Rethinking Energy Demand Forecasting with Quantum Machine Learning
Thu, Aug 20
|https://luma.com/5jn1z3t1


Time & Location
Aug 20, 2026, 1:00 PM – 2:00 PM EDT
https://luma.com/5jn1z3t1
About the event
Join us on August 20 at 1:00-2:00 p.m. ET | 7:00-8:00 p.m. CET
Accurate energy demand forecasting is essential for grid stability, renewable integration, and operational planning, yet growing system complexity and correlated consumption patterns are pushing classical approaches to their limits. In partnership with E.ON, WISER explored how hybrid quantum-classical machine learning methods can improve energy demand forecasting by modeling temporal dynamics and cross-customer relationships in new ways.
In this session, we will examine energy demand forecasting as a high-impact use case for Quantum Machine Learning, highlighting how these approaches were designed, benchmarked, and evaluated for practical relevance. The discussion will offer both technical and strategic insight into where QML stands today, what it can already contribute to forecasting challenges, and how it may support the next generation of energy analytics.
In this session, you will
● See how WISER and E.ON developed hybrid QML approaches for energy demand…