Bhanage et al., 2023
ViewPDF| Publication | Publication Date | Title |
|---|---|---|
| Li et al. | Swisslog: Robust and unified deep learning based log anomaly detection for diverse faults | |
| US9652318B2 (en) | System and method for automatically managing fault events of data center | |
| US20240345911A1 (en) | Machine learning aided diagnosis and prognosis of large scale distributed systems | |
| Bhanage et al. | IT infrastructure anomaly detection and failure handling: A systematic literature review focusing on datasets, log preprocessing, machine & deep learning approaches and automated tool | |
| Zhang et al. | Putracead: Trace anomaly detection with partial labels based on gnn and pu learning | |
| Bhanage et al. | Failure detection using semantic analysis and attention-based classifier model for it infrastructure log data | |
| Du et al. | Deepsim: Deep semantic information-based automatic mandelbug classification | |
| Makanju et al. | Investigating event log analysis with minimum apriori information | |
| Akhtar et al. | LLM-based event log analysis techniques: A survey | |
| Alharthi et al. | Sentiment analysis based error detection for large-scale systems | |
| Jarman et al. | Legion: Massively composing rankers for improved bug localization at adobe | |
| Ji et al. | Adapting large language models to log analysis with interpretable domain knowledge | |
| Li et al. | Empirically revisiting and enhancing automatic classification of bug and non-bug issues | |
| Wittkopp et al. | LogRCA: Log-based Root Cause Analysis for Distributed Services | |
| Baghdasaryan et al. | Knowledge retrieval and diagnostics in cloud services with large language models | |
| Bhanage et al. | Improving classification-based log analysis using vectorization techniques | |
| Pedroso et al. | Anomaly Detection and Root Cause Analysis in Cloud-Native Environments Using Large Language Models and Bayesian Networks | |
| Batta et al. | A system for proactive risk assessment of application changes in cloud operations | |
| Agrawal et al. | Analyzing and predicting failure in hadoop clusters using distributed hidden markov model | |
| Ma et al. | AdaptiveLog: An Adaptive Log Analysis Framework with the Collaboration of Large and Small Language Model | |
| Zasadziński et al. | Next stop" noops": Enabling cross-system diagnostics through graph-based composition of logs and metrics | |
| Bhanage et al. | Robust Analysis of IT Infrastructure's Log Data with BERT Language Model | |
| Hajer et al. | A blockchain integration to support failures prediction from log files in multi-agent systems technology | |
| Afshinpour | Mining software logs with machine learning techniques | |
| Bang et al. | HAMS: an AI-driven framework for real-time failure detection in HPC system logs |