SlideShare ist ein Scribd-Unternehmen logo
1 von 93
Downloaden Sie, um offline zu lesen
data science @ The New York Times
chris.wiggins@columbia.edu
chris.wiggins@nytimes.com
@chrishwiggins
references: bit.ly/brown-refs
data science @ The New York Times
data science @ The New York Times
“data science”
jobs, jobs, jobs
“data science”
jobs, jobs, jobs
data science: mindset & toolset
drew conway, 2010
modern history:
2009
modern history:
2009
“data science”
ancient history: 2001
“data science”
ancient history: 2001
data science
context
home schooled
B.A. & M.Sc. from Brown
PhD in topology
“By the end of late 1945, I was a
statistician rather than a topologist”
invented: “bit”
invented: “software”
invented: “FFT”
“the progenitor of data science.” - @mshron
“The Future of Data Analysis,” 1962
John W. Tukey
introduces:
“Exploratory data anlaysis”
Tukey 1965, via John Chambers
TUKEY BEGAT S WHICH BEGAT R
Tukey 1972
Tukey 1975
In 1975, while at Princeton, Tufte was asked to teach a
statistics course to a group of journalists who were visiting
the school to study economics. He developed a set of
readings and lectures on statistical graphics, which he
further developed in joint seminars he subsequently taught
with renowned statistician John Tukey (a pioneer in the field
of information design). These course materials became the
foundation for his first book on information design, The
Visual Display of Quantitative Information
TUKEY BEGAT VDQI
Tukey 1977
TUKEY BEGAT EDA
fast forward -> 2001
“The primary agents for change should be
university departments themselves.”
data science @ The New York Timeshistories
1. slow burn @Bell: as heretical
statistics (see also Breiman)
2. caught fire 2009-now: as job
description
historical rant: bit.ly/data-rant
biology: 1892 vs. 1995
biology: 1892 vs. 1995
biology changed for good.
biology: 1892 vs. 1995
new toolset, new mindset
genetics: 1837 vs. 2012
ML toolset; data science mindset
genetics: 1837 vs. 2012
genetics: 1837 vs. 2012
ML toolset; data science mindset
arxiv.org/abs/1105.5821 ; github.com/rajanil/mkboost
data science: mindset & toolset
1851
news: 20th century
church state
church
church
church
news: 20th century
church state
news: 21st century
church state
engineering
1851 1996
newspapering: 1851 vs. 1996
example:
millions of views per hour2015
"...social activities generate large quantities of potentially
valuable data...The data were not generated for the
purpose of learning; however, the potential for learning
is great’’
"...social activities generate large quantities of potentially
valuable data...The data were not generated for the
purpose of learning; however, the potential for learning
is great’’ - J Chambers, Bell Labs,1993
data science: the web
data science: the web
is your “online presence”
data science: the web
is a microscope
data science: the web
is an experimental tool
1851 1996
newspapering: 1851 vs. 1996 vs. 2008
2008
“a startup is a temporary organization in search of a
repeatable and scalable business model” —Steve Blank
every publisher is now a startup
every publisher is now a startup
news: 21st century
church state
engineering
news: 21st century
church state
engineering
learnings
learnings
- predictive modeling
- descriptive modeling
- prescriptive modeling
(actually ML, shhhh…)
- (supervised learning)
- (unsupervised learning)
- (reinforcement learning)
learnings
- predictive modeling
- descriptive modeling
- prescriptive modeling
cf. modelingsocialdata.org
predictive modeling, e.g.,
cf. modelingsocialdata.org
predictive modeling, e.g.,
“the funnel”
cf. modelingsocialdata.org
interpretable predictive modeling
supercoolstuff
cf. modelingsocialdata.org
interpretable predictive modeling
supercoolstuff
cf. modelingsocialdata.org
arxiv.org/abs/q-bio/0701021
optimization & learning, e.g.,
“How The New York Times Works “popular mechanics, 2015
optimization & prediction, e.g.,
“How The New York Times Works “popular mechanics, 2015
(some models)
(somemoneys)
recommendation as predictive modeling
recommendation as predictive modeling
bit.ly/AlexCTM
descriptive modeling, e.g,
cf. daeilkim.com ; import bnpy
modeling your audience
bit.ly/Hughes-Kim-Sudderth-AISTATS15
modeling your audience
(optimization, ultimately)
also allows insight+targeting as inference
modeling your audience
prescriptive modeling
prescriptive modeling
cf. modelingsocialdata.org
prescriptive modeling
aka “A/B testing”;
RCT
cf. modelingsocialdata.org
prescriptive modeling, e.g,
prescriptive modeling, e.g,
prescriptive modeling, e.g,
Reporting
Learning
Test
Optimizing
Exploredescriptive:
predictive:
prescriptive:
Reporting
Learning
Test
Optimizing
Exploredescriptive:
predictive:
prescriptive:
common requirements in
data science:
common requirements in
data science:
1. people
2. ideas
3. things
cf. John Boyd, USAF
data science: ideas
data skills
data science and…
- data engineering
- data embeds
- data product
- data multiliteracies
cf. “data scientists at work”, ch 1
data science: ideas
- new mindset > new toolset
data science: people
thanks to the data science team!
data science @ The New York Times
chris.wiggins@columbia.edu
chris.wiggins@nytimes.com
@chrishwiggins
references: bit.ly/brown-refs

Weitere ähnliche Inhalte

Was ist angesagt?

