Heart Disease Prediction Using Machine Learning | End-to-End ML Project in Python
Автор: Data expert
Загружено: 2026-01-12
Просмотров: 3
Описание:
In this video, I demonstrate an end-to-end Machine Learning modeling project on the Heart Disease dataset using Python.
This project is designed for beginners, intermediate learners, and aspiring data scientists who want to understand how Machine Learning is applied in real-world healthcare problems.
🔍 What You Will Learn in This Video
✔ Understanding the Heart Disease dataset
✔ Data cleaning and preprocessing
✔ Exploratory Data Analysis (EDA)
✔ Feature selection & scaling
✔ Implementation of multiple Machine Learning models
✔ Model comparison and evaluation
✔ Accuracy, confusion matrix & performance metrics
✔ Selecting the best model for prediction
🤖 Machine Learning Models Covered
Logistic Regression
K-Nearest Neighbors (KNN)
Decision Tree
Random Forest
Support Vector Machine (SVM)
Naive Bayes
Gradient Boosting / XGBoost (if used)
🧠 Why This Project is Important
Heart disease is one of the leading causes of death worldwide. Using Machine Learning, we can:
Predict heart disease at an early stage
Assist doctors in decision-making
Build intelligent healthcare systems
🛠 Tools & Technologies Used
Python
Pandas, NumPy
Matplotlib, Seaborn
Scikit-Learn
👨💻 Who Should Watch This Video?
Data Science Beginners
Machine Learning Students
Python Developers
Healthcare Analytics Enthusiasts
Final Year Project Students
📌 Dataset Used: Heart Disease Dataset
📌 Language: Python
📌 Category: Machine Learning / Data Science
If you found this video helpful, LIKE 👍, SHARE 🔁, and SUBSCRIBE 🔔 for more Machine Learning and Data Science projects.
#MachineLearning #HeartDiseasePrediction
#DataScience
#PythonML #HealthcareAI
#MLProject
#ScikitLearn
#AIinHealthcare
#PythonTutorial
#PredictiveAnalytics
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GitHub link----https://github.com/imtiaz231
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