Abstract
Although a large number of performance evaluation tools are available today, the efficient performance prediction of a multicomputer system remains a difficult task. In this work, the development of a system capable of predicting the timings for an application executed on the multicomputer Parsytec GCel3/512 is investigated.
Article PDF
Similar content being viewed by others
Avoid common mistakes on your manuscript.
References
Armstrong, W. W. and Thomas, M. M.: Adaptive logic networks, In: E. Fieseler and R. Beale (eds), Handbook of Neural Computation, Institute of Physics and Oxford Univ. Press, 1996.
Bard, Y.: The VM/370 performance predictor, Computer Surveys 10(3) (1978), 333–342.
Boyd, E. L., Wellman, J.-D., Abraham, S. G. and Davidson, E. S.: Evaluating the communication performance of MPPs using synthetic sparse matrix multiplication workloads, In: Proc. 1993 International Conference on Supercomputing, 1993, pp. 240–250.
Boyse, J. W. and Warn, D. R.: A straightforward model for computer performance prediction, Computer Surveys 7(2) (1975).
Efremides, O. B.: Distributed memory systems performance evaluation using synthetic parametric workloads, J. Neural Parallel Sci. Comput. (2000), 299–316.
Vrsalovic, D., Siewiorek, D., Segall, Z. and Gehringer, E.: Performance prediction and calibration for a class of multiprocessor systems, Rept. Dept. of Computer Science, Carnegie-Mellon Univ., Pittsburg, PA, 1984.
Author information
Authors and Affiliations
Rights and permissions
About this article
Cite this article
Efremides, O.B., Bekakos, M.P. A Multicomputer System Performance Predictor Based on an ALN Neurochip. Journal of Mathematical Modelling and Algorithms 1, 215–223 (2002). https://doi.org/10.1023/A:1020542623211
Issue Date:
DOI: https://doi.org/10.1023/A:1020542623211