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Do Iterative Solvers Benefit from Approximate Computing? An Evaluation Study Considering Orthogonal Approximation Methods

机译:迭代求解器是否受益于近似计算?考虑正交近似法的评估研究

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Employing algorithms of scientific computing often comes in hand with finding a trade-off between accuracy and performance. Novel parallel hardware and algorithms only slightly improve these issues due to the increasing size of the problems. While high accuracy is inevitable for most problems, there are parts in scientific computing that allow us to introduce approximation. Therefore, in this paper we give answers to the following questions: (1) Can we exploit different approximate computing strategies in scientific computing? (2) Is there a strategy to combine approaches? To answer these questions, we apply different approximation strategies to a widely used iterative solver for linear systems of equations. We show the advantages and the limits of each strategy and a way to configure a combination of strategies according to a given relative error. Combining orthogonal strategies as an overall concept gives us significant opportunities to increase the performance.
机译:在发现准确性和性能之间进行权衡时,通常需要采用科学计算算法。由于问题的规模越来越大,新型并行硬件和算法仅略微改善了这些问题。尽管对于大多数问题而言,高精度是不可避免的,但科学计算中的某些部分允许我们引入近似值。因此,在本文中,我们对以下问题给出了答案:(1)我们可以在科学计算中采用不同的近似计算策略吗? (2)是否有策略结合方法?为了回答这些问题,我们将不同的近似策略应用于线性方程组的广泛使用的迭代求解器。我们展示了每种策略的优势和局限性,以及根据给定的相对误差配置策略组合的方法。将正交策略作为一个整体概念进行组合可以为我们提供大量提高性能的机会。

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