Heart Disease prediction using 5 algorithms
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Updated
Nov 4, 2024 - Jupyter Notebook
Heart Disease prediction using 5 algorithms
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Various data structure implementations in Python
This repo is the Machine Learning practice on NHANES dataset of Heart Disease prediction. The ML algorithms like LR, DT, RF, SVM, KNN, NB, MLP, AdaBoost, XGBoost, CatBoost, LightGBM, ExtraTree, etc. The results are good. I also explore the class-balancing (SMOTE) because the original dataset contains only 5% of patient and 95% of healthy record.
MDBOT (Graduation Project)
Practice dataset for regression or classification modelling
This is python for DS and ML bootcamp
model to predict the survival in the Titanic disaster, with 98.8 accuracy.
Panads,Numpy, Scikit learn, Keras, ML Libraries
Decision tree algorithm demonstration
This is the second project in University of Tehran College of Engineering AI course.
Diabetes Dataset This dataset is originally from the N. Inst. of Diabetes & Diges. & Kidney Dis.
This project implements a Disease Prediction System using various machine learning algorithms to predict potential diseases based on user-provided symptoms. The system utilizes a Django web framework to provide a user-friendly interface for inputting symptoms and viewing the predicted disease.
In this repository, I've added all the classes regarding Machine Learning using SKlearn library with Python which I've covered at SMIT
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