Abstract
The use of the Internet of Things (IoT) has brought about radical changes in the construction and business sectors, and companies are now using technology to remain competitive, support the exploitation of competitive advantages and increase growth and profitability. The use of the next generation of computers facilitated industrial change in all areas, and IoT helped shape the production structure, build an efficient value chain and achieve economic growth points. It can be argued that the introduction of IoT has changed the way we create value in the supply chain, which creates better opportunities for companies to improve scalability, make faster decisions and achieve better profits and growth. Although there are few challenges for the company, such as optimizing resources, investing in IoT and related digital technology, changing the production process and supply chain, etc., these new problems tend to change the organization’s bases and change the traditional way of doing things. Business. digital environment for effective customer engagement.
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Veerasamy, K., Sanyal, S., Almahirah, M.S., Saxena, M., Manohar Bhanushali, M. (2022). An Investigative Analysis for IoT Based Supply Chain Coordination and Control Through Machine Learning. In: Balas, V.E., Sinha, G.R., Agarwal, B., Sharma, T.K., Dadheech, P., Mahrishi, M. (eds) Emerging Technologies in Computer Engineering: Cognitive Computing and Intelligent IoT. ICETCE 2022. Communications in Computer and Information Science, vol 1591. Springer, Cham. https://doi.org/10.1007/978-3-031-07012-9_13
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