Exploring the History of Data Visualization (2024)

If you’re reading this post, it’s highly likely that you either have some familiarity with or are interested in data visualization. Today we’ll explore some of the fascinating history of data visualization. But before we get to that, let’s define what we mean by data visualization. Sometimes referred to as information visualization, data visualization is the practice of designing and/or creating visual representations of data, including quantitative and qualitative data. The end goal is to make the data faster and easier to communicate and understand complex data, relationships, and/or concepts.

Data visualization’s foundations

When we think about the data visualization’s history, I think it’s important to to consider the following:

  1. Data visualization has a very long history, which goes beyond the modern applications that primarily utilize digital mediums for dissemination.
  2. Data visualization has roots in several areas including, but not limited to, mathematics, computer science, design, and psychology. Throughout this post, I’ll touch briefly on each.
Exploring the History of Data Visualization (1)

Mathematics

Data visualization is not possible without simple arithmetic. If you have a table with one million rows of data, it’s not practical to display every single row of data for your audience to interpret. We use aggregations such as sum, average, median, count, or range, to summarize data and make it both easier to understand and easier to visualize. We can use ever-more complex arithmetic to create calculations and further derive meaning from data.

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Exploring the History of Data Visualization (2)

Additionally, common data visualizations we see today, such as scatter plots, line graphs, or geographic maps would not be possible without innovations in the fields of statistics and geometry. The Alexandrian mathematician Ptolemy created the map projection of Earth into latitude and longitude coordinates between 85 B.C. and 165 B.C. Around the mid-17th century, René Descartes, in collaboration with Pierre de Fermat, conceived of Cartesian coordinates (the concept of x- and y-axes), and the concept of using x to represent an unknown number.

Why Do We Visualize Data?

Psychology

Data visualization best practices rely on a comprehensive understanding of human visual processing. This includes understanding how attention, memory, and learning all play a role in how a viewer perceives and interprets a data visualization. The Gestalt theory of psychology was introduced in 1890, and it underpins the Gestalt principles, which seek to explain how humans perceive patterns and understand complex images or visuals. Psychology helps explain why data visualization is important, as studies have shown that people use about 20% less cognitive resources and were 4.5% better able to recall details with data visualization than with text. (source)

Applying Gestalt Principles to Dashboard Design

Design

I will admit that “design” is an extremely broad term. For the purposes of this post, we’ll focus on design defined as the intentional creation of something; in our case, we’re talking about the creation of a data visualization. Design thinking, or the ways in which designers think about the process of designing and solving problems, first emerged in the 1950s and 1960s. Design thinking incorporates solution-focused thinking, inspiration through observations, modeling or prototyping, and empathy for end users. We often use design thinking in the creation of data visualizations, whether we realize it or not. As an information designer at Playfair, I am constantly asking questions that are user-focused. What questions is the user trying to answer with this tool? What are some pain points in their current tool that we can alleviate through design? Based on the user’s feedback, what changes can I make to a data visualization design so that it best fits their needs?

Why Dashboard UX is Important

Computer science

Computers and computer science propelled data analysis and visualization forward, since the limits of human computing power and storage capacity were eliminated. With data mining and machine learning, statisticians, scientists, and mathematicians could quickly find patterns, generate statistical analyses, or visualize data using computers and computer software. The first software generated for data analysis was centered around statistical analysis, such as SAS, which was released in 1972. Later, both software and programming languages were developed for use outside of strictly statistical analysis. Microsoft Excel was first released in 1985, followed by R and Python in 1991 and 1993, respectively. Tableau Software was founded in 2003, while Power BI was first introduced as part of Office 365 in 2013.

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Key Events: A timeline of the history of data visualization

While this isn’t a comprehensive overview of the history of data visualization, I pulled together some of the key events throughout history. You’ll notice that the first human use of data visualization is extremely old, and that many advancements in several of the foundational fields occurred in the 17th, 18th, and 19th centuries.

