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DESCRIPTION:Events from ScaDS.AI
X-WR-CALDESC:Events from ScaDS.AI
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TZID:Europe/Berlin
BEGIN:STANDARD
DTSTART:20141026T030000Z
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BEGIN:DAYLIGHT
DTSTART:20150329T020000Z
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BEGIN:STANDARD
DTSTART:20151025T030000Z
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DTSTART:20250926T124341Z
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UID:199-188
DTSTAMP:20260623T124341Z
SUMMARY:Guest Lecture: Selected Parallel and Scalable Methods for Scientifi
 c Big Data Analytics
LOCATION:
ORGANIZER;CN=SCADS:MAILTO:webmaster@puls13.com
DTSTART;TZID=Europe/Berlin:20150521T150000
DTEND;TZID=Europe/Berlin:20150521T163000
X-ALT-DESC;FMTTYPE=TEXT/HTML:The goal of this talk is to inform participant
 s about two concrete and widely used data analytics techniques that are su
 itable to analyse ‘big data’ for scientific and engineering applicatio
 ns. After a brief introduction to the general approach of using machine le
 arning\, data mining\, and statistical computing in data analytics\, the t
 alk will offer details&amp;hellip\;
CATEGORIES:Research
URL;VALUE=URI:https://scads.ai/calendar/guest-lecture-selected-parallel-and
 -scalable-methods-for-scientific-big-data-analytics/
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