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Machine Learning is increasingly being exploited on campus in various scientific fields, projects, groups and colleagues. Applications encompass for example autonomous accelerators, segmentation of bio-degradable bone implants. particle physics simulations and track detection, automated processing of electron microscopy images. These pages give a brief overview of AI related activities at DESY, and offer opportunities for groups and projects to present themselves and their research fields.
Accelerators
Machine Learning for optimization of design and automated system control of particle accelerators
Astroparticles
Machine Learning to investigate high-energy processes in the universe.
Particles
Machine Learning in high-energy particle physics
Photon Science
Machine Learning in various fields of photon and nano science
European XFEL
Machine Learning in data handling and analysis at the X-ray Free Electron Laser
Structural Biology
Machine Learning applied to investigations in structural biology
Materials
Machine Learning driven investigation and design of materials