AI-Assisted Data Analytics Program
About Course
About Course
The AI-Assisted Data Analytics Program is designed to prepare learners for careers in Data Analytics, Business Intelligence, Reporting, and Data Visualization. The program focuses on the most in-demand analytics skills required by organizations today, including SQL, Excel, Python, Data Visualization, and Power BI.
Students will learn how to collect, clean, transform, analyze, and visualize data to generate meaningful business insights. The program also introduces AI-assisted analytics workflows, enabling learners to leverage modern AI tools to improve productivity, automate repetitive tasks, and enhance analytical decision-making.
The curriculum emphasizes hands-on learning through real-world datasets, business case studies, dashboard development, portfolio creation, and interview preparation to ensure learners become industry-ready Data Analysts.
Who Should Enroll
-
Fresh Graduates
-
Engineering Students
-
BCA / BCS Graduates
-
BBA / BCom Graduates
-
MBA Aspirants
-
Career Switchers
-
Aspiring Data Analysts
-
MIS Professionals
-
Reporting Analysts
-
Business Analysts
Module 1 – Analytics Foundations & Excel
Topics Covered
Introduction to Data Analytics
-
What is Data Analytics?
-
Data Analytics Lifecycle
-
Types of Analytics
-
Descriptive Analytics
-
Diagnostic Analytics
-
Predictive Analytics
-
Prescriptive Analytics
-
-
Business Intelligence Fundamentals
-
Data-Driven Decision Making
Business Analytics Fundamentals
-
KPIs and Business Metrics
-
Metrics vs Dimensions
-
Revenue Analysis
-
Profitability Analysis
-
Customer Analytics
-
Customer Retention
-
Customer Churn
-
Conversion Rate Analysis
-
Executive Reporting Concepts
-
Business Performance Measurement
Excel Fundamentals
-
Excel Interface
-
Data Entry & Formatting
-
Cell Referencing
-
Formulas & Functions
-
Data Validation
-
Conditional Formatting
Advanced Excel
-
Lookup Functions
-
VLOOKUP
-
HLOOKUP
-
XLOOKUP
-
INDEX MATCH
-
Data Cleaning Techniques
-
Data Transformation
Data Analysis using Excel
-
Sorting & Filtering
-
Pivot Tables
-
Pivot Charts
-
Slicers
-
What-If Analysis
-
Scenario Analysis
Tools & Technologies Covered
-
Microsoft Excel
-
ChatGPT
-
Gemini
Expected Outcomes
Students will be able to:
-
Understand analytics and business intelligence concepts
-
Analyze business data using Excel
-
Create reports and dashboards
-
Measure business performance using KPIs
-
Utilize AI tools to improve analytics workflows
Module 2 – SQL for Data Analytics
Topics Covered
Database Fundamentals
-
Introduction to Databases
-
Relational Database Concepts
-
Database Design Principles
-
Data Warehousing Concepts
SQL Fundamentals
-
Database Objects
-
Tables
-
Data Types
-
Constraints
-
CRUD Operations
-
Data Retrieval
Querying Data
-
Filtering Data
-
Sorting Data
-
Aliases
-
Limiting Results
Advanced SQL
-
Inner Join
-
Left Join
-
Right Join
-
Full Join
-
Aggregations
-
Group By
-
Having Clause
-
Subqueries
Analytical SQL
-
Common Table Expressions (CTEs)
-
Window Functions
-
Ranking Functions
-
Running Totals
-
Analytical Queries
-
Reporting Queries
Business Reporting with SQL
-
Sales Analytics Queries
-
Customer Analytics Queries
-
HR Analytics Queries
-
Financial Reporting Queries
SQL Optimization
-
Indexes
-
Query Optimization
-
Execution Concepts
-
Best Practices
AI-Assisted SQL Development
-
SQL Query Generation
-
Query Optimization
-
SQL Debugging
-
Reporting Query Creation
Hands-on
-
Retail Sales Analytics
-
HR Analytics Reporting
-
Banking Analytics Reporting
-
Customer Analytics Queries
-
E-Commerce Analytics Reporting
Tools & Technologies Covered
-
PostgreSQL
-
SQL
-
pgAdmin
-
ChatGPT
Expected Outcomes
Students will be able to:
-
