Artificial intelligence of things in the supply chain: comprehensive intelligence

Authors

  • Hamed Nozari Faculty of Industrial Engineering, Iran University of Science and Technology,Tehran, Iran

Keywords:

Smart supply chain, Artificial intelligence of things, Internet of Things, Artificial intelligence

Abstract

The change in the competitive environment of the market and the development of e-commerce has made it possible for companies to offer their products and services to a wide range of markets without geographic restrictions. Quick response to the diverse needs of consumers, which is one of the inherent characteristics of the e-commerce world, the importance of logistics processes and has increased the supply chain even more. On the other hand, in recent years, with the emergence of new technologies such as the Internet of Things, artificial intelligence and the combination of these technologies, which is called the artificial intelligence of things, the traditional supply chain has undergone many changes and developments. has experienced It seams; Many of the functions of the traditional supply chain system have been redesigned and taken a new shape by applying these new technologies. Artificial intelligence of things is one of the most important technologies that lead to making the supply chain intelligent. In this research, the applications of these two technologies in improving the state of the supply chain will be discussed.

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Published

2023-09-26

How to Cite

Nozari, H. (2023). Artificial intelligence of things in the supply chain: comprehensive intelligence. International Scientific Hub, 9–24. Retrieved from https://books.iscihub.com/index.php/ISCIHB/article/view/30