AuditGPT: Auditing Smart Contracts with ChatGPT
Shihao Xia, Shuai Shao, Mengting He, Tingting Yu, Linhai Song, Yiying, Zhang

TL;DR
AuditGPT leverages large language models to automatically verify ERC compliance in Ethereum smart contracts, significantly improving accuracy and efficiency over manual and existing tools.
Contribution
The paper introduces AuditGPT, a novel LLM-based tool that automates comprehensive ERC rule verification, outperforming expert audits in effectiveness, accuracy, and cost.
Findings
Successfully identified 418 ERC violations
Reported only 18 false positives
Outperformed expert auditing services in effectiveness and cost
Abstract
To govern smart contracts running on Ethereum, multiple Ethereum Request for Comment (ERC) standards have been developed, each containing a set of rules to guide the behaviors of smart contracts. Violating the ERC rules could cause serious security issues and financial loss, signifying the importance of verifying smart contracts follow ERCs. Today's practices of such verification are to either manually audit each single contract or use expert-developed, limited-scope program-analysis tools, both of which are far from being effective in identifying ERC rule violations. This paper presents a tool named AuditGPT that leverages large language models (LLMs) to automatically and comprehensively verify ERC rules against smart contracts. To build AuditGPT, we first conduct an empirical study on 222 ERC rules specified in four popular ERCs to understand their content, their security impacts,…
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Taxonomy
TopicsFinTech, Crowdfunding, Digital Finance · Blockchain Technology Applications and Security · Privacy-Preserving Technologies in Data
Methodstravel james · Sparse Evolutionary Training
