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Tag Archives: Amina Mollaysa
PhD Thesis defense of Amina Mollaysa
Amina Mollaysa will defend her PhD Thesis entitled "Structural and Functional Regularization of Deep Learning Models" on Friday 26/02/2021, at 15h00 CET. If you are interested in attending the PhD defence of Amina Mollaysa, please send an email with the title "Thesis defense Mollaysa - Zoom" to alexandros.kalousis@hesge.ch to receive the Zoom link.
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Tagged Amina, Amina Mollaysa, deep leaning, generative modeling, phd, phd in machine learning, Thesis, VAE
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Papers in NeurIPS 2020
We are very happy to announce that the members of our team have had two accepted papers in NeurIPS 2020!
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Tagged Alexandros Kalousis, Amina, Amina Mollaysa, internships, Jason, Jason Ramapuram, NeurIPS, NIPS, NIPS conference, papers
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Paper presentation in ACML 2019
Amina presented her recent work Learning to Augment with Feature Side-information in this year's edition of ACML, which took place in the beautiful Nagoya, in Japan. Attending this conference has been a great opportunity to follow the latest advancements of the field, … Continue reading
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Tagged ACML, Amina, Amina Mollaysa, conderence, paper, presentation
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