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DATA & VISUALIZATION
     INVESTIGATING
                                           Clément
COMPLEX TERRITORIES                        Renaud




        Toulouse 2 University - Oct 2013   @clemsos
ABOUT ME


Clément Renaud

phD Social networks and urban
spaces in China

Co-founder Sharism Lab              #
@sharismlab                         data
sharismlab.com                      journalism
                                    visualization
@clemsos                            social networks
clement.renaud@gmail.com            urbanity
www.clementrenaud.com               China
TODAY CLASS: OBJECTIVES


What is data and       Achievement
 how people use it
                     MAP A NETWORK
How it relates to
 territories
                     1) Identify a case
Showcase some
 examples            2) Find data you need
Introduce tools     3) Map it
TODAY CLASS: DETAILS

            Data Morning       Duration:
                               2x3h
          Some definitions
          Data & territories
Workshop: Network mapping      Materials:
                               Slides (here)
                               Notes
           Viz Afternoon
              Visualization
              Tools gallery
      Workshop: Visualize it
DATA,
NETWORKS,   PART 1 :
            Definitions

     ETC.
WHAT IS DATA?

DATA :
- Factual information, especially information organized
  for analysis or used to reason or make decisions
- Information output by a sensing device or organ that
  includes both useful and irrelevant or redundant
  information and must be processed to be meaningful
- Information in numerical form that can be digitally
  transmitted or processed

                                        F r o m M e r r i a m - We b s t e r
SOME
DATA
Look at those
DATA=DIGITAL INFORMATION

   Written info in huge amounts
   Quantification of its subject / object
   Storage - in computers databases
   Can be processed by machines



 Huge trend in early 21st Century:
  business, ad, indsutry, science, etc.
WHAT IS AT STAKE WITH DATA?

Objectivize things to provide new
 understanding
A « facts are sacred » approach
 towards complex questions and
 problem-solving
Apply scientific method to
 interrogate any kind of beings,
 objects, ideas, etc.
HANDLE COMPLEXITY




Linked Data Cloud
HANDLE COMPLEXITY


Problem:
Most of data is made by machines,
for machines.

How can we access it?
How can we understand it?
THE DATA
                                               SCIENCE
                                               METHOD
                                               From raw data
1. Statistics: Studying                        to images


2. Data Munging: Suffering
3. Visualization: Storytelling
     Mike @dataspora , Sexy Data Geeks. 2009
DATA
SCIENCE
Methodology
for
investigation

Examples:

DNA

Brain studies

Social Networks
Analysis

…
DATA
JOURNALISM

datajournalism
handbook.org
VISUALIZATION



“The brain doesn’t just process information
that comes though the eyes. It also creates
mental visual images that allow us       to
reason and plan actions that facilitate
survival.”
                       A. Cairo, The Functional Art - 2013
NETWORKS STRUCTURE




           http://www.aaronkoblin.com/work/flightpatterns/
LINKEDIN
NETWORK
Vi s u a l i z a t i o n
of my
professional
n e t wo r k u s i n g
Linkedin Labs


Facebook
n e t wo r k g r a p h
can be
generated
using
N e t vi z z
SEATTLE
BAND
MAP
The Seattle
Band Map
explores how
bands from the
Pacific
Northwest are
interconnected
through
personal
relationships
and
collaborations.

h t t p : / / w w w. s e a t t
lebandmap.com/
MUSE
Muse is an
i n t e r a ct i ve
vi s u a l i z a t i o n o f
scientific
publications to
e xp l o r e t h e
collaborations
b e t we e n
i n s t i t u ti o n s .

h t t p : // t i l l n a g e l .
c o m / 2010/ 11/m
use/
KIVA
MAP
Mapping 2005-
2 0 11 K i va
a c t i vi t y ( m i c r o -
loans and
p a yb a c k )

Vi d e o f r o m
h t t p : // vi m e o . c o
m/28413747
NETWORK MAPPING   PART 2 :
                  WORKSHOP
SURROUNDED BY NETWORKS

The model of a network is everywhere :
 cities, DNA, social relationships, Internet,
 etc.

Question is : « What connects? » - and how.

