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Frieda Brioschi - frieda.brioschi@gmail.com
Emma Tracanella - emma.tracanella@gmail.com
HOW TO COLLECT AND ORGANIZE DATA
LESSON 2 - 2021
A QUICK INTRO
LET’S START
DEAR DATA
GIORGIA LUPI
LESSON 2
THE PROJECT
Dear Data is a project by Giorgia Lupi and Stefanie Posavec, developed over 12
months - between 2014 and 2015 - and from both sides of the Atlantic - London and
New York: each week, the two designers collected and gave shape to a particular
kind of data (actions and thoughts, from the number of clocks they had seen to the
number of greetings they had made), make a drawing on a postcard and sending it,
dropping it into a postbox and mailbox respectively. The front showed a drawing of
the data and the back displayed a key to decode it. A rite of observation and
translation, but also a personal documentary.
▸ https://it.moleskine.com/mind-maps-and-infographics/p0198
4
LESSON 2
THE PROJECT
5
LESSON 2
THE AUTHORS
7
LESSON 2
8
COLLECT YOUR DATA
data & content design
DATA IS ALL AROUND US
LESSON 2
9
METHODS
DATA COLLECTION
LESSON 2
WHAT ARE DATA
Data are individual units of information.
A datum describes a single quality or quantity of some object or phenomenon.
Data are measured, collected and reported, and analyzed, whereupon they can
be visualized using graphs, images or other analysis tools.
11
LESSON 2
PRIMARY VS SECONDARY DATA
▸ Primary data is data that is observed or collected from first-hand sources
▸ Secondary data is data gathered from studies, surveys, or experiments that
have been run by other people
12
LESSON 2
PRIMARY DATA PRO & CON
▸ Tailored according to research
needs
▸ The researcher can determine
exactly what data will be
collected
▸ Defined and consistent protocol
▸ Completeness of data is ensured
13
▸ Time consuming
▸ Rely on subjects recall and
communication abilities
▸ Bias may occur due to various
factors
▸ Need to check reliability of
raters
CC-BY-NC XKCD http://imgs.xkcd.com/comics/1_to_10.png
LESSON 2
SECONDARY DATA PRO & CON
▸ It is easier and quicker
▸ Absence of researcher’s biases
▸ Economical and time saving
▸ Participant’s co-operation may
not be necessary & it
eliminates the biases related
to participant awareness
14
▸ Accuracy, completeness and
reliability depend upon original
individual collecting the data
▸ May not be suitable for answering
current research question
▸ Missed data and inaccuracy are
common
▸ Biases are commonly expected
LESSON 2
QUALITATIVE VS QUANTITATIVE
▸ Quantitative data comes in the form of numbers, quantities and values.
Pro: it’s concrete and easily measurable.
▸ Qualitative data is descriptive, based on attributes.
It helps to explain the “why” behind the information quantitative data
reveals.
15
LESSON 2
PRIMARY DATA COLLECTION
▸ Observation
▸ Surveys & Questionnaire
▸ Interviews
▸ Focus Group
16
LESSON 2
HOW
17
https://www.questionpro.com/features/survey-design/
▸ Survey questions
▸ Survey design
▸ Survey distribution
▸ Survey collection
▸ Survey analysis
LESSON 2
PRIMARY DATA COLLECTION
▸ In-Person Interviews
Pros: In-depth and a high degree of confidence on the data
Cons: Time consuming, expensive and can be dismissed as anedoctal
▸ Mail Surveys
Pros: Can reach anyone and everyone – no barrier
Cons: Expensive, data collection errors, lag time
▸ Phone Surveys
Pros: High degree of confidence on the data collected, reach almost anyone
Cons: Expensive, cannot self-administer, need to hire an agency
▸ Web/Online Surveys
Pros: Cheap, can self-administer, very low probability of data errors
Cons: Not all your customers might have an email address/be on the internet, customers may be wary of
divulging information online.
18
LESSON 2
BIAS
Bias in data collection is a distortion which results in the information not being truly representative
of the situation you are trying to investigate. Bias occurs for example when systematic error is
introduced into sampling or testing by selecting or encouraging one outcome or answer over others.
