Publication | Closed Access
Driving big data with big compute
42
Citations
6
References
2012
Year
Unknown Venue
Cluster ComputingEngineeringComputer ArchitectureMap-reduceBig Data InfrastructureLlgrid TeamData ScienceBig Data ArchitectureData IntegrationParallel ComputingData ManagementHigh-performance Data AnalyticsHadoop ClustersComputer EngineeringComputer ScienceData-intensive ComputingScalable ComputingCloud ComputingParallel ProgrammingMassive Data ProcessingBig Data
Big Data (as embodied by Hadoop clusters) and Big Compute (as embodied by MPI clusters) provide unique capabilities for storing and processing large volumes of data. Hadoop clusters make distributed computing readily accessible to the Java community and MPI clusters provide high parallel efficiency for compute intensive workloads. Bringing the big data and big compute communities together is an active area of research. The LLGrid team has developed and deployed a number of technologies that aim to provide the best of both worlds. LLGrid MapReduce allows the map/reduce parallel programming model to be used quickly and efficiently in any language on any compute cluster. D4M (Dynamic Distributed Dimensional Data Model) provided a high level distributed arrays interface to the Apache Accumulo database. The accessibility of these technologies is assessed by measuring the effort to use these tools and is typically a few lines of code. The performance is assessed by measuring the insert rate into the Accumulo database. Using these tools a database insert rate of 4M inserts/second has been achieved on an 8 node cluster.
| Year | Citations | |
|---|---|---|
Page 1
Page 1