Course Content
Introduction
Exploratory Data Analysis
Model Building
Foundations of ML
Supervised Learning
Unsupervised Learning
Conclusion
2
Successful Students
2 hours
Course length
9
Enrollments
English
In this course of machine learning for data analysis, you will experience the life cycle of data exploration to build ML learning model, resembling the work of a data scientist. You will learn about supervised and unsupervised machine learning with industry use cases and practical examples using Jupyter notebooks.
In this course of machine learning for data analysis, you will be able to understand machine learning, various machine learning algorithms, practical use cases from banking and telecom industry, five steps of exploratory data analysis and walk through of Python code using Jupyter notebooks.
This course of machine learning is of intermediate level in terms of complexity and useful for those who want to take next level in their data science career. If you are beginner who wants to kick start their journey to become data scientist, check out data science foundation course and python course on edilume
In this course of machine learning for data analysis, we will cover following topics
Before taking this course of machine learning for data analysis, it is good to take data science foundation course on edilume. In addition, basic working experience with data analysis and using python is recommended. Here is a basic python foundation course to get you started.
ByCreated Md Iqubanul Hasan (2022-10-17 07:34:56)
Nice