TMCnet News
New dbt Labs Report Finds AI-driven Acceleration is Outpacing Trust and GovernanceThe 2026 State of Analytics Engineering Report reveals data leaders' concerns over data quality amid rising need for reliability Key findings:
PHILADELPHIA, April 14, 2026 /PRNewswire/ -- dbt Labs, a leader in standards for AI-ready structured data, today released its fourth annual State of Analytics Engineering Report, revealing a growing gap between the speed at which AI is transforming data work and the systems designed to ensure its reliability. ![]() As AI becomes embedded in analytics workflows, organizations are producing data faster than ever, but governance, validation, and trust mechanisms are not keeping pace. As a result, trust in data has emerged as the most widely prioritized organizational objective, rising to 83% year over year. In this environment, organizations that invest in governance, validation, and data quality as strategic priorities are best positioned to scale AI-driven outcomes reliably and turn acceleration into sustainable impact. AI moves from experimental to embedded "Two years ago, most analytics practitioners and leaders didn't expect to be generating the majority of their analytics code with AI. But today, that's where we are," said Jason Ganz, dbt Labs Director, Community, Developer Experience and A. "This signals a fundamental shift in the role of data practitioners, away from manually creating code and toward building the systems that enable agentic data workflows at scale, while providing the trusted infrastructure those agents need to operate reliably. Organizations that treat governance as infrastructure, not an afterthought, are the ones that will make the most of what AI can do." Trust and governance as key enablers of AI at scale In parallel, trust and speed have emerged as the dominant priorities among respondents, clearly separating from cost reduction. The importance placed on increasing trust in data rose sharply from 66% in 2025 to 83% in 2026, while the priority of "shipping data products faster" climbed from 50% to 71%. An emphasis on cost reduction, however, increased by only 5% (from 48% to 53%). "There's a real tension between moving fast and building trust, and you can't optimize for both without intention," said Pooja Crahen, senior manager of analytics engineering at Okta. "That's where discipline in modeling, validation, and ownership becomes a requirement, not a best practice." On April 29, a panel of industry experts from Hex, Ramp and dbt Labs will host the 2026 State of Analytics Engineering Virtual Event. The conversation will focus on the report findings, what the year over year changes signal, and how trust isn't a constraint on AI-driven impact but the determining factor in how far it can scale. Register here: https://www.getdbt.com/resources/webinars/2026-state-of-analytics-engineering-virtual-event Download the 2026 State of Analytics Engineering report at https://www.getdbt.com/resources/state-of-analytics-engineering-2026. Methodology About dbt Labs Learn more at getdbt.com, and follow dbt Labs on LinkedIn, X, Instagram, and YouTube. Logo - https://mma.prnewswire.com/media/2739797/5913955/dbt_Labs_Logo.jpg
|

