Skip to content

Laboratory for Information, Networking and Communication Sciences

  • Home
  • News
  • Activities
    • Next Events
    • Seminars
    • Working Groups
    • Workshops
    • Twin Lectures
    • Thesis Defense
    • Videos
    • Newsletter
    • Search…
  • Research
    • LINCS Graph
    • Topics
      • Artificial Intelligence
      • Internet of Things
      • Wireless Networks
      • Network Theory
      • Content Distribution and Services
      • Metrology
    • Publications
    • Awards
    • Talent spreading
  • About us
    • Current members
    • Organization
      • Executive committee
      • Scientific committee
    • Partners
      • Institut Mines-Telecom
      • Inria
      • Nokia Bell Labs
      • Sorbonne Université
      • System-X
    • Strategic collaborations
    • Diversity & inclusion & gender equality
    • Former members
    • Former invited professors and researchers
  • Contact
  • Intranet
    • LDAP
    • Room Booking
    • Wiki
    • Tentative Seminar Schedule

Massively-Parallel Feature Selection for Big Dimensionality Data

When

23/06/2017    
10:45 am-11:00 am
Prof. Vassilis Christophides
Inria
Download ICS Google Calendar iCalendar Office 365 Outlook Live

Where

LINCS Seminars room
23, avenue d'Italie, Paris, 75013
Watch on Youtube

Event Type

  • Seminars
  • Youtube

Talk from the LINCS Workshop

Post navigation

Previous PostPrevious Competitive Caching of Contents in 5G Edge Cloud Networks
Next PostNext Stream processing for monitoring of real-time network services

Activities

Geometric lower bounds for stochastic processing networks with limited connectivity
18 June 2025
Andrés Ferragut
LINCS PhD Student Day
25 June 2025
LINCS Annual Workshop with the Scientific Committee
10 July 2025
  • All events
  • Latest Tweets

    [custom-twitter-feeds]

    Last News

    • Lab’s Life on February 2025
    • Lab’s life on January 2025
    • Lab’s life on November 2024

    Archives

    Search

    • Twitter
    • Email
    • LinkedIn
    • YouTube
    Privacy Policy Proudly powered by WordPress