Abstract
The article discusses the prospects and problems of using Big Data by Russian companies. In the conditions of the initial development of the Big Data market in the Russian Federation, it is important to adapt business management technologies to the use of large amounts of information. In order to monitor the current situation, 15 financial specialists involved in the work of small, medium and large businesses using Big Data processing and analysis technologies were interviewed. Meanwhile, the interviewees admit that under the influence of information innovations, there are wide opportunities for using Big Data to solve predictive analytics problems, build flexible management reports, form an informed opinion about the need to create reserves and other estimates, obtain information about events after the reporting date, and collect and link integrated reporting data. It is concluded that the systematic use of Big Data becomes the basis for companies to make the transition to a qualitatively new level of management of all business processes and poses new challenges for specialists to constantly apply interdisciplinary approaches when solving specialized professional tasks.
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Potasheva, O.N. (2022). Big Data Application in Information Support of Organization Management: Problems and Prospects. In: Ashmarina, S.I., Mantulenko, V.V. (eds) Digital Technologies in the New Socio-Economic Reality. ISCDTE 2021. Lecture Notes in Networks and Systems, vol 304. Springer, Cham. https://doi.org/10.1007/978-3-030-83175-2_14
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DOI: https://doi.org/10.1007/978-3-030-83175-2_14
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