Lowest prices guaranteed for GDPR Sensitive Data Discovery & SharePoint Metadata and Taxonomies. TermSet has developed 2 ground breaking Artificial Intelligence products. ScanR is a low cost software product that helps organisations comply with the GDPR, helping towards avoiding potential security breaches and substantial fines. Understands your organisations personal sensitive data and automates the process to quickly respond to Right to be Forgotten/Subject Access Request's. TagR is a low cost software product that helps organisations enrich their SharePoint search and accelerate migrations to O365. Automatically applies Metadata and Taxonomies to documents stored within SharePoint, with no burden on the users or the IT team. GET A FREE TRIAL www.termset.com
| Website | http://www.termset.com |
| Revenue | $7.6 million |
| Employees | 3 (0 on RocketReach) |
| Founded | 2014 |
| Address | 71 - 75 Shelton St, London, Greater London WC2H 9JQ, GB |
| Industry | Information Technology and Services, Software Development & Design, Information Technology, Business/Productivity Software, Software, Security, Database Software, Privacy and Security |
| Web Rank | 28 Million |
| Keywords | Artificial Intelligence Software, Gdpr Compliance Software, Ai Powered Software, Data Privacy Software, Data Security Software, Information Governance, Data Governance, Metadata Management, Regulatory Compliance, Compliance Automation, Affordable Software Solutions, Sharepoint Solutions, Document Management, Low Cost Software |
| Competitors | SDL, Smartling, Phrase, XTM International, Memsource, Transifex, Wordbee, POEditor, Crowdin, Lokalise +36 more (view full list) |
| SIC | SIC Code 73 Companies, SIC Code 737 Companies |
| NAICS | NAICS Code 5182 Companies, NAICS Code 518 Companies, NAICS Code 51 Companies |
Looking for a particular TermSet employee's phone or email?
The TermSet annual revenue was $7.6 million in 2026.
TermSet is based in London, Greater London.
The NAICS codes for TermSet are [5182, 518, 51].
The SIC codes for TermSet are [73, 737].