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thank you all for choosing to attend this talk today I am my name is Melissa McNeil and I'm really excited to talk to you about customizable probabilistic record linkage and to debut a tool called name match that I've been working on for the last many years and it just got open sourced last week so um really exciting and really excited to get to share it with you all today so this is going to be our agenda for today um I'll start sort of by talking about record linkage more generally and specifically we'll go through what it is why it matters why we are trying to solve it with machine learning and why it can be really difficult then we will sort of focus in on the name match tool specifically I'll go through what makes it special what it requires and how you can use it and then we'll end with a full example um but before we dive in I'll just give a little bit of background about me so um as was said in the intro I'm a data scientist at the University of Chicago crime lab the crime lab...