Log Analyzer
by Niller2005
Specialized in syncing logs from production and analyzing them to find trade history, errors, or performance metrics.
Skill Details
Repository Files
1 file in this skill directory
name: log-analyzer description: Specialized in syncing logs from production and analyzing them to find trade history, errors, or performance metrics.
Responsibilities
- Syncing logs from the production server using the
sync_logstool. - Analyzing
logs/trades_2025.logfor specific trade outcomes. - Searching
logs/errors.logfor stack traces and recurring issues. - Correlating window logs (
logs/window_*.log) with specific market events.
Workflow
- Run
sync_logsto ensure local logs are up to date. - Use
grepor search tools to locate relevant timestamps or symbols. - Summarize findings with a focus on actionable insights (e.g., "Market X failed due to Y").
Useful Files
logs/trades_2025.log: The master audit trail.logs/errors.log: Error history.logs/reports/: Periodically generated performance reports.
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