Ciston S. (2023). “A Critical Field Guide for Working with Machine Learning Datasets.” Crawford K and Ananny M, Eds., Knowing Machines project. https://knowingmachines.org/critical-field-guide
Ciston S. (2021). “Intersectional AI Toolkit,” Intersectional AI Toolkit. https://intersectionalai.com/
Gebru T, et. al. (2020). “Datasheets for Datasets,” ArXiv180309010 Cs, Mar. 2020, http://arxiv.org/abs/1803.09010
GPAI (2022). Data Justice: Data Justice in Practice: A Guide for Developers, Report, November 2022, Global Partnership on AI. https://advancingdatajustice.org/data-justice-in-practice-guides/
Engine Room. (n.d.). Responsible Data Handbook. https://the-engine-room.github.io/responsible-data-handbook/
Floridi, L., & Cowls, J. (2019). A United Framework of Five Principles for Ai in Society. Harvard Data Science Review, 1(1). https://philarchive.org/rec/FLOAUF
Hasselbalch, G. (2019). Making sense of data ethics. The powers behind the data ethics debate in European policymaking. Internet Policy Review, 8(2). https://doi.org/10.14763/2019.2.1401
Howard, S.A., & Knowlton, S.A. (2018). Browsing through Bias: The Library of Congress Classification and Subject Headings for African American Studies and LGBTQIA Studies. Library Trends 67(1), 74-88. https://doi:10.1353/lib.2018.0026
McKinney, W. (n.d.). Python for Data Analysis, 3E (Open 3rd Edition). O’Reilly. Retrieved July 3, 2022, from https://wesmckinney.com/book/
Miceli, M., & Posada, J. (2022, May 30). The data-production dispositif: How to analyze power in data production for machine learning. Schwartz Reisman Institute for Technology and Society. https://srinstitute.utoronto.ca/news/the-data-production-dispositif
Miceli, M., Posada, J., & Yang, T. (2022). Studying Up Machine Learning Data: Why Talk About Bias When We Mean Power? Proceedings of the ACM on Human-Computer Interaction, 6(GROUP), 1–14. https://doi.org/10.1145/3492853
Miyazaki, S. (2016). Algorhythmic ecosystems: Neoliberal couplings and their pathogenesis 1960–present. In Algorithmic Cultures (pp. 140–151). Routledge. https://doi-org.libproxy1.usc.edu/10.4324/9781315658698
Onuoha, Mimi. (2016). “The Point of Collection.” Data and Society: Points. Feb 10, 2016. https://points.datasociety.net/the-point-of-collection-8ee44ad7c2fa
Padilla, T. (2021, October 13). Responsible Operations: Data Science, Machine Learning, and AI in Libraries. OCLC. https://www.oclc.org/research/publications/2019/oclcresearch-responsible-operations-data-science-machine-learning-ai.html
School of Data. (n.d.). "Glossary." School of Data. https://schoolofdata.org/handbook/appendix/glossary/
Steven A. Knowlton MLIS (2005) Three Decades Since Prejudices and Antipathies: A Study of Changes in the Library of Congress Subject Headings, Cataloging & Classification Quarterly, 40:2, 123-145. https://doi.org/10.1300/J104v40n02_08
Training the Archive. (n.d.). "Glossary." Training the Archive. https://trainingthearchive.ludwigforum.de/en/glossary/
University of Helsinki, Minna Learn. (n.d.) "Elements of AI." https://course.elementsofai.com/
University of Helsinki, Minna Learn. (n.d.) "Ethics of AI." https://ethics-of-ai.mooc.fi/
Younes, L. (n.d.). Data Acquisition for Beginners. Exposing the Invisible Kit - Tactical Tech. https://kit.exposingtheinvisible.org/en/how/data-acquisition.html