Introduction to Power BI and Data Visualization
Introduction to Power BI and Data VisualizationIntroduction to Power BI and Data Visualization
Introduction to Power BI and Data VisualizationSwapnil Jadhav
 
5 Tips for Presenting to Executives
5 Tips for Presenting to Executives5 Tips for Presenting to Executives
5 Tips for Presenting to Executivesspeakingppt
 
Visual Design with Data
Visual Design with DataVisual Design with Data
Visual Design with DataSeth Familian
 
Is Enterprise Data Literacy Possible?
Is Enterprise Data Literacy Possible?Is Enterprise Data Literacy Possible?
Is Enterprise Data Literacy Possible?DATAVERSITY
 
How Data is Driving AI Innovation
How Data is Driving AI InnovationHow Data is Driving AI Innovation
How Data is Driving AI InnovationMatt Turner
 
Data as a Product by Wayne Eckerson
Data as a Product by Wayne EckersonData as a Product by Wayne Eckerson
Data as a Product by Wayne EckersonZoomdata
 
Microsoft Power BI Overview
Microsoft Power BI OverviewMicrosoft Power BI Overview
Microsoft Power BI OverviewNetwoven Inc.
 
Big Data Analytics for Banking, a Point of View
Big Data Analytics for Banking, a Point of ViewBig Data Analytics for Banking, a Point of View
Big Data Analytics for Banking, a Point of ViewPietro Leo
 
The Path to Data and Analytics Modernization
The Path to Data and Analytics ModernizationThe Path to Data and Analytics Modernization
The Path to Data and Analytics ModernizationAnalytics8
 
Good Guide to a Great Podcast
Good Guide to a Great PodcastGood Guide to a Great Podcast
Good Guide to a Great PodcastSeth Price
 
SplunkLive 2011 Advanced Session
SplunkLive 2011 Advanced SessionSplunkLive 2011 Advanced Session
SplunkLive 2011 Advanced SessionSplunk
 
BI Consultancy - Data, Analytics and Strategy
BI Consultancy - Data, Analytics and StrategyBI Consultancy - Data, Analytics and Strategy
BI Consultancy - Data, Analytics and StrategyShivam Dhawan
 
Place in Space (AKA "How to Design A Concept Model")
Place in Space (AKA "How to Design A Concept Model")Place in Space (AKA "How to Design A Concept Model")
Place in Space (AKA "How to Design A Concept Model")Stephen Anderson
 
The ABCs of Treating Data as Product
The ABCs of Treating Data as ProductThe ABCs of Treating Data as Product
The ABCs of Treating Data as ProductDATAVERSITY
 
[EN] Building modern data pipeline with Snowflake + DBT + Airflow.pdf
[EN] Building modern data pipeline with Snowflake + DBT + Airflow.pdf[EN] Building modern data pipeline with Snowflake + DBT + Airflow.pdf
[EN] Building modern data pipeline with Snowflake + DBT + Airflow.pdfChris Hoyean Song
 
How to Build Interactive Data Apps by ThoughtSpot Product Leaders
How to Build Interactive Data Apps by ThoughtSpot Product LeadersHow to Build Interactive Data Apps by ThoughtSpot Product Leaders
How to Build Interactive Data Apps by ThoughtSpot Product LeadersProduct School
 
Using Big Data to Drive Customer 360
Using Big Data to Drive Customer 360Using Big Data to Drive Customer 360
Using Big Data to Drive Customer 360Cloudera, Inc.
 

Was ist angesagt? (20)

Introduction to Power BI and Data Visualization
Introduction to Power BI and Data VisualizationIntroduction to Power BI and Data Visualization
Introduction to Power BI and Data Visualization
 
5 Tips for Presenting to Executives
5 Tips for Presenting to Executives5 Tips for Presenting to Executives
5 Tips for Presenting to Executives
 
Big Data and Advanced Analytics
Big Data and Advanced AnalyticsBig Data and Advanced Analytics
Big Data and Advanced Analytics
 
Visual Design with Data
Visual Design with DataVisual Design with Data
Visual Design with Data
 
Is Enterprise Data Literacy Possible?
Is Enterprise Data Literacy Possible?Is Enterprise Data Literacy Possible?
Is Enterprise Data Literacy Possible?
 
