Jan Freyberg: Active learning in the interactive python environment | PyData London 2019 |
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Many data science and machine learning techniques require labelled data. In many businesses, this means that a lot of time, energy or money goes into acquiring labels. Active learning is a technique to make this process more efficient, by choosing data points to label based on current model performance. Here, I discuss methods of doing so easily and quickly in the interactive python ecosystem.
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