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The SpeX Prism Library Analysis Toolkit (SPLAT): A Data Curation Model

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 نشر من قبل Adam J. Burgasser
 تاريخ النشر 2017
  مجال البحث فيزياء
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I describe our teams development of the SpeX Prism Library Analysis Toolkit (SPLAT), a combined spectral data repository for over 2500 low-resolution spectra of very low mass dwarfs (late M, L and T dwarfs), and Python-based analysis toolkit. SPLAT was constructed through a collaborative, student-centered, research-based model with high school, undergraduate and graduate students and regional K-12 science teachers. The toolkit enables spectral index analysis, classification, spectrophotometry, atmosphere model comparison, population synthesis, and other analyses. I summarize the current components of this code, sample applications, and future development plans.



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