Gartner Research

How to Operationalize Machine Learning and Data Science Projects

Summary

The democratization of machine learning platforms is proliferating analytical assets and models. The challenge now is to deploy and operationalize at scale. Data and analytics leaders must establish operational tactics and strategies to secure and systematically monetize data science efforts.

Published: 03 July 2018

ID: G00333499

Analyst(s): Erick Brethenoux Shubhangi Vashisth Jim Hare

Table Of Contents
  • Key Challenges

Introduction

Analysis

  • Establish a Close, Ongoing Dialogue With Business Counterparts
  • Establish a Systematic Operationalization Process
    • Operationalization Cycle Functionality
    • Operationalization Cycle Process
    • Release Phase: Testing Models in Business Conditions
    • Activation Phase: Operating Models in Real Business Conditions
  • Monitor, Re-evaluate, Tune and Manage Models on an Ongoing Basis
  • Secure the Help of Nonanalytical Personnel
  • Monitor and Constantly Revalidate the Business Value Delivered by Machine Learning Models in Production

Gartner Recommended Reading

Already a Gartner client?

Become a Client

This research is reserved for paying clients. Speak with a Gartner specialist to learn how you can access this research as a client, plus insights, advice and tools to help you achieve your goals.

Contact Information

All fields are required.

By clicking the "Submit" button, you are agreeing to the Gartner Terms of Use and Privacy Policy.

Experience Information Technology conferences

Join your peers for the unveiling of the latest insights at Gartner conferences.

©2021 Gartner, Inc. and/or its affiliates. All rights reserved. Gartner is a registered trademark of Gartner, Inc. and its affiliates. This publication may not be reproduced or distributed in any form without Gartner’s prior written permission. It consists of the opinions of Gartner’s research organization, which should not be construed as statements of fact. While the information contained in this publication has been obtained from sources believed to be reliable, Gartner disclaims all warranties as to the accuracy, completeness or adequacy of such information. Although Gartner research may address legal and financial issues, Gartner does not provide legal or investment advice and its research should not be construed or used as such. Your access and use of this publication are governed by Gartner’s Usage Policy. Gartner prides itself on its reputation for independence and objectivity. Its research is produced independently by its research organization without input or influence from any third party. For further information, see Guiding Principles on Independence and Objectivity.