Supervised machine learning pipeline for telecom customer churn prediction including EDA, feature engineering, model comparison, unit testing and performance evaluation.
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Updated
Dec 30, 2025 - Jupyter Notebook
Supervised machine learning pipeline for telecom customer churn prediction including EDA, feature engineering, model comparison, unit testing and performance evaluation.
Techniques For Feature Selection
This project is to build a model that *predicts the human activities* such as __Walking, Walking_Upstairs, Walking_Downstairs, Sitting, Standing__ and __Laying__ as done in Smart-Watches.
Predicting toxicity of molecules. Project on course "Data Mining 2"
Customer Segmentation using KMeans Clustering with PCA for dimensionality reduction and Variance Thresholding for feature selection
Delved into advanced techniques to enhance ML performance during the uOttawa 2023 ML course. This repository offers Python implementations of Naïve Bayes (NB) and K-Nearest Neighbor (KNN) classifiers on the MCS dataset.
Praktikum Machine Learning 5 - Naive Bayes dengan Variance Thresholding, Mutual Information, dan K-Fold Cross ValidationAssignment
Exploratory Data Analysis and preprocessing on Students Performance dataset. Covers variance-based feature selection, missing value handling, IQR-based outlier removal on math and reading scores.
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