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Optimizing neural networks on SIMD parallel computers

โœ Scribed by Andrea Di Blas; Arun Jagota; Richard Hughey


Publisher
Elsevier Science
Year
2005
Tongue
English
Weight
417 KB
Volume
31
Category
Article
ISSN
0167-8191

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