What is this strange relationship that links
 data to networks?
IDENTIFY A NETWORK

                         Questions:
MAP THE CLASSROOM AS A   What is the
NETWORK                  structure of the
                         network?

                         What are the
WHAT CONNECTS            different kinds
                         of data we can
IN THIS                  identify?
CLASSROOM?               How is the data
                         produced?
                         exchanged?
MAP YOUR OWN NETWORK !




    Civil Society NGO-STK-Network Workshop in Istanbul by @graphcommons
CONNECTIONS

 Transmission Networks
  Something actually flows.


 Interaction Networks
  Connection is an event, with a specific
  time.

 Attribution Networks
  Connection is an expression of a
  relationship.

 Affiliation Networks
  Connection is a belonging to a group or
  category.
MAP YOUR OWN NETWORKS

Objectives
Identify an interesting network related to a specific
territory
Ex: Food waste in Toulouse, actors in job research,
etc.

Deliveries
Draw an extensive map of this network
Use colors, dots, line, weight to represent things
SOME DIRECTIVES

Where to start a graph?
 You can start with the first thing that comes to your mind, then
  grow and tweak the map step by step from there.

Where to stop a graph?
 Putting a definitive graph title and considering only the strong
  connections help to limit your network map's scope.

 Connection w eight
  Strong connections bring closer the two end nodes, and reveal
  tight clusters. In fact, strong ties are more transitive than weak
  ties.

 Collaborative mapping
  more fruitful and complete graphs, in fact, it is great for brain
  storming
                                         From http://graphcommons.com
DATA,
       IMAGES
                  GRAPHIC
                  STORIES

AND TERRITORIES
What is the story you want   DATA
to tell us?                  VISUALIZA
                             TION

                             Te l l yo u r s t o r y

                             What is the
                             specific focus
The example of the Arab      yo u wa n t t o
                             take out of this
Spring                       data set?
EVENTS
TIMELINE
Arab spring: an
i n t e r a ct i ve
timeline of
Middle East
protests

S e e l i ve o n
the Guardian
THE
REVOLUTIONS
WERE
TWEETED
I n f o r ma t i o n
F l o ws D u r i n g
t h e 2 0 11
Tu n i s i a n a n d
E g yp t i a n
R e vo l u t i ons

h t t p : // www. d a n
a h . o r g / p r o j e c ts
/IJOC-
ArabSpring/
NEWSPAPER
ANALYSIS
Spanish front
page
n e ws p a p e r
a n a l ys i s d u r i n g
the Arab
S p r i ng



h t t p : // www. i e c a
h . o r g / we b / vi s u
al/egipto-libia-
s i r i a - ot r os . ht m
WIKIPEDIA
EDITS
Wikipedia
Edits During
the Middle-
E a s t P r o t e s ts

h t t p : // www. yo ut
u b e . c o m/ wa t c h
? v= z 3 Wo 2 2 j l 4 A
c
IS THIS
THE SAME
STORY?
Identify
d i ff e r e n c e s
and common
p o i n t s?

W h at a r e k e y
elements to
s u c c e ss i n
each piece?

How has the
data been
produced?
OTHER RECENTS EVENTS




Sandy storm - Power Cut Blackout map based on Tweets by Social Flow
IMPORTANCE OF DATA LOCALLY

   Crisis management
   Urban planning
   Transportation
   Transparency
   Participation
   Recollection
   Space design
   Coverage
   Etc.


                          NYC Subway Map Update
ABOUT OPEN DATA

 Made publicly          Open government
  available (release,     initiative
  access,                Code for America
  documentation…)        US political tradition
 Open Data is not        based on
  only governmental       accountability
  data                   Obama campaign has
 Mutual economic
  interests
                               http://www.data.gov/
OPEN DATA IN FRANCE

      OpenData 71      Rennes Collective Action
Top-down initiative        Citizen-based
Public funding             No funding
National target            Local target

Cons                       Cons
Nobody use this data       Illegal practices
Unsustainable              Unclear program

Pros                       Pros
Nice data platform         Data is in use
BASICS
VISUALIZATION   &
                METHODS
WORKFLOW: CREATE A DATAVIZ




 Objectives: extract, process, visualize, publish
 Tools : Web-based, softwares, languages




                                    Ben Fry, Computational Design. 2004
DEFINE A DATAVIZ PROJECT

                                    You may find data in
                                    weird places.

