How to Share and Control ML Model Access with MLflow Model Registry

#artificialintelligence 

We are excited to announce new enterprise grade features for the MLflow Model Registry on Databricks. The Model Registry is now enabled by default for all customers using Databricks' Unified Analytics Platform. In this blog, we want to highlight the benefits of the Model Registry as a centralized hub for model management, how data teams across organizations can share and control access to their models, and touch upon how you can use Model Registry APIs for integration or inspection. MLflow already has the ability to track metrics, parameters, and artifacts as part of experiments; package models and reproducible ML projects; and deploy models to batch or real-time serving platforms. Built on these existing capabilities, the MLflow Model Registry [AWS] [Azure] provides a central repository to manage the model deployment lifecycle.

Duplicate Docs Excel Report

Title
None found

Similar Docs  Excel Report  more

TitleSimilaritySource
None found