Recognition system for increasing business potential from in-store customers.

Keywords: Analytical system, effectiveness of the trade organization, algorithm analysis and research, modeling and forecasting results.


This paper presents a comprehensive algorithm for creating a user recognition system to identify customers as well as collect, store, analyze and research data from a business. Its main features include synchronization with, and output to, an application installed on a PC or smartphone.


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How to Cite
MorozВ., SyrotkinaО., & MarochkoА. (2020). Recognition system for increasing business potential from in-store customers . COMPUTER-INTEGRATED TECHNOLOGIES: EDUCATION, SCIENCE, PRODUCTION, (38), 46-50.