Design and query relational databases
-
Write complex SQL queries
-
Generate business reports
-
Analyze data using SQL
-
Optimize database queries
Module 3 – Python for Data Analytics
Topics Covered
Python Fundamentals
-
Python Introduction
-
Variables & Data Types
-
Operators
-
Conditional Statements
-
Loops
-
Functions
Statistics for Data Analytics
-
Mean
-
Median
-
Mode
-
Variance
-
Standard Deviation
-
Quartiles
-
Percentiles
-
Correlation
-
Covariance
-
Probability Basics
-
Sampling Concepts
-
Outlier Detection
NumPy
-
Arrays
-
Array Operations
-
Mathematical Functions
-
Statistical Functions
-
Data Manipulation
Pandas Fundamentals
-
Series
-
DataFrames
-
Importing Data
-
Exporting Data
Data Cleaning & Preparation
-
Missing Value Handling
-
Duplicate Removal
-
Data Formatting
-
Data Transformation
-
Data Aggregation
Data Analysis Techniques
-
Filtering Data
-
Sorting Data
-
Grouping Data
-
Merging Datasets
-
Exploratory Data Analysis
AI-Assisted Data Analysis
-
Data Exploration using AI
-
Python Code Generation
-
Data Cleaning Assistance
-
Insight Generation using AI
Hands-on
-
Customer Analytics Project
-
Retail Analytics Project
-
HR Analytics Project
-
Financial Analytics Project
-
Data Cleaning Project
Tools & Technologies Covered
-
Python
-
Jupyter Notebook
-
NumPy
-
Pandas
-
ChatGPT
Expected Outcomes
Students will be able to:
-
Analyze business data using Python
-
Apply statistical concepts to analytics
-
Clean and prepare datasets
-
Perform exploratory data analysis
-
Generate meaningful business insights
Module 4 – Data Visualization with Matplotlib & Seaborn
Topics Covered
Data Visualization Fundamentals
-
Importance of Data Visualization
-
Data Storytelling
-
Visualization Best Practices
-
Chart Selection Techniques
Matplotlib
-
Line Charts
-
Bar Charts
-
Pie Charts
-
Histograms
-
Scatter Plots
-
Multi-Series Charts
-
Chart Customization
Seaborn
-
Distribution Plots
-
Box Plots
-
Violin Plots
-
Pair Plots
-
Heatmaps
-
Correlation Analysis
Business Reporting Visualizations
-
KPI Reporting
-
Trend Analysis
-
Performance Analysis
-
Customer Analytics Visualization
Dashboard Visualization Design
-
Dashboard Layout Principles
-
Executive Reporting Design
-
Storytelling Dashboards
AI-Assisted Visualization
-
Chart Recommendations
-
Visualization Optimization
-
Automated Insight Generation
Hands-on
-
Sales Trend Analysis
-
Customer Behavior Analysis
-
Executive KPI Visualization
-
Business Performance Dashboard
Tools & Technologies Covered
-
Python
-
Matplotlib
-
Seaborn
Expected Outcomes
Students will be able to:
-
Create effective visualizations
-
Build analytical reports
-
Present business insights visually
-
Apply data storytelling techniques
Module 5 – Power BI Development
Topics Covered
Power BI Fundamentals
-
Power BI Architecture
-
Power BI Desktop
-
Data Sources
-
Data Loading Techniques
Power Query
-
Data Cleaning
-
Data Transformation
-
Data Preparation
-
Data Shaping
Data Modeling
-
Fact Tables
-
Dimension Tables
-
Star Schema
-
Snowflake Schema
-
Relationships
-
Model Optimization
DAX Fundamentals
-
Measures
-
Calculated Columns
-
KPIs
-
Basic DAX Functions
Advanced DAX
-
CALCULATE
-
FILTER
-
ALL
-
RELATED
-
RELATEDTABLE
-
Time Intelligence Functions
-
Running Totals
-
Dynamic Measures
Dashboard Development
-
Interactive Dashboards
-
Filters & Slicers
-
Drill Down
-
Drill Through
-
Dashboard Navigation
Advanced Power BI
-
Row-Level Security
-
Incremental Refresh
-
Report Publishing
-
Power BI Service
-
Workspace Management
AI Features in Power BI
-
Smart Narratives
-
AI Visuals
-
Forecasting
-
Key Influencers
-
Decomposition Tree
AI-Assisted Reporting
-
Dashboard Design using AI
-
DAX Generation using AI
-
Business Insight Generation
