English Online Course

Self-Paced • 30 Hours • Digital Badge

Build practical data analytics skills with Excel, SQL and Tableau.

Data Analytics Essentials is a beginner-friendly course that helps learners gather, transform, query and visualize data, then turn those results into portfolio-ready work.

  • Beginner-Friendly
  • Portfolio-Oriented
  • Career-Focused
  • No Formal Prerequisites
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Course Overview

Learn the fundamental tools of a data analyst

This course introduces the essential workflow of data analytics: investigating data with spreadsheets such as Excel, querying relational databases with SQL, and presenting insights through dashboards and visualizations in Tableau.

By the end of the course, learners begin building an analytics portfolio that demonstrates practical skills in Excel, SQL and Tableau.

Who This Course Is For

Designed for learners who want a practical entry point

A strong fit for high school learners, vocational students, college and university students, IT and non-IT learners, and career changers who want job-relevant analytics foundations.

Students Career Changers IT Learners Non-IT Learners Beginners
E

Excel for data work

Use Excel to gather, inspect, sort, filter, format and calculate data, then build charts and fix issues using functions such as VLOOKUP or XLOOKUP.

S

SQL for structured queries

Learn how relational databases work, write SQL queries, and combine data from multiple tables using joins and related query functions.

T

Tableau for visualization

Create visualizations, understand dashboards and present findings more clearly through modern data storytelling tools.

What You Will Learn

  • Explain how data analytics projects are organized.
  • Perform initial data gathering and investigation using a spreadsheet.
  • Use Excel functions and formulas to transform data for analysis.
  • Obtain and prepare appropriate data for analysis.
  • Perform statistical analysis on data.
  • Formulate SQL queries to extract and combine data from multiple tables.
  • Create visualizations and dashboards using Tableau.
  • Understand ethics and bias in data analytics.
  • Revisit your portfolio and continue building your skillset.

Requirements & Recognition

  • No formal prerequisites.
  • Introduction to Data Science is recommended for beginners.
  • Course delivery: self-paced.
  • Recognition: digital badge.
  • Physical equipment: not required.
  • Recommended next course: Python Essentials 1.
Self-Paced Digital Badge No Prerequisites Next Step: Python Essentials 1

Module Structure

10 modules from raw data to portfolio growth

1. Data Analytics Projects
2. Getting Started with Data Gathering and Investigation
3. Preparing and Cleaning Data for Analysis
4. Transforming Data with Excel
5. Analyze the Data Using Statistics
6. Introduction to Relational Databases and SQL
7. Introduction to Structured Queries
8. Introduction to Tableau
9. Ethics and Bias in Data Analytics
10. Take the Next Steps

Why It Matters

Practical analytics skills that translate into real work

Analytics is valuable across industries. This course helps learners understand how to work with data, how to communicate results clearly, and how to build a visible starting point for future projects and career growth.

Excel SQL Tableau Statistics Dashboards Data Visualization Ethics & Bias Portfolio Building

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Open the English course page

Explore the course and start building practical data analytics skills with Excel, SQL and Tableau.

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Data Analytics Essentials

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