It can results from:
▸ survey questions that are constructed with a particular slant
▸ choosing a known group with a particular background to respond to surveys
▸ reporting data in misleading categorical groupings
▸ non-random selections when sampling
▸ systematic measurement errors
19
YOUR DATA
CASE STUDY
LESSON 2
DATA CLEANING - TIME
21
LESSON 2
DATA CLEANING
22
Sveglia #
prima delle 7:00 2
7:00 3
7:15 3
7:30 11
7:45 7
8:00 44
8:25 1
8:27 1
8:30 12
8:45 4
8:55 1
9:00 2
Totale 91
Sveglia #
prima delle 7:00 2
7:00 3
7:15 3
7:30 11
7:45 7
8:00 44
8:15 0
8:30 14
8:45 4
9:00 3
Totale 91
LESSON 2
DATA CLEANING
23
LESSON 2
DATA CLEANING - WHERE ARE YOU FROM
▸ 91 answers
▸ 70 different values!
24
▸ Nata in Calabria residente a
Milano
▸ Manzano, UD, Friuli Venezia Giulia
▸ In cucina
▸ Bollate vs Bollate (MI)
▸ sardegna - Puglia - Basilicata
LESSON 2
DATA CLEANING - COUNTRY
▸ 4 countries
▸ 1 unknown
25
Paese #
In cucina 1
Cina 1
Colombia 1
Italia 86
Montenegro 1
Spagna 1
Totale 91
LESSON 2
DATA CLEANING - REGION
26
Regione #
- 4
Abruzzo 1
Basilicata 2
Calabria 5
Campagna 2
Emilia Romagna 4
Friuli Venezia Giulia 5
Liguria 2
Lombardia 44
Marche 1
Piemonte 2
Puglia 4
Sardegna 2
Sicilia 4
Spagna 1
Toscana 2
Veneto 6
Grand Total 91
LESSON 2
DATA CLEANING - PROVINCIA
27
Prov #
- 9
AG 1
AP 1
BG 2
BI 1
BS 2
CO 5
CT 1
CZ 3
EN 1
FE 1
GE 1
LE 1
LO 1
MB 1
ME 1
MI 25
MO 1
NA 1
NO 1
PD 1
PE 1
PO 1
PR 1
PZ 1
RC 2
RE 1
SA 1
SI 1
SO 2
SS 1
SV 1
TA 1
TS 2
TV 1
UD 3
VA 6
VE 1
VI 2
VR 1
Grand Total 91
Regione Prov #
- - 5
Abruzzo PE 1
Basilicata - 1
PZ 1
Calabria CZ 3
RC 2
Campagna NA 1
SA 1
Emilia Romagna FE 1
MO 1
PR 1
RE 1
Friuli Venezia Giulia TS 2
UD 3
Liguria GE 1
SV 1
Lombardia BG 2
BS 2
CO 5
LO 1
MB 1
MI 25
SO 2
VA 6
Marche AP 1
Piemonte BI 1
NO 1
Puglia - 2
LE 1
TA 1
Sardegna - 1
SS 1
Sicilia AG 1
CT 1
EN 1
ME 1
Toscana PO 1
SI 1
Veneto PD 1
TV 1
VE 1
VI 2
VR 1
Grand Total 91
LESSON 2
DATA CLEANING - CITY
28
Di dove sei? #
- 8
Alghero 1
Amalfi 1
Ascoli Piceno 1
Bassano del Grappa 1
Bergamo 2
Biella 1
Bollate 2
Brescia 2
Busto Arsizio 2
Canicattì 1
Castellanza 1
Catania 1
Catanzaro 1
Cinisello Balsamo 1
Como 4
Enna 1
Ferrara 1
Genova 1
Lainate 1
Lamezia Terme 1
Legnano 1
Lignano Sabbiadoro 1
Lissone 1
Lurate Caccivio 1
Madrid 1
Manzano 1
Milano 18
Milazzo 1
Modena 1
Monza 1
Napoli 1
Novara 1
Padova 1
Parabiago 1
Parma 1
Pescara 1
Pietra Ligure 1
Potenza 1
Prato 1
Racale 1
Reggio Calabria 2
Reggio Emilia 1
Saronno 1
Sesto Calende 1
Siena 1
Somma Lombardo 1
Sondrio 2
Sordio 1
Soverato 1
Taranto 1
Treviso 1
Trieste 1
Trieste 1
Udine 1
Verona 2
Vicenza 1
Grand Total 91
LESSON 2
SECONDARY DATA SOURCES
▸ Our data:
▸ Personal information, likes, activities and interests (Facebook, instagram,
Youtube, …)
▸ Personal data (from mobile phone)
29
LESSON 2
APPLE DATA HEALTH
▸ Heart rate, sleeping habits, workouts,
steps and walking routines
▸ Introduced in September 2014 with iOS
8, the Apple Health app is pre-installed
on all iPhones.
