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# D a t a 1 7
Welcome
Once Upon A Time... Seven Story
Types (and When to Use Them)
Jewel Loree
Product Manager, Storytelling
Tableau
# D a t a 1 7
Jewel Loree
jloree@tableau.com
@jeweloree
# D a t a 1 7
• Looking at how a particular factor has done
against a date measure
• Looking for trends, outliers, etc.
• What happened last year?
• When were we successful?
• Why does this happen at this
time?
• When should we do x?
• The team prepares for a certain thing to
happen at a certain time
• The team chooses when the best time to do
something is
• Overlay known events to see what their
effect was
• Min, max, outliers Inflection points are all
good things to dig into to look for stories
• Divide long time periods into consumable
chunks (decades, years, quarters, months)
• Compare different chunks of time to ask what
the difference was
• Looking at hierarchical data to see how
one particular dimension affects the
system as a whole
• Can start broad and go deeper or start
deep and go more broad
• What’s having the biggest effect on the
thing we care about? (drilling down)
• How does the thing we care about affect
the whole system? (drilling up)
• What is the context we need to be
cognizant of when making decisions about
a particular factor?
• The team has a better understanding of
how one particular measure affects the
overall system
• The team takes the whole system into
context when making decisions about a
particular measure
• When choosing whether to
go up versus down, think of
what your audience will
have more context for.
• Are they on the ground focused
on one particular factor? Then drill
up.
• Are they overseeing the broader
picture and need their attention
drawn to a particular area? Drill
down
• Focusing your attention on one
particular area of the data and
comparing it to the rest of the data
• You can start zoomed in and look
at the rest of the context, or you
can start broadly and focus on a
particular area of interest
• How is this doing in relation to
all the others?
• What is the baseline we
should be measuring success
by?
• Why are some
years/regions/categories more
successful than others?
• Context is given on how one
section of the data is doing
compared to others
• If using maps, geographical
context can also be important
• This technique is particularly
powerful when comparing
regions on a map
• Can be done on a time series:
zoom in to a particular point of
the time series that your
audience inherently
knows/understands and then
out to put it into the general
context
• Showing how things are
different between
different categories
• Comparing progress of
one group/category/item
over another
• What accounts for
these differences?
• How do we align these
things more?
• How do we make one
category perform more
like the other?
• The team gains clarity on
what potential
externalities may be
affecting the contrasted
items
• The team learns from the
success/failure from the
contrasted data to
emulate success or avoid
pitfalls
• Don’t just show the main
success metrics for each
group, show related metrics
to see where they really
differ
• Comparing all
groups/items/etc. to what
the averages are across all
of them is another way to
orient your audience to what
success vs. challenges look
like
• Pointing out shifts of when
one category overtakes
another
• What caused these shifts?
• Were these shifts good or
bad?
• How did these shifts affect our
overall goals?
• Should our strategy change
based on this intersection?
• The team examines the
sources of these shifts
• The team prevents or
promotes shifts like this in
the future
• Show your data a little at a
time leading up to the
intersection point, so that
your audience has a
thorough grasp of what the
baseline was
• Use other story types in
combination to dissect what
caused that intersection
• You have one main metric
and you are trying to show
what factors influence it the
most
• You are looking for
correlation or causation
between metrics
• How much do these things
affect the metric we care
about?
• Which thing affects the metric
we care about the most?
• Can we use one of these
factors to predict or control the
metric that we care about?
• The team has a better
understanding of which factors to
prioritize when trying to
predict/control a metric
• The team has a sense of where
to focus future investigations
• The team understands which
factors are not important and
therefore do not need to be
monitored as closely
• A common structure for these
stories is the “Goldilocks”
formula- show the factors that
don’t quite fit and then the one
that is “just right”
• If a factor that everyone
assumes is important isn’t as
important as they think, show
that one first and then the one
that is a better fit
• Pointing out specific areas
where things are
substantially different
• What happened here?
• What makes this data point
different from the rest?
• Was this outlier good or bad?
• How do we promote/mitigate
outliers like this in the future?
• The team has an idea of
areas to investigate to
understand the causes of the
outlier
• The team comes up with
ideas on how to
mitigate/promote outliers like
this in the future
• The farther out the outlier, the
more impactful this story will
be
• Use other story types to dig
into what makes that outlier
different
• Remember your high school English composition class
• Have a clear thesis, statement of premises, arguments and conclusion
• Start your story with orienting information
• Starting your audience in a place they are familiar with ensures that they have a frame
of reference
• Keep your points in consumable chunks
• Don’t try to say too much in one point.
