Apr 26, 2026
PandemicWatch - Earlier Than The News
Avni Mittal
🏆 Track 2 Winner: Pandemic Early Warning
India surveils pandemic risk mainly through clinical case reports, which lag the underlying transmission by one to two weeks. No public, AI-fused, district-level outbreak signal exists for the country's 640+ districts. Pandemic Watch is an open-source biosurveillance dashboard that tries to close that gap. It pulls together five very different early-warning signals (news and ProMED chatter, climate suitability, search-trend anomalies, wastewater viral RNA, and weighted mention counts) and turns them into a single risk score for each of six WHO-aligned viral pathogen families, computed independently for every district. A small set of LLM agents handles the language-heavy parts of the pipeline (filtering noise, removing duplicate reports, attributing mentions to the right pathogen family, and writing a short human-readable briefing with per-family evidence). On a retrospective replay of the COVID-19 declaration in Thrissur, Kerala (30 January 2020), the fused score crosses the High band a full week before news chatter peaks, driven almost entirely by the wastewater signal. The system is validated on six historical Indian outbreaks and the entire stack is released openly. The same architecture transfers without modification to any LMIC with district-level geography.
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Cite this work
@misc {
title={
(HckPrj) PandemicWatch - Earlier Than The News
},
author={
Avni Mittal
},
date={
4/26/26
},
organization={Apart Research},
note={Research submission to the research sprint hosted by Apart.},
howpublished={https://apartresearch.com}
}


