Michael Moser is a data scientist with 10 years of experience applying machine learning and deep learning to healthcare and physics problems. Currently at Siemens Healthineers, he builds near real-time data pipelines and predictive maintenance solutions for CT machines using Python, Spark, TensorFlow/Scikit-learn and Azure Databricks, while driving product ownership and CI/CD practices. His background includes a PhD-level research track developing convolutional neural network reconstruction pipelines for the KM3NeT neutrino detector and leading its ML working group, where he created the Keras-based OrcaNet library. Comfortable bridging research and production, he supervises student projects, authors open-source tools (github.com/ViaFerrata), and brings physics-driven rigor to practical ML systems.
10 years of coding experience
3 years of employment as a software developer
Bachelor of Science (B.Sc.), Physics, 1.8, Bachelor of Science (B.Sc.), Physics, 1.8 at Friedrich-Alexander-Universität Erlangen-Nürnberg
Master of Science with honors (M.Sc.), Physics, Master of Science with honors (M.Sc.), Physics at 大阪大学
Makes images for a NN based on the hit information of neutrino events in the neutrino telescope KM3NeT-ORCA
Contributions:102 commits, 1 PR, 422 pushes in 1 year 8 months
eventsneutrinodeep-learningorcahit
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