Optimizing the Machine Learning Lifecycle and MLOps: The Emergence of Cloud Data Platforms

Kevin Petrie

February 01, 2022

To put machine learning models to work, data science teams must manage an ML lifecycle that spans data and feature engineering, model development, and model production. Traditionally, data scientists use ML platforms that incorporate all the capabilities required to prepare data; create features; and train, deploy, and manage models. 

 Now a new option has emerged: cloud data platforms that merge data warehouse and data lake constructs. Like an ML platform, the cloud data platform offers lifecycle speed, scale of production, model governance, and support for the ecosystem of ML tools. But it also goes further and offers the ability to integrate workflows, collaborate cross-functionally, and consolidate data across both BI and data science projects.

Register for Free Premium Content

I would like to receive data & analytics insights, updates, and offers from Datalere.

You Might Also Like

Stay Ahead in a Rapidly Changing World
Our newsletter provides frameworks and guidance to master every facet of data & analytics.
Datalere

Providing modern, comprehensive data solutions so you can turn data into your most powerful asset and stay ahead of the competition.

Learn how we can help your organization create actionable data strategies and highly tailored solutions.

© Datalere, LLC. All rights reserved

383 N Corona St
Denver, CO 80218

Careers