ML /
Disaster Response NLP
TLDR
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Processed roughly 45K disaster-related tweets across 14 events to extract location, need, and urgency signals from messy real-time social media.
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Combined RoBERTa, VADER, word-frequency analysis, and geospatial/textual modeling to identify areas of highest need.
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Cut inference time roughly in half with batch processing, making full-dataset iteration practical.