Skip to main content View accessibility support page
  • Study
  • Research
  • Faculties
  • News and events
  • About
  • Get involved
  • Giving
  • Search

Website navigation

Skip to section navigation

Global site navigation

  • Study
    • Course search
    • Apply
    • Fees and funding
    • Student life
    • Visit
    • Help centre
    • Request info
    • International students
    • Executive education
    • Summer schools
  • Research
  • Faculties
    • Faculty of Engineering
    • Faculty of Medicine
    • Faculty of Natural Sciences
    • Imperial Business School
    • Administrative and support services
  • News and events
    • News
    • What's on
    • Imperial Stories
    • Great Exhibition Road Festival
    • Imperial Magazine
    • Imperial Lates
    • Graduation
  • About
    • President
    • Provost
    • Imperial Strategy
    • Academic Strategy
    • Imperial Global
    • Sustainable Imperial
    • Governance
    • Campuses
    • Our academics
    • Jobs at Imperial
  • Get involved
    • Giving
    • Schools outreach
    • Imperial Global Summer School
    • Societal engagement
    • Volunteering and outreach
    • Women at Imperial
  • Giving

User links navigation

  • For staff
  • Current students
  • Imperial for business
  • For schools
  • Alumni
Research groups

Machine Learning Initiative at Imperial navigation

  • About
  • People
    • Core members
    • Affiliates
  • Research of core members
    • Theory
      • Probabilistic models and approximate inference
      • Reinforcement learning and online learning
      • Deep learning
      • Optimisation
      • Causality
      • Computational learning theory
    • Applications
      • Robotics and control
      • Computer vision
      • Speech, Text and Natural Language Processing
      • Security and Privacy
      • Computational Social Science
      • Neuroscience
      • Bioinformatics and systems biology
  • Activities
  • Publications
  • News
  • Events

In this section

  • Machine Learning Initiative at Imperial
Machine Learning Initiative at Imperial
  • Imperial Home
  • Research groups
  • Machine Learning Initiative at Imperial
  • Research of core members
  • Theory
  • Probabilistic models and approximate inference

Probabilistic models and approximate inference

Theory
  • Probabilistic models and approximate inference
  • Reinforcement learning and online learning
  • Deep learning
  • Optimisation
  • Causality
  • Computational learning theory

Researchers involved

Anil Anthony Bharath

Anil Anthony Bharath
Bioengineering and DSI

Sarah Filippi

Sarah Filippi
Mathematics and Public Health

Seth Flaxman

Seth Flaxman
Mathematics and DSI

Andras Gyorgy

Andras Gyorgy
Electrical and Electronic Engineering

Stephen Muggleton

Stephen Muggleton
Computing

Kolyan Ray

Kolyan Ray
Mathematics

Email us: contact-ml@imperial.ac.uk

Useful Links

Popular links

  • Blackboard
  • Contact the Service Desk
  • Jobs
  • Library services
  • Outlook email online

Faculties

  • Engineering
  • Medicine
  • Natural Sciences
  • Imperial Business School

Directories

  • Admin and support services
  • Networks and Centres
  • Research groups
  • Search all staff

Partners

  • Imperial College Academic Health Science Centre
  • Imperial College Health Partners
  • Imperial College Healthcare NHS Trust
  • Imperial Consultants

College Information

Imperial College London

Address

Imperial College London
South Kensington Campus
London SW7 2AZ, UK
tel: +44 (0)20 7589 5111

Facebook X, formerly known as Twitter YouTube LinkedIn Instagram TikTok TikTok

Site Information

  • Sitemap
  • Accessibility
  • Modern slavery statement
  • Privacy notice
  • Use of cookies
  • Report incorrect content
  • Log in

© 2025 Imperial College London