Accelerating Maximum Likelihood Based Phylogenetic Kernels Using Network-on-Chip

Turbo Majumder, P. Pande, A. Kalyanaraman
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引用次数: 6

Abstract

Probability-based approaches for phylogenetic inference, like Maximum Likelihood (ML) and Bayesian Inference, provide the most accurate estimate of evolutionary relationships among species. But they come at a high algorithmic and computational cost. Network-on-chip (NoC), being an emerging paradigm, has not been explored yet to achieve fine-grained parallelism for these applications. In this paper, we present the design and performance evaluation of an NoC architecture for RAxML, which is one of the most widely used ML software suites. Specifically, we implement the top three function kernels that account for more than 85% of the total run-time. Simulations show that through novel core design, allocation and placement strategies our NoC-based implementation can achieve function-level speedups of 388x to 786x and system-level speedups in excess of 5000x over state-of-the-art multithreaded software.
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利用片上网络加速基于最大似然的系统发育核
基于概率的系统发育推断方法,如最大似然(ML)和贝叶斯推断,提供了物种之间进化关系的最准确估计。但它们需要很高的算法和计算成本。片上网络(NoC)作为一种新兴的范式,尚未被探索以实现这些应用程序的细粒度并行性。在本文中,我们提出了一个NoC架构的设计和性能评估,RAxML是最广泛使用的机器学习软件套件之一。具体来说,我们实现了占总运行时85%以上的前三个函数内核。仿真表明,通过新颖的核心设计、分配和放置策略,我们基于noc的实现可以实现比最先进的多线程软件更高的388x到786x的功能级加速和超过5000倍的系统级加速。
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