SCALM: Detecting Bad Practices in Smart Contracts Through LLMs

35
citations
#86
in AAAI 2025
of 3028 papers
4
Top Authors
5
Data Points

Abstract

As the Ethereum platform continues to mature and gain widespread usage, it is crucial to maintain high standards of smart contract writing practices. While bad practices in smart contracts may not directly lead to security issues, they do elevate the risk of encountering problems. Therefore, to understand and avoid these bad practices, this paper introduces the first systematic study of bad practices in smart contracts, delving into over 35 specific issues. Specifically, we propose a large language models (LLMs)-based framework, SCALM. It combines Step-Back Prompting and Retrieval-Augmented Generation (RAG) to identify and address various bad practices effectively. Our extensive experiments using multiple LLMs and datasets have shown that SCALM outperforms existing tools in detecting bad practices in smart contracts.

Citation History

Jan 27, 2026
33
Feb 4, 2026
33
Feb 13, 2026
35+2
Feb 13, 2026
35
Feb 13, 2026
35