Tasks Scheduling using Ant Colony Optimization
نویسندگان
چکیده
Problem statement: Efficient scheduling of the tasks to heterogeneous processors for any application is critical in order to achieve high performance. Finding a feasible schedule for a given task set to a set of heterogeneous processors without exceeding the capacity of the processors, in general, is NP-Hard. Even if there are many conventional approaches available, people have been looking at unconventional approaches for solving this problem. This study uses a paradigm using Ant Colony Optimisation (ACO) for arriving at a schedule. Approach: An attempt is made to arrive at a feasible schedule of a task set on heterogeneous processors ensuring load balancing across the processors. The heterogeneity of the processors is modelled by assuming different utilisation times for the same task on different processors. ACO, a bio-inspired computing paradigm, is used for generating the schedule. Results: For a given instance of the problem, ten runs are conducted based on an ACO algorithm and the average wait time of all tasks is computed. Also the average utilisation of each processor is calculated. For the same instance, the two parameters: average wait time of tasks and utilisation of processors are computed using the First Come First Served (FCFS). The results are tabulated and compared and it is found that ACO performs better than the FCFS with respect to the wait time. Although the processor utilisation is more for some processors using FCFS algorithm, it is found that the load is better balanced among the processors in ACO. There is a marginal increase in the time for arriving at a schedule in ACO compared to FCFS algorithm. Conclusion: This approach to the tasks assignment problem using ACO performs better with respect to the two parameters used compared to the FCFS algorithm but the time taken to come up with the schedule using ACO is slightly more than that of FCFS.
منابع مشابه
Dynamic Task Scheduling Algorithm based on Ant Colony Scheme
Many scientific applications running in Cloud Computing system are workflow applications that contains large number of tasks and in which tasks are connected by precedence relations. Efficient scheduling the workflow tasks become a challenging issue in Cloud Computing environments because the scheduling decides performance of the applications. Unfortunately, finding the optimal scheduling is kn...
متن کاملTask Scheduling of parallel programming systems using Ant Colony Optimization
Efficient scheduling of tasks for an application is critical for achieving high performance in heterogeneous computing environment. The task scheduling has been shown to be NP complete in general case and also in several restricted cases. The paper introduces a novel framework for task scheduling problem based on Ant colony optimization (ACO). The performance of the algorithm is demonstrated by...
متن کاملSoftware Project Scheduling Using the Hyper-cube Ant Colony Optimization Algorithm
Original scientific paper This paper introduces a proposal of design of Ant Colony Optimization algorithm paradigm using Hyper-Cube framework to solve the Software Project Scheduling Problem. This NP-hard problem consists in assigning tasks to employees in order to minimize the project duration and its overall cost. This assignment must satisfy the problem constraints and precedence between tas...
متن کاملA Hybrid Heuristic Scheduling Algorithm in Cloud Computing
In cloud computing tasks scheduling problem is NP-hard, furthermore it does onerous for attaining an optimum resolution. Extremely quick optimization algorithms are used to proximate the optimum resolution, like ACO (ant colony optimization) algorithm. In cloud computing, in consideration to solve the problem of task scheduling, a period ACO (PACO)-based arranging algorithmic rule has been used...
متن کاملParallel Implementation of Task Scheduling using Ant Colony Optimization
Efficient scheduling of tasks for an application is critical for achieving high performance in heterogeneous computing environment. The task scheduling has been shown to be NP complete in general case and also in several restricted cases. Because of its key importance on performance, the task scheduling problem has been studied and various heuristics are proposed in literature. This paper prese...
متن کاملTruthful Mechanisms for Scheduling Selfish Related Machines Using ACO
Task scheduling is a major challenge in parallel and distributed systems. Task scheduling techniques in distributed systems are usually based on trusting the Accuracy of the information about the status of resources. In a commercial multiCloud environment, individual providers are focused towards increasing their own profits and do not care about the utility of users and other providers. In suc...
متن کامل