Exploiting data parallelism in artificial neural networks with Haskell

Date

2009-08

Authors

Heartsfield, Gregory Lynn

Journal Title

Journal ISSN

Volume Title

Publisher

Abstract

Functional parallel programming techniques for feed-forward artificial neural networks trained using backpropagation learning are analyzed. In particular, the Data Parallel Haskell extension to the Glasgow Haskell Compiler is considered as a tool for achieving data parallelism. We find much potential and elegance in this method, and determine that a sufficiently large workload is critical in achieving real gains. Several additional features are recommended to increase usability and improve results on small datasets.

Description

text

LCSH Subject Headings

Citation