chapter five
think like a designer

You know what great design looks like when you see it, but how do you actually achieve it—particularly if you don’t consider yourself a designer? SWD covered four topics to help you think like a designer: affordances, aesthetics, accessibility, and acceptance. In this chapter, we’ll practice applying these concepts and illustrate how minor changes can help take your visual from acceptable to exceptional. First, let’s cover a quick reminder of what I mean by these terms.

In visual design, affordances are things we do to make it clear how to process what we show. This builds off of the lessons you’ve practiced in Chapters 3 and 4: tie related things visually together, push less important elements to the background, and bring the critical stuff forward. Direct your audience’s attention intentionally to where you want them to look.

Spending time on the aesthetics of your visuals can translate into people taking more time with your work or having the patience to overlook issues. Attention to detail comes into play: often many seemingly minor components add up to create a great or poor experience. To achieve the former, we must edit ruthlessly.

People are each different, and accessibility means recognizing this and working to create designs that are usable by people of diverse skills and abilities. We’ve touched on colorblindness, but that only scratches the surface. We’ll undertake exercises that will help you think about your designs more robustly. There is one simple thing that can help us improve the accessibility of our graphs broadly: using words wisely.

Finally, our visual designs only work if our audience accepts them and there are things we can do to make this more likely, which we’ll explore.

Let’s practice thinking like a designer!

First, we’ll review the main lessons from SWD Chapter 5.

Image titled “First let’s recap: think like a designer.” Below this, the statement “form follows function” and “affordances” (aspects of the design that make it obvious how to use) are briefly explained with the help of diagrams.
Image that is a continuation of the one on the previous page; here, the concepts of accessibility, aesthetics, and acceptance are briefly explained with the help of diagrams.
Image of 14 sticky notes, with four arranged under the heading “practice with Cole,” four under “practice on your own,” and six under “practice at work.” Written on each note is a point related to the subheading it is placed under.
Image of a sticky note, on which “practice with Cole” is written. Image containing text stating the importance of the words paired with graphs for making them comprehensible; following this, exercises highlighting the same in the following sections are introduced.

Exercise 5.1: use words wisely

When we communicate with data, people sometimes have the false belief that words have no place or should be kept to a minimum. But words play a critical role in making the numbers and graphs that we use to communicate data understandable to our audience. The text we put on our graphs helps people comprehend what they are seeing and can assist in shaping their perceptions about the data.

Let’s do a quick exercise to illustrate the importance of words on graphs.

Study Figure 5.1a, which shows sales over time for four brands of laundry detergent. There are already words on this graph: but are there enough? Could we use words more wisely? Consider these questions as you look at the data, then complete the following steps.

Image of a graph titled “sales,” with the x-axis representing months and the y-axis representing sales figures; four lines are plotted---the topmost is labeled “Gleam,” the bottommost is labeled “Cleantastic,” and the two lines in the middle, intersecting at two points, are labeled “FreshClean” and “Soapy Suds.”

Figure 5.1a Could we use words more wisely?

STEP 1: What questions do you have about the data shown in Figure 5.1a? List them! What assumptions would you have to make to interpret this data?

STEP 2: What words could you add to this graph to answer the questions you raised in Step 1? Freely make additions and changes to title and label so that what is being shown is perfectly clear.

STEP 3: How could putting different words on this graph change the interpretation of the data? How can you change axis titles and other text to cause an alternate understanding of what this visual shows? What implications does this have for what words should be present on every graph? Write a paragraph or two summarizing your learnings from this exercise.

STEP 4: For hands-on practice, write on Figure 5.1a or download the data or graph. Either add text to the existing graph or create a new one in the tool of your choice, practicing using words wisely to make the information accessible.

Solution 5.1: use words wisely

When you create a graph, the details are almost always clear to you. The challenge is that they aren’t necessarily obvious to your audience, who may have different expectations or understanding of the context. In absence of text to make the data comprehendible, your audience is left to make assumptions, just as you had to do in this exercise. Not only does this make you use more brainpower than necessary, but worse—those assumptions might be wrong!

Let me take you through my approach to this exercise to illustrate how choice of words can lead us to completely different interpretations of the data.

STEP 1: I have four main questions about this data.

  • What is graphed on the y-axis? We know from the titles that it represents sales, but that’s not nearly descriptive enough. Are these actual number of units sold? Or hundreds of units sold? Or perhaps this represents monetary sales: for example, thousands of dollars, or millions of pounds.
  • What is graphed on the x-axis? The month labels clearly indicate time, but this doesn’t tell us enough. What time period is this? Are we looking back at historical data, projecting into the future, or possibly some combination of the two?
  • What broader context do the four brands fit into? Do they represent all four brands carried on a particular website or at a specific store? Are they the four main brands of a given manufacturer? Or are they the top or bottom four brands of some greater population?
  • What realm does this data represent? Without any frame of reference, I could assume this is a robust representation (e.g. worldwide sales or US Sales). But it could be for some subsegment: a certain city, state, or region; a specific product line; a particular manufacturer; or a given chain of stores.

Consider how different perspectives answering the questions raised above could lead us to totally different interpretations of this data. Let’s look at that more specifically next.

STEP 2: Figure 5.1b shows one way I could add words to this graph to answer the questions I raised in Step 1.

Image of a graph titled “Corner Market laundry detergent sales,” with the x-axis representing months in the year 2019 and the y-axis representing the number of units sold; four lines are plotted---the topmost is labeled “Gleam,” the bottommost is labeled “Cleantastic,” and the two lines in the middle, intersecting at two points, are labeled “FreshClean” and “Soapy Suds.”

Figure 5.1b Clear title text aids understanding

In Figure 5.1b, I assumed these represent unit sales for the four brands of laundry detergent sold at a specific store. I made this clear through titling: substituting a more descriptive graph title and adding axis titles to both the y- and x-axes.

Let’s review some specific design choices made with the text I added to this graph. I left-aligned the graph title. We’ve discussed the typical zigzagging “z” of information processing a couple of times already (in the solutions to exercises 2.1 and 3.4, as well as in SWD). As a reminder, without other visual cues, your audience will start at the top left of your graph and do zigzagging “z’s” to take in the information. By orienting our graph title at the top left, our audience hits what they are looking at before they see the actual data. This is the same reason for orienting my axis titles at the top (y-axis) and left (x-axis).

I paid close attention to detail in the alignment of my axis titles, orienting the y-axis title to align with the top of the highest y-axis label, and the x-axis title is aligned at the left with the left-most axis label. I chose all caps for my y-axis titles (and will often do this for axis titles in general). Because capitalized letters are all the same height, this creates a neat rectangular shape (compared to what you’d get with mixed case: a jagged edge). I like the framing this lends to my graph. I also wrote the axis titles in grey text, so they are there to make it clear what we are looking at, but aren’t drawing undue attention or distracting from the data.

STEP 3: Alternate words could lead to a totally different interpretation about what this data is and represents. See Figure 5.1c.

