We found a match
Your institution may have access to this item. Find your institution then sign in to continue.
- Title
Cognitive Technologies in the Management and Formation of Directions of the Priority Development of Industrial Enterprises.
- Authors
Kwilinski, Aleksy; Kuzior, Aleksandra
- Abstract
The possibilities of using cognitive technologies in the organization of systematic industrial enterprise management are described in the article. Strategic links are defined in the development of a system of stochastic models of enterprise management based on artificial intelligence. The possibility of introduction of the Perceptron model in the industrial enterprise management with the purpose of identification of "bottlenecks" in the functionality of business activity and improvement of procedures of decision-making in the framework of creation of the program of development and technical re-equipment of the enterprise is proven. The authors offered an organizational and economic mechanism of operation of an industrial enterprise, which includes new means of implementation of managerial actions through the use of a matrix of assessment of the level of implementation of cognitive technologies. The method of determining priority directions for the implementation of cognitive technologies at an enterprise was developed based on the results of the assessment of the depth of penetration of cognitive technologies and the result obtained from their implementation, which additionally takes into account the resource ratio of the implemented technologies defined as the ratio of estimates of the actual level of competencies to what is needed to work with new cognitive technologies, which allows to obtain the planned economic and organizational effect.
- Subjects
TECHNOLOGY management; INDUSTRIALIZATION; STOCHASTIC systems; INDUSTRIAL management; STOCHASTIC models; COGNITIVE computing; ENTERPRISE resource planning software
- Publication
Management Systems in Production Engineering, 2020, Vol 28, Issue 2, p133
- ISSN
2299-0461
- Publication type
Article
- DOI
10.2478/mspe-2020-0020