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Mastering Transformers

You're reading from  Mastering Transformers

Product type Book
Published in Sep 2021
Publisher Packt
ISBN-13 9781801077651
Pages 374 pages
Edition 1st Edition
Languages
Authors (2):
Savaş Yıldırım Savaş Yıldırım
Profile icon Savaş Yıldırım
Meysam Asgari- Chenaghlu Meysam Asgari- Chenaghlu
Profile icon Meysam Asgari- Chenaghlu
View More author details

Table of Contents (16) Chapters

Preface 1. Section 1: Introduction – Recent Developments in the Field, Installations, and Hello World Applications
2. Chapter 1: From Bag-of-Words to the Transformer 3. Chapter 2: A Hands-On Introduction to the Subject 4. Section 2: Transformer Models – From Autoencoding to Autoregressive Models
5. Chapter 3: Autoencoding Language Models 6. Chapter 4:Autoregressive and Other 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. Section 3: Advanced Topics
11. Chapter 8: Working with Efficient Transformers 12. Chapter 9:Cross-Lingual and Multilingual Language Modeling 13. Chapter 10: Serving Transformer Models 14. Chapter 11: Attention Visualization and Experiment Tracking 15. Other Books You May Enjoy

Working with benchmarks and datasets

Before introducing the datasets library, we'd better talk about important benchmarks such as General Language Understanding Evalution (GLUE), Cross-lingual TRansfer Evaluation of Multilingual Encoders (XTREME), and Stanford Question Answering Dataset (SquAD). Benchmarking is especially critical for transferring learnings within multitask and multilingual environments. In NLP, we mostly focus on a particular metric that is a performance score on a certain task or dataset. Thanks to the Transformer library, we are able to transfer what we have learned from a particular task to a related task, which is called Transfer Learning (TL). By transferring representations between related problems, we are able to train general-purpose models that share common linguistic knowledge across tasks, also known as Multi-Task Learning (MTL). Another aspect of TL is to transfer knowledge across natural languages (multilingual models).

Important benchmarks

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