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30Days-to-data-storytelling

READ, DO, WATCH, PLAY

We learn best from a diversity of inputs. That’s partly why our previous 30 days exercise sheet was such a huge hit.

It’s critical for analysts and presenters of data to share information in a way that people just get it. Enter data storytelling – a magical elixir to all your data communication woes! Well, maybe not quite. But you should be aware of recent efforts using this timeless approach to deliver information so naturally – through stories.

That’s why we’ve created 30 Days to Data Storytelling.

This exercise breaks down a structured (yet casual) introduction to data storytelling through a variety resources. We wanted to provide a diversity of depth and inspiration. Feel free to skip around or follow our 4 week sequence. Print it and post it near the water cooler or slap it to your virtual desktop.

Enjoy!

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I spent quite a few summer vacations as a kid getting dragged around Europe visiting castles and churches.   It is definitely an experience that I’m more thankful for now than I was at the time.   One of the things that I loved most, even as a child, was seeing the stained glass windows.  I have strong memories of being in Notre Dame in Paris and watching the light come in at dawn or staring at the Chartres Cathedral windows for minutes without moving.

image by Tobyotter via Flickr

image by Tobyotter via Flickr

As a boy, it wasn’t the history, the architecture or an admiration of the faith involved to build these churches.  Those were concepts beyond my ability, knowledge or frankly interest at the time.  What I have come to realize only in the past couple of years is that the windows were meant for me. At the base level, I needed something that could grab my attention and hold it. What I have discovered is that from this standpoint, I am no different than the illiterate masses of the Middle Ages or Renaissance.

I discovered that hundreds of years ago, with a need to engage the European population and educate them on scripture, someone decided it wasn’t the job of masons, who built structures that would last for centuries, but storytellers and designers who could make kids, like me, stop and look.  This was the intent all along as stained glass windows were referred to as “biblia pauperum”, which meant “poor man’s bible”.

Now, with two years under my belt at Juice and hundreds of churches visited, it is interesting to apply the history and beauty of stained glass windows to the field of data visualization and presentation graphics. I now have a better handle on the true value of a designer.  For “design” to work for me, in any type of artistic endeavor, the designer should make me feel that it was designed specifically for me and make it beautiful at the same time to help lengthen my otherwise short span of attention.

As the noise about data visualization and data storytelling grows, it is nice to see that current leading experts in the field also value (and have not forgotten) these 2 design principles provided by our European ancestors.

Consider these two examples:

Design for your audience

  • In a recent blog dated 5/10/13, Stephen Few highlights this important customized approach as the 2nd of 7 tenets for best practices of quantitative Data presentations.

Beauty’s role in dashboard design

  • Back in November of 2009, even before I joined the team, Juice published a frequently downloaded “Guide to Creating Dashboards People Love to Use”. The guide noted that “modern web design has moved on to seek a union of utility, usability and beauty. We must find a similar union when displaying data in business.” (bold and italics added)

What will we learn from these impactful stories, built and told on stained glass sanctuary walls?  Will we preserve the most important principles found on those magnificent etchings? Today, our stories are accessed and downloaded from cloud-based applications and displayed in high resolution graphics on state-of-the-art devices. Yet our challenge is the same: capture the attention and imagination of our viewers – in a user-centric and aesthetically pleasing way.

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Hey all – we have developed a great relationship with John Stasko, Associate Chair of the School of Interactive Computing program at Georgia Tech and the General Chair of the upcoming IEEE VIS 2013 conference. As we’ve talked with John, our conversations seem to always come around to the need for a tighter connection between academia and industry. As a result, we thought it’d be great to introduce John to our tribe through a guest post. Below are just some of the ways John is working to bring academia and industry together. Enjoy! 


Hello – I’m a professor at Georgia Tech and I’ve been working in the data visualization research area for over 20 years. My friends at Juice asked me to write a short guest blog entry providing perspectives from the academic data visualization community and exploring ways to foster more industry-academia collaboration. I’ve found that we don’t work together often enough, which is too bad because each side has a lot to offer to the other.