Image of a graph titled “2019 worldwide laundry detergent sales: top 4 brands,” with the x-axis representing months and the y-axis representing sales in billions; on the x-axis, the months from January to September are grouped together and labeled “actual,” and the months from October to December are grouped together and labeled “forecast.” Four lines are plotted---the topmost is labeled “Gleam,” the bottommost is labeled “Cleantastic,” and the two lines in the middle, intersecting at two points, are labeled “FreshClean” and “Soapy Suds.”

Figure 5.1c Different text could lead to completely different interpretation

This has implications for the words that should be present on every graph. I can generalize into a couple of guidelines. Every graph should have a title. When communicating with a slide deck, I use descriptive titles for my graphs and takeaway titles for my slides (we’ll talk more about the latter in Chapter 6). That’s certainly not your only option, and we’ve looked at examples in this book where the graph title is both descriptive and highlights a takeaway. Be consistent in how you title with a given report or presentation.

Every axis should also have a title. Exceptions to this guideline are rare. Title explicitly so your audience doesn’t have to spend their brainpower trying to figure out or make assumptions about what they are viewing.

Words make our visuals comprehensible for our audience. Use them!

Exercise 5.2: do it better!

The graphing applications we use to visualize data are built to meet the needs of many different scenarios. This means that it’s rare that the default settings will meet the needs of any one of those scenarios exactly. That’s where we come in—our understanding of the context and design sense can improve defaults tremendously, helping make information more easily digestible and simply more pleasant at which to look and with which to spend time.

Let’s dissect a specific example, considering how we can use lessons in design to improve upon default output from a proprietary tool and create a more desirable experience for our audience. See Figure 5.2a, which shows the number of cars sold by dealership over time for a given region.

Image of a graph titled “quarterly car sales by dealership,” with the x-axis representing quarters, from the first quarter of 2016 to the third quarter of 2019, and the y-axis representing the number of cars sold. Lines are plotted for the following: Beacon, Draper, Filmore, Lakeside, Mare Valley, North, Oakley, Orly, Pierce, Rosedale, Sealy, Southlake, Westlake, and Wildland.

Figure 5.2a Default output from tool

STEP 1: First, let’s simply react to this graph. What words come to mind in terms of how this graph makes you feel? Make a short list of the feelings this graph evokes.

STEP 2: What changes would you make if you needed to communicate the data from this graph? Specifically, address:

  • Use of words: As we’ve discussed, words make our data interpretable. We should consider not only what words we use to do this, but also where we put those words. How and why would you make changes to the titles or placement of titles in this visual? Are there other ways you can improve upon the way words are used in this example?
  • Visual hierarchy: We’ve learned it can be helpful to highlight sparingly and push non-critical or non-message-impacting elements to the background. How might you do that here? Which pieces of information or aspects of the design would you focus on and which would you de-emphasize or eliminate?
  • Overall design: Are there any elements of the design you find distracting currently? How could you more effectively use alignment and white space? What changes would you recommend making to the overall design of this information?

STEP 3: Download the data and graph. Remake the visual applying the changes you’ve outlined in the tool of your choice.

STEP 4: Imagine you have been asked to create a single slide focusing on this data that will fit into a broader deck to be shared with the management team who oversees these dealerships. How would that affect what you show or how you choose to show it? What additional words can you put around it to help it make sense? What other design considerations would you make? Create this slide in the tool of your choice.

Solution 5.2: do it better!

STEP 1: My initial response to this graph brings to mind words like: confusing, chaotic, overwhelming, and complicated. These are reactions I’d like to avoid when I communicate with data!

STEP 2: The following describes how I would approach remaking this graph to both better get the information across and foster a more pleasant overall experience for my audience.

Use of words: I like the fact that everything is titled in the original, but I’m not a fan of the center alignment of the graph and axis titles. I would upper-left-most justify all of the titles so that when my audience starts at the top left, they encounter how to read the visual before they get to the data. I’ll choose all caps for my y-axis title because of the nice rectangular framing that this, together with the graph title, creates for my graph. On the x-axis, we probably don’t need the title of Quarter, as this is quite obvious from the individual labels. I’ll omit this. There is currently a lot of redundancy with the x-axis labels given the repeated years, so I’ll pull those out as super-category axis labels.

When it comes to creating visual hierarchy, I have to decide what to focus on in this graph. In the original, it’s difficult to focus on anything because so much is competing for our attention. I see that Regional Avg is emphasized in the original via a thicker black line (though this doesn’t stand out nearly as much as it could given all the other lines, colors, and shapes). I’m going to push everything else to the background. When it comes to eliminating distractions, I’ll also remove the grey background, borders, and gridlines. Getting rid of these non-information-bearing elements will help my data stand out more and make for a less cluttered feeling visual overall.

In terms of additional changes I would make to the overall design, it currently takes work going back and forth between the alphabetical legend at the right and the data it describes. I’d like to eliminate this work for my audience. My typical method for resolving this is to label the lines directly. This is challenging here because many of the lines are close together, but I’m still going to try it and get a little creative in the process. This won’t be the best view to show what is going on for a given dealership (unless I put them into different graphs or emphasize only one or a couple at a time), but I can still give a sense of the highest, the lowest, and which fall generally in the middle when it comes to the most recent data by labeling in groups on the right-hand side of the graph.

STEP 3: Figure 5.2b shows my visual with these changes incorporated.

Image of a graph titled “car sales over time,” with the x-axis representing quarters, from all the quarters of 2017 and 2018 to the first three quarters of 2019, and the y-axis representing the number of cars sold. Lines are plotted for the following: Lakeside; Draper; Filmore; Wildland; Sealy, North, Orly; Southlake, Beacon; Rosedale, Westlake; Oakley; Pierce; and Mare Valley. A line representing the regional average is also plotted among the others, and is thicker and bolder than all the other lines.

Figure 5.2b Remade visual

With Figure 5.2b, my audience can easily focus on the Regional Avg and also get a sense of the range and distribution over time across dealerships. If it’s important to have a more specific understanding of what’s happening for a given retailer, however, that’s more difficult. If I need to solve for that as well, rather than try to do more with this graph, I might augment it with another view of the data. We’ll look at that momentarily.

STEP 4: If I’m given a single slide to use as my communication vehicle, I’d want to put more words around everything to make sure it makes sense and attempt to answer the question of “So what?” I’d use titling and text together with my visuals—being conscious of white space and alignment—to create clear structure on the page. I’d also emphasize sparingly, both to create visual hierarchy and make the information scannable. This would help tie related elements together, easing the processing for my audience. See Figure 5.2c.

Image titled “regional car sales: mixed results,” in which it is briefly explained how there has been a decline overall in the regional average and marked variance by dealership. Two graphs illustrating the same are also provided. The first one is titled “car sales over time,” with the x-axis representing quarters, from all the quarters of 2017 and 2018 to the first three quarters of 2019, and the y-axis representing the number of cars sold. Lines are plotted for the following: Lakeside; Draper; Filmore; Wildland; Sealy, North, Orly; Southlake, Beacon; Rosedale, Westlake; Oakley; Pierce; and Mare Valley. A line representing the regional average is also plotted among the others, and is thicker and bolder than all the other lines. Beside this is a bar graph illustrating car sales by dealership for the third quarter of 2019, with a bar drawn representing the regional average as well.

