Many companies are choosing to build their own AI systems, rather than buy. Financial services firm Kapitus shares lessons learned.
A Competitive Takeout Program designed to help organizations escape the high cost and complexity of legacy metadata ...
Key data and analytics trends in 2026 include decision intelligence, real-time analytics, semantic layers, platform ...
AI and data sovereignty won’t wait. The question regulators, auditors, and AI systems are asking is simple: Where is the data, and can you prove it?” — Tim Freestone, Chief Strategy Officer at ...
When asked about their main challenges in adopting AI over the next two years, C-suite leaders cited data issues as their top ...
A strong data governance foundation is essential for higher education institutions to deploy trustworthy, effective ...
Data governance is a critical foundation for any organization that creates, manages, or uses data. Data must be managed in a way that is consistent with the organization’s data definition, data ...
David Littler from enChoice UK discusses the AI governance in the public sector, focusing on bridging the gap between its ...
In our world today, data powers everything: from artificial intelligence and innovation to connectivity and cybersecurity. AI technologies both intensify the demand for data and generate new forms of ...
Data governance is necessary for compliance with current regulatory expectations for data integrity in pharmaceutical R&D and manufacturing organizations. A company should consider whether it has a ...
Every retail initiative, whether it’s AI, personalization or supply-chain transparency, depends on trustworthy customer data.
Some results have been hidden because they may be inaccessible to you
Show inaccessible results