#Openbox - bias discussion with Patrick Hall part 1

ATGO AI | Accountability, Trust, Governance and Oversight of Artificial Intelligence | - A podcast by ForHumanity Center

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OPENBOX aims at bringing an easier understanding of open problems that helps in finding solutions for such problems. For the said purpose, I interview researchers and practitioners who have published works on open problems in a variety of areas of Artificial Intelligence and Machine Learning to collect a simplified understanding of these open problems. These are published as podcast series.  Today, we have with us Patrick Hall. Patrick is a Assistant Professor at George Washington University. He is conducting research in support of the NIST AI Risk Management Framework and a contributor to NIST work on building a Standard for Identifying and Managing Bias in Artificial Intelligence. He is also the collaborator running the open-source initiative called “Awesome Machine Learning Interpretability” which maintains and curates a list of practical and awesome responsible machine learning resources. He is also one of the authors of Machine Learning for High Risk Applications released by O’reilly. He is also managing the AI incident Database. He spoke about key considerations for metrics regarding bias for varied types of data. He also discusses the open problems in this area. --- Send in a voice message: https://podcasters.spotify.com/pod/show/ryan-carrier3/message