A story tends to                    Draft, draft, draft

1. begin somewhere                  Chose your tools
                                    based on your
2. tell something                   (team) skills.

3. end.                             Mind the time
                                    spent!

These apply for a map, a graph, a   Be kind to your
visualization, etc.                 readers
STEP BY STEP


     How it should work:           How it really works
                              1.    Great, I have some nice
1.   Define project                 data/a brilliant idea !
                              2.    Let’s try some tools
2.   Find data                3.    Well, I just waste 3
                                    hours on tutorials
3.   Draft something visual   4.    I should do something
4.   Define tools & time            easier
                              5.    Another 2 hours on
5.   Clean and refine data          google
                              6.    What was this brilliant
6.   Visualize                      idea again?
                              7.    I should post this link
7.   Publish                        on Facebook
                              8.    It’s late already. Let’s
8.   Promote                        just forget about this
                                    dataviz thing….
TOOLS ARE EVIL.
                  GEEK
                  GALLERY
WEB-BASED:

             GOOGLE FUSION TABLES

Easy maps & graph                   Example
WEB-BASED:
             INFOGR.AM




                         http://infogr.am
SOFTWARE:
              ADOBE ILLUSTRATOR

Graphic design and vectors




                             http://www.informationisbeautiful.net/
SOFTWARE:
                      TILEMILL




Draw Beautiful Maps


                                 http://mapbox.com/tilemill/gallery/
SOFTWARE:
                GEPHI




            Photoshop for Network Graph
LANGUAGE:
            R

                Statistics on Steroids
LANGUAGE:
                  PROCESSING




Interactive Awesomeness
DATA STORYTELLING   WORKSHOP
      IN PRACTICE
DESIGN A VISUALIZATION!

Based on your network map, imagine a specific story
you want to tell or a specific idea you want to
investigate with data.


A   story                       5 min Presentation
A   title
A   visualization draft
A   list of possible data sources & how to get it
   Where to find interesting?
   Can you access it? If not, imagine a way to get this data
   Licensing, ownership & privacy issues
YOUR DATA STORY

You have to put together a 5 min presentation
about your data story

You have to show:
A story
A title
A visualization draft
How do you plan to get your data?
(Some existing data, if possible)
COURT OF ATTENDEES

For each presentation, we split the attendees in 2 groups: pros & cons
The groups should change each time (one time pros, one time cons).

              Pros                                   Cons
      What is so great about               Why is this presentation
       this presentation?                         so awful?
                                         
                                         
                                         
                                         
                                         
THANKS !   SEE YOU
           ONLINE
    BYE    @clemsos

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Network Mapping & Data Storytelling for Beginners

