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Configuring Concurrent Computation of Phylogenetic Partial Likelihoods: Accelerating Analyses Using the BEAGLE Library

机译:配置系统发育部分可能性的并发计算:使用Beagle库加速分析

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We describe our approach in augmenting the BEAGLE library for high-performance statistical phylogenetic inference to support concurrent computation of independent partial likelihoods arrays. Our solution involves identifying independent likelihood estimates in analyses of partitioned datasets and in proposed tree topologies, and configuring concurrent computation of these likelihoods via CUDA and OpenCL frameworks. We evaluate the effect of each increase in concurrency on throughput performance for our partial likelihoods kernel for a four-state nucleotide substitution model on a variety of parallel computing hardware, such as NVIDIA and AMD GPUs, and Intel multicore CPUs, observing up to 16-fold speedups over our previous implementation. Finally, we evaluate the effect of these gains on an domain application program, MrBayes. For a partitioned nucleotide-model analysis we observe an average speedup for the overall run time of 2.1-fold over our previous parallel implementation, and 10-fold over the native MrBayes with SSE.
机译:我们描述了我们在增强比猎犬库进行高性能统计系统发育推理的方法,以支持独立部分可能性阵列的并发计算。我们的解决方案涉及在分区数据集和建议的树拓扑分析中识别独立似然估计,并通过CUDA和OpenCL框架配置这些似然的并行计算。我们评估每次增加对各种并行计算硬件的四态核苷酸替代模型的吞吐量对吞吐量性能的效果,例如NVIDIA和AMD GPU,以及英特尔多核CPU,观察到最多16-通过我们以前的实现折叠加速。最后,我们评估了这些收益对域应用程序,MRBAYES的影响。对于分区核苷酸模型分析,我们观察到我们之前的并行实施的总运行时间为2.1倍的平均加速,以及使用SSE的天然MRBAYES 10倍。

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