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How to Measure the Success of a Machine Learning Project?
In Kaggle most of the time, what matters is how good the metric can become on the test data. The other point is the metric is a proxy to the business problem. It's not because you get a good metric that you improve your business. Assume your model is good. How do you use it effectively to improve the business? But if you don't know it from, you have or do a bit testing as you cited before. Say you run the previous process for half of whatever thing you apply to your users, your machines, your whatever. And the other half, you use the process with machine learning and you monitor and you see there is a difference in which way