Developing a Risk Management Model for Banking Software Development Projects Based on Fuzzy Inference System
Subject Areas : Urban Planningtooraj karimi 1 , mohammadreza Fathi 2 , yalda yahyazade 3
1 - Faculty of Management and Accounting,university of tehran college of farabi,iran ,ghom
2 - faculty of manmagment and accounting,university of tehran college of farabi,iran,ghom
3 - factualty of Managment and Accounting,university of tehran college of farabi,iran,ghom
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