| Literature DB >> 34898769 |
Leonardo Solis-Vasquez1,2, Andreas F Tillack3, Diogo Santos-Martins3, Andreas Koch1, Scott LeGrand4, Stefano Forli3.
Abstract
Irregular applications can be found in different scientific fields. In computer-aided drug design, molecular docking simulations play an important role in finding promising drug candidates. AutoDock is a software application widely used for predicting molecular interactions at close distances. It is characterized by irregular computations and long execution runtimes. In recent years, a hardware-accelerated version of AutoDock, called AutoDock-GPU, has been under active development. This work benchmarks the recent code and algorithmic enhancements incorporated into AutoDock-GPU. Particularly, we analyze the impact on execution runtime of techniques based on early termination. These enable AutoDock-GPU to explore the molecular space as necessary, while safely avoiding redundant computations. Our results indicate that it is possible to achieve average runtime reductions of 50% by using these techniques. Furthermore, a comprehensive literature review is also provided, where our work is compared to relevant approaches leveraging hardware acceleration for molecular docking.Entities:
Keywords: AutoDock; CUDA; OpenCL; Variable execution performance; early termination; molecular docking
Year: 2021 PMID: 34898769 PMCID: PMC8654209 DOI: 10.1016/j.parco.2021.102861
Source DB: PubMed Journal: Parallel Comput ISSN: 0167-8191 Impact factor: 0.986