Building ML Regression Models using Scikit-Learn
This course walks through building Machine Learning Regression Models using Scikit-Learn library from Python.
This course is aimed at students and practitioners of Data Sciences for building Predictive Analytics models for research and commercial purposes.
Machine Learning can be used to solve prediction problems for classification and regression. In this course, we discuss about using Machine Learning for building Regression Models. We will use Python Language.
In Python, we have many options for building Machine Learning solutions like Tensor Flow, Keras, etc. In this project, we use Scikit Learn.
Scikit Learn provides a comprehensive array of tools for building regression models (Scikit Learn also has tools for solving classification problems). The concepts learnt in this project can be extended to build Neural Networks and other types of models using tools like Tensor Flow or Keras, etc using Python or any other language like R.
Before diving into building Regression Models using Scikit Learn, the course discusses the concepts required to understand the process and mechanism for building such models. As it is easy to understand the concepts working them through Excel, and also it can be experienced visually, we start the course through explanation of the associated concepts using Excel.
This course requires the Learners to have prior knowledge of Computer Software programming, knowledge of programming using Python and also some knowledge of Predictive Analytics.
–
SKILLS YOU WILL GAIN
Programming for Regression using Scikit-Learn
Random Forest Algorithm
Support Vector Machines (SVM) Algorithm
Linear Regression
WHAT YOU WILL LEARN
Programming for Regression using Scikit-Learn
Random Forest Algorithm
Support Vector Machines (SVM) Algorithm
Linear Regression
User Reviews
Be the first to review “Building ML Regression Models using Scikit-Learn”
Original price was: ₹995.00.₹199.00Current price is: ₹199.00.
There are no reviews yet.