SlideShare a Scribd company logo
1 of 69
A Perspective from the
Intersection of Data Science,
Mobility, and Mobile Devices
Stanford, EE392I April 24, 2014
Yael Garten
Manager, Data Science for Mobile Products @ LinkedIn
Let’s talk today about:	

2	
  
1.  Data science at LinkedIn: driving product and business insights	

2.  Mobile data science:What’s different, what’s important?	

3.  Mobile today. LinkedIn’s mobile story.
Our mission: Connect the world’s professionals
to make them more productive and successful
3	
   www.linkedin.com
Whatever you do, wherever you are	

4	
  
Connecting
LinkedIn at a Glance	

5	
  
•  Founded in 2003	

•  300M+ members	

•  2 new signups per second	

•  Executives from all Fortune 500 companies	

•  4B annual people searches	

•  Over 200 countries  territories	

•  20 different languages
Your Professional Identity	

Amazing dataset that we can slice and dice.
By seniority, by job function – we can ask
many interesting questions.
So what data do we have?	

Content	

 Social Graph	

 Behavior, 	

Engagement	

Interest and Intent:	

•  Queries	

•  PageViews
(different types)	

•  Actions 
(invites sent,
articles clicked)	

Mechanism	

•  Device	

•  Channel
What does the Data Science team at LinkedIn
do with the data?	

8	
  
•  Product and Business Insights	

Measure, understand and improve products
Drive strategy
	

•  Build Data Products
	

•  Extract Insights we Share Externally
Knowledge: What’s going on?
If you can’t measure it, you can’t fix it.
Measure everything. wisely.

	

10	
  
Know thyself:What’s going on? 	

In the form of reporting, knowing the numbers, understanding usage of products,
data patterns, segments of users, tracking growth and health of the ecosystem.
	

What	
  are	
  the	
  right	
  success	
  metrics	
  that	
  we	
  can	
  define?	
  	

What to measure?
Insights: what should we build or improve?
What to build? Rethinking our Mobile App	

12	
  
What do people on this page?	

Where does the opportunity lie?	

What drives them in?	

Where do they go next?	

Where can we reduce friction?	

How many drop off?	

What is the stickiest product?	

	

What works, what doesn’t?
Data to inform product design of the iPad app:
iPad
12am
1am
2am
3am
4am
5am
6am
7am
8am
9am
10am
11am
12pm
1pm
2pm
3pm
5pm
6pm
7pm
9pm
10pm
11pm
Desktop
At what times in the day are people using different devices?	
  
What to ship? Controlled online experiments
(aka A/B testing)	

14	
  
1.  What are the right success metrics?	

2.  How do we track (instrument) this? Data quality	

3.  Experimental Design	

4.  Analysis, Interpretation, Recommendation
Wisdom: What’s the next needle mover?	

dataà knowledge à insights à wisdom
Strategic Analyses: 
Using data to drive the business via rigorous analytical framework	

•  What is the value of an action that a user takes on the site?	

•  What early behavior on the site is predictive of future
engagement?	

•  How does mobile usage compare to and impact desktop
site engagement?	

•  What is the value of a (mobile) user?	

•  How do people use LinkedIn organically? Drivers and flows
What does the Data Science team at LinkedIn
do with the data?	

17	
  
•  Product and Business Insights	

•  Build Data Products	

•  Extract Insights we Share Externally
Data Products on your LinkedIn homepage	

18	
  
Alumni Data Product	

19	
  
The Skills Data Product	

20	
  
How do we do it?	

21	
  
Extract
Skills:Assigning Skills to People
22	
  
What does the Data Science team at LinkedIn
do with the data?	

27	
  
•  Product and Business Insights	

•  Build Data Products	

•  Extract Insights we Share Externally
Data Stories: Growing and Shrinking Industries
Where did all the people go from the collapsed
financial institutions in 2008?
The 10 Most attractive start ups to Bay Area Engineers
Big Data that scales.
What Technologies do we use?	

31	
  
Let’s talk today about:	

32	
  
1.  Data science at LinkedIn: driving product and business insights	

2.  Mobile data science: What’s different, what’s important?	

3.  Mobile today. LinkedIn’s mobile story.
Connecting: Whatever you do, wherever you are
Ubiquitous Computing
Constant access to information and products
Price
Point
Screen
Size
Connectivity
App
or
Web
Operating
System
Location
App
Version
1.  Recognize the complexity
2.  Invest in tracking
3.  Leverage the data
Control the chaos… Delight users
Price
Point
Screen
Size
Connectivity
App
or
Web
Operating
System
Location
App
Version
Screen
Size
PhoneTablet
Phablet
Price
Point
Screen
Size
Connectivity
App
or
Web
Operating
System
Location
App
Version
App
Version
1.0 2.0
App
Version
Price
Point
Screen
Size
Connectivity
Operating
System
Location
App
or
Web
App
or
Web
•  Can A/B test (+) •  Limited A/B capabilities (-)
•  Transactional •  Organic, richer experience
App
or
Web
App
Version
Price
Point
Screen
Size
Connectivity
Location
Operating
System
Operating
System
3X more reach
Operating
System
App
or
Web
App
Version
Price
Point
Screen
Size
Connectivity
LocationLocation
1.  Recognize the complexity
2.  Invest in tracking
3. Leverage the data
Control the chaos… Delight users.
Data to inform product design of our iPad app:
iPad
12am
1am
2am
3am
4am
5am
6am
7am
8am
9am
10am
11am
12pm
1pm
2pm
3pm
5pm
6pm
7pm
9pm
10pm
11pm
Desktop
From coffee to couch and everything in between
	