I personally have benefited from business collaborations in many ways. Since data visualization research is so problem-driven, industrial interaction provides an excellent way to learn about current problems and data challenges. In my graduate course on information visualization student teams design and implement semester-long data visualization projects. I encourage the teams to seek out real clients with data who want to understand it better. Some of the best projects over the years have resulted from topics suggested by colleagues working in industry. Additionally, I often employ guest lecturers such as the guys at Juice to come and speak with my students and provide their own insights about creating visualization solutions for clients.

I hope that in some ways my class is benefiting industry as well and helping to train the next generation of data visualization practitioners. Students learn about all the different visualization techniques and their particular strengths and limitations. They also get hands-on practice both designing visualizations for a variety of data sets and using current “best practice” tools and systems. The course has become a key piece of the Master’s degree in Human-Computer Interaction here at GT.

Another opportunity for interaction is academic research forums such as conferences and workshops. Coming up this October in Atlanta is IEEE VIS, the premier academic meeting for data visualization research. VIS consists of three conferences: Information Visualization (InfoVis), Visual Analytics Science & Technology (VAST), and Scientific Visualization (SciVis). Last fall, the meeting garnered over 1000 attendees for the first time.  VIS is an excellent forum to learn about the state of the art in data visualization research, see the latest systems from commercial vendors, and just rub elbows with like-minded friends and colleagues.  Recent papers at VIS presented tools such as Many Eyes and D3, introduced techniques such as Wordles and edge bundling, or just pondered topics such as storytelling and evaluation.  And the meeting has much more than just research papers – It also includes numerous workshops, tutorials, panels, and posters. This year for the first time we have added an “Industrial and Government Experiences Track”. This program is designed to highlight real world experiences designing, building, deploying and evaluating data visualizations. The presentation mode for this track will be posters on display throughout the meeting with multiple focused interaction sessions. Each submission should include a 2-page abstract about the project and a draft of the poster. They are due on June 27th.  More details about the track can be found on the meeting home page.

I hope to see many of you at VIS in October here in Atlanta!

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Freedom in the 50 States is a very nice site showing how states compare along a variety of measures of freedom. Included in the list are your freedom to gamble, smoke marijuana, drink alcohol, have bachelor parties, and shoot off fireworks and guns. Note: please do not exercise all your freedoms at once.

Freedominthe50states

The colored map and detailed drill-down show 37 measures, yet they forgot to include one important freedom: your freedom to communicate data with ease and create interactive infographics in minutes. Don’t worry, we’ve got a heaping-helping of info-liberation. So before you send an angry e-mail to your congressman, take a look at what we put together with Slice in under an hour:

Freedom50-slice-2

Like the Freedom site, we want users to be able to choose a metric and be able to see which states are freedom-loving and which are freedom-hating (I’m look at you, South Dakota, with your anti-bachelor party policies). That’s our new “map slice” in action, which can color states based on our data or overlay colored bubbles to visualize locations.

To add even more data exploring fun, we created a visualization to let you compare two states side by side.  Check out how North Dakota totally dominates California on freedoms.

FreedomComparison

Having flexed my information visualization freedom muscles, I’m off to ride my bike without a helmet while drinking a 32-ounce soda.

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This week we are conducting a series of free (yes, free!) webinars to show how super easy it is to create an interactive, online report with Slice. You (yes, you!) are invited. If you don’t think you have enough time…that’s our very point. You probably don’t have time to keep building those giant PowerPoint decks full for charts or 15Mb Excel reports. Spend a  little time with us, save a bunch of time with Slice.

Choose a time below and sign up to watch our live webinar.

For the East-coast lunch-eating friends: May 1, 2013 12:00 PM EDT

For our West-coast lunch-eating friends: May 2, 2013 3:00 PM EDT

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Ocean_of_the_Stream_of_Stories

From Edward Tufte’s Visual Explanations, a diagram based on Salman Rushdie‘s description of the Indian epid Kathasaritsagara or Ocean of the Streams of Story.

The hot new concept in data visualization is “data storytelling”; some are calling it the next evolution of visualization (I’m one of them). However, we’re early in the discussion and there are more questions than answers:

  • Is data storytelling more than a catchy phrase?
  • Where does data storytelling fit into the broader landscape of data exploration, visualization, and presentation?
  • How can the traditional tools of storytelling improve how we communicate with data?
  • Is it more about story-telling or story-finding?

