Information system for forecasting sales of building materials

: pp. 1 - 23
Lviv Polytechnic National University, Information Systems and Networks Department
Ivan Franko National University of Lviv, Applied Mathematics Department
Lviv Politechnic National University, Department of Management and International Entrepreneurship
Osnabrück University, International Economic Policy Chair
Lviv Polytechnic National University, Information Systems and Networks Department

The work purpose is information system design and development. The study object is sales forecasting system process for building materials assortment. The study subject is forecasting sales system development methods and means for building materials assortment. the process of the system of forecasting sales of the range of construction materials. In accordance with the results and calculations given in the qualification work, namely: analysis of analogue programs and information about the subject area, system analysis of the object and the choice of technological means of development, the general structure of a typical system for forecasting sales of an assortment of building materials on an online trading platform based on use has been developed neural network.

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