K-Means Clustering is a very powerful and frequently used algorithm for the clustering, it has got its own limitation. The prevalent K-Means clustering algorithm used for grouping have inadequacies, for example, slow convergence rate, local optima trap, and so on. Therefore, many swarm knowledge based procedures combined with KM for clustering were presented and demonstrated their presentation, its variations and its applications in data grouping. In this paper we intend to propose a parallel organizing strategy for KM-MBFO mechanism that actualized in Hadoop Distributed File System (HDFS) for diminishing the execution time. This Mapper approach produces the populace for given data set for grouping. The Modified Bacterial Foraging Optimization (MBFO) algorithm finds the wellness of the populace to choose the optimal K values as far as execution time and classification error. Through simulated test results, we assess the demonstration of the proposed KM-BFO conspire
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