Debunking the 100X GPU vs. CPU myth

Author:

Lee Victor W.1,Kim Changkyu1,Chhugani Jatin1,Deisher Michael2,Kim Daehyun1,Nguyen Anthony D.1,Satish Nadathur1,Smelyanskiy Mikhail1,Chennupaty Srinivas2,Hammarlund Per2,Singhal Ronak2,Dubey Pradeep1

Affiliation:

1. Intel Corporation, Santa Clara, CA, USA

2. Intel Corporation, Hillsboro, OR, USA

Abstract

Recent advances in computing have led to an explosion in the amount of data being generated. Processing the ever-growing data in a timely manner has made throughput computing an important aspect for emerging applications. Our analysis of a set of important throughput computing kernels shows that there is an ample amount of parallelism in these kernels which makes them suitable for today's multi-core CPUs and GPUs. In the past few years there have been many studies claiming GPUs deliver substantial speedups (between 10X and 1000X) over multi-core CPUs on these kernels. To understand where such large performance difference comes from, we perform a rigorous performance analysis and find that after applying optimizations appropriate for both CPUs and GPUs the performance gap between an Nvidia GTX280 processor and the Intel Core i7-960 processor narrows to only 2.5x on average. In this paper, we discuss optimization techniques for both CPU and GPU, analyze what architecture features contributed to performance differences between the two architectures, and recommend a set of architectural features which provide significant improvement in architectural efficiency for throughput kernels.

Publisher

Association for Computing Machinery (ACM)

Reference51 articles.

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