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Welcome to the presentation
on Designing with Data. I
hope you’re excited to learn.

Dominic Prestifilippo | andCulture | Design Methods Training | December 4, 2013
AGENDA
•	 Intro
•	 General Theories
•	 Quantitative
•	 Qualitative
•	 Details
•	 Critique
introduction
People are visual learners
Visualizations help everyone
introduction

“… 80% of the information
we take in is provided by
our eyesight.”

People are visual learners.

http://www.vision1to1.com/EN/HomePage.asp?BGColor=1&Category=6&Article=122
Introduction

Visualizations help everyone.
1. Making them provides further insight into the information
2. Visualizations invite comments and inspired discussion
3. Enable presentations that aren’t reliant on scripts or memorization

Dan Roam, Back of the Napkin, pg 11
General Theories
Storytelling
Levels of Information
Layer Information
Proportions
Sanity Check
General Theories | Storytelling

Tell a story.
Provide context.
Don’t let data lie.
have intent.
General Theories | Storytelling
Tell a story.
Have a point to make
when creating an
infographic and let that
guide your decisions.

http://visual.ly/most-popular-baby-names-girls
General Theories | Storytelling
Tell a story.
Have a point to make
when creating an
infographic and let that
guide your decisions.
My interpretation is,
anyone with these names
should hope they have
interesting middle names.
Is that the intent?

http://visual.ly/most-popular-baby-names-girls
General Theories | Storytelling
provide context.
380,000

Number Of Locations Worldwide

Information without
context is un-relatable.
People don’t know what
it means or what to do
with it.

Western
Union

http://issuu.com/dpresto/docs/remas_book
General Theories | Storytelling
provide context.

Sure it seemed like a
lot before, but you may
have also thought there
was a lot of these other
locations. This helps
highlight the differences
in perception of “a lot.”

380,000

Number Of Locations Worldwide

Information without
context is un-relatable.
People don’t know what
it means or what to do
with it.

31,000
16,700
8,500
Wal-Mart

Starbucks

McDonalds

Western
Union

http://issuu.com/dpresto/docs/remas_book
General Theories | Storytelling
Don’t let Data Lie.
Percentages hide
absolute values,
skewing real scale.

http://visual.ly/most-popular-content-management-systems-2013
General Theories | Storytelling
Don’t let Data Lie.
Percentages hide
absolute values,
skewing real scale.

Earlier in the graphic,
we’re told Wordpress has
50.07% of the CMS market
while Joomla only has
6.44%

http://visual.ly/most-popular-content-management-systems-2013
General Theories | Storytelling
have intent.
Treat each decision as if
it is crucial to the entire
piece, because it is.

http://visual.ly/knife-skills
General Theories | Storytelling
have intent.
Treat each decision as if
it is crucial to the entire
piece, because it is.

I assume the decision to
illustrate this as a sketch
is to make something
potentially scary and
dangerous seem more
approachable.

http://visual.ly/knife-skills
General Theories | levels of info

Broad Points.
Visible from 4’ or more

Very Specific Details.
visible from less than 1’
General Theories | levels of info
4 feet

12 inches

http://visual.ly/how-startup-funding-works
General Theories | Layer Information

Average wait times

Juxtaposing relevant data can produce even more interesting results,
highlighting potential relationships and making both data sets more
valuable.

http://visual.ly/waiting-time-week
General Theories | Layer Information

Average wait times per day is much more interesting

http://visual.ly/waiting-time-week
General Theories | Proportions

The Golden Ratio.

The Fibonacci Sequence.
General Theories | Proportions
The Golden Ratio.
a/b = (a+b)/a ≈ 1.618033988

a

b

Sample Pattern.
General Theories | Proportions
The fibonacci sequence.
1
0+1=1
1+1=2
1+2=3
2+3=5
3+5=8
5+8=13
8+13=21
13+21=34
•
•
•

Sample Pattern.

•
•
•
General Theories | Sanity Check
•	 Is this important?
•	 Does this provide value?
•	 Does this make sense?
•	 Can this be done better?
•	 Does this help convey my message?
•
•
•
Quantitative
Graph Types
Statistics
Graph Types | Basic Bar Charts
whiskers

bar chart
bar chart
Bar Chart.

“The biggest benefit
of bar charts is that
different tems of
data can easily be
compared visually.”
whiskers

whiskers

histogram

histogram

Stacked Bar Chart.

histogram
histogram.

“Stacked bar charts
describe totals while
allowing a degree of
internal breakdown
of the data.”