▸ Low-energy sensors, constantly
collecting information about the user’s
physical activities. With optional extra
hardware (e.g. Apple Watch), Apple
Health can collect significantly more
information. 
30
LESSON 2
SECONDARY DATA SOURCES
▸ Other data:
▸ Public data sets
▸ Historical data
31
LESSON 2
FLIGHTRADAR24
▸ Flightradar24 is a global flight tracking
service that provides you with real-time
information about thousands of aircraft
around the world.
▸ Flightradar24 tracks 180,000+ flights,
from 1,200+ airlines, flying to or from
4,000+ airports around the world in real
time.
▸
▸ https://www.flightradar24.com
32
LESSON 2
HISTORICAL CLIMATE DATA
▸ Many of the historical sources available to
climate historians mention weather in
some way, but these references are
buried in a huge volume of information.
▸ In recent years initiatives have
transcribed, quantified, and digitalized:
a) historical observations,
b) historical activities that must have been
strongly influenced by weather.
▸ https://www.historicalclimatology.com/databases.html
33
LESSON 2
ATLAS OF URBAN EXPANSION
▸ As of 2010, the world contained 4,231 cities
with 100,000 or more people.
▸ The Atlas of Urban Expansion collects and
analyzes data on the quantity and quality of
urban expansion in a stratified global
sample of 200 cities.
▸ The Atlas presents the output of the first two
phases of the Monitoring Global Urban
Expansion Program, an initiative that gathers
data and evidence on cities worldwide.
▸ http://atlasofurbanexpansion.org/cities/view/Milan
34
LESSON 2
MIT’S URBAN SENSING
▸ MIT quantified the sensing power of a
taxi fleet to cover a city’s street
segments during a day
▸ The model helps city planners and
policy makers to quantify the number of
mobile sensors necessary to cover
different urban areas, as well as the
temporal coverage requirements.
▸ http://senseable.mit.edu/urban-sensing/
35
LESSON 2
THE MOST POPULOUS CITY THROUGH TIME
36
https://www.youtube.com/watch?v=pMs5xapBewM
data & content design
DATA COLLECTION MAY BE AFFECTED BY
THEIR USE!
We
LESSON 2
37
PROCESSING
DATA
LESSON 2
STRUCTURED DATA
Structured data is usually contained in rows and columns and its elements can be mapped into fixed pre-
defined model. Examples of sources:
▸ SQL Databases
▸ Spreadsheets such as Excel
▸ OLTP Systems
▸ Online forms
▸ Sensors such as GPS or RFID tags
▸ Network and Web server logs
▸ Medical devices
39
LESSON 2
UNSTRUCTURED DATA
Unstructured data is data that cannot be contained in a row-column format and doesn’t have a data
model. Examples of sources:
▸ Web pages
▸ Images (JPEG, GIF, PNG, etc.)
▸ Videos
▸ Memos
▸ Reports
▸ Word documents and presentations
▸ Surveys
40
LESSON 2
SEMI-STRUCTURED DATA
Basically it’s a mix between both of the previous ones. Semi-structured data has some defining or
consistent characteristics but doesn’t conform to a rigid structure. Examples of sources:
▸ E-mails
▸ XML and other markup languages
▸ Binary executables
▸ TCP/IP packets
▸ Zipped files
▸ JSON
▸ Web pages
41
TERRIBLE DATA STORY
DATA VISUALIZATION AND
LESSON 2
NAPOLEON RUSSIAN CAMPAIGN
43
LESSON 2
DATA SET
44
LESSON 2
45
https://towardsdatascience.com/murdering-a-legendary-data-story-what-can-we-learn-from-a-grammar-of-graphics-ad6ca42f5e30
ANNUAL REPORT
THE FELTRON
LESSON 2
THE REPORTS
FAR document the measurements of a number of the author’s personal activities
over the course of a year.
Set out in maps and infographics, the reports reveal data gathered from
everyday actions: distance traveled on foot, the amount of time spent eating,
traveling on public transports, the method of greeting different individuals, time
spent with mom or other specific individuals, time devoted to reading or sleeping.
They included qualitative and quantitative data, measurements and behavioral
patterns expertly combined in a functional and attractive way.
