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Autor
Nyulásziová Miroslava (Technical University of Košice, Slovak Republic), Paľová Dana (Technical University of Košice, Slovakia)
Tytuł
Implementing a Decision Support System in the Transport Process Management of a Small Slovak Transport Company
Źródło
Journal of Entrepreneurship, Management and Innovation (JEMI), 2020, vol. 16, nr 1, s. 75-105, rys., tab., bibliogr. s. 99-104
Tytuł własny numeru
Business Process Management: Current Applications and the Challenges of Adoption
Słowa kluczowe
Systemy wspomagania decyzji, Logistyka transportu, Analiza danych, Zarządzanie przedsiębiorstwem
Decision Support Systems (DSS), Transport logistics, Data analysis, Enterprise management
Uwagi
Klasyfikacja JEL: M15, L84, O31
streszcz., summ.
Abstrakt
Bezsporne jest, że ciągły rozwój technologii cyfrowych wpływa na otoczenie biznesowe. Korzystanie z technologii informatycznych oznacza łatwiejszy dostęp do ogromnej ilości informacji biznesowych, co trudno jest uwzględnić w codziennym podejmowaniu decyzji. Tradycyjne metody przetwarzania danych w zarządzaniu przedsiębiorstwem stają się nieodpowiednie. Podejście do zarządzania procesami biznesowymi i analiza danych biznesowych to narzędzia, które można wykorzystać do optymalizacji procesów w firmie i do zebrania cennych informacji, które mogą dostarczyć różnorodnych materiałów decyzyjnych do zarządzania firmą. Artykuł dotyczy analizy, modelowania i optymalizacji procesu transportu, a także projektowania systemu wspomagania decyzji w tym procesie w małej firmie transportowej. Badania koncentrują się na opracowaniu innowacyjnego systemu wspomagania decyzji opartego na analizie danych firmy w celu usprawnienia zarządzania procesem transportu. (abstrakt oryginalny)

It is indisputable that the continuous development of digital technologies influences the business environment. Using information technologies means easier access to a huge amount of business information, which is hard to include in day-to-day decision-making. Traditional data processing methods in business management become inadequate. So, business process management approaches and business data analysis are the tools that could be utilized to optimize processes in a company and to harvest valuable information that can provide a variety of decision-making material for company management. This article deals with the analysis, modeling, and optimization of the transport process, as well as the design of a system for decision support in this process within a small transport company. The research is focused on the development of an innovative decision support system based on a company's data analysis in order to improve the management of the transport service process. (original abstract)
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Bibliografia
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Cytowane przez
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ISSN
2299-7075
Język
eng
URI / DOI
https://doi.org/10.7341/20201613
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