SlideShare una empresa de Scribd logo
1 de 68
DATA VISUALISATION
A GAME OF DECISIONS
Andy Kirk
andy@visualisingdata.com
www.visualisingdata.com
@visualisingdata
2
The visual representation and presentation
of data to facilitate understanding
What is data visualisation?
3
Why facilitate and not deliver?
Perceiving Interpreting Comprehending
What does it mean?
Is it good or bad?
Meaningful or insignificant?
Unusual or expected?
What does it show?
What’s plotted?
How do things compare?
What relationships exist?
What does it mean to me?
What are the main messages?
What have I learnt?
Any actions to take?
CREATOR CONSUMER
4
The importance of critical thinking to improve visual sophistication
5
The importance of critical thinking to improve visual sophistication
6
The importance of critical thinking to improve visual sophistication
7
To make the best decisions you need to be familiar with all your
options and aware of the things that will influence your choices.
A game of decisions
THINGS YOU
COULD DO
THINGS YOU
WILL DO
“IT DEPENDS”
8
Design workflow: Effective decisions, efficiently made
Stage 1
Formulating
your brief
Stage 2
Working
with data
Stage 3
Establishing your
editorial thinking
Stage 4
Developing your
design solution
9
Design workflow: Effective decisions, efficiently made
Stage 1
Formulating
your brief
Stage 2
Working
with data
Stage 3
Establishing your
editorial thinking
Stage 4
Developing your
design solution
What’s the curiosity? What are the conditions? What’s the purpose?
10Visualisation from http://filmographics.visualisingdata.com/
“What is the pattern of success or failure in the
movie careers of a range of notable actors/directors?”
What’s the curiosity? “An eagerness to understand something”
11
What are the conditions? The factors and requirements
12
What are the conditions? The factors and requirements
http://chartmaker.visualisingdata.com/
13
What’s the purpose? How will understanding be facilitated?
https://www.bbc.co.uk/weather
Explanatory Exploratory
Exhibitory
14
Design workflow: Effective decisions, efficiently made
Stage 1
Formulating
your brief
Stage 3
Establishing your
editorial thinking
Stage 4
Developing your
design solution
Stage 2
Working
with data
Data acquisition, examination, transformation, and exploration
15
HEADING
SUMMARY
STATS
CREDITS
LOGO
63 matches =
8 x 8 grid
Working with data: Understanding its properties and qualities
16
Working with data: Understanding its properties and qualities
17
Working with data: Understanding its properties and qualities
Qualitative (Textual)
Bolt quote: “It wasn't perfect today, but I got it done
and I’m pretty proud of what I've achieved.
Nobody else has done it or even attempted it”
Categorical (Nominal) The athletics event: Men's 100m
Categorical (Ordinal) The medal category: Gold
Quantitative (Interval)
The estimated temperature at track level
during the Men's 100m: 28℃
Quantitative (Ratio) Usain Bolt’s winning time: 9.81 seconds
18
Working with data: Understanding its properties and qualities
19
Working with data: Understanding its properties and qualities
WHO?
WHAT?
HOW
MUCH?
20
Design workflow: Effective decisions, efficiently made
Stage 1
Formulating
your brief
Stage 4
Developing your
design solution
Stage 2
Working
with data
Stage 3
Establishing your
editorial thinking
What questions are you trying to answer in support of the overriding curiosity?
21
Editorial: Which angle(s) of analysis are relevant/interesting?
How good was my run?
What distance did I run?
What time/pace did I run it in?
What were my main achievements?
What was the route elevation?
What were my 1km splits?
22
Editorial: Which angle(s) of analysis are relevant/interesting?
How good was my run?
23
Editorial: How will you frame your data (include vs. exclude)?
24
Design workflow: Effective decisions, efficiently made
Stage 1
Formulating
your brief
Stage 2
Working
with data
Stage 3
Establishing your
editorial thinking
Stage 4
Developing your
design solution
Making data representation, interactivity, annotation, colour, and composition choices
25
Data representation: A recipe of marks and attributes
Shape
Line
Form
Point
Size
Position
Angle
Pattern
Quantity Containment
Connection
Symbol
Colour
Visual placeholders to
represent data items
Visual properties to represent
data values
Direction
26
Data representation: A recipe of marks and attributes
Size
Colour
Line
27
Data representation: A recipe of marks and attributes
Shape
Colour
Size
28
Data representation: How to show what you want to say?
CATEGORICAL
Comparing categories and
distributions of quantitative values
TEMPORAL
Showing trends and activities
over time
HIERARCHICAL
Charting part-to-whole relationships
and hierarchies
SPATIAL
Mapping spatial patterns through
overlays and distortions
RELATIONAL
Graphing relationships to explore
correlations and connections
29
Data representation: How to show what you want to say?
30
Interactivity: Controlling what and how your data is presented
Visualisation from http://www.visualisingdata.com/olympics2016/
31
Annotation: Judging the right level of assistance
Visualisation from http://www.visualisingdata.com/2016/05/boom-bust-shape-roller-coaster-season/
32
Annotation: Judging the right level of assistance
Illustration by Martin Handford https://www.amazon.com/Wheres-Waldo-Martin-Handford/dp/0763634980/ref=sr_1_5?ie=UTF8&qid=1306352231&sr=8-5
THERE’S
WALLY
33
Annotation: Judging the right level of assistance
34
Colour: Colouring all your chart and project contents
Visualisation from http://filmographics.visualisingdata.com/
35
Colour: Colouring all your chart and project contents
Visualisation by FinViz https://finviz.com/map.ashx?t=sec&st=w1
36
Colour: Colouring all your chart and project contents
Visualisation by FinViz https://finviz.com/map.ashx?t=sec&st=w1
Colour blindness
simulator
colororacle.org
37
Composition: Making layout, sizing and positioning decisions
38
BAR CHART UNIVARIATE BUBBLE PLOT
BUBBLE PLOT
SLOPE GRAPH
MATRIX CHART
Composition: Making layout, sizing and positioning decisions
TITLE
ABOUT THE DATA
HEADLINES
ABOUT THE SUBJECT
SECTIONS & COMMENTARY
39
Composition: Making layout, sizing and positioning decisions
WHO?
WHAT?
HOW
MUCH?
40
Composition: Making layout, sizing and positioning decisions
41
Composition: Making layout, sizing and positioning decisions
42
Composition: Making layout, sizing and positioning decisions
Visualisation by Andy Kirk http://www.visualisingdata.com/olympics2016/
43
Demo
A four-stage process for efficient
and effective visualisation design
44
Formulating the brief: Requirements
45
Single slide overview to be used in a presentation to key
stakeholders to show “how staff feel about working here”
Formulating the brief: Requirements
46
Formulating the brief: Tool constraints
47
Working with data: Understanding its properties and qualities
SURVEY RESULTS
8 x question categories about work issues
5 x response categories for scale of feelings
40 x question-response quantities (%, 100% total per question)
DEMOGRAPHICS
4 x gender categories, 4 x quantities (% and abs. numbers)
3 x employment categories, 3 x quantities (% and abs. numbers)
6 x service length categories, 6 x quantities (% and abs. numbers)
48
1. What the proportion of responses look like for each
question?
2. What is the breakdown across respondent demographics?
Editorial thinking: What questions are you trying to answer?
49
Data representation: How to show what you want to say?
CATEGORICAL
Comparing categories and
distributions of quantitative values
TEMPORAL
Showing trends and activities
over time
HIERARCHICAL
Charting part-to-whole relationships
and hierarchies
SPATIAL
Mapping spatial patterns through
overlays and distortions
RELATIONAL
Graphing relationships to explore
correlations and connections
1. What the proportion of responses look like for each
question?
2. What is the breakdown across respondent demographics?
50
Chart types: How to show what you want to say?
51
Chart types: How to show what you want to say?
52
Chart types: How to show what you want to say?
Agreement
Disagreeme
nt
No-opinion
53
Chart types: How to show what you want to say?
Agreement
Disagreeme
nt
No-opinion
54
Chart types: How to show what you want to say?
Gender
Female
Male
Other
No response
Employment Status
Full-Time
Part-Time
No response
Length of Service
Less than 1 year
Between 1 and 3 years
Between 3 and 5 years
Between 5 and 10 years
Over 10 years
No response
Female
Male
Other
No response
0 20 40 60 80 100 120 140
Gender
Full-Time
Part-Time
No response
0 20 40 60 80 100 120 140 160
Employment Status
Less than 1 year
Between 1 and 3 years
Between 3 and 5 years
Between 5 and 10 years
Over 10 years
No response
0 10 20 30 40 50 60 70 80 90
Length of Service
55
Chart types: How to show what you want to say?
Back-to-back bar
chart
Bar
chart
Bubble chart
56
Interactivity: Controlling what and how your data is presented
Q3. Strongly Agree = 45%
More info | Download data | Contact
Results
filtered for
female
respondents
57
Annotation: Judging the right level of assistance
Main
observations
verbalised
58
Colour: Colouring all your chart and project contents
59
Colour: Colouring all your chart and project contents
60
Colour: Colouring all your chart and project contents
Response categories
Demographic bars
Background shading
Title text
Section title text
Chart axis and value labels
61
Colour: Colouring all your chart and project contents
62
Composition: Defining all size and position decisions
Survey results
breakdown
Demographic
breakdown
Title
63
Composition: Defining all size and position decisions
64
Developing your design solution
65
Developing your critical ‘eye’: Evaluating visualisations
Design layers Design evaluation
Data representation: How is the data visually
represented?
What choices are effective and why?
What choices are ineffective, why? What would be better?
Interactivity: Features to adjust the data and
presentation
What choices are effective and why?
What choices are ineffective, why? What would be better?
Annotation: Features of assistance
What choices are effective and why?
What choices are ineffective, why? What would be better?
Colour: Data associations, editorial focus, and
functional harmony
What choices are effective and why?
What choices are ineffective, why? What would be better?
Composition: Layout, size and placement of all
contents
What choices are effective and why?
What choices are ineffective, why? What would be better?
66
Effective
visualisation is
TRUSTWORTHY
Effective
visualisation is
ACCESSIBLE
Effective
visualisation is
ELEGANT
Developing your critical ‘eye’: What is effectiveness?
Do I Believe it? Do I Understand it? Do I Like it?
67
Learn more! ‘Introduction to Data Visualisation’ online course
https://campus.sagepub.com/introduction-to-data-visualisation
DATA VISUALISATION
A GAME OF DECISIONS
Andy Kirk
andy@visualisingdata.com
www.visualisingdata.com
@visualisingdata

