Litcius/Paper detail

Resource-aware load balancing model for batch of tasks (BoT) with best fit migration policy on heterogeneous distributed computing systems

Mahfooz Alam, Raza Abbas Haidri, Mohammad Shahid

2020International Journal of Pervasive Computing and Communications21 citationsDOI

Abstract

Purpose Load balancing is an important issue for a heterogeneous distributed computing system environment that has been proven to be a nondeterministic polynomial time hard problem. This paper aims to propose a resource-aware load balancing (REAL) model for a batch of independent tasks with a centralized load balancer to make the solution appropriate for a practical heterogeneous distributed environment having a migration cost with the objective of maximizing the level of load balancing considering bandwidth requirements for migration of the tasks. Design/methodology/approach To achieve the effective schedule, load balancing issues should be addressed and tackled through efficient workload distribution. In this approach, the migration has been carried out in two phases, namely, initial migration and best-fit migration. Using the best-fit policy in migrations helps in the possible performance improvement by minimizing the remaining idle slots on underloaded nodes that remain unentertained during the initial migration. Findings The experimental results reveal that the proposed model exhibits a superior performance among the other strategies on considered parameters such as makespan, average utilization and level of load balancing under study for a heterogeneous distributed environment. Originality/value Design of the REAL model and a comparative performance evaluation with LBSM and ITSLB have been conducted by using MATLAB 8.5.0.

Topics & Concepts

Computer scienceLoad balancing (electrical power)Distributed computingWorkloadScheduleNondeterministic algorithmScheduling (production processes)Real-time computingMathematical optimizationAlgorithmOperating systemGridMathematicsGeometryDistributed and Parallel Computing SystemsCloud Computing and Resource ManagementParallel Computing and Optimization Techniques