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so Im Sergi I work in a very small consultancy it has three people we do machine learning yeah its a good name all right thank you okay so Im gonna this is a sales pitch basically but instead of for a company its for a methodology so probably all of you have heard of cross-validation then some of you may use it so Im gonna cover why thats good and then use that to motivate Nesta cross-validation which should be more popular so Im gonna Im gonna Im gonna convince you that thats the case this is a machine learning talk so Im gonna take out a piece of the machine learning pipeline and talk about some goals that matter to this talk so theres two goals that I care about like if you do a lot on machine learning and you already have some models that you fit for hyper parameter validation or you just want to compare some models then you need to choose one thats best and go with it and put it into production or make a case to somebody about what that model is doing and the second g