A PROPOSED MODEL BASED ON CLOUD COMPUTING TECHNOLOGY TO IMPROVE HIGHER EDUCATION INSTITUTIONS PERFORMANCE
Journal: International Journal of Advanced Research in Engineering and Technology (IJARET) (Vol.11, No. 09)Publication Date: 2020-09-30
Authors : Shahera Saad Ali Asmaa Jameel Al Nawaiseh Yehia Helmy Ibrahim Fathy Moawad Emadeldin Khalil;
Page : 612-628
Keywords : Cloud computing; Education; Data Analytics; Data management; Big Data; Cloud Services Models;
Abstract
The proliferation of data warehouses and the rise of multimedia, social media and the Internet of Things (IoT) generate an increasing volume of structured semistructured and unstructured data. Towards the investigation of these large volumes of data, big data and data analytics have become emerging research fields, attracting the attention of the academia, industry, and governments. Searcher entrepreneurs, decision-makers, and problem-solvers view ‘big data' as the tool to revolutionize various industries and sectors, such as business, healthcare, retail research, education and public administration. . The Increasing of expenses of storage, retrieving and processing; and the need to secure big data in educational institutions besides the expenses of purchase hardware, software, servers and maintenance that is done periodically, addition to the lack of the highly efficient of enterprise's resource management and planning. This research focuses on the importance of cloud computing and big data technologies in managing and improving performance in Egyptian higher education institutions. The proposed model avoids the drawbacks of conventional systems. It would be low cost, easy to use, easily accessible, promote social networking
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