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Is Excel the Best Data Tool Today?
Data ManipulationData ScienceData AnalyticsData Visualization

Is Excel the Best Data Tool Today?

Excel data tool comparison

Anastasiia Tsurkan

by Anastasiia Tsurkan

Backend Developer

Sep, 2024
9 min read

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Is Excel the Best Data Tool Today?

Let's be real: if there's one software that's been around forever yet still manages to get the job done, it's Excel. We've all used it at some point, whether for simple tables, formulas, or something more advanced like Pivot Tables or VBA. But is Excel still the best data tool out there today? Let's dive into what Excel can (and can't) do, and where it either shines or backfires when you're in the trenches of data analytics.

So What Can Excel Do?

Excel is like that Swiss Army knife of data tools—reliable, versatile, and accessible to almost everyone. Whether you're a beginner organizing your personal budget or a data analyst handling complex product inventory management, Excel has your back.

  1. Pivot Tables: One of Excel's secret weapons. These nifty tables help you summarize large datasets with ease. Whether you're slicing through your research journal database or sorting product sales, Pivot Tables allow you to dissect and visualize data like a pro. Wondering “Excel, what is Pivot Tables?” Well, it's your ticket to transforming raw numbers into digestible insights.

  2. Formulas & Functions: Excel comes with hundreds of built-in formulas, from simple math operations to complex financial models. It's perfect for everything from quick calculations to forecasting sales trends in your business.

  3. VBA (Visual Basic for Applications): If you're the automation-savvy type, Excel's VBA scripting feature lets you automate repetitive tasks. You can automate entire workflows, saving time and ensuring accuracy.

  4. Compatibility: Excel doesn't play favorites—it works on PCs, Macs, and integrates with tons of other platforms. You can even pull data from cloud services and combine it with IBM data management platforms or other business systems for real-time insights.

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What Can't Excel Do Then?

Okay, as much as we all love Excel, it's not the superhero of data tools. It's more like the friendly neighborhood Spider-Man, great for most things but not ideal for heavy-duty tasks.

  1. Massive Datasets: When dealing with huge datasets (think millions of rows), Excel can start to lag or even crash. It's simply not designed to handle massive-scale data analytics like specialized tools such as SQL or IBM data management platforms.

  2. Collaborative Work: While Excel has improved with tools like Excel Online and Google Sheets integration, it's still not the best for collaboration on large teams. Unlike cloud-native platforms like Google BigQuery or Tableau, which are built for multi-user environments, Excel can get clunky when multiple people try to access and edit the same file.

  3. Advanced Machine Learning and AI: If you're diving into serious data science and want to play with machine learning, algorithms, or advanced AI models, Excel isn't the best tool. You'll probably want to use Python libraries like Pandas or Jupyter notebooks for that. Excel can certainly crunch numbers, but training models? That's out of its league.

Where Does Excel Shine & Backfire as a Data Tool?

Now that we've covered the good, bad, and ugly, let's talk about Excel's performance in real-world data tasks.

Excel Shines:

  • Ease of Use: The interface is intuitive, and anyone can get started without much of a learning curve. It's often the first tool people turn to for quick data analysis.
  • Flexibility: Whether it's simple product inventory management or more complex data visualization through graphs and charts, Excel's flexibility makes it invaluable.
  • Cost-Effectiveness: Compared to more complex data platforms, Excel is relatively affordable and comes bundled with most Microsoft Office packages, making it accessible to individuals and small businesses.

Excel Backfires:

  • Scalability: Once you scale past a certain point, Excel starts to stutter. Handling larger datasets requires a database or more robust analytics software.
  • Version Control Nightmares: Excel files tend to proliferate like rabbits. With many copies floating around, keeping track of the latest version can be a headache.
  • No Built-in Collaboration: Unlike cloud-based tools like Google Sheets, Excel isn't built for seamless collaboration without add-ons or workarounds. If you're a part of a large team, you might run into trouble with version conflicts.

What's the Difference Between Excel and Other Data Tools?

Excel has been around for decades, and while it's still widely used, other data tools have emerged that bring different strengths to the table. Let's take a look at how Excel stacks up against some of the most popular alternatives:

  1. Excel vs. SQL Databases:

    • Strength: Excel excels at organizing and analyzing smaller datasets. It's perfect for quick calculations, creating charts, or summarizing data using Pivot Tables.
    • Drawback: SQL databases like MySQL or PostgreSQL are built to handle millions of rows of data efficiently. While Excel might crash with large datasets, SQL can query data at a massive scale without breaking a sweat. SQL is also more secure and better for collaboration in a team.
  2. Excel vs. Python (Pandas, Jupyter Notebooks):

    • Strength: Excel's ease of use makes it approachable to non-coders. Formulas, VBA macros, and templates offer a lot of customization for users without programming experience.
    • Drawback: Python, especially with the Pandas library, is more versatile for complex data manipulation and automation. Excel struggles with advanced analytics, machine learning, and deep data cleaning. Python can handle enormous datasets, run machine learning models, and integrate with other data platforms like IBM data management platforms.
  3. Excel vs. Google Sheets:

    • Strength: Excel has more advanced features for handling large datasets offline, such as Power Query and Power Pivot. It's a more powerful tool for users who need high-level data crunching.
    • Drawback: Google Sheets shines in real-time collaboration. Unlike Excel, which can become clunky with multiple editors, Google Sheets allows users to edit the same document simultaneously with fewer headaches. Sheets also has cloud integrations that make it more accessible from any device.
  4. Excel vs. Tableau or Power BI:

    • Strength: Excel is fantastic for individual use, quick analysis, and static reports. It's especially handy for small businesses or individuals who want to handle product inventory management or financial modeling.
    • Drawback: Tools like Tableau or Power BI are designed for creating visually engaging dashboards and handling large datasets. While Excel has basic charting abilities, it doesn't come close to the dynamic and interactive visualizations that Tableau and Power BI can produce. These tools also have more robust data integration and real-time reporting capabilities.

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Is Excel Still the Right Tool for You?

Excel is fantastic for specific tasks, like quick number crunching, Pivot Tables, and product inventory management. Its accessibility and flexibility make it the go-to for many business tasks. But as data needs grow more complex, Excel can become a bottleneck. For large-scale analytics, collaboration, and machine learning, other tools like SQL databases, Python, or Tableau will outperform Excel every time.

In a nutshell: Excel is a must-have for everyday data tasks, but if you're looking to scale up your data operations, you'll need to look beyond the trusty spreadsheet.

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