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'PGMT' is a project to design and build software tools that allow PGM (Processing Graph Method) to be affordably and efficiently used on a wide range of parallel processors so that applications, once built, for a parallel processor could be reused with little cost. This will make it easy to translate an engineer's design of a weapon system into software for the weapon system's computers. By design, this approach is specifically applicable to parallel distributed - computer processing. PGMT provides:
-Earlier, less costly development of new parallel processor software; -Faster modernization of parallel-processor software -Lower costs for modernizing and maintaining software -More uniform capabilities across parallel-processor architectures with more compatible software for various hardware configurations
DocumentationUser guide available in PDF format from http://w3.uqo.ca/pgmt/pgmt_documentation_synopsis.html
released on 1 September 2004
|License||Verified by||Verified on||Notes|
|GPLv2orlater||Janet Casey||20 September 2004|
Leaders and contributors
|See the AUTHORS file in the distribution for a complete list||Contributor|
Resources and communication
|Developer||VCS Repository Webview||http://w3.uqo.ca/cgi-bin/pgmt/cvsweb.cgi/|
This entry (in part or in whole) was last reviewed on 7 January 2008.
Permission is granted to copy, distribute and/or modify this document under the terms of the GNU Free Documentation License, Version 1.3 or any later version published by the Free Software Foundation; with no Invariant Sections, no Front-Cover Texts, and no Back-Cover Texts. A copy of the license is included in the page “GNU Free Documentation License”.
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