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Wednesday, October 31, 2018 12:15 pm - 12:15 pm EDT (GMT -04:00)

PhD Seminar • Data Systems — Energy Efficiency in Database Servers with Multi-core CPUs

Mustafa Korkmaz, PhD candidate
David R. Cheriton School of Computer Science

Data centers consume significant amounts of energy and consumption is growing each year. Alongside efforts in the hardware domain, there are some mechanisms in the software domain to reduce energy consumption. One of these mechanisms is dynamic voltage and frequency scaling (DVFS) and modern servers which are equipped with multi-core CPUs. 

Thursday, November 1, 2018 10:30 am - 10:30 am EDT (GMT -04:00)

Mathematics Education Seminar — Mathematical Analogies

Andrew Beltaos / Amenda Chow
University of Waterloo / York University

Teaching via analogies builds upon students' existing knowledge. New concepts that are taught only within the context of mathematics may seem foreign to students at first glance, but if students have already learned analogous concepts elsewhere in life, as educators, we can make use of their existing framework to strengthen their learning. 

Amine Mhedhbi, PhD candidate
David R. Cheriton School of Computer Science

We study the problem of optimizing subgraph queries (SQs) using the new worst-case optimal (WCO) join plans in Selinger-style cost-based optimizers. WCO plans evaluate SQs by matching one query vertex at a time using multiway intersections. The core problem in optimizing WCO plans is to pick an ordering of the query vertices to match. 

We make two contributions:

Professor Brian Forrest
Department of Pure Mathematics, University of Waterloo

There are many challenges to teaching mathematics in a fully online environment. In this talk I will show the important role that assigned work plays in mitigating many of these challenges. I will also speak about how my experience in teaching online has impacted the way in which I approach my on campus courses.

Wednesday, November 21, 2018 12:15 pm - 12:15 pm EST (GMT -05:00)

PhD Seminar • Data Systems — Distributed Dependency Discovery

Hemant Saxena, PhD candidate
David R. Cheriton School of Computer Science

We address the problem of discovering dependencies from distributed big data. Existing (non-distributed) algorithms focus on minimizing computation by pruning the search space of possible dependencies. However, distributed algorithms must also optimize data communication costs, especially in current shared-nothing settings. 

Abel Molina, PhD candidate
David R. Cheriton School of Computer Science

Yao (1993) proved that quantum Turing machines and uniformly generated quantum circuits are polynomially equivalent computational models: t >= n steps of a quantum Turing machine running on an input of length n can be simulated by a uniformly generated family of quantum circuits with size quadratic in t, and a polynomial-time uniformly generated family of quantum circuits can be simulated by a quantum Turing machine running in polynomial time.