How Data is Driving AI Innovation
How Data is Driving AI InnovationHow Data is Driving AI Innovation
How Data is Driving AI Innovation
 
Data as a Product by Wayne Eckerson
Data as a Product by Wayne EckersonData as a Product by Wayne Eckerson
Data as a Product by Wayne Eckerson
 
Microsoft Power BI Overview
Microsoft Power BI OverviewMicrosoft Power BI Overview
Microsoft Power BI Overview
 
Big Data Analytics for Banking, a Point of View
Big Data Analytics for Banking, a Point of ViewBig Data Analytics for Banking, a Point of View
Big Data Analytics for Banking, a Point of View
 
The Path to Data and Analytics Modernization
The Path to Data and Analytics ModernizationThe Path to Data and Analytics Modernization
The Path to Data and Analytics Modernization
 
Good Guide to a Great Podcast
Good Guide to a Great PodcastGood Guide to a Great Podcast
Good Guide to a Great Podcast
 
SplunkLive 2011 Advanced Session
SplunkLive 2011 Advanced SessionSplunkLive 2011 Advanced Session
SplunkLive 2011 Advanced Session
 
BI Consultancy - Data, Analytics and Strategy
BI Consultancy - Data, Analytics and StrategyBI Consultancy - Data, Analytics and Strategy
BI Consultancy - Data, Analytics and Strategy
 
Data Analytics
Data AnalyticsData Analytics
Data Analytics
 
Digital Disruption
Digital Disruption Digital Disruption
Digital Disruption
 
Place in Space (AKA "How to Design A Concept Model")
Place in Space (AKA "How to Design A Concept Model")Place in Space (AKA "How to Design A Concept Model")
Place in Space (AKA "How to Design A Concept Model")
 
The ABCs of Treating Data as Product
The ABCs of Treating Data as ProductThe ABCs of Treating Data as Product
The ABCs of Treating Data as Product
 
[EN] Building modern data pipeline with Snowflake + DBT + Airflow.pdf
[EN] Building modern data pipeline with Snowflake + DBT + Airflow.pdf[EN] Building modern data pipeline with Snowflake + DBT + Airflow.pdf
[EN] Building modern data pipeline with Snowflake + DBT + Airflow.pdf
 
How to Build Interactive Data Apps by ThoughtSpot Product Leaders
How to Build Interactive Data Apps by ThoughtSpot Product LeadersHow to Build Interactive Data Apps by ThoughtSpot Product Leaders
How to Build Interactive Data Apps by ThoughtSpot Product Leaders
 
Using Big Data to Drive Customer 360
Using Big Data to Drive Customer 360Using Big Data to Drive Customer 360
Using Big Data to Drive Customer 360
 

Andere mochten auch

7 ineffective coding habits many F# programmers don't have
7 ineffective coding habits many F# programmers don't have7 ineffective coding habits many F# programmers don't have
7 ineffective coding habits many F# programmers don't haveYan Cui
 
Andreas Tschas - Pioneers - Building Startup Marketplaces in Europe & Asia - ...
Andreas Tschas - Pioneers - Building Startup Marketplaces in Europe & Asia - ...Andreas Tschas - Pioneers - Building Startup Marketplaces in Europe & Asia - ...
Andreas Tschas - Pioneers - Building Startup Marketplaces in Europe & Asia - ...Burton Lee
 
Pollen VC Building A Digital Lending Business
Pollen VC Building A Digital Lending BusinessPollen VC Building A Digital Lending Business
Pollen VC Building A Digital Lending BusinessPollen VC
 
The Future Of Work & The Work Of The Future
The Future Of Work & The Work Of The FutureThe Future Of Work & The Work Of The Future
The Future Of Work & The Work Of The FutureArturo Pelayo
 
Slideshare Powerpoint presentation
Slideshare Powerpoint presentationSlideshare Powerpoint presentation
Slideshare Powerpoint presentationelliehood
 

Andere mochten auch (8)

CSS Grid Layout
CSS Grid LayoutCSS Grid Layout
CSS Grid Layout
 
7 ineffective coding habits many F# programmers don't have
7 ineffective coding habits many F# programmers don't have7 ineffective coding habits many F# programmers don't have
7 ineffective coding habits many F# programmers don't have
 
Andreas Tschas - Pioneers - Building Startup Marketplaces in Europe & Asia - ...
Andreas Tschas - Pioneers - Building Startup Marketplaces in Europe & Asia - ...Andreas Tschas - Pioneers - Building Startup Marketplaces in Europe & Asia - ...
Andreas Tschas - Pioneers - Building Startup Marketplaces in Europe & Asia - ...
 
