How To Become A Data Analyst: Toolkit 101
Published 8/2025
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 1.22 GB | Duration: 2h 44m
Published 8/2025
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 1.22 GB | Duration: 2h 44m
Master Excel, Power BI, Tableau & Python by solving the same real-world problems across all four tools.
What you'll learn
Learn about basic data analysis tools such as Excel, PowerBI, Tableau, and Python
Understand how the various tools differ in their specialties
Be able to derive actional business insights from a given dataset
Understand how to do effective data visualisation
Experience a Pre-Employment Sample Technical Test for Data Analysts
Requirements
Interest to become a Data Analyst
Description
Want to stand out as a data analyst? This course gives you hands-on experience with Excel, Power BI, Tableau, and Python — showing you exactly how to answer real business questions in each tool.Instead of learning them in isolation, you’ll tackle the same set of real-world problems in all four platforms, so you can compare methods, understand strengths and limitations, and decide which tool is best for the task at hand.You’ll learn how to:Identify top-performing and underperforming tenants from raw sales dataCreate insightful charts to visualize customer trendsCalculate key metrics like total daily footfall, total revenue, and total profitsPresent findings in clear, compelling dashboards and reports that stand out to employersTo make your preparation even more practical, you’ll also get a sample technical test — just like the ones used in real analyst job interviews — so you can put your skills to the test before the big day.By the end of this course, you’ll have a multi-tool data analytics skillset you can confidently showcase in portfolios, interviews, and on the job. Whether you’re aiming for your first analyst role or leveling up your current career, this course will give you the skills, practice, and confidence to impress employers and land that next opportunity. You’ll be able to handle complex datasets, communicate insights clearly, and make data-driven decisions with measurable impact.Course Image Photo by Nick Morrison on Unsplash — many thanks to you!
Overview
Section 1: General Course Information
Lecture 1 Course Introduction
Section 2: Excel
Lecture 2 Setting up Excel
Lecture 3 COUNTA()
Lecture 4 Sorting in Excel
Lecture 5 Ploting Graph in Excel
Lecture 6 SUM()
Lecture 7 Pivot Tables in Excel
Lecture 8 Pivot Charts in Excel
Section 3: PowerBI
Lecture 9 Basic Introduction to PowerBI - Downloading, Setup, and Loading the Dataset
Lecture 10 Quick Power BI Insight: Counting Tenants in Seconds
Lecture 11 Finding Top/Worst Performing Tenants with Power BI
Lecture 12 Visualizing Footfall Data for Smart Retail Insights
Lecture 13 SUMMING in PowerBI
Lecture 14 Data aggregation: Category Analysis
Lecture 15 Comparing Categories: Average Cost per Item in Power BI
Section 4: Tableau
Lecture 16 Setting up Tableau
Lecture 17 Counting Tenants in Tableau
Lecture 18 Sorting (Tree Map, Highlight Table) in Tableau
Lecture 19 Bar Chart in Tableau
Lecture 20 Summing Aross Column in Tableau
Lecture 21 Data Aggregation (Sum) in Tableau
Lecture 22 Data Aggregation (Average) in Tableau
Lecture 23 Dashboarding in Tableau
Section 5: Python
Lecture 24 Python Set Up
Lecture 25 COUNT()
Lecture 26 Sorting in Pandas
Lecture 27 Bar Charts with matplotlib
Lecture 28 SUM() in pandas
Lecture 29 GROUPBY() in pandas
Lecture 30 Data Aggregation in Python
Section 6: Technical Test for Data Analysts
Section 7: Course Wrap Up
Lecture 31 Course Wrap Up: Next Steps
Beginners hoping to become a Data Analyst