Data and model governance
Governance in machine learning modeling is about the use of tools and procedures to help you, your team, and your organization in developing reliable and responsible machine learning models. You shouldn’t consider it as any sort of restriction on how to conduct your projects but as an opportunity to reduce the risk of undetected mistakes. The governance in machine learning is supposed to be designed to help you and your organization achieve your objectives in helping humanity and business and avoid processes and models that could have ethical, legal, or financial consequences. Here are some examples of ways to establish governance systems in a team and organization:
- Define guidelines and protocols: As we want to detect issues in our models and improve our models in terms of both performance and responsibility, we need to design guidelines and protocols for simplification and consistency. We need to define criteria and methods for what are considered...