Whitepaper

Leadership and Team Formation in Data Governance: A Roadmap for Success

Download the report

Discover a roadmap to success in data governance with Alation's leadership and team formation guide. Learn how strong leadership and an effective team can drive your data governance program to success.

What You'll Learn:

  • The key roles and terms for a successful data governance program.

  • The practical framework for building a data governance strategy.

  • How to sell your data governance program effectively.

  • A positive and optimistic approach to data governance.

Ready to embark on your data governance journey? Download now!

Related resources

Webinar Registration

Building a Robust Data Governance Framework for MAS Regulatory Compliance

In the rapidly evolving regulatory landscape, ensuring compliance with data governance standards is crucial for organizations operating in Singapore. The Monetary Authority of Singapore (MAS) has introduced new data governance guidelines to enhance data protection, transparency, and risk management practices.

Datasheet

Alation Data Governance Datasheet

Alation Data Governance provides the ability to establish and sustain governance programs to centralize data assets’ metadata to remove silos, reduce compliance risk through policies, standards, and controls for those assets, and unlock an organization's data safely for everyone by guiding people to trusted, high-quality, and governed data to make compliant data-driven decisions.

Webinar On-Demand

Navigating AI Governance: How Interac Builds Trust and Innovation

As organizations invest in AI, effective governance is crucial to maintain safety and compliance. But did you know it's also critical for creating a consistent framework for innovation? Interac, a leader in digital payments, has partnered with Alation to build a robust AI governance framework. Hear Mohit Sirpal and Shubneet Bharwani from Interac as they share expert insights on creating a trusted data environment for AI. Learn how Interac leverages data intelligence to enable self-service, transparency, and traceability in their AI processes, ensuring they are prepared for future  AI initiatives.