Distant Past

  • 17,000 – 12,000 years ago – Lascaux Cave Paintings in France include depictions of animals, human figures, and symbols
  • 5500 B.C. – Mesopotamian clay tokens, which were likely the earliest method of record-keeping
  • 2700 B.C. – Incan quipus are used for record-keeping by tying knots into varying lengths of string
Exploring the History of Data Visualization (3)
  • 1160 B.C. – Turin Papyrus Map accurately displays the geographic distribution of resources
  • c. 85 – c. 165 B.C. – Ptolomy creates a map projection of a spherical Earth into latitude and longitude

17th Century

  • 1637 – Cartesian coordinates (concept of x- and y-axes), René Descartes’s La Géométrie in collaboration with with Pierre de Fermat
Exploring the History of Data Visualization (4)
  • 1654 – invention of probability theory, Blaise Pascal and Pierre de Fermat
  • 1662 – invention of demography/first use of descriptive statistics, John Graunt, Natural and Political Observations Made upon the Bills of Mortality

18th Century

  • 1765 – Priestley timeline, Joseph Priestley
  • 1786 – Bar charts, area charts, and line charts are invented and appear in William Playfair’s The Commercial and Political Atlas
    • Playfair was directly inspired by Priestley’s timeline to create bar charts
Exploring the History of Data Visualization (5)

19th Century

  • 1801 – Pie charts are invented and appear in William Playfair’s Statistical Breviary
  • 1858 – Nightingale Rose chart is invented and appeared in Florence Nightingale’s Notes on Matters Affecting the Health, Efficiency, and Hospital Administration of the British Army
    • “According to the historian Hugh Small, ‘she may have been the first to use [pie charts] for persuading people of the need for change.’” (source).

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Exploring the History of Data Visualization (6)

  • 1869 – Charles Joseph Minard publishes a graphic of Napoleon’s invasion of Russia
  • 1890 – Christian von Ehrenfels introduces the concept of Gestalt psychology, the foundation upon which Gestalt principles are built

20th Century – Present

  • 1950s – 1960s – emergence of design thinking
  • 1970s – Dieter Rams introduces his “Ten Principles of Good design”, which has had significant influence on product and UX/UI design
Exploring the History of Data Visualization (7)
  • 1972 – SAS (Statistical Analysis System), a software for advanced analytics and statistical analysis is first released
  • 1983 – The Visual Display of Quantitative Information by Edward Tufte is published and helps redefine data visualization as more than just for statisticians
  • 1985 – First version of Microsoft Excel is released
  • 1991 – Python programming language, used for data analysis, data mining, and machine learning, is released
  • 1993 – R programming language, used for statistical analysis and the creation of data visualizations, is released
  • 1997 – Alteryx founded, a company that creates computer software used for advanced data science and analytics
  • 2003 – Tableau Software is founded
  • 2013 – Power BI for Office 365 becomes publicly available
  • 2021 – Open AI releases DALL-E, which is capable of producing accurate captions for images

I hope you enjoyed this overview of the history of data visualization.

Happy vizzing,
Alyssa

Sources:
The History of Data Visualizations – From Cave Drawings to Tableau
The Cave Painters
Untangling an Accounting Tool and an Ancient Incan Mystery
Milestones in the History of Thematic Cartography, Statistical Graphics, and Data Visualization
Interaction Design Foundation – Dieter Rams

Exploring the History of Data Visualization (2024)

FAQs

Exploring the History of Data Visualization? ›

The earliest form of data visualization can be traced back to the 17th century, when simple bar and line graphs were used to display data. These graphs were hand-drawn and used to visualize data in a more comprehensible way than the raw numbers and statistics.

What is the history of data visualization? ›

History of data visualization

Data visualization for data interpretation has been around since the beginning of civilization. By using data visualisation, people could understand the world they lived in and make more accurate predictions about future events.

