Absent a comprehensive federal AI framework, agencies should be guided by four governance priorities. While the federal ...
Organisations are beginning to implement zero-trust models for data governance thanks to the proliferation of poor quality AI ...
A phased guide to AI governance in cloud-native systems, aligning ISO 42001:2023 and NIST AI-RMF with lifecycle controls, ...
The ongoing dive into modernity—and all the new technologies and hype trains that come along with it—requires a modern data architecture to support it. With this architecture comes a variety of other ...
Data fabric is a powerful architectural approach for integrating and managing data across diverse sources and platforms. As enterprises navigate increasingly complex data environments, the need for ...
Data governance is transforming the world of business and IT as organizations increasingly acknowledge and embrace the importance of data in the modern world. And this transformation significantly ...
The field of data and analytics is rapidly growing and evolving, requiring creativity, skill and a deep understanding of emerging technologies, particularly in data governance. Advanced strategies for ...
CU Boulder collects, uses and maintains a significant amount of data. This includes, but is not limited to student, employee, research and finance data. Institutional data supports CU Boulder’s ...
Dataiku’s field chief data officer for Asia-Pacific and Japan discusses how implementing AI governance can accelerate ...
How do indexing protocols support DAO governance? Learn how this Web3 middleware transforms raw data into actionable insights for tracking votes and monitoring smart contract security.
In 2025, enterprises are leveraging AI capabilities to enhance data management. Just like 2023, 2024 was a dynamic year for enterprise data management, and 2025 is shaping up to bring even more change ...
Some results have been hidden because they may be inaccessible to you
Show inaccessible results