Book Image

Mastering Transformers

By : Savaş Yıldırım, Meysam Asgari- Chenaghlu
Book Image

Mastering Transformers

By: Savaş Yıldırım, Meysam Asgari- Chenaghlu

Overview of this book

Transformer-based language models have dominated natural language processing (NLP) studies and have now become a new paradigm. With this book, you'll learn how to build various transformer-based NLP applications using the Python Transformers library. The book gives you an introduction to Transformers by showing you how to write your first hello-world program. You'll then learn how a tokenizer works and how to train your own tokenizer. As you advance, you'll explore the architecture of autoencoding models, such as BERT, and autoregressive models, such as GPT. You'll see how to train and fine-tune models for a variety of natural language understanding (NLU) and natural language generation (NLG) problems, including text classification, token classification, and text representation. This book also helps you to learn efficient models for challenging problems, such as long-context NLP tasks with limited computational capacity. You'll also work with multilingual and cross-lingual problems, optimize models by monitoring their performance, and discover how to deconstruct these models for interpretability and explainability. Finally, you'll be able to deploy your transformer models in a production environment. By the end of this NLP book, you'll have learned how to use Transformers to solve advanced NLP problems using advanced models.
Table of Contents (16 chapters)
1
Section 1: Introduction – Recent Developments in the Field, Installations, and Hello World Applications
4
Section 2: Transformer Models – From Autoencoding to Autoregressive Models
10
Section 3: Advanced Topics

Fine-tuning the BERT model for sentence-pair regression

The regression model is considered to be for classification, but the last layer only contains a single unit. This is not processed by softmax logistic regression but normalized. To specify the model and put a single-unit head layer at the top, we can either directly pass the num_labels=1 parameter to the BERT.from_pre-trained() method or pass this information through a Config object. Initially, this needs to be copied from the config object of the pre-trained model, as follows:

from transformers import DistilBertConfig, DistilBertTokenizerFast, DistilBertForSequenceClassification
model_path='distilbert-base-uncased'
config = DistilBertConfig.from_pre-trained(model_path, num_labels=1)
tokenizer = DistilBertTokenizerFast.from_pre-trained(model_path)
model = \
DistilBertForSequenceClassification.from_pre-trained(model_path, config=config)

Well, our pre-trained model has a single-unit head layer thanks to the num_labels...