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		<channel><title>Special Lecture</title><link>http://www-math.umd.edu/research/seminars.html</link><description></description><item>
	<title>Quantum Information Measures, Matrix Analysis and Recoverability</title>
	<link>http://www-math.umd.edu/research/seminars.html</link>
	<pubDate>Wed, 17 Jul 2019 11:00:00 EDT</pubDate>
	<description><![CDATA[When: Wed, July 17, 2019 - 11:00am<br />Where: PSC 3150<br />Speaker: Marco Tomamichel (University of Technology Sydney) - https://marcotom.info<br />
Abstract: I will present several developments that collectively give us a fruitful new perspective on a fundamental result in quantum information theory, the strong sub-additivity of quantum entropy. I will start by discussing quantum entropy and other information measures, and explain why they are emphatically more interesting and delicate than their commutative analogues. While exploring some of their properties we will encounter the Golden-Thompson inequality which illustrates the mathematical challenges faced when dealing with functions of matrices that do not commute. We will then see how the Golden-Thompson and other norm inequalities can be generalized from two to arbitrarily many matrices using complex interpolation theory.  Closing the circle, we will see how the resulting multivariate trace inequality can be used to strengthen strong sub-additivity of quantum entropy, leading us to strong bounds on the recoverability of quantum information.<br />
 <br />
This talk is based on work in arXiv:1512.02615, arXiv:1604.03023, and arXiv:1609.01999.<br />]]></description>
</item>

<item>
	<title>Ph.D. Preliminary Oral Exam - Jiaqi Zhou </title>
	<link>http://www-math.umd.edu/research/seminars.html</link>
	<pubDate>Wed, 25 Sep 2019 09:30:00 EDT</pubDate>
	<description><![CDATA[When: Wed, September 25, 2019 - 9:30am<br />Where: 1310 Kirwan Hall<br /><br />
 TOPIC: Revenue Management of Observable Express Service with Customer Choice<br />]]></description>
</item>

<item>
	<title>Ph.D. Preliminary Oral Exam - Kayla Davie</title>
	<link>http://www-math.umd.edu/research/seminars.html</link>
	<pubDate>Fri, 18 Oct 2019 10:00:00 EDT</pubDate>
	<description><![CDATA[When: Fri, October 18, 2019 - 10:00am<br />Where: 1310 Kirwan Hall<br />TOPIC: Preconditioners for PDE-Constrained Optimization Problems<br />]]></description>
</item>

<item>
	<title>Ph.D. Preliminary Oral Exam - David Russell</title>
	<link>http://www-math.umd.edu/research/seminars.html</link>
	<pubDate>Tue, 22 Oct 2019 14:00:00 EDT</pubDate>
	<description><![CDATA[When: Tue, October 22, 2019 - 2:00pm<br />Where: <br />TOPIC: Ensemble Methods for Lagrangian Data Assimilation<br />]]></description>
</item>

<item>
	<title>Ph.D. Preliminary Oral Exam - Nathan Yu</title>
	<link>http://www-math.umd.edu/research/seminars.html</link>
	<pubDate>Wed, 23 Oct 2019 11:00:00 EDT</pubDate>
	<description><![CDATA[When: Wed, October 23, 2019 - 11:00am<br />Where: <br /><br />
MTH 2400TOPIC: Confounding in Spatial Gaussian Linear Mixed Models<br />]]></description>
</item>

<item>
	<title>Ph.D. Preliminary Oral Exam</title>
	<link>http://www-math.umd.edu/research/seminars.html</link>
	<pubDate>Mon, 28 Oct 2019 09:30:00 EDT</pubDate>
	<description><![CDATA[When: Mon, October 28, 2019 - 9:30am<br />Where: 1310 Kirwan Hall<br />TOPIC: Bayesian Hierarchical Models for Evidence Synthesis<br />]]></description>
</item>

<item>
	<title>Ph.D. Preliminary Oral Exam - Mirna Pinsky</title>
	<link>http://www-math.umd.edu/research/seminars.html</link>
	<pubDate>Fri, 15 Nov 2019 10:00:00 EST</pubDate>
	<description><![CDATA[When: Fri, November 15, 2019 - 10:00am<br />Where: MTH 1310<br />TOPIC: Lagrangian Mean Curvature Flow and Milnor Fibres<br />]]></description>
</item>

<item>
	<title>Ph.D. Final Oral Exam - Cara Peters</title>
	<link>http://www-math.umd.edu/research/seminars.html</link>
	<pubDate>Mon, 18 Nov 2019 09:00:00 EST</pubDate>
	<description><![CDATA[When: Mon, November 18, 2019 - 9:00am<br />Where: 1310 Kirwan Hall<br />TOPIC: Modeling Imatinib-Treated Chronic Myelogenous Leukemia and the Immune System<br />]]></description>
</item>

