Title :
A 1M synapse self-learning digital neural network chip
Author :
Saito, O. ; Aihara, K. ; Fujita, O. ; Uchimura, K.
Author_Institution :
NTT Integrated Inf. & Energy Syst. Labs., Kanagawa, Japan
Abstract :
New neural network chip architectures that can process neural networks with large-capacity synapse weight in real time are needed to solve real-world problems. Conventional digital neurochips achieve high-speed operation by parallelizing processing on the premise that synapse weights are stored in on-chip memory and can be accessed at high speed. This premise restricts the size of a network and therefore the size of the problem that the chip can handle. To solve this problem, this digital neural network chip uses sparse memory-access (SMA) architecture to eliminate unnecessary external memory access. The chip, together with sixteen 1 Mb external SRAMs, handles a 1M synapse network, 50 times larger than a conventional on-chip memory-based neural network chip can handle. An external RAM access mechanism enables high-speed calculation using data stored in external memory. High-speed on-chip learning using SMA is implemented, another major advantage over previous chips.
Keywords :
learning (artificial intelligence); neural chips; real-time systems; digital neural network chip; external RAM access mechanism; high-speed operation; large-capacity synapse weight; neurochips; on-chip learning; real time processing; sparse memory-access architecture; Automatic control; Memory architecture; Network-on-a-chip; Neural networks; Neurons; Random access memory; Read-write memory; Real time systems; System-on-a-chip; Transfer functions;
Conference_Titel :
Solid-State Circuits Conference, 1998. Digest of Technical Papers. 1998 IEEE International
Conference_Location :
San Francisco, CA, USA
Print_ISBN :
0-7803-4344-1
DOI :
10.1109/ISSCC.1998.672391