Abstract :
Synthetic neural networks can be implemented in silicon as computer simulations, as digital or analog integrated circuits, or in a hybrid analog/digital form. The largest computational load in a neural system is incurred by the weighted summation Tij where Vj is a neural state and Tij the matrix of synaptic weights. This paper reviews representative progress in these areas, concentrating on analog implementations, with particular reference to the author´s own work. Conclusions are drawn as to the problem areas for future work, and to the implications on neural algorithms and architecture of the constraints imposed by hardware