Fostering the development of Earth data science skills in a diverse community of online learners: A case study of the Earth Data Science Corps

Today’s data-driven world requires earth and environmental scientists to have skills at the intersection of domain and data science. These skills are imperative to harness information contained in a growing volume of complex data to solve the world’s most pressing environmental challenges. Despite the importance of these skills, Earth and Environmental Data Science (EDS) training is not equally accessible, contributing to a lack of diversity in the field. This creates a critical need for EDS training opportunities designed specifically for underrepresented groups. In response, we developed the Earth Data Science Corps (EDSC) which couples a paid internship for undergraduate students with faculty training to build capacity to teach and learn EDS using Python at smaller Minority Serving Institutions. EDSC faculty participants are further empowered to teach these skills at their home institutions which scales the program beyond the training lead by our team. Using a Rasch modeling approach, we found that participating in the EDSC program had a significant impact on undergraduate learners’ comfort and confidence with technical and nontechnical data science skills, as well as their science identity and sense of belonging in science, two critical aspects of recruiting and retaining members of underrepresented groups in STEM. Supplementary materials for this article are available online.

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Related Other #1 : COS 208-5 - The Environmental Data Science Innovation & Inclusion Lab (ESIIL): a next-generation NSF data synthesis center

Related Software #1 : earthlab/2022-edsc-manuscript: EDSC Manuscript Data

Related Software #2 : corteva/rioxarray: 0.3.1 Release

Related Software #3 : pandas-dev/pandas: Pandas

Related Software #4 : matplotlib/matplotlib: REL: v3.6.0rc2

Related Software #5 : geopandas/geopandas: v0.13.2

Related Software #6 : corteva/rioxarray: 0.15.0 Release

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Author Quarderer, N. A.
Wasser, L.
Gold, A. U.
Montaño, Patricia A.
Herwehe, L.
Halama, K.
Biggane, E.
Logan, J.
Parr, D.
Brady, S.
Sanovia, J.
Tinant, C. J.
Yellow Thunder, E.
White Eyes, J.
Poor Bear/Bagola, L.
Phelps, M.
Phelps, T. O.
Alberts, B.
Johnson, M.
Korinek, N.
Travis, W.
Jacquez, N.
Rohlehr, K.
Ward, E.
Culler, E.
Nagy, R. C.
Balch, J.
Publisher UCAR/NCAR - Library
Publication Date 2025-01-01T00:00:00
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Topic Category geoscientificInformation
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Metadata Date 2025-07-10T19:55:23.493958
Metadata Record Identifier edu.ucar.opensky::articles:42310
Metadata Language eng; USA
Suggested Citation Quarderer, N. A., Wasser, L., Gold, A. U., Montaño, Patricia A., Herwehe, L., Halama, K., Biggane, E., Logan, J., Parr, D., Brady, S., Sanovia, J., Tinant, C. J., Yellow Thunder, E., White Eyes, J., Poor Bear/Bagola, L., Phelps, M., Phelps, T. O., Alberts, B., Johnson, M., Korinek, N., Travis, W., Jacquez, N., Rohlehr, K., Ward, E., Culler, E., Nagy, R. C., Balch, J.. (2025). Fostering the development of Earth data science skills in a diverse community of online learners: A case study of the Earth Data Science Corps. UCAR/NCAR - Library. https://n2t.net/ark:/85065/d7dv1q67. Accessed 03 August 2025.

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