This work comprehensively evaluates the effectiveness of different log representation techniques, including classical and semantic-based approaches, in the context of automated log-based anomaly detection. The findings provide guidance for researchers and practitioners to select suitable log representation techniques for their log analysis workflows.
LEMUR introduces a cutting-edge log parsing framework with Entropy sampling and Chain-of-Thought Merging to enhance log analysis efficiency and accuracy.
Cutting-edge log parsing framework LEMUR enhances log analysis efficiency and performance through entropy sampling and chain-of-thought merging.
The author introduces LEMUR, a log parsing framework that combines entropy sampling and chain-of-thought merging to enhance log analysis efficiency and accuracy.