MLOps vs ModelOps
These two terms are often used interchangeably. However, there are key distinctions between the functionality and features each provide, and the AI value and scalability at your organization depend on them.
Why Does It Matter?
Did you know approximately half of the AI models that are developed never actually make it into production?
If you want to understand why and prevent the waste of data scientist time and other resources from happening at your organization, then it is important to understand the difference between MLOps and ModelOps.
They aren’t the same, but the terms are often used interchangeably. That lack of understanding about the specific roles and value of MLOps and ModelOps undermines the value of enterprise AI programs.
It is important to know the difference between MLOps and ModelOps because neither is a substitute for the other.
This article addresses the following questions:
- What is the difference between MLOps and ModelOps
- What is each used for?
- Who uses them?
- Which does your organization need? (It’s a trick question, you likely need both.)
- What is the value of using MLOps and ModelOps?
Understanding and valuing the distinction between ModelOps and MLOps is important because while both are needed, only one fully addresses the operational and governance process issues that are holding back nearly two-thirds of enterprise AI programs.

The Big Difference Between MLOps and ModelOps
MLOps is for Data Scientists, while ModelOps is for the Enterprise.
MLOps helps data scientists with rapid experimentation and deployment of ML models during the data science process. It is a feature of mature and maturing data science platforms like Amazon Sagemaker, Domino Data Lab, and DataRobot.
ModelOps is enterprise operations and governance for all AI and analytic models in production that ensures independent validation and accountability of all models in production that enable business-impacting decisions no matter how those models are created.
ModelOps platforms like ModelOp Center automate all aspects of model operations, regardless of the type of model, how developed, or where the model is run.

What Each is Used For and Who Uses Them
MLOps tools and features are used for developing machine learning (ML) models. It includes the actual coding of the ML model, testing, training, validation, and retraining.
Data Scientists are responsible for the model development, working closely with the DataOps and Data Analytics teams to identify the proper data and data sets for the model.
The Data Scientists are typically aligned with a line of business and remain focused on the goals of that particular business unit or a specific project.
ModelOps platforms and capabilities are used to ensure reliable and optimal outcomes for any and all models in production. It includes managing all aspects of models in production, such as inventorying models that are in production, ensuring production models are providing reliable decision-making, and adhering to all regulatory, compliance, and risk requirements and controls.
CIOs and IT Operations, working with lines of business, are responsible for establishing and implementing a ModelOps platform that meets the needs of the enterprise.
The Value of MLOps and ModelOps
MLOps and ModelOps are complementary solutions, not competitive ones.
ModelOps solutions can’t build models, and MLOps can’t govern and manage production models throughout their lifecycle across the enterprise.
Some MLOps solutions offer limited management capabilities, but the limitations tend to become evident when enterprises begin to scale AI efforts and uniformly enforce risk and compliance controls. Additionally, the “tried and true” practice of having checks and balances between development and production operations applies to every model that is developed and put in production.
History has shown that you can’t have “the students grading their own papers” or “the fox watching the hen house.”
ModelOps platforms automate the risk, regulatory, and operational aspects of models and ensure that models can be audited and evaluated for technical conformance, business value, and business and operational risk.
By combining these enterprise capabilities with the efficiency of MLOps tools, enterprises can exploit the investment in their MLOps tools and build a foundational platform for accelerating, scaling, and governing AI across the enterprise.
From Guidance to Regulation
The EU AI Act of 2024 began its life as a set of guidelines released in 2019 by the EU High Level Expert Group on AI. The Act is the world’s first comprehensive legal framework targeting AI use in business. The passage of this Act ushers in a new world of legal regulation specific to AI use.
With so many AI use guidance documents being issued by so many governmental entities around the globe, it seems certain that more governments will follow the path taken in the EU - evolving guidance into AI specific regulations that will have the force of law.
Non-AI specific regulations such as GDPR, HIPAA and PCI are also likely to play a big role in regulating AI use. These regulations focus on sensitive data and data privacy rights. The data intensive nature of AI model building means that there will likely be overlap between data governance and AI governance regulations
Govern and Scale All Your Enterprise AI Initiatives with ModelOp Center
ModelOp is the leading AI Governance software for enterprises and helps safeguard all AI initiatives — including both traditional and generative AI, whether built in-house or by third-party vendors — without stifling innovation.
Through automation and integrations, ModelOp empowers enterprises to quickly address the critical governance and scale challenges necessary to protect and fully unlock the transformational value of enterprise AI — resulting in effective and responsible AI systems.
To See How ModelOp Center Can Help You Scale Your Approach to AI Governance