SlideShare uma empresa Scribd logo
1 de 33
Baixar para ler offline
Daniel




How to Interview a Data Scientist
Daniel Tunkelang
Director of Data Science, LinkedIn
     Recruiting Solutions                     1
Drew Conway’s Venn Diagram




                             2
GOAL




       3
Specification for a Data Scientist



                        implements
                         algorithms

      analyzes data
                      thinks product



                                       4
What about




C                  ulture
             ommunication
                 uriosity


     Hold that thought…
                            ?
                                5
What can you learn from an interview?




                                        6
Interviewing is a last resort.




               Alternatives?

                                 7
Only hire people you’ve worked with.




                                       8
Hire interns. Convert to full-time. Profit!




                                              9
Try before you buy: short-term contracts.




                                            10
Alternatives are at best a partial solution.

§  Only hiring people you’ve worked with doesn’t scale.
   –  And traps you in a locally optimal monoculture.


§  Interns are great! But they are a significant investment.
   –  Managing interns well is a productivity gamble.
   –  Most interns have at least a year of school left.
   –  Not all interns will make your bar. You won’t always make theirs.


§  Try before you buy: nice in theory.
   –  Adverse selection bias when other offers are permanent roles.
   –  Creates bureaucracy.


                                                                          11
Can we at least make interviews natural?




                                           12
Spend a day working together.




                                13
Take-home assignment.




                        14
Review candidate’s previous work.




                                    15
High-fructose corn syrup is 100% natural.
§  Working sessions are difficult to set up.
   –  No more natural than a final exam.
   –  High variance, and very difficult to calibrate performance.


§  Take-home assignments are great for the employer.
   –  But they are a significant investment for the candidate.
   –  Adverse selection bias if other companies don’t require them.
   –  Creates incentive to cheat if significant part of hiring process.


§  Previous work is like natural experiments.
   –  Always good to review a candidate’s previous work.
   –  But not always possible to find work with high predictive value.



                                                                          16
So you gotta do interviews. But how?




                                       17
Three Principles

1.  Keep it real.

2.  No gotchas.

3.  Maybe = no.




                    18
Keeping It Real




                  19
Test basic coding with FizzBuzz questions.

        multiple of 3 -> Fizz
        multiple of 5 -> Buzz
        multiple of 15 -> FizzBuzz

   1, 2, Fizz, 4, Buzz, Fizz,
   7, 8, Fizz, Buzz, 11, Fizz,
   13, 14, FizzBuzz, 16, …
                                        20
Whiteboards suck for coding.




      http://ericleads.com/2012/10/how-to-conduct-a-better-coding-interview/


                                                                               21
Don’t ask pointless algorithm questions.




             implement




                                           22
Use real-world algorithms questions.



        bigdatascientist


         Did you mean:
         big data scientist
                                       23
Ask candidates to design your products.




                                          24
Keeping it real is also a great sell.
                                Similar Profiles




                               People You May Know




                                                     25
But no gotchas.




                  26
Gotchas reduce the signal-to-noise ratio.

§  Avoid problems where success hinges on a single insight.
   –  Good interview problems offer lots of room for partial credit.
   –  Making a key insight often reflects experience, not intelligence.


§  Don’t test a candidate’s knowledge of a niche technique.
   –  Unless that niche technique is critical to job performance.
   –  And can’t be learned on the job as part of on-boarding.


§  Be a hard interviewer, but don’t be an asshole.
   –  An interview is not a stress-test to see where candidates break.
   –  Interviews communicate your values to the candidate.


                                                                          27
Maybe = no.




              28
Commit to binary interview outcomes.

§  Forced choice so interviewers don’t take easy way out.
   –  Just like having 4 choices instead of 5 on a rating scale.
   –  Encourages interviewers to take their role seriously.


§  Each team member is a critical filter.
   –  Two no’s or one strong no is a no.
   –  All weak yes’s is a no.


§  Short-circuit candidates early in the process.
   –  Resume and phone screening should be aggressive.
   –  Onsite interviews should have ~50% chance of leading to offers.


                                                                        29
But what about




C                 ulture
            ommunication
                uriosity

         All are must-haves.
                                ?
 Every interview evaluates all three.
                                        30
Remember Your Goal




                     31
Three Principles

1.  Keep it real.
  –  Avoid whiteboard coding. Filter with FizzBuzz.
  –  Use real-world algorithms questions.
  –  Ask candidates to design your products.
2.  No gotchas.
  –  Gotchas reduce the signal-to-noise ratio.
3.  Maybe = no.
  –  Bad hires suck. Be conservative.
  –  Trust your team.
                                                  32
Thank you!




             33

Mais conteúdo relacionado

Mais procurados

Feature Engineering
Feature Engineering Feature Engineering
Feature Engineering odsc
 
Hacking Predictive Modeling - RoadSec 2018
Hacking Predictive Modeling - RoadSec 2018Hacking Predictive Modeling - RoadSec 2018
Hacking Predictive Modeling - RoadSec 2018HJ van Veen
 
Tips and tricks to win kaggle data science competitions
Tips and tricks to win kaggle data science competitionsTips and tricks to win kaggle data science competitions
Tips and tricks to win kaggle data science competitionsDarius Barušauskas
 
Overview - IBM Big Data Platform
Overview - IBM Big Data PlatformOverview - IBM Big Data Platform
Overview - IBM Big Data PlatformVikas Manoria
 
How to Win Machine Learning Competitions ?
How to Win Machine Learning Competitions ? How to Win Machine Learning Competitions ?
How to Win Machine Learning Competitions ? HackerEarth
 
Winning data science competitions, presented by Owen Zhang
Winning data science competitions, presented by Owen ZhangWinning data science competitions, presented by Owen Zhang
Winning data science competitions, presented by Owen ZhangVivian S. Zhang
 
L2. Evaluating Machine Learning Algorithms I
L2. Evaluating Machine Learning Algorithms IL2. Evaluating Machine Learning Algorithms I
L2. Evaluating Machine Learning Algorithms IMachine Learning Valencia
 
Winning Data Science Competitions
Winning Data Science CompetitionsWinning Data Science Competitions
Winning Data Science CompetitionsJeong-Yoon Lee
 
