
Parallel Architectures for Artificial Neural Networks
Paradigms and Implementations
IEEE Computer Society Press,U.S.
1st Edition
Published on 30. November 1998
Book
Hardback
412 pages
978-0-8186-8399-2 (ISBN)
Description
Presents the parallel implementation aspects of all major artificial network models. The text details implementations on various processor architectures built on different hardware platforms, ranging from large parallel computers to MIMD machines using transputers and DSPs.
More details
Series
Language
English
Place of publication
Los Alamitos, CA
United States
Target group
College/higher education
Professional and scholarly
Product notice
sewn/stitched
Cloth over boards
Dimensions
Height: 260 mm
Width: 183 mm
Thickness: 27 mm
Weight
968 gr
ISBN-13
978-0-8186-8399-2 (9780818683992)
Copyright in bibliographic data and cover images is held by Nielsen Book Services Limited or by the publishers or by their respective licensors: all rights reserved.
Schweitzer Classification
Persons
N. Sundararajan and P. Saratchandran are the authors of Parallel Architectures for Artificial Neural Networks: Paradigms and Implementations, published by Wiley.
Content
1. Introduction (N. Sundararajan, P. Saratchandran, Jim Torresen).
2. A Review of Parallel Implementations of Backpropagation Neural Networks (Jim Torresen, Olav Landsverk).
I: Analysis of Parallel Implementations.
3. Network Parallelism for Backpropagation Neural Networks on a Heterogeneous Architecture (R. Arularasan, P. Saratchandran, N. Sundararajan, Shou King Foo).
4. Training-Set Parallelism for Backpropagation Neural Networks on a Heterogeneous Architecture (Shou King Foo, P. Saratchandran, N. Sundararajan).
5. Parallel Real-Time Recurrent Algorithm for Training Large Fully Recurrent Neural Networks (Elias S. Manolakos, George Kechriotis).
6. Parallel Implementation of ART1 Neural Networks on Processor Ring Architectures (Elias S. Manolakos, Stylianos Markogiannakis).
II: Implementations on a Big General-Purpose Parallel Computer.
7. Implementation of Backpropagation Neural Networks on Large Parallel Computers (Jim Torresen, Shinji Tomita).
III: Special Parallel Architectures and Application Case Studies.
8. Massively Parallel Architectures for Large-Scale Neural Network Computations (Yoshiji Fujimoto).
9. Regularly Structured Neural Networks on the DREAM Machine (Soheil Shams, Jean-Luc Gaudiot).
10. High-Performance Parallel Backpropagation Simulation with On-Line Learning (Urs A. Muller, Patrick Spiess, Michael Kocheisen, Beat Flepp, Anton Gunzinger, Walter Guggenbuhl).
11. Training Neural Networks with SPERT-II (Krste Asanovic;, James Beck, David Johnson, Brian Kingsbury, Nelson Morgan, John Wawrzynek).
12. Concluding Remarks (N. Sundararajan, P. Saratchandran).
2. A Review of Parallel Implementations of Backpropagation Neural Networks (Jim Torresen, Olav Landsverk).
I: Analysis of Parallel Implementations.
3. Network Parallelism for Backpropagation Neural Networks on a Heterogeneous Architecture (R. Arularasan, P. Saratchandran, N. Sundararajan, Shou King Foo).
4. Training-Set Parallelism for Backpropagation Neural Networks on a Heterogeneous Architecture (Shou King Foo, P. Saratchandran, N. Sundararajan).
5. Parallel Real-Time Recurrent Algorithm for Training Large Fully Recurrent Neural Networks (Elias S. Manolakos, George Kechriotis).
6. Parallel Implementation of ART1 Neural Networks on Processor Ring Architectures (Elias S. Manolakos, Stylianos Markogiannakis).
II: Implementations on a Big General-Purpose Parallel Computer.
7. Implementation of Backpropagation Neural Networks on Large Parallel Computers (Jim Torresen, Shinji Tomita).
III: Special Parallel Architectures and Application Case Studies.
8. Massively Parallel Architectures for Large-Scale Neural Network Computations (Yoshiji Fujimoto).
9. Regularly Structured Neural Networks on the DREAM Machine (Soheil Shams, Jean-Luc Gaudiot).
10. High-Performance Parallel Backpropagation Simulation with On-Line Learning (Urs A. Muller, Patrick Spiess, Michael Kocheisen, Beat Flepp, Anton Gunzinger, Walter Guggenbuhl).
11. Training Neural Networks with SPERT-II (Krste Asanovic;, James Beck, David Johnson, Brian Kingsbury, Nelson Morgan, John Wawrzynek).
12. Concluding Remarks (N. Sundararajan, P. Saratchandran).