- Pre-Processed the data using various data imputation and balancing methods and uploaded the data in Azure Blobs.
- Built Prediction model using Decision Forest (Over Sampled) on azure ML with 90% accuracy after comparing its metrics with Neural networks, Two class SVM, Naïve Bayes and Logistic Regression in Python.
- Performed classification using SVM Model (Over Sampled) on azure ML with 78% accuracy after comparing its metrics with Neural networks, SVM, Naïve Bayes and Logistic Regression in Python.
- Developed a Python Flask Application and deployed the classification and prediction model on Google Cloud.
- Technologies used: Python, Azure ML, Flask, Google Cloud Platform.
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