  
Follow the trends
Landscape or Portrait ?
45%
65%
55%
35%iPad
iPad mini
50% and growing. Optimize your email
2X higher CTR
The data says: Simplify
1.0 2.0
6%	
  
8%	
  
10%	
  
12%	
  
14%	
  
16%	
  
18%	
  
20%	
  
1/11	
   2/11	
   3/11	
   4/11	
   5/11	
   6/11	
   7/11	
   8/11	
   9/11	
   10/11	
   11/11	
   12/11	
   1/12	
   2/12	
  
Mobile % of Unique Visiting Members
1.0 2.0
Leverage learnings across platforms
Let’s talk today about:	

53	
  
1.  Data science at LinkedIn: driving product and business insights	

2.  Mobile data science:What’s different, what’s important?	

3.  Mobile today. LinkedIn’s mobile story.
time
% of traffic /
revenue
mobile moment
Q1 2011
Q3-2013
Q1-2014
This year
25%
44%
Singapore
Netherlands
Turkey50%
50%
50%
45%
45%
United Arab Emirates
45%
Sweden
Australia 45%
Denmark
38%
32%
UK
US
Brazil
India
End of 2013
Always on with mobile
3am
 6am
 9am
 12pm
 3pm
 6pm
 9pm
Sources: IDC March 2012, Gartner April 2013,
2012 2016
Smart phone
PC
Tablet
Per day…
= 100M
Every day there are 4.5x new mobile devices sold than babies born!
378K
1.3M
371K
Mobile is changing the world
Mobilize systems.
Different architecture. New considerations.
Feature parity? Same designs?
Resourcing.
Mobilize. Mobile First.
Promotions
Tracking
Internationalization
Deep Linking
Analytics
Automation
Personalization
A/B
Experimentation
Page Load
LinkedIn App
So we have one great app. Segment use cases.
Contacts
Recruiter
Pulse
LinkedIn App
Multi-app. Cross promote.
Slideshare
Mobile first. Platform first
Organic vs. Transactional
Opportunity.
Essential.
Transformational.
Connecting.
Thank you.
http://www.linkedin.com/in/yaelgarten
@yaelgarten We’re
hiring!

More Related Content

What's hot

Big Data Analytics on the Cloud
Big Data Analytics on the CloudBig Data Analytics on the Cloud
Big Data Analytics on the CloudCaserta
 
Using Machine Learning & Spark to Power Data-Driven Marketing
Using Machine Learning & Spark to Power Data-Driven MarketingUsing Machine Learning & Spark to Power Data-Driven Marketing
Using Machine Learning & Spark to Power Data-Driven MarketingCaserta
 
Creating a DevOps Practice for Analytics -- Strata Data, September 28, 2017
Creating a DevOps Practice for Analytics -- Strata Data, September 28, 2017Creating a DevOps Practice for Analytics -- Strata Data, September 28, 2017
Creating a DevOps Practice for Analytics -- Strata Data, September 28, 2017Caserta
 
Building New Data Ecosystem for Customer Analytics, Strata + Hadoop World, 2016
Building New Data Ecosystem for Customer Analytics, Strata + Hadoop World, 2016Building New Data Ecosystem for Customer Analytics, Strata + Hadoop World, 2016
Building New Data Ecosystem for Customer Analytics, Strata + Hadoop World, 2016Caserta
 
Course 1 - Introduction to Big Data by Toon Vanagt ( #BigDataBXL)
Course 1 - Introduction to Big Data by Toon Vanagt ( #BigDataBXL)Course 1 - Introduction to Big Data by Toon Vanagt ( #BigDataBXL)
Course 1 - Introduction to Big Data by Toon Vanagt ( #BigDataBXL)Betacowork
 
The Rise of the CDO in Today's Enterprise
The Rise of the CDO in Today's EnterpriseThe Rise of the CDO in Today's Enterprise
The Rise of the CDO in Today's EnterpriseCaserta
 
Knowledge Graphs for a Connected World - AI, Deep & Machine Learning Meetup
Knowledge Graphs for a Connected World - AI, Deep & Machine Learning MeetupKnowledge Graphs for a Connected World - AI, Deep & Machine Learning Meetup
Knowledge Graphs for a Connected World - AI, Deep & Machine Learning MeetupBenjamin Nussbaum
 
Intro to Data Science on Hadoop
Intro to Data Science on HadoopIntro to Data Science on Hadoop
Intro to Data Science on HadoopCaserta
 
ATAAS2016 - Big data analytics – data visualization himanshu and santosh
ATAAS2016 - Big data analytics – data visualization   himanshu and santoshATAAS2016 - Big data analytics – data visualization   himanshu and santosh
ATAAS2016 - Big data analytics – data visualization himanshu and santoshAgile Testing Alliance
 
