Features of the Architecture Implementing the Dataflow Computational Model and Its Application in the Creation of Microelectronic High-Performance Computing Systems


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详细

At present, high-performance computations are in general use: in the government sector, defense sphere, large-scale concerns and enterprises, commercial entities, etc. From year-to-year, increasing sums are invested in supercomputers and software to rapidly answer any challenges in some field. In general, present-day high-performance computing systems are based on the von Neumann computation model. This, in turn, imposes certain restrictions, in particular, on paralleling computations and, as a consequence, on the creation of effective parallel applications. In this paper, one of the ways of solving this problem is proposed, namely, transition to the original dataflow computation model with a dynamically generated context and its implementation in a parallel dataflow computing system. Peculiarities of the parallel dataflow computing system architecture and the advantages offered by them are described. Such architectures will be in demand when creating new microelectronic high-performance computation systems.

作者简介

D. Zmeev

Institute for Design Problems in Microelectronics, Russian Academy of Sciences

Email: oku@ippm.ru
俄罗斯联邦, Zelenograd, Moscow, 124365

A. Klimov

Institute for Design Problems in Microelectronics, Russian Academy of Sciences

Email: oku@ippm.ru
俄罗斯联邦, Zelenograd, Moscow, 124365

N. Levchenko

Institute for Design Problems in Microelectronics, Russian Academy of Sciences

Email: oku@ippm.ru
俄罗斯联邦, Zelenograd, Moscow, 124365

A. Okunev

Institute for Design Problems in Microelectronics, Russian Academy of Sciences

编辑信件的主要联系方式.
Email: oku@ippm.ru
俄罗斯联邦, Zelenograd, Moscow, 124365

A. Stempkovskii

Institute for Design Problems in Microelectronics, Russian Academy of Sciences

Email: oku@ippm.ru
俄罗斯联邦, Zelenograd, Moscow, 124365


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