Data Science
Beginner
Jupyter Notebooks
A comprehensive, beginner-friendly guide to learning Jupyter Notebooks. Master the fundamentals and build real-world projects.
20 chapters
1h 40m
4.7
(181)
What you'll learn
- Introduction to Jupyter Notebooks
- Installing Python, Jupyter, and VS Code
- Understanding the Jupyter Interface
- Running Python Code in Jupyter
- Markdown Cells and Documentation
- Variables, Data Types, and Input Handling
- Working with Functions and Modules
- Data Structures in Jupyter
Course content
20 chapters · 1h 40m- 1 Introduction to Jupyter Notebooks 5 min
- 2 Installing Python, Jupyter, and VS Code 5 min
- 3 Understanding the Jupyter Interface 5 min
- 4 Running Python Code in Jupyter 5 min
- 5 Markdown Cells and Documentation 5 min
- 6 Variables, Data Types, and Input Handling 5 min
- 7 Working with Functions and Modules 5 min
- 8 Data Structures in Jupyter 5 min
- 9 File Handling and Notebook Management 5 min
- 10 Data Analysis with Pandas in Jupyter 5 min
- 11 NumPy Integration in Jupyter 5 min
- 12 Data Visualization in Jupyter 5 min
- 13 Interactive Widgets in Jupyter 5 min
- 14 Machine Learning Workflows in Jupyter 5 min
- 15 Notebook Extensions and Productivity Tools 5 min
- 16 Sharing and Exporting Notebooks 5 min
- 17 JupyterLab and Advanced Features 5 min
- 18 Performance Optimization in Jupyter 5 min
- 19 Jupyter Notebook Interview Preparation 5 min
- 20 Final Projects and Real-World Applications 5 min