How would you test a machine learning system in production?
Answer Posted / Shubhi Agarwal
Testing a machine learning system in production involves validating its performance on live data, measuring its ability to make accurate predictions or decisions, monitoring its behavior over time for any drift or degradation in performance, and iteratively adjusting the model as needed.
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