Advanced Analytics and Data Science Expertise
Advanced Analytics and Data Science ExpertiseAdvanced Analytics and Data Science Expertise
Advanced Analytics and Data Science ExpertiseSoftServe
 
7 Big Data Challenges and How to Overcome Them
7 Big Data Challenges and How to Overcome Them7 Big Data Challenges and How to Overcome Them
7 Big Data Challenges and How to Overcome ThemQubole
 
The Rise of the Citizen Data Scientist
The Rise of the Citizen Data ScientistThe Rise of the Citizen Data Scientist
The Rise of the Citizen Data ScientistPlatfora
 
frog IoT Big Design IoT World Congress 2015
frog IoT Big Design IoT World Congress 2015frog IoT Big Design IoT World Congress 2015
frog IoT Big Design IoT World Congress 2015Patrick Kalaher
 
Slides: Case Study — How J.B. Hunt is Driving Efficiency with AI and Real-Tim...
Slides: Case Study — How J.B. Hunt is Driving Efficiency with AI and Real-Tim...Slides: Case Study — How J.B. Hunt is Driving Efficiency with AI and Real-Tim...
Slides: Case Study — How J.B. Hunt is Driving Efficiency with AI and Real-Tim...DATAVERSITY
 
Milkrun routing optimization
Milkrun routing optimizationMilkrun routing optimization
Milkrun routing optimizationMaarten Van Oost
 
Objectivity/DB: A Multipurpose NoSQL Database
Objectivity/DB: A Multipurpose NoSQL DatabaseObjectivity/DB: A Multipurpose NoSQL Database
Objectivity/DB: A Multipurpose NoSQL DatabaseInfiniteGraph
 
SpringIO 2016 - Spring Cloud MicroServices, a journey inside a financial entity
SpringIO 2016 - Spring Cloud MicroServices, a journey inside a financial entitySpringIO 2016 - Spring Cloud MicroServices, a journey inside a financial entity
SpringIO 2016 - Spring Cloud MicroServices, a journey inside a financial entityjordigilnieto
 
General Data Protection Regulation - BDW Meetup, October 11th, 2017
General Data Protection Regulation - BDW Meetup, October 11th, 2017General Data Protection Regulation - BDW Meetup, October 11th, 2017
General Data Protection Regulation - BDW Meetup, October 11th, 2017Caserta
 

What's hot (20)

Big Data Analytics on the Cloud
Big Data Analytics on the CloudBig Data Analytics on the Cloud
Big Data Analytics on the Cloud
 
Using Machine Learning & Spark to Power Data-Driven Marketing
Using Machine Learning & Spark to Power Data-Driven MarketingUsing Machine Learning & Spark to Power Data-Driven Marketing
Using Machine Learning & Spark to Power Data-Driven Marketing
 
Creating a DevOps Practice for Analytics -- Strata Data, September 28, 2017
Creating a DevOps Practice for Analytics -- Strata Data, September 28, 2017Creating a DevOps Practice for Analytics -- Strata Data, September 28, 2017
Creating a DevOps Practice for Analytics -- Strata Data, September 28, 2017
 
Building New Data Ecosystem for Customer Analytics, Strata + Hadoop World, 2016
Building New Data Ecosystem for Customer Analytics, Strata + Hadoop World, 2016Building New Data Ecosystem for Customer Analytics, Strata + Hadoop World, 2016
Building New Data Ecosystem for Customer Analytics, Strata + Hadoop World, 2016
 
Course 1 - Introduction to Big Data by Toon Vanagt ( #BigDataBXL)
Course 1 - Introduction to Big Data by Toon Vanagt ( #BigDataBXL)Course 1 - Introduction to Big Data by Toon Vanagt ( #BigDataBXL)
Course 1 - Introduction to Big Data by Toon Vanagt ( #BigDataBXL)
 
The Rise of the CDO in Today's Enterprise
The Rise of the CDO in Today's EnterpriseThe Rise of the CDO in Today's Enterprise
The Rise of the CDO in Today's Enterprise
 
Knowledge Graphs for a Connected World - AI, Deep & Machine Learning Meetup
Knowledge Graphs for a Connected World - AI, Deep & Machine Learning MeetupKnowledge Graphs for a Connected World - AI, Deep & Machine Learning Meetup
Knowledge Graphs for a Connected World - AI, Deep & Machine Learning Meetup
 
Scaling Your Data: Data Democratisation and DataOps
Scaling Your Data: Data Democratisation and DataOpsScaling Your Data: Data Democratisation and DataOps
Scaling Your Data: Data Democratisation and DataOps
 
Intro to Data Science on Hadoop
Intro to Data Science on HadoopIntro to Data Science on Hadoop
Intro to Data Science on Hadoop
 
ATAAS2016 - Big data analytics – data visualization himanshu and santosh
ATAAS2016 - Big data analytics – data visualization   himanshu and santoshATAAS2016 - Big data analytics – data visualization   himanshu and santosh
ATAAS2016 - Big data analytics – data visualization himanshu and santosh
 
Advanced Analytics and Data Science Expertise
Advanced Analytics and Data Science ExpertiseAdvanced Analytics and Data Science Expertise
Advanced Analytics and Data Science Expertise
 
