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MPI for Big Data: New tricks for an old dog
Dominique Lasalle,
George Karypis
Computer Science and Engineering
Research output
:
Contribution to journal
›
Article
›
peer-review
9
Scopus citations
Overview
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Keyphrases
Big Data
100%
Out-of-core
100%
Older Dogs
100%
Distributed Storage
66%
Multiple Levels
33%
Parallel Programming
33%
Small Clusters
33%
MapReduce
33%
Single Node
33%
Algorithmic Complexity
33%
Computing Node
33%
Memory Codes
33%
Running Process
33%
Existing Technology
33%
MapReduce Paradigm
33%
Parallel Distributed Computing
33%
Effective Means
33%
Runtime Systems
33%
MPI Programming
33%
Engineering Complexity
33%
Computer Science
Big Data
100%
Distributed Memory
100%
Distributed Computing
50%
Map-Reduce
50%
Parallel Program
50%
Massive Amount
50%
Running Process
50%
Mapreduce Paradigm
50%
Algorithmic Complexity
50%
Runtime Systems
50%