Más contenido relacionado

La actualidad más candente

A Reference Architecture for Digital Health: The Health Catalyst Data Operati...
A Reference Architecture for Digital Health: The Health Catalyst Data Operati...A Reference Architecture for Digital Health: The Health Catalyst Data Operati...
A Reference Architecture for Digital Health: The Health Catalyst Data Operati...Health Catalyst
 
Lecture1 introduction to big data
Lecture1 introduction to big dataLecture1 introduction to big data
Lecture1 introduction to big datahktripathy
 
How to Use a Semantic Layer to Deliver Actionable Insights at Scale
How to Use a Semantic Layer to Deliver Actionable Insights at ScaleHow to Use a Semantic Layer to Deliver Actionable Insights at Scale
How to Use a Semantic Layer to Deliver Actionable Insights at ScaleDATAVERSITY
 
How to Improve Data Analysis Through Visualization in Tableau
How to Improve Data Analysis Through Visualization in TableauHow to Improve Data Analysis Through Visualization in Tableau
How to Improve Data Analysis Through Visualization in TableauEdureka!
 
The Evolution of Data Science
The Evolution of Data ScienceThe Evolution of Data Science
The Evolution of Data ScienceKenny Daniel
 
DATA MINING TOOL- ORANGE
DATA MINING TOOL- ORANGEDATA MINING TOOL- ORANGE
DATA MINING TOOL- ORANGENeeraj Goswami
 
ドラえもんの世界をオブジェクト指向で
ドラえもんの世界をオブジェクト指向でドラえもんの世界をオブジェクト指向で
ドラえもんの世界をオブジェクト指向でyaju88
 
White Paper - Data Warehouse Project Management
White Paper - Data Warehouse Project ManagementWhite Paper - Data Warehouse Project Management
White Paper - Data Warehouse Project ManagementDavid Walker
 
Introduction to Data Management Maturity Models
Introduction to Data Management Maturity ModelsIntroduction to Data Management Maturity Models
Introduction to Data Management Maturity ModelsKingland
 
Data analytics presentation- Management career institute
Data analytics presentation- Management career institute Data analytics presentation- Management career institute
Data analytics presentation- Management career institute PoojaPatidar11
 
Best-Practices-for-Using-Tableau-With-Snowflake.pdf
Best-Practices-for-Using-Tableau-With-Snowflake.pdfBest-Practices-for-Using-Tableau-With-Snowflake.pdf
Best-Practices-for-Using-Tableau-With-Snowflake.pdfssuserf8f9b2
 
Big Data Fundamentals
Big Data FundamentalsBig Data Fundamentals
Big Data Fundamentalsrjain51
 
Introduction to Cloud Computing and Big Data
Introduction to Cloud Computing and Big DataIntroduction to Cloud Computing and Big Data
Introduction to Cloud Computing and Big Datawaheed751
 
Tableau PPT Intro, Features, Advantages, Disadvantages
Tableau PPT Intro, Features, Advantages, DisadvantagesTableau PPT Intro, Features, Advantages, Disadvantages
Tableau PPT Intro, Features, Advantages, DisadvantagesBurn & Born
 
Data visualization tools & techniques - 1
Data visualization tools & techniques - 1Data visualization tools & techniques - 1
Data visualization tools & techniques - 1Korivi Sravan Kumar
 
Advance Data Visualization and Storytelling Virtual Workshop
Advance Data Visualization and Storytelling Virtual WorkshopAdvance Data Visualization and Storytelling Virtual Workshop
Advance Data Visualization and Storytelling Virtual WorkshopCCG
 

La actualidad más candente (20)

A Reference Architecture for Digital Health: The Health Catalyst Data Operati...
A Reference Architecture for Digital Health: The Health Catalyst Data Operati...A Reference Architecture for Digital Health: The Health Catalyst Data Operati...
A Reference Architecture for Digital Health: The Health Catalyst Data Operati...
 
