Book Image

Transformers for Natural Language Processing - Second Edition

By : Denis Rothman
5 (1)
Book Image

Transformers for Natural Language Processing - Second Edition

5 (1)
By: Denis Rothman

Overview of this book

Transformers are...well...transforming the world of AI. There are many platforms and models out there, but which ones best suit your needs? Transformers for Natural Language Processing, 2nd Edition, guides you through the world of transformers, highlighting the strengths of different models and platforms, while teaching you the problem-solving skills you need to tackle model weaknesses. You'll use Hugging Face to pretrain a RoBERTa model from scratch, from building the dataset to defining the data collator to training the model. If you're looking to fine-tune a pretrained model, including GPT-3, then Transformers for Natural Language Processing, 2nd Edition, shows you how with step-by-step guides. The book investigates machine translations, speech-to-text, text-to-speech, question-answering, and many more NLP tasks. It provides techniques to solve hard language problems and may even help with fake news anxiety (read chapter 13 for more details). You'll see how cutting-edge platforms, such as OpenAI, have taken transformers beyond language into computer vision tasks and code creation using DALL-E 2, ChatGPT, and GPT-4. By the end of this book, you'll know how transformers work and how to implement them and resolve issues like an AI detective.
Table of Contents (25 chapters)
18
Other Books You May Enjoy
19
Index
Appendix I — Terminology of Transformer Models

LIT

LIT’s visual interface will help you find examples that the model processes incorrectly, dig into similar examples, see how the model behaves when you change a context, and more language issues related to transformer models.

LIT does not display the activities of the attention heads like BertViz does. However, it’s worth analyzing why things went wrong and trying to find solutions.

You can choose a Uniform Manifold Approximation and Projection (UMAP) visualization or a PCA projector representation. PCA will make more linear projections in specific directions and magnitude. UMAP will break its projections down into mini-clusters. Both approaches make sense depending on how far you want to go when analyzing the output of a model. You can run both and obtain different perspectives of the same model and examples.

This section will use PCA to run LIT. Let’s begin with a brief reminder of how PCA works.

PCA

PCA takes data and represents it at...