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

Data Analysis

One of the fundamental principles behind any large-scale data science procedure is the simple fact that any Machine Learning (ML) model produced is only as good as the data on which it is trained. Beginner data scientists often make the mistake of assuming that they just need to find the right ML model for their use case and then simply train or fit the data to the model. However, nothing could be further from the truth. Getting the best possible model requires exploring the data, with the goal being to fully understand the data. Once the data scientist understands the data and how the ML model can be trained on it, the data scientist often spends most of their time further cleaning and modifying the data, also referred to as wrangling the data, to prepare it for model training and building.

While this data analysis task may seem conceptually straightforward, the task becomes far more complicated when we factor in the type (images, text, tabular, and so on) and the...