Managing the Object Oriented Information System Project

Institution Jomo Kenyatta University of Science and Technology
Course Information Technol...
Year 2nd Year
Semester Unknown
Posted By Jeff Odhiambo
File Type ppt
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Description

Managing an Object-Oriented Information System (OOIS) project involves the application of structured methodologies and principles to ensure efficient design, development, and deployment. It includes defining clear objectives, gathering system requirements, and breaking down the project into manageable modules using object-oriented concepts like encapsulation, inheritance, and polymorphism. Effective management ensures seamless collaboration among team members, proper allocation of resources, adherence to timelines, and ongoing communication with stakeholders. The use of modeling tools such as Unified Modeling Language (UML) helps visualize and structure the system’s components, while iterative development methodologies ensure continuous testing and refinement. A strong focus on quality assurance, scalability, and adaptability ensures the project meets current needs while accommodating future expansions.
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