Lecture1 introduction to big data
Lecture1 introduction to big dataLecture1 introduction to big data
Lecture1 introduction to big data
 
How to Use a Semantic Layer to Deliver Actionable Insights at Scale
How to Use a Semantic Layer to Deliver Actionable Insights at ScaleHow to Use a Semantic Layer to Deliver Actionable Insights at Scale
How to Use a Semantic Layer to Deliver Actionable Insights at Scale
 
data mining
data mining data mining
data mining
 
How to Improve Data Analysis Through Visualization in Tableau
How to Improve Data Analysis Through Visualization in TableauHow to Improve Data Analysis Through Visualization in Tableau
How to Improve Data Analysis Through Visualization in Tableau
 
The Evolution of Data Science
The Evolution of Data ScienceThe Evolution of Data Science
The Evolution of Data Science
 
DATA MINING TOOL- ORANGE
DATA MINING TOOL- ORANGEDATA MINING TOOL- ORANGE
DATA MINING TOOL- ORANGE
 
ドラえもんの世界をオブジェクト指向で
ドラえもんの世界をオブジェクト指向でドラえもんの世界をオブジェクト指向で
ドラえもんの世界をオブジェクト指向で
 
White Paper - Data Warehouse Project Management
White Paper - Data Warehouse Project ManagementWhite Paper - Data Warehouse Project Management
White Paper - Data Warehouse Project Management
 
Tableau ppt
Tableau pptTableau ppt
Tableau ppt
 
Introduction to Data Management Maturity Models
Introduction to Data Management Maturity ModelsIntroduction to Data Management Maturity Models
Introduction to Data Management Maturity Models
 
Data analytics presentation- Management career institute
Data analytics presentation- Management career institute Data analytics presentation- Management career institute
Data analytics presentation- Management career institute
 
Best-Practices-for-Using-Tableau-With-Snowflake.pdf
Best-Practices-for-Using-Tableau-With-Snowflake.pdfBest-Practices-for-Using-Tableau-With-Snowflake.pdf
Best-Practices-for-Using-Tableau-With-Snowflake.pdf
 
Big Data Fundamentals
Big Data FundamentalsBig Data Fundamentals
Big Data Fundamentals
 
Introduction to Cloud Computing and Big Data
Introduction to Cloud Computing and Big DataIntroduction to Cloud Computing and Big Data
Introduction to Cloud Computing and Big Data
 
NLP
NLPNLP
NLP
 
Tableau PPT Intro, Features, Advantages, Disadvantages
Tableau PPT Intro, Features, Advantages, DisadvantagesTableau PPT Intro, Features, Advantages, Disadvantages
Tableau PPT Intro, Features, Advantages, Disadvantages
 
Data visualization tools & techniques - 1
Data visualization tools & techniques - 1Data visualization tools & techniques - 1
Data visualization tools & techniques - 1
 
Advance Data Visualization and Storytelling Virtual Workshop
Advance Data Visualization and Storytelling Virtual WorkshopAdvance Data Visualization and Storytelling Virtual Workshop
Advance Data Visualization and Storytelling Virtual Workshop
 
3 data visualization
3 data visualization3 data visualization
3 data visualization
 

Similar a Data Visualisation - A Game of Decisions with Andy Kirk

Data Visualisation: A Game of Decisions
Data Visualisation: A Game of DecisionsData Visualisation: A Game of Decisions
Data Visualisation: A Game of DecisionsAndy Kirk
 
design principles for visualization
design principles for visualizationdesign principles for visualization
design principles for visualizationPrernaMishra62
 
AMA/Aquent: Data-Driven Design - Why Marketers Hold the Key to Success
AMA/Aquent: Data-Driven Design - Why Marketers Hold the Key to SuccessAMA/Aquent: Data-Driven Design - Why Marketers Hold the Key to Success
AMA/Aquent: Data-Driven Design - Why Marketers Hold the Key to SuccessAquent
 
UX STRAT Europe 2019: Tom Ablewhite, Jamie Horne, Foolproof
UX STRAT Europe 2019: Tom Ablewhite, Jamie Horne, FoolproofUX STRAT Europe 2019: Tom Ablewhite, Jamie Horne, Foolproof
UX STRAT Europe 2019: Tom Ablewhite, Jamie Horne, FoolproofUX STRAT
 
Tmag preso, mar 2012 v1.2
Tmag preso, mar 2012   v1.2Tmag preso, mar 2012   v1.2
Tmag preso, mar 2012 v1.2Kevin Hill
 
Simplified Forecasting masterclass CPA Australia Congress 2016 udpate
Simplified Forecasting masterclass CPA Australia Congress 2016 udpateSimplified Forecasting masterclass CPA Australia Congress 2016 udpate
Simplified Forecasting masterclass CPA Australia Congress 2016 udpateTim Richardson
 
Design tips for surveys UIE 2012
Design tips for surveys UIE 2012Design tips for surveys UIE 2012
Design tips for surveys UIE 2012Caroline Jarrett
 
UXSG2014 Workshop (Day 1) - Leading UX (Trend Micro)
UXSG2014 Workshop (Day 1) - Leading UX (Trend Micro)UXSG2014 Workshop (Day 1) - Leading UX (Trend Micro)
UXSG2014 Workshop (Day 1) - Leading UX (Trend Micro)ux singapore
 
Guidelines for data visualisation: eye vegetables and eye candy
Guidelines for data visualisation: eye vegetables and eye candyGuidelines for data visualisation: eye vegetables and eye candy
Guidelines for data visualisation: eye vegetables and eye candyJen Stirrup
 
Storytelling.pptx
Storytelling.pptxStorytelling.pptx
Storytelling.pptxAmit Kumar
 
Data Visualization for Management Consultants & Analyst
Data Visualization for Management Consultants & AnalystData Visualization for Management Consultants & Analyst
Data Visualization for Management Consultants & AnalystAsen Gyczew
 
Designing Data Visualizations to Strengthen Health Systems
Designing Data Visualizations to Strengthen Health SystemsDesigning Data Visualizations to Strengthen Health Systems
Designing Data Visualizations to Strengthen Health SystemsAmanda Makulec
 
Data Visualization and Dashboard Design
Data Visualization and Dashboard DesignData Visualization and Dashboard Design
Data Visualization and Dashboard DesignJacques Warren
 
"A study of Customer's Perception towards 360 degree housing solutions in Vad...
"A study of Customer's Perception towards 360 degree housing solutions in Vad..."A study of Customer's Perception towards 360 degree housing solutions in Vad...
"A study of Customer's Perception towards 360 degree housing solutions in Vad...Sandeep Parmar
 
Digital Team Working.pdf
Digital Team Working.pdfDigital Team Working.pdf
Digital Team Working.pdfAliZahedi29
 

Similar a Data Visualisation - A Game of Decisions with Andy Kirk (20)

