评估小型语言模型和推理模型在系统日志严重性分类任务上的表现 / Benchmarking Small Language Models and Small Reasoning Language Models on System Log Severity Classification
1️⃣ 一句话总结
这篇论文通过系统日志严重性分类这个任务,来测试多种小型AI模型的实际理解能力和部署效率,发现模型架构、训练目标和能否有效利用外部信息是决定其性能的关键,为实时监控系统的AI选型提供了重要参考。
System logs are crucial for monitoring and diagnosing modern computing infrastructure, but their scale and complexity require reliable and efficient automated interpretation. Since severity levels are predefined metadata in system log messages, having a model merely classify them offers limited standalone practical value, revealing little about its underlying ability to interpret system logs. We argue that severity classification is more informative when treated as a benchmark for probing runtime log comprehension rather than as an end task. Using real-world journalctl data from Linux production servers, we evaluate nine small language models (SLMs) and small reasoning language models (SRLMs) under zero-shot, few-shot, and retrieval-augmented generation (RAG) prompting. The results reveal strong stratification. Qwen3-4B achieves the highest accuracy at 95.64% with RAG, while Gemma3-1B improves from 20.25% under few-shot prompting to 85.28% with RAG. Notably, the tiny Qwen3-0.6B reaches 88.12% accuracy despite weak performance without retrieval. In contrast, several SRLMs, including Qwen3-1.7B and DeepSeek-R1-Distill-Qwen-1.5B, degrade substantially when paired with RAG. Efficiency measurements further separate models: most Gemma and Llama variants complete inference in under 1.2 seconds per log, whereas Phi-4-Mini-Reasoning exceeds 228 seconds per log while achieving <10% accuracy. These findings suggest that (1) architectural design, (2) training objectives, and (3) the ability to integrate retrieved context under strict output constraints jointly determine performance. By emphasizing small, deployable models, this benchmark aligns with real-time requirements of digital twin (DT) systems and shows that severity classification serves as a lens for evaluating model competence and real-time deployability, with implications for root cause analysis (RCA) and broader DT integration.
评估小型语言模型和推理模型在系统日志严重性分类任务上的表现 / Benchmarking Small Language Models and Small Reasoning Language Models on System Log Severity Classification
这篇论文通过系统日志严重性分类这个任务,来测试多种小型AI模型的实际理解能力和部署效率,发现模型架构、训练目标和能否有效利用外部信息是决定其性能的关键,为实时监控系统的AI选型提供了重要参考。
源自 arXiv: 2601.07790