Blockchain-based Supply Chain Sustainability: Enhancing Environmental and Social Responsibility

Dr. Sarah Nguyen

Abstract


This paper investigates the role of blockchain technology in promoting sustainability and responsible practices across supply chains. By creating transparent and immutable records of supply chain activities, including sourcing, production, and distribution, blockchain enables stakeholders to monitor and verify adherence to sustainability standards. The study explores how blockchain-based supply chain solutions can support environmental conservation, fair labor practices, and ethical sourcing initiatives, leading to a more sustainable and socially responsible global economy.

 



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