TY - JOUR
T1 - Data Science for Biochemists
T2 - Integrating and Evaluating the Use of Interactive Digital Python Notebooks in a Large-Enrollment Undergraduate Biochemistry Course
AU - Brunk, Rebecca
AU - Shukla, Kriti
AU - Hutson, Bryant L.
AU - Wang, Yue
AU - Verber, Matthew
AU - Ford, Christina
AU - Dennis, William
AU - Mehta, Aarav
AU - Hogan, Brian P.
AU - Swetnam, Tyson
AU - Brunk, Elizabeth
N1 - Publisher Copyright:
© 2024 American Chemical Society and Division of Chemical Education, Inc.
PY - 2024/9/10
Y1 - 2024/9/10
N2 - Genomic sequencing and other big biological data are unquestionably of paramount value; however, the success in recruiting highly skilled individuals with diverse backgrounds has been limited. A main reason for this deficiency could be due to the lack of educational resources and early exposure to the field. With the steady increase in big biological data over the past decade, we need not only to increase the number of skilled researchers in the field but also to empower the next generation of students with skills that can apply data analysis skills to a variety of career trajectories. Here, we share a successful example of integrating Python-based interactive digital notebooks in a large-enrollment undergraduate chemistry course with more than 400 participants across various degree programs. The goal of this Article is to detail the teaching pedagogy, supply the teaching materials, and evaluate the outcomes of integrating coding in a large-enrollment undergraduate chemistry course. The guiding research questions of this study are the following: How can we effectively integrate coding and big-data analysis in a large-enrollment class and does this integration change student attitudes towards coding and research? We expect that providing early exposure to data science will help undergraduates gain skills in computational analysis, which will be an asset to any student, regardless of career path or academic trajectory.
AB - Genomic sequencing and other big biological data are unquestionably of paramount value; however, the success in recruiting highly skilled individuals with diverse backgrounds has been limited. A main reason for this deficiency could be due to the lack of educational resources and early exposure to the field. With the steady increase in big biological data over the past decade, we need not only to increase the number of skilled researchers in the field but also to empower the next generation of students with skills that can apply data analysis skills to a variety of career trajectories. Here, we share a successful example of integrating Python-based interactive digital notebooks in a large-enrollment undergraduate chemistry course with more than 400 participants across various degree programs. The goal of this Article is to detail the teaching pedagogy, supply the teaching materials, and evaluate the outcomes of integrating coding in a large-enrollment undergraduate chemistry course. The guiding research questions of this study are the following: How can we effectively integrate coding and big-data analysis in a large-enrollment class and does this integration change student attitudes towards coding and research? We expect that providing early exposure to data science will help undergraduates gain skills in computational analysis, which will be an asset to any student, regardless of career path or academic trajectory.
KW - Cloud Computing
KW - Curriculum Development
KW - Emerging Technologies
KW - Jupyter Notebook in the Classroom
KW - Large-Enrollment Undergraduate Course
KW - Python for Non-Computer Scientists
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UR - http://www.scopus.com/inward/citedby.url?scp=85200878611&partnerID=8YFLogxK
U2 - 10.1021/acs.jchemed.4c00167
DO - 10.1021/acs.jchemed.4c00167
M3 - Article
AN - SCOPUS:85200878611
SN - 0021-9584
VL - 101
SP - 3643
EP - 3655
JO - Journal of Chemical Education
JF - Journal of Chemical Education
IS - 9
ER -