Difference between revisions of "AI Optimized Polarization"

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== Documentation ==
 
== Documentation ==
 
* Proposal: [https://www.overleaf.com/project/636ebdb8f12e5e40fc6750ab overleaf], [[Media:FOA_002875_AIEC_v0.3.pdf|PDF]]
 
* Proposal: [https://www.overleaf.com/project/636ebdb8f12e5e40fc6750ab overleaf], [[Media:FOA_002875_AIEC_v0.3.pdf|PDF]]
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=== Target ===
 
* Victoria Lagerquist's thesis: [https://www.jlab.org/Hall-B/general/thesis/VLagerquist_thesis.pdf Design and Construction of a Longitudinally Polarized Solid Nuclear Target for CLAS12]
 
* Victoria Lagerquist's thesis: [https://www.jlab.org/Hall-B/general/thesis/VLagerquist_thesis.pdf Design and Construction of a Longitudinally Polarized Solid Nuclear Target for CLAS12]
 
* Noémie's polarization extracted from elastic scattering: [https://clasweb.jlab.org/wiki/index.php/Elastic_Analysis_for_PbPt_Extraction Elastic Analysis for PbPt extraction]
 
* Noémie's polarization extracted from elastic scattering: [https://clasweb.jlab.org/wiki/index.php/Elastic_Analysis_for_PbPt_Extraction Elastic Analysis for PbPt extraction]

Revision as of 12:49, 25 April 2024


Meetings

Repositories

Raw data storage

  • Photon Source: /work/halld3/home/AIOP/source/
  • Target: /work/halld3/home/AIOP/target/

Presentations/Papers

Date Presenter Event Slides Proceedings

Experimental Data Locations

Run Group C, 2022-23

  • /group/poltar/HallB/RGC
    • Proton data in directory data-p
    • Deuteron data in directory data-d

SANE, 2009

  • /group/poltar/HallC/SANE
    • all_data.csv contains NMR system meta-data
    • epics_export.txt contains EPICS meta-data
    • events folder contains online data with raw NMR signals
    • Several ipynb files give examples of reading the above files

Documentation

Target

Resources

Title/Link Type Notes
The Stonehenge Technique. A new method for aligning coherent bremsstrahlung radiators (NIM, arXiv) Paper
Coherent Bremsstrahlun of Electrons in Crystals(GlueX DocDB) Paper
Development of Novel Attention-Aware Deep Learning Models and Their Applications in Computer Vision and Dynamical System Calibration Thesis