To govern AI safely and keep its speed advantage, enterprises must move from static, rule-based control systems to adaptive, ...
Angela Virtu, a professor of business analytics and A.I. at American University’s Kogod School of Business, examines why most ...
Abstract: The increasing reliance on artificial intelligence (AI) and advanced analytics to gain competitive advantages has elevated the importance of robust data governance frameworks. This article ...
For financial institutions, threat modeling must shift away from diagrams focused purely on code to a life cycle view ...
If you’re reading this, there’s a very good chance your organization’s approach to data governance is the exact opposite of what it should be for the AI era. If you’ve read my prior articles, you know ...
It’s a time when large datasets are being leveraged for real-time analysis. Tried-and-true approaches to cobbling together technologies and policies to achieve workable data governance and security ...
Real-time insights and self-service analytics have become critical for survival in a rapidly evolving data landscape.
Most data governance models weren’t built for AI. They were designed to ensure compliance, not to support real-time decision-making. They helped manage audits and reports but were never intended to ...
In today’s rapidly evolving digital landscape, the value of data cannot be overstated. Data has become the lifeblood of innovation, driving decisions, shaping industries, and transforming how we live ...
As for the AI bubble, it is coming up for conversation because it is now having a material effect on the economy at large.
Anil Lokesh Gadi, a distinguished expert in the fields of advanced data engineering, data analytics, and data warehousing, has recently published a research paper providing valuable insights into ...
Some results have been hidden because they may be inaccessible to you
Show inaccessible results