Data Visualisation: A Game of Decisions
Data Visualisation: A Game of DecisionsData Visualisation: A Game of Decisions
Data Visualisation: A Game of Decisions
 
design principles for visualization
design principles for visualizationdesign principles for visualization
design principles for visualization
 
aaa.represent.me
aaa.represent.meaaa.represent.me
aaa.represent.me
 
AMA/Aquent: Data-Driven Design - Why Marketers Hold the Key to Success
AMA/Aquent: Data-Driven Design - Why Marketers Hold the Key to SuccessAMA/Aquent: Data-Driven Design - Why Marketers Hold the Key to Success
AMA/Aquent: Data-Driven Design - Why Marketers Hold the Key to Success
 
UX STRAT Europe 2019: Tom Ablewhite, Jamie Horne, Foolproof
UX STRAT Europe 2019: Tom Ablewhite, Jamie Horne, FoolproofUX STRAT Europe 2019: Tom Ablewhite, Jamie Horne, Foolproof
UX STRAT Europe 2019: Tom Ablewhite, Jamie Horne, Foolproof
 
Tmag preso, mar 2012 v1.2
Tmag preso, mar 2012   v1.2Tmag preso, mar 2012   v1.2
Tmag preso, mar 2012 v1.2
 
Simplified Forecasting masterclass CPA Australia Congress 2016 udpate
Simplified Forecasting masterclass CPA Australia Congress 2016 udpateSimplified Forecasting masterclass CPA Australia Congress 2016 udpate
Simplified Forecasting masterclass CPA Australia Congress 2016 udpate
 
Design tips for surveys UIE 2012
Design tips for surveys UIE 2012Design tips for surveys UIE 2012
Design tips for surveys UIE 2012
 
UXSG2014 Workshop (Day 1) - Leading UX (Trend Micro)
UXSG2014 Workshop (Day 1) - Leading UX (Trend Micro)UXSG2014 Workshop (Day 1) - Leading UX (Trend Micro)
UXSG2014 Workshop (Day 1) - Leading UX (Trend Micro)
 
Guidelines for data visualisation: eye vegetables and eye candy
Guidelines for data visualisation: eye vegetables and eye candyGuidelines for data visualisation: eye vegetables and eye candy
Guidelines for data visualisation: eye vegetables and eye candy
 
Storytelling.pptx
Storytelling.pptxStorytelling.pptx
Storytelling.pptx
 
Data Visualization for Management Consultants & Analyst
Data Visualization for Management Consultants & AnalystData Visualization for Management Consultants & Analyst
Data Visualization for Management Consultants & Analyst
 
Designing Data Visualizations to Strengthen Health Systems
Designing Data Visualizations to Strengthen Health SystemsDesigning Data Visualizations to Strengthen Health Systems
Designing Data Visualizations to Strengthen Health Systems
 
P
PP
P
 
Design process
Design processDesign process
Design process
 
formal.ppt
formal.pptformal.ppt
formal.ppt
 
The Art of Estimating - Andy Nolan
The Art of Estimating - Andy NolanThe Art of Estimating - Andy Nolan
The Art of Estimating - Andy Nolan
 
Data Visualization and Dashboard Design
Data Visualization and Dashboard DesignData Visualization and Dashboard Design
Data Visualization and Dashboard Design
 
"A study of Customer's Perception towards 360 degree housing solutions in Vad...
"A study of Customer's Perception towards 360 degree housing solutions in Vad..."A study of Customer's Perception towards 360 degree housing solutions in Vad...
"A study of Customer's Perception towards 360 degree housing solutions in Vad...
 
Digital Team Working.pdf
Digital Team Working.pdfDigital Team Working.pdf
Digital Team Working.pdf
 

Más de SAGE Publishing

Publishing Innovations in the Age of Big Data
Publishing Innovations in the Age of Big DataPublishing Innovations in the Age of Big Data
Publishing Innovations in the Age of Big DataSAGE Publishing
 
Advancing Methodologies: A Conversation with John Creswel
Advancing Methodologies: A Conversation with John CreswelAdvancing Methodologies: A Conversation with John Creswel
Advancing Methodologies: A Conversation with John CreswelSAGE Publishing
 
2017 Charleston Photo Contest
2017 Charleston Photo Contest2017 Charleston Photo Contest
2017 Charleston Photo ContestSAGE Publishing
 
5 ways to take your entrepreunership teaching to the next level
5 ways to take your entrepreunership teaching to the next level5 ways to take your entrepreunership teaching to the next level
5 ways to take your entrepreunership teaching to the next levelSAGE Publishing
 
From Big Data to the Big Picture
From Big Data to the Big PictureFrom Big Data to the Big Picture
From Big Data to the Big PictureSAGE Publishing
 
The Power of Stories: Engaging your American Government Students
The Power of Stories: Engaging your American Government StudentsThe Power of Stories: Engaging your American Government Students
The Power of Stories: Engaging your American Government StudentsSAGE Publishing
 
Social Science in the Age of Trump: What We'd Like to See
Social Science in the Age of Trump: What We'd Like to See Social Science in the Age of Trump: What We'd Like to See
Social Science in the Age of Trump: What We'd Like to See SAGE Publishing
 
Teaching Statistics to People Who (Think They) Hate Statistics: Tips for Over...
Teaching Statistics to People Who (Think They) Hate Statistics: Tips for Over...Teaching Statistics to People Who (Think They) Hate Statistics: Tips for Over...
Teaching Statistics to People Who (Think They) Hate Statistics: Tips for Over...SAGE Publishing
 
Survey Tips for Librarians
Survey Tips for LibrariansSurvey Tips for Librarians
Survey Tips for LibrariansSAGE Publishing
 
5 Tips for Teaching Introduction to Mass Communication: Engaging Students Liv...
5 Tips for Teaching Introduction to Mass Communication: Engaging Students Liv...5 Tips for Teaching Introduction to Mass Communication: Engaging Students Liv...
5 Tips for Teaching Introduction to Mass Communication: Engaging Students Liv...SAGE Publishing
 
Battling bannings: Authors discuss intellectual freedom and the freedom to read
Battling bannings: Authors discuss intellectual freedom and the freedom to readBattling bannings: Authors discuss intellectual freedom and the freedom to read
Battling bannings: Authors discuss intellectual freedom and the freedom to readSAGE Publishing
 
2016 Charleston Photo Contest Winners
2016 Charleston Photo Contest Winners2016 Charleston Photo Contest Winners
2016 Charleston Photo Contest WinnersSAGE Publishing
 
From Publication to the Public Expanding your research beyond academia
From Publication to the Public Expanding your research beyond academiaFrom Publication to the Public Expanding your research beyond academia
From Publication to the Public Expanding your research beyond academiaSAGE Publishing
 
Researching Researchers: Developing Evidence-Based Strategy for Improved Disc...
Researching Researchers: Developing Evidence-Based Strategy for Improved Disc...Researching Researchers: Developing Evidence-Based Strategy for Improved Disc...
Researching Researchers: Developing Evidence-Based Strategy for Improved Disc...SAGE Publishing
 
Search, Serendipity & the Researcher Experience
Search, Serendipity & the Researcher ExperienceSearch, Serendipity & the Researcher Experience
Search, Serendipity & the Researcher ExperienceSAGE Publishing
 