47
LESSON 2
49
THE MODERN
EXAMINATION
DATA VISUALIZATION AND
LESSON 2
INFORMATION GRAPHICS
There is a magic in information graphics. Maps float you above the land for a bird’s
eye view. Timelines arrange memories on the page for all to see. Diagrams reveal
the parts inside without requiring disassembly, or incision.
Henry D. Hubbard
This exhibition examine information graphics that show space, time, nature, and
society
51
https://exhibits.stanford.edu/dataviz

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How to collect and organize data (v. ITA 2021)

  • 1. Frieda Brioschi - frieda.brioschi@gmail.com Emma Tracanella - emma.tracanella@gmail.com HOW TO COLLECT AND ORGANIZE DATA LESSON 2 - 2021
  • 4. LESSON 2 THE PROJECT Dear Data is a project by Giorgia Lupi and Stefanie Posavec, developed over 12 months - between 2014 and 2015 - and from both sides of the Atlantic - London and New York: each week, the two designers collected and gave shape to a particular kind of data (actions and thoughts, from the number of clocks they had seen to the number of greetings they had made), make a drawing on a postcard and sending it, dropping it into a postbox and mailbox respectively. The front showed a drawing of the data and the back displayed a key to decode it. A rite of observation and translation, but also a personal documentary. ▸ https://it.moleskine.com/mind-maps-and-infographics/p0198 4
  • 6.
  • 9. data & content design DATA IS ALL AROUND US LESSON 2 9
  • 11. LESSON 2 WHAT ARE DATA Data are individual units of information. A datum describes a single quality or quantity of some object or phenomenon. Data are measured, collected and reported, and analyzed, whereupon they can be visualized using graphs, images or other analysis tools. 11
  • 12. LESSON 2 PRIMARY VS SECONDARY DATA ▸ Primary data is data that is observed or collected from first-hand sources ▸ Secondary data is data gathered from studies, surveys, or experiments that have been run by other people 12
  • 13. LESSON 2 PRIMARY DATA PRO & CON ▸ Tailored according to research needs ▸ The researcher can determine exactly what data will be collected ▸ Defined and consistent protocol ▸ Completeness of data is ensured 13 ▸ Time consuming ▸ Rely on subjects recall and communication abilities ▸ Bias may occur due to various factors ▸ Need to check reliability of raters CC-BY-NC XKCD http://imgs.xkcd.com/comics/1_to_10.png
  • 14. LESSON 2 SECONDARY DATA PRO & CON ▸ It is easier and quicker ▸ Absence of researcher’s biases ▸ Economical and time saving ▸ Participant’s co-operation may not be necessary & it eliminates the biases related to participant awareness 14 ▸ Accuracy, completeness and reliability depend upon original individual collecting the data ▸ May not be suitable for answering current research question ▸ Missed data and inaccuracy are common ▸ Biases are commonly expected
  • 15. LESSON 2 QUALITATIVE VS QUANTITATIVE ▸ Quantitative data comes in the form of numbers, quantities and values. Pro: it’s concrete and easily measurable. ▸ Qualitative data is descriptive, based on attributes. It helps to explain the “why” behind the information quantitative data reveals. 15
  • 16. LESSON 2 PRIMARY DATA COLLECTION ▸ Observation ▸ Surveys & Questionnaire ▸ Interviews ▸ Focus Group 16
  • 17. LESSON 2 HOW 17 https://www.questionpro.com/features/survey-design/ ▸ Survey questions ▸ Survey design ▸ Survey distribution ▸ Survey collection ▸ Survey analysis
  • 18. LESSON 2 PRIMARY DATA COLLECTION ▸ In-Person Interviews Pros: In-depth and a high degree of confidence on the data Cons: Time consuming, expensive and can be dismissed as anedoctal ▸ Mail Surveys Pros: Can reach anyone and everyone – no barrier Cons: Expensive, data collection errors, lag time ▸ Phone Surveys Pros: High degree of confidence on the data collected, reach almost anyone Cons: Expensive, cannot self-administer, need to hire an agency ▸ Web/Online Surveys Pros: Cheap, can self-administer, very low probability of data errors Cons: Not all your customers might have an email address/be on the internet, customers may be wary of divulging information online. 18
