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Jeff Andrews Receives 2021 Qualcomm Faculty Award

Sept. 14, 2020
WNCG's Prof. Jeff Andrews has been named as a recipient of a 2021 Qualcomm Faculty Award. The Qualcomm Faculty Award (QFA) "supports key professors and their research through a $75,000 charitable donation to their university. The goal of the QFA funding is to strengthen Qualcomm’s engagement with faculty who are playing a key role in our recruiting of top graduate students."
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WNCG Director Sanjay Shakkottai Receives 2017 Qualcomm Faculty Award

June 27, 2017
Prof. Sanjay Shakkottai received a 2017 Qualcomm Faculty Award. The award supports key professors and their research at leading universities across the country. This program connects Qualcomm with top academic researchers in hardware, software, and systems to help track the latest discoveries and facilitate new collaborations between industry and academia.
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Prof. Sanjay Shakkottai and Prof. Mohit Tiwari Receive 2017 Qualcomm Faculty Awards

May 1, 2017
Mohit Tiwari and Sanjay Shakkottai, Texas ECE professors, have received 2017 Qualcomm Faculty Awards. Qualcomm encourages partnerships among engineers from hardware, software, and systems maintain close relationships with key universities to keep track of their latest discoveries and facilitate new collaborations. The Qualcomm Faculty Award (QFA) is one of the programs that the company uses to support key professors and their research at leading universities identified by the company.
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Prof. Joydeep Ghosh Gives Keynotes at WDDL2013 and DMH 2013

Sept. 3, 2013
Prof. Joydeep Ghosh of UT ECE was the keynote speaker at the inaugural Workshop on Divergences and Divergence Learning (WDDl), held in Atlanta, June 2013. In his talk, entitled "Learning Bregman Divergences for Prediction with Generalized Linear Models," which reflects joint work with ECE and WNCG student Sreangsu Acharrya,  an efficient approach to learning a broad class of predictive models was introduced. What is most remarkable about this approach is that model parameters can be estimated even when the loss function is unknown.