
MyDataModels
Develops TADA, the AI-Driven Analytics platform that helps professional understand and treat their data.
Date | Investors | Amount | Round |
---|---|---|---|
- | investor | €0.0 | round |
investor | €0.0 | round | |
investor | €0.0 | round | |
investor investor investor | €0.0 | round | |
* | €3.0m | Seed | |
Total Funding | 000k |
EUR | 2018 | 2019 | 2020 | 2021 | 2022 | 2023 |
---|---|---|---|---|---|---|
Revenues | 0000 | 0000 | 0000 | 0000 | 0000 | 0000 |
% growth | - | - | 51 % | 31 % | - | 3 % |
EBITDA | 0000 | 0000 | 0000 | 0000 | 0000 | 0000 |
% EBITDA margin | - | (695 %) | (686 %) | (903 %) | - | - |
Profit | 0000 | 0000 | 0000 | 0000 | 0000 | 0000 |
% profit margin | - | 41 % | (716 %) | (1057 %) | - | - |
EV | 0000 | 0000 | 0000 | 0000 | 0000 | 0000 |
EV / revenue | 00.0x | 00.0x | 00.0x | 00.0x | 00.0x | 00.0x |
EV / EBITDA | 00.0x | 00.0x | 00.0x | 00.0x | 00.0x | 00.0x |
R&D budget | 0000 | 0000 | 0000 | 0000 | 0000 | 0000 |
Source: Company filings or news article, Dealroom estimates
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