Enabling Autonomy
Enabling AutonomyEnabling Autonomy
Enabling Autonomy
 
Pollen VC Building A Digital Lending Business
Pollen VC Building A Digital Lending BusinessPollen VC Building A Digital Lending Business
Pollen VC Building A Digital Lending Business
 
The Future Of Work & The Work Of The Future
The Future Of Work & The Work Of The FutureThe Future Of Work & The Work Of The Future
The Future Of Work & The Work Of The Future
 
Slideshare Powerpoint presentation
Slideshare Powerpoint presentationSlideshare Powerpoint presentation
Slideshare Powerpoint presentation
 
Slideshare ppt
Slideshare pptSlideshare ppt
Slideshare ppt
 

Ähnlich wie data science @NYT ; inaugural Data Science Initiative Lecture

data science: past present & future [American Statistical Association (ASA) C...
data science: past present & future [American Statistical Association (ASA) C...data science: past present & future [American Statistical Association (ASA) C...
data science: past present & future [American Statistical Association (ASA) C...chris wiggins
 
data history / data science @ NYT
data history / data science @ NYTdata history / data science @ NYT
data history / data science @ NYTchris wiggins
 
A Sense of the Future - L'humanité a besoin rêveurs
A Sense of the Future - L'humanité a besoin rêveursA Sense of the Future - L'humanité a besoin rêveurs
A Sense of the Future - L'humanité a besoin rêveursShoumen Datta
 
Roger hoerl say award presentation 2013
Roger hoerl say award presentation 2013Roger hoerl say award presentation 2013
Roger hoerl say award presentation 2013Roger Hoerl
 
Intro to CAA 2012 session "Visualization as a Method in Art History"
Intro to CAA 2012 session "Visualization as a Method in Art History"Intro to CAA 2012 session "Visualization as a Method in Art History"
Intro to CAA 2012 session "Visualization as a Method in Art History"Lev Manovich
 
Data Science definition
Data Science definitionData Science definition
Data Science definitionCarloLauro1
 
Let's talk about Data Science
Let's talk about Data ScienceLet's talk about Data Science
Let's talk about Data ScienceCarlo Lauro
 
A MeMber of the Perseus books Gr ou Pwww.westviewpress.com.docx
A MeMber of the Perseus books Gr ou Pwww.westviewpress.com.docxA MeMber of the Perseus books Gr ou Pwww.westviewpress.com.docx
A MeMber of the Perseus books Gr ou Pwww.westviewpress.com.docxransayo
 
Knowledge and university09
Knowledge and university09Knowledge and university09
Knowledge and university09James W. Marcum
 
Mac201 data journalism lecture
Mac201 data journalism lectureMac201 data journalism lecture
Mac201 data journalism lectureRob Jewitt
 
L4 - L7 - Social Media
L4 - L7 - Social MediaL4 - L7 - Social Media
L4 - L7 - Social MediaNick Crafts
 
The role of academic libraries in supporting social sciences research
The role of academic libraries in supporting social sciences researchThe role of academic libraries in supporting social sciences research
The role of academic libraries in supporting social sciences researchMichelle Hudson
 
An Invisible Woman - Lynn Conway
An Invisible Woman - Lynn ConwayAn Invisible Woman - Lynn Conway
An Invisible Woman - Lynn ConwayUNICORNS IN TECH
 
Data Journalism: chapter from Online Journalism Handbook first edition
Data Journalism: chapter from Online Journalism Handbook first editionData Journalism: chapter from Online Journalism Handbook first edition
Data Journalism: chapter from Online Journalism Handbook first editionPaul Bradshaw
 
Carla Diana's CHI2011 recap
Carla Diana's CHI2011 recapCarla Diana's CHI2011 recap
Carla Diana's CHI2011 recapCarla Diana
 
Mac373 med312 data journalism lecture
Mac373 med312 data journalism lectureMac373 med312 data journalism lecture
Mac373 med312 data journalism lectureRob Jewitt
 
Data: A Timeline - How Data Came To Rule The World
Data: A Timeline - How Data Came To Rule The WorldData: A Timeline - How Data Came To Rule The World
Data: A Timeline - How Data Came To Rule The WorldRibbonfish
 
Data Visualization for Non-Programmers
Data Visualization for Non-ProgrammersData Visualization for Non-Programmers
Data Visualization for Non-ProgrammersCarl V. Lewis
 

Ähnlich wie data science @NYT ; inaugural Data Science Initiative Lecture (20)

data science: past present & future [American Statistical Association (ASA) C...
data science: past present & future [American Statistical Association (ASA) C...data science: past present & future [American Statistical Association (ASA) C...
data science: past present & future [American Statistical Association (ASA) C...
 
data history / data science @ NYT
data history / data science @ NYTdata history / data science @ NYT
data history / data science @ NYT
 
A Sense of the Future - L'humanité a besoin rêveurs
A Sense of the Future - L'humanité a besoin rêveursA Sense of the Future - L'humanité a besoin rêveurs
A Sense of the Future - L'humanité a besoin rêveurs
 
Roger hoerl say award presentation 2013
Roger hoerl say award presentation 2013Roger hoerl say award presentation 2013
Roger hoerl say award presentation 2013
 
