AzizBenAli/Sentiment_Analysis_on_Twitter_TWEETS

Develop and Maintain data pipelines to extract,transform, and load (ETL)the data. Explore the effectiveness of different approaches for sentiment classification on Twitter reviews. Conduct feature engineering and data cleaning, followed by building an LSTM model with attention mechanism and comparing itto pre-trained models BERT and Naive Bayes

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Jan 21, 2024

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