Explainable AI in Industry (KDD 2019 Tutorial)
Explainable AI in Industry (KDD 2019 Tutorial)Explainable AI in Industry (KDD 2019 Tutorial)
Explainable AI in Industry (KDD 2019 Tutorial)Krishnaram Kenthapadi
 
How to win data science competitions with Deep Learning
How to win data science competitions with Deep LearningHow to win data science competitions with Deep Learning
How to win data science competitions with Deep LearningSri Ambati
 
A Beginner's Guide to Machine Learning with Scikit-Learn
A Beginner's Guide to Machine Learning with Scikit-LearnA Beginner's Guide to Machine Learning with Scikit-Learn
A Beginner's Guide to Machine Learning with Scikit-LearnSarah Guido
 
Session-based recommendations with recurrent neural networks
Session-based recommendations with recurrent neural networksSession-based recommendations with recurrent neural networks
Session-based recommendations with recurrent neural networksZimin Park
 
Exploratory data analysis
Exploratory data analysis Exploratory data analysis
Exploratory data analysis Peter Reimann
 
Introduction to Data Visualization
Introduction to Data VisualizationIntroduction to Data Visualization
Introduction to Data VisualizationStephen Tracy
 
Databricks Platform.pptx
Databricks Platform.pptxDatabricks Platform.pptx
Databricks Platform.pptxAlex Ivy
 
Data engineering zoomcamp introduction
Data engineering zoomcamp  introductionData engineering zoomcamp  introduction
Data engineering zoomcamp introductionAlexey Grigorev
 
Deep Learning - A Literature survey
Deep Learning - A Literature surveyDeep Learning - A Literature survey
Deep Learning - A Literature surveyAkshay Hegde
 
Machine Learning - Dataset Preparation
Machine Learning - Dataset PreparationMachine Learning - Dataset Preparation
Machine Learning - Dataset PreparationAndrew Ferlitsch
 

Mais procurados (20)

Feature Engineering
Feature Engineering Feature Engineering
Feature Engineering
 
Session-Based Recommender Systems
Session-Based Recommender SystemsSession-Based Recommender Systems
Session-Based Recommender Systems
 
Hacking Predictive Modeling - RoadSec 2018
Hacking Predictive Modeling - RoadSec 2018Hacking Predictive Modeling - RoadSec 2018
Hacking Predictive Modeling - RoadSec 2018
 
Tips and tricks to win kaggle data science competitions
Tips and tricks to win kaggle data science competitionsTips and tricks to win kaggle data science competitions
Tips and tricks to win kaggle data science competitions
 
Overview - IBM Big Data Platform
Overview - IBM Big Data PlatformOverview - IBM Big Data Platform
Overview - IBM Big Data Platform
 
How to Win Machine Learning Competitions ?
How to Win Machine Learning Competitions ? How to Win Machine Learning Competitions ?
How to Win Machine Learning Competitions ?
 
Winning data science competitions, presented by Owen Zhang
Winning data science competitions, presented by Owen ZhangWinning data science competitions, presented by Owen Zhang
Winning data science competitions, presented by Owen Zhang
 
L2. Evaluating Machine Learning Algorithms I
L2. Evaluating Machine Learning Algorithms IL2. Evaluating Machine Learning Algorithms I
L2. Evaluating Machine Learning Algorithms I
 
Winning Data Science Competitions
Winning Data Science CompetitionsWinning Data Science Competitions
Winning Data Science Competitions
 
Explainable AI in Industry (KDD 2019 Tutorial)
Explainable AI in Industry (KDD 2019 Tutorial)Explainable AI in Industry (KDD 2019 Tutorial)
Explainable AI in Industry (KDD 2019 Tutorial)
 
How to win data science competitions with Deep Learning
How to win data science competitions with Deep LearningHow to win data science competitions with Deep Learning
How to win data science competitions with Deep Learning
 
Dimensional Modelling
Dimensional ModellingDimensional Modelling
Dimensional Modelling
 
A Beginner's Guide to Machine Learning with Scikit-Learn
A Beginner's Guide to Machine Learning with Scikit-LearnA Beginner's Guide to Machine Learning with Scikit-Learn
A Beginner's Guide to Machine Learning with Scikit-Learn
 
Session-based recommendations with recurrent neural networks
Session-based recommendations with recurrent neural networksSession-based recommendations with recurrent neural networks
Session-based recommendations with recurrent neural networks
 
Exploratory data analysis
Exploratory data analysis Exploratory data analysis
Exploratory data analysis
 
Introduction to Data Visualization
Introduction to Data VisualizationIntroduction to Data Visualization
Introduction to Data Visualization
 
Databricks Platform.pptx
Databricks Platform.pptxDatabricks Platform.pptx
Databricks Platform.pptx
 
Data engineering zoomcamp introduction
Data engineering zoomcamp  introductionData engineering zoomcamp  introduction
Data engineering zoomcamp introduction
 
Deep Learning - A Literature survey
Deep Learning - A Literature surveyDeep Learning - A Literature survey
Deep Learning - A Literature survey
 
Machine Learning - Dataset Preparation
Machine Learning - Dataset PreparationMachine Learning - Dataset Preparation
Machine Learning - Dataset Preparation
 

Destaque

Hadoop and Machine Learning
Hadoop and Machine LearningHadoop and Machine Learning
Hadoop and Machine Learningjoshwills
 
A Statistician's View on Big Data and Data Science (Version 1)
A Statistician's View on Big Data and Data Science (Version 1)A Statistician's View on Big Data and Data Science (Version 1)
A Statistician's View on Big Data and Data Science (Version 1)Prof. Dr. Diego Kuonen
 
Data By The People, For The People
Data By The People, For The PeopleData By The People, For The People
Data By The People, For The PeopleDaniel Tunkelang
 
Hands-on Deep Learning in Python
Hands-on Deep Learning in PythonHands-on Deep Learning in Python
Hands-on Deep Learning in PythonImry Kissos
 
10 Lessons Learned from Building Machine Learning Systems
10 Lessons Learned from Building Machine Learning Systems10 Lessons Learned from Building Machine Learning Systems
10 Lessons Learned from Building Machine Learning SystemsXavier Amatriain
 
