Title :
Stochastic Optimization Modeling and Quantitative Project Management
Author :
Rao, Uma ; Kestur, Srikanth ; Pradhan, Chinmay
Author_Institution :
Unisys Global Services India, Bangalore
Abstract :
Successful projects manage and balance four variables effectively: schedule, effort (or cost), scope, and quality. Project activities influence these four variables as distributions rather than deterministically. Thus, the end results expected from a project with respect to those variables are a function of all the distributions associated with each activity. Integrating stochastic optimization modeling (SOM) with quantitative project management (QPM) lets projects factor in uncertainties and get near-real-time feedback, so they can monitor key variables and initiate corrective action.This case study provides a detailed description of our implementing SOM and QPM in a development project. Our project´s scope was to develop a resource management application that facilitated centralized data collection with distributed reporting.
Keywords :
project management; scheduling; stochastic processes; centralized data collection; quantitative project management; resource management; scheduling; stochastic optimization modeling; Control charts; Feedback; Monitoring; Optimization methods; Pareto analysis; Project management; Quality management; Scheduling; Stochastic processes; Uncertainty; SWOT analysis; monte carlo simulations; process capability baselines; quantitative project management; sensitivity analysis; stochastic optimization modeling;
Journal_Title :
Software, IEEE