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Sentiment Analysis - API

Used the airline sentiment analysis dataset, which contained statements and their binary sentiments, i.e., positive and negative classes.

Tools Required

  • Pandas - Python data manipulation libraries

  • NLTK - Working with textual data

  • Scikit-Learn - Vectorizors, Evaluation metrics, ML models

  • Tensorflow - Deep Learning Networks

  • BERT - Encoder Model

Roadmap

  1. Main.ipynb This contains the model generated using the OOPs function.

  2. Pipeline

  • Installing libraries and dependency
  • Importing the dataset
  • Data Preprocessing - Basic preprocessing and cleaning the dataset
  • Performing Vectorization and TfidfTransformer in the pipeline
  • Dividing the dataset into train and test
  • Applying Machine Learning models
    • Logistic Regression
    • XGB Classifier
    • Random Forest Classifier
    • SVC
  • Applying Deep Learning models (Code not available now used for Research work)
  • Generate pkl files and use them in API implementaion.
  • Download the code file to your device and run the API.py to get a local server link for the API.

Sentiment

Report

Report

Contains the dataset description and comparisions between different ML/DL models.

Feedback

If you have any feedback, please reach out to us at [email protected]

🔗 Links

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