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DTSTART:20221106T010000
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DESCRIPTION:Cognitive EW: Assuring In-Mission Learning for EW\n\nThis prese
 ntation will discuss the challenges for assuring the performance of a syst
 em that can learn from novel experiences in the field. EW systems operate 
 at a timescale that means they cannot afford to learn post-mission\, or wi
 th human supervision. EW systems must learn from a single observation\, us
 ing self-supervised reinforcement feedback. The validation infrastructure 
 must therefore support automated closed-loop\, multi-resolution testing\, 
 and ways to test the effectiveness of actions. We must validate the learni
 ng process\, rather than validating the learned model.\n\nSpeaker(s): Dr. 
 Karen Haigh\, \n\nAgenda: \n630 - 700PM ARRIVAL\, REFRESHMENT &amp; DINNER\n\n
 700 - 800PM EW PRESENTATION\n\n800 - 830PM Q&amp;A\n\nRoom: Usual Meeting Area
 \, Bldg: Moose Lodge #1406\, 157 Dayton Blvd \, Melbourne\, Florida\, Unit
 ed States\, 32904
LOCATION:Room: Usual Meeting Area\, Bldg: Moose Lodge #1406\, 157 Dayton Bl
 vd \, Melbourne\, Florida\, United States\, 32904
ORGANIZER:bob.beck@ieee.org
SEQUENCE:11
SUMMARY:Cognitive Electronic Warfare: Assuring in-mission learning for EW b
 y Karen Haigh
URL;VALUE=URI:https://events.vtools.ieee.org/m/343757
X-ALT-DESC:Description: &lt;br /&gt;&lt;p&gt;Cognitive EW: Assuring In-Mission Learning
  for EW&lt;/p&gt;\n&lt;p&gt;This presentation will discuss the challenges for assuring
  the performance of a system that can learn from novel experiences in the 
 field. EW systems operate at a timescale that means they cannot afford to 
 learn post-mission\, or with human supervision. EW systems must learn from
  a single observation\, using self-supervised reinforcement feedback. The 
 validation infrastructure must therefore support automated closed-loop\, m
 ulti-resolution testing\, and ways to test the effectiveness of actions. W
 e must validate the learning process\, rather than validating the learned 
 model.&lt;/p&gt;&lt;br /&gt;&lt;br /&gt;Agenda: &lt;br /&gt;&lt;p&gt;630 - 700PM&amp;nbsp\; &amp;nbsp\;ARRIVAL\,
  REFRESHMENT &amp;amp\; DINNER&lt;/p&gt;\n&lt;p&gt;700 - 800PM&amp;nbsp\; &amp;nbsp\;EW PRESENTATI
 ON&lt;/p&gt;\n&lt;p&gt;800 - 830PM&amp;nbsp\; &amp;nbsp\;Q&amp;amp\;A&lt;/p&gt;
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