• When in doubt, ask yourself how you came to this conclusion
• When you did your data analysis, you probably followed a particular line of thinking.
Starting there as a way of explaining it is a good baseline story to iterate off of
• Exploratory at the end
• Throwing an exploratory dashboard at the end of your story is like a self-service Q&A
session for your story
Please complete
the session survey
from the Session
Details screen in
your TC17 app
Thursday, October 12
Once Upon a Time…Seven Story Types
12pm – 1pm | Bayside B
S E S S I O N R E P E A T S

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7 Data Story Types and When to Use Them

  • 1. # D a t a 1 7
  • 3. Once Upon A Time... Seven Story Types (and When to Use Them) Jewel Loree Product Manager, Storytelling Tableau # D a t a 1 7
  • 5.
  • 6.
  • 7.
  • 8.
  • 9.
  • 10. • Looking at how a particular factor has done against a date measure • Looking for trends, outliers, etc.
  • 11. • What happened last year? • When were we successful? • Why does this happen at this time? • When should we do x?
  • 12. • The team prepares for a certain thing to happen at a certain time • The team chooses when the best time to do something is
  • 13. • Overlay known events to see what their effect was • Min, max, outliers Inflection points are all good things to dig into to look for stories • Divide long time periods into consumable chunks (decades, years, quarters, months) • Compare different chunks of time to ask what the difference was
  • 14.
  • 15. • Looking at hierarchical data to see how one particular dimension affects the system as a whole • Can start broad and go deeper or start deep and go more broad
  • 16. • What’s having the biggest effect on the thing we care about? (drilling down) • How does the thing we care about affect the whole system? (drilling up) • What is the context we need to be cognizant of when making decisions about a particular factor?
  • 17. • The team has a better understanding of how one particular measure affects the overall system • The team takes the whole system into context when making decisions about a particular measure
  • 18. • When choosing whether to go up versus down, think of what your audience will have more context for. • Are they on the ground focused on one particular factor? Then drill up. • Are they overseeing the broader picture and need their attention drawn to a particular area? Drill down
  • 19.
  • 20. • Focusing your attention on one particular area of the data and comparing it to the rest of the data • You can start zoomed in and look at the rest of the context, or you can start broadly and focus on a particular area of interest
  • 21. • How is this doing in relation to all the others? • What is the baseline we should be measuring success by? • Why are some years/regions/categories more successful than others?
  • 22. • Context is given on how one section of the data is doing compared to others • If using maps, geographical context can also be important
  • 23. • This technique is particularly powerful when comparing regions on a map • Can be done on a time series: zoom in to a particular point of the time series that your audience inherently knows/understands and then out to put it into the general context
  • 24.
  • 25. • Showing how things are different between different categories • Comparing progress of one group/category/item over another
  • 26. • What accounts for these differences? • How do we align these things more? • How do we make one category perform more like the other?
  • 27. • The team gains clarity on what potential externalities may be affecting the contrasted items • The team learns from the success/failure from the contrasted data to emulate success or avoid pitfalls
  • 28. • Don’t just show the main success metrics for each group, show related metrics to see where they really differ • Comparing all groups/items/etc. to what the averages are across all of them is another way to orient your audience to what success vs. challenges look like
  • 29.
  • 30. • Pointing out shifts of when one category overtakes another
  • 31. • What caused these shifts? • Were these shifts good or bad? • How did these shifts affect our overall goals? • Should our strategy change based on this intersection?
  • 32. • The team examines the sources of these shifts • The team prevents or promotes shifts like this in the future
  • 33. • Show your data a little at a time leading up to the intersection point, so that your audience has a thorough grasp of what the baseline was • Use other story types in combination to dissect what caused that intersection
  • 34.
  • 35. • You have one main metric and you are trying to show what factors influence it the most • You are looking for correlation or causation between metrics
  • 36. • How much do these things affect the metric we care about? • Which thing affects the metric we care about the most? • Can we use one of these factors to predict or control the metric that we care about?
  • 37. • The team has a better understanding of which factors to prioritize when trying to predict/control a metric • The team has a sense of where to focus future investigations • The team understands which factors are not important and therefore do not need to be monitored as closely
  • 38. • A common structure for these stories is the “Goldilocks” formula- show the factors that don’t quite fit and then the one that is “just right” • If a factor that everyone assumes is important isn’t as important as they think, show that one first and then the one that is a better fit
  • 39.
