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A Flask web app to predict diabetes in a patient using the SVM ML model

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Diabetes Prediction

A Flask web app to predict diabetes in a patient using SVM ML model.

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About

  • Diabetes can be controlled if it is predicted earlier. Hence, this project aims to perform early prediction of Diabetes in a patient by applying various Machine Learning Techniques.
  • These techniques provide better results for prediction by constructing models from datasets containing various information about different people.
  • Algorithms used were: K-Nearest Neighbor (KNN), Logistic Regression (LR), Decision Tree (DT), Support Vector Machine (SVM), Naïve Bayes(NB), and Random Forest (RF).
  • The accuracy for each model was calculated.
  • Results showed that SVM achieved higher accuracy compared to other machine learning techniques hence, it is used for prediction in the web application.

Experimental Setup

  • Environment used:
    • Web App: Visual Studio Code
    • Model Training: Jupyter Notebook
  • Languages & Libraries used:
    • Web App:
      • Front-end: HTML5, CSS3, Bootstrap v4.5
      • Back-end: Flask v1.1.2
    • Model Training:
      • Language: Python v3.8
      • Libraries: pandas v1.3.2, numpy v1.19.0, seaborn v0.11.2, matplotlib v3.4.3, scikit_learn v0.24.2

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A Flask web app to predict diabetes in a patient using the SVM ML model

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