7 Big Data Challenges and How to Overcome Them
7 Big Data Challenges and How to Overcome Them7 Big Data Challenges and How to Overcome Them
7 Big Data Challenges and How to Overcome Them
 
The Rise of the Citizen Data Scientist
The Rise of the Citizen Data ScientistThe Rise of the Citizen Data Scientist
The Rise of the Citizen Data Scientist
 
frog IoT Big Design IoT World Congress 2015
frog IoT Big Design IoT World Congress 2015frog IoT Big Design IoT World Congress 2015
frog IoT Big Design IoT World Congress 2015
 
Slides: Case Study — How J.B. Hunt is Driving Efficiency with AI and Real-Tim...
Slides: Case Study — How J.B. Hunt is Driving Efficiency with AI and Real-Tim...Slides: Case Study — How J.B. Hunt is Driving Efficiency with AI and Real-Tim...
Slides: Case Study — How J.B. Hunt is Driving Efficiency with AI and Real-Tim...
 
Milkrun routing optimization
Milkrun routing optimizationMilkrun routing optimization
Milkrun routing optimization
 
Objectivity/DB: A Multipurpose NoSQL Database
Objectivity/DB: A Multipurpose NoSQL DatabaseObjectivity/DB: A Multipurpose NoSQL Database
Objectivity/DB: A Multipurpose NoSQL Database
 
Shortest path routing
 Shortest path routing Shortest path routing
Shortest path routing
 
SpringIO 2016 - Spring Cloud MicroServices, a journey inside a financial entity
SpringIO 2016 - Spring Cloud MicroServices, a journey inside a financial entitySpringIO 2016 - Spring Cloud MicroServices, a journey inside a financial entity
SpringIO 2016 - Spring Cloud MicroServices, a journey inside a financial entity
 
General Data Protection Regulation - BDW Meetup, October 11th, 2017
General Data Protection Regulation - BDW Meetup, October 11th, 2017General Data Protection Regulation - BDW Meetup, October 11th, 2017
General Data Protection Regulation - BDW Meetup, October 11th, 2017
 

Viewers also liked

White paper hadoop performancetuning
White paper hadoop performancetuningWhite paper hadoop performancetuning
White paper hadoop performancetuningAnil Reddy
 
Remix: On-demand Live Randomization (Fine-grained live ASLR during runtime)
Remix: On-demand Live Randomization (Fine-grained live ASLR during runtime)Remix: On-demand Live Randomization (Fine-grained live ASLR during runtime)
Remix: On-demand Live Randomization (Fine-grained live ASLR during runtime)Yue Chen
 
Impala SQL Support
Impala SQL SupportImpala SQL Support
Impala SQL SupportYue Chen
 
Admission Control in Impala
Admission Control in ImpalaAdmission Control in Impala
Admission Control in ImpalaCloudera, Inc.
 
Cloudera Impala Source Code Explanation and Analysis
Cloudera Impala Source Code Explanation and AnalysisCloudera Impala Source Code Explanation and Analysis
Cloudera Impala Source Code Explanation and AnalysisYue Chen
 
Apache Impala (incubating) 2.5 Performance Update
Apache Impala (incubating) 2.5 Performance UpdateApache Impala (incubating) 2.5 Performance Update
Apache Impala (incubating) 2.5 Performance UpdateCloudera, Inc.
 
Hadoop application architectures - Fraud detection tutorial
Hadoop application architectures - Fraud detection tutorialHadoop application architectures - Fraud detection tutorial
Hadoop application architectures - Fraud detection tutorialhadooparchbook
 
How to use your data science team: Becoming a data-driven organization
How to use your data science team: Becoming a data-driven organizationHow to use your data science team: Becoming a data-driven organization
How to use your data science team: Becoming a data-driven organizationYael Garten
 
SecPod: A Framework for Virtualization-based Security Systems
SecPod: A Framework for Virtualization-based Security SystemsSecPod: A Framework for Virtualization-based Security Systems
SecPod: A Framework for Virtualization-based Security SystemsYue Chen
 
Data Modeling for Data Science: Simplify Your Workload with Complex Types in ...
Data Modeling for Data Science: Simplify Your Workload with Complex Types in ...Data Modeling for Data Science: Simplify Your Workload with Complex Types in ...
Data Modeling for Data Science: Simplify Your Workload with Complex Types in ...Cloudera, Inc.
 
Nested Types in Impala
Nested Types in ImpalaNested Types in Impala
Nested Types in ImpalaCloudera, Inc.
 
Architecting next generation big data platform
Architecting next generation big data platformArchitecting next generation big data platform
Architecting next generation big data platformhadooparchbook
 
Faster Batch Processing with Cloudera 5.7: Hive-on-Spark is ready for production
Faster Batch Processing with Cloudera 5.7: Hive-on-Spark is ready for productionFaster Batch Processing with Cloudera 5.7: Hive-on-Spark is ready for production
Faster Batch Processing with Cloudera 5.7: Hive-on-Spark is ready for productionCloudera, Inc.
 
