You signed in with another tab or window. Reload to refresh your session.You signed out in another tab or window. Reload to refresh your session.You switched accounts on another tab or window. Reload to refresh your session.Dismiss alert
This is a Machine Learning web app developed using Python and StreamLit. Uses algorithms like Logistic Regression, KNN, SVM, Random Forest, Gradient Boosting, and XGBoost to build powerful and accurate models to predict the status of the user (High Risk / Low Risk) with respect to Heart Attack and Breast Cancer.
This repository contains all the Projects I lay my hands on as a Kaggle BIPOC Grantee via Kaggle learn and other sources made available to us. Thanks, Kaggle BIPOC Grant team!!
A machine learning project focused on predicting heart attacks using models like Logistic Regression, Random Forest, and XGBoost, achieving an 83.61% test accuracy. Includes comprehensive EDA, feature engineering, and hyperparameter tuning.
Random Forest is a powerful tool in healthcare, helping predict heart attack fatalities. It analyzes diverse patient data, creating an ensemble of decision trees, each with unique insights. By combining these trees, it offers a more accurate risk assessment for heart attack death, potentially saving lives.
This project involves structuring a heart attack risk dataset from Kaggle into a relational SQL database with multiple tables, setting primary and foreign keys for data integrity, and adjusting data types for optimized analysis and application use.
This study aims to identify distinct subgroups within a dataset of patients with heart attack-related features using unsupervised learning techniques: k-means and Hierarchical
Analyzing heart attack with respect to given feature and building a predictive model for finding out if a person will suffer from a heart attack or not.