Romer Rosales Interview – Problem Formulation for Machine Learning

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Romer Rosales Interview - Problem Formulation for Machine Learning

In this episode, i’m joined by Romer Rosales, Director of AI at LinkedIn.

We begin with a discussion of graphical models and approximate probability inference, and he helps me make an important connection in the way I think about that topic. We then review some of the applications of machine learning at LinkedIn, and how what Romer calls their ‘holistic approach’ guides the evolution of ML projects at LinkedIn. This leads us into a really interesting discussion about problem formulation and selecting the right objective function for a given problem. We then talk through some of the tools they’ve built to scale their data science efforts, including large-scale constrained optimization solvers, online hyperparameter optimization and more. This was a really fun conversation, that I’m sure you’ll enjoy!

The notes for this show can be found at twimlai.com/talk/149.

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