楼主: igs816
10536 39

[书籍介绍] Hands-On GPU Programming with Python and CUDA [推广有奖]

21
长线小白龙(真实交易用户) 在职认证  企业认证  发表于 2019-6-3 13:46:55
楼主辛苦了。。。。。。。。。。

22
yangwag(未真实交易用户) 发表于 2019-6-3 14:12:53
这本书比较好.

23
zhaosl(真实交易用户) 发表于 2019-6-3 16:34:13

24
wb123456(未真实交易用户) 发表于 2019-6-3 16:54:27
thank you

25
yunnandlg(未真实交易用户) 在职认证  学生认证  发表于 2019-6-3 17:33:44
Authors
Dr. Brian Tuomanen
Dr. Brian Tuomanen has been working with CUDA and General-Purpose GPU Programming since 2014. He received his Bachelor of Science in Electrical Engineering from the University of Washington in Seattle, and briefly worked as a Software Engineer before switching to Mathematics for Graduate School. He completed his Ph.D. in Mathematics at the University of Missouri in Columbia, where he first encountered GPU programming as a means for studying scientific problems. Dr. Tuomanen has spoken at the US Army Research Lab about General Purpose GPU programming, and has recently lead GPU integration and development at a Maryland based start-up company. He currently lives and works in the Seattle area.

26
yunnandlg(未真实交易用户) 在职认证  学生认证  发表于 2019-6-3 17:34:09
More Information
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
About       
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.

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 application

27
hmn21200(未真实交易用户) 发表于 2019-6-3 19:36:38
感谢分享

28
life_life(未真实交易用户) 发表于 2019-6-3 20:37:41
看看那 看看 ,,

29
qin_shen(真实交易用户) 发表于 2019-6-3 20:57:38
想看想看想看

30
qin_shen(真实交易用户) 发表于 2019-6-3 20:57:44
想看想看想看

您需要登录后才可以回帖 登录 | 我要注册

本版微信群
加好友,备注cda
拉您进交流群
GMT+8, 2025-12-28 20:08