咨询与建议

看过本文的还看了

相关文献

该作者的其他文献

文献详情 >Performance Analysis and Tunin... 收藏
Performance Analysis and Tuning for General Purpose Graphics...

Performance Analysis and Tuning for General Purpose Graphics Processing Units (GPGPU)

丛 书 名:Synthesis Lectures on Computer Architecture

版本说明:1

作     者:Hyesoon Kim Richard Vuduc Jee Choi Sara Baghsorkhi Wen-mei Hwu 

I S B N:(纸本) 9783031006098 

出 版 社:Springer Cham 

出 版 年:1000年

页      数:XII, 88页

主 题 词:Circuits and Systems Processor Architectures 

摘      要:General-purpose graphics processing units (GPGPU) have emerged as an important class of shared memory parallel processing architectures, with widespread deployment in every computer class from high-end supercomputers to embedded mobile platforms. Relative to more traditional multicore systems of today, GPGPUs have distinctly higher degrees of hardware multithreading (hundreds of hardware thread contexts vs. tens), a return to wide vector units (several tens vs. 1-10), memory architectures that deliver higher peak memory bandwidth (hundreds of gigabytes per second vs. tens), and smaller caches/scratchpad memories (less than 1 megabyte vs. 1-10 megabytes). In this book, we provide a high-level overview of current GPGPU architectures and programming models. We review the principles that are used in previous shared memory parallel platforms, focusing on recent results in both the theory and practice of parallel algorithms, and suggest a connection to GPGPU platforms. We aim to provide hints to architects about understanding algorithm aspect to GPGPU. We also provide detailed performance analysis and guide optimizations from high-level algorithms to low-level instruction level optimizations. As a case study, we use n-body particle simulations known as the fast multipole method (FMM) as an example. We also briefly survey the state-of-the-art in GPU performance analysis tools and techniques. Table of Contents: GPU Design, Programming, and Trends / Performance Principles / From Principles to Practice: Analysis and Tuning / Using Detailed Performance Analysis to Guide Optimization

读者评论 与其他读者分享你的观点

用户名:未登录
我的评分