Parallel processing techniques are increasingly found in reconfigurable computing, especially in digital signal processing (DSP) applications. In this paper, we design a parallel reconfigurable computing (PRC) architecture which consists of multiple dynamically reconfigurable computing units. The hidden Markov model (HMM) algorithm is mapped onto the PRC architecture. First, we construct a directed acyclic graph (DAG) to represent the HMM algorithms. A novel parallel partition approach is then proposed to map the HMM DAG onto the multiple DRC units in a PRC system. This partitioning algorithm is capable of design optimization of parallel processing reconfigurable systems for a given number of processing elements in different HHM states
Abstract. Random networks are widely used for modeling and analyz-ing complex processes. Many mathem...
Say that a parallel algorithm that uses p processors and N (>p) shared memory locations is given. Th...
In order to minimize the execution time of a parallel application running on a heterogeneously distr...
[[abstract]]© 1992 Elsevier-Presents parallel implementations of several hidden Markov model (HMM) a...
International audienceWe propose a new parallelization scheme for the hmmsearch function of the HMME...
Molecular biologists use Hidden Markov Models (HMMs) as a popular tool to statistically describe pro...
Dynamically reconfigurable architectures or systems are able to reconfigure their function and/or st...
HMMER is a widely used tool in bioinformatics, based on Profile Hidden Markov Models. The computatio...
Funding Information: Manuscript received February 10, 2021; revised June 4, 2021 and July 26, 2021; ...
Bibliography: leaves 88-91.This thesis examines how parallel and distributed algorithms can increase...
Given all its merits and potential, Reconfigurable Computing has attracted lots of research work. Re...
Several parallel parallel processing systems exist that can be partitioned and/or can operate in mul...
The MASC (Multiple ASsociative Computing) model is a multi-SIMD model that uses control parallelism ...
Approaches for providing communications among the processors and memories of large-scale parallel pr...
Abstract. Random networks are widely used for modeling and analyz-ing complex processes. Many mathem...
Say that a parallel algorithm that uses p processors and N (>p) shared memory locations is given. Th...
In order to minimize the execution time of a parallel application running on a heterogeneously distr...
[[abstract]]© 1992 Elsevier-Presents parallel implementations of several hidden Markov model (HMM) a...
International audienceWe propose a new parallelization scheme for the hmmsearch function of the HMME...
Molecular biologists use Hidden Markov Models (HMMs) as a popular tool to statistically describe pro...
Dynamically reconfigurable architectures or systems are able to reconfigure their function and/or st...
HMMER is a widely used tool in bioinformatics, based on Profile Hidden Markov Models. The computatio...
Funding Information: Manuscript received February 10, 2021; revised June 4, 2021 and July 26, 2021; ...
Bibliography: leaves 88-91.This thesis examines how parallel and distributed algorithms can increase...
Given all its merits and potential, Reconfigurable Computing has attracted lots of research work. Re...
Several parallel parallel processing systems exist that can be partitioned and/or can operate in mul...
The MASC (Multiple ASsociative Computing) model is a multi-SIMD model that uses control parallelism ...
Approaches for providing communications among the processors and memories of large-scale parallel pr...
Abstract. Random networks are widely used for modeling and analyz-ing complex processes. Many mathem...
Say that a parallel algorithm that uses p processors and N (>p) shared memory locations is given. Th...
In order to minimize the execution time of a parallel application running on a heterogeneously distr...