Udemy

2025 | Pandas Bootcamp | Data Analysis with Pandas Python3

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  • 35,872 Students
  • Updated 10/2025
  • Certificate Available
4.4
(258 Ratings)
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Course Information

Registration period
Year-round Recruitment
Course Level
Study Mode
Duration
11 Hour(s) 38 Minute(s)
Language
English
Taught by
Faisal Zamir, Jafri Code, Pro Python Support
Certificate
  • Available
  • *The delivery and distribution of the certificate are subject to the policies and arrangements of the course provider.
Rating
4.4
(258 Ratings)
2 views

Course Overview

2025 | Pandas Bootcamp | Data Analysis with Pandas Python3

Roll Plays | Master Data Analysis with Pandas Python3 - From Beginner to Advanced. Enroll in The Pandas Bootcamp today!

Introduction to The Pandas Bootcamp | Data Analysis with Pandas Python3

Python is not just a programming language—it’s the future of technology. And if you want to truly unlock the power of data science, you need to master Pandas, the #1 Python library for data analysis.

This Pandas Bootcamp is designed to take you step by step from the basics of Python programming with Pandas to advanced techniques used in data science, finance, AI, and machine learning. Whether you’re just starting your journey or upgrading your career skills, this course will give you the practical knowledge to confidently use Python Pandas NumPy workflows to clean, analyze, and visualize data.

If you’ve admired instructors like Angela Yu or practical coding mentors like Lazy Programmer, this bootcamp follows the same approach: clear explanations, 100% hands-on coding, and real-world applications.

Stop waiting. Start building your future with Python for data analysis today.

Why enroll in this Pandas Bootcamp?

  • Learn mastering Python, Pandas, NumPy for absolute beginners in a structured, project-focused way.

  • Gain skills directly applicable to data science, python for finance, research, and analytics jobs.

  • Learn to handle large datasets with confidence—data cleaning, grouping, aggregation, visualization.

  • Build confidence in the NumPy stack (NumPy, Pandas, Matplotlib, SciPy) with practical examples.

  • Go beyond theory: apply knowledge to real-world tasks, from analyzing financial data to preparing ML-ready datasets.

This isn’t just a course — it’s your roadmap to becoming a job-ready data analyst or data scientist.

What you’ll learn inside

1. Introduction to Pandas
What is Pandas, why we need it, installation, and your first Pandas program.

2. Data Structures in Pandas
Series, DataFrame, and Panels with operations, attributes, and methods.

3. Descriptive & Inferential Statistics
Understand your data with descriptive stats and probability functions.

4. Function Applications
Element-wise, row/column-wise, and table-wise operations.

5. Reindexing & Sorting
Efficient ways to reshape and organize your datasets.

6. String Methods for Data Cleaning
From lower/upper/title formatting to splitting, joining, replacing, and searching text.

7. Customization
Set display options, adjust data types, and fine-tune your workflow.

8. Indexing & Selection
Label-based, integer-based, Boolean indexing, and .query() for advanced filtering.

9. Window Functions
Rolling, expanding, exponentially weighted windows for moving averages and time series.

10. Groupby Operations
Split, apply, and combine — aggregate, filter, and transform your data with power.

11. Categorical Data
Add, rename, reorder categories, analyze distributions, and prepare categorical features.

12. Visualization with Pandas
Line, bar, scatter, box, histogram, area plots, density plots, and heatmaps.

13. Input/Output Tools
Read and write CSV, Excel, JSON with Pandas — integrate with multiple data sources.

14. Date & Time Functions
Working with datetime, date ranges, timestamp formatting, and time-based indexing.

Who is this course for?

  • Students wanting to move from beginner to confident data analyst.

  • Business professionals who need Python for data analysis or Python for finance.

  • Aspiring data scientists preparing for AI/ML/DL fields.

  • Programmers who want to add Pandas and the NumPy stack to their skillset.

  • Anyone aiming to use python pandas numpy for solving real-world problems.

The Pandas Bootcamp Advantage

  • Downloadable source code + study materials.

  • Exercises & assignments with solutions.

  • Step-by-step instructor guidance (Faisal Zamir).

  • Lifetime access and support.

  • Certificate of completion to showcase your skills.

Final Words

Every dataset hides insights. With Pandas, you’ll learn to uncover them. Whether it’s finance, business intelligence, research, or machine learning — Pandas is the foundation.

Don’t just “watch tutorials” — take action and enroll today. Your career in Python data science starts here.
Become the data professional the world needs with Pandas and Python programming.

See you inside,
Faisal Zamir

Course Content

  • 22 section(s)
  • 137 lecture(s)
  • Section 1 Course Overview
  • Section 2 Course Last Update 27 October, 2025
  • Section 3 Prerequisite Lectures before Python Pandas
  • Section 4 Python Pandas | Chapter 01
  • Section 5 Python Pandas | Chapter 02
  • Section 6 Python Pandas | Chapter 03
  • Section 7 Python Pandas | Chapter 04
  • Section 8 Python Pandas | Chapter 05
  • Section 9 Python Pandas | Chapter 06
  • Section 10 Python Pandas | Chapter 07
  • Section 11 Python Pandas | Chapter 08
  • Section 12 Python Pandas | Chapter 09
  • Section 13 Python Pandas | Chapter 10
  • Section 14 Pandas Projects
  • Section 15 Python Pandas | Chapter 11
  • Section 16 Python Pandas | Chapter 12
  • Section 17 Python Pandas | Chapter 13
  • Section 18 Python Pandas | Chapter 14
  • Section 19 Python Pandas | Chapter 15
  • Section 20 Mini Projects
  • Section 21 Updated Section
  • Section 22 Practice Test 2024

What You’ll Learn

  • Understand the basics of Pandas, its data structures, and how to install it.
  • Work with different types of data structures in Pandas.
  • Use descriptive and inferential statistics methods to analyze data.
  • Apply element-wise, row or column-wise, and table-wise function application on data.
  • Reindex, sort, and iterate through data using Pandas.
  • Use string methods for data cleaning and manipulation.
  • Customize display options and data types in Pandas.
  • Perform indexing and selecting operations based on labels, integers, or Boolean values.
  • Use window functions such as rolling, expanding, and ewm for data analysis.
  • Group data based on single or multiple columns, apply aggregation functions, and filter or transform data.
  • Work with categorical data, perform methods such as reorder, remove, add, and rename categories, and visualize categorical data using Pandas.
  • Visualize data using different types of plots such as line, bar, histogram, scatter, box, area, and heatmap.
  • Read and write data in different formats such as CSV, Excel, and JSON using Pandas.
  • Work with sparse data and understand its features.


Reviews

  • M
    Macha Venkata Pawan Kalyan
    5.0

    clearly and neatly explaining so that anyone can understand easily

  • S
    Sowmya V
    2.0

    ok

  • H
    Hari Chandra Prasad
    5.0

    Nice explanation

  • V
    Vân Anh Đặng
    5.0

    thanks for this leason. I learned more about Python and it really help for my carreer path. Thanks so much

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