1996 International Symposium on Parallel Architectures, Algorithms and Networks (ISPAN '96) On parallelization of neural classification algorithms Beijing, CHINA June 12-June 14 ISBN: 0-8186-7460-1
Since the mid 80's neural computing has been gaining substantial attention as an important computing paradigm. A variety of neural computation models and learning algorithms have been developed and implemented on both general-purpose computers and dedicated hardware. The spectacular advances in VLSI technology over the last few years has further sparked interest and research activities in the field. This paper examines the implementation of neural classification algorithms, the main theme is focused on the parallelisation of a novel neural classifier architecture on three different platforms including the latest on-chip ZISC036 "hyperparallel" neuro-processors. A significant advantage of implementing neural networks directly on silicon is that it overcomes performance limitations of complex networks required for real-time applications. Furthermore, the technology owes much to its efficacy in achieving an algorithmic match between the fine-grained, parallel computation structure of neural architectures and the highly regular VLSI processing model.
Index Terms:
neural net architecture; parallel architectures; pattern classification; neural classification algorithms; parallelization; neural classifier architecture; neural networks; parallel computation; neural architectures; VLSI processing model
Citation:
K.P. Lam, A. Furness, "On parallelization of neural classification algorithms," ispan, pp.337, 1996 International Symposium on Parallel Architectures, Algorithms and Networks (ISPAN '96), 1996 Usage of this product signifies your acceptance of the Terms of Use. | |||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||