Modern data warehousing for fintechs — Snowflake, BigQuery, Databricks. Dimensional models for unit economics, cohort analysis, customer LTV, and the investor metrics that drive your next fundraise. Built to reconcile against the ledger because investor-grade data starts with financial accuracy.
Dimensional models for unit economics — CAC, LTV, payback period, gross margin by customer segment and acquisition cohort. With the definitions locked and reconciled to the financial statements so the numbers tell a consistent story.
The complete investor metrics suite — ARR/MRR, NDR, GRR, monthly burn, runway, expansion revenue, churn. Reconciled to recognized revenue in the GL. Board-ready every month without the three-day scramble.
Transaction volume, TPV, take rate, approval rates, and the product usage analytics that product and engineering teams need. With the dimensional model that supports both aggregate reporting and individual-transaction investigation.
Data engineering for fintech — event-driven pipelines, real-time CDC, ledger sync, and reconciliation at transaction sca...
Microsoft Fabric for fintech — OneLake for ledger, product events, and growth metrics with real-time transaction monitor...
Data integration for fintech — API integration, ledger sync, real-time CDC, payment processor connection, and reconcilia...
Data analytics for fintech — product analytics, growth metrics, activation funnels, and conversion optimization....
Snowflake is the most common at fintechs because of the ease of data sharing with partners and investors. BigQuery wins for fintechs deep in GCP. Databricks wins when the data science workload (ML models for fraud, credit, underwriting) is as important as the analytics workload. We help you choose based on your actual workload mix.
By locking definitions in the semantic layer — documented, version-controlled, and changed only through a deliberate process. When a definition does change (which is sometimes necessary), we track both the old and new calculation so the board can see the trend on a consistent basis.
Yes. Pre-qualified data warehouse architects with fintech experience — unit economics modeling, cohort analysis, investor metrics, ledger reconciliation, and the analytical rigor that investor-grade data requires. 92% first-match acceptance.
Locked definitions, ledger reconciliation, board-ready every month — the warehouse your next fundraise depends on.
Tell us what you need. We will send curated profiles within 4 days.