What happens when you have a bunch of data scientists, a bunch of new and old projects, a big grab-bag of runtime environments, and you need to get all those humans and all that code access to GPUs? Come see how the ML Eng team at Mailchimp wrestled first with connecting abstract containerized processes to very-not-abstract hardware, then scaled that process across tons of humans and projects. We’ll talk through the technical how-to with Docker, Nvidia, and Kubernetes, but all good ML Engineers know that wrangling the tech is only half the battle and the human factors can be the trickiest part.
3 Key Takeaways:
Emily is a Staff MLOps Engineer at Intuit Mailchimp, meaning she gets paid to say "it depends" and "well actually." Professionally she leads a crazy good team focused on helping Data Scientists do higher quality work faster and more intuitively. Non-professionally she paints huge landscapes and hurricanes in oils, crushes sweet V1s (as long as they're not too crimpy), rides her bike, reads a lot, and bothers her cats. She lives in Atlanta, GA, which is inarguably the best city in the world, with her husband Ryan who's a pretty darn cool guy.