Abstract
We propose a new parallel asynchronous cellular genetic algorithm for multi-core processors. The algorithm is applied to the scheduling of independent tasks in a grid. Finding such optimal schedules is in general an NP-hard problem, to which evolutionary algorithms can find near-optimal solutions. We analyze the parallelism of the algorithm, as well as different recombination and new local search operators. The proposed algorithm improves previous schedules on benchmark problems. The parallelism of this algorithm suits it to bigger problem instances.