Datafold, Inc.

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Datafold, Inc. - overview

Established

2020

Location

Walnut Creek, CA, US

Primary Industry

Software

About

Datafold, Inc. is a data management company that specializes in automated data migrations and quality testing, designed specifically for data engineering teams to enhance operational efficiency and data integrity. Founded in 2020 by Gleb Mezhanskiy, Datafold, Inc. operates out of Walnut Creek, US.


The company focuses on providing an advanced platform that facilitates automated data migrations, allowing businesses to transition to modern data stacks effectively. Gleb Mezhanskiy, who serves as both CEO and Founder, has a history of entrepreneurial ventures, although specific prior companies are not mentioned. Datafold has successfully completed 4 deals, with its most recent funding round occurring on May 13, 2025, where it raised USD 4. 00 mn in venture funding.


Datafold offers an advanced platform focused on automated data migrations and quality testing, aimed primarily at data engineering teams. Their core product enhances the data migration process by enabling organizations to transition to modern data stacks without the traditional pitfalls of legacy systems. Key functionalities include automated testing for data accuracy, mapping of column-level lineage to understand migration complexities, and converting various SQL dialects into target systems with a feedback loop for code refinement. The platform's capabilities are designed to streamline workflows, increase operational velocity, and improve data quality, ultimately transforming data engineering's impact within organizations.


Datafold serves over 50 technology companies, including leading data warehouses and lakes across North America and Europe, targeting businesses that require efficient data management and quality assurance processes. The revenue model of Datafold is structured primarily around subscription services for their automated data migration and quality testing platform. Clients typically engage with the company through a B2B model, entering into agreements that allow them to utilize the platform’s capabilities on a subscription basis. This includes tiered pricing plans tailored to customer needs, involving different levels of service and support.


Datafold's flagship services, such as automated testing, data diff tools, and anomaly detection, are integral components of these subscription packages, providing comprehensive solutions to enhance data operations. Specific pricing details for these plans are determined during client engagement, ensuring alignment with unique organizational requirements. Datafold plans to leverage its recent funding of USD 3. 99 mn raised in May 2025 to develop new products aimed at enhancing its platform's capabilities.


The company is focused on expanding into new geographic regions, particularly targeting markets in Asia and Latin America by the end of 2026. This expansion will facilitate broader access to their automated data migration and quality testing services, allowing them to cater to a growing global client base.


Current Investors

New Enterprise Associates, Good News Ventures, BT Growth Capital

Primary Industry

Software

Sub Industries

Analytics & Performance Software, Engineering Software

Website

www.datafold.com

Verticals

Big Data, Cloud Computing

Company Stage

Series A

Total Amount Raised

Subscriber access only

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