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Automatic Business-scenarios Generation Based on Methods of Machine Learning

Student: Oksana Marina

Supervisor: Eduard Klyshinskiy

Faculty: HSE Tikhonov Moscow Institute of Electronics and Mathematics (MIEM HSE)

Educational Programme: Control Systems and Data Processing in Engineering (Master)

Year of Graduation: 2020

Cloud storage is a widespread model of data storage that consists of a collection of multiple servers distributed over a network. Yandex.Disk is a cloud-based data storage and web service that provides services to both individuals and businesses. The problem of automatic business-scenarios generation based on methods of machine learning and the problem of business users search among the Disk service audience were solved in this paper. Machine learning methods such as decision trees and random forest classifiers were used. The training features contains the information about user activity in the web interface and client application. The research on the purpose of Disk service usage were used for data labelling.

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