  • 1. DATA & VISUALIZATION INVESTIGATING Clément COMPLEX TERRITORIES Renaud Toulouse 2 University - Oct 2013 @clemsos
  • 2. ABOUT ME Clément Renaud phD Social networks and urban spaces in China Co-founder Sharism Lab # @sharismlab data sharismlab.com journalism visualization @clemsos social networks clement.renaud@gmail.com urbanity www.clementrenaud.com China
  • 3. TODAY CLASS: OBJECTIVES What is data and Achievement how people use it MAP A NETWORK How it relates to territories 1) Identify a case Showcase some examples 2) Find data you need Introduce tools 3) Map it
  • 4. TODAY CLASS: DETAILS Data Morning Duration: 2x3h Some definitions Data & territories Workshop: Network mapping Materials: Slides (here) Notes Viz Afternoon Visualization Tools gallery Workshop: Visualize it
  • 5. DATA, NETWORKS, PART 1 : Definitions ETC.
  • 6. WHAT IS DATA? DATA : - Factual information, especially information organized for analysis or used to reason or make decisions - Information output by a sensing device or organ that includes both useful and irrelevant or redundant information and must be processed to be meaningful - Information in numerical form that can be digitally transmitted or processed F r o m M e r r i a m - We b s t e r
  • 8. DATA=DIGITAL INFORMATION  Written info in huge amounts  Quantification of its subject / object  Storage - in computers databases  Can be processed by machines  Huge trend in early 21st Century: business, ad, indsutry, science, etc.
  • 9. WHAT IS AT STAKE WITH DATA? Objectivize things to provide new understanding A « facts are sacred » approach towards complex questions and problem-solving Apply scientific method to interrogate any kind of beings, objects, ideas, etc.
  • 11. HANDLE COMPLEXITY Problem: Most of data is made by machines, for machines. How can we access it? How can we understand it?
  • 12. THE DATA SCIENCE METHOD From raw data 1. Statistics: Studying to images 2. Data Munging: Suffering 3. Visualization: Storytelling Mike @dataspora , Sexy Data Geeks. 2009
  • 15. VISUALIZATION “The brain doesn’t just process information that comes though the eyes. It also creates mental visual images that allow us to reason and plan actions that facilitate survival.” A. Cairo, The Functional Art - 2013
  • 16. NETWORKS STRUCTURE http://www.aaronkoblin.com/work/flightpatterns/
  • 17. LINKEDIN NETWORK Vi s u a l i z a t i o n of my professional n e t wo r k u s i n g Linkedin Labs Facebook n e t wo r k g r a p h can be generated using N e t vi z z
  • 18. SEATTLE BAND MAP The Seattle Band Map explores how bands from the Pacific Northwest are interconnected through personal relationships and collaborations. h t t p : / / w w w. s e a t t lebandmap.com/
  • 19. MUSE Muse is an i n t e r a ct i ve vi s u a l i z a t i o n o f scientific publications to e xp l o r e t h e collaborations b e t we e n i n s t i t u ti o n s . h t t p : // t i l l n a g e l . c o m / 2010/ 11/m use/
  • 20. KIVA MAP Mapping 2005- 2 0 11 K i va a c t i vi t y ( m i c r o - loans and p a yb a c k ) Vi d e o f r o m h t t p : // vi m e o . c o m/28413747
  • 21. NETWORK MAPPING PART 2 : WORKSHOP
  • 22. SURROUNDED BY NETWORKS The model of a network is everywhere : cities, DNA, social relationships, Internet, etc. Question is : « What connects? » - and how. What is this strange relationship that links data to networks?
  • 23. IDENTIFY A NETWORK Questions: MAP THE CLASSROOM AS A What is the NETWORK structure of the network? What are the WHAT CONNECTS different kinds of data we can IN THIS identify? CLASSROOM? How is the data produced? exchanged?
  • 24. MAP YOUR OWN NETWORK ! Civil Society NGO-STK-Network Workshop in Istanbul by @graphcommons
  • 25. CONNECTIONS  Transmission Networks Something actually flows.  Interaction Networks Connection is an event, with a specific time.  Attribution Networks Connection is an expression of a relationship.  Affiliation Networks Connection is a belonging to a group or category.
  • 26. MAP YOUR OWN NETWORKS Objectives Identify an interesting network related to a specific territory Ex: Food waste in Toulouse, actors in job research, etc. Deliveries Draw an extensive map of this network Use colors, dots, line, weight to represent things
  • 27. SOME DIRECTIVES Where to start a graph?  You can start with the first thing that comes to your mind, then grow and tweak the map step by step from there. Where to stop a graph?  Putting a definitive graph title and considering only the strong connections help to limit your network map's scope.  Connection w eight Strong connections bring closer the two end nodes, and reveal tight clusters. In fact, strong ties are more transitive than weak ties.  Collaborative mapping more fruitful and complete graphs, in fact, it is great for brain storming From http://graphcommons.com
