Fivetran, a leader in cloud data integration, is reportedly in advanced acquisition negotiations with dbt Labs, aiming to merge data movement with transformation capabilities and create a more unified analytics platform; the deal could place the combined entity’s value between $5 billion–$10 billion. The Information first broke the news, indicating the merger would pair Fivetran’s strength in automated ETL/ELT pipelines with dbt’s dominance in data transformation workflows. SiliconANGLE reports the merger could reduce overlap, accelerate AI-data prep, and further consolidate the modern data stack. Meanwhile, market observers note Fivetran has already acquired Tobiko Data this September to bolster its transformation capabilities and show readiness for deeper integration strategies.
Sources: The Information, Fivetran
Key Takeaways
– The merger would deepen consolidation across the data stack, combining Fivetran’s pipeline/connector strengths with dbt’s transformation leadership.
– Fivetran’s recent acquisition of Tobiko Data signals a broader strategic push to own transformation tooling ahead of any possible deal.
– If completed, the deal could reshape competitive dynamics in enterprise data, especially around AI readiness, governance, and end-to-end analytics platforms.
In-Depth
In the evolving landscape of enterprise data infrastructure, the reported merger talks between Fivetran and dbt Labs mark a potentially pivotal moment. For years now, the “modern data stack” has been assembled in modular fashion: ingest or replicate data via ETL/ELT tools, then transform and model via analytics or transformation layers, then push insights into BI and consumption layers. But that modularity comes with friction, latency, and redundancy. The notion behind a Fivetran-dbt deal is to reduce those inefficiencies and present a more compelling, cohesive platform.
Fivetran has long staked its claim as a robust, scalable engine for moving data—connecting various sources and automating extraction, loading, and pipeline orchestration. Meanwhile, dbt (data build tool) became central in analytics engineering by giving data teams a way to codify transformations in SQL, version control them, test them, and enforce quality. Those transformation capabilities are now indispensable across many organizations. The merger would effectively fold the “T” (transform) firmly under the umbrella of the “E” and “L” (extract/load), making the combined stack more seamless.
However, the move comes with complexity. The two companies already have overlapping customers who integrate Fivetran’s data pipelines with dbt’s transformation workflows. That overlap is both a risk (due to redundancy) and opportunity (ease of consolidation). As SiliconANGLE notes, combining their infrastructures could eliminate duplication, streamline AI data prep, and reduce fragmentation. Behind the scenes, anonymous sources say enterprise value for the combined entity might land in the $5B–$10B range.
It’s also telling that Fivetran has been actively expanding beyond ingestion: in early September 2025, Fivetran announced its acquisition of Tobiko Data (creators of SQLMesh and SQLGlot), with the explicit aim of enhancing its transformation layer and positioning itself as an end-to-end data platform. That acquisition acts both as a stepping stone and as signaling to the market that Fivetran means business beyond simple movement of data.
If the merger goes through, the competitive map could shift. Other data platform providers—Snowflake, Databricks, and emerging transformation stacks—would need to reassess how to defend or reposition themselves. For Fivetran and dbt, the unified company could accelerate AI readiness (by ensuring transformations are closer to source), offer stronger governance, and yield better developer experience by collapsing handoffs.
In sum, these talks reflect a broader trend: as data becomes ever more central to AI and analytics, infrastructure providers are pushing for vertical integration. For customers, it may simplify complexity—and for competitors, it raises the bar for who can deliver a truly unified, scalable, secure data platform.

