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Subhash Kumar Dwivedi
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- Lecturer Department of Commerce, Marwari College Ranchi Jharkhand India
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Abstract
nTwo main topics have an impact on the adoption of sustainability as a worldwide business mandate. The first is admitting that global supply networks have an impact on sustainability and that “greening” the chain as a whole is necessary. Technology, encompassing “big data,” artificial intelligence (AI), and digitization, is the second. These ideas are now widely accepted. These innovations are transforming how firms design and manage their supply chains, which have a big impact on sustainability. In the following article, an overview of the most widely accepted concepts in sustainable supply chain research at the present time has been presented.
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Keywords: Artificial intelligence, sustainability, big data , supply networks, Global corporations
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References
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Volume | 14 | |
[if 424 equals=”Regular Issue”]Issue[/if 424][if 424 equals=”Special Issue”]Special Issue[/if 424] [if 424 equals=”Conference”][/if 424] | 01 | |
Received | May 18, 2024 | |
Accepted | April 28, 2024 | |
Published | May 24, 2024 |
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