Figure 5.2c Presenting on a single slide

In Figure 5.2c, I added a second graph—horizontal bars showing how car sales across the various dealerships compare for the most recent time period. I’m making the assumption that this is the most relevant and that we don’t necessarily need the full view over time for each (we can see the highs and lows with relative ease on the left, but if it’s important to be able to distinguish the middle ones, that becomes impossible given the current design).

I’ve added more text around the graphs, both clear concise titling and descriptive text to help make what I’d like to highlight to my audience clear. I’ve used white space and alignment to create a two-sided layout. If we step back and consider how our audience is likely to process this information, they will probably start at the top left, read the slide title, then move downward and read “Overall decline in regional average” and see the black line below in the graph that depicts this. Then they’d typically move to the right-hand side, perhaps pausing on the “Marked variance by dealership” title or the blue and orange text. Finally, they’d look down to the right graph, see the black average tied to the graph on the left, as well as the blue and orange bars that are connected through similarity of color to the above words.

I did try out a second iteration of the left graph in Figure 5.2c that maintained consistent coloring of blue and orange for the top and bottom three dealerships as of Q3 2019 (those called out on the right). While I liked the consistency, I felt these competed too much for attention with the Regional Avg on the left, so I decided to use these colors sparingly on the right graph only.

The primary point here is to be thoughtful in the overall structure and design of your visuals and the pages that contain them. Don’t simply rely on tool defaults; once you make a graph, there is still more work to be done. When we design thoughtfully, we can create a better experience for our audience, improving the odds of successful communication.

Exercise 5.3: pay attention to detail & design intuitively

The following example employs a two-sided structure similar to where we ended in Exercise 5.2. However, clear structure is not the only thing we need for success. Attention to detail is a hugely important aspect of creating effective visual design. Let’s look at another example and how attention to detail and thoughtful design choices can improve our visual communications.

Let’s assume you work for an on-demand print company that targets small businesses. One of the metrics you track is customer touchpoints—how many times someone at your organization interacts directly with a customer—both in aggregate and on a per-customer basis. There are three primary modes of connection: phone, chat, and email.

Your colleague has put together the following slide summarizing touchpoints over time and asked for your feedback. Spend a moment examining Figure 5.3a, then tackle the following.

Image titled “Total touchpoints and touchpoint per customer remains flat.” A bar graph and a table are also provided, with the bar graph illustrating how the total number of touchpoints have increased slightly to ~500K (+3.8% y/y), and the table representing how the touchpoints per customer have remained flat over the past 3 years, under the column heads phone, chat, email, and total, and the row heads January ’18, January ’19, and January-20.

Figure 5.3a Your colleague’s original slide

STEP 1: What feedback would you give your colleague about the design of their slide related to attention to detail? Write down your thoughts. Focus on not only what you would recommend changing, but also why. Ground your feedback using design principles we have discussed.

STEP 2: Take a step back and think about how the data is designed: stacked bars on the left, table on the right, and additional numbers in the text. Are there changes you would make to the way this data is shown? How might you design the data in a way that is more intuitive for our audience? Write down your ideas.

STEP 3: Download the data and original visuals. Remake the slide, incorporating your feedback and ideas in the tool of your choice.

Solution 5.3: pay attention to detail & design intuitively

STEP 1: First, let me say that attention to detail is hugely important in our visual designs. Typically, the graph or the slide is the only part of the analytical process that our audience actually sees. Whether they should or not, people tend to assume things about the overall level of detail that was paid based on this piece that they can directly observe. So make your visuals and the pages that contain them imply good things about your overall work!

Related to attention to detail, I would concentrate my feedback on three areas: consistency, alignment, and intuitive axis labels. Let’s review each of these.

Consistency is an important aspect when it comes to attention to detail: be consistent in your approach unless it makes sense for some reason not to be. Changing design elements up randomly or otherwise introducing unnecessary inconsistency can be attention grabbing, distracting and looks sloppy. Specific things that catch my eye in this case are: inconsistent decimal points on y-axis labels of graph and in the bottom Email cell of the table. Also the way the dates are shown is inconsistent between the graph and the table, and not even consistent within the table!

When it comes to alignment, as we’ve discussed, centered text often looks messy. When it flows onto multiple lines, it creates jagged edges, as we see in the center-aligned statements above the graph and table. While I might preserve the centering of numbers in the table (if I were to keep the table; more on that shortly), I would be consistent in the vertical alignment. I would center consistently in that direction as well (currently the dates in the table are top aligned, while the numbers are center aligned vertically). Also, the overall elements on the page could be aligned a little better—the table isn’t directly under the line above it and the orange box on the far right could be sized to better fit the cells it’s meant to highlight.

My final main point of feedback on the current design would be in regards to intuitive axis labels in the graph. Currently, every fifth month is labeled on the x-axis. We can see why this was done: there isn’t sufficient space to label every point, particularly given the long format of the dates. One method is to label only some, though we should be thoughtful with what frequency we choose to label. Choose a frequency that will be intuitive based on the data being shown. For example, every seventh point labeled would make sense for daily data (since there are seven days in a week) or it could make sense to label by weeks instead of days. For monthly data, every third or sixth month would be more intuitive. If you have limited space with time on the x-axis, you could label by quarters or years. We could pull the years out as a supercategory and either abbreviate the months and arrange the text vertically, or just use the first letter of each month to maintain horizontal text. I’ll employ this latter method in my solution. There isn’t a single or preferred approach: choose axis labels that will be intuitive, helpful, and legible for your audience.

As additional points of feedback, I’d reduce redundancy by removing “Touchpoints” from each category label in the graph and also label the data directly so my audience doesn’t have to go back and forth between the legend and the graph to decipher the data. Color is also clearly something we can play with here, but I’ll reserve that for when I consider the overall design momentarily.

Figure 5.3b illustrates what my remake of the graph would look like incorporating the changes I’ve outlined.

Image titled “touchpoints per customer over time,” containing a bar graph with bars plotted for phone, chat, and email. Marked on the x-axis are all the months of years 2018 and 2019, and January 2020. Marked on the y-axis are touchpoints per customer.

Figure 5.3b Redesigned graph with greater attention to detail

STEP 2: When it comes to stepping back and designing the data in a way that makes sense, there are more sweeping changes I would recommend. Let’s shift next to how we might design the data to make sense.

Going back to Figure 5.3a, there are a lot of numbers between those called out in the titles, those added to the graph, and those in the table. We don’t need all of these. Let’s talk first about total number of touchpoints. This is referred to in the title and through text and numbers that have been added to the graph. If this information is critical, I could break it out on a separate slide and graph it (and would probably include more data than simply the two yearly numbers that are mentioned currently). Otherwise, I’d be apt to include the additional context as a sentence rather than clutter my graph with it.

