References
- Angwin, J., and J. Larson. 2016. Machine bias. ProPublica. May 23. https://www.propublica.org/article/machine-bias-risk-assessments-in-criminal-sentencing.
- Averkamp, S., and J. Hardesty. 2020. AI is such a tool: keeping your machine learning outputs in check. Presented at the Code4Lib, Pittsburgh, PA, March 11. https://2020.code4lib.org/talks/AI-is-such-a-tool-Keeping-your-machine-learning-outputs-in-check.
- Beswick, K., and B. Davidson. 2019. Taking the plunge: deep learning in libraries. Presented at the Triangle Research Libraries Network Annual Meeting, Chapel Hill, NC, July 11.
- Ciccone, K. 2018. Data science and visualization space user research. NC State University Libraries. https://www.lib.ncsu.edu/projects/data-science-and-visualization-space-user-research.
- Griffey, J. 2019. Artificial intelligence and machine learning in libraries. Library Technology Reports 55 (1):1–29.
- Hoeppner, A., and M. Adams. 2020. Humans vs. robots: What professional skills do students need for success in an ai world? A discussion on the digital knowledge, skills, and abilities that will have the most value in the rapidly changing business landscape. Presented at the Electronic Resources & Libraries Annual Conference, Austin, TX, March 11. https://2020erl.sched.com/event/XVfj/s82-humans-vs-robots-what-professional-skills-do-students-need-for-success-in-an-ai-world-a-discussion-on-the-digital-knowledge-skills-and-abilities-that-will-have-the-most-value-in-the-rapidly-changing-business-landscape.
- Lorang, E., and L.-K. Soh. 2019. Image analysis for archival discovery (Aida). http://projectaida.org/.
- O’Neil, C. 2017. Weapons of math destruction: How big data increases inequality and threatens democracy. London, UK: Penguin Books.
- Yelton, A. 2017. How about machine learning enhancing theses? HAMLET. https://hamlet.andromedayelton.com/.