Tag: neural networks
CNEL Seminar: Ivan Ruchkin
November 3, 2023Dr. Ivan Ruchkin is an assistant professor at the Department of Electrical and Computer Engineering, University of Florida, where he leads the Trustworthy Engineered Autonomy (TEA) Lab. He presents “Calibration Guarantees for Closed-Loop Safety Chance Prediction” Wednesday, Nov. 8 at 3:00pm in NEB 589.
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February 23, 2023Firas Laakom is a doctoral student at Tampere University, Finland. He presents “Feature Diversity Regularization for Neural Networks” Wednesday, March 1 at 3:00pm in NEB 409.
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CNEL Seminar: Bo Hu
January 27, 2023Bo Hu is a PhD student in the Department of Electrical & Computer Engineering at the University of Florida. He presents “Quantification of Statistical Dependence in Random Processes” Wednesday, Feb. 8 at 3:00pm in NEB 409.
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Seminar: Moncef Gabbouj
November 1, 2022Dr. Moncef Gabbouj is a professor of information technology at the Department of Computing Sciences, Tampere University, Tampere, Finland. He presents “The Super Neuron Model—A new generation of ANN-based Machine Learning and Applications” Thursday, Nov. 3 at 3:30pm in NEB 409.
Read more: Seminar: Moncef Gabbouj »Seminar: Michel A. Kinsy
February 1, 2021Dr. Michel A. Kinsy is an associate professor in the Department of Electrical and Computer Engineering Texas A&M University (TAMU). He presents “Securing Execution of Neural Network Models on Edge Device” Thursday, Feb. 18 at 1:00pm via Zoom.
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January 17, 2020Shreya Saxena is currently a Swiss National Science Foundation Postdoctoral Fellow at Columbia University’s Zuckerman Mind Brain Behavior Institute. She presents “Neural control of movement: How we move fast, why we fail, and how we can design interventions,” Thursday, Jan. 23 @1:00 pm in LAR 330.
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Seminar: Yunye Gong
February 6, 2019Yunye Gong is a Ph.D. candidate in Electrical and Computer Engineering at Cornell University. She presents “Computational image understanding via statistical inference and machine learning” Thursday, Feb. 28 @ 11:45 am, LAR 310.
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