放大共轭梯度法的性能分析及最优节点感知通信

Pub Date : 2022-03-11 DOI:10.1145/3580003
S. Lockhart, Amanda Bienz, W. Gropp, Luke N. Olson
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引用次数: 5

摘要

Krylov方法是求解大型稀疏线性方程组的关键方法,但在分布式存储机上的可扩展性较差。这是由于大量集体通信调用的高同步成本以及低计算工作量造成的。扩大的Krylov方法通过减少收敛的总迭代来解决这个问题,收敛是分裂初始残差并导致对块向量进行运算的伪影。在本文中,我们提出了一种放大Krylov方法——放大共轭梯度(ECG)的性能研究,注意到块向量对并行性能的影响。最值得注意的是,我们观察到点对点通信的开销增加,这是由于稀疏矩阵块向量乘法内核中的消息密度更大。此外,我们提出了模型来分析心电图的预期性能,并激励设计决策。最重要的是,我们引入了一种新的基于节点感知通信技术的点对点通信方法,该方法在规模上提高了该方法的效率。
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Performance Analysis and Optimal Node-aware Communication for Enlarged Conjugate Gradient Methods
Krylov methods are a key way of solving large sparse linear systems of equations but suffer from poor strong scalability on distributed memory machines. This is due to high synchronization costs from large numbers of collective communication calls alongside a low computational workload. Enlarged Krylov methods address this issue by decreasing the total iterations to convergence, an artifact of splitting the initial residual and resulting in operations on block vectors. In this article, we present a performance study of an enlarged Krylov method, Enlarged Conjugate Gradients (ECG), noting the impact of block vectors on parallel performance at scale. Most notably, we observe the increased overhead of point-to-point communication as a result of denser messages in the sparse matrix-block vector multiplication kernel. Additionally, we present models to analyze expected performance of ECG, as well as motivate design decisions. Most importantly, we introduce a new point-to-point communication approach based on node-aware communication techniques that increases efficiency of the method at scale.
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