We built Mithra to solve procurement's data foundation problem.
Every ambitious procurement team we talked to had the same issue: their data was too fragmented, too inconsistent, and too manual to support the analytics and AI initiatives they wanted to run. We built Mithra to fix that, once, correctly, at the data level.
The problem we kept seeing in procurement organizations
Mithra was founded by a team that had spent years working with enterprise procurement organizations and kept running into the same wall: brilliant procurement leaders with ambitious transformation programs, blocked at every turn by data that wasn't trustworthy enough to build on.
The dashboards existed. The ERP systems had the data. But the taxonomy wasn't consistent. The supplier list was a mess. The category codes hadn't been reviewed in five years. Every analytics project started with weeks of data cleanup before any real analysis could happen.
We built Mithra because that problem deserved a purpose-built solution. Not a general-purpose data cleaning tool. Not another layer of dashboards over dirty data. A procurement-native platform that understands spend classification, supplier normalization, taxonomy governance, and opportunity analysis at the depth enterprise organizations require.
The name Mithra comes from the ancient deity of contracts and the rising sun, an entity associated with truth, keeping promises, and illuminating what was previously in the dark. That felt right.
Clean data for agentic procurement.
Mithra's mission is to give every enterprise procurement organization a trusted data foundation, clean, classified, governed, and ready for AI agents, analytics, and savings execution. We believe procurement should not have to fight its own data to do its job.
Procurement agents are only as good as the data they reason over.
The industry is embracing AI agents, autonomous sourcing, and intelligent automation. These capabilities are genuinely powerful but they're fundamentally dependent on clean, governed, semantically consistent data to produce trustworthy outputs.
An AI agent reasoning over misclassified spend, duplicated suppliers, and inconsistent taxonomies will produce confident-sounding answers that are wrong. Mithra is the data foundation layer that makes AI-powered procurement actually work.
See the platformRecognized for procurement data innovation

Spend Matters Future 5
Recognized by Spend Matters as one of the procurement technology companies to watch for innovation, differentiated capability, and real customer value.
Google Cloud Partner
Mithra is built on Google Cloud infrastructure reflecting a shared commitment to enterprise security, scalability, and AI capability, and supporting regional data hosting.

25 Hottest European Procurement Startups
Featured among Europe's most promising procurement technology companies for our work on the procurement data foundation problem.
Built by people who understand procurement data deeply
Mithra is built by a team with deep roots in enterprise procurement, data engineering, and applied AI across Amsterdam and Eindhoven.
Backed by the people who built modern procurement.
"Every procurement platform runs into the same wall, the data underneath it isn't clean. Mithra is solving that foundational problem, and that's what makes everything above it work."
Noah EisnerFounder of Coupa"Procurement has spent a decade buying analytics and AI on top of data nobody trusts. Mithra fixes the layer everyone else skipped."
Dr. Marcell VollmerEx VP, SAP & Celonis"I've spent my career in spend analytics, the hardest part was never the dashboard, it was the data. Mithra has built exactly the foundation this market has been missing."
Fabrice SaporitoEx CEO, Sievo"The move to agentic procurement only works if the data underneath is governed and reliable. Mithra is building that backbone the right way."
Moritz ZimmermannEx CTO, SAP & Founder of HybrisBased in the Netherlands


Want to see what Mithra can do with your procurement data?
Our team understands procurement data challenges because we built a platform specifically to solve them. Let's talk about yours.

Rasa Raoufi