<item>
	<title>Yixin Ren -Ph.D. FINAL ORAL EXAM</title>
	<link>http://www-math.umd.edu/research/seminars.html</link>
	<pubDate>Tue, 19 Nov 2019 10:00:00 EST</pubDate>
	<description><![CDATA[When: Tue, November 19, 2019 - 10:00am<br />Where: Kirwan Hall 3206<br />TOPIC:  Regression Analysis of Recurrent Events with Measurement Errors<br />]]></description>
</item>

<item>
	<title>Ph.D. Preliminary Oral Exam - Yichun Zhu</title>
	<link>http://www-math.umd.edu/research/seminars.html</link>
	<pubDate>Mon, 25 Nov 2019 10:00:00 EST</pubDate>
	<description><![CDATA[When: Mon, November 25, 2019 - 10:00am<br />Where: 1310 Kirwan Hall<br />Smoluchowski-Kramers approximation with Application to a Charged Magnetic Field  <br />]]></description>
</item>

<item>
	<title>Ph.D. Final Oral Exam  - Xu Zhang</title>
	<link>http://www-math.umd.edu/research/seminars.html</link>
	<pubDate>Tue, 03 Dec 2019 14:00:00 EST</pubDate>
	<description><![CDATA[When: Tue, December 3, 2019 - 2:00pm<br />Where: 3332 Van Munching Hall<br />Topic: New Statistical Methods to Better Leverage Emerging Health Care Utility Data  <br />]]></description>
</item>

<item>
	<title>Ph.D. Preliminary Oral Exam - Shin Eui  Song </title>
	<link>http://www-math.umd.edu/research/seminars.html</link>
	<pubDate>Mon, 09 Dec 2019 14:00:00 EST</pubDate>
	<description><![CDATA[When: Mon, December 9, 2019 - 2:00pm<br />Where: 1310 Kirwan Hall<br />TOPIC: Yoshida’s Approach to the Depth 0 Local Langlands Correspondence  <br />]]></description>
</item>

<item>
	<title>Ph.D. Final Oral Exam - Tianhui Zhang</title>
	<link>http://www-math.umd.edu/research/seminars.html</link>
	<pubDate>Mon, 16 Dec 2019 13:30:00 EST</pubDate>
	<description><![CDATA[When: Mon, December 16, 2019 - 1:30pm<br />Where: 1310 Kirwan Hall<br />TOPIC:  Markov multi-state models for survival analysis with recurrent events  <br />]]></description>
</item>

<item>
	<title>Anomalous dissipation for passive scalars</title>
	<link>http://www-math.umd.edu/research/seminars.html</link>
	<pubDate>Mon, 27 Jan 2020 15:00:00 EST</pubDate>
	<description><![CDATA[When: Mon, January 27, 2020 - 3:00pm<br />Where: Kirwan Hall 3206<br />Speaker: Theodore Drivas (Princeton University) - https://web.math.princeton.edu/~tdrivas/<br />
Abstract: We study anomalous dissipation in hydrodynamic turbulence<br />
in the context of passive scalars. We give an example of a rough divergence-free<br />
velocity field that explicitly exhibits anomalous dissipation for passive scalars.<br />
The mechanism for scalar dissipation is a built-in direct energy cascade in the<br />
synthetic velocity field.  Connections to the Obukhov–Corrsin monofractal theory<br />
of scalar turbulence and to inviscid mixing will be discussed. This is joint work<br />
with T. Elgindi, G. Iyer and I-J Jeong.<br />]]></description>
</item>

<item>
	<title>On the stability of quasi-periodic motion in real analytic Hamiltonian dynamics</title>
	<link>http://www-math.umd.edu/research/seminars.html</link>
	<pubDate>Fri, 07 Feb 2020 14:00:00 EST</pubDate>
	<description><![CDATA[When: Fri, February 7, 2020 - 2:00pm<br />Where: 3206 Kirwan Hall<br /><br />
Speaker: Bassam Fayad ( Institut de Mathematiques de Jussieu-Paris Rive Gauche  )<br />
Dynamical Systems seminar<br />]]></description>
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<item>
	<title>Department Hiring Meeting</title>
	<link>http://www-math.umd.edu/research/seminars.html</link>
	<pubDate>Wed, 19 Feb 2020 15:15:00 EST</pubDate>
	<description><![CDATA[When: Wed, February 19, 2020 - 3:15pm<br />Where: Kirwan 3206<br /><br />]]></description>
</item>

