Return to search

Implementation limits for artificial neural networks

M.S. / Computer Science and Engineering / Before artificial neural network applications become common there must be inexpensive hardware that will allow large networks to be run in real time. It is uncertain how large networks will do when constrained to implementations on architectures of current technology. Some tradeoffs must be made when the network models are implemented efficiently. Three popular artificial neural network models are analyzed. This paper discusses the effects on performance when the models are modified for efficient hardware implementation.

Identiferoai:union.ndltd.org:OREGON/oai:content.ohsu.edu:etd/268
Date02 1900
CreatorsBaker, Thomas Edward
PublisherOregon Health & Science University
Source SetsOregon Health and Science Univ. Library
LanguageEnglish
Detected LanguageEnglish
TypeText
FormatNeeds Adobe Acrobat Reader to view., pdf, 2900.083 KB
Rightshttp://www.ohsu.edu/library/etd_rights.shtml

Page generated in 0.0023 seconds