Intro to CAA 2012 session "Visualization as a Method in Art History"
Intro to CAA 2012 session "Visualization as a Method in Art History"Intro to CAA 2012 session "Visualization as a Method in Art History"
Intro to CAA 2012 session "Visualization as a Method in Art History"
 
Data Science definition
Data Science definitionData Science definition
Data Science definition
 
Let's talk about Data Science
Let's talk about Data ScienceLet's talk about Data Science
Let's talk about Data Science
 
A MeMber of the Perseus books Gr ou Pwww.westviewpress.com.docx
A MeMber of the Perseus books Gr ou Pwww.westviewpress.com.docxA MeMber of the Perseus books Gr ou Pwww.westviewpress.com.docx
A MeMber of the Perseus books Gr ou Pwww.westviewpress.com.docx
 
Knowledge and university09
Knowledge and university09Knowledge and university09
Knowledge and university09
 
Mac201 data journalism lecture
Mac201 data journalism lectureMac201 data journalism lecture
Mac201 data journalism lecture
 
L4 - L7 - Social Media
L4 - L7 - Social MediaL4 - L7 - Social Media
L4 - L7 - Social Media
 
The role of academic libraries in supporting social sciences research
The role of academic libraries in supporting social sciences researchThe role of academic libraries in supporting social sciences research
The role of academic libraries in supporting social sciences research
 
An Invisible Woman - Lynn Conway
An Invisible Woman - Lynn ConwayAn Invisible Woman - Lynn Conway
An Invisible Woman - Lynn Conway
 
Data Journalism: chapter from Online Journalism Handbook first edition
Data Journalism: chapter from Online Journalism Handbook first editionData Journalism: chapter from Online Journalism Handbook first edition
Data Journalism: chapter from Online Journalism Handbook first edition
 
Carla Diana's CHI2011 recap
Carla Diana's CHI2011 recapCarla Diana's CHI2011 recap
Carla Diana's CHI2011 recap
 
Curation, crowds, and big data
Curation, crowds, and big dataCuration, crowds, and big data
Curation, crowds, and big data
 
Statistics in Journalism Sheffield 2014
Statistics in Journalism Sheffield 2014Statistics in Journalism Sheffield 2014
Statistics in Journalism Sheffield 2014
 
Mac373 med312 data journalism lecture
Mac373 med312 data journalism lectureMac373 med312 data journalism lecture
Mac373 med312 data journalism lecture
 
Data: A Timeline - How Data Came To Rule The World
Data: A Timeline - How Data Came To Rule The WorldData: A Timeline - How Data Came To Rule The World
Data: A Timeline - How Data Came To Rule The World
 
Data Visualization for Non-Programmers
Data Visualization for Non-ProgrammersData Visualization for Non-Programmers
Data Visualization for Non-Programmers
 

Mehr von chris wiggins

data science at the new york times
data science at the new york timesdata science at the new york times
data science at the new york timeschris wiggins
 
"data hum: a core approach to the ethics of data"
"data hum: a core approach to the ethics of data""data hum: a core approach to the ethics of data"
"data hum: a core approach to the ethics of data"chris wiggins
 
"data: past, present, and future" day 1 lecture 2020-01-20
"data: past, present, and future" day 1 lecture 2020-01-20"data: past, present, and future" day 1 lecture 2020-01-20
"data: past, present, and future" day 1 lecture 2020-01-20chris wiggins
 
a mission-driven approach to personalizing the customer journey
a mission-driven approach to personalizing the customer journeya mission-driven approach to personalizing the customer journey
a mission-driven approach to personalizing the customer journeychris wiggins
 
Data Science at The New York Times: what industry can learn from us; what we ...
Data Science at The New York Times: what industry can learn from us; what we ...Data Science at The New York Times: what industry can learn from us; what we ...
Data Science at The New York Times: what industry can learn from us; what we ...chris wiggins
 
Data Science at The New York Times
Data Science at The New York TimesData Science at The New York Times
Data Science at The New York Timeschris wiggins
 
history and ethics of data
history and ethics of datahistory and ethics of data
history and ethics of datachris wiggins
 
"data: past, present, and future" lecture 1 (intro) 1/22/19
"data: past, present, and future" lecture 1 (intro) 1/22/19"data: past, present, and future" lecture 1 (intro) 1/22/19
"data: past, present, and future" lecture 1 (intro) 1/22/19chris wiggins
 
"data: past, present, and future" lab 2 (EDA) notes by Prof. Matt Jones
"data: past, present, and future" lab 2 (EDA) notes by Prof. Matt Jones"data: past, present, and future" lab 2 (EDA) notes by Prof. Matt Jones
"data: past, present, and future" lab 2 (EDA) notes by Prof. Matt Joneschris wiggins
 
