Analysis of the challenges of creating an emerging economy based on artificial intelligence in the context of land use (case study: Tabriz city)

Document Type : Original Article

Authors
1 Department of Geography and Urban Planning, Faculty of Humanities, Payame Noor University, Tehran, Iran.
2 Ph.D. Candidate in Geography and Urban Planning, Faculty of Geography, University of Tehran, Tehran, Iran.
Abstract
The world economy is developing rapidly. In the wake of rapid development, the management of economic zones is very important. In the process of economic management, the government plays the role of macro control and manages various economic affairs and social and economic services. While carrying out infrastructure construction, it creates a good environment for economic development; But with the deepening of economic development and the complexity of economic data, the current economic management has gradually revealed a range of problems that arise in the process of economic development, and these problems need to be solved urgently. At this time, the scope of application of artificial intelligence in the economic field is expanding day by day and has a great positive effect on economic development; Therefore, in order to solve the problem of economic management in the process of economic development, this paper proposes a development path that integrates artificial intelligence and economic management and provides intelligent technology support for the development of economic management to help the smooth operation of economic development. The results of the research showed that the factors of the lack of scientific centers responsible for the development of artificial intelligence, the lack of appropriate artificial intelligence university units in fields that are appropriate for the territorial capacity, according to the type of multi-mode and influential relationships they have, are among the variables that contribute to the realization of the intelligence approach. Synthetic has the most direct effect. AI-based technologies have the capacity to become tools for increasing access to equal opportunities and personalized learning; Meanwhile, the position and importance of the university will be decisive.

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