The proliferation of biological sequence data has motivated the need for an extremely fast probabilistic sequence search. One method for performing this search involves evaluating the Viterbi probability of a hidden Markov model (HMM) of a desired sequence family for each sequence in a protein database. However, one of the difficulties with current implementations is the time required to search large databases. Many current and upcoming architectures offering large amounts of compute power are designed with data-parallel execution and streaming in mind. We present a streaming algorithm for evaluating an HMM’s Viterbi probability and refine it for the specific HMM used in biological sequence search. We implement our streaming algorithm in th...
Motivation: Profile Hidden Markov models (pHMMs) are currently the most popular modeling concept for...
Motivation: Hidden Markov models (HMMs) and generalized HMMs been successfully applied to many probl...
The recent emergence of multi-core CPU and many-core GPU architectures has made parallel computing m...
Molecular biologists use Hidden Markov Models (HMMs) as a popular tool to statistically describe pro...
International audienceWe propose a new parallelization scheme for the hmmsearch function of the HMME...
HMMER is a software suite for protein sequence similarity searches using probabilistic methods. Prev...
Abstract Background Profile hidden Markov models (profile-HMMs) are sensitive tools for remote prote...
Introduction HMMs have been proven useful in protein sequence analysis [1]. However, a full search ...
Profile Hidden Markov models are highly expressive representations of functional units, or motifs, c...
Abstract. HMMER, based on the profile Hidden Markov Model (HMM) is one of the most widely used seque...
HMMER is a software suite for protein sequence similarity searches using probabilistic methods. Prev...
International audienceHMMER is a widely used tool in bioinformatics, based on Profile Hidden Markov ...
Computer aided sequence analysis is a critical aspect of current bi-ological research. Sequence info...
In recent years, the rate of genomics sequence generation increased dramatically due to significant ...
HMMER is a software suite for protein sequence similarity searches using probabilistic methods. Prev...
Motivation: Profile Hidden Markov models (pHMMs) are currently the most popular modeling concept for...
Motivation: Hidden Markov models (HMMs) and generalized HMMs been successfully applied to many probl...
The recent emergence of multi-core CPU and many-core GPU architectures has made parallel computing m...
Molecular biologists use Hidden Markov Models (HMMs) as a popular tool to statistically describe pro...
International audienceWe propose a new parallelization scheme for the hmmsearch function of the HMME...
HMMER is a software suite for protein sequence similarity searches using probabilistic methods. Prev...
Abstract Background Profile hidden Markov models (profile-HMMs) are sensitive tools for remote prote...
Introduction HMMs have been proven useful in protein sequence analysis [1]. However, a full search ...
Profile Hidden Markov models are highly expressive representations of functional units, or motifs, c...
Abstract. HMMER, based on the profile Hidden Markov Model (HMM) is one of the most widely used seque...
HMMER is a software suite for protein sequence similarity searches using probabilistic methods. Prev...
International audienceHMMER is a widely used tool in bioinformatics, based on Profile Hidden Markov ...
Computer aided sequence analysis is a critical aspect of current bi-ological research. Sequence info...
In recent years, the rate of genomics sequence generation increased dramatically due to significant ...
HMMER is a software suite for protein sequence similarity searches using probabilistic methods. Prev...
Motivation: Profile Hidden Markov models (pHMMs) are currently the most popular modeling concept for...
Motivation: Hidden Markov models (HMMs) and generalized HMMs been successfully applied to many probl...
The recent emergence of multi-core CPU and many-core GPU architectures has made parallel computing m...