A tutorial on deep learning at icml 2013
A tutorial on deep learning at icml 2013A tutorial on deep learning at icml 2013
A tutorial on deep learning at icml 2013Philip Zheng
 
Deep Learning for Natural Language Processing
Deep Learning for Natural Language ProcessingDeep Learning for Natural Language Processing
Deep Learning for Natural Language ProcessingDevashish Shanker
 
Introduction to Mahout and Machine Learning
Introduction to Mahout and Machine LearningIntroduction to Mahout and Machine Learning
Introduction to Mahout and Machine LearningVarad Meru
 
An Introduction to Supervised Machine Learning and Pattern Classification: Th...
An Introduction to Supervised Machine Learning and Pattern Classification: Th...An Introduction to Supervised Machine Learning and Pattern Classification: Th...
An Introduction to Supervised Machine Learning and Pattern Classification: Th...Sebastian Raschka
 
Machine Learning and Data Mining: 12 Classification Rules
Machine Learning and Data Mining: 12 Classification RulesMachine Learning and Data Mining: 12 Classification Rules
Machine Learning and Data Mining: 12 Classification RulesPier Luca Lanzi
 
Myths and Mathemagical Superpowers of Data Scientists
Myths and Mathemagical Superpowers of Data ScientistsMyths and Mathemagical Superpowers of Data Scientists
Myths and Mathemagical Superpowers of Data ScientistsDavid Pittman
 
Tutorial on Deep learning and Applications
Tutorial on Deep learning and ApplicationsTutorial on Deep learning and Applications
Tutorial on Deep learning and ApplicationsNhatHai Phan
 
Deep neural networks
Deep neural networksDeep neural networks
Deep neural networksSi Haem
 
Introduction to Big Data/Machine Learning
Introduction to Big Data/Machine LearningIntroduction to Big Data/Machine Learning
Introduction to Big Data/Machine LearningLars Marius Garshol
 
Artificial neural network
Artificial neural networkArtificial neural network
Artificial neural networkDEEPASHRI HK
 
10 R Packages to Win Kaggle Competitions
10 R Packages to Win Kaggle Competitions10 R Packages to Win Kaggle Competitions
10 R Packages to Win Kaggle CompetitionsDataRobot
 
Artificial Intelligence Presentation
Artificial Intelligence PresentationArtificial Intelligence Presentation
Artificial Intelligence Presentationlpaviglianiti
 
The Business Analytics Value Proposition
The Business Analytics Value PropositionThe Business Analytics Value Proposition
The Business Analytics Value PropositionEric Stephens
 
Titan: The Rise of Big Graph Data
Titan: The Rise of Big Graph DataTitan: The Rise of Big Graph Data
Titan: The Rise of Big Graph DataMarko Rodriguez
 

Destaque (20)

Hadoop and Machine Learning
Hadoop and Machine LearningHadoop and Machine Learning
Hadoop and Machine Learning
 
A Statistician's View on Big Data and Data Science (Version 1)
A Statistician's View on Big Data and Data Science (Version 1)A Statistician's View on Big Data and Data Science (Version 1)
A Statistician's View on Big Data and Data Science (Version 1)
 
Data By The People, For The People
Data By The People, For The PeopleData By The People, For The People
Data By The People, For The People
 
Hands-on Deep Learning in Python
Hands-on Deep Learning in PythonHands-on Deep Learning in Python
Hands-on Deep Learning in Python
 
10 Lessons Learned from Building Machine Learning Systems
10 Lessons Learned from Building Machine Learning Systems10 Lessons Learned from Building Machine Learning Systems
10 Lessons Learned from Building Machine Learning Systems
 
A tutorial on deep learning at icml 2013
A tutorial on deep learning at icml 2013A tutorial on deep learning at icml 2013
A tutorial on deep learning at icml 2013
 
Deep Learning for Natural Language Processing
Deep Learning for Natural Language ProcessingDeep Learning for Natural Language Processing
Deep Learning for Natural Language Processing
 
Introduction to Mahout and Machine Learning
Introduction to Mahout and Machine LearningIntroduction to Mahout and Machine Learning
Introduction to Mahout and Machine Learning
 
An Introduction to Supervised Machine Learning and Pattern Classification: Th...
An Introduction to Supervised Machine Learning and Pattern Classification: Th...An Introduction to Supervised Machine Learning and Pattern Classification: Th...
An Introduction to Supervised Machine Learning and Pattern Classification: Th...
 
Machine Learning and Data Mining: 12 Classification Rules
Machine Learning and Data Mining: 12 Classification RulesMachine Learning and Data Mining: 12 Classification Rules
Machine Learning and Data Mining: 12 Classification Rules
 
Myths and Mathemagical Superpowers of Data Scientists
Myths and Mathemagical Superpowers of Data ScientistsMyths and Mathemagical Superpowers of Data Scientists
Myths and Mathemagical Superpowers of Data Scientists
 
Tutorial on Deep learning and Applications
Tutorial on Deep learning and ApplicationsTutorial on Deep learning and Applications
Tutorial on Deep learning and Applications
 
Deep neural networks
Deep neural networksDeep neural networks
Deep neural networks
 
Introduction to Big Data/Machine Learning
Introduction to Big Data/Machine LearningIntroduction to Big Data/Machine Learning
Introduction to Big Data/Machine Learning
 
Artificial neural network
Artificial neural networkArtificial neural network
Artificial neural network
 
10 R Packages to Win Kaggle Competitions
10 R Packages to Win Kaggle Competitions10 R Packages to Win Kaggle Competitions
10 R Packages to Win Kaggle Competitions
 
Artificial Intelligence Presentation
Artificial Intelligence PresentationArtificial Intelligence Presentation
Artificial Intelligence Presentation
 
The Business Analytics Value Proposition
The Business Analytics Value PropositionThe Business Analytics Value Proposition
The Business Analytics Value Proposition
 
Business intelligence
Business intelligenceBusiness intelligence
Business intelligence
 
Titan: The Rise of Big Graph Data
Titan: The Rise of Big Graph DataTitan: The Rise of Big Graph Data
Titan: The Rise of Big Graph Data
 

