In this chapter, we went over some of the options and paths for those that are interested in furthering their background in GPU programming, which is beyond the scope of this book. The first path we covered was expanding your background in pure CUDA and GPGPU programming—some of the things you can learn about that weren't covered in this book include programming systems with multiple GPUs and networked clusters. We also looked at some of the parallel programming languages/APIs besides CUDA, such as MPI and OpenCL. Next, we discussed some of the well-known APIs available to those who are interested in applying GPUs to rendering graphics, such as Vulkan and DirectX 12. We then looked at machine learning and went into some of the basic backgrounds that you should have as well as some of the major frameworks available for developing deep neural networks. Finally...
Hands-On GPU Programming with Python and CUDA
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Hands-On GPU Programming with Python and CUDA
By:
Overview of this book
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.
Table of Contents (15 chapters)
Preface
Free Chapter
Why GPU Programming?
Setting Up Your GPU Programming Environment
Getting Started with PyCUDA
Kernels, Threads, Blocks, and Grids
Streams, Events, Contexts, and Concurrency
Debugging and Profiling Your CUDA Code
Using the CUDA Libraries with Scikit-CUDA
The CUDA Device Function Libraries and Thrust
Implementation of a Deep Neural Network
Working with Compiled GPU Code
Performance Optimization in CUDA
Where to Go from Here
Assessment
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Customer Reviews