Master Pandas for Data Handling [2025]
Master Pandas for Data Handling [2025]
Learn to Master the worlds most powerful software for Advanced Data Handling
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What you'll learn
- Master the Pandas library for advanced Data Handling
- Advanced Data Preparation with Pandas, including model-based imputation of missing data
- Make Data Visualizations with Pandas, Matplotlib, and Seaborn
- File handling with the Pandas library
- Use the .concat(), .join(), and .merge() functions/methods to combine Pandas DataFrame objects
- Scale and Standardize data
- The fundamental concepts and language of the Pandas DataFrame object
- Make advanced Data Descriptions with Pandas, including cross-tabulations, groupings, and descriptive statistics
- All aspects of changing, modifying and selecting Data from a Pandas DataFrame
- Cloud Computing - use Anaconda Cloud Notebook (Jupyter Notebook). Learn to use Cloud Computing resources
- Optional: use Anaconda Distribution's Jupyter Notebook and Conda package management system
This video course will teach you to master Pandas, the most powerful, efficient, and useful Data Handling library in existence.
You will learn to master the Pandas library and to use powerful Data Handling techniques with the intention of making you able to use the powerful Pandas library for Data Science and Machine Learning Data Handling tasks.
With the Pandas library you get a fast, powerful, flexible and easy to use, open-source data analysis and data manipulation tool, directly usable with the Python programming language and able to use any data source with the incredibly powerful Pandas DataFrame object.
This course is the course we ourselves would want to be able to enroll in if we could time-travel and become new students. In our opinion, this course is the best course to learn to Master Pandas and Data Handling.
Enroll now to receive 12+ hours of detailed video tutorials with manually edited English captions, and a certificate of completion after completing the course!
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