Introduction to Software Engineering Principles

Institution Jomo Kenyatta University of Science and Technology
Course Information Technol...
Year 3rd Year
Semester Unknown
Posted By Jeff Odhiambo
File Type pdf
Pages 8 Pages
File Size 621.33 KB
Views 1644
Downloads 0
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Description

Introduction to Software Engineering Principles provides an overview of the fundamental concepts, methodologies, and best practices used in software development. It covers essential topics such as the software development lifecycle (SDLC), software design principles, requirements analysis, testing, and maintenance. The course emphasizes structured and agile development approaches, coding standards, and software quality assurance. By understanding these principles, students learn how to design reliable, scalable, and maintainable software systems, preparing them for real-world software engineering challenges.
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