“…in a histogram
it is important to
retain and display
the empty space. It
contributes to the
picture of the data
as a whole.”

stacked bar chart
stacked bar chart

candlestick

candlestick

Brian Suda, A Practical Guide to Designing with Data, pg 114, 119, 120
Graph Types | Advanced Bar Charts
bar chart

whiskers
Whiskers.

bar chart

whiskers

“…whisker is a
small vertical line
representing plus or
minus two per cent
from the value, with
some horizontal
histogram
histogram
lines to make the
ends easier to see
and measure.”

stacked bar chart

candlestick

stacked bar chart

candlestick
Candlestick chart.

“The whiskers, or
wicks, that extend
up and down do not
measure margin
of error, but the
maximum and
minimum…” where the
bar represents the
starting and finishing
points.

Brian Suda, A Practical Guide to Designing with Data, pg 121, 122
Graph Types | Pie Chart
“…a pie chart can only
represent relative
amounts.”
“The most effective pie
charts comprise only
two items, such as the
percentage of male or
female customers.”
“The total value of the
information must add up to
one hundred per cent…”

Unknown

Female

Male

Brian Suda, A Practical Guide to Designing with Data, pg 132
Graph Types | Others

line graph.

scatter plot.

“Line graphs work
best when the data
is continuous.”

“Scatter plots are
a useful tool to
reveal relationships
between any amount
of independent
values. …The data
points are placed in
a grid in an attempt
to build a larger
picture.”

“One of most
common variables
used in line graphs
is time…”

Brian Suda, A Practical Guide to Designing with Data, pg 111, 161
Statistics | Average

Σ(

Σ(

)= M

#of elementsof elements in the series
# in the series

)= M

=M

=M

=M

=M

MEan.

MEdian.

Mode.

“We add together all
of our test results and
then divide it by the sum
of the total number of
marks there are.”

“The Median is the
‘middle value’ in
your list.”

“The mode in a list
of numbers refers to
the list of numbers
that occur most
frequently.”

http://math.about.com/od/statistics/a/MeanMedian.htm
qualitative
Statements
Relationships
Statements | Bold Statements

Make Bold
Statements
Statements | Highlighting

“Use this to highlight a piece of a quote you would like cited.”

http://www.plantbasedpeople.com/misc.php?do=bbcode
Statements | Iconography
Include relevant iconography to help
with wayfinding and make the written
content more memorable

http://pictos.cc/
Relationships | Mind Map

Sub-idea 1

a2
b-ide
Su

a
de
I

Idea
3

It is an unstructured
visual outline that allows
people to move through
the related content in any
order they choose.
Connected information
logically as its produced
so that train-of-thoughts
and conversations can
be easily documented by
topic.

a1
ide
ub
S
Sub
-id
ea
2

1

Mind Map

Id

ea

2

a1
de
-i
ub
S
Sub-idea
2

Su
bid
ea

3
Relationships | Affinity Map
Using proximity and
position to indicate
relationships between
statements.
These clusters develop
organically depending on
the content under review.
Relationships | Flow Charts
Flow charts are a very
detailed, standardized way
of mapping processes.

Start

action

Decision

Decision

action

Stop
Details
Data to Pixel Ratio
Chart Junk
Resolution
Color
Legends
Details | Data to Pixel Ratio
“the amount of ink
representing the data
divided by the total ink on
the graph”
Don’t be confused; the
data–ink ratio is not
advocating the use of as
little ink as possible, but
only as much ink as needed
to convey the data

10
8
6
4
2
2

4

6

8

10

Brian Suda, A Practical Guide to Designing with Data, pg 25, 27
Details | Chart Junk
“…if you remove something
from the chart and it
doesn’t change the
meaning, it’s chart junk “

Brian Suda, A Practical Guide to Designing with Data, pg 25, 27
Details | Resolution
DPI Dots per Inch

For Print Media.
It is preferable that
documents are at least
300dpi.

For Digital Media.
It is preferable that
documents are at least
72dpi.
Details | Color
Color can do a lot to help
clarify information on a
chart. However, mis-use
and it will only add to the
confusion.
Be mindful of how you
use color. It can easily be
overdone.
Try starting with black and
white, then adding color
later.
Details | Legends
As nice as it can be to have
a very “clean” visualization
or chart, if it doesn’t convey
the necessary information
it is useless.
Make sure, if you do use
distinctions such as
color, shape, size, etc. to
differentiate data, make
sure it is labeled and clear.

10
8
6
4
2
2

4

6

8

10
Further References
A Practical Guide to Designing with Data by Brian Suda
The Back of the Napkin by Dan Roam
The Visual Display of Quantitative Information by Edward Tufte
Envisioning Information by Edward Tufte
Visual Explanations by Edward Tufte
Visual and Statistical Thinking: Displays of Evidence for Making Decisions by Eward Tufte
AGENDA
•	 Intro
•	 General Theories
•	 Quantitative
•	 Qualitative
•	 Details
•	 Critique
Thank you for learning more
about Designing with Data. Do
you have any questions?

