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Innovation of Enterprise Economic Management Based on Artificial Intelligence Technology

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... Effective management of the enterprise economy can help the healthy development of the enterprise economy, Wang, L., and Abbas, S. think that the traditional enterprise economic management mode has poor prediction effect and low management efficiency and put forward the application of numerical analysis method in enterprise economic management, and the experiments show that numerical Analysis can predict the development trend of the enterprise economy as well as improve the efficiency of the enterprise economic management [11]. The emergence of information technology has changed the traditional enterprise economic management mode, Qin, M. based on artificial intelligence technology to study the new enterprise management mode from the theoretical and practical point of view to design the implementation of artificial intelligence technology to promote the innovation of the enterprise, the practice shows that artificial intelligence technology can help to bring innovation and vitality for the enterprise [12]. ...
... The same SME analysis shows that when 12   , the core firm will choose to keep its promise to repay on time. ...
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