Semelhante a How to Interview a Data Scientist

Avoiding the Heuristic Solution: Moving past functional and correct to joyful...
Avoiding the Heuristic Solution: Moving past functional and correct to joyful...Avoiding the Heuristic Solution: Moving past functional and correct to joyful...
Avoiding the Heuristic Solution: Moving past functional and correct to joyful...Steven Hoober
 
10 Observations from 10+ years in the Corporate UX Trenches
10 Observations from 10+ years in the Corporate UX Trenches10 Observations from 10+ years in the Corporate UX Trenches
10 Observations from 10+ years in the Corporate UX TrenchesArio Jafarzadeh
 
Strata 2012: Humans, Machines, and the Dimensions of Microwork
Strata 2012: Humans, Machines, and the Dimensions of MicroworkStrata 2012: Humans, Machines, and the Dimensions of Microwork
Strata 2012: Humans, Machines, and the Dimensions of MicroworkDaniel Tunkelang
 
The Top Ten Execution Missteps
The Top Ten Execution MisstepsThe Top Ten Execution Missteps
The Top Ten Execution MisstepsBill Nussey
 
How to change your career to consulting
How to change your career to consultingHow to change your career to consulting
How to change your career to consultingPurnima Thakre
 
La potenza di Linkedin: i candidati passivi
La potenza di Linkedin: i candidati passiviLa potenza di Linkedin: i candidati passivi
La potenza di Linkedin: i candidati passiviAndrea Attana
 
Inside the world of passive talent research & tips
Inside the world of passive talent  research & tipsInside the world of passive talent  research & tips
Inside the world of passive talent research & tipsCarly Rodger
 
Inside The World Of Passive Talent Research & Tips
Inside The World Of Passive Talent   Research & TipsInside The World Of Passive Talent   Research & Tips
Inside The World Of Passive Talent Research & Tipshaimeecode
 
Inside the world of passive talent research & tips
Inside the world of passive talent   research & tipsInside the world of passive talent   research & tips
Inside the world of passive talent research & tipsLynne Rooney
 
Inside the World of Passive Talent
Inside the World of Passive TalentInside the World of Passive Talent
Inside the World of Passive Talentharrydhebar
 
Inside the world of passive talent research & tips
Inside the world of passive talent research & tipsInside the world of passive talent research & tips
Inside the world of passive talent research & tipsDonna Graham
 
Inside The World Of Passive Talent
Inside The World Of Passive TalentInside The World Of Passive Talent
Inside The World Of Passive TalentDaniel Sanchez-Grant
 
Inside the world of passive talent - Research tips
Inside the world of passive talent - Research tipsInside the world of passive talent - Research tips
Inside the world of passive talent - Research tipsHarry Dhebar
 
Inside the world of passive talent
Inside the world of passive talentInside the world of passive talent
Inside the world of passive talentLeonardo Intriago
 
Valtech - Innovation Needs Waste
Valtech - Innovation Needs WasteValtech - Innovation Needs Waste
Valtech - Innovation Needs WasteValtech
 
Macadamian - Product Camp - Top10 researchsecretswebinar dan_arra_march,2013
Macadamian - Product Camp - Top10 researchsecretswebinar dan_arra_march,2013Macadamian - Product Camp - Top10 researchsecretswebinar dan_arra_march,2013
Macadamian - Product Camp - Top10 researchsecretswebinar dan_arra_march,2013Dan Arra
 
Design thinking in everyday life
Design thinking in everyday lifeDesign thinking in everyday life
Design thinking in everyday lifeMadhumita Gupta
 
Learnings from startups
Learnings from startupsLearnings from startups
Learnings from startupsTopi Järvinen
 
UCF Sales Club Presentation
UCF Sales Club PresentationUCF Sales Club Presentation
UCF Sales Club PresentationSteve Urquhart
 
It Takes A Village To Create A Great Candidate Experience
It Takes A Village To Create A Great Candidate ExperienceIt Takes A Village To Create A Great Candidate Experience
It Takes A Village To Create A Great Candidate ExperienceGreg Gerber (PHR in progress)
 

Semelhante a How to Interview a Data Scientist (20)

Avoiding the Heuristic Solution: Moving past functional and correct to joyful...
Avoiding the Heuristic Solution: Moving past functional and correct to joyful...Avoiding the Heuristic Solution: Moving past functional and correct to joyful...
Avoiding the Heuristic Solution: Moving past functional and correct to joyful...
 
10 Observations from 10+ years in the Corporate UX Trenches
10 Observations from 10+ years in the Corporate UX Trenches10 Observations from 10+ years in the Corporate UX Trenches
10 Observations from 10+ years in the Corporate UX Trenches
 
Strata 2012: Humans, Machines, and the Dimensions of Microwork
Strata 2012: Humans, Machines, and the Dimensions of MicroworkStrata 2012: Humans, Machines, and the Dimensions of Microwork
Strata 2012: Humans, Machines, and the Dimensions of Microwork
 
The Top Ten Execution Missteps
The Top Ten Execution MisstepsThe Top Ten Execution Missteps
The Top Ten Execution Missteps
 
How to change your career to consulting
How to change your career to consultingHow to change your career to consulting
How to change your career to consulting
 
La potenza di Linkedin: i candidati passivi
La potenza di Linkedin: i candidati passiviLa potenza di Linkedin: i candidati passivi
La potenza di Linkedin: i candidati passivi
 
Inside the world of passive talent research & tips
Inside the world of passive talent  research & tipsInside the world of passive talent  research & tips
Inside the world of passive talent research & tips
 
Inside The World Of Passive Talent Research & Tips
Inside The World Of Passive Talent   Research & TipsInside The World Of Passive Talent   Research & Tips
Inside The World Of Passive Talent Research & Tips
 
Inside the world of passive talent research & tips
Inside the world of passive talent   research & tipsInside the world of passive talent   research & tips
Inside the world of passive talent research & tips
 
Inside the World of Passive Talent
Inside the World of Passive TalentInside the World of Passive Talent
Inside the World of Passive Talent
 
