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hello my name is Lis and Iamp;#39;m a machine learning engineer at Z where I work on concrete ml in the latest release of concrete ml 1.4 you will find a new feature that allows you to train a linear binary classifier in F linear classifiers are simple explainable and have many applications like credit scoring online art targeting or sentiment analysis with f multiple parties can blindly train classifiers on joint data without revealing it in previous versions concrete was focused on doing machine learning model inference in FG but training is now possible and this new feature keeps the concrete IM tradition of mimicking the S Lear API in order to be easy to use and to hide any complexity that users shouldnamp;#39;t worry about this presentation is based on the examples in the concrete ml documentation and more specifically in the logistic regression training notebook letamp;#39;s dive in letamp;#39;s consider the IRAs data set for this example first we normalize the feature to hav