A massively parallel architecture for distributed genetic algorithms
Created by W.Langdon from
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- @Article{Eklund:2004:PC,
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author = "Sven E. Eklund",
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title = "A massively parallel architecture for distributed
genetic algorithms",
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journal = "Parallel Computing",
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year = "2004",
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volume = "30",
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pages = "647--676",
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number = "5-6",
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keywords = "genetic algorithms, genetic programming, Parallel
architecture, Diffusion model, FPGA, Classification,
Time series forecasting, Regression",
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owner = "wlangdon",
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URL = "http://www.sciencedirect.com/science/article/B6V12-4CDS49V-1/2/5ba1531eae2c9d8b336f1e90cc0ba5e9",
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ISSN = "0167-8191",
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DOI = "doi:10.1016/j.parco.2003.12.009",
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abstract = "Genetic algorithms are a group of stochastic search
algorithms with a broad field of application. Although
highly successful in many fields, genetic algorithms in
general suffer from long execution times. we describe
parallel models for genetic algorithms in general and
the massively parallel Diffusion Model in particular,
in order to speedup the execution.Implemented in
hardware, the Diffusion Model constitutes an efficient,
flexible, scalable and mobile machine learning system.
This fine-grained system consists of a large number of
processing nodes that evolve a large number of small,
overlapping subpopulations. Every processing node has
an embedded CPU that executes a linear machine code
representation at a rate of up to 20,000 generations
per second.Besides being efficient, implemented in
hardware this model is highly portable and applicable
to mobile, on-line applications. The architecture is
also scalable so that larger problems can be addressed
with a system with more processing nodes. Finally, the
use of linear machine code as genetic programming
representation and VHDL as hardware description
language, makes the system highly flexible and easy to
adapt to different applications.Through a series of
experiments we determine the settings of the most
important parameters of the Diffusion Model. We also
demonstrate the effectiveness and flexibility of the
architecture on a set of regression problems, a
classification application and a time series
forecasting application.",
- }
Genetic Programming entries for
Sven E Eklund
Citations