From Idea to Production ML // Lex Beattie - Michael Munn - Mike Moran // MLOps Meetup #61
MLOps community meetup #61! Last Wednesday we talked to Lex Beattie of Spotify, Michael Munn of Google, and Mike Moran of Skyscanner.
//Abstract
We started out talking about some of the main bottlenecks they have encountered over the years of trying to push data products into production environments. Then things started to heat up as we dove into the topic of monitoring ML and inevitably the word explainability started being thrown around.
Turns out Lex is currently doing a Ph.D. on the subject so there was much to talk about. We had to ask if explainability is now table-stakes when it comes to monitoring solutions on the market? The short answer from the team. Yes!
Please excuse the bit of sound trouble we had with google mike at the beginning.
//Bio
Lex Beattie - ML Engagement Lead, Spotify
In the last year, Lex has helped over 40 different teams across Spotify understand ML best practices, productionize ML workflows and implement impactful ML in their products. Lex is also a Ph.D. candidate at the University of Oklahoma, focusing on feature importance and interpretability in deep neural networks. Beyond her passion for all things ML, she enjoys exploring the great outdoors in Montana with her German Wirehaired Pointer, Bridger.
Michael Munn - ML Solutions Engineer, Google
Michael is an ML Solutions Engineer with Google Cloud and Google's Advanced Solutions Lab. In his role, he works with customers to build and deploy end-to-end ML solutions with Google Cloud. Within the Advanced Solutions Lab, he teaches these skills to customers.
Mike Moran - Principal Engineer, Skyscanner
Mike has worked across many dimensions; in large/tiny companies, back-end/front-end, with many languages, and as a sys-admin /engineer/manager. Mike has a healthy skepticism for most things and likes solving problems through applying System thinking.
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