Title
Solving The Examination Timetabling Problem In Gpus
Abstract
The examination timetabling problem belongs to the class of combinatorial optimization problems and is of great importance for every University. In this paper, a hybrid evolutionary algorithm running on a GPU is employed to solve the examination timetabling problem. The hybrid evolutionary algorithm proposed has a genetic algorithm component and a greedy steepest descent component. The GPU computational capabilities allow the use of very large population sizes, leading to a more thorough exploration of the problem solution space. The GPU implementation, depending on the size of the problem, is up to twenty six times faster than the identical single-threaded CPU implementation of the algorithm. The algorithm is evaluated with the well known Toronto datasets and compares well with the best results found in the bibliography. Moreover, the selection of the encoding of the chromosomes and the tournament selection size as the population grows are examined and optimized. The compressed sparse row format is used for the conflict matrix and was proven essential to the process, since most of the datasets have a small conflict density, which translates into an extremely sparse matrix.
Year
DOI
Venue
2014
10.3390/a7030295
ALGORITHMS
Keywords
Field
DocType
evolutionary algorithms, examination timetabling problem, GPU computing, CUDA
Population,Evolutionary algorithm,CUDA,Computer science,Artificial intelligence,Genetic algorithm,Sparse matrix,Gradient descent,Mathematical optimization,Parallel computing,General-purpose computing on graphics processing units,Tournament selection,Machine learning
Journal
Volume
Issue
Citations 
7
3
0
PageRank 
References 
Authors
0.34
32
5
Name
Order
Citations
PageRank
Vasileios Kolonias1101.86
George Goulas2575.93
Christos Gogos3806.25
Panayiotis Alefragis412014.33
Efthymios Housos521914.71