logpai/Drain3
A robust streaming log template miner based on the Drain algorithm
When you're trying to understand what's happening in your systems, you often get overwhelmed by a flood of log messages. Drain3 helps make sense of them by taking a continuous stream of raw log entries and automatically identifying common patterns and templates. This project is for operations engineers, site reliability engineers, and anyone else who needs to quickly pinpoint trends and anomalies in system logs.
768 stars. No commits in the last 6 months.
Use this if you need to automatically categorize and extract repeatable patterns from large volumes of streaming log data to simplify monitoring and analysis.
Not ideal if you only have a small, static set of logs to analyze, or if you need to perform complex natural language understanding beyond pattern extraction.
Stars
768
Forks
166
Language
Python
License
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Category
Last pushed
Feb 04, 2025
Commits (30d)
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