Turning our attention to the table: this doesn’t add any new information. The data shown there is already graphed in the January points in the graph on the left. So rather than break it out separately, if these specific numbers are of interest, I’d recommend putting them on the graph directly with the data. In this case, I don’t think these numbers are critical. If we step back and think about the story, that will lead us to look at different views of the data, both to get a better understanding of where we want to focus and the story we can tell, as well as to figure out how to make that clear and easy for our audience.

Let’s focus on other ways we could visualize the data. One challenge with stacked bars is that we can really only compare the first data series at the bottom of the stack and the total (overall height of bars) with ease. If anything interesting is happening in a data series up the stack, it becomes quite difficult to see because those pieces are stacked on top of other pieces that are also changing. To allow for both of these comparisons with greater ease, I could unstack the bars and turn them into lines: see Figure 5.3c.

Image of a graph titled “touchpoints per customer over time,” with lines plotted for phone, chat, email, and total. Marked on the x-axis are all the months of years 2018 and 2019, and January 2020. Marked on the y-axis are touchpoints per customer.

Figure 5.3c Graph the data as lines

In Figure 5.3c, I unstacked the categories and graphed each type of touchpoint—Email, Phone, Chat—as lines. I added an additional line representing the Total. I also stripped color out of the graph entirely, so we can look at all of the data critically and determine where it might make sense to focus. We’ll add some color back in a later step.

When I look at this data, what jumps out at me—even more than with the stacked bars—is the apparent seasonality. When we want to clearly see seasonality (or in some cases, a lack of seasonality), it can work well to use a single year of months—for example, from January to December—for our x-axis, with a different line for each year. This change will result in a lot of lines if we do it for every category. With different data, we may need to split it into multiple graphs. However, here, given the spread of the data, we can make it work in a single graph. See Figure 5.4d.

In Figure 5.3d, I’ve changed the x-axis to January through December, plotting each year as its own line. Within each color grouping, the thin line represents 2018, the thick line represents 2019, and the circle points at the left represent our single month of data—January—for 2020. Notice that we see pretty consistent seasonality in Total touchpoints, with higher touchpoints per customer in January and December and relatively lower through the rest of the year. Don’t worry if you aren’t loving this graph—it’s an interim step to help get us to where we’re going next.

Image of a graph titled “touchpoints per customer over time.” Marked on the x-axis are all the months in a year, from January through December. Marked on the y-axis are touchpoints per customer. Two lines each, one thin and one thick, for years 2018 and 2019, respectively, are plotted for phone, email, and chat, with a dot each plotted for the same, for the year 2018. A dot is also plotted for the line representing “total,” along with two lines, one faded and one bold, for 2018 and 2019, respectively.

Figure 5.3d Change x-axis to monthly calendar year to better see seasonality

I’m going to assume that we’re standing in February 2020, since the most recent data point is January 2020. Given this, plus the shape of the data over the course of the year (higher at beginning and end, as mentioned, and lower in the middle), I am going to adjust my x-axis. Rather than the typical calendar year (January to December), I will change it to go from July to June to make it easier to see how recent months have compared year-over-year. In doing this, I’ll also eliminate some data, solve for the awkward single data points in 2020, and simplify my lines to “This Year” and “Last Year.” See Figure 5.3e.

Image of a graph titled “touchpoints per customer over time.” Marked on the x-axis are all the months in a year, from July through June of next year. Marked on the y-axis are touchpoints per customer. Two lines each, one thin and one thick, for last year and this year, respectively, are plotted for phone, email, chat, and total. The lines drawn for “this year” stop midway, extending from July through only January of next year; they are labeled the following: “1.1 total,” “0.5 email,” “0.34 phone,” and “0.26 chat.”

Figure 5.3e Change x-axis to run from July to June

With this view, I can make a couple of observations that didn’t jump out at me before. First, let’s pause on the Total: we see this year’s trend has followed last year’s closely. However, January touchpoints per customer are lower than last year. Moving downward, we see both Email and Phone touchpoints are trending lower this year compared to last year. Chat touchpoints, on the other hand, illustrate something different: Chat touchpoints have been consistently higher this year compared to last, with that difference increasing in January.

You may notice the varying decimal places on the labels in Figure 5.3e. I chose to round to one point past the decimal for Total and Email given the magnitude of the numbers. I took it out to an additional place past the decimal for Phone and Chat, both so that we can evaluate the small but potentially meaningful difference and so two points of varying heights wouldn’t be labeled with the same number (in this case 0.3), which could cause confusion.

STEP 3: Pulling this all together and putting words back around it, my final slide might look something like Figure 5.3f.

Image titled “total touchpoints flat, shift toward chat.” Following this is a brief introduction, and the question “how should this inform go-forward strategy and goals?” Following this is a graph titled “touchpoints per customer over time.” Marked on the x-axis are all the months in a year, from July through June of next year. Marked on the y-axis are touchpoints per customer. Two lines each, one thin and one thick, for last year and this year, respectively, are plotted for phone, email, chat, and overall. The lines drawn for “this year” stop midway, extending from July through only January of next year; they are labeled “1.1,” “0.5,” “0.34,” and “0.26” for overall, email, phone, and chat, respectively. A brief description is provided for each of these.

Figure 5.3f My redesigned slide

If I were talking through this information in a live setting, my slides would focus on the graph and I would build it piece by piece (we’ll look at examples of this in Chapters 6 and 7). However, if I have a single slide to get the information across—perhaps this is a slide that’s being incorporated into a broader deck that will be sent around—then I want to put all of the words around it so it makes sense. The words I’ve added are mostly descriptive; ideally we’d use this annotation to lend additional context, provide framing of whether what we are seeing is good, expected, and so on. I tied words to the data they describe through similarity of color. The result: when my audience reads the words, they know where to look for evidence in the data and vice versa. I used sparing color, relative size, and position on the page to create visual hierarchy and help make the information scannable.

By being thoughtful in all aspects of our design, we can make our data more easily consumable for our audience, helping ensure that our message comes across clearly.

Exercise 5.4: design in style

Something we haven’t touched upon yet that can influence our design style when communicating with data is brand. Companies often go through great amounts of time and expense to create their branding: logos, colors, fonts, templates, and related style guidelines. Beyond being required to use this, there can be value in rolling branding into how you visualize data: it helps create a cohesive look and feel and can even add some personality into your data communications. Let’s practice applying branding to a graph!

We originally looked at the following graph in Exercise 3.1. Figure 5.4a shows market size over time for a given product. The storytelling with data typical look and feel has been applied. The font is Arial. Titles have been justified at upper left. Axis titles are in all caps. Most elements are in grey except sparing use of color to direct attention (orange for a negative callout and associated data point, brand blue for positive data point and corresponding comment).

Image of a graph titled “market size over time,” with all the months, from January to December, for years 2018 and 2019, marked on the x-axis and sales in $USD billions marked on the y-axis. Along with this graph, brief descriptions are also provided under the heads 2018, 2019, and 2019 forecast.

Figure 5.4a Graph with storytelling with data branding

Download the data and graph then complete the following.

