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Table Of Contents
Hands-On MLOps on Azure
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Governance in MLOps is a critical aspect of machine learning operations (MLOps), ensuring the ethical, legal, and secure use of models throughout their lifecycle. It involves establishing policies, procedures, and standards to manage risks, comply with regulations, and maintain the integrity of ML solutions. Governance provides a structured framework for all stakeholders, from data scientists to business leaders, to work collaboratively and responsibly.
In this chapter, we will delve into the essential components of governance in MLOps, beginning with the foundational focus areas that set the stage for responsible MLOps. These include accountability, compliance, security, and quality assurance—core principles that guide how ML systems should be developed and maintained within organizations.
A key aspect of governance is ensuring model integrity. This involves maintaining high data quality, implementing robust version...
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