Libraries and Local Businesses: Best practices for supporting your entreprene...
Libraries and Local Businesses: Best practices for supporting your entreprene...Libraries and Local Businesses: Best practices for supporting your entreprene...
Libraries and Local Businesses: Best practices for supporting your entreprene...SAGE Publishing
 
Washington, D.C. and Social and Behavioral Science: The Picture for 2016
Washington, D.C. and Social and Behavioral Science: The Picture for 2016 Washington, D.C. and Social and Behavioral Science: The Picture for 2016
Washington, D.C. and Social and Behavioral Science: The Picture for 2016 SAGE Publishing
 
Teaching Educational Research Methods: Making it Real & Relevant for Students
Teaching Educational Research Methods: Making it Real & Relevant for StudentsTeaching Educational Research Methods: Making it Real & Relevant for Students
Teaching Educational Research Methods: Making it Real & Relevant for StudentsSAGE Publishing
 
Finding Common Ground: Bringing Methods and Analysis into Context
Finding Common Ground: Bringing Methods and Analysis into ContextFinding Common Ground: Bringing Methods and Analysis into Context
Finding Common Ground: Bringing Methods and Analysis into ContextSAGE Publishing
 

Más de SAGE Publishing (20)

Publishing Innovations in the Age of Big Data
Publishing Innovations in the Age of Big DataPublishing Innovations in the Age of Big Data
Publishing Innovations in the Age of Big Data
 
Advancing Methodologies: A Conversation with John Creswel
Advancing Methodologies: A Conversation with John CreswelAdvancing Methodologies: A Conversation with John Creswel
Advancing Methodologies: A Conversation with John Creswel
 
2017 Charleston Photo Contest
2017 Charleston Photo Contest2017 Charleston Photo Contest
2017 Charleston Photo Contest
 
5 ways to take your entrepreunership teaching to the next level
5 ways to take your entrepreunership teaching to the next level5 ways to take your entrepreunership teaching to the next level
5 ways to take your entrepreunership teaching to the next level
 
From Big Data to the Big Picture
From Big Data to the Big PictureFrom Big Data to the Big Picture
From Big Data to the Big Picture
 
The Power of Stories: Engaging your American Government Students
The Power of Stories: Engaging your American Government StudentsThe Power of Stories: Engaging your American Government Students
The Power of Stories: Engaging your American Government Students
 
Social Science in the Age of Trump: What We'd Like to See
Social Science in the Age of Trump: What We'd Like to See Social Science in the Age of Trump: What We'd Like to See
Social Science in the Age of Trump: What We'd Like to See
 
Little Green Facts
Little Green FactsLittle Green Facts
Little Green Facts
 
Teaching Statistics to People Who (Think They) Hate Statistics: Tips for Over...
Teaching Statistics to People Who (Think They) Hate Statistics: Tips for Over...Teaching Statistics to People Who (Think They) Hate Statistics: Tips for Over...
Teaching Statistics to People Who (Think They) Hate Statistics: Tips for Over...
 
Survey Tips for Librarians
Survey Tips for LibrariansSurvey Tips for Librarians
Survey Tips for Librarians
 
5 Tips for Teaching Introduction to Mass Communication: Engaging Students Liv...
5 Tips for Teaching Introduction to Mass Communication: Engaging Students Liv...5 Tips for Teaching Introduction to Mass Communication: Engaging Students Liv...
5 Tips for Teaching Introduction to Mass Communication: Engaging Students Liv...
 
Battling bannings: Authors discuss intellectual freedom and the freedom to read
Battling bannings: Authors discuss intellectual freedom and the freedom to readBattling bannings: Authors discuss intellectual freedom and the freedom to read
Battling bannings: Authors discuss intellectual freedom and the freedom to read
 
2016 Charleston Photo Contest Winners
2016 Charleston Photo Contest Winners2016 Charleston Photo Contest Winners
2016 Charleston Photo Contest Winners
 
From Publication to the Public Expanding your research beyond academia
From Publication to the Public Expanding your research beyond academiaFrom Publication to the Public Expanding your research beyond academia
From Publication to the Public Expanding your research beyond academia
 
Researching Researchers: Developing Evidence-Based Strategy for Improved Disc...
Researching Researchers: Developing Evidence-Based Strategy for Improved Disc...Researching Researchers: Developing Evidence-Based Strategy for Improved Disc...
Researching Researchers: Developing Evidence-Based Strategy for Improved Disc...
 
Search, Serendipity & the Researcher Experience
Search, Serendipity & the Researcher ExperienceSearch, Serendipity & the Researcher Experience
Search, Serendipity & the Researcher Experience
 
Libraries and Local Businesses: Best practices for supporting your entreprene...
Libraries and Local Businesses: Best practices for supporting your entreprene...Libraries and Local Businesses: Best practices for supporting your entreprene...
Libraries and Local Businesses: Best practices for supporting your entreprene...
 
Washington, D.C. and Social and Behavioral Science: The Picture for 2016
Washington, D.C. and Social and Behavioral Science: The Picture for 2016 Washington, D.C. and Social and Behavioral Science: The Picture for 2016
Washington, D.C. and Social and Behavioral Science: The Picture for 2016
 
Teaching Educational Research Methods: Making it Real & Relevant for Students
Teaching Educational Research Methods: Making it Real & Relevant for StudentsTeaching Educational Research Methods: Making it Real & Relevant for Students
Teaching Educational Research Methods: Making it Real & Relevant for Students
 
Finding Common Ground: Bringing Methods and Analysis into Context
Finding Common Ground: Bringing Methods and Analysis into ContextFinding Common Ground: Bringing Methods and Analysis into Context
Finding Common Ground: Bringing Methods and Analysis into Context
 

Último

Biometric Authentication: The Evolution, Applications, Benefits and Challenge...
Biometric Authentication: The Evolution, Applications, Benefits and Challenge...Biometric Authentication: The Evolution, Applications, Benefits and Challenge...
Biometric Authentication: The Evolution, Applications, Benefits and Challenge...GQ Research
 
ASML's Taxonomy Adventure by Daniel Canter
ASML's Taxonomy Adventure by Daniel CanterASML's Taxonomy Adventure by Daniel Canter
ASML's Taxonomy Adventure by Daniel Cantervoginip
 
Defining Constituents, Data Vizzes and Telling a Data Story
Defining Constituents, Data Vizzes and Telling a Data StoryDefining Constituents, Data Vizzes and Telling a Data Story
Defining Constituents, Data Vizzes and Telling a Data StoryJeremy Anderson
 
专业一比一美国俄亥俄大学毕业证成绩单pdf电子版制作修改
专业一比一美国俄亥俄大学毕业证成绩单pdf电子版制作修改专业一比一美国俄亥俄大学毕业证成绩单pdf电子版制作修改
专业一比一美国俄亥俄大学毕业证成绩单pdf电子版制作修改yuu sss
 
DBA Basics: Getting Started with Performance Tuning.pdf
DBA Basics: Getting Started with Performance Tuning.pdfDBA Basics: Getting Started with Performance Tuning.pdf
DBA Basics: Getting Started with Performance Tuning.pdfJohn Sterrett
 
April 2024 - NLIT Cloudera Real-Time LLM Streaming 2024
April 2024 - NLIT Cloudera Real-Time LLM Streaming 2024April 2024 - NLIT Cloudera Real-Time LLM Streaming 2024
April 2024 - NLIT Cloudera Real-Time LLM Streaming 2024Timothy Spann
 
