<?xml version="1.0" encoding="UTF-8"?><rss xmlns:dc="http://purl.org/dc/elements/1.1/" xmlns:content="http://purl.org/rss/1.0/modules/content/" xmlns:atom="http://www.w3.org/2005/Atom" version="2.0" xmlns:media="http://search.yahoo.com/mrss/"><channel><title><![CDATA[Thesis Defense - Matthias Lee - Musings on Software and Performance Engineering]]></title><description><![CDATA[Matthias Lee is a Software Performance Engineer, Technical Lead and Computer Science PhD. Currently a Principal Performance Engineer at Appian.]]></description><link>https://matthiaslee.com/</link><image><url>https://matthiaslee.com/favicon.png</url><title>Thesis Defense - Matthias Lee - Musings on Software and Performance Engineering</title><link>https://matthiaslee.com/</link></image><generator>Ghost 2.14</generator><lastBuildDate>Mon, 02 Mar 2020 14:52:37 GMT</lastBuildDate><atom:link href="https://matthiaslee.com/tag/thesis-defense/rss/" rel="self" type="application/rss+xml"/><ttl>60</ttl><item><title><![CDATA[Thesis Defense: Data Fusion at Scale in Astronomy]]></title><description><![CDATA[We are facing a deluge of data streaming in from countless sources and across virtually all disciplines. Data intensive sciences such as astronomy expect to collect 100 PB in 10 years from a one survey. The challenge is keeping up with these data rates and extracting meaningful information.]]></description><link>https://matthiaslee.com/data-fusion-at-scale-in-astronomy/</link><guid isPermaLink="false">5b79995bb969240001d44e72</guid><category><![CDATA[Computational Optics]]></category><category><![CDATA[performance]]></category><category><![CDATA[Thesis Defense]]></category><dc:creator><![CDATA[Matthias A. Lee]]></dc:creator><pubDate>Wed, 16 Aug 2017 16:22:00 GMT</pubDate><media:content url="https://matthiaslee.com/content/images/2018/08/matthias-lee_thesis-defense.png" medium="image"/><content:encoded><![CDATA[<h2 id="timeandlocation">Time and Location</h2>
<img src="https://matthiaslee.com/content/images/2018/08/matthias-lee_thesis-defense.png" alt="Thesis Defense: Data Fusion at Scale in Astronomy"><p>August 29, 2017 @ 2:00 pm – 4:00 pm<br>
<a href="https://goo.gl/maps/8e5jpsKMRQk">Malone Hall 228</a></p>
<h2 id="abstract">Abstract</h2>
<p>We have arrived in an era where we face a deluge of data streaming in from countless sources and across virtually all disciplines; This holds especially true for data intensive sciences such as astronomy where upcoming surveys such as the LSST are expected to collect tens of terabytes per night, upwards of 100 Petabytes in 10 years. The challenge is keeping up with these data rates and extracting meaningful information from them. We present a number of methods for combining and distilling vast astronomy datasets using GPUs. In particular we focus on cross-matching catalogs containing close to 0.5 Billion sources, optimally combining multi-epoch imagery and computationally extracting color from monochrome telescope images.</p>
<p><strong><a href="https://www.cs.jhu.edu/events/student-matthias-a-lee-johns-hopkins-university-high-performance-cross-matching-and-computational-optics-for-telescopes/">JHU Announcement</a></strong></p>
<p><strong><a href="https://matthiaslee.com/pub/Matthias-Lee-2017-Thesis-defense.pdf">Final Slides</a></strong></p>
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