This image shows the various box plot templates in the Golden Gallery, all of which you can customize in Grapher.

101 Guide to Box Plots: Their Purpose, Benefits, Use Cases, and the Best Way to Create & Recreate Them With Ease

Box plots are one of the most versatile and trusted statistical graphs out there—ideal for summarizing data distributions, spotting outliers, and comparing variability across groups. But whether you’re building one for the first time or recreating a version you’ve used in the past, the design process can slow you down.

At first, the challenge might be simply learning how to build a specific type of box plot in your data visualization tool. Even if the software is intuitive, you still have to discover how your data should be formatted, how to apply customizations, and where to find the plot type. At some point, you figure it out and get a result that’s clean, effective, and ready for use.

But down the road—when you need to recreate that same plot with new or updated data—you face a different challenge: trying to remember what you did the first time. Did you manually adjust the axis scale? Group the data a certain way? Apply specific colors or labels? It can quickly turn into a frustrating, time-consuming task.

That’s where this post comes in to help. In this third installment of our Specialized Graphs blog series, we’ll do a deep dive into everything you need to know about creating and recreating box plots, including how to streamline the entire process using publication-ready templates. 

What Is a Box Plot?

A deep dive must begin with the basics, so let’s start at the top. A box plot (also called a box-and-whisker plot) is a statistical graph that helps you visualize the distribution of a dataset. It shows the minimum, lower quartile, median, upper quartile, and maximum values—all in one clean data visualization. Some versions also highlight outliers or display confidence intervals.

When it comes to their usefulness, box plots are especially great when you need to:

  • Compare distributions across multiple datasets
  • Identify outliers or skewed data
  • Visualize trends over time or conditions
  • Summarize large amounts of numerical data quickly

To put those use cases more plainly, box plots are a go-to visualization when you need to communicate variability and central tendency without overwhelming your audience.

Different Types of Box Plots and Their Benefits

Now, what are the different types of box plots you might need to create and recreate? While the standard box plot is the most well-known, there are several specialized variations that can help you tailor your visualization to the data at hand. Each type offers unique advantages depending on your goals, comparison needs, and data structure. For context, let’s dive into each type of box plot and briefly discuss what it is and why it’s beneficial. 

1. Standard Box Plot

What it is: A standard box plot is a visual summary of a dataset that uses five key statistical measures, such as lower quartile, upper quartile, minimum, median, and maximum.

Top Three Benefits:

  • Summarizes data concisely and visually
  • Makes it easy to spot outliers
  • Supports comparisons across multiple datasets

2. Notched Box Plot

What it is: A notched box plot has notches around the median to indicate confidence intervals, making it easier to assess whether medians are significantly different.

Top Three Benefits:

  • Adds a layer of statistical inference to the visualization
  • Helps you see if medians differ significantly between datasets
  • Keeps the classic box plot format while enhancing interpretation

3. Grouped Box Plot

What it is: A grouped box plot is an arrangement of multiple box plots that are grouped by a shared category to compare subgroups within a dataset.

Top Three Benefits:

  • Highlights differences within and between groups
  • Ideal for multi-category comparisons
  • Organizes complex datasets clearly

4. Time Series Box Plot

What it is: A time series box plot is a variation of a grouped box plot designed to display distributions at specific data values—perfect for visualizing data collected over time or at set intervals.

Top Three Benefits:

  • Ensures accurate comparisons
  • Lets your represent box data on linear, log, or probability scaled axes
  • Especially useful for datasets showcasing changes in values over time

Real-World Scenarios: When You’d Need to Recreate Each Type of Box Plot

Knowing the types of box plots and their benefits are one thing, but in what scenarios would you actually need to recreate any of the specialized versions? As you may already know, there are multiple scenarios where you might need to remake one of the box plots we’ve discussed. Here are just a few real-world situations where scientists like you need to do so.

1. Standard Box Plot

You’re a hydrologist monitoring nitrate concentrations across different wells. Last year, you created a box plot to compare seasonal variation across those sites. This year, you’ve gathered new data and need the same analysis—just with updated values. Rebuilding the entire plot from scratch would be a waste of time when the plot layout hasn’t changed.

2. Notched Box Plot

You’re in environmental toxicology, studying mercury concentrations in fish from two different rivers. After your first round of data collection, you used a notched box plot to compare the medians and visually highlight any significant differences. After some time goes by, you complete a second round of sampling. Now, you need to recreate the last analysis using a notched box plot and then take it a step further by creating a grouped box plot that combines the two rounds of data by season. That way, you can compare seasonal variation in the mercury concentrations. The findings will be insightful, but the process to getting there won’t be easy—not when you have to recreate your analysis before even creating the grouped box plot.

3. Grouped Box Plot

As a soil scientist, you’re studying metal concentrations in surface soils under three types of land use: urban, agricultural, and forested. You’ve previously created a grouped box plot that shows differences across these land uses and individual sampling sites. Now, you’ve returned to the field and collected more recent samples, and you want to recreate the plot with new data while keeping the same grouping structure.

4. Time Series Box Plot

You’re a geochemist analyzing trace element concentrations in groundwater. Your dataset includes elements like calcium and magnesium, which occur in high concentrations, as well as trace metals like arsenic and lead. You already created a time series box plot to visualize the data you collected two years ago. New test results just came in, and now you need to add the new data into the plot for the right dates.

The Easy Way to Create and Recreate Box Plots

Whether you’re building a specific box plot for the first time or remaking one you’ve used in the past, the process shouldn’t be a time sink. But as you’ve likely experienced, even small steps during the creation process—like finding the correct plot in the interface, formatting your dataset correctly, and assigning plot variables—can add up. And if you’re trying to recreate a plot that worked well before? You might spend more time hunting through old files and reapplying custom settings than actually analyzing your data.

That’s where templates can completely transform your workflow.

With Grapher Beta’s Golden Gallery, you have access to a curated collection of fully-functional, professional, and publication-ready templates—including templates for every box plot variation covered in this article. Each one is designed to help you skip the learning curve and time spent retracing your steps and jump straight to a polished, presentation-ready visual. Whether you’re creating a box plot from scratch or remaking one with new data, these templates do the heavy lifting.

Here’s what’s available:

  • Notched Box Plot Template: Great for evaluating confidence intervals around the median and identifying statistically significant differences.
  • Grouped Box Plot Template: Ideal for comparing subgroups within categories like treatment types, land use classes, or sampling sites.
  • Time Series Box Plot Template: Perfect when your data spans a time interval and needs accurate placement in a series.
Notched Box Plot Template
This image shows the Notched Box Plot Template that's available in the Golden Gallery.
Grouped Box Plot Template
This image shows the Grouped Plot Template that's available in the Golden Gallery.
Time Series Box Plot Template
This image shows the Time Series Box Plot Template that's available in the Golden Gallery.

Create and Recreate Box Plots Without the Rework

Box plots are essential for communicating variability, comparing datasets, and highlighting outliers—all while keeping your visualizations clean and concise. But creating one from scratch or trying to recreate a previous version shouldn’t slow you down.

Whether you’re building your first box plot or updating one for a new round of data, the process often involves various roadblocks, but templates eliminate the friction. With the ready-made box plot templates in the Golden Gallery, you can skip the challenges and focus on your insights. You can get a polished starting point and a faster path to results.

The bottom line? You don’t need to struggle through a learning curve or try to remember how you created a previous box plot. Use a template, plug in your data, and move forward with ease, knowing your visual is accurate, compelling, and presentation-ready.

Want to use a box plot template to make your workflow smoother? Access the Golden Gallery in Grapher Beta to download a template for this specialized graph!

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