Book Image

Pretrain Vision and Large Language Models in Python

By : Emily Webber
4.5 (2)
Book Image

Pretrain Vision and Large Language Models in Python

4.5 (2)
By: Emily Webber

Overview of this book

Foundation models have forever changed machine learning. From BERT to ChatGPT, CLIP to Stable Diffusion, when billions of parameters are combined with large datasets and hundreds to thousands of GPUs, the result is nothing short of record-breaking. The recommendations, advice, and code samples in this book will help you pretrain and fine-tune your own foundation models from scratch on AWS and Amazon SageMaker, while applying them to hundreds of use cases across your organization. With advice from seasoned AWS and machine learning expert Emily Webber, this book helps you learn everything you need to go from project ideation to dataset preparation, training, evaluation, and deployment for large language, vision, and multimodal models. With step-by-step explanations of essential concepts and practical examples, you’ll go from mastering the concept of pretraining to preparing your dataset and model, configuring your environment, training, fine-tuning, evaluating, deploying, and optimizing your foundation models. You will learn how to apply the scaling laws to distributing your model and dataset over multiple GPUs, remove bias, achieve high throughput, and build deployment pipelines. By the end of this book, you’ll be well equipped to embark on your own project to pretrain and fine-tune the foundation models of the future.
Table of Contents (23 chapters)
1
Part 1: Before Pretraining
5
Part 2: Configure Your Environment
9
Part 3: Train Your Model
13
Part 4: Evaluate Your Model
17
Part 5: Deploy Your Model

Bias detection and mitigation

The trajectory of the word “bias” is interesting in that, in the last 15 years, it’s come full circle. Originally, bias was arguably a statistical term. Formally, it implied that a sample size was improperly constructed, giving excessive weight to certain variables. Statisticians developed numerous methods to identify and reduce bias to evaluate studies properly, such as those used in randomized control trials in public health or policy evaluations in econometrics. Basic tactics include making sure that the treatment and control groups are roughly the same size and have roughly the same characteristics. Without a guarantee of that basic mathematical equivalence, or more realistically as close to it as the research team can get, it’s difficult to trust that the results of a study are truly valid. The results themselves are subject to bias, simply indicating the presence or absence of basic characteristics, rather than implying...