Data: Past, Present, and Future (Cornell Digital Life Seminar on Data Literac...
Data: Past, Present, and Future (Cornell Digital Life Seminar on Data Literac...Data: Past, Present, and Future (Cornell Digital Life Seminar on Data Literac...
Data: Past, Present, and Future (Cornell Digital Life Seminar on Data Literac...chris wiggins
 
Data: Past, Present, and Future (Lecture 1, Spring 2018)
Data: Past, Present, and Future (Lecture 1, Spring 2018)Data: Past, Present, and Future (Lecture 1, Spring 2018)
Data: Past, Present, and Future (Lecture 1, Spring 2018)chris wiggins
 
Machine Learning Summer School 2016
Machine Learning Summer School 2016Machine Learning Summer School 2016
Machine Learning Summer School 2016chris wiggins
 
lean + design thinking in building data products
lean + design thinking in building data productslean + design thinking in building data products
lean + design thinking in building data productschris wiggins
 
data science history / data science @ NYT
data science history / data science @ NYTdata science history / data science @ NYT
data science history / data science @ NYTchris wiggins
 
data science: past, present, and future
data science: past, present, and futuredata science: past, present, and future
data science: past, present, and futurechris wiggins
 
Chris Wiggins: "engagement & reality"
Chris Wiggins: "engagement & reality"Chris Wiggins: "engagement & reality"
Chris Wiggins: "engagement & reality"chris wiggins
 
intro data science at NYT 2015-01-22
intro data science at NYT 2015-01-22intro data science at NYT 2015-01-22
intro data science at NYT 2015-01-22chris wiggins
 
data science in academia and the real world
data science in academia and the real worlddata science in academia and the real world
data science in academia and the real worldchris wiggins
 
Lean workbench 2013-07-24
Lean workbench 2013-07-24Lean workbench 2013-07-24
Lean workbench 2013-07-24chris wiggins
 

Mehr von chris wiggins (20)

data science at the new york times
data science at the new york timesdata science at the new york times
data science at the new york times
 
"data hum: a core approach to the ethics of data"
"data hum: a core approach to the ethics of data""data hum: a core approach to the ethics of data"
"data hum: a core approach to the ethics of data"
 
"data: past, present, and future" day 1 lecture 2020-01-20
"data: past, present, and future" day 1 lecture 2020-01-20"data: past, present, and future" day 1 lecture 2020-01-20
"data: past, present, and future" day 1 lecture 2020-01-20
 
a mission-driven approach to personalizing the customer journey
a mission-driven approach to personalizing the customer journeya mission-driven approach to personalizing the customer journey
a mission-driven approach to personalizing the customer journey
 
Data Science at The New York Times: what industry can learn from us; what we ...
Data Science at The New York Times: what industry can learn from us; what we ...Data Science at The New York Times: what industry can learn from us; what we ...
Data Science at The New York Times: what industry can learn from us; what we ...
 
Data Science at The New York Times
Data Science at The New York TimesData Science at The New York Times
Data Science at The New York Times
 
history and ethics of data
history and ethics of datahistory and ethics of data
history and ethics of data
 
"data: past, present, and future" lecture 1 (intro) 1/22/19
"data: past, present, and future" lecture 1 (intro) 1/22/19"data: past, present, and future" lecture 1 (intro) 1/22/19
"data: past, present, and future" lecture 1 (intro) 1/22/19
 
"data: past, present, and future" lab 2 (EDA) notes by Prof. Matt Jones
"data: past, present, and future" lab 2 (EDA) notes by Prof. Matt Jones"data: past, present, and future" lab 2 (EDA) notes by Prof. Matt Jones
"data: past, present, and future" lab 2 (EDA) notes by Prof. Matt Jones
 
Data: Past, Present, and Future (Cornell Digital Life Seminar on Data Literac...
Data: Past, Present, and Future (Cornell Digital Life Seminar on Data Literac...Data: Past, Present, and Future (Cornell Digital Life Seminar on Data Literac...
Data: Past, Present, and Future (Cornell Digital Life Seminar on Data Literac...
 
Data: Past, Present, and Future (Lecture 1, Spring 2018)
Data: Past, Present, and Future (Lecture 1, Spring 2018)Data: Past, Present, and Future (Lecture 1, Spring 2018)
Data: Past, Present, and Future (Lecture 1, Spring 2018)
 
Machine Learning Summer School 2016
Machine Learning Summer School 2016Machine Learning Summer School 2016
Machine Learning Summer School 2016
 
lean + design thinking in building data products
lean + design thinking in building data productslean + design thinking in building data products
lean + design thinking in building data products
 
data science history / data science @ NYT
data science history / data science @ NYTdata science history / data science @ NYT
data science history / data science @ NYT
 
data science: past, present, and future
data science: past, present, and futuredata science: past, present, and future
data science: past, present, and future
 
