- Classification of Arrhythmia using ECG Data
- Diabetes Prediction
- Getting Admission in College Prediction
- Heart Disease Prediction
- Iris Flower Classification
- Loan Repayment Prediction
- Predict Employee Turnover
- Wine Quality Prediction
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- The goal of this project is to predict if a person is suffering from cardiac arrhythmia or not and if yes, classify it into one of 12 available groups.
- The Dataset used in this project is available at the UCI machine learning Repository. It can be found Here.
- The best Model was Kernelized SVM over PCA Data.
- Accuracy achieved = 80.21%
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- The objective of the project is to diagnostically predict whether or not a patient has diabetes, based on certain diagnostic measurements included in the dataset.
- The data set that has used in this project has taken from the Kaggle. "This dataset is originally from the National Institute of Diabetes and Digestive and Kidney Diseases.
- Several constraints were placed on the selection of these instances from a larger database. In particular, all patients here are females at least 21 years old of Pima Indian heritage".
- The model best worked on this dataset is Random Forest Classifier.
- Accuracy achieved = 98.75%
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- The objective of the project is to predict the chances of getting admission to a reputed University based on parameters like GRE Score, TOEFL Score, University Rating, SOP, LOR, CGPA, and Research submission.
- The data set that has used in this project has taken from the kaggle.
- The model best worked on this dataset is Linear Regression Model.
- Accuracy achieved = 81.08%
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- The objective of the project is to diagnostically predict whether or not a patient has Cardiac/Heart diabetes, based on certain diagnostic measurements included in the dataset like cp, trestbps, chol, fbs, restecg, thalach, exang, oldpeak, etc.
- The data set that has used in this project is taken from the Kaggle.
- The model best worked on this dataset is Random Forest Classifier with n_estimators=90.
- Accuracy achieved = 83.82%
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- The aim is to classify iris flowers among three species (setosa, versicolor, or virginica) from measurements of sepals and petals' length and width.
- The iris data set contains 3 classes of 50 instances each, where each class refers to a type of iris plant.
- The central goal here is to design a model that makes useful classifications for new flowers or, in other words, one which exhibits good generalization.
- The model best worked on this dataset is Support Vector Classifier..
- Accuracy achieved = 98%
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- Predicts whether the bank should approves the loan of an applicant based on his profit using Ensemble Learning Methods.
- The data set that has used in this project is taken from the Kaggle.
- The model best worked on this dataset is Random Forest Classifier with n_estimators=600.
- Accuracy achieved = 84.75%
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- It is a guided Project.
- The Objective of this project is to predict Employee Churn using Decision Tree and Random Forest Classifiers.
- The Dataset is taken From guided project Course available at Coursera named Predict-Employee-Turnover-with-scikit-learn.
- Accuracy achieved = 97%
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- The Objective of the project is to predict the quality of the Wine based on different features present in the dataset.
- The data set that has used in this project is taken from the Kaggle.
- The model best worked on this dataset is Random Forest Classifier with n_estimators=100.
- Accuracy achieved = 90.31%