Struggling to get value out of machine learning, or having difficulty scaling or maintaining your production capacity? According to Gartner, most ML projects fail because operationalization is only addressed after the fact, as a DevOps consideration.
ML projects of any scale require significant operational considerations. Organizations often struggle to integrate ML with their existing infrastructure. And once in production, ML can present maintainability, scalability, and governance burdens on organizations.
In this report from Gartner, you’ll learn how to successfully operationalize machine learning projects using a 3-stage framework.
Struggling to get value out of machine learning, or having difficulty scaling or maintaining your production capacity? According to Gartner, "Most ML and DS projects fail because operationalization is only addressed after the fact, as a DevOps consideration".
ML projects of any scale require significant operational considerations. Organizations often struggle to integrate ML with their existing infrastructure. And once in production, ML can present maintainability, scalability, and governance burdens on organizations.
We believe that in this report from Gartner, you’ll learn how to successfully operationalize machine learning projects using a 3-stage framework.
Gartner Use Gartner's 3-Stage MLOps Framework to Successfully Operationalize Machine Learning Projects, Shubhangi Vashisth, Erick Brethenoux, Farhan Choudhary, Jim Hare, 2nd July 2020.
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