DocumentCode :
1663710
Title :
Time series forecasting using massively parallel genetic programming
Author :
Eklund, Sven E.
fYear :
2003
Abstract :
In this paper we propose a massively parallel GP model in hardware as an efficient, flexible and scaleable machine learning system. This fine-grained diffusion architecture consists of a large amount of independent processing nodes that evolve a large number of small, overlapping subpopulations. Every node has an embedded CPU that executes a linear machine code GP representation at a rate of up to 20,000 generations per second. Besides being efficient, implementing the system in VLSI makes it highly portable and makes it possible to target mobile, on-line applications. The SIMD-like architecture also makes the system scalable so that larger problems can be addressed with a system with more processing nodes. Finally, the use of GP representation and VHDL modeling makes the system highly flexible and easy to adapt to different applications. We demonstrate the effectiveness of the system on a time series forecasting application.
Keywords :
genetic algorithms; learning (artificial intelligence); parallel programming; time series; SIMD-like architecture; VHDL modeling; VLSI; fine-grained diffusion architecture; linear machine code GP representation; massively parallel genetic programming; scaleable machine learning system; time series forecasting; Biological system modeling; Centralized control; Computer architecture; Computer science; Genetic algorithms; Genetic programming; Hardware; Learning systems; Topology; Very large scale integration;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Parallel and Distributed Processing Symposium, 2003. Proceedings. International
ISSN :
1530-2075
Print_ISBN :
0-7695-1926-1
Type :
conf
DOI :
10.1109/IPDPS.2003.1213272
Filename :
1213272
Link To Document :
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