Ga verder naar de inhoud

Quantum Machine Learning

In this course, you learn the essentials of Quantum Machine Learning.

Praktische info:

Online of op locatie
Engels
Doelgroep: mensen die kennis hebben van kredietrisico's en beschrijvende statistieken

Inschrijven?

  • Prijs: €100 voor 1 jaar ongelimiteerde toegang tot al het leermateriaal
Lees meer & inschrijven ⇗

Georganiseerd door:

In this course, participants learn the essentials of Quantum Computing. We start by outlining the conceptual foundations of quantum systems. The next chapter focuses on the basic elementary computational operations, with example programs in Python qiskit. Using these building blocks, we introduce some of the core quantum computing algorithms, with a focus on coherent quantum machine learning. Examples are Quantum Fourier Transformation, Quantum Phase Estimation and Grover search. Next, we introduce the concept of Near-Term Intermediate Scale Quantum devices (NISQ) and derive hybrid quantum-classical algorithms that are suitable for running on current hardware. Hereby, we also discuss the recent breakthroughs and quantum supremacy, and discuss existing hardware. Quantum computing intuition often requires some mathematical intuition. The course requires a medium to strong theoretical background, but is accessible for people who are unfamiliar with quantum mechanics and quantum computing. The course provides a sound mix of both theoretical and technical insights, as well as practical implementation details.


Gerelateerde opleidingen

SITB 2026 Conference

19 mei 2026

Symposium - Gent - KU Leuven, IEEE, WIC

Preparation for AI: From Raw Data to Reliable Models | How to make your data AI-ready

19 mei 2026

Opleiding - Brugge - PUC - KU Leuven Continue