PhD. Prof. FADI ISSA IONEL NAFTANAILA.  Measure of success of a project:  Time management systems:  Processes of Time Management area: ◦ Define ◦ Sequence.

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Presentation transcript:

PhD. Prof. FADI ISSA IONEL NAFTANAILA

 Measure of success of a project:  Time management systems:  Processes of Time Management area: ◦ Define ◦ Sequence ◦ Estimate resources ◦ Estimate durations ◦ Develop schedule ◦ Control schedule in planning stage

 Estimation: Activity, Project Fuzzy Logic big 30, The problem: 30, big

 Similarities: with one project, with more projects. Project Project 2Project 5 Project 4Project 3 Project 1

 Comparison variables: Project 2Project 5 Project 4Project 3 Project 1 Project Related Non Project Related

small average big lines of code membership 50,000 error 15%7%40% Project SizeError in estimation Accuracy: number of fuzzy sets small normal big

small average big lines of code membership 50,000 error 15%7%40% If project size is big then error is normal. normal big small

If manager experience is small OR project size is big then error is big. If manager experience is average AND project size is normal then error is normal. Centroid Manager ExperienceProject SizeEstimated error 16% 4 years40,000

System (Fuzzy Rules) System (Fuzzy Rules) Inputs Output Collecting Data for Creating Rules: Surveys, Automated. PC6 PC5 PC4 PC3 PC2 PC PC1