What are the core duties of a data governance owner?

The core duties of a data governance owner encompass a wide range of responsibilities aimed at ensuring the proper management and utilization of an organization's data assets. This role is pivotal in maintaining data integrity, security, and compliance with various regulations.
They are tasked with creating a strategic approach to managing data, which includes defining data policies, standards, and procedures that align with organizational goals.
A data governance owner ensures compliance and data quality by establishing and enforcing robust data governance frameworks that include clear policies, procedures, and standards for data management.
They regularly assess and monitor data quality, making sure that it meets the defined standards and is suitable for its intended use.
Data governance owners use a variety of strategies to manage critical data assets, including identifying and classifying data based on its importance to the organization.
They prioritize the security and management of these assets to ensure they are protected and leveraged effectively.
A data governance owner plays a crucial role in communication and collaboration by acting as a liaison between various stakeholders, including data teams, IT, legal, and business units.
They ensure that all parties are informed about data governance policies and procedures, and they facilitate collaboration to achieve data governance objectives.
A data governance owner contributes to improved security strategies by ensuring that data protection measures are consistent and effective across all environments where data is stored or processed.
They work closely with security teams to develop and implement comprehensive data security policies that address current and emerging threats.
A data governance owner facilitates the definition of data standards and policies by leading the development of data governance frameworks that outline how data should be handled within the organization.
They ensure that these standards and policies are practical, enforceable, and aligned with business objectives.
Data governance principles can be applied to enhance behavioral science research by ensuring that the data used is of high quality, ethically sourced, and handled in a manner that respects privacy and confidentiality.
These principles help in creating a trustworthy environment for researchers to collect, analyze, and share data, leading to more reliable and valid research outcomes.
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