What no one tells you about writing a streaming app
What no one tells you about writing a streaming appWhat no one tells you about writing a streaming app
What no one tells you about writing a streaming apphadooparchbook
 
Hoodie: Incremental processing on hadoop
Hoodie: Incremental processing on hadoopHoodie: Incremental processing on hadoop
Hoodie: Incremental processing on hadoopPrasanna Rajaperumal
 
Top 5 mistakes when writing Spark applications
Top 5 mistakes when writing Spark applicationsTop 5 mistakes when writing Spark applications
Top 5 mistakes when writing Spark applicationshadooparchbook
 
Streaming architecture patterns
Streaming architecture patternsStreaming architecture patterns
Streaming architecture patternshadooparchbook
 
Top 5 mistakes when writing Spark applications
Top 5 mistakes when writing Spark applicationsTop 5 mistakes when writing Spark applications
Top 5 mistakes when writing Spark applicationshadooparchbook
 
Architecting for change: LinkedIn's new data ecosystem
Architecting for change: LinkedIn's new data ecosystemArchitecting for change: LinkedIn's new data ecosystem
Architecting for change: LinkedIn's new data ecosystemYael Garten
 
Hadoop application architectures - using Customer 360 as an example
Hadoop application architectures - using Customer 360 as an exampleHadoop application architectures - using Customer 360 as an example
Hadoop application architectures - using Customer 360 as an examplehadooparchbook
 

Viewers also liked (20)

White paper hadoop performancetuning
White paper hadoop performancetuningWhite paper hadoop performancetuning
White paper hadoop performancetuning
 
Remix: On-demand Live Randomization (Fine-grained live ASLR during runtime)
Remix: On-demand Live Randomization (Fine-grained live ASLR during runtime)Remix: On-demand Live Randomization (Fine-grained live ASLR during runtime)
Remix: On-demand Live Randomization (Fine-grained live ASLR during runtime)
 
Impala SQL Support
Impala SQL SupportImpala SQL Support
Impala SQL Support
 
Admission Control in Impala
Admission Control in ImpalaAdmission Control in Impala
Admission Control in Impala
 
Cloudera Impala Source Code Explanation and Analysis
Cloudera Impala Source Code Explanation and AnalysisCloudera Impala Source Code Explanation and Analysis
Cloudera Impala Source Code Explanation and Analysis
 
Apache Impala (incubating) 2.5 Performance Update
Apache Impala (incubating) 2.5 Performance UpdateApache Impala (incubating) 2.5 Performance Update
Apache Impala (incubating) 2.5 Performance Update
 
Hadoop application architectures - Fraud detection tutorial
Hadoop application architectures - Fraud detection tutorialHadoop application architectures - Fraud detection tutorial
Hadoop application architectures - Fraud detection tutorial
 
How to use your data science team: Becoming a data-driven organization
How to use your data science team: Becoming a data-driven organizationHow to use your data science team: Becoming a data-driven organization
How to use your data science team: Becoming a data-driven organization
 
SecPod: A Framework for Virtualization-based Security Systems
SecPod: A Framework for Virtualization-based Security SystemsSecPod: A Framework for Virtualization-based Security Systems
SecPod: A Framework for Virtualization-based Security Systems
 
Data Modeling for Data Science: Simplify Your Workload with Complex Types in ...
Data Modeling for Data Science: Simplify Your Workload with Complex Types in ...Data Modeling for Data Science: Simplify Your Workload with Complex Types in ...
Data Modeling for Data Science: Simplify Your Workload with Complex Types in ...
 
Nested Types in Impala
Nested Types in ImpalaNested Types in Impala
Nested Types in Impala
 
Architecting next generation big data platform
Architecting next generation big data platformArchitecting next generation big data platform
Architecting next generation big data platform
 
Faster Batch Processing with Cloudera 5.7: Hive-on-Spark is ready for production
Faster Batch Processing with Cloudera 5.7: Hive-on-Spark is ready for productionFaster Batch Processing with Cloudera 5.7: Hive-on-Spark is ready for production
Faster Batch Processing with Cloudera 5.7: Hive-on-Spark is ready for production
 
What no one tells you about writing a streaming app
What no one tells you about writing a streaming appWhat no one tells you about writing a streaming app
What no one tells you about writing a streaming app
 
Hoodie: Incremental processing on hadoop
Hoodie: Incremental processing on hadoopHoodie: Incremental processing on hadoop
Hoodie: Incremental processing on hadoop
 
Top 5 mistakes when writing Spark applications
Top 5 mistakes when writing Spark applicationsTop 5 mistakes when writing Spark applications
Top 5 mistakes when writing Spark applications
 
Streaming architecture patterns
Streaming architecture patternsStreaming architecture patterns
Streaming architecture patterns
 
Top 5 mistakes when writing Spark applications
Top 5 mistakes when writing Spark applicationsTop 5 mistakes when writing Spark applications
Top 5 mistakes when writing Spark applications
 
Architecting for change: LinkedIn's new data ecosystem
Architecting for change: LinkedIn's new data ecosystemArchitecting for change: LinkedIn's new data ecosystem
Architecting for change: LinkedIn's new data ecosystem
 
Hadoop application architectures - using Customer 360 as an example
Hadoop application architectures - using Customer 360 as an exampleHadoop application architectures - using Customer 360 as an example
Hadoop application architectures - using Customer 360 as an example
 

Similar to A Perspective from the intersection Data Science, Mobility, and Mobile Devices

