Performance Analysis of Faculty and Students Using Neo 4j
Journal: Bonfring International Journal of Networking Technologies and Applications (Vol.5, No. 1)Publication Date: 2018-03-31
Authors : S. Kiruthika T. Dhivya; S.S. Kiruthika;
Page : 3-5
Keywords : Graph Database; Neo4j; NOSQL; CQL;
Abstract
Graph Database Management System (GDBMS) is a database which stores data in the form of graph structures.Neo4j is a world?s leading graph database. The Idea proposed in this system is to perform an analysis of faculty and students by certain categories. The aim of this project is to improve the organizational development and to analyze the students and faculty performance in their curriculum. The analyses are done by the following category, the faculty were requested to provide their co-curricular activities and they should also upload the marks and co-curricular activities of their respective students. Every faculty and student?s curriculum activities were monitored by the Head of the Department or by the authorized faculty. The Head of Department has the privilege to identify and monitor the individual and also overall performance of the students and faculties. The process helps them to analyze the faculty and students activities what they are done in their curriculum. The Neo4j server stores the data in the form of graph structures as well as in a tabular form. This project is very useful for every institution to analyze the performance of their faculty and students. Every student and teacher details are easily maintained by their institutions and can be retrieved easily.
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Last modified: 2018-10-27 14:44:21