TingIS: Real-time Risk Event Discovery from Noisy Customer Incidents at Enterprise Scale
arXiv cs.CL / 4/24/2026
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Key Points
- The paper introduces TingIS, an end-to-end system for real-time discovery of actionable technical risk events from noisy customer incident reports at enterprise scale.
- TingIS uses a multi-stage event linking engine that combines efficient indexing with LLM-based decision-making to determine when incident descriptions should be merged.
- It includes cascaded routing for accurate business attribution and a multi-dimensional noise-reduction pipeline leveraging domain knowledge, statistical patterns, and behavioral filtering.
- In production handling 2,000+ messages per minute (300,000 per day), TingIS achieves a P90 alert latency of 3.5 minutes and a 95% discovery rate for high-priority incidents, outperforming baselines on routing accuracy, clustering quality, and signal-to-noise ratio.
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