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Parallel Evolutionary Approach of Compaction Problem Using MapReduce

机译:MapReduce压缩问题的并行进化方法

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A parallel evolutionary approach of Compaction Problem is introduced using MapReduce. This problem is of interest for VLSI testing and bioinformatics. The overall cost of a VLSI circuit's testing depends on the length of its test sequence; therefore the reduction of this sequence, keeping the coverage, will lead to a reduction of used resources in the testing process. The problem of finding minimal test sets is NP-hard. We introduce a distributed evolutionary algorithm (MapReduce Parallel Evolutionary Algorithm—MRPEA) and compare it with two greedy approaches. The proposed algorithms are evaluated on randomly generated five-valued benchmarks that are scalable in size. The MapReduce paradigm offers the possibility to distribute and scale large amount of data. Experiments show the efficiency of the proposed parallel approach. The project, containing the Hadoop implementation can be found at: http://sourceforge. net/projects/'dcpsolver/ [10].
机译:使用MapReduce引入了压缩问题的并行演化方法。 VLSI测试和生物信息学对此问题感兴趣。 VLSI电路测试的总成本取决于其测试序列的长度。因此,减少此序列(保持覆盖范围)将减少测试过程中的已用资源。寻找最小测试集的问题是NP难的。我们介绍了一种分布式进化算法(MapReduce并行进化算法—MRPEA),并将其与两种贪婪方法进行了比较。所提出的算法是在随机生成的可缩放大小的五值基准上进行评估的。 MapReduce范例提供了分发和缩放大量数据的可能性。实验表明了所提出的并行方法的效率。包含Hadoop实现的项目可以在以下位置找到:http:// sourceforge。 net / projects /'dcpsolver / [10]。

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