Data analytics
Module 1: Introduction to Data Analytics
Overview of Data Analytics & AI
Real-world applications and career scope
Module 2: Statistics & Probability for Data Analysis
Descriptive & Inferential Statistics
Probability distributions and hypothesis testing
Module 3: Core Python for Data Science
Python basics and syntax
Functions, loops, and data structures
Module 4: Advanced Excel for Analytics
Pivot tables, charts, and formulas
Data cleaning and visualization in Excel
Module 5: SQL for Data Management
Writing queries and joins
Aggregations, subqueries, and optimization
Module 6: Data Visualization Tools
Tableau fundamentals and dashboards
Storytelling with data
Module 7: Python Libraries for Analysis
NumPy: arrays and operations
Pandas: data frames and manipulation
Matplotlib & Seaborn: data visualization
Module 8: AI and Data Analytics Integration
Basics of AI and Machine Learning
Predictive modeling and insights
Module 9: Capstone Project
End-to-end data analysis project using Python, SQL, and Tableau
Presenting results with visual dashboards

