A data health check is essential before deploying generative AI. Organizations attempting generative AI without baseline data readiness are building on sand.
Passive maintenance isn't enough as data scales across cloud platforms and business units. A formal data health check surfaces architectural gaps, governance misalignments, and AI-specific blockers before they become crises.
A data health check is essential before deploying generative AI. Organizations attempting generative AI without baseline data readiness are building on sand.
An annual cadence provides baseline. Conduct additional assessments:
For organizations planning generative AI, a health check is non-negotiable.
A comprehensive health check evaluates:
If multiple questions raise concerns, a health check is overdue. Generative AI questions reveal gaps requiring immediate attention.
Organizations conducting health checks identify architectural misalignments before crises. They scope AI opportunities and execute without foundational delays. Those skipping this work face escalating costs and competitive disadvantage.
For generative AI, the stakes are higher. Organizations that assess readiness before deployment will deploy faster, build more reliable models, avoid regulatory risk, and achieve faster ROI. Those rushing generative AI without preparation face expensive course corrections, disappointed stakeholders, and competitive disadvantage.
Organizations whose data infrastructure hasn't been formally assessed should schedule a comprehensive health check immediately. If you're planning generative AI deployments, move this to urgent priority.
The best time to prepare was yesterday. The next best time is now.
Generative AI hype makes it tempting to skip readiness and jump straight to deployment. That's how organizations waste millions.
We help you get AI-ready through:
Footnotes
¹ Fivetran, "AI and Data Readiness Survey," May 2025.
² Precisely, "2025 Planning Insights: The Rise of AI," 2024.
³ Gartner Research, "Poor Data Quality Costs Organizations," cited by multiple industry sources.
⁴ Qlik, "AI Survey," February 2025.
⁵ Labovitz, G., & Chang, Y., "The 1-10-100 Rule," 1992.
⁶ MIT Technology Review Insights & Snowflake, "Data Strategies for AI Leaders," 2024.
⁷ Precisely, "Data Quality and Governance Research," September 2024.
⁸ Actian, "The Governance Gap: Why 60% of AI Initiatives Fail" (citing Gartner), July 2025.
⁹ Databricks/Economist Impact, "Unlocking Enterprise AI: Opportunities and Strategies," November 2024.
¹⁰ MIT Technology Review Insights & Snowflake, "Data Strategies for AI Leaders," 2024.
¹¹ Precisely, "Data Quality and Governance Research," September 2024.
¹² Actian, "The Governance Gap: Why 60% of AI Initiatives Fail" (citing Gartner), July 2025.
¹³ NVMD Insights, "Enterprise AI Data Infrastructure: The $3.1 Trillion Mistake," August 2025.
¹⁴ Precisely & DBTA Research, "Data Governance Adoption Survey," 2024-2025.