-
Executive Reporting Support
Hands-on
-
Sales Dashboard
-
HR Dashboard
-
Finance Dashboard
-
Retail Analytics Dashboard
-
Executive Reporting Dashboard
-
Customer Analytics Dashboard
Tools & Technologies Covered
-
Power BI Desktop
-
Power BI Service
-
DAX
-
Power Query
Expected Outcomes
Students will be able to:
-
Build professional Power BI dashboards
-
Create business intelligence reports
-
Apply advanced DAX techniques
-
Develop interactive reporting solutions
-
Deliver actionable business insights
Module 6 – Business Analytics Projects & Placement Readiness
Topics Covered
Real-World Analytics Projects
Working with Real Datasets
-
Amazon Sales Dataset
-
Blinkit Dataset
-
Retail Sales Dataset
-
HR Attrition Dataset
-
Financial Dataset
-
E-Commerce Dataset
End-to-End Analytics Workflow
-
Data Collection
-
Data Cleaning
-
Data Analysis
-
Data Visualization
-
Dashboard Development
-
Business Recommendations
Portfolio Development
-
GitHub Portfolio
-
Power BI Portfolio
-
Project Documentation
-
Case Study Creation
Placement Readiness Program
-
Resume Building
-
LinkedIn Profile Optimization
-
SQL Interview Preparation
-
Power BI Interview Preparation
-
Python Interview Preparation
-
Mock Interviews
-
Business Case Discussions
AI-Assisted Analytics Workflow
-
AI-Based Insight Generation
-
AI-Assisted Report Writing
-
Presentation Preparation using AI
-
Executive Summary Creation
Hands-on
Capstone Projects
-
Retail Sales Analytics Dashboard
-
Customer Churn Analysis
-
HR Attrition Dashboard
-
Financial Performance Dashboard
-
E-Commerce Analytics Dashboard
-
Executive Business Intelligence Dashboard
-
Supply Chain Analytics Dashboard
Tools & Technologies Covered
-
SQL
-
PostgreSQL
-
Python
-
NumPy
-
Pandas
-
Matplotlib
-
Seaborn
-
Power BI
-
Excel
-
GitHub
-
ChatGPT
-
Gemini
Expected Outcomes
Students will be able to:
-
Execute end-to-end analytics projects
-
Build professional analytics portfolios
-
Present business insights effectively
-
Apply analytical thinking to business problems
-
Prepare confidently for Data Analyst interviews
Tools & Technologies Covered Across the Program
-
Microsoft Excel
-
PostgreSQL
-
SQL
-
Python
-
NumPy
-
Pandas
-
Jupyter Notebook
-
Matplotlib
-
Seaborn
-
Power BI Desktop
-
Power BI Service
-
DAX
-
Power Query
-
GitHub
-
ChatGPT
-
Gemini
Career Opportunities
Upon successful completion of the program, learners can pursue roles such as:
-
Data Analyst
-
Business Analyst
-
MIS Analyst
-
Reporting Analyst
-
Power BI Developer
-
BI Analyst
-
Operations Analyst
-
Data Visualization Analyst
-
Analytics Associate
-
Junior Data Analyst
-
Business Intelligence Analyst
Expected Outcomes of the Program
By the end of this program, learners will be able to:
-
Analyze business data using SQL and Python
-
Apply statistical techniques for data analysis
-
Clean and transform datasets effectively
-
Create impactful visualizations using Python
-
Build professional Power BI dashboards
-
Develop business intelligence reports
-
Generate actionable business insights
-
Utilize AI tools to improve analytics workflows
-
Build a professional analytics portfolio
-
Prepare confidently for Data Analyst and Business Intelligence careers
AI-Assisted Data Analytics Program
Master SQL, Python, Power BI & Business Analytics to become an Industry-Ready Data Analyst.
Course Content
SQL for Data Analyst
-
Database & SQL Fundamentals
-
Data Retrieval Using SELECT (Core Foundation)
-
Aggregate Functions & Grouping
-
Joins (Very Important for Analysts)
-
Subqueries & Nested Queries
-
Advanced Filtering & Case Statements
-
Date & String Functions
-
Data Cleaning & Transformation
-
Window Functions (Advanced – High Interview Value)
-
Views & Data Preparation



