Book Image

Applied Machine Learning and High-Performance Computing on AWS

By : Mani Khanuja, Farooq Sabir, Shreyas Subramanian, Trenton Potgieter
Book Image

Applied Machine Learning and High-Performance Computing on AWS

By: Mani Khanuja, Farooq Sabir, Shreyas Subramanian, Trenton Potgieter

Overview of this book

Machine learning (ML) and high-performance computing (HPC) on AWS run compute-intensive workloads across industries and emerging applications. Its use cases can be linked to various verticals, such as computational fluid dynamics (CFD), genomics, and autonomous vehicles. This book provides end-to-end guidance, starting with HPC concepts for storage and networking. It then progresses to working examples on how to process large datasets using SageMaker Studio and EMR. Next, you’ll learn how to build, train, and deploy large models using distributed training. Later chapters also guide you through deploying models to edge devices using SageMaker and IoT Greengrass, and performance optimization of ML models, for low latency use cases. By the end of this book, you’ll be able to build, train, and deploy your own large-scale ML application, using HPC on AWS, following industry best practices and addressing the key pain points encountered in the application life cycle.
Table of Contents (20 chapters)
1
Part 1: Introducing High-Performance Computing
6
Part 2: Applied Modeling
13
Part 3: Driving Innovation Across Industries

Deploying Machine Learning Models at Scale

In previous chapters, we learned about how to store data, carry out data processing, and perform model training for machine learning applications. After training a machine learning model and validating it using a test dataset, the next task is generally to perform inference on new and unseen data. It is important for any machine learning application that the trained model should generalize well for unseen data to avoid overfitting. In addition, for real-time applications, the model should be able to carry out inference with minimal latency while accessing all the relevant data (both new and stored) needed for the model to do inference. Also, the compute resources associated with the model should be able to scale up or down depending on the number of inference requests, in order to optimize cost while not sacrificing performance and inference requirements for real-time machine learning applications.

For use cases that do not require real...