Chris Wiggins: "engagement & reality"
Chris Wiggins: "engagement & reality"Chris Wiggins: "engagement & reality"
Chris Wiggins: "engagement & reality"
 
intro data science at NYT 2015-01-22
intro data science at NYT 2015-01-22intro data science at NYT 2015-01-22
intro data science at NYT 2015-01-22
 
data science in academia and the real world
data science in academia and the real worlddata science in academia and the real world
data science in academia and the real world
 
Lean workbench 2013-07-24
Lean workbench 2013-07-24Lean workbench 2013-07-24
Lean workbench 2013-07-24
 
Wiggins 2013 05-29
Wiggins 2013 05-29Wiggins 2013 05-29
Wiggins 2013 05-29
 

Kürzlich hochgeladen

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
 
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
 
Identifying Appropriate Test Statistics Involving Population Mean
Identifying Appropriate Test Statistics Involving Population MeanIdentifying Appropriate Test Statistics Involving Population Mean
Identifying Appropriate Test Statistics Involving Population MeanMYRABACSAFRA2
 
RS 9000 Call In girls Dwarka Mor (DELHI)⇛9711147426🔝Delhi
RS 9000 Call In girls Dwarka Mor (DELHI)⇛9711147426🔝DelhiRS 9000 Call In girls Dwarka Mor (DELHI)⇛9711147426🔝Delhi
RS 9000 Call In girls Dwarka Mor (DELHI)⇛9711147426🔝Delhijennyeacort
 
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
 
Call Girls In Dwarka 9654467111 Escorts Service
Call Girls In Dwarka 9654467111 Escorts ServiceCall Girls In Dwarka 9654467111 Escorts Service
Call Girls In Dwarka 9654467111 Escorts ServiceSapana Sha
 
Indian Call Girls in Abu Dhabi O5286O24O8 Call Girls in Abu Dhabi By Independ...
Indian Call Girls in Abu Dhabi O5286O24O8 Call Girls in Abu Dhabi By Independ...Indian Call Girls in Abu Dhabi O5286O24O8 Call Girls in Abu Dhabi By Independ...
Indian Call Girls in Abu Dhabi O5286O24O8 Call Girls in Abu Dhabi By Independ...dajasot375
 
INTERNSHIP ON PURBASHA COMPOSITE TEX LTD
INTERNSHIP ON PURBASHA COMPOSITE TEX LTDINTERNSHIP ON PURBASHA COMPOSITE TEX LTD
INTERNSHIP ON PURBASHA COMPOSITE TEX LTDRafezzaman
 
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
 
毕业文凭制作#回国入职#diploma#degree澳洲中央昆士兰大学毕业证成绩单pdf电子版制作修改#毕业文凭制作#回国入职#diploma#degree
毕业文凭制作#回国入职#diploma#degree澳洲中央昆士兰大学毕业证成绩单pdf电子版制作修改#毕业文凭制作#回国入职#diploma#degree毕业文凭制作#回国入职#diploma#degree澳洲中央昆士兰大学毕业证成绩单pdf电子版制作修改#毕业文凭制作#回国入职#diploma#degree
毕业文凭制作#回国入职#diploma#degree澳洲中央昆士兰大学毕业证成绩单pdf电子版制作修改#毕业文凭制作#回国入职#diploma#degreeyuu sss
 
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
 
RadioAdProWritingCinderellabyButleri.pdf
RadioAdProWritingCinderellabyButleri.pdfRadioAdProWritingCinderellabyButleri.pdf
RadioAdProWritingCinderellabyButleri.pdfgstagge
 
Kantar AI Summit- Under Embargo till Wednesday, 24th April 2024, 4 PM, IST.pdf
Kantar AI Summit- Under Embargo till Wednesday, 24th April 2024, 4 PM, IST.pdfKantar AI Summit- Under Embargo till Wednesday, 24th April 2024, 4 PM, IST.pdf
Kantar AI Summit- Under Embargo till Wednesday, 24th April 2024, 4 PM, IST.pdfSocial Samosa
 
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
 
Call Girls in Defence Colony Delhi 💯Call Us 🔝8264348440🔝
Call Girls in Defence Colony Delhi 💯Call Us 🔝8264348440🔝Call Girls in Defence Colony Delhi 💯Call Us 🔝8264348440🔝
Call Girls in Defence Colony Delhi 💯Call Us 🔝8264348440🔝soniya singh
 
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
 
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
 
IMA MSN - Medical Students Network (2).pptx
IMA MSN - Medical Students Network (2).pptxIMA MSN - Medical Students Network (2).pptx
IMA MSN - Medical Students Network (2).pptxdolaknnilon
 
Customer Service Analytics - Make Sense of All Your Data.pptx
Customer Service Analytics - Make Sense of All Your Data.pptxCustomer Service Analytics - Make Sense of All Your Data.pptx
Customer Service Analytics - Make Sense of All Your Data.pptxEmmanuel Dauda
 
