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Daniel Tunkelang

Daniel Tunkelang
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  • 28 SlideShares
  • 10,951 Followers
  • 0 Clipboards
  • Keynote Author

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One fine body…

    • San Francisco Bay Area, United States
  • Work High-Class Consultant
  • Industry Technology / Software / Internet
  • Website linkedin.com/in/dtunkelang
  • About How I got here: - CS and Math at MIT, PhD in CS at CMU. - Founding employee at Endeca. - Led local search team at Google. - Director of data science / engineering at LinkedIn. - Wrote book on faceted search. Today: full-time consultant / advisor. I help companies make decisions around algorithms, architecture, product strategy, hiring, and organizational structure.
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Tags (80)

big data daniel data science endeca enterprise experimentation faceted faceted search google hci hcir human-computer interaction information information retrieval ir library and information science linkedin machine learning query understanding recommender system retrieval search search engines search quality social networks tunkelang more…

analytics attention scarcity authority big data cikm2012 cikm2013 computer crowdsourcing culture daniel data science databases economics endeca enterprise enterprise search entity oriented search experimentation explainability exploratory faceted faceted search google hci hcir human human computer interaction human-computer interaction influence information information retrieval informationretrieval interaction ir knowledge management library and information science linkedi linkedin lucene machine learning management measurement microblogging mit navigation organization personalization qcon query understanding recommender system recsys recsys2012 relevance reputation retrieval samasource scientific method search search architecture search engines search infrastructure search quality semantic semantic web semi-structured data separate social media social network social networks software sspafces tags text transparency tunkelang tunkrank twitter usability web science wikipedia …less

View all Likes (23)

  • Using AI to understand search intent Using AI to understand search... by Aritraman 10 months ago
  • Tanvi Motwani, Lead Data Scientist, Guided Search at A9.com at MLconf ATL 2016 Tanvi Motwani, Lead Data Scie... by SessionsEv... 5 years ago
  • Adventures in Crowdsourcing: Research at UT Austin & Beyond Adventures in Crowdsourcing: ... by mattlease 9 years ago
  • OPEN Forum: Women Business Owners OPEN Forum: Women Business Ow... by rashmi 9 years ago
  • Scale, Structure, and Semantics Scale, Structure, and Semantics by dtunkelang 9 years ago
  • LinkedIn Tech Talk: The Accidental Chief Privacy Officer LinkedIn Tech Talk: The Accid... by jim-adler 10 years ago
  • Recommendations as a Conversation with the User Recommendations as a Conversa... by dtunkelang 10 years ago
  • Keeping It Professional: Relevance, Recommendations, and Reputation at LinkedIn Keeping It Professional: Rele... by dtunkelang 10 years ago
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