Lightning Talk #9: How UX and Data Storytelling Can Shape Policy by Mika Aldaba

Design

ux-singapore
  • How UX&Data Storytelling Can Shape Policy
  • Thinking Machines is a full stack data science consultancy, with offices in Manila Philippines, and San Francisco, California. We solve business problems with data.
  • About Me SCALE: 1 circle = 1 hour 1 column = 1 week Graphic Design Data Visualization UX Design Web Design Motion Graphics
  • Today: 01 Meet the Policy Makers 02 The Long Journey of Design Policy in the Philippines 03 How UX Fits Into Data Storytelling 04 Case Study 1: Road Safety Designing as a Citizen 05 Case Study 2: Road Budget Tracking Designing with the Government
  • 01 Meet the Policy Makers
  • David Yap
  • The road to hell is paved with bad data.
  • Reina Reyes
  • 02 The Long Journey of Design Policy In the Philippines
  • Design
  • Design "A way of thinking and a problem- solving process that is user- centered, collaborative, multi- disciplinary and makes ideas tangible, whether in the form of products, services or experiences."
  • RA 10557
  • The City of Good Design 1239 km
  • The road to good design is full of red tape
  • 03 How UX Fits Into Data Storytelling
  • =
  • =
  • It’s not just about making it pretty
  • People feel threatened by very large numbers
  • Facts + Feelings = Data Storytelling
  • Visualization Analysis Framework problem driven work Anthropology/ Ethnography/ Psychology Design Computer Science Tamara Munzner, Information Visualization
  • What kind of data is relevant to our users?
  • 04 Case Study: Road Safety Designing as a Citizen
  • Get the most bang for your data
  • 02 Road Danger Story Part 1 Road Danger Story Part 1
  • 02 Road Danger Story Part 1
  • 02 Road Danger Story Part 1
  • 02 Road Danger Story Part 1
  • 02 Road Danger Story Part 1
  • 02 Road Danger Story Part 1
  • 02 Road Danger Story Part 1
  • Road Danger Story Part 2 02 Road Danger Story Part 2
  • 02 Road Danger Story Part 2
  • 02 Road Danger Story Part 2
  • 02 Road Danger Story Part 2
  • 02 Road Danger Story Part 2
  • 02 Road Danger Story Part 3 Road Danger Story Part 3
  • 02 Road Danger Story Part 3
  • 02 Road Danger Story Part 3
  • 02 Road Danger Story Part 3
  • It’s not just a graph, it’s a graphic NATHAN YAU
  • 05 Case Study: Road Budget Tracking Designing with the Government
  • Roads are the arteries of a country
  • The Philippines will spend P766.5 billion on roads this year
  • Are the roads being built?
  • Multiple Agencies + Multiple Databases + No Unique ID
  • How do you follow 
 one project from the first database to the last?
  • algorithm
  • The Matching Algorithm ✦ Text Normalization the process of transforming text into a single canonical form that it might not have had before ✦ Text Vectorization an algebraic model for representing text documents as vectors of identifiers, such as, for example, index terms ✦ tf-idf short for term frequency–inverse document frequency, is a numerical statistic that is intended to reflect how important a word is to a document in a collection or corpus
  • Your idea is only as good as how you present it
  • The Matching Algorithm
  • The Matching Algorithm
  • The Matching Algorithm
  • Initial User Testing
  • Insights ✦ Personas: Government Officials, Employees, 
 Accountants, Journalists ✦ Officials: Importance of Budget Integrity and Faithfulness Feature: Dashboard to look at the big picture ✦ Employees: Checking on Individual Projects Feature: More pictures ✦ Journalists: Looking for stories for their beat Feature: Maps
  • The City of Good Design 1239 km
  • In Summary ✦ Data Visualisation isn’t just about making pretty charts, 
 it has its own language. ✦ Making your visualisation more accessible and seen by more people is good. But if it miscommunicates, it can be worse than not being seen at all. ✦ Data can be cold, add emotion to humanise your story. ✦ Design should happen before data is processed. ✦ Who, What, Why, How?
