As children we go to the eye doctor regularly to make sure our vision is okay and that we can see clearly. As I got older my vision changed and I needed to get glasses to improve my vision. My prescription continues to change as I age as I’m sure many of yours does the same. People take their vision seriously, because if you are unable to see clearly you run the risk of bumping into things, or maybe something worse like getting in a car accident because something you would have normally been able to see if your vision was clear.
As children we go to the eye doctor regularly to make sure our vision is okay and that we can see clearly. As I got older my vision changed and I needed to get glasses to improve my vision. My prescription continues to change as I age as I’m sure many of yours does the same. People take their vision seriously, because if you are unable to see clearly you run the risk of bumping into things, or maybe something worse like getting in a car accident because something you would have normally been able to see if your vision was clear.
These same principles, although not always followed, hold true in data visualization. Unfortunately there is no Business Intelligence Lasik that can be performed, so you have to work at perfecting your “data vision”. If you need a good jumping off point for perfecting your data vision let me recommend Stephen Few and his books as they are a valuable resource in learning how to visualize data correctly and effectively. In my eyes, Stephen is an evangelist for the simplification data presentation in order to magnify its importance and multiply its effectiveness.
When I say “dashboard” what do you immediately think of? If you said your car, give yourself a gold star. In your car the dashboard tells you a very quick story of what is going on in your car while you drive.
How fast are you going?
How much fuel do you have?
How hot is the engine?
Any other issues you should be aware of?
If your seat belt light is on, you know to click in your seat belt. If your oil pressure light is on, you know you have a lubrication issue. If your open door indicator is on, you know not only to shut the door, but sometimes you know exactly which door needs to be shut.
Your corporate dashboards should work the same way. In a minute or less the business user should be able to see their key performance indicators and see if there are any issues that need attention. Whether the monthly expenses are out of line with the budget or the manufacturing of widgets is off pace, they should be able to view and react to correct the problem. If the users are staring at the screen for 5 minutes trying to decipher what the dashboard is trying to tell them, then you have failed as a developer of that dashboard. Can you imagine having to take your eyes off the road for 5 minutes to figure out what was going on with your car? How about even a minute? Scary.
So how do you reach visualization nirvana? There are two questions I ask myself when creating visualizations and dashboards.
1.) Are my visualizations appropriate for the data that is being presented?
It feels like you can present data in thousands of different ways, but there are 4 presentation categories in which everything will fall. The designer must understand what each category entails and select an appropriate visualization technique.
This first category is a simple comparison. There are two types of comparisons that can be performed, one that shows data over time and another that shows data among common items. If you are showing data over time, are your time periods linear, like a year to date sales report, or are the cyclical, like a rolling 24 months of data? If you are comparing common items, how many are you comparing? These details will change what type of visualization you can use to show your data effectively.
The next category in regard to ease of visualization would be the relationship. The relationship is generally displayed as a “scatter” chart if you are showing the relationship of 2 variables in regards to each other. If you have three variables, it then becomes a “bubble” chart with the third variable showing the relative size of the bubble.
The third category is distribution, which shows 1 to 3 variables with the ability to show a single variable over a handful of data points or many data points. Single variable distributions will look something like a bell curve for those of you who remember statistics. Visualizations with 2 or 3 variables can be effectively shown in a scatter or bubble chart.
The last, and probably the most complex category, would be composition. Two sub-categories for composition are static compositions and compositions that change over time. If you are thinking about composition, you are looking at “stacked” visualizations like stacked bar/column charts or stacked area charts. The important things to consider here are which types of differences matter; relative or both absolute and relative. If only relative changes matter, you will show the stack as 100% and the data breaking up that 100%. If absolute and relative changes matter, then a “traditional” stacked chart can be used.
2.) Is my dashboard simple enough to be processed instantaneously by the user?
How quickly can I tell a story to the user, and is that story actionable… or can they drill into the data to see and address the anomalies or trouble areas? Even though I’ve chosen the right way to display the data, am I doing anything with the scale or colors to make it misleading? Am I using color deliberately to highlight things that need attention? Am I showing too much data or too many charts on the screen causing “Analysis Paralysis”? Have I steered clear of using 3D charts of any kind?
Simplicity is the key; you have to keep it simple so that the message is clear. If your dashboards are cluttered with gizmos, gadgets, 3D charts and flashing lights you are only going to distract the user from getting what they need, which is the information itself. If you present your visualization to a daily user of the presented data and they need an explanation of what the charts are trying to convey, then you have failed.
It’s easy to build a chart but it’s an art to present data in a usable format. If you aren’t thinking about the data you are presenting, then you are just slapping the data around.
So why do BI Software vendors have all these charts, gauges and widgets if they don’t display the data correctly?
Easy, sex sells and those really slick looking visualizations are sexy to the C-Level executives and to managers who are trying to please those executives. What they fail to realize is that while those visualizations are sexy, they are also useless in 99% of the cases in which you need to visualize data. The developer then has to use these sexy visualizations, because that is what was sold to the management team and the cycle continues. The problem is only getting worse as each software vendor tries to out do the next, which has never been more evident then with the introduction of “exploding 3D pie charts” that showed up on the latest SAP BusinessObjects release. I wish that BI software vendors would adopt the “Visualizations are a tool, it’s the data that is powerful” motto, and we could move on to more useful visualizations.
It might seem like I’m piling on in singling out this example, but it’s by far one of the more ridiculous presentations of data that I have seen in recent memory. Tools will come and go and software vendors will continue to add the latest and greatest ways they think data should be displayed. However, the responsibility of effective data presentation rests squarely on the shoulders of the developers who are given the tools so we must resist the urge to use the latest gadgets and gizmos to present data just because they are new and the executives thought they were cool in the sales pitch. We must be vigilant in our efforts to explain and defend our choices for data visualization because ultimately it will be the developer, not the software company, that will be seen as a failure if the CEO’s “vision” is skewed because the data glasses he or she were given were the wrong prescription.