Publication | Closed Access
Survey of MapReduce frame operation in bioinformatics
178
Citations
42
References
2013
Year
Cluster ComputingEngineeringBioinformatics ResearchersMap-reduceBioinformatics DatabaseData ScienceData-intensive PlatformParallel ComputingData ManagementHigh-performance Data AnalyticsMapreduce Frame OperationComputer ScienceFunctional GenomicsBioinformaticsData-intensive ComputingComputational BiologyCloud ComputingCloud Computing ServicesParallel ProgrammingSystems BiologyMedicineFile SystemMassive Data ProcessingBig Data
Bioinformatics is challenged by the fact that traditional analysis tools have difficulty in processing large-scale data from high-throughput sequencing. The open source Apache Hadoop project, which adopts the MapReduce framework and a distributed file system, has recently given bioinformatics researchers an opportunity to achieve scalable, efficient and reliable computing performance on Linux clusters and on cloud computing services. In this article, we present MapReduce frame-based applications that can be employed in the next-generation sequencing and other biological domains. In addition, we discuss the challenges faced by this field as well as the future works on parallel computing in bioinformatics.
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