Inside the world of passive talent research & tips
Inside the world of passive talent research & tipsInside the world of passive talent research & tips
Inside the world of passive talent research & tips
 
Inside The World Of Passive Talent
Inside The World Of Passive TalentInside The World Of Passive Talent
Inside The World Of Passive Talent
 
Inside the world of passive talent - Research tips
Inside the world of passive talent - Research tipsInside the world of passive talent - Research tips
Inside the world of passive talent - Research tips
 
Inside the world of passive talent
Inside the world of passive talentInside the world of passive talent
Inside the world of passive talent
 
Valtech - Innovation Needs Waste
Valtech - Innovation Needs WasteValtech - Innovation Needs Waste
Valtech - Innovation Needs Waste
 
Macadamian - Product Camp - Top10 researchsecretswebinar dan_arra_march,2013
Macadamian - Product Camp - Top10 researchsecretswebinar dan_arra_march,2013Macadamian - Product Camp - Top10 researchsecretswebinar dan_arra_march,2013
Macadamian - Product Camp - Top10 researchsecretswebinar dan_arra_march,2013
 
Design thinking in everyday life
Design thinking in everyday lifeDesign thinking in everyday life
Design thinking in everyday life
 
Learnings from startups
Learnings from startupsLearnings from startups
Learnings from startups
 
UCF Sales Club Presentation
UCF Sales Club PresentationUCF Sales Club Presentation
UCF Sales Club Presentation
 
It Takes A Village To Create A Great Candidate Experience
It Takes A Village To Create A Great Candidate ExperienceIt Takes A Village To Create A Great Candidate Experience
It Takes A Village To Create A Great Candidate Experience
 

Mais de Daniel Tunkelang

Query Understanding and Ecommerce
Query Understanding and EcommerceQuery Understanding and Ecommerce
Query Understanding and EcommerceDaniel Tunkelang
 
Semantic Equivalence of e-Commerce Queries
Semantic Equivalence of e-Commerce QueriesSemantic Equivalence of e-Commerce Queries
Semantic Equivalence of e-Commerce QueriesDaniel Tunkelang
 
Helping Searchers Satisfice through Query Understanding
Helping Searchers Satisfice through Query UnderstandingHelping Searchers Satisfice through Query Understanding
Helping Searchers Satisfice through Query UnderstandingDaniel Tunkelang
 
Query Understanding: A Manifesto
Query Understanding: A ManifestoQuery Understanding: A Manifesto
Query Understanding: A ManifestoDaniel Tunkelang
 
Where should you put your data scientists?
Where should you put your data scientists?Where should you put your data scientists?
Where should you put your data scientists?Daniel Tunkelang
 
Data Science: A Mindset for Productivity
Data Science: A Mindset for ProductivityData Science: A Mindset for Productivity
Data Science: A Mindset for ProductivityDaniel Tunkelang
 
My Three Ex’s: A Data Science Approach for Applied Machine Learning
My Three Ex’s: A Data Science Approach for Applied Machine LearningMy Three Ex’s: A Data Science Approach for Applied Machine Learning
My Three Ex’s: A Data Science Approach for Applied Machine LearningDaniel Tunkelang
 
Web science - How is it different?
Web science - How is it different?Web science - How is it different?
Web science - How is it different?Daniel Tunkelang
 
Better Search Through Query Understanding
Better Search Through Query UnderstandingBetter Search Through Query Understanding
Better Search Through Query UnderstandingDaniel Tunkelang
 
Social Search in a Professional Context
Social Search in a Professional ContextSocial Search in a Professional Context
Social Search in a Professional ContextDaniel Tunkelang
 
Find and be Found: Information Retrieval at LinkedIn
Find and be Found: Information Retrieval at LinkedInFind and be Found: Information Retrieval at LinkedIn
Find and be Found: Information Retrieval at LinkedInDaniel Tunkelang
 
Search as Communication: Lessons from a Personal Journey
Search as Communication: Lessons from a Personal JourneySearch as Communication: Lessons from a Personal Journey
Search as Communication: Lessons from a Personal JourneyDaniel Tunkelang
 
Enterprise Search: How do we get there from here?
Enterprise Search: How do we get there from here?Enterprise Search: How do we get there from here?
Enterprise Search: How do we get there from here?Daniel Tunkelang
 
Big Data, We Have a Communication Problem
Big Data, We Have a Communication Problem Big Data, We Have a Communication Problem
Big Data, We Have a Communication Problem Daniel Tunkelang
 
Information, Attention, and Trust: A Hierarchy of Needs
Information, Attention, and Trust: A Hierarchy of NeedsInformation, Attention, and Trust: A Hierarchy of Needs
Information, Attention, and Trust: A Hierarchy of NeedsDaniel Tunkelang
 
Content, Connections, and Context
Content, Connections, and ContextContent, Connections, and Context
Content, Connections, and ContextDaniel Tunkelang
 
Scale, Structure, and Semantics
Scale, Structure, and SemanticsScale, Structure, and Semantics
Scale, Structure, and SemanticsDaniel Tunkelang
 
Recommendations as a Conversation with the User
Recommendations as a Conversation with the UserRecommendations as a Conversation with the User
Recommendations as a Conversation with the UserDaniel Tunkelang
 

Mais de Daniel Tunkelang (20)

Query Understanding and Ecommerce
Query Understanding and EcommerceQuery Understanding and Ecommerce
Query Understanding and Ecommerce
 
Semantic Equivalence of e-Commerce Queries
Semantic Equivalence of e-Commerce QueriesSemantic Equivalence of e-Commerce Queries
Semantic Equivalence of e-Commerce Queries
 
Helping Searchers Satisfice through Query Understanding
Helping Searchers Satisfice through Query UnderstandingHelping Searchers Satisfice through Query Understanding
Helping Searchers Satisfice through Query Understanding
 
MMM, Search!
MMM, Search!MMM, Search!
MMM, Search!
 
Enterprise Intelligence
Enterprise IntelligenceEnterprise Intelligence
Enterprise Intelligence
 
Query Understanding: A Manifesto
Query Understanding: A ManifestoQuery Understanding: A Manifesto
Query Understanding: A Manifesto
 
Where should you put your data scientists?
Where should you put your data scientists?Where should you put your data scientists?
Where should you put your data scientists?
 