Tech Trends and Best Practices for 2014
Tech Trends and Best Practices for 2014Tech Trends and Best Practices for 2014
Tech Trends and Best Practices for 2014TechSoup Canada
 
Agile data science
Agile data scienceAgile data science
Agile data scienceJoel Horwitz
 
GTC West (AM): Technology As A Tool For Innovation
GTC West (AM): Technology As A Tool For InnovationGTC West (AM): Technology As A Tool For Innovation
GTC West (AM): Technology As A Tool For InnovationDustin Haisler
 
Considerations when building mobile app. Presented by Microstrategy
Considerations when building mobile app. Presented by MicrostrategyConsiderations when building mobile app. Presented by Microstrategy
Considerations when building mobile app. Presented by Microstrategyitnewsafrica
 
260119 a digital approach towards market research upload
260119 a digital approach towards market research upload260119 a digital approach towards market research upload
260119 a digital approach towards market research uploadSyed Yeasef Akbar
 
Agile IT: Modern Architecture for Rapid Mobile App Development
Agile IT: Modern Architecture for Rapid Mobile App DevelopmentAgile IT: Modern Architecture for Rapid Mobile App Development
Agile IT: Modern Architecture for Rapid Mobile App DevelopmentAnyPresence
 
Multiplica.Webanalyticstrends
Multiplica.WebanalyticstrendsMultiplica.Webanalyticstrends
Multiplica.WebanalyticstrendsDavid Boronat
 
Making Sense of Graph Databases
Making Sense of Graph DatabasesMaking Sense of Graph Databases
Making Sense of Graph DatabasesInfiniteGraph
 
Измерения аудитории интернета в России и в мире: результаты, тенденции, персп...
Измерения аудитории интернета в России и в мире: результаты, тенденции, персп...Измерения аудитории интернета в России и в мире: результаты, тенденции, персп...
Измерения аудитории интернета в России и в мире: результаты, тенденции, персп...Инга Кныш
 
IW14 Session: Mike Gualtieri, Forrester Research
IW14 Session: Mike Gualtieri, Forrester ResearchIW14 Session: Mike Gualtieri, Forrester Research
IW14 Session: Mike Gualtieri, Forrester ResearchSoftware AG
 
How Technology is Revolutionizing Property Assessments
How Technology is Revolutionizing Property AssessmentsHow Technology is Revolutionizing Property Assessments
How Technology is Revolutionizing Property AssessmentsEDR
 
#MobileInAction - iRecruitExpo June 2013, Amsterdam
#MobileInAction - iRecruitExpo June 2013, Amsterdam#MobileInAction - iRecruitExpo June 2013, Amsterdam
#MobileInAction - iRecruitExpo June 2013, AmsterdamDave Martin
 
Lightning Talk #13: Anticipatory Design: Invisible Interfaces and Predictive ...
Lightning Talk #13: Anticipatory Design: Invisible Interfaces and Predictive ...Lightning Talk #13: Anticipatory Design: Invisible Interfaces and Predictive ...
Lightning Talk #13: Anticipatory Design: Invisible Interfaces and Predictive ...ux singapore
 
Knowledge Matters Issue 15 - Technology at Concern
Knowledge Matters Issue 15 - Technology at ConcernKnowledge Matters Issue 15 - Technology at Concern
Knowledge Matters Issue 15 - Technology at ConcernEllen Ward
 
Putting data science into perspective
Putting data science into perspectivePutting data science into perspective
Putting data science into perspectiveSravan Ankaraju
 
Datapedia Analysis Report
Datapedia Analysis ReportDatapedia Analysis Report
Datapedia Analysis ReportAbanoub Amgad
 
Mobile in 2015 - eduWeb 2014
Mobile in 2015 -  eduWeb 2014Mobile in 2015 -  eduWeb 2014
Mobile in 2015 - eduWeb 2014The Judge Group
 
IT trends – 2013 & beyond
IT trends – 2013 & beyondIT trends – 2013 & beyond
IT trends – 2013 & beyondNeha Mehta
 

Similar to A Perspective from the intersection Data Science, Mobility, and Mobile Devices (20)

Tech Trends and Best Practices for 2014
Tech Trends and Best Practices for 2014Tech Trends and Best Practices for 2014
Tech Trends and Best Practices for 2014
 
Agile data science
Agile data scienceAgile data science
Agile data science
 
GTC West (AM): Technology As A Tool For Innovation
GTC West (AM): Technology As A Tool For InnovationGTC West (AM): Technology As A Tool For Innovation
GTC West (AM): Technology As A Tool For Innovation
 
Considerations when building mobile app. Presented by Microstrategy
Considerations when building mobile app. Presented by MicrostrategyConsiderations when building mobile app. Presented by Microstrategy
Considerations when building mobile app. Presented by Microstrategy
 
260119 a digital approach towards market research upload
260119 a digital approach towards market research upload260119 a digital approach towards market research upload
260119 a digital approach towards market research upload
 
Agile IT: Modern Architecture for Rapid Mobile App Development
Agile IT: Modern Architecture for Rapid Mobile App DevelopmentAgile IT: Modern Architecture for Rapid Mobile App Development
Agile IT: Modern Architecture for Rapid Mobile App Development
 
Multiplica.Webanalyticstrends
Multiplica.WebanalyticstrendsMultiplica.Webanalyticstrends
Multiplica.Webanalyticstrends
 
Making Sense of Graph Databases
Making Sense of Graph DatabasesMaking Sense of Graph Databases
Making Sense of Graph Databases
 
Измерения аудитории интернета в России и в мире: результаты, тенденции, персп...
Измерения аудитории интернета в России и в мире: результаты, тенденции, персп...Измерения аудитории интернета в России и в мире: результаты, тенденции, персп...
Измерения аудитории интернета в России и в мире: результаты, тенденции, персп...
 
