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Life after the model
April 16, 2018
Convolutional neural network is ready, F1 score calculated and ROC curve drawn. So you have a model. This tale is about what happens next: when and how to cleanse the model, how do push it into production and what defines quality for the model. I will show it using one of the projects we deployed here at AirHelp. I will also try to show a few tips & tricks that helps me manage Machine Learning projects.
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