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Scalable massively parallel artificial neural networks
Lyie N. Long, Ankur Gupta
Aerospace Engineering
Institute for Computational and Data Sciences (ICDS)
Huck Institutes of the Life Sciences
Materials Research Institute (MRI)
Center for Computational Mathematics and Applications (CCMA)
Research output
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Contribution to journal
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Article
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peer-review
32
Scopus citations
Overview
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Keyphrases
Artificial Neural Network
100%
Massively Parallel
100%
Training Time
50%
Back Propagation Algorithm
50%
Time Series Data
25%
Function Approximation
25%
Fully Connected
25%
Problem Size
25%
Pattern Recognition
25%
Large-scale Networks
25%
One-level
25%
Time Reduction
25%
Neural Network Simulator
25%
Timeseries Analysis
25%
Object-oriented
25%
Parallelizing
25%
Ghosts
25%
Communication Cost
25%
Error Reduction
25%
Information Communication
25%
Blue Gene
25%
Character Set
25%
C++ Code
25%
Computer Science
Artificial Neural Network
100%
Backpropagation Algorithm
40%
Function Approximation
20%
Time Series Data
20%
Pattern Recognition
20%
Communication Cost
20%
Propagation Time
20%
Forward Propagation
20%