STEP 1: Imagine you work for a brand similar to United Airlines and need to pull together an annual report that involves looking at market size. Start by doing some research: visit United’s website, search Google images, and browse related pics. Write down 10 adjectives that describe the brand. Recreate Figure 5.4a, rebranding with a style similar to United Airlines. Reflect on how this affects your choice of colors and font. How else might this brand influence changes in the design of this graph?

STEP 2: Let’s do this a second time. In this instance, you are an analyst at Coca Cola. Repeat the exercise, first by doing some research and making a list of words or feelings you’d associate with the brand. Then recreate this graph again, rebranding based on your research. What changes did you make to achieve this? How does red as a brand color play into your design?

Solution 5.4: design in style

STEP 1: Words that come to mind when I look at the United Airlines website and search Google for related images include: clean, classic, bold, blue, navigable, open, minimal, simple, serious, and structured. The logo has an intense dark blue background, with center-aligned, bold, white, capital letter text and sparing use of a lighter, more muted shade of blue. I can incorporate these feelings and elements into my design of the graph. See Figure 5.4b.

Image of a graph titled “market size over time,” with all the months, from January to December, for years 2018 and 2019, marked on the x-axis and sales in $USD billions marked on the y-axis. Along with this graph, brief descriptions are also provided under the heads 2018 and 2019.

Figure 5.4b Branding inspired by United Airlines

My main initial changes were to color and font. I used the dark and light blues throughout, with the exception of the graph axes: choosing black for axis titles and labels and grey for axis lines. The font I chose (Gill Sans) takes up a bit more space than Arial. This looked overly crowded with the text boxes above the data line. To remedy this, I moved the text boxes below the data and also reduced the y-axis maximum to shift the line upward, creating room below it to reposition the text boxes. I positioned the footnote below the graph.

I center-aligned most of the text (I played with left and right alignment of the large text boxes, and while I liked the structure of the clean edge that created, something about it didn’t feel fitting with the rest of the graph). The United logo and brand connote a feeling of clear organization to me, so I manifested that here by adding blue rectangles behind the title and footnote and also a blue border around the graph. I thickened the data line because I like how this balances out the bold title text. Even though the primary brand color is blue (similar to SWD), this rebranded graph feels quite different than the original Figure 5.4a as a result of these changes.

STEP 2: Next, let’s be inspired by the Coca Cola brand. I reviewed can and bottle labels, logos, and advertisements. Words I would associate with this brand include: red, silver, round, classic, bold, sweet, playful, international, diverse, and wet (there’s often condensation shown on the cans!). I observe a heavy use of red backgrounds, contrasting white text and sparing use of black. Text is typically center-aligned and frequently features a combination of bold all caps surrounded by slightly smaller non-bold all cap text. Words are used minimally. I’ll fold these components into my redesign. See Figure 5.4c.

Image of a graph titled “market size over time,” with all the months, from January to December, for years 2018 and 2019, marked on the x-axis and sales in $USD billions marked on the y-axis. On the plotted line, the point marked $1.5B is labeled “Jul decrease, product X recalled,” and the point marked $1.8B is labeled “Feb increase, new study released.”

Figure 5.4c Branding inspired by Coca Cola

One aspect of the Coca Cola brand that I chose not to incorporate is the cursive-like text in the Coca Cola logo. While this is fine for a logo, my priority for text related to the graph is legibility.

Text should be large enough to read and in a font that is easy to read. I opted for a sans serif font similar to the supporting text I saw on can and bottle labels (Montserrat, a free font that I downloaded). To incorporate some of the round feel that you get from the logo, I opted for a rounded (rather than rectangular) background shape.

Speaking of the background, the red background in Figure 5.4c is quite bold. This might be fine if it is the only graph we are looking at, or if graphs will be projected one by one on slides. If there will be multiple graphs on a single page or if I anticipate that my audience will want to print it, I may opt for a lighter “Diet Coke” version. See Figure 5.4d.

Image of a graph titled “market size over time,” with all the months, from January to December, for years 2018 and 2019, marked on the x-axis and sales in $USD billions marked on the y-axis. On the plotted line, the point marked $1.5B is labeled “Jul decrease, product X recalled,” and the point marked $1.8B is labeled “Feb increase, new study released.”

Figure 5.4d Less ink-heavy background

In Figure 5.4d, I opted for a light grey background, similar to the silver I saw incorporated into some of Coca Cola’s designs. With this lighter background, black stands out more, so I opted for a few more black elements compared to the original remake. I can use white, which fades to the background on grey (whereas it stood out a lot against red) for elements such as axis lines. I limited my use of brand red to the graph title and data.

Red as a brand color works well with grey and sparing use of black, and looks quite slick as we see in Figure 5.4d. When it comes to colors, there is a tendency to use red and green to denote bad and good or negative and positive, respectively. While I recommend against this due to considerations for colorblindness, I especially discourage it for organizations having red as a brand color. You want positive things associated with your brand, so if your brand color is red, don’t associate red with negative or bad things. One alternative in this circumstance can be to use red for good and black for bad. In the preceding graph, I’ve used red for general data and black for call outs (without connotation of bad or good), which is another option.

Stepping back and summing up: there can be value from rolling branding into how you communicate with data. If you work with client organizations, consider how you can undertake research similar to what we’ve done here and integrate your learnings into your designs. When it comes to you own organization’s brand, many companies have style guides that you can use to better understand the brand and what options you may have. Regard these not as annoying constraints, but rather as a lodestar that can inspire creativity and cohesiveness across your data communications.

Image of a sticky note, on which “practice on your own” is written. Image containing text stating how a lot can be learned by emulating effective data visualizations and that an exercise focusing on the same is provided thereinafter.

Exercise 5.5: examine & emulate

One piece of advice I often give is to simply observe the examples of data visualization you encounter in the world around you. Pause to reflect: for the good ones, what works well that you can emulate in your own work? For the not-so-good ones, identify what pitfalls the creator fell into that you can avoid. Let’s do an exercise when it comes to the effective side of things.

Rather than simply pause and figure out what works well, we can go a step further and take the time to emulate the effective examples we identify, recreating them and learning how to achieve the aspects of effective designs in our tools. The level of attention to detail this process forces can help us be more thoughtful in our own work and sharpen our visual design skills and style. Let’s practice all of this!

First, identify a visual (graph or slide) someone else created that you believe is effective. This could be an example from a colleague at work, the media, storytellingwithdata.com, or elsewhere. After you’ve chosen an example, tackle the following.

STEP 1: Consider the four aspects of design we’ve discussed: (1) affordances, (2) aesthetics, (3) accessibility, and (4) acceptance. Judging from the visual you’ve chosen and making assumptions as needed for the purpose of the exercise—how did the creator account for each of these areas through the choices they made in their design? Write a few sentences describing how each of these four aspects of design were achieved.

STEP 2: Stepping back, why is it that the example you’ve chosen is effective? Are there specific elements of thoughtful design that make it work that you haven’t already described? How might you generally apply these learnings to your own work?

