Impact of using Artificial Intelligence-Based Chatgpt Technology for Achieving Sustainable Supply Chain Management Practices in Selected Industries

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© 2023 by IJCTT Journal
Volume-71 Issue-3
Year of Publication : 2023
Authors : Ketan Rathor
DOI :  10.14445/22312803/IJCTT-V71I3P106

How to Cite?

Ketan Rathor, "Impact of using Artificial Intelligence-Based Chatgpt Technology for Achieving Sustainable Supply Chain Management Practices in Selected Industries ," International Journal of Computer Trends and Technology, vol. 71, no. 3, pp. 34-40, 2023. Crossref, https://doi.org/10.14445/22312803/IJCTT-V71I3P106

Abstract
The processes involved in the supply chain are expected to undergo a radical transformation because of digitalization, which makes use of the technical capabilities of applications for advanced technology. The greater effect of digital technology's use has been largely disregarded owing to a dearth of data pertinent to the topic. This is true even though the technology's advantages to operations are clear. This paper analyses how Char GPT and AI may be used together to increase operational performance, promote sustainable development, and earn money from data that has been acquired. The examples utilized in this study are from the supply chain sector. This project's objective was to conduct an experimental investigation of the tuna fish supply chain in the USA to identify essential end-to-end operations, investigate material and data handling methods, and consider the potential use of artificial intelligence and Chat GPT. Artificial intelligence has the potential to assist in making choices that are data-driven for a wide variety of business problems. Nevertheless, suppose there are problems with the flow of data and information across a supply chain. In that case, the value of AI algorithms may be limited since these algorithms depend on input that is accurate, trustworthy, and timely. Chat GPT can ensure the transparency, accountability, and traceability of such flows because of its potential to act as a hub for the administration and transmission of data and information emanating from a number of sources. The combination of artificial intelligence and chatbots has the potential to assist supply chains in moving beyond the limitations of currently available technology. Then, we can promote operational improvements and implement a dynamic decision-making process by leveraging the complementary effects of these digital technologies. This will allow us to reap the triple-helix sustainability benefits of reducing resource overexploitation, combating fraud, eliminating product recalls, and promoting gender and cultural equality. In the end, the ability to save money and generate more income thanks to data-driven decision-making is a significant boon to the process of monetizing data

Keywords
Chat GPT, Supply Chain Management, Sustainable, Percentage rate analysis, Chi square.

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