International audienceHMMER is a widely used tool in bioinformatic, based on the Profile Hidden Markov Models. The computation kernels of HMMER, namely MSV and P7Viterbi are very compute intensive, and their data dependencies if interpreted naively, lead to a purely sequential execution. In this paper, we propose a original parallelization scheme for HMMER by rewriting the mathematical formulation, to expose hidden potential parallelization opportunities. Our parallelization scheme targets FPGA technology, and our architecture can achieve 10 times speedup compared with the latest HMMER3 SSE version, without compromising on the sensitivity of original algorithm
AbstractThe continuously increasing size of biological sequence databases has motivated the developm...
Funding Information: Manuscript received February 10, 2021; revised June 4, 2021 and July 26, 2021; ...
We present PIO-HMMER, an enhanced version of MPI-HMMER. PIO-HMMER improves on MPI-HMMER’s scalabilit...
International audienceHMMER is a widely used tool in bioinformatic, based on the Profile Hidden Mark...
International audienceHMMER is a widely used tool in bioinformatics, based on Profile Hidden Markov ...
International audienceWe propose a new parallelization scheme for the hmmsearch function of the HMME...
Abstract. HMMER, based on the profile Hidden Markov Model (HMM) is one of the most widely used seque...
The revolutionary advancements in the field of bioinformatics have opened new horizons in biological...
Exponential growth in biological sequence data combined with the computationally intensive nature of...
[[abstract]]© 1992 Elsevier-Presents parallel implementations of several hidden Markov model (HMM) a...
With the advent of several accurate and sophisticated statistical algorithms and pipelines for DNA s...
The proliferation of biological sequence data has motivated the need for an extremely fast probabili...
This paper presents a programmable system-on-chip implementation to be used for acceleration of comp...
Molecular biologists use Hidden Markov Models (HMMs) as a popular tool to statistically describe pro...
AbstractThe continuously increasing size of biological sequence databases has motivated the developm...
Funding Information: Manuscript received February 10, 2021; revised June 4, 2021 and July 26, 2021; ...
We present PIO-HMMER, an enhanced version of MPI-HMMER. PIO-HMMER improves on MPI-HMMER’s scalabilit...
International audienceHMMER is a widely used tool in bioinformatic, based on the Profile Hidden Mark...
International audienceHMMER is a widely used tool in bioinformatics, based on Profile Hidden Markov ...
International audienceWe propose a new parallelization scheme for the hmmsearch function of the HMME...
Abstract. HMMER, based on the profile Hidden Markov Model (HMM) is one of the most widely used seque...
The revolutionary advancements in the field of bioinformatics have opened new horizons in biological...
Exponential growth in biological sequence data combined with the computationally intensive nature of...
[[abstract]]© 1992 Elsevier-Presents parallel implementations of several hidden Markov model (HMM) a...
With the advent of several accurate and sophisticated statistical algorithms and pipelines for DNA s...
The proliferation of biological sequence data has motivated the need for an extremely fast probabili...
This paper presents a programmable system-on-chip implementation to be used for acceleration of comp...
Molecular biologists use Hidden Markov Models (HMMs) as a popular tool to statistically describe pro...
AbstractThe continuously increasing size of biological sequence databases has motivated the developm...
Funding Information: Manuscript received February 10, 2021; revised June 4, 2021 and July 26, 2021; ...
We present PIO-HMMER, an enhanced version of MPI-HMMER. PIO-HMMER improves on MPI-HMMER’s scalabilit...