STEP 3: Is there anything about the example you’ve chosen that you believe is not ideal or that you would have done differently? Write a couple of sentences outlining your thoughts.

STEP 4: Recreate the visual you’ve identified in the tool of your choice. First, work to emulate it as closely as you can when it comes to the specifics (typography, color, and overall style).

STEP 5: Make another version that incorporates any of the aspects you outlined in Step 3 that you would have approached differently. Look at your visuals from Step 4 and Step 5 side by side. Which do you prefer and why?

Exercise 5.6: make minor changes for major impact

It’s frequently a lot of little things that work together to create a great or not-so-great experience for our audience in the data communications we design. This means that small changes can have big impact in improving our visual designs. Let’s look at an example and also practice how these modifications can add up to help us take work from acceptable to exceptional.

Let’s say you work at an advertising agency and have been asked to assess a recent six-week ad campaign for a client. The data you are focusing on is incremental reach, which you measure “per 1,000 impressions.” You have a colleague who did a similar analysis for a different client recently, so rather than start from scratch, you’ve updated her visuals with your data as a starting point. Next, you want to edit and refine.

Figure 5.6 shows the visual you’ve created. Spend a couple of minutes to familiarize yourself with the details, then complete the following.

Image titled “Incremental reach per 1,000 impressions,” along with the description “digital platforms proved successful at reaching new viewers later in the campaign that were not exposed to TV ads.” Following this are two graphs. One is a bar graph with bars drawn for TV, digital, desktop, phone, and tablet, with incremental reach per 1,000 impressions marked on the y-axis. A brief description is also provided. In the other graph, the x-axis represents weeks 1 to 6; on the y-axis, percentages are marked from 0 to 0.35%. Lines are plotted for TV, digital, desktop, phone, and tablet, and a brief description is also provided.

Figure 5.6 Your original slide

STEP 1: Pause first to consider what is working well. What do you like about the current view of the data?

STEP 2: A number of steps have been taken in Figure 5.6 to direct attention and help explain. Which are working well? Where and how might you adjust?

STEP 3: What clutter would you eliminate? What elements would you push to the background?

STEP 4: What other design choices made here do you question given the lessons in this chapter? What additional changes would you make?

STEP 5: Download the data and current graphs. Refine the visual by making the changes you’ve outlined in the steps above using the tool of your choice.

Exercise 5.7: how could we improve this?

Imagine you work for the same on-demand printing company that we assumed in Exercise 5.3 when we looked at customer touchpoints data. How your company interacts with customers is one possibly interesting topic, as we saw. Another might be the competitive landscape for your products. As part of this latter area of focus, your colleague has been asked to pull together some data on your main competitors’ market share over time.

He comes to you with his slide—Figure 5.7—and asks for feedback.

Image titled “Top competitors remain present, with an increase in use of XBX Business.” A bar graph is provided, with four bars each---representing years 2016 through 2019---for “I will do it myself,” “Local printer,” “PrintPresse,” “Print4Cheap,” “Custom Print,” “XBX Business,” “XBX Standard,” and “Other.” A brief description is also provided.

Figure 5.7 How could we improve this?

Study Figure 5.7, then complete the following.

STEP 1: List 5 design improvements you would recommend making to this slide. Articulate not only what, but also why. How specifically will your ideas improve the design?

STEP 2: Download the data and execute the changes you’ve outlined in the tool of your choice.

STEP 3: Consider how you would present this material in a live meeting compared to something that has to be sent around as a stand-alone document. How would your approach change between these two instances? Write a few sentences to explain.

Exercise 5.8: brand this!

As we explored in exercise 5.4, there are ways that we can incorporate company or personal brand into how we communicate with data. This can be facilitated through choice of font, color, and other elements. In some cases, it may mean incorporating a logo or using a customized slide or graph template. Let’s practice how you can incorporate branding in a graph.

Suppose you work for a pet food manufacturing company. Look at the following graph, Figure 5.8, which depicts relative cat food sales over time (expressed in terms of % of total) for a given brand line, Lifestyle. Complete the following.

Image titled “Lifestyle brand sales: Natural making up increasing proportion.” A bar graph is provided, with the x-axis representing all the quarters  of years 2018 and 2019, the y-axis representing percentage of total lifestyle brand sales, and each bar representing Lifestyle, Diet Lifestyle, Lifestyle Plus, and Lifestyle Natural.

Figure 5.8 Brand this!

STEP 1: Identify two recognizable brands. They don’t have to be at all relevant to this example—these could be company brands or sports teams, for instance. It will be more fun and a better exercise if you pick two that are quite different from each other in terms of style. Research images related to the brand and list 10 adjectives that describe the look and feel of each. Remake this visual two times, incorporating branding components of each of these, respectively.

STEP 2: Take a step back and compare the two visuals you’ve created. How does each feel? Were you successful bringing to life the adjectives you outlined in Step 1? How can branding affect how we communicate with data generally? What are some pros and cons of this? Write a few sentences with your thoughts.

STEP 3: Consider your company or school’s brand. What descriptors would you associate with it? Remake the graph again, styling it accordingly. To take it a step further, integrate your branded graph into a slide, applying consistent branding to any elements you add (title, text, logos, and colors).

STEP 4: How would you generalize the components of brand we should think about when we visualize and communicate with data? What are the benefits of doing so? Are there scenarios where we may not want to be consistent with brand in our data communications? Write a few sentences outlining your thoughts.

Image of a sticky note, on which “practice at work” is written. Image with text stating how to draw people to our creations, and instructing to pick a work project to practice the same.

Exercise 5.9: make data accessible with words

When you look at a graph you made, it’s likely you know what you’re looking at: what to pay attention to, how to interpret it, and what to take away. But as we’ve discussed, this isn’t necessarily clear to our audience in the same way. Words used well can be a strategic tool for making our data comprehensible for our audience, answering questions before they arise, and helping them to draw the same conclusion that you have.

There are some words that have to be present: every graph needs a title and every axis needs a title. Exceptions to this will be rare (for example, if your x-axis reflects months, you probably don’t need to title it “months of the year”—you do, however, need to make it clear what year it is!). Make it your default to title axes directly so your audience doesn’t have to guess or make assumptions about that at which they are looking. Also don’t assume that people looking at the same data are going to walk away with the same conclusion. If there is a conclusion you want your audience to draw—which there should be when using data for explanatory purposes—state that in words. Use what we know about preattentive attributes to make those words stand out: make them big, make them bold, and put them in high priority places such as the top of the page.

Speaking of which—the top of the page (in Figure 5.9, “Words make data accessible!”) is precious real estate. It’s the first thing your audience encounters when they see your page or screen. Too often, we use this precious real estate for descriptive titles. Instead, use this for an active title; put your key takeaway there so your audience doesn’t miss it. This also works to set up what will follow on the rest of the page. (We’ll further explore and practice takeaway titling in Chapter 6.)

