Litcius/Paper detail

An AHP based Task Scheduling and Optimal Resource Allocation in Cloud Computing

Syed Karimunnisa, Pachipala Yellamma

2023International Journal of Advanced Computer Science and Applications15 citationsDOIOpen Access PDF

Abstract

Cloud systems by virtue characterize ultimate resource utilization with ever evolving user requirements facilitating adaptivity. With a scope of enhancing the QoS needs of user applications, numerous factors are considered for tunning among which Task scheduling promises to grab focus. The Task Scheduling mechanism ascertains improvement by distributing the subtasks to specific set of resources pertaining to prevailing Quality models. The work emphasizes the need for effective task scheduling and optimizing resource allocation by modelling a modified AHP (Analytical Hierarchy Process) driven approach. The proposed method guarantees the functionality in two phases pertaining to Task ranking and pipelined with Optimized scheduling algorithms resulting in maximization of resource utilization. The former phase of task ranking is aided by improved AHP with substantial usage of fuzzy clustering followed by an enhanced CUCMCA (Chimp Updated and Cauchy Mutated Coot Algorithm) algorithm for optimal resource allocation of cloud applications. The contributed model promises leveraged performance of 32% for memory usage, 33.5% for execution time, 29% for makespan and 18% for communication cost over pre-existing conventional models considered.

Topics & Concepts

Computer scienceCloud computingDistributed computingScheduling (production processes)Analytic hierarchy processQuality of serviceJob shop schedulingOperations researchMathematical optimizationComputer networkOperating systemRouting (electronic design automation)EngineeringMathematicsCloud Computing and Resource ManagementIoT and Edge/Fog Computing