Design and Development of Blockchain Enabled Smart Contracts - Enhancing with Hybrid Deep Learning Model

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Etikala Aruna, Arun Sahayadhas

Abstract

Blockchain-enabled smart contracts have revolutionized secure, automated, and decentralized transaction handling across various industries. However, they face limitations in complex decision-making due to their rigid execution and predefined rules. This paper explores the integration of a hybrid deep learning model with blockchain-enabled smart contracts to enhance their functionality and decision-making capabilities. By embedding deep learning layers within the smart contract framework, this approach enables real-time data analysing, predictive analytics, and adaptive decision-making, fostering a more robust and dynamic contract execution. Through this integration, the hybrid model can analyze transaction data, external conditions, and contextual parameters, improving contract outcomes in applications such as finance, supply chain management, and healthcare. The study findings highlight the method's efficacy in enhancing smart contract flexibility and resilience while maintaining security and transparency.

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