This course will teach you how to leverage the power of Python and artificial intelligence to create and test hypothesis. We'll start for the ground up, learning some basic Python for data science before diving into some of its richer applications to test our created hypothesis. We'll learn some of the most important libraries for exploratory data analysis (EDA) and machine learning such as Numpy, Pandas, and Sci-kit learn. After learning some of the theory (and math) behind linear regression, we'll go through and full pipeline of reading data, cleaning it, and applying a regression model to estimate the progression of diabetes. By the end of the course, you'll apply a classification model to predict the presence/absence of heart disease from a patient's health data.

Introduction to Data Science and scikit-learn in Python

Introduction to Data Science and scikit-learn in Python
This course is part of AI for Scientific Research Specialization

Instructor: LearnQuest Network
Access provided by Jawaharlal Nehru University
11,702 already enrolled
59 reviews
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What you'll learn
Employ artificial intelligence techniques to test hypothesis in Python
Apply a machine learning model combining Numpy, Pandas, and Scikit-Learn
Skills you'll gain
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Reviewed on Apr 4, 2022
The topic is great, and the linkage and references provided are valuable.The hands-on quiz should be supported with better instructions and descriptions regarding what to do.
Reviewed on Aug 5, 2025
Get you started with the basics. Explanation is great but some topics are only covered by referring you to the documentation. Lab solutions helped fill knowledge gaps not covered in lectures.
Reviewed on Nov 27, 2021
Good introduction. A bit too short for a 4-week course. The autograder is not very good, and some solutions are wrong.




