Heart Disease Classification Using Machine Learning

Heart Disease Classification Using Machine Learning Techniques including Logistic Regression, KNN, Naive Bayes Classification, Support Vector, Decision Tree and Random Forest Classification

Advanced 5(9 Ratings) 420 Students enrolled English
Created by Er. Karan Arora
Last updated Tue, 06-Jun-2023
+ View more
Course overview

Heart disease is one of the Leading reason for death around the world. In which machine learningis a method that predicts the emerging prospects of Heart Disease. Machine learning is used in taking care of numerous issues in information science. The basic utilization of machine learning is the forecast of a result dependent on already existing information. The machine takes the designs from the current dataset, and it is applied on an obscure dataset to foresee the result. Order method in AI is usually used for expectation. Some arrangement calculations foresee with acceptable precision, while others show a restricted exactness. Here, we play out an order dependent on various arrangement calculations like K-Nearest Neighbour, Support Vector Machine, Naïve Bayes, logistic regression, decision tree algorithm and random forest algorithm

What will i learn?

Requirements
  • python
  • scikit learn
  • data science
  • machine learning
Curriculum for this course
3 Lessons 00:00:00 Hours
Classification Project
1 Lessons 00:00:00 Hours
  • Heart Disease Classification using Scikit-Learn
    .
Download
2 Lessons 00:00:00 Hours
  • Download Jupyter Notebook
    .
  • Download Dataset
    .
+ View more
Other related courses
About instructor

Er. Karan Arora

Founder & CEO - Itronix Solutions.

1042 Reviews | 28251 Students | 106 Courses
Python Data Science Machine Learning Artificial Intelligence Internet of Things Embedded Systems Linux System Programming Device Drivers Bootloaders Kernel Programming CCNA CCNP Digital Marketing PLC Automation
Student feedback
5
9 Reviews
  • (1)
  • (0)
  • (0)
  • (0)
  • (8)

Reviews

  • Dileswar Sahu
    very nice
  • HAREESH MAHANT
  • PRABHAKARAN K
    5
  • MD AZHAR ISLAM
    It was a great learning experience for me thank you very much
  • Priyanka Wankhede
  • kazi Nowshad Hasan Ratul
  • Saravana pperumal
  • Arjun Pandey
  • Saugat Khadka
    Very good
Free
Includes: