an icon showing a delivery van Shulph delivers to United Kingdom.
Book cover for Hands-On GPU Programming with Python and CUDA, a book by Dr. Brian Tuomanen Book cover for Hands-On GPU Programming with Python and CUDA, a book by Dr. Brian Tuomanen

Hands-On GPU Programming with Python and CUDA

Explore high-performance parallel computing with CUDA
2018 ᛫


Powered by RoundRead®
This book leverages Shulph’s RoundRead system - buy the book once and read it on both physical book and on up to 5 of your personal devices. With RoundRead, you’re 4 times more likely to read this book cover-to-cover and up to 3 times faster.
Book £ 38.99
Book + eBook £ 46.79
eBook Only £ 28.54
Add to Read List


Instant access to ebook. Print book delivers in 5 - 20 working days.

Summary


Build real-world applications with Python 2.7, CUDA 9, and CUDA 10. We suggest the use of Python 2.7 over Python 3.x, since Python 2.7 has stable support across all the libraries we use in this book.


Key Features


  • Expand your background in GPU programming—PyCUDA, scikit-cuda, and Nsight

  • Effectively use CUDA libraries such as cuBLAS, cuFFT, and cuSolver

  • Apply GPU programming to modern data science applications


Book Description


Hands-On GPU Programming with Python and CUDA hits the ground running: you'll start by learning how to apply Amdahl's Law, use a code profiler to identify bottlenecks in your Python code, and set up an appropriate GPU programming environment. You'll then see how to “query” the GPU's features and copy arrays of data to and from the GPU's own memory.



As you make your way through the book, you'll launch code directly onto the GPU and write full blown GPU kernels and device functions in CUDA C. You'll get to grips with profiling GPU code effectively and fully test and debug your code using Nsight IDE. Next, you'll explore some of the more well-known NVIDIA libraries, such as cuFFT and cuBLAS.



With a solid background in place, you will now apply your new-found knowledge to develop your very own GPU-based deep neural network from scratch. You'll then explore advanced topics, such as warp shuffling, dynamic parallelism, and PTX assembly. In the final chapter, you'll see some topics and applications related to GPU programming that you may wish to pursue, including AI, graphics, and blockchain.



By the end of this book, you will be able to apply GPU programming to problems related to data science and high-performance computing.


What you will learn


  • Launch GPU code directly from Python

  • Write effective and efficient GPU kernels and device functions

  • Use libraries such as cuFFT, cuBLAS, and cuSolver

  • Debug and profile your code with Nsight and Visual Profiler

  • Apply GPU programming to datascience problems

  • Build a GPU-based deep neuralnetwork from scratch

  • Explore advanced GPU hardware features, such as warp shuffling


Who this book is for


Hands-On GPU Programming with Python and CUDA is for developers and data scientists who want to learn the basics of effective GPU programming to improve performance using Python code. You should have an understanding of first-year college or university-level engineering mathematics and physics, and have some experience with Python as well as in any C-based programming language such as C, C++, Go, or Java.