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SaLoBa: Maximizing Data Locality and Workload Balance for Fast Sequence Alignment on GPUs

Authors :
Park, Seongyeon
Kim, Hajin
Ahmad, Tanveer
Ahmed, Nauman
Al-Ars, Zaid
Hofstee, H. Peter
Kim, Youngsok
Lee, Jinho
Publication Year :
2023

Abstract

Sequence alignment forms an important backbone in many sequencing applications. A commonly used strategy for sequence alignment is an approximate string matching with a two-dimensional dynamic programming approach. Although some prior work has been conducted on GPU acceleration of a sequence alignment, we identify several shortcomings that limit exploiting the full computational capability of modern GPUs. This paper presents SaLoBa, a GPU-accelerated sequence alignment library focused on seed extension. Based on the analysis of previous work with real-world sequencing data, we propose techniques to exploit the data locality and improve workload balancing. The experimental results reveal that SaLoBa significantly improves the seed extension kernel compared to state-of-the-art GPU-based methods.<br />Comment: Published at IPDPS'22

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2301.09310
Document Type :
Working Paper