Title
APOGEE: adaptive prefetching on GPUs for energy efficiency
Abstract
Modern graphics processing units (GPUs) combine large amounts of parallel hardware with fast context switching among thousands of active threads to achieve high performance. However, such designs do not translate well to mobile environments where power constraints often limit the amount of hardware. In this work, we investigate the use of prefetching as a means to increase the energy efficiency of GPUs. Classically, CPU prefetching results in higher performance but worse energy efficiency due to unnecessary data being brought on chip. Our approach, called APOGEE, uses an adaptive mechanism to dynamically detect and adapt to the memory access patterns found in both graphics and scientific applications that are run on modern GPUs to achieve prefetching efficiencies of over 90%. Rather than examining threads in isolation, APOGEE uses adjacent threads to more efficiently identify address patterns and dynamically adapt the timeliness of prefetching. The net effect of APOGEE is that fewer thread contexts are necessary to hide memory latency and thus sustain performance. This reduction in thread contexts and related hardware translates to simplification of hardware and leads to a reduction in power. For Graphics and GPGPU applications, APOGEE enables an 8X reduction in multithreading hardware, while providing a performance benefit of 19%. This translates to a 52% increase in performance per watt over systems with high multi-threading and 33% over existing GPU prefetching techniques.
Year
DOI
Venue
2013
10.1109/PACT.2013.6618805
PACT
Keywords
Field
DocType
performance benefit,higher performance,modern gpus,related hardware translates,cpu prefetching result,parallel hardware,prefetching efficiency,gpu prefetching technique,high performance,adaptive prefetching,energy efficiency,multithreading hardware,parallel processing,energy conservation,multi threading
Multithreading,Computer science,CUDA,Parallel computing,Real-time computing,Thread (computing),General-purpose computing on graphics processing units,Instruction prefetch,Performance per watt,CAS latency,Context switch
Conference
ISSN
ISBN
Citations 
1089-795X
978-1-4799-1021-2
24
PageRank 
References 
Authors
0.78
17
4
Name
Order
Citations
PageRank
Ankit Sethia11054.91
Ganesh S. Dasika238724.30
Mehrzad Samadi342216.09
Scott Mahlke44811312.08