基于压缩线性代数和通信约束的二维静态资源分配

Olivier Beaumont, Lionel Eyraud-Dubois, Mathieu Vérité
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摘要

本文研究了不规则分布并行应用的静态资源分配问题。更准确地说,我们关注两种经典的平铺线性代数核:矩阵乘法和大型密集线性系统上的LU分解算法。在并行分布式平台的背景下,数据交换可能会显著降低线性代数核的性能,在这种情况下,压缩技术(如块低秩(BLR))是限制每个节点上的数据存储和节点之间的数据交换的良好候选。另一方面,BLR表示的使用使得节点的静态瓦片分配问题变得更加复杂。实际上,与每个tile相关的负载取决于其压缩因子,这导致了异构负载平衡问题。反过来,以最佳方式解决这个负载平衡问题可能会导致复杂的分配方案,其中分配给给定节点的块分散在所有矩阵中。这将导致通信复杂性问题,因为矩阵乘法和LU分解严重依赖于沿处理器的行和列的广播操作,因此当每行和列上的不同节点数量最小化时,通信量将最小化。在完全同构的情况下,2D块循环分配同时解决了负载均衡和通信最小化问题,但在异构情况下可能导致负载均衡不良。我们在本文中的目标是提出专用于BLR格式的数据分配方案,并证明在平衡负载的同时最小化任意行或列中不同资源的最大数量是可能获得良好的整体性能的。
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2D Static Resource Allocation for Compressed Linear Algebra and Communication Constraints
This paper adresses static resource allocation problems for irregular distributed parallel applications. More precisely, we focus on two classical tiled linear algebra kernels: the Matrix Multiplication and the LU decomposition algorithms on large dense linear systems. In the context of parallel distributed platforms, data exchanges can dramatically degrade the performance of linear algebra kernels and in this context, compression techniques such as Block Low Rank (BLR) are good candidates both for limiting data storage on each node and data exchanges between nodes. On the other hand, the use of BLR representation makes the static allocation problem of tiles to nodes more complex. Indeed, the load associated to each tile depends on its compression factor, which induces an heterogeneous load balancing problem. In turn, solving this load balancing problem optimally might lead to complex allocation schemes, where the tiles allocated to a given node are scattered on all the matrix. This causes communication complexity problems, since matrix multiplication and LU decompositions rely heavily on broadcasting operations along rows and columns of processors, so that the communication volume is minimized when the number of different nodes on each row and column is minimized. In the fully homogeneous case, 2D block cyclic allocation solves both load balancing and communication minimization issues simultaneously, but it might lead to bad load balancing in the heterogeneous case. Our goal in this paper is to propose data allocation schemes dedicated to BLR format and to prove that it is possible to obtain good overall performance when simultaneously balancing the load and minimizing the maximal number of different resources in any row or column.
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HiPC 2020 ORGANIZATION HiPC 2020 Industry Sponsors PufferFish: NUMA-Aware Work-stealing Library using Elastic Tasks Algorithms for Preemptive Co-scheduling of Kernels on GPUs 27th IEEE International Conference on High Performance Computing, Data, and Analytics (HiPC 2020) Technical program
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