Many of the bright minds in the data visualization field have started to tackle these questions — and it is something that we’ve been exploring at Juice in our work. Below you’ll find a collection of some of the best blog posts, presentations, research papers, and other resources that take on this topic.

Note: I’ve excluded a lot of excellent sites and articles that use the phase data storytelling, but treat it as fresh way to talk about data visualization.

1. Blog Posts

Storytelling with Data: What Are the Impacts on the Audience? by Nick Diakopoulos
“I realize there’s a whole lot of inspiration out there, and some damn fine examples of great work, but I still find it hard to get a sense of direction…We need to know what makes a data story “work”. And what does a data story that “works” even mean?”

A Data Scientist’s Real Job: Storytelling by Jeff Bladt and Bob Filbin
“In short, we’re tasked with transforming data into directives. Good analysis parses numerical outputs into an understanding of the organization. We “humanize” the data by turning raw numbers into a story about our performance.”

Coffee & Empathy: Why data without a soul is meaningless by Om Malik
“The idea of combining data, emotion and empathy as part of a narrative is something every company — old, new, young and mature — has to internalize. If they don’t, they will find themselves on the wrong side of history.”

Look ma, no story! by Moritz Stefaner
“Tools have no stories to them. Tools can reveal stories, help us tell stories, but they are neither the story itself nor the storyteller. Portraits have no story to them either. Like a photo portrait of a person, a visualization portrait of a data set can allow you to capture many facets of a bigger whole, but there is not a single story there, either.”

Discussion: Storytelling and success stories by Andy Kirk
“I just wanted to share my view on the distinction I personally make between the two main types of visualisation function: exploratory and explanatory”

The secret to storytelling is in the editing by Garr Reynolds
“Although it is a film about the role of editing in filmmaking, the lessons and principles are applicable to other creative work such as writing, and storytelling of all kinds, including presentations.”

Visualising data: can you see stories? by Chris Twigg
“Narrative can on the one hand be broken down into a set of universal laws and principles that may transcend mediums. Stories have temporality in common (they deal with time) as well as causation (they deal with cause and effect of something). On the other hand there are the more media specific narrative affordances as for example in the way that film, opera, novel and data visualisation – because of their physicality and the dimensions open to them – would be able to give a different ‘staging’ of a story.”

Data Visualization as Storytelling: A Stretched Analogy by Zach Gemignani
“For practitioners of the craft, connecting our work to stories feels satisfying — it is a call to raise our standards and an opportunity to enhance the influence of our field. Stories evoke images of rapt audiences, dramatic arcs, and unexpected plot twists. Unfortunately this analogy is a stretch.”

Why good storytelling helps you design great products by Braden Kowitz
“It’s not uncommon for designers to confuse a beautiful looking product with one that works beautifully. A great technique for creating smarter, better products is to approach them using story-centered design.”

How might rhetoric inform information design? (Quora) and related blog post by Stewart McCoy

2. Presentations

How to Tell Stories with Data (Really) by Edward Segal
PDF version

Interactive_storytelling

Visualising Workflow: Findings Stories and Telling Stories by Andy Kirk

AndyKirk

Storytelling with data visualization: Questions and challenges by Albert Cairo

Alberto_Cairo

Storytelling with Data by Jonathan Corum

Corum

 

3. Research Papers

Visualization Rhetoric: Framing Effects in Narrative Visualization by Nick Diakopoulos (SummaryResearch Paper)
“We carefully analyzed 51 narrative visualizations and constructed a taxonomy of rhetorical techniques we found being used. We observed rhetorical techniques being employed at four different editorial layers of a visualization: data, visual representation, annotations, and interactivity. The five main classes of rhetoric we found being used include: information access (e.g. how data is omitted or aggregated), provenance (e.g. how data sources are explained and how uncertainty is shown), mapping (e.g. the use of visual metaphor), linguistic techniques (e.g. irony or apostrophe), and procedural rhetoric (e.g. how default views anchor interpretation).”

