|
FreeComputerBooks.com
Links to Free Computer, Mathematics, Technical Books all over the World
|
|
- Title: General-Purpose Graphics Processor Architectures
- Author(s) Tor M. Aamodt, Wilson Wai Lun Fung, Timothy G. Rogers
- Publisher: Springer (May 21, 2018); eBook (Online Editions)
- Paperback: 144 pages
- eBook: PDF
- Language: English
- ISBN-10/ASIN: 3031006313
- ISBN-13: 978-3031006319
- Share This:
|
Originally developed to support video games, graphics processor units (GPUs) are now increasingly used for general-purpose (non-graphics) applications ranging from machine learning to mining of cryptographic currencies.
About the Authors- Tor M. Aamodt is a Professor in the Department of Electrical and Computer Engineering at the University of British Columbia.
- GPU Programming (CUDA, OpenCL, etc.)
- The C++ Programming Language
- Parallel, Concurrent Computing and Programming
- Computer Graphics and GPU Programming
Similar Books:
-
GPU Programming on Apple Silicon Using C++ (Ayman Alheraki)
The aim of this book is to offer a focused, practical guide that helps developers tap into the power of Apple?s GPU technology using C++. Focused specifically on programming the GPU using C++ on Apple Silicon.
-
C++ GPU Programming on Windows 11 (Ayman Alheraki)
The goal is to simplify the information and present the core concepts clearly, with a focus on practical aspects that enable new programmers to start using GPU technologies in their projects on Windows 11.
-
OpenCL Programming Guide (Aaftab Munshi, et al.)
This book reviews key use cases, shows how OpenCL (Open Computing Language) can express a wide range of parallel algorithms, and offers complete reference material on both the API and OpenCL C programming language.
-
CUDA C++ Optimization: Coding Faster GPU Kernels (David Spuler)
Increase the efficiency of CUDA C++ kernels for AI and high-performance computing on the powerful NVIDIA GPUs. Leverage your GPU investment with the power of an efficient software layer.
-
CUDA C++ Debugging: Safer GPU Kernel Programming
Cover CUDA C++ programming tools and techniques for safely running GPU kernels in the NVIDIA CUDA C++ environment, with coverage from beginner to advanced. Improve reliability without sacrificing performance and reduce development time.
-
Parallel Programming with CUDA: Architecture, Analysis, Application
This book offers a detailed guide to CUDA with a grounding in parallel fundamentals. With CUDA, you can use a desktop PC for work that would have previously required a large cluster of PCs or access to a High-Performance Computing (HPC) facility.
-
CUDA Succinctly (Chris Rose)
This book discusses CUDA hardware and software in greater detail and covering both CUDA and Kepler. Every CUDA developer, from the casual to the most sophisticated, will find something here of interest and immediate usefulness.
-
CUDA Tutorial (Putt Sakdhnagool)
This book introduces the essentials of CUDA C programming clearly and concisely, quickly guiding you from running sample programs to building your own code, assumes no specialized background in GPU-based or parallel computing.






