Kanth Mentorship Show

What is Machine Learning Model Drift


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Many machine learning models tend to be black boxes, where explainability is very limited, which can make it difficult to understand why a model is not performing as expected. This is especially true with regard to how a model performs over time with new training data. 

The machine learning lifecycle begins with data warehousing, ETL pipelining, and model training. The next stages in the lifecycle: deployment, management, and operations. Machine learning deployment plays a critical part in ensuring a model performs well, both now and in the future, but it is also vitally important to understand model monitoring and model drift to that same end

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Kanth Mentorship ShowBy Kanth