The invention discloses a
heuristic type coarse grain parallel grid task scheduling method which is characterized by comprising the following steps: firstly, a task submitter inputs a to-be-schemed task set, a
usable computing resource set, an
execution time set of tasks on the computing resource, a maximum number of iteration times, a threshold value
delta and an entropy value epsilon; secondly, a task scheduler represents a scheduling problem of allocating resources to execute the tasks to be a standard minimum solving problem under task optimization and constraint conditions; thirdly, a grid task scheduling problem is solved by an iterative process of the
heuristic type coarse grain
parallel algorithm; and fourthly, after the
algorithm is finished, the task scheduling result is output. In the way, the invention provides a new multipoint crossing method and the increasing property of a
population optimal solution is maintained by an elitist strategy; during a variation stage, a directed variation method based on task immigration is adopted to prevent degeneration of the
population; and the method is high in performance and better than the traditional random
algorithm in computing power and convergence rate.