Decoding the Heart: Student Presentation on Heart Attack Prediction with Data...
Decoding the Heart: Student Presentation on Heart Attack Prediction with Data...Decoding the Heart: Student Presentation on Heart Attack Prediction with Data...
Decoding the Heart: Student Presentation on Heart Attack Prediction with Data...Boston Institute of Analytics
 
Predictive Analysis for Loan Default Presentation : Data Analysis Project PPT
Predictive Analysis for Loan Default  Presentation : Data Analysis Project PPTPredictive Analysis for Loan Default  Presentation : Data Analysis Project PPT
Predictive Analysis for Loan Default Presentation : Data Analysis Project PPTBoston Institute of Analytics
 
Advanced Machine Learning for Business Professionals
Advanced Machine Learning for Business ProfessionalsAdvanced Machine Learning for Business Professionals
Advanced Machine Learning for Business ProfessionalsVICTOR MAESTRE RAMIREZ
 
Minimizing AI Hallucinations/Confabulations and the Path towards AGI with Exa...
Minimizing AI Hallucinations/Confabulations and the Path towards AGI with Exa...Minimizing AI Hallucinations/Confabulations and the Path towards AGI with Exa...
Minimizing AI Hallucinations/Confabulations and the Path towards AGI with Exa...Thomas Poetter
 
Call Us ➥97111√47426🤳Call Girls in Aerocity (Delhi NCR)
Call Us ➥97111√47426🤳Call Girls in Aerocity (Delhi NCR)Call Us ➥97111√47426🤳Call Girls in Aerocity (Delhi NCR)
Call Us ➥97111√47426🤳Call Girls in Aerocity (Delhi NCR)jennyeacort
 
Generative AI for Social Good at Open Data Science East 2024
Generative AI for Social Good at Open Data Science East 2024Generative AI for Social Good at Open Data Science East 2024
Generative AI for Social Good at Open Data Science East 2024Colleen Farrelly
 
LLMs, LMMs, their Improvement Suggestions and the Path towards AGI
LLMs, LMMs, their Improvement Suggestions and the Path towards AGILLMs, LMMs, their Improvement Suggestions and the Path towards AGI
LLMs, LMMs, their Improvement Suggestions and the Path towards AGIThomas Poetter
 
20240419 - Measurecamp Amsterdam - SAM.pdf
20240419 - Measurecamp Amsterdam - SAM.pdf20240419 - Measurecamp Amsterdam - SAM.pdf
20240419 - Measurecamp Amsterdam - SAM.pdfHuman37
 
原版1:1定制南十字星大学毕业证(SCU毕业证)#文凭成绩单#真实留信学历认证永久存档
原版1:1定制南十字星大学毕业证(SCU毕业证)#文凭成绩单#真实留信学历认证永久存档原版1:1定制南十字星大学毕业证(SCU毕业证)#文凭成绩单#真实留信学历认证永久存档
原版1:1定制南十字星大学毕业证(SCU毕业证)#文凭成绩单#真实留信学历认证永久存档208367051
 
RABBIT: A CLI tool for identifying bots based on their GitHub events.
RABBIT: A CLI tool for identifying bots based on their GitHub events.RABBIT: A CLI tool for identifying bots based on their GitHub events.
RABBIT: A CLI tool for identifying bots based on their GitHub events.natarajan8993
 
Predicting Salary Using Data Science: A Comprehensive Analysis.pdf
Predicting Salary Using Data Science: A Comprehensive Analysis.pdfPredicting Salary Using Data Science: A Comprehensive Analysis.pdf
Predicting Salary Using Data Science: A Comprehensive Analysis.pdfBoston Institute of Analytics
 
Easter Eggs From Star Wars and in cars 1 and 2
Easter Eggs From Star Wars and in cars 1 and 2Easter Eggs From Star Wars and in cars 1 and 2
Easter Eggs From Star Wars and in cars 1 and 217djon017
 
Consent & Privacy Signals on Google *Pixels* - MeasureCamp Amsterdam 2024
Consent & Privacy Signals on Google *Pixels* - MeasureCamp Amsterdam 2024Consent & Privacy Signals on Google *Pixels* - MeasureCamp Amsterdam 2024
Consent & Privacy Signals on Google *Pixels* - MeasureCamp Amsterdam 2024thyngster
 
科罗拉多大学波尔得分校毕业证学位证成绩单-可办理
科罗拉多大学波尔得分校毕业证学位证成绩单-可办理科罗拉多大学波尔得分校毕业证学位证成绩单-可办理
科罗拉多大学波尔得分校毕业证学位证成绩单-可办理e4aez8ss
 

Último (20)

Biometric Authentication: The Evolution, Applications, Benefits and Challenge...
Biometric Authentication: The Evolution, Applications, Benefits and Challenge...Biometric Authentication: The Evolution, Applications, Benefits and Challenge...
Biometric Authentication: The Evolution, Applications, Benefits and Challenge...
 
ASML's Taxonomy Adventure by Daniel Canter
ASML's Taxonomy Adventure by Daniel CanterASML's Taxonomy Adventure by Daniel Canter
ASML's Taxonomy Adventure by Daniel Canter
 
Defining Constituents, Data Vizzes and Telling a Data Story
Defining Constituents, Data Vizzes and Telling a Data StoryDefining Constituents, Data Vizzes and Telling a Data Story
Defining Constituents, Data Vizzes and Telling a Data Story
 
专业一比一美国俄亥俄大学毕业证成绩单pdf电子版制作修改
专业一比一美国俄亥俄大学毕业证成绩单pdf电子版制作修改专业一比一美国俄亥俄大学毕业证成绩单pdf电子版制作修改
专业一比一美国俄亥俄大学毕业证成绩单pdf电子版制作修改
 
DBA Basics: Getting Started with Performance Tuning.pdf
DBA Basics: Getting Started with Performance Tuning.pdfDBA Basics: Getting Started with Performance Tuning.pdf
DBA Basics: Getting Started with Performance Tuning.pdf
 
April 2024 - NLIT Cloudera Real-Time LLM Streaming 2024
April 2024 - NLIT Cloudera Real-Time LLM Streaming 2024April 2024 - NLIT Cloudera Real-Time LLM Streaming 2024
April 2024 - NLIT Cloudera Real-Time LLM Streaming 2024
 
Decoding the Heart: Student Presentation on Heart Attack Prediction with Data...
Decoding the Heart: Student Presentation on Heart Attack Prediction with Data...Decoding the Heart: Student Presentation on Heart Attack Prediction with Data...
Decoding the Heart: Student Presentation on Heart Attack Prediction with Data...
 
Predictive Analysis for Loan Default Presentation : Data Analysis Project PPT
Predictive Analysis for Loan Default  Presentation : Data Analysis Project PPTPredictive Analysis for Loan Default  Presentation : Data Analysis Project PPT
Predictive Analysis for Loan Default Presentation : Data Analysis Project PPT
 
Advanced Machine Learning for Business Professionals
Advanced Machine Learning for Business ProfessionalsAdvanced Machine Learning for Business Professionals
Advanced Machine Learning for Business Professionals
 
Minimizing AI Hallucinations/Confabulations and the Path towards AGI with Exa...
Minimizing AI Hallucinations/Confabulations and the Path towards AGI with Exa...Minimizing AI Hallucinations/Confabulations and the Path towards AGI with Exa...
Minimizing AI Hallucinations/Confabulations and the Path towards AGI with Exa...
 
