Advanced Data Analytics Professional Program

Master data-driven analytics strategies using industry-standard tools, real-world datasets, and hands-on capstone projects to deliver actionable insights and<br> business impact.

Styled Buttons

Professional Certification

Upon successful completion, you will receive an industry-recognized credential.

Industry-Validated Certification

Accredited by the Global Data Science Alliance and recognized by top tech employers worldwide.

Digital Verification

Includes a unique blockchain-verified ID that can be added directly to your LinkedIn profile.

Completion Criteria

Awarded upon submission of all 5 capstone milestones and passing the final technical assessment.

Selva Sheeba B

Data Analyst | BI Trainer | SQL & Python Mentor

With a strong background in data analytics and hands-on industry experience, Selva Sheeba brings a practical, results-driven approach to analytics training, simplifying complex data concepts into job-ready skills.

Focused on converting advanced data analytics techniques into career-ready expertise.

2000+

mentored across multiple platforms

10+

Industry-Relevant Projects Delivered

100+

batches trained across India

3+ years

experience in data analytics and teaching

Course Syllabus

A comprehensive 12-week journey from basics to professional mastery.

  • What is Data Analytics?
  • Importance and real-world applications
  • Roles: Data Analyst vs Data Scientist vs BI Developer
  • Analytics process: Collection → Cleaning → Analysis → Visualization
    → Reporting
  • Descriptive, Diagnostic, Predictive, Prescriptive
  • Structured vs Unstructured Data
  • Basics of Databases and Tables
    Overview of
  • Data Warehousing & ETL concepts
  • Excel, SQL, Python, Power BI overview
  • How tools integrate in a typical data workflow
  • Excel interface and navigation
  • Data types, cell formatting, and shortcuts
  • Basic formulas and cell references (Absolute vs Relative)
  • Remove duplicates, blanks, and errors
  • Text-to-Columns, Flash Fill
  • Data Validation and Conditional Formatting
  • Handling Missing Data
  • Text Functions: LEFT, RIGHT, MID, TRIM, CONCATENATE, TEXTJOIN
  • Date & Time Functions: TODAY, NOW, DATEDIF, YEAR, WEEKDAY
  • Logical Functions: IF, AND, OR, IFERROR, IFS
  • Lookup Functions: VLOOKUP, HLOOKUP, XLOOKUP, INDEX-MATCH
  • Statistical & Math Functions: SUMIF(S), COUNTIF(S), AVERAGEIF(S),
    ROUND, RANK.
  • Sorting and Filtering
  • What-If Analysis (Goal Seek, Scenario Manager)
  • Named Ranges
  • Data Tables
  • Creating Pivot Tables
  • Grouping, Slicers, and Filters
  • Calculated Fields and Items
  • Pivot Charts for Visualization
  • Building interactive dashboards
  • Linking charts and controls
  • What is SQL and why it matters in analytics
  • Understanding relational databases and ER models
  • Tables, Keys, and Relationships
  • SELECT, FROM, WHERE,
    ORDER BY, DISTINCT
  • LIMIT / TOP
  • Aggregate: COUNT, SUM, AVG, MIN, MAX
  • String: UPPER, LOWER, SUBSTRING, TRIM, CONCAT
  • Date: GETDATE, YEAR, MONTH, DATEDIFF, DATEADD
  • Numeric: ROUND, CEILING, FLOOR
  • GROUP BY and HAVING
  • Subtotals and Conditional Aggregations
  • INNER, LEFT, RIGHT, FULL JOIN
  • Self Joins and Cross Joins
  • Subqueries in SELECT and WHERE
  • Common Table Expressions (CTEs)
  • INSERT, UPDATE, DELETE
  • Creating and Altering Tables (DDL basics)
  • Window Functions
  • Case Expressions
  • Pivoting and Unpivoting Data
  • Writing analytical queries from real datasets
  • Building reports and KPIs directly in SQL
  • Python installation and IDEs
  • Variables, Data Types, Type Casting
  • Input, Output, Comments
  • Operators and Expressions
  • If-Else conditions
  • For and While loops
  • Nested loops and break/continue
  • Lists, Tuples, Sets, Dictionaries
  • List and Dictionary Comprehensions
  • Defining and calling functions
  • Arguments, Return values
  • Importing modules and libraries
  • Reading and Writing Files (CSV, Excel, JSON)
  • Exception Handling
  • Arrays vs Lists
  • Array operations, slicing, indexing
  • Statistical and mathematical functions
  • Series and DataFrame objects
  • Importing and exporting data
  • Data cleaning and transformation (dropna, fillna, duplicates)
  • Filtering, sorting, merging, and grouping data
  • Aggregations and pivot tables in Pandas
  • Line, Bar, Scatter, Pie, Histogram, Box plots
  • Customizing plots
  • Correlation and Heatmaps
  • Understanding data distribution
  • Outlier detection
  • Handling missing data
  • Data summarization and reporting
  • Cleaning a dataset, performing EDA, and visualizing insights
  • Power BI components
  • Installing Power BI Desktop
  • Interface and On-Object interaction
  • Connecting to Excel, SQL, and Web sources
  • Power Query basics
  • Data cleaning and shaping: remove columns, replace values, unpivot,
    group by
  • Merge vs Append Queries
  • Relationships between tables
  • Star schema vs Snowflake schema
  • Cardinality and Cross-filter directions
  • What is Report View
  • Basic Visualization In Power BI
  • Formatting of Visuals in Power BI
  • Working with Maps in Power BI
  • Geo Styling m Formatting of Pages & Reports
  • Working with Themes
  • Visual-level, Page-level, Report-level filters & Others
  • Drillthrough and Hierarchies
  • Bookmarks and Selections
  • Sync Slicers & Performance Analyzer
  • Q&A in Power BI
  • Decomposition Tree in PBI
  • Smart Narrative in PBI m Increase & Decrease Feature in PBI
  • Get Quick Insights in PBI
  • First DAX Function in Power BI
  • Date Functions
  • Text Functions
  • Logical Functions
  • Calculated Column vs Measures
  • Filter Functions: CALCULATE Function
  • Time Intelligence Functions
  • DATEADD Function
  • Quick Measures
  • Concatenated List of Values & Star Rating
  • Table Functions
  • What is Power BI Service
  • Creating an Account in PBI Service
  • Publishing the Report to PBI Service
  • Sharing & Collaboration of Power BI reports
  • Exporting the Report
    Power BI Service Settings
  •  Automatically Refresh PBI Reports
    Dashboard in Power BI
  • Creating a Dashboard in PBI Service
  •  Dashboard Options
  • End-to-end Dashboard using combined sources
    KPI design and storytelling with data
Scroll to Top