Why is it Important to Constantly Monitor Machine Learning and Deep Learning Models after…

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As a person who is involved in mostly the data related activities such as data processing, data manipulation and model predictions, you are also given an additional task as a data scientist or a machine learning engineer to deploy the product in real-time. After doing the heavy lifting of understanding the right parameters for various models and finally coming up with the best model, deploying the model in real-time can have a significant impact in the way it impresses the business and creates monetary impact. Finally, the model is deployed, and it is able to predict and give its decision based on the historical data at which it was trained. At this point, most people consider that they have completed a large portion of the machine learning tasks. While it is true that a good amount of work has been done so that the models are productionized, there is additional step that is often overlooked in the machine learning lifecycle that is to monitor the models and check if they are performing on the future data or the data that the models have not seen before.

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