Skip to main content
King Abdullah University of Science and Technology
Stochastic Numerics Research Group
Stochastic Numerics Research Group

Main navigation

  • Home
  • People
    • All Profiles
    • Principal Investigators
    • Research Scientists
    • Postdoctoral Fellows
    • Students
    • Former Members
    • Consultants
  • Events
    • All Events
    • Upcoming Events
    • Events Calendar
  • News
  • Teaching
  • Theses
  • UQ Hybrid Seminar
  • SNSL 2026

conformal prediction

Uncertainty Quantification with Conformal Prediction in Energy Data

Tarek AlSkaif, Associate Professor, Energy Informatics, Wageningen University (WUR)

Feb 1, 12:00 - 13:00

B9 L2 R2325

conformal prediction machine learning uncertainty quantification

The talk will introduce the fundamentals of conformal prediction (CP) - a flexible, model-agnostic uncertainty quantification framework for generating statistically valid uncertainty estimates in energy applications - and demonstrate how it can be layered on top of machine learning models to produce reliable prediction intervals.

Stochastic Numerics Research Group (STOCHNUM)

Footer

  • A-Z Directory
    • All Content
    • Browse Related Sites
  • Site Management
    • Log in

© 2025 King Abdullah University of Science and Technology. All rights reserved. Privacy Notice

Disclaimer: The views and opinions expressed in this page are strictly those of the page author. The contents of this page have not been reviewed or approved by the King Abdullah University of Science and Technology.