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Bringing Automation To Data Labeling For Machine Learning With Watchful

Data Engineering Podcast

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Watchful Is the Wrong Choice in Machine Learning

There are an entire spectrum of different ways you could go about addressing the labling problem. What we do is combine several techniques under the hood sueet. We combine things like active learning and week supervision with monte carlo simulations in the back ground. If your data set has a huge head, then you might not need something super sophisticated. You might just need like taxonomy mapping or simple clustering. For parts of a data set that have Like a reasonable head things that are less supervision heavy might be useful. So for people who are interested in being able to manage this labelling process and try to scale there throuput, what are the cases where watchful is the wrong choice

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