What are the 4 stages of data visualization? ›

On a lower level, different visualization stages can be recognized: each requires a different strategy from the perspective of map use, based on audience, data relations, and the need for interaction. These stages are exploration, analysis, synthesis, and presentation.

What are the key elements to Dr. Shneiderman's information seeking mantra? ›

Laying the groundwork for their approach, Amar and Stasko write that, “Shneiderman's mantra of 'Overview first, zoom and filter, details-on-demand' nicely summarizes the design philosophy of modern information visualization systems.” [3] Hetzler et al.

How do you visualize historical data? ›

Some effective techniques for visualizing historical data include timelines, which provide a chronological overview: 1. bar charts, for comparing values over time periods; 2. heatmaps, to show patterns or trends across different time periods; 3. animated visualizations, to illustrate changes dynamically.

Who is the father of data visualization? ›

Edward Rolf Tufte (/ˈtʌfti/; born March 14, 1942), sometimes known as "ET", is an American statistician and professor emeritus of political science, statistics, and computer science at Yale University. He is noted for his writings on information design and as a pioneer in the field of data visualization.

What is the oldest data visualization tool? ›

Earliest documented forms of data visualization were various thematic maps from different cultures and ideograms and hieroglyphs that provided and allowed interpretation of information illustrated.

What are the 4 pillars of data visualization? ›

The foundation of data visualization is built upon four pillars: distribution, relationship, comparison, and composition.

What are the 7 steps of data visualization? ›

  • 1 6.
  • Step 1: Define a clear purpose.
  • Step 2: Know your audience.
  • Step 3: Keep visualizations simple.
  • Step 4: Choose the right visual.
  • Step 5: Make sure your visualizations are inclusive.
  • Step 6: Provide context.
  • Step 7: Make it actionable.

What are the 3 rules of data visualization? ›

Conclusion. To recap, here are the three most effective data visualization techniques you can use to deliver presentations that people understand and remember: compare to a real object, include a visual, and give context to your numbers. Try using one or more of these techniques in your next presentation.

What are the three C's of visualization? ›

The three Cs of data visualization are correlation, clustering, and color.

Which property is the hardest to use successfully in information visualization? ›

Answer: Colour is the property that is hardest to use successfully in information visualization. The information visualisation is also known as the study of the interactive of visual representation of the abstract data. Through this process, human being can recognize the abstract data.

What is the goal of visualization? ›

Visualization is a useful technique that helps you reach your goals and live your dreams. It works by getting your mind and body ready for what you want to happen – and, just like exercise, the more you do it, the stronger it becomes.

What are the historical roots of data visualization? ›

Evolution of Data Visualization from Maps to BI. Prior to the 17th century, data visualization existed mainly in the realm of maps, displaying land markers, cities, roads, and resources. As the demand grew for more accurate mapping and physical measurement, better visualizations were needed.

How do you creatively visualize data? ›

You can use bar graphs to compare items between different groups, measure changes over time and identify patterns or trends. Other popular forms of data visualization include pie charts, line graphs, area charts, histograms, pivot tables, boxplots, scatter plots, radar charts and choropleth maps.

Who created data visualization? ›

Scottish political economist and engineer William Playfair is the father of statistical graphics. In 1786, He published a book that incorporated graphical representations of data. He introduced a variety of graphs and charts in his book Commercial and Political Atlas.

Who discovered visualization? ›

As the demand grew for more accurate mapping and physical measurement, better visualizations were needed. In 1644, Michael Florent Van Langren, a Flemish astronomer, is believed to have provided the first visual representation of statistical data.

Why is data visualization more important now than ever before? ›

Data visualization serves as a cornerstone in the modern landscape of information interpretation. Its ability to transform complex data into comprehensible visual formats, such as charts and graphs, is instrumental in facilitating better decision-making processes across various sectors.

What is the summary of data visualization? ›

Data visualization is the process of using visual elements like charts, graphs, or maps to represent data. It translates complex, high-volume, or numerical data into a visual representation that is easier to process.

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