651-905-3729 Microsoft Silver Learning Partner EC Counsel Reseller compTIA Authorized Partner

Python for Data Science Virtual Classroom Live December 08, 2025

Price: $1,700

This course runs for a duration of 3 Days.

The class will run daily from 8 AM CT to 4 PM CT.

Class Location: Virtual LIVE Instructor Led - Virtual Live Classroom.

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Description

Did you know that data professionals spend up to 80% of their time cleaning and preparing data? Python is the industry’s go-to language for streamlining this process, making it an essential tool for anyone looking to analyze, visualize, and derive insights from data.

Master the complete data science tech stack essential for landing a job at the world’s leading companies. This Python for Data Science course takes a structured, in-depth approach, helping you not only learn how to apply data science but also why it matters. Through a carefully balanced mix of real-world case studies and the mathematical theory behind key data science algorithms, you'll develop both the practical skills and foundational understanding needed to excel in the field.

Objectives:

The Python for Data Science course teaches the fundamentals of Python for data analysis and visualization. Participants will work with key libraries like Pandas, NumPy, Matplotlib, and Seaborn to clean, transform, and analyze data. They will create interactive visualizations to communicate insights effectively and apply their skills through hands-on projects using Jupyter Notebook and real-world datasets.

Who Should Attend?

Intermediate Python developers looking to use Python to explore and visualize large or complex data sets

Course Overview

1. Introduction to Python for Data Science

Overview of Python and its role in data science
Setting up Python environments (Anaconda, Jupyter Notebooks)
​Writing and running Python scripts

2. Working with Jupyter Notebooks

Introduction to Jupyter Notebooks
Markdown and code cells
Running, saving, and sharing notebooks

3. Numerical Computing with NumPy

Understanding arrays and their advantages
Creating and manipulating NumPy arrays
Mathematical operations and broadcasting

4. Data Manipulation with Pandas

Understanding Series and DataFrames
Importing and exploring datasets
​Filtering, sorting, and transforming data

5. Data Input and Output (I/O)

Reading and writing Excel files
Working with CSV files
Connecting and querying SQL databases

6. Converting Datasets to Pandas DataFrames

Transforming structured and unstructured data
​Importing datasets from APIs and web sources

7. Advanced Data Handling

Altering specific data using custom functions
Handling missing data – filling, dropping, and imputing values
​Aggregating data using group operations

8. Data Visualization with Matplotlib

Creating fully customizable plots
Implementing custom figures and axis
​Adding labels, legends, and annotations

9. Statistical Data Visualization with Seaborn

Creating scatter plots
Generating distribution plots
​Visualizing summary statistics with box plots

10. Hands-on Projects and Real-World Applications

Data analysis case studies
End-to-end data science project
​Best practices for working with large datasets

 

Prerequisites

Check out our Introduction to Python course if you’re new to Python.

Other Available Dates for this Course

Virtual Classroom Live
August 25, 2025

$1,700.00
  Featured Class 3 Days    8 AM CT - 4 PM CT
view class details and enroll
Virtual Classroom Live
October 20, 2025

$1,700.00
  Featured Class 3 Days    8 AM CT - 4 PM CT
view class details and enroll