MLOps.community  cover image

Why is MLOps Hard in an Enterprise? // Maria Vechtomova & Basak Eskili // #159

MLOps.community

00:00

The Differences Between MLOps and DevOps

The data part makes all the difference here because even if your code didn't change, your data did change and errors may appear. So getting access to production data in development environment might be very important for data science products. Another one is checking for the quality monitoring. Check for the quality of your model when it's deployed. There are also some type of health checks that you need to perform. And if you don't have those checks in place, you just wouldn't know because, well, from the software point of view, everything is just fine. so these two differences are the biggest ones.

Play episode from 33:58
Transcript

The AI-powered Podcast Player

Save insights by tapping your headphones, chat with episodes, discover the best highlights - and more!
App store bannerPlay store banner
Get the app