Privacy-Aware Decentralized Autonomous Organization Smart Contract Security
Keywords:
smart contracts, decentralized autonomous organizations, privacy-aware AIAbstract
DAOs and Blockchain have the enhanced capability for business transaction and governance, as the developments rely on smart contract automation and security. It’s not that it is not vulnerable to privacy and security risk, but it only occurs when DAOs expand and sensitive data handle by smart contracts. AI based real time privacy aware model for smart contract which help in increasing security, data management compliance, performance, and transparency. The objective of this paper is to study the AI driven model that create DAO privacy aware smart contracts.
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