Call Us ➥97111√47426🤳Call Girls in Aerocity (Delhi NCR)
Call Us ➥97111√47426🤳Call Girls in Aerocity (Delhi NCR)Call Us ➥97111√47426🤳Call Girls in Aerocity (Delhi NCR)
Call Us ➥97111√47426🤳Call Girls in Aerocity (Delhi NCR)
 
Generative AI for Social Good at Open Data Science East 2024
Generative AI for Social Good at Open Data Science East 2024Generative AI for Social Good at Open Data Science East 2024
Generative AI for Social Good at Open Data Science East 2024
 
LLMs, LMMs, their Improvement Suggestions and the Path towards AGI
LLMs, LMMs, their Improvement Suggestions and the Path towards AGILLMs, LMMs, their Improvement Suggestions and the Path towards AGI
LLMs, LMMs, their Improvement Suggestions and the Path towards AGI
 
20240419 - Measurecamp Amsterdam - SAM.pdf
20240419 - Measurecamp Amsterdam - SAM.pdf20240419 - Measurecamp Amsterdam - SAM.pdf
20240419 - Measurecamp Amsterdam - SAM.pdf
 
原版1:1定制南十字星大学毕业证(SCU毕业证)#文凭成绩单#真实留信学历认证永久存档
原版1:1定制南十字星大学毕业证(SCU毕业证)#文凭成绩单#真实留信学历认证永久存档原版1:1定制南十字星大学毕业证(SCU毕业证)#文凭成绩单#真实留信学历认证永久存档
原版1:1定制南十字星大学毕业证(SCU毕业证)#文凭成绩单#真实留信学历认证永久存档
 
RABBIT: A CLI tool for identifying bots based on their GitHub events.
RABBIT: A CLI tool for identifying bots based on their GitHub events.RABBIT: A CLI tool for identifying bots based on their GitHub events.
RABBIT: A CLI tool for identifying bots based on their GitHub events.
 
Predicting Salary Using Data Science: A Comprehensive Analysis.pdf
Predicting Salary Using Data Science: A Comprehensive Analysis.pdfPredicting Salary Using Data Science: A Comprehensive Analysis.pdf
Predicting Salary Using Data Science: A Comprehensive Analysis.pdf
 
Easter Eggs From Star Wars and in cars 1 and 2
Easter Eggs From Star Wars and in cars 1 and 2Easter Eggs From Star Wars and in cars 1 and 2
Easter Eggs From Star Wars and in cars 1 and 2
 
Consent & Privacy Signals on Google *Pixels* - MeasureCamp Amsterdam 2024
Consent & Privacy Signals on Google *Pixels* - MeasureCamp Amsterdam 2024Consent & Privacy Signals on Google *Pixels* - MeasureCamp Amsterdam 2024
Consent & Privacy Signals on Google *Pixels* - MeasureCamp Amsterdam 2024
 
科罗拉多大学波尔得分校毕业证学位证成绩单-可办理
科罗拉多大学波尔得分校毕业证学位证成绩单-可办理科罗拉多大学波尔得分校毕业证学位证成绩单-可办理
科罗拉多大学波尔得分校毕业证学位证成绩单-可办理
 

