Understanding the regulation of gene expression is one of the key problems in current biology. A promising method for that purpose is the determination of the temporal dynamics between known initial and ending network states, by using simple acting rules. The huge amount of rule combinations and the nonlinear inherent nature of the problem make genetic algorithms an excellent candidate for finding optimal solutions. As this is a computationally intensive problem that needs long runtimes in conventional architectures for realistic network sizes, it is fundamental to accelerate this task. In this article, we study how to develop efficient parallel implementations of this method for the fine-grained parallel architecture of graphics processing...
In this paper, we propose to parallelize a Hybrid Genetic Algorithm (HGA) on Graphics Processing Uni...
This chapter is concerned with modeling and simulating the dynamics of gene regulatory networks (GRN...
This thesis represents master's thesis focused on acceleration of Genetic algorithms using GPU. Firs...
Understanding the regulation of gene expression is one of the key problems in current biology. A pro...
In this paper, we present what we believe to be the first GPU-based implementation (using CUDA) for ...
Background: Gene regulatory networks (GRN) inference is an important bioinformatics problem in which...
Genetic Algorithms(GAs) are suitable for parallel computing since population members fitness maybe e...
Genetic Algorithms (GAs) is proven to be effective in solving many optimization tasks. GAs is one of...
Abstract. The availability of low cost powerful parallel graphic cards has estimu-lated a trend to i...
This paper proposes a new approach to produce classification rules based on evolutionary computation...
<div><p>Gene co-expression networks comprise one type of valuable biological networks. Many methods ...
Gene co-expression networks comprise one type of valuable biological networks. Many methods and tool...
We present a multi-purpose genetic algorithm, designed and implemented with GPGPU / CUDA parallel co...
In this paper, we describe our work to investigate how much cyclic graph based Genetic Programming (...
Gene co-expression networks comprise one type of valuable biological networks. Many methods and tool...
In this paper, we propose to parallelize a Hybrid Genetic Algorithm (HGA) on Graphics Processing Uni...
This chapter is concerned with modeling and simulating the dynamics of gene regulatory networks (GRN...
This thesis represents master's thesis focused on acceleration of Genetic algorithms using GPU. Firs...
Understanding the regulation of gene expression is one of the key problems in current biology. A pro...
In this paper, we present what we believe to be the first GPU-based implementation (using CUDA) for ...
Background: Gene regulatory networks (GRN) inference is an important bioinformatics problem in which...
Genetic Algorithms(GAs) are suitable for parallel computing since population members fitness maybe e...
Genetic Algorithms (GAs) is proven to be effective in solving many optimization tasks. GAs is one of...
Abstract. The availability of low cost powerful parallel graphic cards has estimu-lated a trend to i...
This paper proposes a new approach to produce classification rules based on evolutionary computation...
<div><p>Gene co-expression networks comprise one type of valuable biological networks. Many methods ...
Gene co-expression networks comprise one type of valuable biological networks. Many methods and tool...
We present a multi-purpose genetic algorithm, designed and implemented with GPGPU / CUDA parallel co...
In this paper, we describe our work to investigate how much cyclic graph based Genetic Programming (...
Gene co-expression networks comprise one type of valuable biological networks. Many methods and tool...
In this paper, we propose to parallelize a Hybrid Genetic Algorithm (HGA) on Graphics Processing Uni...
This chapter is concerned with modeling and simulating the dynamics of gene regulatory networks (GRN...
This thesis represents master's thesis focused on acceleration of Genetic algorithms using GPU. Firs...