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DQN-based OpenCL workload partition for performance optimization

Authors
Park, SanghyunSuh, Taeweon
Issue Date
Aug-2019
Publisher
SPRINGER
Keywords
OpenCL; DQN; Workload partition
Citation
JOURNAL OF SUPERCOMPUTING, v.75, no.8, pp.4875 - 4893
Indexed
SCIE
SCOPUS
Journal Title
JOURNAL OF SUPERCOMPUTING
Volume
75
Number
8
Start Page
4875
End Page
4893
URI
https://scholar.korea.ac.kr/handle/2021.sw.korea/63675
DOI
10.1007/s11227-019-02766-0
ISSN
0920-8542
Abstract
This paper proposes a deep Q network (DQN)-based method for the workload partition problem in OpenCL. The DQN, a reinforcement learning algorithm, optimizes the workload partition for each processing unit by the self-training, based on the accumulated performance data on the computing environment. Our experiments reveal that the DQN-based partition provides the performance improvement by up to 62.2% and 6.9% in JPEG decoding, compared to the LuxMark-based and target-based partitions, respectively. The DQN is able to capture the low-level contention in slave devices such as caches and memory, and the communication bottleneck between devices, and reflect it to the workload partition ratio.
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