System analysis of the subject area and creation of an up-to-date model of the database "Scientific activity of university students"
Journal Title: Modern Innovations, Systems and Technologies - Year 2024, Vol 4, Issue 4
Abstract
In this article, the authors describe the main stages of building an up-to-date database model, analyze the subject area "Scientific activity of university students". Based on the analysis, the requirements for the developed model are built, after which a physical database model is designed, with a description of attributes and relationships. Based on the developed model and the entered test data, programs are created to process basic user requests to the built database.
Authors and Affiliations
N. K. Kiselev, K. A. Kovaleva
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