Data Engineering Podcast cover image

How Data Engineering Teams Power Machine Learning With Feature Platforms

Data Engineering Podcast

00:00

The Unexpected Challenges of ML Model Development

In your experience of building feature bite and working in this space, what are some of the most interesting or unexpected or challenging lessons that you've learned? I think one of the key things is just how model centric the world of AI is. The whole space has evolved so much to help data scientists build and deploy really good models. But when you look at the first half of the ML lifecycle, which is everything to do with data and data management, there is a serious dearth of tools out there. It's something that, from, from my opinion, is, is ripe for disruption and ripe for major innovation in space.

Play episode from 50:50
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