Enterprise AI departments see huge MLops vendor opportunity - Protocol

#artificialintelligence 

On any given day, Lily AI runs hundreds of machine learning models using computer vision and natural language processing that are customized for its retail and ecommerce clients to make website product recommendations, forecast demand, and plan merchandising. But this spring when the company was in the market for a machine learning operations platform to manage its expanding model roster, it wasn't easy to find a suitable off-the-shelf system that could handle such a large number of models in deployment while also meeting other criteria. Some MLops platforms are not well-suited for maintaining even more than 10 machine learning models when it comes to keeping track of data, navigating their user interfaces, or reporting capabilities, Matthew Nokleby, machine learning manager for Lily AI's product intelligence team, told Protocol earlier this year. "The duct tape starts to show," he said. Nokleby, who has since left the company, said that for a long time Lily AI got by using a homegrown system, but that wasn't cutting it anymore.

Duplicate Docs Excel Report

Title
None found

Similar Docs  Excel Report  more

TitleSimilaritySource
None found