  • 28. DATA, IMAGES GRAPHIC STORIES AND TERRITORIES
  • 29. What is the story you want DATA to tell us? VISUALIZA TION Te l l yo u r s t o r y What is the specific focus The example of the Arab yo u wa n t t o take out of this Spring data set?
  • 30. EVENTS TIMELINE Arab spring: an i n t e r a ct i ve timeline of Middle East protests S e e l i ve o n the Guardian
  • 31. THE REVOLUTIONS WERE TWEETED I n f o r ma t i o n F l o ws D u r i n g t h e 2 0 11 Tu n i s i a n a n d E g yp t i a n R e vo l u t i ons h t t p : // www. d a n a h . o r g / p r o j e c ts /IJOC- ArabSpring/
  • 32. NEWSPAPER ANALYSIS Spanish front page n e ws p a p e r a n a l ys i s d u r i n g the Arab S p r i ng h t t p : // www. i e c a h . o r g / we b / vi s u al/egipto-libia- s i r i a - ot r os . ht m
  • 33. WIKIPEDIA EDITS Wikipedia Edits During the Middle- E a s t P r o t e s ts h t t p : // www. yo ut u b e . c o m/ wa t c h ? v= z 3 Wo 2 2 j l 4 A c
  • 34. IS THIS THE SAME STORY? Identify d i ff e r e n c e s and common p o i n t s? W h at a r e k e y elements to s u c c e ss i n each piece? How has the data been produced?
  • 35. OTHER RECENTS EVENTS Sandy storm - Power Cut Blackout map based on Tweets by Social Flow
  • 36. IMPORTANCE OF DATA LOCALLY  Crisis management  Urban planning  Transportation  Transparency  Participation  Recollection  Space design  Coverage  Etc. NYC Subway Map Update
  • 37. ABOUT OPEN DATA  Made publicly  Open government available (release, initiative access,  Code for America documentation…)  US political tradition  Open Data is not based on only governmental accountability data  Obama campaign has  Mutual economic interests http://www.data.gov/
  • 38. OPEN DATA IN FRANCE OpenData 71 Rennes Collective Action Top-down initiative Citizen-based Public funding No funding National target Local target Cons Cons Nobody use this data Illegal practices Unsustainable Unclear program Pros Pros Nice data platform Data is in use
  • 39. BASICS VISUALIZATION & METHODS
  • 40. WORKFLOW: CREATE A DATAVIZ  Objectives: extract, process, visualize, publish  Tools : Web-based, softwares, languages Ben Fry, Computational Design. 2004
  • 41. DEFINE A DATAVIZ PROJECT You may find data in weird places. A story tends to Draft, draft, draft 1. begin somewhere Chose your tools based on your 2. tell something (team) skills. 3. end. Mind the time spent! These apply for a map, a graph, a Be kind to your visualization, etc. readers
  • 42. STEP BY STEP How it should work: How it really works 1. Great, I have some nice 1. Define project data/a brilliant idea ! 2. Let’s try some tools 2. Find data 3. Well, I just waste 3 hours on tutorials 3. Draft something visual 4. I should do something 4. Define tools & time easier 5. Another 2 hours on 5. Clean and refine data google 6. What was this brilliant 6. Visualize idea again? 7. I should post this link 7. Publish on Facebook 8. It’s late already. Let’s 8. Promote just forget about this dataviz thing….
  • 43. TOOLS ARE EVIL. GEEK GALLERY
  • 44. WEB-BASED: GOOGLE FUSION TABLES Easy maps & graph Example
  • 45. WEB-BASED: INFOGR.AM http://infogr.am
  • 46. SOFTWARE: ADOBE ILLUSTRATOR Graphic design and vectors http://www.informationisbeautiful.net/
  • 47. SOFTWARE: TILEMILL Draw Beautiful Maps http://mapbox.com/tilemill/gallery/
  • 48. SOFTWARE: GEPHI Photoshop for Network Graph
  • 49. LANGUAGE: R Statistics on Steroids
  • 50. LANGUAGE: PROCESSING Interactive Awesomeness
  • 51. DATA STORYTELLING WORKSHOP IN PRACTICE
  • 52. DESIGN A VISUALIZATION! Based on your network map, imagine a specific story you want to tell or a specific idea you want to investigate with data. A story 5 min Presentation A title A visualization draft A list of possible data sources & how to get it  Where to find interesting?  Can you access it? If not, imagine a way to get this data  Licensing, ownership & privacy issues
  • 53. YOUR DATA STORY You have to put together a 5 min presentation about your data story You have to show: A story A title A visualization draft How do you plan to get your data? (Some existing data, if possible)
  • 54. COURT OF ATTENDEES For each presentation, we split the attendees in 2 groups: pros & cons The groups should change each time (one time pros, one time cons). Pros Cons What is so great about Why is this presentation this presentation? so awful?          
  • 55. THANKS ! SEE YOU ONLINE BYE @clemsos