Dominic Prestifilippo | andCulture | Design Methods Training | December 4, 2013
Critique
http://visual.ly/

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Designing with Data: Creating Visualizations to Tell Your Story

  • 1. Welcome to the presentation on Designing with Data. I hope you’re excited to learn. Dominic Prestifilippo | andCulture | Design Methods Training | December 4, 2013
  • 2. AGENDA • Intro • General Theories • Quantitative • Qualitative • Details • Critique
  • 3. introduction People are visual learners Visualizations help everyone
  • 4. introduction “… 80% of the information we take in is provided by our eyesight.” People are visual learners. http://www.vision1to1.com/EN/HomePage.asp?BGColor=1&Category=6&Article=122
  • 5. Introduction Visualizations help everyone. 1. Making them provides further insight into the information 2. Visualizations invite comments and inspired discussion 3. Enable presentations that aren’t reliant on scripts or memorization Dan Roam, Back of the Napkin, pg 11
  • 6. General Theories Storytelling Levels of Information Layer Information Proportions Sanity Check
  • 7. General Theories | Storytelling Tell a story. Provide context. Don’t let data lie. have intent.
  • 8. General Theories | Storytelling Tell a story. Have a point to make when creating an infographic and let that guide your decisions. http://visual.ly/most-popular-baby-names-girls
  • 9. General Theories | Storytelling Tell a story. Have a point to make when creating an infographic and let that guide your decisions. My interpretation is, anyone with these names should hope they have interesting middle names. Is that the intent? http://visual.ly/most-popular-baby-names-girls
  • 10. General Theories | Storytelling provide context. 380,000 Number Of Locations Worldwide Information without context is un-relatable. People don’t know what it means or what to do with it. Western Union http://issuu.com/dpresto/docs/remas_book
  • 11. General Theories | Storytelling provide context. Sure it seemed like a lot before, but you may have also thought there was a lot of these other locations. This helps highlight the differences in perception of “a lot.” 380,000 Number Of Locations Worldwide Information without context is un-relatable. People don’t know what it means or what to do with it. 31,000 16,700 8,500 Wal-Mart Starbucks McDonalds Western Union http://issuu.com/dpresto/docs/remas_book
  • 12. General Theories | Storytelling Don’t let Data Lie. Percentages hide absolute values, skewing real scale. http://visual.ly/most-popular-content-management-systems-2013
  • 13. General Theories | Storytelling Don’t let Data Lie. Percentages hide absolute values, skewing real scale. Earlier in the graphic, we’re told Wordpress has 50.07% of the CMS market while Joomla only has 6.44% http://visual.ly/most-popular-content-management-systems-2013
  • 14. General Theories | Storytelling have intent. Treat each decision as if it is crucial to the entire piece, because it is. http://visual.ly/knife-skills
  • 15. General Theories | Storytelling have intent. Treat each decision as if it is crucial to the entire piece, because it is. I assume the decision to illustrate this as a sketch is to make something potentially scary and dangerous seem more approachable. http://visual.ly/knife-skills
  • 16. General Theories | levels of info Broad Points. Visible from 4’ or more Very Specific Details. visible from less than 1’
  • 17. General Theories | levels of info 4 feet 12 inches http://visual.ly/how-startup-funding-works
  • 18. General Theories | Layer Information Average wait times Juxtaposing relevant data can produce even more interesting results, highlighting potential relationships and making both data sets more valuable. http://visual.ly/waiting-time-week
  • 19. General Theories | Layer Information Average wait times per day is much more interesting http://visual.ly/waiting-time-week
  • 20. General Theories | Proportions The Golden Ratio. The Fibonacci Sequence.
  • 21. General Theories | Proportions The Golden Ratio. a/b = (a+b)/a ≈ 1.618033988 a b Sample Pattern.
  • 22. General Theories | Proportions The fibonacci sequence. 1 0+1=1 1+1=2 1+2=3 2+3=5 3+5=8 5+8=13 8+13=21 13+21=34 • • • Sample Pattern. • • •
  • 23. General Theories | Sanity Check • Is this important? • Does this provide value? • Does this make sense? • Can this be done better? • Does this help convey my message? • • •
  • 25. Graph Types | Basic Bar Charts whiskers bar chart bar chart Bar Chart. “The biggest benefit of bar charts is that different tems of data can easily be compared visually.” whiskers whiskers histogram histogram Stacked Bar Chart. histogram histogram. “Stacked bar charts describe totals while allowing a degree of internal breakdown of the data.” “…in a histogram it is important to retain and display the empty space. It contributes to the picture of the data as a whole.” stacked bar chart stacked bar chart candlestick candlestick Brian Suda, A Practical Guide to Designing with Data, pg 114, 119, 120
