Data-pageup/Sequential-Neural-Networks-for-Sentiment-Analysis-model-deploy
A sentiment analysis project using RNN, LSTM, and GRU models to classify text. It includes text preprocessing, embedding-based vectorization, and model comparison, with the best model deployed for real-time predictions.
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Jan 13, 2026
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