transformers 21. Chapter 17: Multimodal Generative Transformers 22. Chapter 18: Revisiting Transformers Architecture for Time Series 23. Index 24. Other Books You May Enjoy

From Bag-of-Words to the Transformers

Over the past two decades, there have been significant advancements in the field of natural language processing (NLP). We have gone through various paradigms and have now arrived at the era of the Transformer architecture. These advancements have helped us represent words or sentences more effectively in order to solve NLP tasks. On the other hand, different use cases of merging textual inputs to other modalities, such as images, have emerged as well. Conversational artificial intelligence (AI) has seen the dawn of a new era. Chatbots were developed that act like humans by answering questions, describing concepts, and even solving mathematical equations step by step. All of these advancements happened in a very short period. One of the enablers of this huge advancement, without a doubt, was Transformer models.

Finding a cross-semantic understanding of different natural languages, natural languages and images, natural languages, and programming languages, and even in a broader sense, natural languages and almost any other modality, has opened a new gate for us to be able to use natural language as our primary input to perform many complex tasks in the field of AI. The easiest imaginable way is to just describe what we are looking for in a picture so the model will give us what we want (https://huggingface.co/spaces/CVPR/regionclip-demo):

Figure 1.1 – Zero-shot object detection with the prompt “A yellow apple”

Figure 1.1 – Zero-shot object detection with the prompt “A yellow apple”

The models have developed this skill through a process of ongoing learning and improvement. At first, distributional semantics and n-gram language models were traditionally utilized to understand the meanings of words and documents for years. It has been seen that these approaches had several limitations. On the other hand, with the rise of newer approaches for diffusing different modalities, modern approaches for training language models, especially large language models (LLMs), enabled many different use cases to come to life.

Classical deep learning (DL) architectures have significantly enhanced the performance of NLP tasks and have overcome the limitations of traditional approaches. Recurrent neural networks (RNNs), feed-forward neural networks (FFNNs), and convolutional neural networks (CNNs) are some of the widely used DL architectures for the solution. However, these models have also faced their own challenges. Recently, the Transformer model became standard, eliminating all the shortcomings of other models. It differed not only in solving a single monolingual task but also in the performance of multilingual, multitasking tasks. These contributions have made transfer learning (TL) more viable in NLP, which aims to make models reusable for different tasks or languages.

In this chapter, we will begin by examining the attention mechanism and provide a brief overview of the Transformer architecture. We will also highlight the distinctions between Transformer models and previous NLP models.

In this chapter, we will cover the following topics:

  • Evolution of NLP approaches
  • Recalling traditional NLP approaches
  • Leveraging DL
  • Overview of the Transformer architecture
  • Using TL with Transformers
  • Multimodal learning
You have been reading a chapter from
Mastering Transformers - Second Edition
Published in: Jun 2024
Publisher: Packt
ISBN-13: 9781837633784
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