RAG Review & Audit

Your RAG prototype won't make it to production?

Hallucinations, weak retrieval, no evaluation, no path to production? We diagnose architecture and retrieval quality and take your RAG system to production, GDPR-compliant and on-premise capable.

Typical symptoms

Why RAG prototypes stall.

Hallucinations
Weak retrieval
No evaluation
Not compliance-ready
Unstable in production
No path to production
Enable

RAG Workshop

From concept to a production-ready RAG pipeline in three days, quantitatively validated.

In the workshop

Three days, one common thread.

Day 1: naive RAG
Day 2: retrieval quality
Day 3: architecture & operations
Quantitatively validated (Ragas)
Practice dataset included
Max. 10 people
Operate

Managed RAG

Monitoring, evaluation and ongoing development of your RAG system in production.

In operation

What we take care of.

Monitoring
Quantitative evaluation
Ongoing development
Updates & maintenance
Escalation
Reporting
RAG engineering from Minden

We take RAG to production

Many AI projects stay a demo. We build AI systems that run in production, with a focus on RAG, GDPR-compliant and on-premise capable.

What we work with

Microsoft, open source, or something of your own.

Azure AI Search
Microsoft Copilot
Microsoft Fabric
Vespa.ai
Qdrant
pgvector
Chroma
Your stack
Member of the KI Bundesverband
GDPR-compliantOn-premise capableVendor-neutral
01 · RAG Review & Audit

We assess what is missing for your RAG prototype to make it into production.

Many RAG systems shine in the demo and fail in real operation. In a RAG review we analyze architecture and retrieval quality, find the weak spots and show the concrete path to production.

The result: a clear diagnosis with prioritized actions.

See RAG Review & Audit
What we look at
Chunking strategy
Retrieval & reranking
Model selection
Evaluation with Ragas
Cost & latency
Production readiness & monitoring
02 · The Problem

Every day your employees search for knowledge & can't find it fast enough.

Contracts, policies, tickets, emails: it all exists, but spread across SharePoint, file servers, CRM, and half a dozen tools. What you need right now, you still can't find.

ChatGPT barely helps: it doesn't know your internal documents and often isn't allowed to see them for compliance reasons. And low-code builders break the moment things get serious.

The answer is Retrieval Augmented Generation (short: RAG): an AI-based method that looks things up in your own documents and gives sourced answers.
But few RAG prototypes make it from test to real operation. That's exactly our work.

30-minute initial consultation

A free initial call: we'll look at your use case, assess feasibility honestly, and tell you whether and how RAG pays off for you.