  • #makefactscoolagain
  • Read more data stories on our blog stories.thinkingmachin.es Follow Us /thinkdatasci @thinkdatasci ✦ ✦
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Description
Text
  • How UX&Data Storytelling Can Shape Policy
  • Thinking Machines is a full stack data science consultancy, with offices in Manila Philippines, and San Francisco, California. We solve business problems with data.
  • About Me SCALE: 1 circle = 1 hour 1 column = 1 week Graphic Design Data Visualization UX Design Web Design Motion Graphics
  • Today: 01 Meet the Policy Makers 02 The Long Journey of Design Policy in the Philippines 03 How UX Fits Into Data Storytelling 04 Case Study 1: Road Safety Designing as a Citizen 05 Case Study 2: Road Budget Tracking Designing with the Government
  • 01 Meet the Policy Makers
  • David Yap
  • The road to hell is paved with bad data.
  • Reina Reyes
  • 02 The Long Journey of Design Policy In the Philippines
  • Design
  • Design "A way of thinking and a problem- solving process that is user- centered, collaborative, multi- disciplinary and makes ideas tangible, whether in the form of products, services or experiences."
  • RA 10557
  • The City of Good Design 1239 km
  • The road to good design is full of red tape
  • 03 How UX Fits Into Data Storytelling
  • =
  • =
  • It’s not just about making it pretty
  • People feel threatened by very large numbers
  • Facts + Feelings = Data Storytelling
  • Visualization Analysis Framework problem driven work Anthropology/ Ethnography/ Psychology Design Computer Science Tamara Munzner, Information Visualization
  • What kind of data is relevant to our users?
  • 04 Case Study: Road Safety Designing as a Citizen
  • Get the most bang for your data
  • 02 Road Danger Story Part 1 Road Danger Story Part 1
  • 02 Road Danger Story Part 1
  • 02 Road Danger Story Part 1
  • 02 Road Danger Story Part 1
  • 02 Road Danger Story Part 1
  • 02 Road Danger Story Part 1
  • 02 Road Danger Story Part 1
  • Road Danger Story Part 2 02 Road Danger Story Part 2
  • 02 Road Danger Story Part 2
  • 02 Road Danger Story Part 2
  • 02 Road Danger Story Part 2
  • 02 Road Danger Story Part 2
  • 02 Road Danger Story Part 3 Road Danger Story Part 3
  • 02 Road Danger Story Part 3
  • 02 Road Danger Story Part 3
  • 02 Road Danger Story Part 3
  • It’s not just a graph, it’s a graphic NATHAN YAU
  • 05 Case Study: Road Budget Tracking Designing with the Government
  • Roads are the arteries of a country
  • The Philippines will spend P766.5 billion on roads this year
  • Are the roads being built?
  • Multiple Agencies + Multiple Databases + No Unique ID
  • How do you follow 
 one project from the first database to the last?
  • algorithm
  • The Matching Algorithm ✦ Text Normalization the process of transforming text into a single canonical form that it might not have had before ✦ Text Vectorization an algebraic model for representing text documents as vectors of identifiers, such as, for example, index terms ✦ tf-idf short for term frequency–inverse document frequency, is a numerical statistic that is intended to reflect how important a word is to a document in a collection or corpus
  • Your idea is only as good as how you present it
  • The Matching Algorithm
  • The Matching Algorithm
  • The Matching Algorithm
  • Initial User Testing
  • Insights ✦ Personas: Government Officials, Employees, 
 Accountants, Journalists ✦ Officials: Importance of Budget Integrity and Faithfulness Feature: Dashboard to look at the big picture ✦ Employees: Checking on Individual Projects Feature: More pictures ✦ Journalists: Looking for stories for their beat Feature: Maps
  • The City of Good Design 1239 km
  • In Summary ✦ Data Visualisation isn’t just about making pretty charts, 
 it has its own language. ✦ Making your visualisation more accessible and seen by more people is good. But if it miscommunicates, it can be worse than not being seen at all. ✦ Data can be cold, add emotion to humanise your story. ✦ Design should happen before data is processed. ✦ Who, What, Why, How?
  • #makefactscoolagain
  • Read more data stories on our blog stories.thinkingmachin.es Follow Us /thinkdatasci @thinkdatasci ✦ ✦
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