Duration 3 days – 21 hrs
Overview
This Python for Data Analytics Training Course is designed to equip participants with practical skills in analyzing, visualizing, and interpreting data using Python. The course focuses on real-world data analytics workflows, from data collection and cleaning to exploratory analysis and visualization.
Participants will gain hands-on experience using key Python libraries such as NumPy, Pandas, Matplotlib, and Seaborn, enabling them to transform raw data into meaningful insights.
By the end of the training, participants will be able to perform end-to-end data analysis and support data-driven decision-making in business environments.
Objectives
- Understand Python fundamentals for data analytics
- Work with structured datasets using Pandas
- Perform data cleaning and preprocessing
- Conduct exploratory data analysis (EDA)
- Create meaningful data visualizations
- Apply basic statistical analysis techniques
- Automate data analysis workflows using Python
- Interpret and communicate data insights effectively
Target Audience
- Data Analysts and Aspiring Data Analysts
- Business Analysts
- IT Professionals handling data
- Finance, Banking, and Operations Professionals
- Anyone interested in data analytics using Python
Prerequisites
- Basic computer literacy
- Familiarity with Excel or data handling is an advantage
- No prior Python experience required (beginner-friendly)
Course Outline
Day 1: Python Fundamentals & Data Handling
Module 1: Introduction to Python for Data Analytics
- Overview of Data Analytics Lifecycle
- Why Python for Data Analytics
- Setting up Python Environment (Anaconda / Jupyter Notebook)
- Introduction to Jupyter Notebook
Module 2: Python Basics
- Variables, Data Types, and Operators
- Control Structures (if-else, loops)
- Functions and Modules
- Working with Lists, Tuples, and Dictionaries
Module 3: Data Handling with Pandas
- Introduction to DataFrames and Series
- Loading Data (CSV, Excel, JSON)
- Data Inspection and Exploration
- Filtering and Selecting Data
Day 2: Data Cleaning & Exploratory Data Analysis
Module 4: Data Cleaning and Preparation
- Handling Missing Values
- Data Transformation and Formatting
- Removing Duplicates
- Feature Engineering Basics
Module 5: Exploratory Data Analysis (EDA)
- Descriptive Statistics
- Grouping and Aggregation
- Identifying Patterns and Trends
- Correlation Analysis
Module 6: Data Visualization
- Visualization Principles
- Creating Charts using Matplotlib
- Advanced Visualization using Seaborn
- Customizing Graphs for Business Reporting
Day 3: Advanced Analytics & Practical Applications
Module 7: Statistical Analysis Basics
- Mean, Median, Mode
- Standard Deviation and Variance
- Distribution Analysis
Module 8: Working with Real-World Data
- Case Study: Business Dataset Analysis
- Data Cleaning to Visualization Workflow
- Generating Insights and Recommendations
Module 9: Automation & Reporting
- Automating Data Tasks with Python
- Exporting Results (Excel, CSV, Reports)
- Creating Reusable Scripts
Module 10: Capstone Exercise
- End-to-End Data Analytics Project
- Data Cleaning, Analysis, Visualization
- Presentation of Insights