  • 40. • Pointing out specific areas where things are substantially different
  • 41. • What happened here? • What makes this data point different from the rest? • Was this outlier good or bad? • How do we promote/mitigate outliers like this in the future?
  • 42. • The team has an idea of areas to investigate to understand the causes of the outlier • The team comes up with ideas on how to mitigate/promote outliers like this in the future
  • 43. • The farther out the outlier, the more impactful this story will be • Use other story types to dig into what makes that outlier different
  • 44. • Remember your high school English composition class • Have a clear thesis, statement of premises, arguments and conclusion • Start your story with orienting information • Starting your audience in a place they are familiar with ensures that they have a frame of reference • Keep your points in consumable chunks • Don’t try to say too much in one point. • When in doubt, ask yourself how you came to this conclusion • When you did your data analysis, you probably followed a particular line of thinking. Starting there as a way of explaining it is a good baseline story to iterate off of • Exploratory at the end • Throwing an exploratory dashboard at the end of your story is like a self-service Q&A session for your story
  • 45.
  • 46. Please complete the session survey from the Session Details screen in your TC17 app
  • 47. Thursday, October 12 Once Upon a Time…Seven Story Types 12pm – 1pm | Bayside B S E S S I O N R E P E A T S

Notas del editor

  1. Notes: workbook and image examples are forthcoming. For now, notes about what the data story I will tell with each of these is coming up
  2. Thanks so much for joining me today. Let’s get started!
  3. This session is called Once Upon a Time: 7 data stories and their uses. My name is Jewel Loree. I’ve been in the Tableau world for nearly 5 years, but my most recent gig is as the product manager for Storytelling. When I tell people that, they get confused. I’ll often ask customers how they use storytelling internally and they return blank stares. “I don’t do data storytelling. I just write reports. And send emails. And create slide decks.” Then I have to keep my cool while I scream internally “THAT’S STORYTELLING!!!!!!” My hope is that by the end of this talk, you can see where to use data stories in your workplace and have an idea how to create them. For the sake of simplicity (and self-promotion) I will be using the “stories” feature in Tableau to create all of our stories today. But these techniques could easily be applied to written reports, emails, or slide decks.
  4. First things first. That’s my name and my email. If you have questions about storytelling or want to be added to my list of people I harass when I have crazy new storytelling ideas, feel free to use it. Also, there’s my twitter handle if I say something particularly poignant or charming and you want to quote me. Or if you decide to make a gif of my eccentric hand gestures.
  5. Another thing you should know about me for the purposes of this presentation is that I’m not just a data rockstar. I’m an actual rockstar. I play bass in a surf rock band called Golden Idols.
  6. One thing you might not expect about being a musician these days is that there’s a LOT of data. Data on sales, social media engagement, streams on Spotify and Pandora… all of this can help make better decisions about the band; what’s working, how to reach fans, all that kind of stuff.
  7. But as you can imagine, musicians aren’t typically very data driven. One of my bandmates is also a coworker at Tableau, so he gets it. But the other two are often skeptical of what data can tell us. These aren’t people that I can just show one chart to and say “see! Obviously we should post more pictures on Facebook!” They need more context. They need to connect the data with the real world. And storytelling is a great way to help them make those connections.
  8. Ben Jones, my former mentor over on the Tableau Public team created this idea of 7 basic story types. It’s our data version of the 7 basic plots. Now, I’m not saying that these are the only kinds of data stories that exist. But knowing these first 7 and how to use them is a great start to understanding how to tell narratives with data. For each of these stories, we’ll go over what it is, what discussions they start, what actions they drive, and an example or two of that story type.
  9. Spotify over time
  10. What activity makes us the most money?
  11. What venue do we do best at?
  12. How does our growth compare to other bands?
  13. Where people listen on Spotify- show playlists overtaking band page
  14. Engagement type vs impressions- which creates the most newsfeed stories
  15. Most successful facebook posts
  16. Ben Jones, my former mentor over on the Tableau Public team created this idea of 7 basic story types. It’s our data version of the 7 basic plots. Now, I’m not saying that these are the only kinds of data stories that exist. But knowing these first 7 and how to use them is a great start to understanding how to tell narratives with data. For each of these stories, we’ll go over what it is, what discussions they start, what actions they drive, and an example or two of that story type.