SqlDBM
Cloud Data Modeling Platform for Enterprise Teams
San Diego, United States · Founded 2017 · $9.8M raised
- Headquarters
- San Diego, California
- Employees
- 51–200
- Founded
- 2017
- Business Model
- B2B
- Website
- sqldbm.com
- Total Funding
- $9.8M
- Last Round
- $218K SeedJan 2026
- Rounds
- 2
About
SqlDBM is a cloud-based data modeling platform purpose-built for enterprise teams working with modern cloud data warehouses. It enables data engineers, architects, and analysts to design, document, and collaborate on database schemas visually, with native support for Snowflake, Databricks, Google BigQuery, Microsoft Azure Synapse, Amazon Redshift, AlloyDB, SQL Server, MySQL, Oracle, and PostgreSQL. The platform features automated DDL generation, version control, forward/reverse engineering, and team collaboration tools, making it the preferred modeling workspace for data-driven organizations.
Summary
SqlDBM is a Data Modeling company based in San Diego, United States, founded in 2017. It has raised $9.8M in total across 2 rounds, most recently a $218K Seed round in Jan 2026. Investors include Headline, Counterpart Ventures and Uncorrelated Ventures.
Tech & App Stack
3 technologies & apps tracked
Create a free account — 10 credits a month to unlock the full tech & app stack, funding history, and valuations.
Sign up to view the funding chart
Create a free account — you'll get 10 credits a month to unlock funding history, valuations, and tech stacks.
Funding History
Jan 2026
Sign up to see all 2 rounds
Full funding history, per-round amounts, and investor participation.
Investors
Similar Companies

Cloud collaboration platform that enables teams to build custom apps on top of shared data to pow...

Databricks is the pioneer of the data lakehouse, a unified platform for data science, machine lea...

Quest Software (Nasdaq: QSFT) is a provider of application and information availability software ...
Palantir Technologies builds data integration and analytics platforms (Gotham and Foundry) for go...

Economic infrastructure for the internet.
ML inference infrastructure for deploying and serving AI models at scale, performantly and cost-e...