ASE2024
CoDefeater: Using LLMs To Find Defeaters in Assurance Cases
Usman Gohar, Michael C. Hunter, Robyn R. Lutz, Myra B. Cohen
8 citations
Abstract
Constructing assurance cases is a widely used, and sometimes required, process toward demonstrating that safety-critical systems will operate safely in their planned environment. To mitigate the risk of errors and missing edge cases, the concept of defeatersarguments or evidence that challenge claims in an assurance case -has been introduced. Defeaters can provide timely detection of weaknesses in the arguments, prompting further investigation and timely mitigations. However, capturing defeaters relies on expert judgment, experience, and creativity and must be done iteratively due to evolving requirements and regulations. This new ideas paper proposes CoDefeater, an automated process to leverage large language models (LLMs) for finding defeaters. Initial results on two systems show that LLMs can efficiently find known and unforeseen feasible defeaters to support safety analysts in enhancing the completeness and confidence of assurance cases. CCS CONCEPTS • Software and its engineering → Software safety; Requirements analysis; • Computing methodologies → Artificial intelligence.