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Adaptive relaxed synchronization through the use of supervised learning methods

机译:通过使用有监督的学习方法进行自适应放松同步

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Several authors have proposed the use of relaxed synchronization to speed up the execution of parallel applications that admit tradeoffs between quality and execution time. However, most of these works propose the complete removal of synchronization primitives and do not anticipate the quality of the results to be obtained with different input data. In this paper, we propose a novel strategy for relaxing synchronization, evaluating the feasibility of using supervised learning methods to ensure that the relaxed synchronization technique provides results within acceptable limits of error. We use a varied set of program inputs to create a control base, providing data for the training of supervised learning methods. When the user wishes to execute his/her application with new input data (in the same execution environment), the trained classification algorithm will suggest the relax factor that is best suited for the triple application/input/execution environment. Using this methodology, we obtained a gain of 3.5x for the K-means algorithm applied to videos while maintaining the desired quality rate.
机译:几位作者提出使用放松同步来加快并行应用程序的执行速度,这些应用程序允许在质量和执行时间之间进行权衡。但是,这些工作大多数都建议完全删除同步原语,并且无法预期使用不同输入数据获得的结果的质量。在本文中,我们提出了一种用于放松同步的新颖策略,评估了使用监督学习方法以确保放松同步技术在可接受的误差范围内提供结果的可行性。我们使用各种程序输入来创建控制基础,从而为训练有监督的学习方法提供数据。当用户希望使用新的输入数据(在相同的执行环境中)执行他/她的应用程序时,训练有素的分类算法将建议最适合三重应用程序/输入/执行环境的放松因子。使用这种方法,我们将应用于视频的K-means算法获得了3.5倍的增益,同时保持了所需的质量率。

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