Fault Localisation and Repair for DL Systems: An Empirical Study with LLMs
Fault Localisation and Repair for DL Systems: An Empirical Study with LLMs
Numerous Fault Localisation (FL) and repair techniques have been proposed to address faults in Deep Learning (DL) models. However, their effectiveness in practical applications remains uncertain due to the reliance on pre-defined rules. This paper presents a comprehensive evaluation of state-of-the-art FL and repair techniques, examining their advantages and limitations. Moreover, we introduce a novel approach that harnesses the power of Large Language Models (LLMs) in localising and repairing DL faults. Our evaluation, conducted on a carefully designed benchmark, reveals the strengths and weaknesses of current FL and repair techniques. We emphasise the importance of enhanced accuracy and the need for more rigorous assessment methods that employ multiple ground truth patches. Notably, LLMs exhibit remarkable performance in both FL and repair tasks. For instance, the GPT-4 model achieves 44% and 82% improvements in FL and repair tasks respectively, compared to the second-best tool, demonstrating the potential of LLMs in this domain. Our study sheds light on the current state of FL and repair techniques and suggests that LLMs could be a promising avenue for future advancements.
Jinhan Kim、Nargiz Humbatova、Gunel Jahangirova、Shin Yoo、Paolo Tonella
计算技术、计算机技术
Jinhan Kim,Nargiz Humbatova,Gunel Jahangirova,Shin Yoo,Paolo Tonella.Fault Localisation and Repair for DL Systems: An Empirical Study with LLMs[EB/OL].(2025-06-03)[2025-06-19].https://arxiv.org/abs/2506.03396.点此复制
评论