Image titled “Words make data accessible!” The following recommendation is provided: “use text to highlight key points.” The graph is titled “Graph title,” the x-axis is titled “axis title” and has the months January through December marked on it, the y-axis is labeled “axis title” has numbers from 0 through 14 marked on it, and the highest point on the plotted line is labeled thus: “annotate important points directly on graph.”

Figure 5.9 Use words wisely

Also consider what is helpful to have present but doesn’t necessarily need to draw attention. For example, when showing data, it is often useful to have a footnote that lists details such as the data source, the time period represented (or time at which the data was extracted), assumptions, or methodology details. These are things that can help your audience interpret the data and lend credibility, as well as give you a reference in the event you need to replicate and create something similar in the future. It’s important, but doesn’t need to compete with other things for attention. This text can be smaller, grey, and in lower-priority places on the page, like the bottom.

After you’ve created your graph or slide, run through the following questions to help ensure you are using words wisely:

  • What is the key takeaway? Have you stated it in words prominently so your audience doesn’t miss it?
  • Does your graph have a title? Is it descriptive enough to set the right expectation for your audience when looking at the data?
  • Are all axes labeled and titled directly? If not, what steps have you taken to make it clear to your audience?
  • Do you have a footnote listing details that are important, but don’t need to take main stage? If not, should you?
  • Stepping back: does this seem like an appropriate amount of words given how you’ll be communicating to your audience? Typically, you’ll have fewer words on a slide for something you’ll be presenting live and more words for something that is being sent around and has to stand on its own. Does your level of words in the given case match how the data will be communicated?

Exercise 5.10: create visual hierarchy

Affordances are aspects of our visual design that help our audience understand how to interact with the data we are communicating. We can draw attention to some components and push others to the background to create visual hierarchy and make our communications scannable. Want a quick test to see if you’ve done this well? Squint your eyes to see the overall impression of the chart. This changes your perception enough to get fresh eyes on a design. The most important elements should be the first things you see and the most prominent.

For more specific tips on how to achieve visual hierarchy, read through the following from SWD (paraphrased from Lidwell, Holden, and Butler’s Universal Principles of Design) for highlighting the important stuff and eliminating distractions. Determine how you can apply these to your next project!

Highlight the important stuff

  • Bold, italics, and underlining: Use for titles, labels, captions, and short word sequences to differentiate elements. Bold is generally preferred over italics and underlining because it adds minimal noise to the design while clearly highlighting chosen elements. Italics add minimal noise, but also don’t stand out as much and are less legible. Underlining adds noise and compromises legibility, so should be used sparingly (if at all).
  • CASE and typeface: Uppercase text in short word sequences is easily scanned, which can work well when applied to titles, labels, and keywords. Avoid using different fonts as a highlighting technique, as it’s difficult to attain a noticeable difference without disrupting aesthetics.
  • Color is an effective highlighting technique when used sparingly and generally in concert with other highlighting techniques (for example, bold).
  • Inversing elements is effective at attracting attention, but can add considerable noise to a design so should be used sparingly.
  • Size is another way to attract attention and signal importance.

Eliminate distractions

  • Not all data are equally important. Use your space and audience’s attention wisely by getting rid of noncritical data or components.
  • When detail isn’t needed, summarize. You should be familiar with all the details, but that doesn’t mean your audience needs to be. Consider whether summarizing makes sense.
  • Ask yourself: would eliminating this change anything? No? Take it out! Resist the temptation to keep things because you worked hard to create them; if they don’t support the message, they don’t serve the purpose of the communication.
  • Push necessary, but non-message-impacting items to the background. Use your knowledge of preattentive attributes to de-emphasize supporting details. Grey works well for this.

Exercise 5.11: pay attention to detail!

Many elements add up to create the overall experience our audience feels when faced with the visuals we create. Have you ever noticed how some designs feel easy and elegant, while others feel clunky and complicated? Paying close attention to details can help ensure the visuals we create are met with happiness by our audience. Here are some specific aspects of your visual design to consider to achieve this—the next time you create a graph or slide, read through and apply the following.

  • Use correct spelling, grammar, punctuation, and math. This should go without saying, but I encounter examples regularly where there are issues of this sort. When it comes to misspellings, this is an excellent reason to get a second set of eyes on your work, soliciting feedback from someone else. Our brains actually fix errors in our work so that you might not even catch a mistake you’ve made! (Unfortunately, that innocent oversight may end up being the unintended focus of your audience’s attention.) A trick I once heard for spell-checking your own work is to read it backwards: you can’t skim when you do this and so it’s easier to identify mistakes. Or you can put it in a really ugly font, which has a similar effect. Also if you show math, make sure it is correct—there’s no bigger credibility-killer than math that doesn’t add up!
  • Precisely align elements. As much as possible, aim to create clean vertical and horizontal structure across all elements (avoid diagonal, which looks messy, is attention grabbing, and slower to read in the case of text). Use table structure or turn on gridlines or rulers in your tool to precisely line things up. As I’ve mentioned, I’m a fan of upper-left-most justifying graph titles and axis titles. This creates nice framing for the graph (particularly with all cap axis titles, which form clean rectangles compared to mixed case). Also, given the typical zigzagging “z” of processing, this positioning means your audience hits how to read the data before they get to the actual data. Bonus!
  • Use white space strategically. Don’t fear white space or fill it just because it’s there. White space helps make the things that aren’t white space stand out. Use white space to set things apart. Paired with good alignment, this can help you create organized structure in your graph or on your page.
  • Visually tie related things together. When someone looks at the data, make it clear where to look in accompanying text for related info. When they read text, make it clear where they should look in the data for evidence of what’s being said. Think back to the Gestalt principles that we covered in Chapter 3 for methods to visually tie elements together; specifically, turn back to Exercise and Solution 3.2 for an illustration.
  • Maintain consistency when it makes sense. When things are different, people wonder why. Don’t make your audience use their brainpower for this unnecessarily. If it makes sense to graph things in a similar manner, do so. If you use a specific color to direct attention in one place, keep this consistent elsewhere unless you have a good reason to change it.
  • Observe the overall “feel” of your visual. Step back and consider: how does the visual you’ve created feel to look at? Is it heavy or complicated? How can you ease this? If unsure, get feedback from someone else—ask them for adjectives they would use to describe your work and refine as needed.

Exercise 5.12: design more accessibly

The following is adapted from Amy Cesal’s guest post on the SWD blog; you can read her full article, which includes a number of examples and links to additional resources, at storytellingwithdata.com under the title “accessible data viz is better data viz.”

Often, when we are creating charts and graphs, we think of ourselves as the ideal user. This is not only a problem because we know more about the data than the target user but also because other users might have a different set of constraints than we do.

Inclusive design principles and accessibility are important to take into consideration when designing data visualization because they help a broader audience understand your graphic. Designing with accessibility in mind can even help make your visualizations easier to understand for people without disabilities.

