Separating the concerns of managing data governance at a business level and implementing data governance at an engineering level is the best way to clarify data access permissions. In practice, this involves building systems to enable data governance enforcement based on business rules, with little to no understanding of the individual system where the data lives.
In practice, with a concrete business rule, such as “only users from the finance team should have access to critical financial data,” we want a system that deals only with those constituent concepts. For example, “the data is marked as critical financial” and “the user is a part of the finance team.” By abstracting away any source system components, such as “the tables in the finance schema” and “someone who’s a member of the finance Databricks group,” the access policies applied will then model the business rules as closely as possible.
This session will focus on how to establish and align the processes, policies, and stakeholders involved in making this type of system work seamlessly. Sharing the experience and learnings of our team at Instacart, we will aim to help attendees streamline and simplify their data security and access strategies.
Talk by: Kieran Taylor and Andria Fuquen
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