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Data Analysis with Python Pandas and Jupyter Notebook
Rating: 4.1 out of 5(16 ratings)
827 students

Data Analysis with Python Pandas and Jupyter Notebook

Mastering Data Manipulation and Analysis with Pandas in Jupyter Notebook
Created by247 Learning
Last updated 3/2026
English

What you'll learn

  • install Python on both Windows and macOS systems.
  • Create and Manage Virtual Environments
  • Install and set up Jupyter Notebook and navigate its interface efficiently.
  • Create Pandas Series from lists and dictionaries and understand their structure and functionality.
  • Access data in Series using labels and positions, and perform slicing operations.
  • Create and manipulate DataFrames from various data structures such as dictionaries and lists of dictionaries.
  • Efficiently access and manipulate data within DataFrames.
  • Conduct thorough data inspections and clean data to prepare it for analysis.
  • Build confidence in your ability to handle complex data analysis tasks independently.
  • Apply data transformation techniques to reshape and modify datasets.
  • Create compelling visualizations of data using Pandas

Course content

5 sections35 lectures2h 8m total length
  • Introduction0:43
  • What is Data Analysis1:59
  • Understanding the role of data analysis in decision-making2:22
  • Overview of Python tools for data analysis2:44
  • What is Pandas and why it's essential for data analysis2:22

Requirements

  • Basic Computer Skills
  • Understanding of Basic Programming Concepts (Optional)
  • A Windows or macOS computer with internet access.

Description

Unlock the full potential of data analysis and visualization with Data Analysis with Python Pandas and Jupyter Notebook

This course is  designed to take you from the very basics of Python setup to  financial data insights, equipping you with the skills necessary to thrive in the data-driven world.

Introduction to Pandas

We’ll start by understanding what Python is and how to install it on both Windows and macOS platforms. You'll learn the importance of virtual environments, how to create and activate them, ensuring a clean and organized workspace for your projects.

We'll then introduce you to Jupyter Notebook, a powerful tool that enhances the data analysis experience. You’ll learn how to install Pandas and Jupyter Notebook within your virtual environment, start the Jupyter Notebook server, and navigate its intuitive interface. By the end of this section, you'll be proficient in creating and managing notebooks, setting the stage for your data analysis journey.

Pandas Data Structures

With your environment set up, we dive into the heart of Pandas: its core data structures. You'll discover the power of Series and DataFrame, the fundamental building blocks of data manipulation in Pandas. You'll learn to create Series from lists and dictionaries, access data using labels and positions, and perform slicing operations.

The course then progresses to DataFrames, where you'll master creating DataFrames from dictionaries and lists of dictionaries. You'll gain practical experience in accessing and manipulating data within DataFrames, preparing you for more complex data analysis tasks.


Conclusion

By the end of this course, you will have a deep understanding of Pandas and its capabilities in data analysis and visualization. You'll be equipped with the skills to handle and analyze complex datasets, transforming them into actionable insights. Whether you're a beginner or looking to enhance your data science skills, this course will empower you to harness the power of Pandas for financial data analysis and beyond. Embark on this transformative learning journey and become a proficient data analyst with Pandas.



Who this course is for:

  • Aspiring Data Analysts
  • Beginners in Programming and Data Science
  • Professionals Looking to Upskill
  • Students and Academics
  • Business Analysts and Managers
  • Anyone Interested in Data