  • 19. LESSON 2 BIAS Bias in data collection is a distortion which results in the information not being truly representative of the situation you are trying to investigate. Bias occurs for example when systematic error is introduced into sampling or testing by selecting or encouraging one outcome or answer over others. It can results from: ▸ survey questions that are constructed with a particular slant ▸ choosing a known group with a particular background to respond to surveys ▸ reporting data in misleading categorical groupings ▸ non-random selections when sampling ▸ systematic measurement errors 19
  • 22. LESSON 2 DATA CLEANING 22 Sveglia # prima delle 7:00 2 7:00 3 7:15 3 7:30 11 7:45 7 8:00 44 8:25 1 8:27 1 8:30 12 8:45 4 8:55 1 9:00 2 Totale 91 Sveglia # prima delle 7:00 2 7:00 3 7:15 3 7:30 11 7:45 7 8:00 44 8:15 0 8:30 14 8:45 4 9:00 3 Totale 91
  • 24. LESSON 2 DATA CLEANING - WHERE ARE YOU FROM ▸ 91 answers ▸ 70 different values! 24 ▸ Nata in Calabria residente a Milano ▸ Manzano, UD, Friuli Venezia Giulia ▸ In cucina ▸ Bollate vs Bollate (MI) ▸ sardegna - Puglia - Basilicata
  • 25. LESSON 2 DATA CLEANING - COUNTRY ▸ 4 countries ▸ 1 unknown 25 Paese # In cucina 1 Cina 1 Colombia 1 Italia 86 Montenegro 1 Spagna 1 Totale 91
  • 26. LESSON 2 DATA CLEANING - REGION 26 Regione # - 4 Abruzzo 1 Basilicata 2 Calabria 5 Campagna 2 Emilia Romagna 4 Friuli Venezia Giulia 5 Liguria 2 Lombardia 44 Marche 1 Piemonte 2 Puglia 4 Sardegna 2 Sicilia 4 Spagna 1 Toscana 2 Veneto 6 Grand Total 91
  • 27. LESSON 2 DATA CLEANING - PROVINCIA 27 Prov # - 9 AG 1 AP 1 BG 2 BI 1 BS 2 CO 5 CT 1 CZ 3 EN 1 FE 1 GE 1 LE 1 LO 1 MB 1 ME 1 MI 25 MO 1 NA 1 NO 1 PD 1 PE 1 PO 1 PR 1 PZ 1 RC 2 RE 1 SA 1 SI 1 SO 2 SS 1 SV 1 TA 1 TS 2 TV 1 UD 3 VA 6 VE 1 VI 2 VR 1 Grand Total 91 Regione Prov # - - 5 Abruzzo PE 1 Basilicata - 1 PZ 1 Calabria CZ 3 RC 2 Campagna NA 1 SA 1 Emilia Romagna FE 1 MO 1 PR 1 RE 1 Friuli Venezia Giulia TS 2 UD 3 Liguria GE 1 SV 1 Lombardia BG 2 BS 2 CO 5 LO 1 MB 1 MI 25 SO 2 VA 6 Marche AP 1 Piemonte BI 1 NO 1 Puglia - 2 LE 1 TA 1 Sardegna - 1 SS 1 Sicilia AG 1 CT 1 EN 1 ME 1 Toscana PO 1 SI 1 Veneto PD 1 TV 1 VE 1 VI 2 VR 1 Grand Total 91
  • 28. LESSON 2 DATA CLEANING - CITY 28 Di dove sei? # - 8 Alghero 1 Amalfi 1 Ascoli Piceno 1 Bassano del Grappa 1 Bergamo 2 Biella 1 Bollate 2 Brescia 2 Busto Arsizio 2 Canicattì 1 Castellanza 1 Catania 1 Catanzaro 1 Cinisello Balsamo 1 Como 4 Enna 1 Ferrara 1 Genova 1 Lainate 1 Lamezia Terme 1 Legnano 1 Lignano Sabbiadoro 1 Lissone 1 Lurate Caccivio 1 Madrid 1 Manzano 1 Milano 18 Milazzo 1 Modena 1 Monza 1 Napoli 1 Novara 1 Padova 1 Parabiago 1 Parma 1 Pescara 1 Pietra Ligure 1 Potenza 1 Prato 1 Racale 1 Reggio Calabria 2 Reggio Emilia 1 Saronno 1 Sesto Calende 1 Siena 1 Somma Lombardo 1 Sondrio 2 Sordio 1 Soverato 1 Taranto 1 Treviso 1 Trieste 1 Trieste 1 Udine 1 Verona 2 Vicenza 1 Grand Total 91
  • 29. LESSON 2 SECONDARY DATA SOURCES ▸ Our data: ▸ Personal information, likes, activities and interests (Facebook, instagram, Youtube, …) ▸ Personal data (from mobile phone) 29
  • 30. LESSON 2 APPLE DATA HEALTH ▸ Heart rate, sleeping habits, workouts, steps and walking routines ▸ Introduced in September 2014 with iOS 8, the Apple Health app is pre-installed on all iPhones. ▸ Low-energy sensors, constantly collecting information about the user’s physical activities. With optional extra hardware (e.g. Apple Watch), Apple Health can collect significantly more information.  30
  • 31. LESSON 2 SECONDARY DATA SOURCES ▸ Other data: ▸ Public data sets ▸ Historical data 31
