pyPaSWAS: Python-based multi-core CPU and GPU sequence alignment

S Warris, NRN Timal, M Kempenaar, AM Poortinga… - PLoS …, 2018 - journals.plos.org
S Warris, NRN Timal, M Kempenaar, AM Poortinga, H van de Geest, AL Varbanescu
PLoS One, 2018journals.plos.org
Background Our previously published CUDA-only application PaSWAS for Smith-Waterman
(SW) sequence alignment of any type of sequence on NVIDIA-based GPUs is platform-
specific and therefore adopted less than could be. The OpenCL language is supported more
widely and allows use on a variety of hardware platforms. Moreover, there is a need to
promote the adoption of parallel computing in bioinformatics by making its use and
extension more simple through more and better application of high-level languages …
Background
Our previously published CUDA-only application PaSWAS for Smith-Waterman (SW) sequence alignment of any type of sequence on NVIDIA-based GPUs is platform-specific and therefore adopted less than could be. The OpenCL language is supported more widely and allows use on a variety of hardware platforms. Moreover, there is a need to promote the adoption of parallel computing in bioinformatics by making its use and extension more simple through more and better application of high-level languages commonly used in bioinformatics, such as Python.
Results
The novel application pyPaSWAS presents the parallel SW sequence alignment code fully packed in Python. It is a generic SW implementation running on several hardware platforms with multi-core systems and/or GPUs that provides accurate sequence alignments that also can be inspected for alignment details. Additionally, pyPaSWAS support the affine gap penalty. Python libraries are used for automated system configuration, I/O and logging. This way, the Python environment will stimulate further extension and use of pyPaSWAS.
Conclusions
pyPaSWAS presents an easy Python-based environment for accurate and retrievable parallel SW sequence alignments on GPUs and multi-core systems. The strategy of integrating Python with high-performance parallel compute languages to create a developer- and user-friendly environment should be considered for other computationally intensive bioinformatics algorithms.
PLOS
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