Datumo Raises $15.5M to Advance No-Code AI Trust and Safety Tools

ADVERTISEMENT — 728×90

Seoul-based Datumo, co-founded by David Kim and five KAIST alumni, has secured $15.5 million in funding from investors including Salesforce Ventures, KB Investment, ACVC Partners, and SBI Investment, bringing its total raised to approximately $28 million. Originally launched in 2018 as a data labeling platform, the company has evolved into a leader in AI trust and safety, offering tools for testing, monitoring, and improving AI models without technical expertise.

Datumo’s flagship product, Datumo Eval, enables no-code automated evaluation of AI systems for bias, safety, and accuracy. With over 300 clients including Samsung, LG, Hyundai, Naver, and SK Telecom, the company will use the funding to expand global operations and accelerate R&D in AI evaluation technologies across South Korea, Japan, and the U.S.

Featured image: Credit: Datumo

ADVERTISEMENT — 728×90

Need Deeper Intelligence on the AI Market?

AI Insider's Market Intelligence platform tracks funding rounds, competitive landscapes, and technology trends across the global AI ecosystem in real time. Get the data and insights your organization needs to make informed decisions.

Related Articles

Insider Brief China has released its first national standard system for humanoid robots and embodied artificial intelligence, marking a formal move to regulate a fast-scaling

OpenAI announced that ChatGPT has reached 900 million weekly active users, marking a 100 million increase since October 2025, alongside 50 million paying subscribers. The

Perplexity has introduced Perplexity Computer, a new cloud-based agentic system available to subscribers of its $200-per-month Max tier. The platform integrates 19 AI models into

Stay Updated with AI Insider

Get the latest AI funding news, market intelligence, and industry insights delivered to your inbox weekly.

ADVERTISEMENT
300×250

ADVERTISEMENT
300×250

ADVERTISEMENT — 728×90

Subscribe today for the latest news about the AI landscape