How to Build a ML Platform Efficiently Using Open-Source
Fast-growing startups usually face a common set of challenges when employing machine learning. Data scientists are expected to work on new products and develop new models as well as iterate on existing ones. Once in production, models should be continuously monitored and regularly maintained as the infrastructure evolves. Before too long, data scientists end up spending most of their time doing maintenance and firefighting of existing models instead of creating new ones.
At GetYourGuide, we faced these challenges and decided to think about machine learning development holistically, which led us to our machine learning platform. Our platform uses MLflow to keep track of our machine learning life-cycle and ease the development experience. To integrate our models into our production environment, we also need to deal with additional requirements like API specification, SLOs and monitoring. To empower our data scientists, we have built a templating system that takes care of the heavy lifting of going to productio
15 views
8
1
4 days ago 00:03:47 1
SCOOTER - HOW MUCH IS THE FISH (Metal cover)
6 days ago 00:20:57 1
Incredible Discovery In The Grand Canyon? - YouTube
6 days ago 00:29:11 1
Interview with Valentin Kozlov, Valmix Company | Potato Tour Across Russia (Part 2) π₯π
1 week ago 00:57:54 1
Lost In Time : The Isolated House Where She Lost Her Mind | How I Find Abandoned Placess
1 week ago 01:01:39 1
TIME SLIP STORIES (SN 18 EP 38) TRUE UNEXPLAINABLE EXPERIENCES WITH MISSING TIME & TIME SLIPS
1 week ago 00:00:31 2
How To Train Your Dragon | Big Game Spot
1 week ago 00:05:05 59
How to Clown - Misha Usov - Professional Clown School
1 week ago 00:38:45 2
Try Not To Laugh Challenge#7 | Instant Regret Fails Compilation 2024 | Amazing People