2001
DOI: 10.1109/71.963416
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Matrix multiplication on heterogeneous platforms

Abstract: International audienceno abstrac

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Cited by 126 publications
(119 citation statements)
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“…They report several numerical simulations. As pointed out in the introduction, theoretical results for matrix multiplication and LU decomposition on 2D-grids of heterogeneous processors are reported in [5], while extensions to general 2D partitioning are considered in [6]. See also Lastovetsky and Reddy [31] for another partitioning approach.…”
Section: Inriamentioning
confidence: 99%
See 1 more Smart Citation
“…They report several numerical simulations. As pointed out in the introduction, theoretical results for matrix multiplication and LU decomposition on 2D-grids of heterogeneous processors are reported in [5], while extensions to general 2D partitioning are considered in [6]. See also Lastovetsky and Reddy [31] for another partitioning approach.…”
Section: Inriamentioning
confidence: 99%
“…With this hypothesis, minimizing the total communication cost amounts to minimizing the total communication volume. Unfortunately, this problem has been shown NP-complete as well [6]. Note that even under the optimistic assumption that all communications at a given step of the algorithm can take place in parallel, the problem remains NP-complete [7].…”
Section: Introductionmentioning
confidence: 99%
“…This heterogeneity is seldom planned, arising mainly as a result of technology evolution over time and computer market sales and trends. Commodity off-the-shelf heterogeneous clusters of computers can realize a very high level of aggregate performance [6], and it is expected that these clusters will represent a tool of choice for the scientific community devoted to high-dimensional image analysis in remote sensing and other fields [7][8][9]. It is also worth noting that significant opportunities to exploit heterogeneous computing techniques are still available in the analysis of high-dimensional image data sets [10].…”
Section: Introductionmentioning
confidence: 99%
“…It is usually a difficult design task to come up with a practical and efficient heterogeneous counterpart of a homogeneous parallel algorithm on HNOCs. The problem of optimal heterogeneous data distribution has proved to be NP-complete even for such a simple linear algebra kernel as matrix multiplication on HNOCs [6]. Once the heterogeneous parallel algorithm is designed, its portable and efficient implementation on heterogeneous platforms requires writing of a lot of complex code to automate several tedious and error-prone tasks [7].…”
Section: Introductionmentioning
confidence: 99%