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On Ingesting Kate Crawford’s “The Trouble with Bias”
( go to the article → https://blog.dominodatalab.com/ingesting-kate-crawfords-trouble-with-bias/ )
Kate Crawford discussed bias at a recent SF-based City Arts and Lectures talk and a recording of the discussion will be broadcast, May 6th, on KQED and local affiliates. Members of Domino were in the live audience for the City Arts talk. This Domino Data Science Field Note provides insights excerpted from Crawford’s City Arts talk and […] The post On Ingesting Kate Crawford’s “The Trouble with Bias” appeared first on Data Science Blog by Domino.
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