Accelerating massive short reads mapping for next generation sequencing (abstract only)

2014 
Due to the explosion of gene sequencing data with over one billion reads per run, the data-intensive computations of Next Generation Sequencing (NGS) applications pose great challenges to current computing capability. In this paper we investigate both algorithmic and architectural accelerating strategies to a typical NGS analysis algorithm -- short reads mapping -- on a commodity multicore and customizable FPGA coprocessor architecture, respectively. First, we propose a hash buckets reorder algorithm that increases shared cache parallelism during the course of searching hash index. The algorithmic strategy achieves 122Gbp/day throughput by exploiting shared-cache parallelism, that leads to performance improvement of 2 times on an 8-core Intel Xeon processor. Second, we develop a FPGA coprocessor that leverages both bit-level and word-level parallelism with scatter-gather memory mechanism to speedup inherent irregular memory access operations by increasing effective memory bandwidth. Our customized FPGA coprocessor achieves 947Gbp per day throughput, that is 189 times higher than current mapping tools on single CPU core, and above 2 times higher than a 64-core multi-processor system. The coprocessor's power efficiency is 29 times higher than a conventional 64-core multi-processor. The results indicate that the customized FPGA coprocessor architecture, that is configured with scatter-gather memory's word-level access, appeals to data intensive applications.
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