Gartner Research

Summary Translation: Magic Quadrant for Data Science and Machine Learning Platforms

Summary

This report assesses 20 vendors of platforms that data scientists and others can use to source data, build models and operationalize machine learning. It will help them make the right choice from a crowded field in a maturing DSML platform market that continues to show rapid product development.

Published: 29 March 2021

ID: G00749220

Analyst(s): Peter Krensky

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