Title :
Dynamic scheduling for feed-forward neural nets using transputers
Author :
Oglesby, J. ; Mason, J.S.
Author_Institution :
Univ. Coll., Swansea, UK
Abstract :
The modeling of neural networks on conventional digital computers can be a very time consuming operation. The authors evaluate one way to ease this time problem by mapping the processes involved onto an array of parallel processors. The neural approach to computing is inherently parallel with a fine level of granularity. This is to some extent incompatible with commercially available parallel processing systems, and in particular transputer-based systems. However, by exploiting the parallelism in the training or classification data, multi-transputer-based systems can efficiently model neural processing for a wide range of real-world problems. The paper describes a dynamic load balancing arrangement, based on a division of the training data, that produces near-linear improvement against the number of processors in use
Keywords :
multiprocessing systems; neural nets; parallel processing; scheduling; transputers; dynamic load balancing; dynamic scheduling; feedforward neural nets; multiple transputer based system; neural processing; parallel processing; training data;
Conference_Titel :
Artificial Neural Networks, 1989., First IEE International Conference on (Conf. Publ. No. 313)
Conference_Location :
London