
Promethium
Automating data governance and analytics for the modern age.
Date | Investors | Amount | Round |
---|---|---|---|
- | investor investor | €0.0 | round |
investor investor | €0.0 | round | |
investor investor | €0.0 | round | |
* | $26.0m | Series A | |
Total Funding | 000k |
USD | 2019 | 2020 | 2021 | 2022 | 2023 |
---|---|---|---|---|---|
Revenues | 0000 | 0000 | 0000 | 0000 | 0000 |
% growth | - | 157 % | - | 33 % | - |
EBITDA | 0000 | 0000 | 0000 | 0000 | 0000 |
Profit | 0000 | 0000 | 0000 | 0000 | 0000 |
EV | 0000 | 0000 | 0000 | 0000 | 0000 |
EV / revenue | 00.0x | 00.0x | 00.0x | 00.0x | 00.0x |
EV / EBITDA | 00.0x | 00.0x | 00.0x | 00.0x | 00.0x |
R&D budget | 0000 | 0000 | 0000 | 0000 | 0000 |
Source: Dealroom estimates
Related Content
Promethium, founded in 2018 by Kaycee Lai, operates as a data analytics platform designed to simplify how businesses access and interpret data. Lai, a self-described "data geek" with nearly two decades of experience in technology at companies like EMC, VMware, and Microsoft, started Promethium to address the slow and broken workflows he experienced as a data analyst. His background in bringing disruptive technologies to market shaped the company's mission to make data-driven decisions accessible to every employee in real time.
The company provides a collaborative analytics platform that serves both business users and technical data teams within large enterprises. Promethium's business model centers on its AI-powered data fabric, which provides unified access to an organization's data without requiring it to be moved or centralized. This approach is designed to eliminate the bottlenecks and complexity associated with traditional data management, such as ETL (Extract, Transform, Load) processes. Revenue is generated by enabling enterprises to reduce project backlogs and accelerate the time it takes to get answers from business questions, effectively turning complex queries into consumable insights within minutes instead of months.
Promethium's core product is the "Instant Data Fabric," an agentic platform that connects to over 200 different data sources, whether they are on-premise, in the cloud, or in SaaS applications. A key feature is the ability for users to ask questions in natural language. The platform's "360° Context Engine" then interprets the query, discovers the most relevant data across various systems, and automatically generates the necessary SQL code to provide an answer. These results are delivered as "Data Answers"—complete data products that include the query, visualizations, metadata, and lineage, which can then be shared or integrated with other business intelligence tools like Tableau or PowerBI. The platform also features "Mantra," a Data Answer Agent that orchestrates the process from question to answer, improving over time through a human feedback loop.
Keywords: data fabric, data analytics, self-service analytics, natural language query, business intelligence, data virtualization, federated query, data management, AI-native, enterprise data
Tech stack
Investments by Promethium
Edit