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A Coarse Grain Reconfigurable Architecture for sequence alignment problems in bio-informatics

机译:一种用于生物信息学中序列比对问题的粗粒度可重构体系结构

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A Coarse Grain Reconfigurable Architecture (CGRA) tailored for accelerating bio-informatics algorithms is proposed. The key innovation is a light weight bio-informatics processor that can be reconfigured to perform different Add Compare and Select operations of the popular sequencing algorithms. A programmable and scalable architectural platform instantiates an array of such processing elements and allows arbitrary partitioning and scheduling schemes and capable of solving complete sequencing algorithms including the sequential phases and deal with arbitrarily large sequences. The key difference of the proposed CGRA based solution compared to FPGA and GPU based solutions is a much better match of the architecture and algorithm for the core computational need as well as the system level architectural need. This claim is quantified for three popular sequencing algorithms: the Needleman-Wunsch, Smith-Waterman and HMMER. For the same degree of parallelism, we provide a 5 X and 15 X speed-up improvements compared to FPGA and GPU respectively. For the same size of silicon, the advantage grows by a factor of another 10 X.
机译:提出了适合于加速生物信息学算法的粗粒度可重构体系结构(CGRA)。关键创新是重量轻的生物信息处理器,可以对其进行重新配置,以执行流行测序算法的不同“添加比较”和“选择”操作。可编程且可扩展的架构平台实例化此类处理元素的数组,并允许进行任意分区和调度方案,并能够解决包括顺序阶段在内的完整排序算法,并处理任意大序列。与基于FPGA和GPU的解决方案相比,与基于FPGA和GPU的解决方案相比,基于CGRA的解决方案的关键区别在于其架构和算法能够更好地匹配核心计算需求以及系统级架构需求。针对三种流行的测序算法对此需求进行了量化:Needleman-Wunsch,Smith-Waterman和HMMER。对于相同程度的并行度,与FPGA和GPU相比,我们分别提供了5倍和15倍的提速改进。对于相同大小的硅,优势将增加10倍。

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