Blockchain Ecosystem Smart Contract Reliability Improvements using AI

Authors

  • Prof. Jonas Fischer Institute of Sustainable Energy, Technical University of Denmark, Denmark Author

Keywords:

Artificial Intelligence, smart contracts, blockchain ecosystems, machine learning

Abstract

Coding self-executing smart contracts saves terms. As blockchain ecosystems grow, banking, supply chain, and healthcare integration require reliable smart contracts. Simple smart contract verification fails when decentralized applications evolve. AI boosts smart contract security, dependability, and efficiency. We boost blockchain smart contract dependability using AI. AI-driven anomaly detection, automated testing, formal verification, and contract execution optimization employ ML and reinforcement learning. Resource limits, blockchain infrastructure AI, scalability. AI-based smart contract defect detection, prediction, and optimization are investigated. One study suggests AI-powered solutions may improve blockchain ecosystem smart contracts' security, reliability, and resilience.

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Published

28-12-2022

How to Cite

[1]
P. J. Fischer, “Blockchain Ecosystem Smart Contract Reliability Improvements using AI”, Los Angeles J Intell Syst Pattern Rec, vol. 2, pp. 216–222, Dec. 2022, Accessed: Mar. 07, 2026. [Online]. Available: https://lajispr.org/index.php/publication/article/view/46