<item>
	<title>Flows of Vector Fields: Classical and modern</title>
	<link>http://www-math.umd.edu/research/seminars.html</link>
	<pubDate>Wed, 04 Mar 2020 11:00:00 EST</pubDate>
	<description><![CDATA[When: Wed, March 4, 2020 - 11:00am<br />Where: Kirwan Hall 3206<br />Speaker: Camillo De Lellis (Institute for Advanced Studies, Princeton) - <br />
Abstract: Consider a (possibly time-dependent) vector field v on the Euclidean<br />
space. The classical Cauchy-Lipschitz (also named Picard-Lindelöf)<br />
Theorem states that, if the vector field v is Lipschitz in space, for<br />
every initial datum x there is a unique trajectory γ starting at x at<br />
time 0 and solving the ODE γ̇(t) = v(t, γ(t)). The theorem looses its<br />
validity as soon as v is slightly less regular. However, if we bundle all<br />
trajectories into a global map allowing x to vary, a celebrated theory<br />
put forward by DiPerna and Lions in the 80es show that there is a<br />
unique such flow under very reasonable conditions and for much less<br />
regular vector fields. A long-standing open question is whether this<br />
theory is the byproduct of a stronger classical result which ensures the<br />
uniqueness of trajectories for almost every initial datum. I will give<br />
a complete answer to the latter question and draw connections with<br />
partial differential equations, harmonic analysis, probability theory and<br />
Gromov’s h-principle.<br />]]></description>
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<item>
	<title>Quantifying Flows in Time-Irreversible Markov Chains</title>
	<link>http://www-math.umd.edu/research/seminars.html</link>
	<pubDate>Fri, 27 Mar 2020 12:30:00 EDT</pubDate>
	<description><![CDATA[When: Fri, March 27, 2020 - 12:30pm<br />Where: Zoom link: https://umd.zoom.us/j/7523175184<br />Speaker: Danielle Middlebrooks (UMCP) - https://amsc.umd.edu/people/profiles/student-profiles/2-uncategorised/129-danielle-middlebrooks.html<br />
Abstract: Markov chains are among the most well known and established probabilistic models and have long been developed, studied and applied to real world problems. The simplicity of these models makes them interesting in theoretical studies as well as extremely flexible to analyze in applications. In comparison with classic Markov chains, the size and complexity of networks arising in contemporary applications has grown dramatically. In many applications, it is of interest to study transition processes in large and complex networks. Our goal is to develop efficient computational tools for the study of flows in large and complex time-irreversible Markov chains. In this prospectus, I will give an insight into my dissertation research and provide a necessary background for it. The research involves three major parts: (1) we propose a general framework for designing modified Markov chains in order to quantify transitions in time-irreversible Markov chains, (2) provide a theorem justifying the construction, and (3) we propose a so-called “mutation analysis” for gene regulatory networks allowing one to access their robustness and use the proposed tools to analyze a stochastic budding yeast gene regulatory network.<br />
<br />]]></description>
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<item>
	<title>Final Oral Exam of Micah Goldblum</title>
	<link>http://www-math.umd.edu/research/seminars.html</link>
	<pubDate>Mon, 30 Mar 2020 10:00:00 EDT</pubDate>
	<description><![CDATA[When: Mon, March 30, 2020 - 10:00am<br />Where: Kirwan Hall 3206<br />Speaker: Micah Goldblum (University of Maryland) - <br />
Abstract: Despite the overwhelming success of neural networks for pattern recognition, these models behave categorically different from humans.  Adversarial examples, small perturbations which are often undetectable to the human eye, easily fool neural networks, demonstrating that neural networks lack the robustness of human classifiers.  This defense comprises two parts. First, we develop methods for hardening neural networks against an adversary.  Second, we discuss several mathematical properties of the neural network models we use.  These properties are of interest beyond robustness to adversarial examples, and they extend to the broad setting of deep learning.<br />
<br />
Dissertation directed by: Wojciech Czaja<br />
<br />
In view of recent developments on our campus, the defense will be held virtually on Zoom. The virtual meeting will start at 9:50, and the defense will begin at 10:00 AM on March 30, 2020. As this is new for most of us, I ask you to join during this 10 minute period before 10 AM.<br />
<br />
To attend the virtual defense, please join the Zoom session at the following link:<br />
https://umd.zoom.us/j/834093556<br />
(For regular Zoom users, the meeting ID is: 834 093 556.)<br />
<br />
Zoom sessions can be accessed in the browser or by downloading the Zoom app.  UMD students and faculty can access and join Zoom at umd.zoom.us by using your UMD credentials. Please note that not all web browsers work well with Zoom. Therefore downloading the app is encouraged, esp., for habitual Firefox users.<br />]]></description>
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