znissou/BERT-based-Sentiment-Analysis-for-COVID-19-Tweets
BERT-based sentiment analysis system for COVID-19 tweets achieving 91.4% accuracy. Includes trained deep learning model, Flask REST API backend, and cross-platform Flutter mobile application with Material 3 design.
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Jupyter Notebook
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MIT
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Last pushed
Jan 16, 2026
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