GEMA:基于学习索引的基因组精确映射加速器。

Mohaddeseh Sharei;Mehdi Kamal;Ali Afzali-Kusha;Massoud Pedram
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引用次数: 0

摘要

本文介绍的 GEMA 是一种基于学习索引的基因组精确映射加速器,专为 FPGA 实现而设计。GEMA 利用机器学习 (ML) 算法精确定位原始序列中读取序列的确切位置。为了提高训练有素的 ML 模型的准确性,我们采用了数据增强和数据分布感知分区技术。此外,我们还提出了一种高效且低开销的错误恢复技术。为了更高效地映射长读取数据,我们提出了一种投机预取方法,该方法可降低所需的内存带宽。此外,我们还提出了一种基于 FPGA 的架构,用于实现所提出的映射加速器,优化对片外存储器的访问。我们的研究表明,与最近发布的精确映射加速器的相应结果相比,GEMA 的短时间读取速度提高了 1.36 倍。此外,与这些加速器对最长映射读数的现有结果相比,GEMA 对长读数的映射速度提高了 22 倍。
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GEMA: A Genome Exact Mapping Accelerator Based on Learned Indexes
In this article, we introduce GEMA, a genome exact mapping accelerator based on learned indexes, specifically designed for FPGA implementation. GEMA utilizes a machine learning (ML) algorithm to precisely locate the exact position of read sequences within the original sequence. To enhance the accuracy of the trained ML model, we incorporate data augmentation and data-distribution-aware partitioning techniques. Additionally, we present an efficient yet low-overhead error recovery technique. To map long reads more efficiently, we propose a speculative prefetching approach, which reduces the required memory bandwidth. Furthermore, we suggest an FPGA-based architecture for implementing the proposed mapping accelerator, optimizing the accesses to off-chip memory. Our studies demonstrate that GEMA achieves up to 1.36 × higher speed for short reads compared to the corresponding results reported in recently published exact mapping accelerators. Moreover, GEMA achieves up to ∼22 × faster mapping of long reads compared to the available results for the longest mapped reads using these accelerators.
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