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Data Mining Algorithms Parallelizing in Functional Programming Language for Execution in Cluster

机译:数据挖掘算法在群集中执行功能规划语言中的并行化

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This article describes an approach to parallelizing of data mining algorithms, implemented in functional programming language, for distributed data processing in cluster. Here are provided requirements for the functions which form these algorithms for their conversion into parallel type. As an example we describe Naive Bayes algorithm implementation in Common Lisp language, its conversion into parallel type and execution on cluster with MPI system.
机译:本文介绍了以功能编程语言实现的数据挖掘算法并行化的方法,用于集群中的分布式数据处理。这里提供了对形成这些算法的功能的要求,以便将它们转换为并行类型。例如,我们描述了常见的LISP语言中的天真贝叶斯算法的实现,将其转换为与MPI系统的群集中的并行类型和执行。

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