Book Image

Hands-On GPU Computing with Python

By : Avimanyu Bandyopadhyay
Book Image

Hands-On GPU Computing with Python

By: Avimanyu Bandyopadhyay

Overview of this book

GPUs are proving to be excellent general purpose-parallel computing solutions for high-performance tasks such as deep learning and scientific computing. This book will be your guide to getting started with GPU computing. It begins by introducing GPU computing and explaining the GPU architecture and programming models. You will learn, by example, how to perform GPU programming with Python, and look at using integrations such as PyCUDA, PyOpenCL, CuPy, and Numba with Anaconda for various tasks such as machine learning and data mining. In addition to this, you will get to grips with GPU workflows, management, and deployment using modern containerization solutions. Toward the end of the book, you will get familiar with the principles of distributed computing for training machine learning models and enhancing efficiency and performance. By the end of this book, you will be able to set up a GPU ecosystem for running complex applications and data models that demand great processing capabilities, and be able to efficiently manage memory to compute your application effectively and quickly.
Table of Contents (17 chapters)
Free Chapter
1
Section 1: Computing with GPUs Introduction, Fundamental Concepts, and Hardware
5
Section 2: Hands-On Development with GPU Programming
11
Section 3: Containerization and Machine Learning with GPU-Powered Python

Summary

In this chapter, we learned about the basic differences between programming and computing. We learned about some of the fundamental concepts regarding how CUDA, ROCm, and Numba leverage GPUs. We also learned the many libraries facilitated by CUDA, ROCm, and Numba. The features of PyCUDA, PyOpenCL, and Numba were mentioned and highlighted.

Now that we're at the end of this chapter, you should be able to install CUDA, ROCm, and Anaconda on an Ubuntu-based system. You should also be able to set up the hipify tool and start porting existing CUDA code to its HIP version, especially if you are a research-code enthusiast. You are now familiar with the configurational differences between OpenCL with CUDA and OpenCL with ROCm. You have also learned the various reasons behind why Python is a great choice for GPU programming.

Before we start our hands-on experience with programming...