Securing Supply Chain Data with Confidential Computing and Access Control in Cloud Platforms
Abstract
Protecting sensitive supply chain data in cloud environments is essential for preventing data breaches and ensuring compliance. This paper presents a secure data management framework that combines confidential computing with role-based access control (RBAC) to safeguard supply chain information. Data encryption is enforced during transmission and processing using Trusted Execution Environments (TEEs), while RBAC ensures that only authorized personnel have access to sensitive data. Performance tests demonstrate reduced data leakage incidents and improved access control efficiency. The study concludes that combining confidential computing with RBAC enhances data security and operational integrity in supply chain management.
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