Evaluating the Energy Efficiency of OpenCL-accelerated AutoDock Molecular Docking

2020 28th Euromicro International Conference on Parallel, Distributed and Network-Based Processing (PDP)(2020)

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摘要
AuTODocK is a molecular docking application that consists of a genetic algorithm coupled with the Solis-Wets local-search method. Despite its wide usage, its power consumption on heterogeneous systems has not been evaluated extensively. In this work, we evaluate the energy efficiency of an OpenCL-accelerated version of AUTODOCK that, along with the traditional SolisWets method, newly incorporates the ADADELTA gradient-based local search. Executions on a Nvidia V100 GPU yielded energy efficiency improvements of up to 297x (Solis-Wets) and 137x (ADADELTA) with respect to the original AUTODOCK baseline.
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关键词
Energy efficiency,power profiling,OpenCL,molecular docking,AutoDock,gradients
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