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Survey on Project Management System using Event based Scheduler and Ant Colony Optimization
Author(s) -
Rupali Vairagade,
Rohan Arora,
Vinita Gaikwad,
Divyansh Singh,
Prachi Jadhav
Publication year - 2016
Publication title -
international journal of computer applications
Language(s) - English
Resource type - Journals
ISSN - 0975-8887
DOI - 10.5120/ijca2016907948
Subject(s) - computer science , ant colony optimization algorithms , event (particle physics) , operations research , ant , data science , real time computing , artificial intelligence , computer network , physics , quantum mechanics , engineering
Resource allocation and tasks assignment to software development teams are very crucial and arduous activities that can affect a project's cost and completion time. Solution for such problem is NP-Hard and requires software managers to be supported with efficient tools that can perform such allocation and can resolve the software development project scheduling problem (SDPSP) more efficiently. Ant colony optimization (ACO) is a rapidly evolving meta-heuristic technique based on the real life behavior of ants and can be used to solve NP-Hard (SDPSP) problem. Different versions of ACO meta-heuristic have already been applied to the software project scheduling problem in the past that took various resources into account. We have applied elitist strategy of ACO (elitist ant system) for solving SDPSP in a parameter-constrained environment taking project's cost and duration into consideration. The objective of the ACOSDPSP methodology allows software project managers and schedulers to assign most effective set of employees that can contribute in minimizing cost and duration of the software project. Experimental results show that the proposed ACOSDPSP methodology is promising in achieving the desired results. General Terms Simulation,Data dictionary/directory ,Data warehouse and repository,Logging recovery,Security,integrity and protection

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