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"path": "/2026/03/13/google-uses-gemini-ai-to-map-2-6-million-floods-from-news-archives/",
"publishedAt": "2026-03-13T10:20:40.000Z",
"site": "https://dataconomy.com",
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"textContent": "Google researchers used the Gemini large language model to analyze 5 million news articles and create a geo-tagged dataset of 2.6 million floods. This development addresses a significant gap in weather forecasting, as flash floods are difficult to predict due to their short-lived and localized nature. The resulting dataset, named Groundsource, provides a baseline for […]",
"title": "Google uses Gemini AI to map 2.6 million floods from news archives"
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