AIOP Oct. 14, 2024
The current weekly meeting time is every other Monday at 13:00 US/Eastern
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Meeting ID: 160 515 9491
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Meeting URL: https://jlab-org.zoomgov.com/j/1605159491?pwd=ZnB0Vkp0SCtYZmRPWG1hRGVnQVprUT09&from=addon
Meeting ID: 160 515 9491
Passcode: 680042
AIOP - Polarized Target
Agenda:
- Previous Meeting
- Announcements
- Conferences/Workshops
- CHEP2024 (Oct. 19-25, Krakow, Poland)Oral presentation accepted (Torri)
- ICFA Beam Dynamics Mini-Workshop on Machine Learning for Particle Accelerators (Apr. 8-11 CERN)
- Project Progress
- Data mining/preparation
- GitHub AIOP Project (AIOP-Target issues)
- Milestones: PDF(GitHub AIOP Project AIOP-Target issues FTE Profiles)
- PIER Activities
- Middle School Data Science Hackathon Workshop (Oct. 16)
HUGS mini-Workshop- COMPLETED!
- AOT
Minutes
- AIOP target 9-30
- Attendees: Thomas, Malachi, Patrick, Armen, David, Torri
- Talks
- Patrick should post his slides
- Torri is half done with the AIOP CHEP talk
- Progress
- Torri Slides
- Reviewed lack of and odd correlation plots
- Split by Anneal (dosing)
- Showed a dose vs index plot
- Irregular number of indices in each data file
- Same baseline for many runs
- Showed own fits with a third order (background)
- Nothing jumping out
- Suggested looking at baseline sub
- Armen
- A trip down memory lane
- No version control
- Copy paste galore!
- Moved from scikit/jupyter to JLab core and BoTorch
- Showed a really good model that fits true values well
- Found a bug in model loading preventing newer models from being used
- Continuing migration to JLab Core
- Can look at outliers
- David + Thomas want to see prediction vs true by time
- Torri Slides