Being clear with text, distinctive labeling, and adding multiple ways to identify the point to your visuals will make it easier for people with impairments and those without to interpret your graphs. There are easy ways to add the principles of accessibility into your visual communications. Here are five simple ones:

  1. Add alt text. Alternative text (referred to as alt text) is displayed when the image cannot be. Screen readers, the assistive technology used by people who are visually impaired, read alt text out loud in place of people seeing the image. It’s important to have valuable alt text instead of “figure-13.jpg,” which doesn’t help a user understand the content they are missing. Screen readers speak alt text without allowing users to speed up or skip, so make sure the information is descriptive but succinct. Good alt text includes one sentence of what the chart is, including the chart type for users with limited vision who may only see part of it. It should also include a link to a CSV or other machine-readable data format so people with impaired vision can tab through the chart data with a screen reader.
  2. Employ a takeaway title. Research suggests that users read the title of the graph first. People also tend to just rephrase the title of the graph when asked to interpret the meaning of the visualization. When the graph title includes the point, the cognitive load of understanding the chart decreases. People know what to look for in the data when they read the graph takeaway first as part of the title.
  3. Label data directly. Another way to reduce cognitive burden on users is to directly label your data rather than using legends. This is especially useful for colorblind or visually impaired users who may have difficulty matching colors within the plot to those in the legend. It also decreases the work of scanning back and forth trying to match the legend with the data.
  4. Check type and color contrast. Colorblindness is an issue for 8% of men and 0.5% of women with Northern European ancestry. However, we should also consider users with low vision and a variety of other conditions that affect vision. The Web Content Accessibility Guidelines (www.w3.org) specify necessary contrast and text sizes for readability on screen. There are a number of tools to help you abide by these contrast and size standards, for example, the Color Palette Accessibility Evaluator.
  5. Use white space. White space is your friend. When information is too densely packed, the graphic can feel overwhelming and unreadable. It can be helpful to leave a gap between sections of a chart (for example, outlining the sections of a stacked bar in white). Judicious use of white space increases the legibility by helping to demarcate and distinguish between different sections without relying only on color. This can also supplement accessible color choices by helping users distinguish the difference between colors that identify separate sections.

These are just a few things you can do to help everyone easily comprehend the graphs that you create. You should strive to make sure that everyone—not just you or your ideal user—understands the point of the visualization. When you consider accessibility, you create a better product for all.

The next time you need to communicate with data, refer to and apply these tips!

Exercise 5.13: garner acceptance for your designs

People dislike change. This is a simple fact of human nature. In the scenario where we’ve always shown data in a certain way and people are attached to it—how do we convince them to do things differently? What should we do in general when met with resistance from our audience?

This is a change management process. In the same way that we considered our audience in the exercises in Chapter 1 and tried to understand what motivates them, we can do that here as well: in this situation our audience becomes those whose behavior we want to influence. First and foremost, when we want to convince our audience to be open to our designs, we need to do it in a way that works for them.

The wrong way to go about changing their minds sounds something like this, “I just read this book, and I learned that we’ve been doing it wrong; we should really be looking at it like this.” That might be easy, but it’s not so compelling or inspiring. So unless you’re the boss and people have to do what you say (even if that is the case, you should probably be more subtle in your approach!), you have to work to influence your stakeholders or colleagues to change.

Here are a few strategies from SWD—plus a couple of new ideas—that you can leverage for gaining acceptance in the design of your data visualization.

  • Articulate the benefits of the new or different design. Sometimes simply giving people transparency into why things will look different going forward can help them feel more comfortable. Are there new or improved observations you can make by looking at the data in a different way? Or other benefits you can articulate to help convince your audience to be open to the change?
  • Show the side-by-side. If a different approach is clearly superior to the way things have been done, showing them next to each other will demonstrate this. Couple this with the prior suggestion by showing the before-and-after and explaining why you want to shift the way you are looking at things.
  • Provide multiple options and seek input. Rather than prescribing the design, create several options and get feedback from colleagues or your audience (if appropriate) to determine which design will best meet the given needs. Involve stakeholders in the process—they’ll be more bought into the solution as a result.
  • Get a vocal member of your audience on board. Identify influential members of your audience and talk to them one-on-one in an effort to gain acceptance of your design. Ask for their feedback and incorporate it. Identify champions—people outside of your team who support what you want to do and can help influence others. If you can get one or a couple of vocal members of your audience or their peers bought in, others may follow.
  • Start with the familiar and transition from there. This can be a particularly effective strategy in a live setting. Begin with the view that your audience is used to seeing, then pivot to a different one, making it clear how this ties back to the original and highlighting what the new visual allows you to see, or how it can help frame the conversation in a new way. When a graph is done well, you’ll often find that you don’t have to spend a lot of time talking about the graph but rather can spend it discussing what the data shows. This can shift the overall conversation in a really helpful way.
  • Don’t replace—augment. As an interim step, rather than change anything, leave it all as it is. Add to this with your new view(s). For example, rather than redesign your regular report, keep it the same. Integrate a couple of slides up front or add content to the email that distributes it, applying best practices in these places. If done well, this is like saying to your audience, “We haven’t changed anything—the data is all there and we are happy to go through it with you, but we’ve already taken the time to do that and here (up front, applying the lessons covered throughout SWD and this book) are the things you should focus on this time.” As your audience gains confidence in your ability to hone in on the right things in effective ways, you can wean dependence on all the data and potentially reduce what you share with your audience over time.

Reflect on whether any of the above can be employed in your situation to help you drive the change that you seek and the acceptance of your visual designs. In general, think about how you can set yourself up for success. Getting to know your audience—those you want to influence to accept your design—and what drives their behaviors can help. Think about not why you think they should change, but why they should want to. Make your approach work first and foremost for them. Refer back to Chapter 1 for exercises that will help you get to know your audience.

Also consider whether it’s a fight worth fighting. Don’t start with big battles. Start with low-hanging fruit and achieve small victories. Over time, you’ll build credibility so if and when you do want to make more sweeping changes, you’ll have earned your colleagues’ and audience’s respect and hopefully have an easier time making it happen!

Exercise 5.14: let’s discuss

Consider the following questions related to Chapter 5 lessons and exercises. Discuss with a partner or group.

  1. What role do words play in making our data visualizations comprehendible? What kind of text should be present in every graph? Are there any exceptions to this?
  2. When creating visual hierarchy in our designs, it’s important both to highlight the important stuff and to de-emphasize some aspects. Which elements of our graphs and slides are good candidates for de-emphasizing? How can we visually push things to the background?
  3. How would you describe thoughtful design when it comes to data visualization?
  4. What does accessibility mean when it comes to communicating with data? What steps can we take to make our designs more accessible?
  5. Is it worthwhile to take the time to make our graphs pretty? Why or why not?
  6. How does personal or company brand come into play when communicating with data? What are some advantages of this? Are there any disadvantages?
  7. Have you ever wanted to make a change to a graph or the way that you visualize data and been met with resistance? What did you do? Were you successful? What strategies can we use to influence our audience in general when this happens? What will you do the next time you face this situation?
  8. What is one specific goal you will set for yourself or your team related to the strategies outlined in this chapter? How can you hold yourself (or your team) accountable to this? Who will you turn to for feedback?
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