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		<channel><title>Special Lecture</title><link>http://www-math.umd.edu/research/seminars.html</link><description></description><item>
	<title>DST Lecture Series: Can We Model Uncertainty?</title>
	<link>http://www-math.umd.edu/research/seminars.html</link>
	<pubDate>Thu, 29 Sep 2016 16:00:00 EDT</pubDate>
	<description><![CDATA[When: Thu, September 29, 2016 - 4:00pm<br />Where: Toll Physics Bldg 1412<br />Speaker: C. David Levermore (UMd) - http://math.umd.edu/~lvrmr<br />
<br />]]></description>
</item>

<item>
	<title>WIM Lecture: Surviving Graduate School and Beyond</title>
	<link>http://www-math.umd.edu/research/seminars.html</link>
	<pubDate>Thu, 13 Oct 2016 16:00:00 EDT</pubDate>
	<description><![CDATA[When: Thu, October 13, 2016 - 4:00pm<br />Where: Kirwan Hall 1310<br />Speaker: Dianne P. O&#039;Leary () - http://www.cs.umd.edu/~oleary/<br />
<br />]]></description>
</item>

<item>
	<title>MathJax Test</title>
	<link>http://www-math.umd.edu/research/seminars.html</link>
	<pubDate>Wed, 07 Dec 2016 09:00:00 EST</pubDate>
	<description><![CDATA[When: Wed, December 7, 2016 - 9:00am<br />Where: Kirwan Hall 1311<br />Speaker: Test (UMD) - http://www.umd.edu<br />
Abstract: $\sum_{i=0}^n i^2 = \frac{(n^2+n)(2n+1)}{6}$<br />]]></description>
</item>

<item>
	<title>TBA - By invitation of the hiring committee</title>
	<link>http://www-math.umd.edu/research/seminars.html</link>
	<pubDate>Tue, 20 Dec 2016 14:00:00 EST</pubDate>
	<description><![CDATA[When: Tue, December 20, 2016 - 2:00pm<br />Where: Kirwan Hall 1308<br />Speaker: Tamas Darvas (UMCP) - <br />
<br />]]></description>
</item>

<item>
	<title>Title: Recent developments on deterministic and probabilistic well-posedness for nonlinear Schrödinger and wave equations.</title>
	<link>http://www-math.umd.edu/research/seminars.html</link>
	<pubDate>Wed, 18 Jan 2017 14:00:00 EST</pubDate>
	<description><![CDATA[When: Wed, January 18, 2017 - 2:00pm<br />Where: Kirwan Hall 1308<br />Speaker: Aynur Bulut (Princeton University) - <br />
Abstract: Dispersive equations such as nonlinear Schrödinger and wave equations<br />
arise as mathematical models in a variety of physical settings,<br />
including models of plasma physics, the propagation of laser beams,<br />
water waves, and the study of many-body quantum mechanics.  They also<br />
serve as model equations for studying fundamental issues in many<br />
aspects of nonlinear partial differential equations.  Key questions in<br />
the analysis of these equations include issues of well-posedness (for<br />
instance, existence of solutions, uniqueness of these solutions, and<br />
their continuous dependence on initial data in appropriate topologies)<br />
locally in time, long-time existence and behavior of solutions, and,<br />
conversely, the possible existence of solutions which blow-up in<br />
finite time.<br />
<br />
In this talk, we will give an overview of several recent results<br />
concerning the local and global (long-time) theory, including some<br />
results where probabilistic tools are used to obtain estimates for<br />
randomly chosen initial data which are not available in deterministic<br />
settings.  A recurring theme (and oftentimes obstacle) is the notion<br />
of supercriticality arising from the natural scaling of the equation —<br />
seeking to characterize long-time behavior of solutions when the<br />
relevant scale-invariant norms are not controlled by the conserved<br />
energy, or for initial data of very low regularity.  The techniques<br />
involved include input from several areas of mathematics, including<br />
ideas arising in many areas of PDE, harmonic analysis, and<br />
probability.<br />
---<br />]]></description>
</item>

<item>
	<title>Rethinking algorithms in Data Science: Scaling up optimization using non-convexity, provably</title>
	<link>http://www-math.umd.edu/research/seminars.html</link>
	<pubDate>Thu, 09 Feb 2017 14:00:00 EST</pubDate>
	<description><![CDATA[When: Thu, February 9, 2017 - 2:00pm<br />Where: Kirwan Hall 3206<br />Speaker: Dr. Anastasios Kyrillidis (UT Austin) - <br />
Abstract: With the quantity of generated data ever-increasing in most research areas, conventional data analytics run into solid computational, storage, and communication bottlenecks. These obstacles force practitioners to often use algorithmic heuristics, in an attempt to  convert data into useful information, fast. It is necessary to rethink the algorithmic design, and devise smarter and provable methods in order to flexibly balance the trade-offs between solution<br />
accuracy, efficiency, and data interpretability.<br />
<br />
In this talk, I will focus on the problem of low rank matrix inference in large-scale settings. Such problems appear in fundamental applications such as structured inference, recommendation systems and multi-label classification problems. I will introduce a novel theoretical framework for analyzing the performance<br />
of non-convex first-order methods, often used as heuristics in practice. These methods lead to computational gains over classic convex approaches, but their analysis is unknown for most problems. This talk will provide precise theoretical guarantees, answering the long-standing question why such non-convex  techniques behave well in practice for a wide class of problems. I will discuss implementation details of these ideas and, if time permits, show the superior<br />
performance we can obtain in applications found in physical sciences and machine learning.<br />]]></description>
</item>

<item>
	<title>WIM Lecture: Career Opportunities for Mathematicians at NSA</title>
	<link>http://www-math.umd.edu/research/seminars.html</link>
	<pubDate>Fri, 24 Feb 2017 15:00:00 EST</pubDate>
	<description><![CDATA[When: Fri, February 24, 2017 - 3:00pm<br />Where: Kirwan Hall 1310<br />Speaker: Susan Carter and Sara Taylor  (NSA) - <br />
<br />]]></description>
</item>

<item>
	<title>Mathematics for Art Investigation</title>
	<link>http://www-math.umd.edu/research/seminars.html</link>
	<pubDate>Thu, 27 Apr 2017 16:00:00 EDT</pubDate>
	<description><![CDATA[When: Thu, April 27, 2017 - 4:00pm<br />Where: Kirwan Hall 3206<br />Speaker: Ingrid Daubechies (Duke University) - https://math.duke.edu/people/ingrid-daubechies<br />
Abstract: Mathematical tools for image analysis increasingly play a role in helping art historians and art conservators assess the state of conversation of paintings, and probe into the secrets of their history.  the talk will review several case studies, Van Gogh, Gauguin, Van Eyck among others.<br />]]></description>
</item>


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