Enterprise Mobility @ Neev
Enterprise Mobility @ NeevEnterprise Mobility @ Neev
Enterprise Mobility @ Neev
 
IW14 Session: Mike Gualtieri, Forrester Research
IW14 Session: Mike Gualtieri, Forrester ResearchIW14 Session: Mike Gualtieri, Forrester Research
IW14 Session: Mike Gualtieri, Forrester Research
 
Oscpa sept 2013
Oscpa sept 2013Oscpa sept 2013
Oscpa sept 2013
 
How Technology is Revolutionizing Property Assessments
How Technology is Revolutionizing Property AssessmentsHow Technology is Revolutionizing Property Assessments
How Technology is Revolutionizing Property Assessments
 
#MobileInAction - iRecruitExpo June 2013, Amsterdam
#MobileInAction - iRecruitExpo June 2013, Amsterdam#MobileInAction - iRecruitExpo June 2013, Amsterdam
#MobileInAction - iRecruitExpo June 2013, Amsterdam
 
Lightning Talk #13: Anticipatory Design: Invisible Interfaces and Predictive ...
Lightning Talk #13: Anticipatory Design: Invisible Interfaces and Predictive ...Lightning Talk #13: Anticipatory Design: Invisible Interfaces and Predictive ...
Lightning Talk #13: Anticipatory Design: Invisible Interfaces and Predictive ...
 
Knowledge Matters Issue 15 - Technology at Concern
Knowledge Matters Issue 15 - Technology at ConcernKnowledge Matters Issue 15 - Technology at Concern
Knowledge Matters Issue 15 - Technology at Concern
 
Putting data science into perspective
Putting data science into perspectivePutting data science into perspective
Putting data science into perspective
 
Datapedia Analysis Report
Datapedia Analysis ReportDatapedia Analysis Report
Datapedia Analysis Report
 
Mobile in 2015 - eduWeb 2014
Mobile in 2015 -  eduWeb 2014Mobile in 2015 -  eduWeb 2014
Mobile in 2015 - eduWeb 2014
 
IT trends – 2013 & beyond
IT trends – 2013 & beyondIT trends – 2013 & beyond
IT trends – 2013 & beyond
 

Recently uploaded

NO1 Certified Black Magic Specialist Expert Amil baba in Lahore Islamabad Raw...
NO1 Certified Black Magic Specialist Expert Amil baba in Lahore Islamabad Raw...NO1 Certified Black Magic Specialist Expert Amil baba in Lahore Islamabad Raw...
NO1 Certified Black Magic Specialist Expert Amil baba in Lahore Islamabad Raw...Amil Baba Dawood bangali
 
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
 
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
 
Conf42-LLM_Adding Generative AI to Real-Time Streaming Pipelines
Conf42-LLM_Adding Generative AI to Real-Time Streaming PipelinesConf42-LLM_Adding Generative AI to Real-Time Streaming Pipelines
Conf42-LLM_Adding Generative AI to Real-Time Streaming PipelinesTimothy Spann
 
Data Factory in Microsoft Fabric (MsBIP #82)
Data Factory in Microsoft Fabric (MsBIP #82)Data Factory in Microsoft Fabric (MsBIP #82)
Data Factory in Microsoft Fabric (MsBIP #82)Cathrine Wilhelmsen
 
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
 
INTERNSHIP ON PURBASHA COMPOSITE TEX LTD
INTERNSHIP ON PURBASHA COMPOSITE TEX LTDINTERNSHIP ON PURBASHA COMPOSITE TEX LTD
INTERNSHIP ON PURBASHA COMPOSITE TEX LTDRafezzaman
 
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
 
Real-Time AI Streaming - AI Max Princeton
Real-Time AI  Streaming - AI Max PrincetonReal-Time AI  Streaming - AI Max Princeton
Real-Time AI Streaming - AI Max PrincetonTimothy Spann
 
Multiple time frame trading analysis -brianshannon.pdf
Multiple time frame trading analysis -brianshannon.pdfMultiple time frame trading analysis -brianshannon.pdf
Multiple time frame trading analysis -brianshannon.pdfchwongval
 
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
 
Student profile product demonstration on grades, ability, well-being and mind...
Student profile product demonstration on grades, ability, well-being and mind...Student profile product demonstration on grades, ability, well-being and mind...
Student profile product demonstration on grades, ability, well-being and mind...Seán Kennedy
 
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
 
Vision, Mission, Goals and Objectives ppt..pptx
Vision, Mission, Goals and Objectives ppt..pptxVision, Mission, Goals and Objectives ppt..pptx
Vision, Mission, Goals and Objectives ppt..pptxellehsormae
 