Data Science: A Mindset for Productivity
Data Science: A Mindset for ProductivityData Science: A Mindset for Productivity
Data Science: A Mindset for Productivity
 
My Three Ex’s: A Data Science Approach for Applied Machine Learning
My Three Ex’s: A Data Science Approach for Applied Machine LearningMy Three Ex’s: A Data Science Approach for Applied Machine Learning
My Three Ex’s: A Data Science Approach for Applied Machine Learning
 
Web science - How is it different?
Web science - How is it different?Web science - How is it different?
Web science - How is it different?
 
Better Search Through Query Understanding
Better Search Through Query UnderstandingBetter Search Through Query Understanding
Better Search Through Query Understanding
 
Social Search in a Professional Context
Social Search in a Professional ContextSocial Search in a Professional Context
Social Search in a Professional Context
 
Find and be Found: Information Retrieval at LinkedIn
Find and be Found: Information Retrieval at LinkedInFind and be Found: Information Retrieval at LinkedIn
Find and be Found: Information Retrieval at LinkedIn
 
Search as Communication: Lessons from a Personal Journey
Search as Communication: Lessons from a Personal JourneySearch as Communication: Lessons from a Personal Journey
Search as Communication: Lessons from a Personal Journey
 
Enterprise Search: How do we get there from here?
Enterprise Search: How do we get there from here?Enterprise Search: How do we get there from here?
Enterprise Search: How do we get there from here?
 
Big Data, We Have a Communication Problem
Big Data, We Have a Communication Problem Big Data, We Have a Communication Problem
Big Data, We Have a Communication Problem
 
Information, Attention, and Trust: A Hierarchy of Needs
Information, Attention, and Trust: A Hierarchy of NeedsInformation, Attention, and Trust: A Hierarchy of Needs
Information, Attention, and Trust: A Hierarchy of Needs
 
Content, Connections, and Context
Content, Connections, and ContextContent, Connections, and Context
Content, Connections, and Context
 
Scale, Structure, and Semantics
Scale, Structure, and SemanticsScale, Structure, and Semantics
Scale, Structure, and Semantics
 
Recommendations as a Conversation with the User
Recommendations as a Conversation with the UserRecommendations as a Conversation with the User
Recommendations as a Conversation with the User
 

Último

Emixa Mendix Meetup 11 April 2024 about Mendix Native development
Emixa Mendix Meetup 11 April 2024 about Mendix Native developmentEmixa Mendix Meetup 11 April 2024 about Mendix Native development
Emixa Mendix Meetup 11 April 2024 about Mendix Native developmentPim van der Noll
 
Bridging Between CAD & GIS: 6 Ways to Automate Your Data Integration
Bridging Between CAD & GIS:  6 Ways to Automate Your Data IntegrationBridging Between CAD & GIS:  6 Ways to Automate Your Data Integration
Bridging Between CAD & GIS: 6 Ways to Automate Your Data Integrationmarketing932765
 
QCon London: Mastering long-running processes in modern architectures
QCon London: Mastering long-running processes in modern architecturesQCon London: Mastering long-running processes in modern architectures
QCon London: Mastering long-running processes in modern architecturesBernd Ruecker
 
Design pattern talk by Kaya Weers - 2024 (v2)
Design pattern talk by Kaya Weers - 2024 (v2)Design pattern talk by Kaya Weers - 2024 (v2)
Design pattern talk by Kaya Weers - 2024 (v2)Kaya Weers
 
Zeshan Sattar- Assessing the skill requirements and industry expectations for...
Zeshan Sattar- Assessing the skill requirements and industry expectations for...Zeshan Sattar- Assessing the skill requirements and industry expectations for...
Zeshan Sattar- Assessing the skill requirements and industry expectations for...itnewsafrica
 
How to Effectively Monitor SD-WAN and SASE Environments with ThousandEyes
How to Effectively Monitor SD-WAN and SASE Environments with ThousandEyesHow to Effectively Monitor SD-WAN and SASE Environments with ThousandEyes
How to Effectively Monitor SD-WAN and SASE Environments with ThousandEyesThousandEyes
 
Potential of AI (Generative AI) in Business: Learnings and Insights
Potential of AI (Generative AI) in Business: Learnings and InsightsPotential of AI (Generative AI) in Business: Learnings and Insights
Potential of AI (Generative AI) in Business: Learnings and InsightsRavi Sanghani
 
Modern Roaming for Notes and Nomad – Cheaper Faster Better Stronger
Modern Roaming for Notes and Nomad – Cheaper Faster Better StrongerModern Roaming for Notes and Nomad – Cheaper Faster Better Stronger
Modern Roaming for Notes and Nomad – Cheaper Faster Better Strongerpanagenda
 
Connecting the Dots for Information Discovery.pdf
Connecting the Dots for Information Discovery.pdfConnecting the Dots for Information Discovery.pdf
Connecting the Dots for Information Discovery.pdfNeo4j
 
Unleashing Real-time Insights with ClickHouse_ Navigating the Landscape in 20...
Unleashing Real-time Insights with ClickHouse_ Navigating the Landscape in 20...Unleashing Real-time Insights with ClickHouse_ Navigating the Landscape in 20...
Unleashing Real-time Insights with ClickHouse_ Navigating the Landscape in 20...Alkin Tezuysal
 
Time Series Foundation Models - current state and future directions
Time Series Foundation Models - current state and future directionsTime Series Foundation Models - current state and future directions
Time Series Foundation Models - current state and future directionsNathaniel Shimoni
 
Microsoft 365 Copilot: How to boost your productivity with AI – Part one: Ado...
Microsoft 365 Copilot: How to boost your productivity with AI – Part one: Ado...Microsoft 365 Copilot: How to boost your productivity with AI – Part one: Ado...
Microsoft 365 Copilot: How to boost your productivity with AI – Part one: Ado...Nikki Chapple
 
Transcript: New from BookNet Canada for 2024: Loan Stars - Tech Forum 2024
Transcript: New from BookNet Canada for 2024: Loan Stars - Tech Forum 2024Transcript: New from BookNet Canada for 2024: Loan Stars - Tech Forum 2024
Transcript: New from BookNet Canada for 2024: Loan Stars - Tech Forum 2024BookNet Canada
 
