3,811 research outputs found

    v. 62, no. 10, April 7, 1994

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    The Ohio State University Libraries Faculty Meeting Minutes, June 10, 1999

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    The University Archives has determined that this item is of continuing value to OSU's history

    PROSET — A Language for Prototyping with Sets

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    We discuss the prototyping language PROSET(Prototyping with Sets) as a language for experimental and evolutionary prototyping, focusing its attention on algorithm design. Some of PROSET’s features include generative communication, flexible exception handling and the integration of persistence. A discussion of some issues pertaining to the compiler and the programming environment conclude the pape

    Quantitative and qualitative evaluation of Linda in a distributed environment

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    Spartan Daily, May 11, 1995

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    Volume 104, Issue 67https://scholarworks.sjsu.edu/spartandaily/8711/thumbnail.jp

    Spartan Daily, February 1, 1996

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    Volume 106, Issue 5https://scholarworks.sjsu.edu/spartandaily/8790/thumbnail.jp

    Portable parallel stochastic optimization for the design of aeropropulsion components

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    This report presents the results of Phase 1 research to develop a methodology for performing large-scale Multi-disciplinary Stochastic Optimization (MSO) for the design of aerospace systems ranging from aeropropulsion components to complete aircraft configurations. The current research recognizes that such design optimization problems are computationally expensive, and require the use of either massively parallel or multiple-processor computers. The methodology also recognizes that many operational and performance parameters are uncertain, and that uncertainty must be considered explicitly to achieve optimum performance and cost. The objective of this Phase 1 research was to initialize the development of an MSO methodology that is portable to a wide variety of hardware platforms, while achieving efficient, large-scale parallelism when multiple processors are available. The first effort in the project was a literature review of available computer hardware, as well as review of portable, parallel programming environments. The first effort was to implement the MSO methodology for a problem using the portable parallel programming language, Parallel Virtual Machine (PVM). The third and final effort was to demonstrate the example on a variety of computers, including a distributed-memory multiprocessor, a distributed-memory network of workstations, and a single-processor workstation. Results indicate the MSO methodology can be well-applied towards large-scale aerospace design problems. Nearly perfect linear speedup was demonstrated for computation of optimization sensitivity coefficients on both a 128-node distributed-memory multiprocessor (the Intel iPSC/860) and a network of workstations (speedups of almost 19 times achieved for 20 workstations). Very high parallel efficiencies (75 percent for 31 processors and 60 percent for 50 processors) were also achieved for computation of aerodynamic influence coefficients on the Intel. Finally, the multi-level parallelization strategy that will be needed for large-scale MSO problems was demonstrated to be highly efficient. The same parallel code instructions were used on both platforms, demonstrating portability. There are many applications for which MSO can be applied, including NASA's High-Speed-Civil Transport, and advanced propulsion systems. The use of MSO will reduce design and development time and testing costs dramatically

    Spartan Daily, November 22, 1996

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    Volume 107, Issue 61https://scholarworks.sjsu.edu/spartandaily/8917/thumbnail.jp

    Spartan Daily, November 22, 1996

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    Volume 107, Issue 61https://scholarworks.sjsu.edu/spartandaily/8917/thumbnail.jp
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