向着快速种群遗传学向前时间模拟的方向发展

Victor Sepulveda, Roberto Solar, Alonso Inostrosa-Psijas, V. Gil-Costa, Mauricio Marín
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引用次数: 1

摘要

计算机模拟是当前种群与进化遗传学研究的重要工具。它们有助于理解无法分析预测的复杂过程动态的遗传进化。其基本思想是在用户指定的场景下生成遗传多态性的合成数据集,描述物种的进化史和遗传结构。在这项工作中,我们专注于前向时间模拟,这代表了最强大的,但同时也是最计算密集的方法来模拟一个群体的遗传物质。我们提出了一个高度优化的前向实时模拟库Libgdrift,专门用于创建大型复制模拟集。我们的模拟库使用代码优化,如空间局部性和两阶段数据压缩方法,允许快速模拟执行,同时减少内存存储。实验结果表明,本文所提出的方法可以提高知名仿真软件的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards rapid population genetics forward-in-time simulations
Computer simulations are an important tool for the current research in population and evolutionary genetics. They help to understand the genetic evolution of complex processes dynamics that cannot be analytically predicted. The basic idea is to generate synthetic data sets of genetic polymorphisms under user-specified scenarios describing the evolutionary history and genetic architecture of a species. In this work, we focus on forward-in-time simulations which represent the most powerful, but, at the same time, most compute-intensive approach for simulating the genetic material of a population. We present a highly-optimized forward-in-time simulation library called Libgdrift, specially designed to create large sets of replicated simulations. Our simulation library uses code optimizations such as spatial locality and a two-phase data compression approach which allow fast simulation executions, while reducing memory storage. Results show that our proposal can improve the performance reported by well-known simulation software.
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