The Fit for Passkeys for Employee and Consumer Sign-ins: FIDO Paris Seminar.pptx
The Fit for Passkeys for Employee and Consumer Sign-ins: FIDO Paris Seminar.pptxThe Fit for Passkeys for Employee and Consumer Sign-ins: FIDO Paris Seminar.pptx
The Fit for Passkeys for Employee and Consumer Sign-ins: FIDO Paris Seminar.pptxLoriGlavin3
 
The Ultimate Guide to Choosing WordPress Pros and Cons
The Ultimate Guide to Choosing WordPress Pros and ConsThe Ultimate Guide to Choosing WordPress Pros and Cons
The Ultimate Guide to Choosing WordPress Pros and ConsPixlogix Infotech
 
Decarbonising Buildings: Making a net-zero built environment a reality
Decarbonising Buildings: Making a net-zero built environment a realityDecarbonising Buildings: Making a net-zero built environment a reality
Decarbonising Buildings: Making a net-zero built environment a realityIES VE
 
Use of FIDO in the Payments and Identity Landscape: FIDO Paris Seminar.pptx
Use of FIDO in the Payments and Identity Landscape: FIDO Paris Seminar.pptxUse of FIDO in the Payments and Identity Landscape: FIDO Paris Seminar.pptx
Use of FIDO in the Payments and Identity Landscape: FIDO Paris Seminar.pptxLoriGlavin3
 
Generative Artificial Intelligence: How generative AI works.pdf
Generative Artificial Intelligence: How generative AI works.pdfGenerative Artificial Intelligence: How generative AI works.pdf
Generative Artificial Intelligence: How generative AI works.pdfIngrid Airi González
 
Genislab builds better products and faster go-to-market with Lean project man...
Genislab builds better products and faster go-to-market with Lean project man...Genislab builds better products and faster go-to-market with Lean project man...
Genislab builds better products and faster go-to-market with Lean project man...Farhan Tariq
 
Generative AI - Gitex v1Generative AI - Gitex v1.pptx
Generative AI - Gitex v1Generative AI - Gitex v1.pptxGenerative AI - Gitex v1Generative AI - Gitex v1.pptx
Generative AI - Gitex v1Generative AI - Gitex v1.pptxfnnc6jmgwh
 

Último (20)

Emixa Mendix Meetup 11 April 2024 about Mendix Native development
Emixa Mendix Meetup 11 April 2024 about Mendix Native developmentEmixa Mendix Meetup 11 April 2024 about Mendix Native development
Emixa Mendix Meetup 11 April 2024 about Mendix Native development
 
Bridging Between CAD & GIS: 6 Ways to Automate Your Data Integration
Bridging Between CAD & GIS:  6 Ways to Automate Your Data IntegrationBridging Between CAD & GIS:  6 Ways to Automate Your Data Integration
Bridging Between CAD & GIS: 6 Ways to Automate Your Data Integration
 
QCon London: Mastering long-running processes in modern architectures
QCon London: Mastering long-running processes in modern architecturesQCon London: Mastering long-running processes in modern architectures
QCon London: Mastering long-running processes in modern architectures
 
Design pattern talk by Kaya Weers - 2024 (v2)
Design pattern talk by Kaya Weers - 2024 (v2)Design pattern talk by Kaya Weers - 2024 (v2)
Design pattern talk by Kaya Weers - 2024 (v2)
 
Zeshan Sattar- Assessing the skill requirements and industry expectations for...
Zeshan Sattar- Assessing the skill requirements and industry expectations for...Zeshan Sattar- Assessing the skill requirements and industry expectations for...
Zeshan Sattar- Assessing the skill requirements and industry expectations for...
 
How to Effectively Monitor SD-WAN and SASE Environments with ThousandEyes
How to Effectively Monitor SD-WAN and SASE Environments with ThousandEyesHow to Effectively Monitor SD-WAN and SASE Environments with ThousandEyes
How to Effectively Monitor SD-WAN and SASE Environments with ThousandEyes
 
Potential of AI (Generative AI) in Business: Learnings and Insights
Potential of AI (Generative AI) in Business: Learnings and InsightsPotential of AI (Generative AI) in Business: Learnings and Insights
Potential of AI (Generative AI) in Business: Learnings and Insights
 
Modern Roaming for Notes and Nomad – Cheaper Faster Better Stronger
Modern Roaming for Notes and Nomad – Cheaper Faster Better StrongerModern Roaming for Notes and Nomad – Cheaper Faster Better Stronger
Modern Roaming for Notes and Nomad – Cheaper Faster Better Stronger
 
Connecting the Dots for Information Discovery.pdf
Connecting the Dots for Information Discovery.pdfConnecting the Dots for Information Discovery.pdf
Connecting the Dots for Information Discovery.pdf
 
Unleashing Real-time Insights with ClickHouse_ Navigating the Landscape in 20...
Unleashing Real-time Insights with ClickHouse_ Navigating the Landscape in 20...Unleashing Real-time Insights with ClickHouse_ Navigating the Landscape in 20...
Unleashing Real-time Insights with ClickHouse_ Navigating the Landscape in 20...
 
Time Series Foundation Models - current state and future directions
Time Series Foundation Models - current state and future directionsTime Series Foundation Models - current state and future directions
Time Series Foundation Models - current state and future directions
 
Microsoft 365 Copilot: How to boost your productivity with AI – Part one: Ado...
Microsoft 365 Copilot: How to boost your productivity with AI – Part one: Ado...Microsoft 365 Copilot: How to boost your productivity with AI – Part one: Ado...
Microsoft 365 Copilot: How to boost your productivity with AI – Part one: Ado...
 
