Blockchain-Enabled Traceability in Agricultural Supply Chains: Challenges and Opportunities
Abstract
The agricultural supply chain is complex, with multiple stakeholders involved from farm to fork. This paper explores the implementation of blockchain technology to enhance traceability and transparency in agricultural supply chains. We discuss the challenges faced, such as data integration and stakeholder adoption, and highlight the opportunities for improving food safety, reducing fraud, and increasing consumer trust
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