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A task-level parallelism approach for process discovery

机译:一种用于任务发现的任务级并行方法

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Building process models from the available data in the event logs is the primary objective of Process discovery. Alpha algorithm is one of the popular algorithms accessible for ascertaining a process model from the event logs in process mining. The steps involved in the Alpha algorithm are computationally rigorous and this problem further manifolds with the exponentially increasing event log data. In this work, we have exploited task parallelism in the Alpha algorithm for process discovery by using MPI programming model. The proposed work is based on distributed memory parallelism available in MPI programming for performance improvement. Independent and computationally intensive steps in the Alpha algorithm are identified and task parallelism is exploited. The execution time of serial as well as parallel implementation of Alpha algorithm are measured and used for calculating the extent of speedup achieved. The maximum and minimum speedups obtained are 3.97 x and 3.88 x respectively with an average speedup of 3.94 x .
机译:根据事件日志中的可用数据构建流程模型是流程发现的主要目标。 Alpha算法是可用于从过程挖掘中的事件日志中确定过程模型的流行算法之一。 Alpha算法涉及的步骤在计算上非常严格,并且随着事件日志数据呈指数增长,此问题进一步复杂化。在这项工作中,我们通过使用MPI编程模型在Alpha算法中利用任务并行性进行进程发现。拟议的工作基于MPI编程中可用的分布式内存并行性,以提高性能。确定Alpha算法中独立且计算量大的步骤,并利用任务并行性。测量串行和并行执行Alpha算法的执行时间,并将其用于计算达到的加速程度。获得的最大和最小加速比分别为3.97 x和3.88 x,平均加速比为3.94 x。

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