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
 
modul pembelajaran robotic Workshop _ by Slidesgo.pptx
modul pembelajaran robotic Workshop _ by Slidesgo.pptxmodul pembelajaran robotic Workshop _ by Slidesgo.pptx
modul pembelajaran robotic Workshop _ by Slidesgo.pptxaleedritatuxx
 
Heart Disease Classification Report: A Data Analysis Project
Heart Disease Classification Report: A Data Analysis ProjectHeart Disease Classification Report: A Data Analysis Project
Heart Disease Classification Report: A Data Analysis ProjectBoston Institute of Analytics
 
detection and classification of knee osteoarthritis.pptx
detection and classification of knee osteoarthritis.pptxdetection and classification of knee osteoarthritis.pptx
detection and classification of knee osteoarthritis.pptxAleenaJamil4
 
NLP Data Science Project Presentation:Predicting Heart Disease with NLP Data ...
NLP Data Science Project Presentation:Predicting Heart Disease with NLP Data ...NLP Data Science Project Presentation:Predicting Heart Disease with NLP Data ...
NLP Data Science Project Presentation:Predicting Heart Disease with NLP Data ...Boston Institute of Analytics
 

Recently uploaded (20)

NO1 Certified Black Magic Specialist Expert Amil baba in Lahore Islamabad Raw...
NO1 Certified Black Magic Specialist Expert Amil baba in Lahore Islamabad Raw...NO1 Certified Black Magic Specialist Expert Amil baba in Lahore Islamabad Raw...
NO1 Certified Black Magic Specialist Expert Amil baba in Lahore Islamabad Raw...
 
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...
 
Deep Generative Learning for All - The Gen AI Hype (Spring 2024)
Deep Generative Learning for All - The Gen AI Hype (Spring 2024)Deep Generative Learning for All - The Gen AI Hype (Spring 2024)
Deep Generative Learning for All - The Gen AI Hype (Spring 2024)
 
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
 
Conf42-LLM_Adding Generative AI to Real-Time Streaming Pipelines
Conf42-LLM_Adding Generative AI to Real-Time Streaming PipelinesConf42-LLM_Adding Generative AI to Real-Time Streaming Pipelines
Conf42-LLM_Adding Generative AI to Real-Time Streaming Pipelines
 
Data Factory in Microsoft Fabric (MsBIP #82)
Data Factory in Microsoft Fabric (MsBIP #82)Data Factory in Microsoft Fabric (MsBIP #82)
Data Factory in Microsoft Fabric (MsBIP #82)
 
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...
 
INTERNSHIP ON PURBASHA COMPOSITE TEX LTD
INTERNSHIP ON PURBASHA COMPOSITE TEX LTDINTERNSHIP ON PURBASHA COMPOSITE TEX LTD
INTERNSHIP ON PURBASHA COMPOSITE TEX LTD
 
Advanced Machine Learning for Business Professionals
Advanced Machine Learning for Business ProfessionalsAdvanced Machine Learning for Business Professionals
Advanced Machine Learning for Business Professionals
 
Real-Time AI Streaming - AI Max Princeton
Real-Time AI  Streaming - AI Max PrincetonReal-Time AI  Streaming - AI Max Princeton
Real-Time AI Streaming - AI Max Princeton
 
Multiple time frame trading analysis -brianshannon.pdf
Multiple time frame trading analysis -brianshannon.pdfMultiple time frame trading analysis -brianshannon.pdf
Multiple time frame trading analysis -brianshannon.pdf
 
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
 
Student profile product demonstration on grades, ability, well-being and mind...
Student profile product demonstration on grades, ability, well-being and mind...Student profile product demonstration on grades, ability, well-being and mind...
Student profile product demonstration on grades, ability, well-being and mind...
 
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...
 
Vision, Mission, Goals and Objectives ppt..pptx
Vision, Mission, Goals and Objectives ppt..pptxVision, Mission, Goals and Objectives ppt..pptx
Vision, Mission, Goals and Objectives ppt..pptx
 
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
 
modul pembelajaran robotic Workshop _ by Slidesgo.pptx
modul pembelajaran robotic Workshop _ by Slidesgo.pptxmodul pembelajaran robotic Workshop _ by Slidesgo.pptx
modul pembelajaran robotic Workshop _ by Slidesgo.pptx
 
Heart Disease Classification Report: A Data Analysis Project
Heart Disease Classification Report: A Data Analysis ProjectHeart Disease Classification Report: A Data Analysis Project
Heart Disease Classification Report: A Data Analysis Project
 
detection and classification of knee osteoarthritis.pptx
detection and classification of knee osteoarthritis.pptxdetection and classification of knee osteoarthritis.pptx
detection and classification of knee osteoarthritis.pptx
 
NLP Data Science Project Presentation:Predicting Heart Disease with NLP Data ...
NLP Data Science Project Presentation:Predicting Heart Disease with NLP Data ...NLP Data Science Project Presentation:Predicting Heart Disease with NLP Data ...
NLP Data Science Project Presentation:Predicting Heart Disease with NLP Data ...
 

A Perspective from the intersection Data Science, Mobility, and Mobile Devices