In many settings, users write labeling functions that leverage organizational knowledge resources that are not servable in production (a)—e.g. aggregate statistics, internal models, or knowledge graphs that are too slow or expensive to use in production—in order to train models that are only defined over production-servable features (b), e.g. cheap, real-time web signals. |