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Modeling the benefits of mixed data and task parallelism
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Authors:
Soumen Chakrabarti
Computer Science Division, U. C. Berkeley, CA
James Demmel
Computer Science Division and Mathematics Department, U. C. Berkeley, CA
Katherine Yelick
Computer Science Division, U. C. Berkeley, CA
Published in:
· Proceeding
SPAA '95
Proceedings of the seventh annual ACM symposium on Parallel algorithms and architectures
Pages 74-83
ACM
New York, NY
, USA
©1995
table of contents
ISBN:0-89791-717-0
doi>
10.1145/215399.215423
1995 Article
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· Citation Count: 22
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algorithms
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