If you are starting your journey into data analytics, one of the most common questions you will face is: Should I use Excel or Power BI? Both tools are incredibly powerful and often used side-by-side in the business world. However, knowing when to use which tool can save you time, improve clarity, and boost your analytical impact.
At Jeks Analytics, we believe in choosing the right tool for the job. In this article, we break down the strengths of Excel and Power BI and help you decide when to reach for one over the other.
1. Excel: Your Analytical Starting Point
Excel is often where many data journeys begin—and for good reasons. It is flexible, easy to learn, and widely used.
Best for:
– Quick calculations and explorations
– Ad hoc reports and manual data entries
– Small datasets
– Financial modelling or what-if analysis
Core strengths:
– Formulas (SUMIF, VLOOKUP, INDEX-MATCH)
– PivotTables and conditional formatting
– Simple charts and graphs
– Built-in templates and workbook-style layout
Use Excel when:
– You are working with relatively small datasets (under 1 million rows)
– You need to tweak values manually or add quick notes
– You want to build models, budgets, or forecasts on the fly
At Jeks Analytics, many of our beginner tutorials start with Excel because it lays the foundation for learning more advanced tools.
2. Power BI: Dashboards and Data at Scale
Power BI is Microsoft’s business intelligence tool for interactive reports and dashboards. It is built for more scalable, visual, and automated data insights.
Best for:
– Real-time dashboards and reporting
– Connecting to multiple data sources (e.g., SQL, web, Excel)
– Medium to large datasets
– Automated refresh and sharing
Core strengths:
– Data modelling and DAX (Data Analysis Expressions)
– Visual interactivity with slicers, filters, and bookmarks
– Scheduled data refresh from live sources
– Clean publishing through Power BI Service
Use Power BI when:
– You need dynamic dashboards or KPI trackers
– Your data comes from multiple tables or systems
– You want to reduce manual updates and streamline visuals
At Jeks Analytics, our Power BI tutorials help learners progress from Excel skills into full-scale dashboards.
3. Comparing the Two: Key Differences
| Feature | Excel | Power BI |
| Interface | Grid-based, cell-focused | Report canvas and data model views |
| Data Size | Up to ~1 million rows | Millions of rows; columnar storage |
| Visualisation | Basic charts | Advanced, interactive visuals |
| Automation | Limited (macros) | Strong (scheduled refresh) |
| Sharing | File/email-based | Web/cloud-based via Power BI Service |
4. When to Combine Them
Believe it or not, you do not have to choose. Many analysts use Excel as the first step, then push their clean data into Power BI for presentation and automation.
Example workflow:
1. Use Excel to clean and prep data (Power Query)
2. Upload the Excel file into Power BI
3. Build a dashboard that refreshes automatically
Excel and Power BI each have their place in the data analytics toolkit. Excel is perfect for starters, what-if analysis, and building quick solutions. Power BI shines when it comes to interactive dashboards, automation, and working at scale.