2006_GasProcessing_HB (1).pdf HYDROCARBON PROCESSING
2006_GasProcessing_HB (1).pdf HYDROCARBON PROCESSING2006_GasProcessing_HB (1).pdf HYDROCARBON PROCESSING
2006_GasProcessing_HB (1).pdf HYDROCARBON PROCESSINGmarianagonzalez07
 

Kürzlich hochgeladen (20)

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
 
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
 
Identifying Appropriate Test Statistics Involving Population Mean
Identifying Appropriate Test Statistics Involving Population MeanIdentifying Appropriate Test Statistics Involving Population Mean
Identifying Appropriate Test Statistics Involving Population Mean
 
RS 9000 Call In girls Dwarka Mor (DELHI)⇛9711147426🔝Delhi
RS 9000 Call In girls Dwarka Mor (DELHI)⇛9711147426🔝DelhiRS 9000 Call In girls Dwarka Mor (DELHI)⇛9711147426🔝Delhi
RS 9000 Call In girls Dwarka Mor (DELHI)⇛9711147426🔝Delhi
 
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.
 
Call Girls In Dwarka 9654467111 Escorts Service
Call Girls In Dwarka 9654467111 Escorts ServiceCall Girls In Dwarka 9654467111 Escorts Service
Call Girls In Dwarka 9654467111 Escorts Service
 
Indian Call Girls in Abu Dhabi O5286O24O8 Call Girls in Abu Dhabi By Independ...
Indian Call Girls in Abu Dhabi O5286O24O8 Call Girls in Abu Dhabi By Independ...Indian Call Girls in Abu Dhabi O5286O24O8 Call Girls in Abu Dhabi By Independ...
Indian Call Girls in Abu Dhabi O5286O24O8 Call Girls in Abu Dhabi By Independ...
 
INTERNSHIP ON PURBASHA COMPOSITE TEX LTD
INTERNSHIP ON PURBASHA COMPOSITE TEX LTDINTERNSHIP ON PURBASHA COMPOSITE TEX LTD
INTERNSHIP ON PURBASHA COMPOSITE TEX LTD
 
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
 
毕业文凭制作#回国入职#diploma#degree澳洲中央昆士兰大学毕业证成绩单pdf电子版制作修改#毕业文凭制作#回国入职#diploma#degree
毕业文凭制作#回国入职#diploma#degree澳洲中央昆士兰大学毕业证成绩单pdf电子版制作修改#毕业文凭制作#回国入职#diploma#degree毕业文凭制作#回国入职#diploma#degree澳洲中央昆士兰大学毕业证成绩单pdf电子版制作修改#毕业文凭制作#回国入职#diploma#degree
毕业文凭制作#回国入职#diploma#degree澳洲中央昆士兰大学毕业证成绩单pdf电子版制作修改#毕业文凭制作#回国入职#diploma#degree
 
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
 
RadioAdProWritingCinderellabyButleri.pdf
RadioAdProWritingCinderellabyButleri.pdfRadioAdProWritingCinderellabyButleri.pdf
RadioAdProWritingCinderellabyButleri.pdf
 
Kantar AI Summit- Under Embargo till Wednesday, 24th April 2024, 4 PM, IST.pdf
Kantar AI Summit- Under Embargo till Wednesday, 24th April 2024, 4 PM, IST.pdfKantar AI Summit- Under Embargo till Wednesday, 24th April 2024, 4 PM, IST.pdf
Kantar AI Summit- Under Embargo till Wednesday, 24th April 2024, 4 PM, IST.pdf
 
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
 
Call Girls in Defence Colony Delhi 💯Call Us 🔝8264348440🔝
Call Girls in Defence Colony Delhi 💯Call Us 🔝8264348440🔝Call Girls in Defence Colony Delhi 💯Call Us 🔝8264348440🔝
Call Girls in Defence Colony Delhi 💯Call Us 🔝8264348440🔝
 
Advanced Machine Learning for Business Professionals
Advanced Machine Learning for Business ProfessionalsAdvanced Machine Learning for Business Professionals
Advanced Machine Learning for Business Professionals
 
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
 
IMA MSN - Medical Students Network (2).pptx
IMA MSN - Medical Students Network (2).pptxIMA MSN - Medical Students Network (2).pptx
IMA MSN - Medical Students Network (2).pptx
 
Customer Service Analytics - Make Sense of All Your Data.pptx
Customer Service Analytics - Make Sense of All Your Data.pptxCustomer Service Analytics - Make Sense of All Your Data.pptx
Customer Service Analytics - Make Sense of All Your Data.pptx
 
2006_GasProcessing_HB (1).pdf HYDROCARBON PROCESSING
2006_GasProcessing_HB (1).pdf HYDROCARBON PROCESSING2006_GasProcessing_HB (1).pdf HYDROCARBON PROCESSING
2006_GasProcessing_HB (1).pdf HYDROCARBON PROCESSING
 

data science @NYT ; inaugural Data Science Initiative Lecture