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Data Innovation
Dashboard
Data Visualizations for the Curious
1
Outline
● Interactive Data Visualizations: Motivation
● Data Innovation Summit Survey
● Optional: Getting started with D3.js
2
Interactive data visualizations: Motivation
3
Any questions?
“All our knowledge results from questions,
which is another way of saying that questioning
is our most important intellectual tool”
Neil Postman
4
(for the sole purpose of drama and making a point)
5
Mission
6
But actually...
7
Ineffective cycle
8
Do we really want to ...
give answers to
questions
never asked
9
Data science cycles?
10
Data Innovation Summit Survey: Dashboard
11
DIS Survey results
Goal: analyze the survey data!
Two types of data:
● User metadata: gender, age,...
● User skill scores: math, business,...
12
D.I.S. Dashboard
13
14
Data Innovation Summit Survey: Analysis
15
Popular & Rare skills
Unrelated?
Hotspots are
redundant?
Unconnected
means
orthogonal
17
Pairwise score comparisons
-Business => -Marketing
Math ~ Statistics Math Business +Business => -Marketing
=> Marketing is a rare skill (prev.)
3->3
3->4
3->5
3->2
2->3
2->2
2->1
2->4
4->4
4->3
4->5
1->5
1->4
5->2
5->1
4->2
4->1
Who talks business?
Gender: irrelevant
Age: 45-54
Degree: irrelevant
Experience: 10+
19
45+ 45+
10+
10+
PhD
PhD
Machine learning for PhDs
20
Gender: irrelevant
Age: 25-34
Degree: PhD!
Experience: 5-10
PhD PhD
25+
25+
5-10
5-10
Data driven: new data => new visual
Age:
18-24: Female 7 (23%)
<> Tot 19(8%)
Experience:
No: Female 9 (30%)
<> Tot 34(14%)
21
-25-25
00
Distributions
22
Statistics: 5 -> 1
Females don’t like Backends / NoSQL
Females don’t do fives
23
very few 5-ratings!
Revealing the secret of women
If a woman says 4
she basically means 5
If a woman says I am not experienced
she’s probably as skilled as you are!
24
Fraud Detection
25
Anomaly Detection
Good at everything!?
GOTCHA!
26
Metadata of super scientist
Anonimization is a joke
GOTCHA!
27
Any questions ...
Maybe ask our app?
Blogpost: https://hippomongous.wordpress.com/2015/03/25/data-innovation-summit-dashboard/
Webapp: http://facet-it.be/dis/index.html
28
Thanks for listening
Dieter De Witte Nicholas Ocket
Big Data Scientist @ iMinds - Multimedialab Senior java developer & Freelance webdesigner
29
How? D3 basics
30
Do it yourself...
Read online: http://chimera.labs.oreilly.
com/books/1230000000345/
Tech Stack:
SVG, HTML, CSS, Javascript
31
About D3.js
Created by Mike Bostock
more examples:
http://bl.ocks.org/mbostock
32
Features D3.js
Most prominent api methods:
.append()
.data()
.transition()
.on()
.selectAll()
33

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Presentation Data Science Challenge

Hinweis der Redaktion

  1. would be funny if this would already be the end of the presentation blablabla . but questionsa are important! en.wikiquote.org/wiki/Neil_Postman
  2. blank slide
  3. but that is the wrong question! It is not us who wants to know what is in the dataset ...so… what we didn’t want to do
  4. vaak krijg je als data scientist een dataset en de domein expert je de vraag om daar patronen in te zoeken, de domein expert weet ook niet wat je precies moet zoeken vinden omdat hij geen data scientist is… het probleem dat de data analyst mooilijk kan inschatten wat de zinvolle patronen zijn...
  5. Histogram matrices have filter functions connected the bars, the filter function also influence the population overview on the previous slide
  6. Slope chart can be used to focus on individuals Some people are good at orthogonal skills!? Someone’s honest about their visual skills
  7. Dieter De Witte: definetly the prettiest :-) Nicholas Ocket: definetely the piechart man
  8. .data() most important one: joining data with xml elements for our app de .on is also very relevant since actions in one visualisations trigger queries on a second visualisation