Online tutorial on how to use Ensemble Machine Learning for spatial and spatiotemporal interpolation / predictions
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Updated
Mar 13, 2023 - TeX
Online tutorial on how to use Ensemble Machine Learning for spatial and spatiotemporal interpolation / predictions
Contact: Maximilian Bachl, Alexander Hartl. Explores defenses against backdoors and poisoning attacks for Intrusion Detection Systems. Code for "EagerNet" is in the "eager" branch.
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LaTeX source file for my Computer Science Thesis "Clinical Data Management Processes and Predictive Machine Learning Models Development for Diagnosis and Rehabilitation in the Cardiovascular Domain", which spans over 100 pages. Research was conducted in collaboration with the multinational company Dedalus
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