Narrative Visualization: Telling Stories with Data by E. Segel and J. Heer
(AbstractResearch Paper)
“We systematically review the design space of this emerging class of visualizations. Drawing on case studies from news media to visualization research, we identify distinct genres of narrative visualization. We characterize these design differences, together with interactivity and messaging, in terms of the balance between the narrative flow intended by the author (imposed by graphical elements and the interface) and story discovery on the part of the reader (often through interactive exploration).”

Storytelling: The Next Step for Visualization by Robert Kosara and Jack Mackinlay
“Presentation and communication of data have so far played a minor role in visualization research, with most work focused on exploration and analysis. We propose that presentation, in particular using elements from storytelling, is the next logical step and should be a research focus of at least equal importance as each of the other two.”

What Storytelling Can Do for Information Visualization (PDF) by Nahum Gershon and Ward Page
“Effective presentations using the storytelling approach require skills like those familiar to movie directors, beyond a technical expert’s knowledge of computer engineering and science. Creating a presentation is not just a matter of being literate in visual media and storytelling but depends on a frame of mind that caters to other modes of human information processing and thinking.”

The Enchanted Imagination: Storytelling’s Power to Entrance Listeners
“While storytelling has flourished, there has not been a concomitant surge in research of the art form. One element of storytelling has remained nearly unconsidered, and it is, perhaps, the most profound and influential characteristic of storytelling: its power to entrance those who listen.”

4. Tools, Examples, and Other Resources

Hans Rosling’s TED Talks
“What sets Rosling apart isn’t just his apt observations of broad social and economic trends, but the stunning way he presents them. Guaranteed: You’ve never seen data presented like this. By any logic, a presentation that tracks global health and poverty trends should be, in a word: boring. But in Rosling’s hands, data sings. Trends come to life. And the big picture — usually hazy at best — snaps into sharp focus.”

Robert McKee, Godfather of Storytelling (Wikipedia)
Rather than simply handling “mechanical” aspects of fiction technique such as plot or dialogue taken individually, McKee examines the narrative structure of a work and what makes the story compelling or not. This could work equally as well as an analysis of any other genre or form of narrative, whether in screenplay or any other form, and could also encompass nonfiction works as long as they attempt to “tell a story”.

Stories Through Data
Exploring storytelling in data visualization. A collection of visualizations sorted by Chris Twigg’s narrative analysis framework.

13pt Information Graphics
Gallery of examples from the studio of Jonathan Corum, an information designer and science graphics editor at The New York Times.

A free and collaborative taxonomy of Data Storytelling tools by Philippe Nieuwbourg
“To summarize my investigations around data storytelling tools I created a mind map. This map will be an up-to-date taxonomy / ontology / typology, of software available on the market, to create stories around data.”

DataStorytelling.tv
“An independent website, dedicated to storytelling around data.”

Pixar’s 22 Rules of Storytelling
“Give your characters opinions. Passive/malleable might seem likable to you as you write, but it’s poison to the audience.”

Bob Beamon’s Long Olympic Shadow by Kevin Quealy and Graham Roberts (NYT)

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Good data communication hinges on picking right chart. The patterns and insights almost magically emerge when you choose a chart or visualization that emphasizes the important elements in your data. Unfortunately, this is one of the biggest struggles for inexperienced presenters of data.

I don’t like to knock our own stuff, but a little healthy introspection is always a good thing. Consider our popular ChartChooser tool. In spite of it’s carefully crafted name (it was core of an ad campaign akin to peanut butter: Choosy chart choosers choose ChartChooser — no, not really), we’ve come to believe that ChartChooser isn’t so useful for the “Chooser” part; it is useful because the “Chart” part is nicely formatted, downloadable PowerPoint and Excel charts.

Here are the filtering choices for ChartChooser:

ChartchooserFilters

I’ve been at this a while and I still don’t always know how to connect what I’m trying to express with words as vague and broad as ‘Composition’ or ‘Relationship’.

It isn’t entirely ChartChooser’s fault. Basic chart types are by nature broad and flexible in their usage. How can we make it easier for someone to make that leap from their question to a visualization that best answers it?