  • 26. Graph Types | Advanced Bar Charts bar chart whiskers Whiskers. bar chart whiskers “…whisker is a small vertical line representing plus or minus two per cent from the value, with some horizontal histogram histogram lines to make the ends easier to see and measure.” stacked bar chart candlestick stacked bar chart candlestick Candlestick chart. “The whiskers, or wicks, that extend up and down do not measure margin of error, but the maximum and minimum…” where the bar represents the starting and finishing points. Brian Suda, A Practical Guide to Designing with Data, pg 121, 122
  • 27. Graph Types | Pie Chart “…a pie chart can only represent relative amounts.” “The most effective pie charts comprise only two items, such as the percentage of male or female customers.” “The total value of the information must add up to one hundred per cent…” Unknown Female Male Brian Suda, A Practical Guide to Designing with Data, pg 132
  • 28. Graph Types | Others line graph. scatter plot. “Line graphs work best when the data is continuous.” “Scatter plots are a useful tool to reveal relationships between any amount of independent values. …The data points are placed in a grid in an attempt to build a larger picture.” “One of most common variables used in line graphs is time…” Brian Suda, A Practical Guide to Designing with Data, pg 111, 161
  • 29. Statistics | Average Σ( Σ( )= M #of elementsof elements in the series # in the series )= M =M =M =M =M MEan. MEdian. Mode. “We add together all of our test results and then divide it by the sum of the total number of marks there are.” “The Median is the ‘middle value’ in your list.” “The mode in a list of numbers refers to the list of numbers that occur most frequently.” http://math.about.com/od/statistics/a/MeanMedian.htm
  • 31. Statements | Bold Statements Make Bold Statements
  • 32. Statements | Highlighting “Use this to highlight a piece of a quote you would like cited.” http://www.plantbasedpeople.com/misc.php?do=bbcode
  • 33. Statements | Iconography Include relevant iconography to help with wayfinding and make the written content more memorable http://pictos.cc/
  • 34. Relationships | Mind Map Sub-idea 1 a2 b-ide Su a de I Idea 3 It is an unstructured visual outline that allows people to move through the related content in any order they choose. Connected information logically as its produced so that train-of-thoughts and conversations can be easily documented by topic. a1 ide ub S Sub -id ea 2 1 Mind Map Id ea 2 a1 de -i ub S Sub-idea 2 Su bid ea 3
  • 35. Relationships | Affinity Map Using proximity and position to indicate relationships between statements. These clusters develop organically depending on the content under review.
  • 36. Relationships | Flow Charts Flow charts are a very detailed, standardized way of mapping processes. Start action Decision Decision action Stop
  • 37. Details Data to Pixel Ratio Chart Junk Resolution Color Legends
  • 38. Details | Data to Pixel Ratio “the amount of ink representing the data divided by the total ink on the graph” Don’t be confused; the data–ink ratio is not advocating the use of as little ink as possible, but only as much ink as needed to convey the data 10 8 6 4 2 2 4 6 8 10 Brian Suda, A Practical Guide to Designing with Data, pg 25, 27
  • 39. Details | Chart Junk “…if you remove something from the chart and it doesn’t change the meaning, it’s chart junk “ Brian Suda, A Practical Guide to Designing with Data, pg 25, 27
  • 40. Details | Resolution DPI Dots per Inch For Print Media. It is preferable that documents are at least 300dpi. For Digital Media. It is preferable that documents are at least 72dpi.
  • 41. Details | Color Color can do a lot to help clarify information on a chart. However, mis-use and it will only add to the confusion. Be mindful of how you use color. It can easily be overdone. Try starting with black and white, then adding color later.
  • 42. Details | Legends As nice as it can be to have a very “clean” visualization or chart, if it doesn’t convey the necessary information it is useless. Make sure, if you do use distinctions such as color, shape, size, etc. to differentiate data, make sure it is labeled and clear. 10 8 6 4 2 2 4 6 8 10
  • 43. Further References A Practical Guide to Designing with Data by Brian Suda The Back of the Napkin by Dan Roam The Visual Display of Quantitative Information by Edward Tufte Envisioning Information by Edward Tufte Visual Explanations by Edward Tufte Visual and Statistical Thinking: Displays of Evidence for Making Decisions by Eward Tufte
  • 44. AGENDA • Intro • General Theories • Quantitative • Qualitative • Details • Critique
  • 45. Thank you for learning more about Designing with Data. Do you have any questions? Dominic Prestifilippo | andCulture | Design Methods Training | December 4, 2013