HandsOn GPU Programming with Python and CUDA,Used

HandsOn GPU Programming with Python and CUDA,Used

In Stock
SKU: SONG1788993918
Brand: Packt Publishing
Condition: Used
Regular price$52.88
Quantity
Add to wishlist
Add to compare

Sold by Ergodebooks, an authorized reseller.

Returns accepted within 30 days | support@ergodebooks.com

Verified
Shipping Information
  • Free Standard Shipping — United States only
  • Processing Time: 1–3 business days
  • Estimated Delivery: 3–5 business days after dispatch
  • Double-boxed, fully insured & discreetly packaged
  • Tracking number sent via email once dispatched
  • Orders over $250 require signature upon delivery. Taxes calculated at checkout.
Returns & Refund

Returns accepted within 30 days of delivery.

Damaged or Defective Item

Free return shipping + replacement or full refund

Wrong Item Received

Free return shipping + replacement or full refund

Change of Mind

Return shipping at customer's expense · 25% restocking fee applies

All returns require a Return Authorization (RA) number before sending.

To initiate a return, contact us:

support@ergodebooks.com +1 (281) 738-1050
View Full Return & Refund Policy
Payment Option
Payment Methods

Help

If you have any questions, you are always welcome to contact us. We'll get back to you as soon as possible, withing 24 hours on weekdays.

Customer service

All questions about your order, return and delivery must be sent to our customer service team by e-mail at yourstore@yourdomain.com

Sale & Press

If you are interested in selling our products, need more information about our brand or wish to make a collaboration, please contact us at press@yourdomain.com

Build GPUaccelerated high performing applications with Python 2.7, CUDA 9, and open source libraries such as PyCUDA and scikitcuda. We recommend the use of Python 2.7 as this version has stable support across all libraries used in this book. Key Features Get to grips with GPU programming tools such as PyCUDA, scikitcuda, and Nsight Explore CUDA libraries such as cuBLAS, cuFFT, and cuSolver Apply GPU programming to modern data science applications Book DescriptionGPU programming is the technique of offloading intensive tasks running on the CPU for faster computing. HandsOn GPU Programming with Python and CUDA will help you discover ways to develop high performing Python apps combining the power of Python and CUDA.This book will help you hit the ground runningyou'll start by learning how to apply Amdahl's law, use a code profiler to identify bottlenecks in your Python code, and set up a GPU programming environment. You'll then see how to query a GPU's features and copy arrays of data to and from its memory. As you make your way through the book, you'll run your code directly on the GPU and write full blown GPU kernels and device functions in CUDA C. You'll even get to grips with profiling GPU code and fully test and debug your code using Nsight IDE. Furthermore, the book covers some wellknown NVIDIA libraries such as cuFFT and cuBLAS.With a solid background in place, you'll be able to develop your very own GPUbased deep neural network from scratch, and explore advanced topics such as warp shuffling, dynamic parallelism, and PTX assembly. Finally, you'll touch up on topics and applications like AI, graphics, and blockchain.By the end of this book, you'll be confident in solving problems related to data science and highperformance computing with GPU programming. What you will learn Write effective and efficient GPU kernels and device functions Work with libraries such as cuFFT, cuBLAS, and cuSolver Debug and profile your code with Nsight and Visual Profiler Apply GPU programming to data science problems Build a GPUbased deep neural network from scratch Explore advanced GPU hardware features such as warp shuffling Who this book is forThis book is for developers and data scientists who want to learn the basics of effective GPU programming to improve performance using Python code. Familiarity with mathematics and physics concepts along with some experience with Python and any Cbased programming language will be helpful. Table of Contents 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 ScikitCUDA Draft complete The CUDA Device Function Libraries and Thrust Implementing a Deep Neural Network Working with Compiled GPU Code Performance Optimization in CUDA Where to Go from Here

⚠️ WARNING (California Proposition 65):

This product may contain chemicals known to the State of California to cause cancer, birth defects, or other reproductive harm.

For more information, please visit www.P65Warnings.ca.gov.

Recently Viewed