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TZID:Europe/Stockholm
X-LIC-LOCATION:Europe/Stockholm
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TZNAME:CEST
DTSTART:19700308T020000
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DTSTART:19701101T020000
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DTSTAMP:20260624T171343Z
LOCATION:Bldg. 8 - B 102
DTSTART;TZID=Europe/Stockholm:20260629T173000
DTEND;TZID=Europe/Stockholm:20260629T180000
UID:submissions.pasc-conference.org_PASC26_sess144_msa226@linklings.com
SUMMARY:Toward FAIR and Reproducible Dark Matter Science: Co-Design of Dat
 a Infrastructure, AI Workflows, and Community Datasets
DESCRIPTION:Belina von Krosigk (Kirchhoff-Institute for Physics (KIP)), Am
 y Roberts (University of Colorado Denver), and Michela Taufer (University 
 of Tennessee)\n\nDark matter constitutes approximately 85% of the universe
 's matter, yet its nature remains elusive. Direct detection experiments, t
 hough globally deployed, have historically generated data locked within cu
 stom formats and non-reproducible software stacks — limiting interdiscipli
 nary analysis and innovation. As AI and machine learning become integral t
 o scientific workflows, ensuring data are FAIR and accompanied by rigorous
  provenance is essential for reproducibility and trust. This minisymposium
  uses dark matter science as a concrete case study in co-designing data in
 frastructure and AI-ready workflows. Centered on the National Science Data
  Fabric (NSDF) and the SuperCDMS collaboration, three talks address this c
 hallenge from complementary angles: rethinking data formats and computing 
 using DELight as a testbed for future experiments; establishing metadata s
 tandards that make AI-driven analyses reproducible and auditable; and buil
 ding an open community dataset by converting proprietary detector data int
 o accessible, machine-learning-ready formats. Together, these case studies
  show how federated, inclusive data ecosystems broaden participation and s
 trengthen confidence in scientific results — directly aligned with the PAS
 C26 theme, "Building Trust in Science through HPC Co-Design."\n\nDomain: P
 hysics, Computational Methods and Applied Mathematics\n\nSession Chairs: M
 ichela Taufer (University of Tennessee), Amy Roberts (University of Colora
 do Denver), and Belina von Krosigk (Kirchhoff-Institute for Physics (KIP))
 \n\n
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