Transcript: New from BookNet Canada for 2024: Loan Stars - Tech Forum 2024
Transcript: New from BookNet Canada for 2024: Loan Stars - Tech Forum 2024Transcript: New from BookNet Canada for 2024: Loan Stars - Tech Forum 2024
Transcript: New from BookNet Canada for 2024: Loan Stars - Tech Forum 2024
 
The Fit for Passkeys for Employee and Consumer Sign-ins: FIDO Paris Seminar.pptx
The Fit for Passkeys for Employee and Consumer Sign-ins: FIDO Paris Seminar.pptxThe Fit for Passkeys for Employee and Consumer Sign-ins: FIDO Paris Seminar.pptx
The Fit for Passkeys for Employee and Consumer Sign-ins: FIDO Paris Seminar.pptx
 
The Ultimate Guide to Choosing WordPress Pros and Cons
The Ultimate Guide to Choosing WordPress Pros and ConsThe Ultimate Guide to Choosing WordPress Pros and Cons
The Ultimate Guide to Choosing WordPress Pros and Cons
 
Decarbonising Buildings: Making a net-zero built environment a reality
Decarbonising Buildings: Making a net-zero built environment a realityDecarbonising Buildings: Making a net-zero built environment a reality
Decarbonising Buildings: Making a net-zero built environment a reality
 
Use of FIDO in the Payments and Identity Landscape: FIDO Paris Seminar.pptx
Use of FIDO in the Payments and Identity Landscape: FIDO Paris Seminar.pptxUse of FIDO in the Payments and Identity Landscape: FIDO Paris Seminar.pptx
Use of FIDO in the Payments and Identity Landscape: FIDO Paris Seminar.pptx
 
Generative Artificial Intelligence: How generative AI works.pdf
Generative Artificial Intelligence: How generative AI works.pdfGenerative Artificial Intelligence: How generative AI works.pdf
Generative Artificial Intelligence: How generative AI works.pdf
 
Genislab builds better products and faster go-to-market with Lean project man...
Genislab builds better products and faster go-to-market with Lean project man...Genislab builds better products and faster go-to-market with Lean project man...
Genislab builds better products and faster go-to-market with Lean project man...
 
Generative AI - Gitex v1Generative AI - Gitex v1.pptx
Generative AI - Gitex v1Generative AI - Gitex v1.pptxGenerative AI - Gitex v1Generative AI - Gitex v1.pptx
Generative AI - Gitex v1Generative AI - Gitex v1.pptx
 

How to Interview a Data Scientist

  • 1. Daniel How to Interview a Data Scientist Daniel Tunkelang Director of Data Science, LinkedIn Recruiting Solutions 1
  • 3. GOAL 3
  • 4. Specification for a Data Scientist implements algorithms analyzes data thinks product 4
  • 5. What about C ulture ommunication uriosity Hold that thought… ? 5
  • 6. What can you learn from an interview? 6
  • 7. Interviewing is a last resort. Alternatives? 7
  • 8. Only hire people you’ve worked with. 8
  • 9. Hire interns. Convert to full-time. Profit! 9
  • 10. Try before you buy: short-term contracts. 10
  • 11. Alternatives are at best a partial solution. §  Only hiring people you’ve worked with doesn’t scale. –  And traps you in a locally optimal monoculture. §  Interns are great! But they are a significant investment. –  Managing interns well is a productivity gamble. –  Most interns have at least a year of school left. –  Not all interns will make your bar. You won’t always make theirs. §  Try before you buy: nice in theory. –  Adverse selection bias when other offers are permanent roles. –  Creates bureaucracy. 11
  • 12. Can we at least make interviews natural? 12
  • 13. Spend a day working together. 13
  • 16. High-fructose corn syrup is 100% natural. §  Working sessions are difficult to set up. –  No more natural than a final exam. –  High variance, and very difficult to calibrate performance. §  Take-home assignments are great for the employer. –  But they are a significant investment for the candidate. –  Adverse selection bias if other companies don’t require them. –  Creates incentive to cheat if significant part of hiring process. §  Previous work is like natural experiments. –  Always good to review a candidate’s previous work. –  But not always possible to find work with high predictive value. 16
  • 17. So you gotta do interviews. But how? 17
  • 18. Three Principles 1.  Keep it real. 2.  No gotchas. 3.  Maybe = no. 18
  • 20. Test basic coding with FizzBuzz questions. multiple of 3 -> Fizz multiple of 5 -> Buzz multiple of 15 -> FizzBuzz 1, 2, Fizz, 4, Buzz, Fizz, 7, 8, Fizz, Buzz, 11, Fizz, 13, 14, FizzBuzz, 16, … 20
  • 21. Whiteboards suck for coding. http://ericleads.com/2012/10/how-to-conduct-a-better-coding-interview/ 21
  • 22. Don’t ask pointless algorithm questions. implement 22
  • 23. Use real-world algorithms questions. bigdatascientist Did you mean: big data scientist 23
  • 24. Ask candidates to design your products. 24
  • 25. Keeping it real is also a great sell. Similar Profiles People You May Know 25
  • 27. Gotchas reduce the signal-to-noise ratio. §  Avoid problems where success hinges on a single insight. –  Good interview problems offer lots of room for partial credit. –  Making a key insight often reflects experience, not intelligence. §  Don’t test a candidate’s knowledge of a niche technique. –  Unless that niche technique is critical to job performance. –  And can’t be learned on the job as part of on-boarding. §  Be a hard interviewer, but don’t be an asshole. –  An interview is not a stress-test to see where candidates break. –  Interviews communicate your values to the candidate. 27
  • 29. Commit to binary interview outcomes. §  Forced choice so interviewers don’t take easy way out. –  Just like having 4 choices instead of 5 on a rating scale. –  Encourages interviewers to take their role seriously. §  Each team member is a critical filter. –  Two no’s or one strong no is a no. –  All weak yes’s is a no. §  Short-circuit candidates early in the process. –  Resume and phone screening should be aggressive. –  Onsite interviews should have ~50% chance of leading to offers. 29
  • 30. But what about C ulture ommunication uriosity All are must-haves. ? Every interview evaluates all three. 30
  • 32. Three Principles 1.  Keep it real. –  Avoid whiteboard coding. Filter with FizzBuzz. –  Use real-world algorithms questions. –  Ask candidates to design your products. 2.  No gotchas. –  Gotchas reduce the signal-to-noise ratio. 3.  Maybe = no. –  Bad hires suck. Be conservative. –  Trust your team. 32