I develop machine learning methods tailored to the noisy, incomplete, and complex nature of real-world scientific data. While astronomy has served as a primary application area due its growing and urgent data challenges, the approaches I develop are designed for broad scientific applicability. My models are used in settings where speed and generalisability are critical, and machine learning provides the only viable solution. This work has enabled me to be involved and consult in the galaxy classification pipeline for the ESA Euclid space telescope.

Current Research

I am based in the Data-Intensive Astronomical Analysis research group where I am working on:

PhD Research

My PhD: Improving The Practicality of Active Learning Pipelines in Real-World Problem Settings: A Case Study in The Classification of Astronomical Data explored the following topics:

Supervisory Team

Sotiria Fotopoulou , Oliver Ray and Malcolm Bremer

Recent Publications