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Tytuł artykułu

The enterprise management system : evaluating the use of information technology and information systems

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Warianty tytułu
PL
System zarządzania przedsiębiorstwem : ocena wykorzystania technologii informacyjnej i systemów informacyjnych
Języki publikacji
EN
Abstrakty
EN
The purpose of this study is to complement the existing approaches towards the evaluation of the quality of ITS use in enterprise management. This article explores the point of using information technologies and systems in enterprise management and articulates an evaluation approach that can be applied to it. In this article, a Technology Acceptance Model is used to evaluate the use of information systems and technologies. According to this model, the use of any technology will be effective only if the Perceived Usefulness and the Perceived Ease of Use are high. The study surveys 120 industry experts. The survey sample is composed in accordance with the compatible criteria (competence, area of engagement, and experience of work in the leading companies). The Enterprise-Resource Planning, Customer Relationships Management, and Supplier Relationships Management systems have the highest scores, with the reliability coefficient of 0.89. A comparative assessment has been conducted on information technologies, which are used in operations management. The proposed approach can be used in any enterprise.
PL
Celem tego badania jest uzupełnienie istniejących podejść do oceny jakości wykorzystania ITS w zarządzaniu przedsiębiorstwem. W tym artykule bada się zastosowanie technologii i systemów informatycznych w zarządzaniu przedsiębiorstwem oraz przedstawia podejście ewaluacyjne, które można do niego zastosować. W tym artykule zastosowano model akceptacji technologii do oceny wykorzystania systemów i technologii informatycznych. Zgodnie z tym modelem korzystanie z dowolnej technologii będzie skuteczne tylko wtedy, gdy postrzegana użyteczność i odczuwalna łatwość użytkowania będą wysokie. W badaniu wzięło udział 120 ekspertów branżowych. Próbka ankiety składa się zgodnie z kompatybilnymi kryteriami (kompetencje, obszar zaangażowania i doświadczenie w pracy w wiodących firmach). Systemy planowania przedsiębiorstwa i zarządzania relacjami z klientami oraz zarządzania relacjami z dostawcami mają najwyższe wyniki, a współczynnik niezawodności wynosi 0,89. Przeprowadzono ocenę porównawczą technologii informatycznych wykorzystywanych w zarządzaniu operacjami. Proponowane podejście można zastosować w dowolnym przedsiębiorstwie.
Rocznik
Strony
103--118
Opis fizyczny
Bibliogr. 56 poz., tab.
Twórcy
  • Department of Organization management in mechanical engineering, State University of Management, Moscow, Russia
  • Department of Management organization in engineering, State University of Management, Moscow, Russia
  • Department of Sociology and human resource, North-Eastern University, Yakutsk, Russia
  • EPAM SYSTEMS (Poland), Kraków, Poland
Bibliografia
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  • 16. Gerow, J.E., Thatcher, J.B. & Grover, V. (2015). Six types of IT-business strategic alignment: an investigation of the constructs and their measurement. European Journal of Information Systems, 24(5), 465-491.
  • 17. Haddara, M., Moen, H. (2017). User resistance in ERP implementations: A literature review. Procedia Computer Science, 121, 859-865.
  • 18. Hinkelmann, K., Gerber, A., Karagiannis, D., Thoenssen, B., Van der Merwe, A. & Woitsch, R. (2016). A new paradigm for the continuous alignment of business and IT: Combining enterprise architecture modelling and enterprise ontology. Computers in Industry, 79, 77-86.
  • 19. Hou, A.C.Y., Chen, Y.-Ch. & Shang, R.-A. (2016). Mutual relations in ERP implementation: the impacts of work alienation and organizational support in state-owned enterprise. Procedia Computer Science, 100, 1289-1296.
  • 20. Chavarria-Barrientos, D., Chen, D., Funes, R., Molina, A. & Vernadat, F. (2017). An Enterprise Operating System for the Sensing, Smart, and Sustainable Enterprise. IFAC PapersOnLine, 50(1), 13052-13058.
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  • 27. Kouziokas, G.N. (2016). Technology-based management of environmental organizations using an Environmental Management Information System (EMIS): Design and development. Environmental Technology & Innovation, 5, 106-116.
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  • 34. Malyzhenkov, P., Ivanova, M. (2017). An Enterprise Architecture-Based Approach to the IT-Business Alignment: An Integration of SAM and TOGAF Framework, [In:] Workshop on Enterprise and Organizational Modeling and Simulation (pp. 159-173). Springer, Cham.
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  • 37. Nam, W.-H., Kim, T., Hong, E.-M., Choi, J.-Y. & Kim, J.-T. (2017). A Wireless Sensor Network (WSN) application for irrigation facilities management based on Information and Communication Technologies (ICTs). Computers and Electronics in Agriculture, 143, 185-192.
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  • 46. Reeve, B.B. (2009). Why Teachers Adopt a Controlling Motivating Style Toward Students and How They Can Become More Autonomy Supportive. Educational Psychologist, 44(3), 159-175.
  • 47. Rezvani, A., Khosravi, P. (2017). Promoting the continuing usage of strategic information systems: The role of supervisory leadership in the successful implementation of enterprise systems. International Journal of Information Management, 37, 417-430.
  • 48. Romero, D., Vernadat, F. (2016). Enterprise information systems state of the art: Past, present and future trends. Comput. Industry, 79(C), 3-13.
  • 49. Saeidi, P., Saeidi, S.P., Sofian, S., Saeidi, S.P., Nilashi, M. & Mardani, A. (2019). The Impact of Enterprise Risk Management on Competitive Advantage by Moderating Role of Information Technology. Computer Standards & Interfaces, 63, 67-82.
  • 50. Saprykina, A.O. (2015). The technology acceptance model as a tool for evaluating the subjective effectiveness of e-portfolio technology. Education Theory and Practice in the Modern World: Materials of the VII International Scientific Conference (pp. 108-110). St. Petersburg: Svoye Izdatelstvo Publishing House.
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  • 53. Sushil, S. (2018). Incorporating polarity of relationships in ISM and TISM for theory building in information and organization management. International Journal of Information Management, 43, 38-51.
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Uwagi
Opracowanie rekordu w ramach umowy 509/P-DUN/2018 ze środków MNiSW przeznaczonych na działalność upowszechniającą naukę (2019).
Typ dokumentu
Bibliografia
Identyfikator YADDA
bwmeta1.element.baztech-972744ae-f581-4eb8-b332-41c4ca2cfc27
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