Data Visualisation - A Game of Decisions with Andy Kirk

  • 1. DATA VISUALISATION A GAME OF DECISIONS Andy Kirk andy@visualisingdata.com www.visualisingdata.com @visualisingdata
  • 2. 2 The visual representation and presentation of data to facilitate understanding What is data visualisation?
  • 3. 3 Why facilitate and not deliver? Perceiving Interpreting Comprehending What does it mean? Is it good or bad? Meaningful or insignificant? Unusual or expected? What does it show? What’s plotted? How do things compare? What relationships exist? What does it mean to me? What are the main messages? What have I learnt? Any actions to take? CREATOR CONSUMER
  • 4. 4 The importance of critical thinking to improve visual sophistication
  • 5. 5 The importance of critical thinking to improve visual sophistication
  • 6. 6 The importance of critical thinking to improve visual sophistication
  • 7. 7 To make the best decisions you need to be familiar with all your options and aware of the things that will influence your choices. A game of decisions THINGS YOU COULD DO THINGS YOU WILL DO “IT DEPENDS”
  • 8. 8 Design workflow: Effective decisions, efficiently made Stage 1 Formulating your brief Stage 2 Working with data Stage 3 Establishing your editorial thinking Stage 4 Developing your design solution
  • 9. 9 Design workflow: Effective decisions, efficiently made Stage 1 Formulating your brief Stage 2 Working with data Stage 3 Establishing your editorial thinking Stage 4 Developing your design solution What’s the curiosity? What are the conditions? What’s the purpose?
  • 10. 10Visualisation from http://filmographics.visualisingdata.com/ “What is the pattern of success or failure in the movie careers of a range of notable actors/directors?” What’s the curiosity? “An eagerness to understand something”
  • 11. 11 What are the conditions? The factors and requirements
  • 12. 12 What are the conditions? The factors and requirements http://chartmaker.visualisingdata.com/
  • 13. 13 What’s the purpose? How will understanding be facilitated? https://www.bbc.co.uk/weather Explanatory Exploratory Exhibitory
  • 14. 14 Design workflow: Effective decisions, efficiently made Stage 1 Formulating your brief Stage 3 Establishing your editorial thinking Stage 4 Developing your design solution Stage 2 Working with data Data acquisition, examination, transformation, and exploration
  • 15. 15 HEADING SUMMARY STATS CREDITS LOGO 63 matches = 8 x 8 grid Working with data: Understanding its properties and qualities
  • 16. 16 Working with data: Understanding its properties and qualities
  • 17. 17 Working with data: Understanding its properties and qualities Qualitative (Textual) Bolt quote: “It wasn't perfect today, but I got it done and I’m pretty proud of what I've achieved. Nobody else has done it or even attempted it” Categorical (Nominal) The athletics event: Men's 100m Categorical (Ordinal) The medal category: Gold Quantitative (Interval) The estimated temperature at track level during the Men's 100m: 28℃ Quantitative (Ratio) Usain Bolt’s winning time: 9.81 seconds
  • 18. 18 Working with data: Understanding its properties and qualities
  • 19. 19 Working with data: Understanding its properties and qualities WHO? WHAT? HOW MUCH?
  • 20. 20 Design workflow: Effective decisions, efficiently made Stage 1 Formulating your brief Stage 4 Developing your design solution Stage 2 Working with data Stage 3 Establishing your editorial thinking What questions are you trying to answer in support of the overriding curiosity?
  • 21. 21 Editorial: Which angle(s) of analysis are relevant/interesting? How good was my run? What distance did I run? What time/pace did I run it in? What were my main achievements? What was the route elevation? What were my 1km splits?
  • 22. 22 Editorial: Which angle(s) of analysis are relevant/interesting? How good was my run?
  • 23. 23 Editorial: How will you frame your data (include vs. exclude)?
  • 24. 24 Design workflow: Effective decisions, efficiently made Stage 1 Formulating your brief Stage 2 Working with data Stage 3 Establishing your editorial thinking Stage 4 Developing your design solution Making data representation, interactivity, annotation, colour, and composition choices
  • 25. 25 Data representation: A recipe of marks and attributes Shape Line Form Point Size Position Angle Pattern Quantity Containment Connection Symbol Colour Visual placeholders to represent data items Visual properties to represent data values Direction
  • 26. 26 Data representation: A recipe of marks and attributes Size Colour Line
  • 27. 27 Data representation: A recipe of marks and attributes Shape Colour Size
  • 28. 28 Data representation: How to show what you want to say? CATEGORICAL Comparing categories and distributions of quantitative values TEMPORAL Showing trends and activities over time HIERARCHICAL Charting part-to-whole relationships and hierarchies SPATIAL Mapping spatial patterns through overlays and distortions RELATIONAL Graphing relationships to explore correlations and connections
  • 29. 29 Data representation: How to show what you want to say?
  • 30. 30 Interactivity: Controlling what and how your data is presented Visualisation from http://www.visualisingdata.com/olympics2016/
  • 31. 31 Annotation: Judging the right level of assistance Visualisation from http://www.visualisingdata.com/2016/05/boom-bust-shape-roller-coaster-season/
  • 32. 32 Annotation: Judging the right level of assistance Illustration by Martin Handford https://www.amazon.com/Wheres-Waldo-Martin-Handford/dp/0763634980/ref=sr_1_5?ie=UTF8&qid=1306352231&sr=8-5 THERE’S WALLY
  • 33. 33 Annotation: Judging the right level of assistance
  • 34. 34 Colour: Colouring all your chart and project contents Visualisation from http://filmographics.visualisingdata.com/
  • 35. 35 Colour: Colouring all your chart and project contents Visualisation by FinViz https://finviz.com/map.ashx?t=sec&st=w1
  • 36. 36 Colour: Colouring all your chart and project contents Visualisation by FinViz https://finviz.com/map.ashx?t=sec&st=w1 Colour blindness simulator colororacle.org
  • 37. 37 Composition: Making layout, sizing and positioning decisions
  • 38. 38 BAR CHART UNIVARIATE BUBBLE PLOT BUBBLE PLOT SLOPE GRAPH MATRIX CHART Composition: Making layout, sizing and positioning decisions TITLE ABOUT THE DATA HEADLINES ABOUT THE SUBJECT SECTIONS & COMMENTARY
  • 39. 39 Composition: Making layout, sizing and positioning decisions WHO? WHAT? HOW MUCH?
  • 40. 40 Composition: Making layout, sizing and positioning decisions
  • 41. 41 Composition: Making layout, sizing and positioning decisions
  • 42. 42 Composition: Making layout, sizing and positioning decisions Visualisation by Andy Kirk http://www.visualisingdata.com/olympics2016/
  • 43. 43 Demo A four-stage process for efficient and effective visualisation design
  • 45. 45 Single slide overview to be used in a presentation to key stakeholders to show “how staff feel about working here” Formulating the brief: Requirements
  • 46. 46 Formulating the brief: Tool constraints
  • 47. 47 Working with data: Understanding its properties and qualities SURVEY RESULTS 8 x question categories about work issues 5 x response categories for scale of feelings 40 x question-response quantities (%, 100% total per question) DEMOGRAPHICS 4 x gender categories, 4 x quantities (% and abs. numbers) 3 x employment categories, 3 x quantities (% and abs. numbers) 6 x service length categories, 6 x quantities (% and abs. numbers)
  • 48. 48 1. What the proportion of responses look like for each question? 2. What is the breakdown across respondent demographics? Editorial thinking: What questions are you trying to answer?
  • 49. 49 Data representation: How to show what you want to say? CATEGORICAL Comparing categories and distributions of quantitative values TEMPORAL Showing trends and activities over time HIERARCHICAL Charting part-to-whole relationships and hierarchies SPATIAL Mapping spatial patterns through overlays and distortions RELATIONAL Graphing relationships to explore correlations and connections 1. What the proportion of responses look like for each question? 2. What is the breakdown across respondent demographics?
  • 50. 50 Chart types: How to show what you want to say?
  • 51. 51 Chart types: How to show what you want to say?
  • 52. 52 Chart types: How to show what you want to say? Agreement Disagreeme nt No-opinion
  • 53. 53 Chart types: How to show what you want to say? Agreement Disagreeme nt No-opinion
  • 54. 54 Chart types: How to show what you want to say? Gender Female Male Other No response Employment Status Full-Time Part-Time No response Length of Service Less than 1 year Between 1 and 3 years Between 3 and 5 years Between 5 and 10 years Over 10 years No response Female Male Other No response 0 20 40 60 80 100 120 140 Gender Full-Time Part-Time No response 0 20 40 60 80 100 120 140 160 Employment Status Less than 1 year Between 1 and 3 years Between 3 and 5 years Between 5 and 10 years Over 10 years No response 0 10 20 30 40 50 60 70 80 90 Length of Service
  • 55. 55 Chart types: How to show what you want to say? Back-to-back bar chart Bar chart Bubble chart
  • 56. 56 Interactivity: Controlling what and how your data is presented Q3. Strongly Agree = 45% More info | Download data | Contact Results filtered for female respondents
  • 57. 57 Annotation: Judging the right level of assistance Main observations verbalised
  • 58. 58 Colour: Colouring all your chart and project contents
  • 59. 59 Colour: Colouring all your chart and project contents
  • 60. 60 Colour: Colouring all your chart and project contents Response categories Demographic bars Background shading Title text Section title text Chart axis and value labels
  • 61. 61 Colour: Colouring all your chart and project contents
  • 62. 62 Composition: Defining all size and position decisions Survey results breakdown Demographic breakdown Title
  • 63. 63 Composition: Defining all size and position decisions
  • 65. 65 Developing your critical ‘eye’: Evaluating visualisations Design layers Design evaluation Data representation: How is the data visually represented? What choices are effective and why? What choices are ineffective, why? What would be better? Interactivity: Features to adjust the data and presentation What choices are effective and why? What choices are ineffective, why? What would be better? Annotation: Features of assistance What choices are effective and why? What choices are ineffective, why? What would be better? Colour: Data associations, editorial focus, and functional harmony What choices are effective and why? What choices are ineffective, why? What would be better? Composition: Layout, size and placement of all contents What choices are effective and why? What choices are ineffective, why? What would be better?
  • 66. 66 Effective visualisation is TRUSTWORTHY Effective visualisation is ACCESSIBLE Effective visualisation is ELEGANT Developing your critical ‘eye’: What is effectiveness? Do I Believe it? Do I Understand it? Do I Like it?
  • 67. 67 Learn more! ‘Introduction to Data Visualisation’ online course https://campus.sagepub.com/introduction-to-data-visualisation
  • 68. DATA VISUALISATION A GAME OF DECISIONS Andy Kirk andy@visualisingdata.com www.visualisingdata.com @visualisingdata