We believe one part of the solution is to make visualizations more purposeful. That is, create re-usable ways of expressing data that are carefully designed to answer common questions that people pose about their data.

While it’s true that everyone’s data is unique, what we’ve learned is that in most cases, the things they want to know about their data aren’t so unique. The same sets of question patterns show up time after time. It’s almost like a game of Mad Libs:

  • Which are my top performing _plural noun_?
  • Which _plural noun_ are the most significant outliers when measured by _ measure_ and _ measure_?
  • Which _plural noun_ have improved or declined the most over the last _time period_?
  • How does _singular noun_ compare to _singular noun_ across my important performance measures?

Our goal is to draw straight, obvious lines between questions like these and a visualization that directly and simply expresses an answer.

If you consider the last data Mad Lib question above, our match-up visualization is a good example: compare two things side by side to see relative performance. The Match-up was inspired by the traditional tale-of-the-tape graphics that you used to see in boxing matches.

Tale-of-the-tape

Like a lot of our visualizations in Slice, we’ve added a number of key features that really help the user quickly understand and explore the data. Here are a couple examples:

Match-up1

Match-up2

We’ve put together a whole collection of these purposeful visualizations, such as a funnel visualization for sales conversions and other processes; a leaderboard for ranking top items across a bunch of measures (try it free here), and a comments visualization for reviewing and exploring survey verbatims, tweets, and other descriptions. And we’ll be making more. What questions do you ask of your data?

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Over the years you’ve seen a few blog posts from the Juice Team on football, the American variety. We thought it made sense to give the world’s most popular version of football a little love since the Major League Soccer (MLS) season just got underway.

As we started our journey to pay tribute to the beautiful game, we came to realize much like the recent Sloan Sports Analytics Conference that fútbol is just starting to get its data on. Check out this view of team performance created in Slice.

MLS 2012 Season

This data comes from the MLS Soccer Team Stats page.

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The Tournament is upon us. And if you know about picking a brackets, you know it comes down to match-ups, strong guard play, and choosing at least one 12-seed to beat a 5-seed. You also know the winner of your office pool will inevitably be that one non-basketball fan who picks teams based on mascots.

Since we’re bound for disappointment, why not have some fun with data. Our resident Iona grad, Michel, put together this slick Sliceboard that ranks the tournament teams by offensive and defensive stats. Notice how his school pours in 81 points a game as the 2nd most prolific offense in the tournament. They also manage to have the 2nd worst defense. Sorry Michel, defense wins Championships.

Offensive Leaders

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Juice Pi Day 2013

James Lytle

Juice Pi Day 2013

We’re not sure whether everyone came for the spread of pies or data visualization discussions, but either way the Juice 2013 Pi Day at our Atlanta office was a good time for all. As you can see, we decided to kick off the small talk visually.

Where were you born?How many companies have you worked for since college?

With a wide variety of backgrounds, people could find a discussion area of their choice. Here are some topics we covered.

Data Storytelling

Data Storytelling is rising up the charts of trendy data visualization topics. I shared our thinking about what the term means to us (something we’d started with this blog post). Think of your role telling data stories like you are a safari guide. You can lead your audience around to see the most interesting sights in the park, but be willing to go off the planned course as the interests of your audience dictate. We pulled some lessons from Pixar’s rules for storytelling, discussed the importance of influencing both your primary audience as well as their audience, and connected these elements of data storytelling to how we designed Slice.

Meanwhile, next door…

Information Design Trends

We had an informal open discussion on trends we’ve seen and what they mean going forward. What are the challenges of responsive design to visualization; particularly as it relates to reporting vs. exploration. What does the rise of lifestyle data mean for the future, and for your privacy? There were generational differences in comfort with tracking with our younger attendees preferring to turn off and drop out. Finally, who doesn’t want to talk about “BIG data”? Is Hadoop for you? What will we do with the sextillion bytes of data (one billion terabytes) humanity will generate in 2013? How will this mountain of data get transformed into something people can act on and relate to?

In between, people cast their votes on these questions. What’s your answer?

Here are some notes and resources we jotted down. Feel free to add to them: http://bit.ly/JuicePiDayTrends

Thanks to all who came, and, if you couldn’t make it, join us next year!

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