  • 32. LESSON 2 FLIGHTRADAR24 ▸ Flightradar24 is a global flight tracking service that provides you with real-time information about thousands of aircraft around the world. ▸ Flightradar24 tracks 180,000+ flights, from 1,200+ airlines, flying to or from 4,000+ airports around the world in real time. ▸ ▸ https://www.flightradar24.com 32
  • 33. LESSON 2 HISTORICAL CLIMATE DATA ▸ Many of the historical sources available to climate historians mention weather in some way, but these references are buried in a huge volume of information. ▸ In recent years initiatives have transcribed, quantified, and digitalized: a) historical observations, b) historical activities that must have been strongly influenced by weather. ▸ https://www.historicalclimatology.com/databases.html 33
  • 34. LESSON 2 ATLAS OF URBAN EXPANSION ▸ As of 2010, the world contained 4,231 cities with 100,000 or more people. ▸ The Atlas of Urban Expansion collects and analyzes data on the quantity and quality of urban expansion in a stratified global sample of 200 cities. ▸ The Atlas presents the output of the first two phases of the Monitoring Global Urban Expansion Program, an initiative that gathers data and evidence on cities worldwide. ▸ http://atlasofurbanexpansion.org/cities/view/Milan 34
  • 35. LESSON 2 MIT’S URBAN SENSING ▸ MIT quantified the sensing power of a taxi fleet to cover a city’s street segments during a day ▸ The model helps city planners and policy makers to quantify the number of mobile sensors necessary to cover different urban areas, as well as the temporal coverage requirements. ▸ http://senseable.mit.edu/urban-sensing/ 35
  • 36. LESSON 2 THE MOST POPULOUS CITY THROUGH TIME 36 https://www.youtube.com/watch?v=pMs5xapBewM
  • 37. data & content design DATA COLLECTION MAY BE AFFECTED BY THEIR USE! We LESSON 2 37
  • 39. LESSON 2 STRUCTURED DATA Structured data is usually contained in rows and columns and its elements can be mapped into fixed pre- defined model. Examples of sources: ▸ SQL Databases ▸ Spreadsheets such as Excel ▸ OLTP Systems ▸ Online forms ▸ Sensors such as GPS or RFID tags ▸ Network and Web server logs ▸ Medical devices 39
  • 40. LESSON 2 UNSTRUCTURED DATA Unstructured data is data that cannot be contained in a row-column format and doesn’t have a data model. Examples of sources: ▸ Web pages ▸ Images (JPEG, GIF, PNG, etc.) ▸ Videos ▸ Memos ▸ Reports ▸ Word documents and presentations ▸ Surveys 40
  • 41. LESSON 2 SEMI-STRUCTURED DATA Basically it’s a mix between both of the previous ones. Semi-structured data has some defining or consistent characteristics but doesn’t conform to a rigid structure. Examples of sources: ▸ E-mails ▸ XML and other markup languages ▸ Binary executables ▸ TCP/IP packets ▸ Zipped files ▸ JSON ▸ Web pages 41
  • 42. TERRIBLE DATA STORY DATA VISUALIZATION AND
  • 47. LESSON 2 THE REPORTS FAR document the measurements of a number of the author’s personal activities over the course of a year. Set out in maps and infographics, the reports reveal data gathered from everyday actions: distance traveled on foot, the amount of time spent eating, traveling on public transports, the method of greeting different individuals, time spent with mom or other specific individuals, time devoted to reading or sleeping. They included qualitative and quantitative data, measurements and behavioral patterns expertly combined in a functional and attractive way. 47
  • 48.
  • 51. LESSON 2 INFORMATION GRAPHICS There is a magic in information graphics. Maps float you above the land for a bird’s eye view. Timelines arrange memories on the page for all to see. Diagrams reveal the parts inside without requiring disassembly, or incision. Henry D. Hubbard This exhibition examine information graphics that show space, time, nature, and society 51 https://exhibits.stanford.edu/dataviz