标量结构的多项式求值,应用于初等函数ex

Timothée Ewart, Francesco Cremonesi, F. Schürmann, F. Delalondre
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引用次数: 5

摘要

小次多项式的求值是初等函数计算的关键。它已被广泛研究,并有充分的记录。在本文中,我们评估了现有的在超标量体系结构上的多项式求值方法。此外,我们还使用因子分解方法完成了这项工作,这在文献中令人惊讶地被忽略了。这项工作的重点是无序的英特尔处理器,其中计算单元是可用的。此外,我们将我们的工作应用于初等函数ex,在当前的实现中,需要对10次多项式进行评估,以获得令人满意的精度和性能。结果表明,该分解方案在基准测试中是最快的,并且在超标量架构上延迟和吞吐量本质上是相互依赖的。
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Polynomial Evaluation on Superscalar Architecture, Applied to the Elementary Function ex
The evaluation of small degree polynomials is critical for the computation of elementary functions. It has been extensively studied and is well documented. In this article, we evaluate existing methods for polynomial evaluation on superscalar architecture. In addition, we have completed this work with a factorization method, which is surprisingly neglected in the literature. This work focuses on out-of-order Intel processors, amongst others, of which computational units are available. Moreover, we applied our work on the elementary function ex that requires, in the current implementation, an evaluation of a polynomial of degree 10 for a satisfying precision and performance. Our results show that the factorization scheme is the fastest in benchmarks, and that latency and throughput are intrinsically dependent on each other on superscalar architecture.
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