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people:david [2020/07/29 10:40] David Peer |
people:david [2020/10/14 12:27] David Peer |
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==== PhD Student ==== | ==== PhD Student ==== | ||
- | David Peer is currently a PhD student in the Intelligent and Interactive System group of the department of Computer Science at the Universität Innsbruck (Austria) under the supervision of Antonio Rodriguez-Sanchez. He obtained the degree of M.Sc and B.Sc in Computer Science at the Universität Innsbruck (Austria). His current research interest include explainable ai (especially learning mechanisms), learning theory and deep learning. | + | David Peer is currently a PhD student in the Intelligent and Interactive System group at the Universität Innsbruck (Austria) under the supervision of Antonio Rodriguez-Sanchez. He worked 10 years in the industry as a software developer and obtained the degree of M.Sc and B.Sc in Computer Science at the Universität Innsbruck (Austria). He currently studies the gap between expressivity and learnability of neural networks. |
[[https://scholar.google.com/citations?user=THmkZOIAAAAJ|Google Scholar]] | [[https://scholar.google.com/citations?user=THmkZOIAAAAJ|Google Scholar]] | ||
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=== Areas of Interest === | === Areas of Interest === | ||
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- | * Explainable AI (especially learning mechanisms) - I'm really interested why neural networks often can not learn from data\\ | + | * Understanding the gap between expressivity ([[https://arxiv.org/pdf/1905.08744.pdf|1]]) and learnability of neural networks \\ |
- | * Learning Theory - See also [[https://www.cs.huji.ac.il/~shais/UnderstandingMachineLearning/|Understanding Machine Learning: From Theory to Algorithms]]\\ | + | * Deep Learning, Machine Learning, Computer Vision, [[https://www.cs.huji.ac.il/~shais/UnderstandingMachineLearning/|Learning Theory]]\\ |
- | * Machine Learning, Deep Learning, Computer Vision \\ | + | * Climbing, hiking, etc. |
=== Positions === | === Positions === |