Parallel performance evaluation and profiling of multiple sequence nucleotide alignment on the supercomputer BlueGene/P

Author(s):  
Plamenka Borovska ◽  
Veska Gancheva ◽  
Stoyan Markov ◽  
Ivailo Georgiev ◽  
Emilyan Asenov
2020 ◽  
Vol 25 ◽  
pp. 321-327
Author(s):  
Norma Alias ◽  
Hazidatul Akma Hamlan ◽  
Noorazura Shahira Yusniman

2017 ◽  
Author(s):  
Álvaro Rubio-Largo ◽  
Leonardo Vanneschi ◽  
Mauro Castelli ◽  
Miguel A. Vega-Rodríguez

AbstractThe alignment among three or more nucleotides/amino-acids sequences at the same time is known as Multiple Sequence Alignment (MSA), an NP-hard optimization problem. The time complexity of finding an optimal alignment raises exponentially when the number of sequences to align increases. In this work, we deal with a multiobjective version of the MSA problem where the goal is to simultaneously optimize the accuracy and conservation of the alignment. A parallel version of the Hybrid Multiobjective Memetic Metaheuristics for Multiple Sequence Alignment is proposed. In order to evaluate the parallel performance of our proposal, we have selected a pull of datasets with different number of sequences (up to 1000 sequences) and study its parallel performance against other well-known parallel metaheuristics published in the literature, such as MSAProbs, T-Coffee, Clustal Ω, and MAFFT. The comparative study reveals that our parallel aligner is around 25 times faster than the sequential version with 32 cores, obtaining a parallel efficiency around 80%.


Sign in / Sign up

Export Citation Format

Share Document