Parallel computing in enterprise modeling. | |
Goldsby, Michael E. ; Armstrong, Robert C. ; Shneider, Max S. ; Vanderveen, Keith ; Ray, Jaideep ; Heath, Zach ; Allan, Benjamin A. | |
Sandia National Laboratories | |
关键词: Parallel Computers.; 99 General And Miscellaneous//Mathematics, Computing, And Information Science; Computerized Simulation; Parallel Processing; Enterprise Modeling; | |
DOI : 10.2172/945906 RP-ID : SAND2008-6172 RP-ID : AC04-94AL85000 RP-ID : 945906 |
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美国|英语 | |
来源: UNT Digital Library | |
【 摘 要 】
This report presents the results of our efforts to apply high-performance computing to entity-based simulations with a multi-use plugin for parallel computing. We use the term 'Entity-based simulation' to describe a class of simulation which includes both discrete event simulation and agent based simulation. What simulations of this class share, and what differs from more traditional models, is that the result sought is emergent from a large number of contributing entities. Logistic, economic and social simulations are members of this class where things or people are organized or self-organize to produce a solution. Entity-based problems never have an a priori ergodic principle that will greatly simplify calculations. Because the results of entity-based simulations can only be realized at scale, scalable computing is de rigueur for large problems. Having said that, the absence of a spatial organizing principal makes the decomposition of the problem onto processors problematic. In addition, practitioners in this domain commonly use the Java programming language which presents its own problems in a high-performance setting. The plugin we have developed, called the Parallel Particle Data Model, overcomes both of these obstacles and is now being used by two Sandia frameworks: the Decision Analysis Center, and the Seldon social simulation facility. While the ability to engage U.S.-sized problems is now available to the Decision Analysis Center, this plugin is central to the success of Seldon. Because Seldon relies on computationally intensive cognitive sub-models, this work is necessary to achieve the scale necessary for realistic results. With the recent upheavals in the financial markets, and the inscrutability of terrorist activity, this simulation domain will likely need a capability with ever greater fidelity. High-performance computing will play an important part in enabling that greater fidelity.
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945906.pdf | 739KB | download |