PhD Seminar • Artificial Intelligence — Computer Vision on Web Pages: A Study of Man-Made Images
Michael Cormier, PhD candidate
David R. Cheriton School of Computer Science
Michael Cormier, PhD candidate
David R. Cheriton School of Computer Science
Matei Ripeanu, Department of Electrical and Computer Engineering
University of British Columbia
Abdullah Rashwan, PhD candidate
David R. Cheriton School of Computer Science
Sum-product networks have recently emerged as an attractive representation due to their dual view as a special type of deep neural network with clear semantics and a special type of probabilistic graphical model for which inference is always tractable. Those properties follow from some conditions (i.e., completeness and decomposability) that must be respected by the structure of the network.
Cecylia Bocovich, PhD candidate
David R. Cheriton School of Computer Science
Circumventing state firewalls! Détournement! Doctor Who references! Now with higher bandwidth!
Sverrir Thorgeirsson, PhD candidate
David R. Cheriton School of Computer Science
Chelsea Komlo, HashiCorp
Privacy Enhancing Technology communities rely on the research community for help designing and validating protocols, finding potential attack vectors, and applying new technological innovations to existing protocols. However, while the research community has made significant progress studying projects such as Tor, the number of research outcomes that have actually been incorporated into privacy enhancing technologies such as The Tor Project is lower than the number of feasible and useful research outcomes.
Matthew Finkel, The Tor Project
There are hundreds of millions of new "smart" mobile device users every year, but the mobile ecosystem and infrastructure are designed and built for optimizing convenience, not protecting the privacy of the user. From a design flaw in the Internet Protocol to an abundence of physical sensors, a mobile device may tell a third-party more information than the user intended or wanted.
Torben Bach Pedersen, Professor of Computer Science
Aalborg University
Data collected from new sources such as sensors and smart devices is large, fast, and often complex. There is a universal wish to perform multidimensional OLAP-style analytics on such data, i.e., to turn it into “Big Multidimensional Data.” Supporting this is a multi-stage journey, requiring new tools and systems, and forming a new, extended data cycle with models as a key concept. We will look at three specifics steps in this data cycle.
Daniel M. Berry
David R. Cheriton School of Computer Science
Dan Berry weaves the twin peaks of (1) his life in computing, programming, programming languages, software engineering, electronic publishing, and requirements engineering with (2) the almost concurrent development of programming languages, software engineering, and requirements engineering.
Anil Pacaci, PhD candidate
David R. Cheriton School of Computer Science