Chapter 5: The role of Internet of Things technology and big data analysis in supply chain improvement

Authors

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

Keywords:

supply chain, Internet of Things, big data, smart supply chain

Abstract

Intelligent coordination frameworks are built on IoT stages and can control and analyze an expansive sum of data automatically. Whereas customarily, thing filtering and information section forms were frequently done physically. This capacity to gather data at the proper time helps businesses to reply to occasions and demands within the most limited conceivable time, and why? , accurately distinguish the way and time of an occasion. Be that as it may, the utilization of these devices within the Internet of Things leads to the generation of an expansive sum of data that requires broad examination and examination. Big data investigation devices have the capacity to analyze an expansive sum of information created by IoT gadgets. to oversee IoT totals information collected from different sensors and huge information analytics apparatuses can utilize this data to store and create bits of knowledge. In this chapter, the highlights of these advances in progressing the execution of supply chains as the center of businesses are inspected.

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References

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Published

2023-08-07

How to Cite

Nozari, H. (2023). Chapter 5: The role of Internet of Things technology and big data analysis in supply chain improvement. International Scientific Hub, 43–55. Retrieved from https://books.iscihub.com/index.php/ISCIHB/article/view/32

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