Support diagnosis
You don't yet know where to startWe review volumes, repetitive cases and your history. Deliverable: where AI fits and what stays resolved by people.
2–3 weeksHome / C.A.T
Service area · 03The C.A.T —our Technical Support Centre— resolves with an AI agent on the 24×7 front line and, behind it, people in tiers (N1–N2–N3). It resolves over the service's historical knowledge and, when it escalates, does so with the full context. Already in production in regulated healthcare.
AI handles the front line 24×7: common cases are resolved on the spot and people focus on what needs judgement.
The history is the memory: every ticket, document and past resolution feeds the agents, so the knowledge stays.
Clean escalation by confidence level: the agent resolves when it is sure and hands over to a person when it is not, always with the full trace.
On-premise deployment for data-sovereignty environments: the agents work where the information is, not the other way round.
AI handles the front line; people step in when the case calls for it.
A front line that resolves what can be resolved and escalates with judgement and full context. Already in production in regulated healthcare.
A single point of contact and resolution with a living knowledge base. Target: ≥ 65% resolved at first contact.
Deep diagnosis and problem management: eradicate the cause, don't repeat the patch. A monthly top-10 of recurring incidents.
Code, architecture and vendors. Escalation arrives with the full context: nothing is lost along the way.
All with a clear deliverable and scope. You decide how far to take the automation.
We review volumes, repetitive cases and your history. Deliverable: where AI fits and what stays resolved by people.
2–3 weeksAn agent resolving over your history on a bounded scope, with escalation to a person. Deliverable: an agent in production and its measurement.
4–8 weeksN1–N2–N3 support with AI on the front line, SLAs and traceability. On-premise if your data cannot leave.
Ongoing serviceReal deflection, where the market is heading and why a good service ends up shrinking its own volume.
Full resolution, with no human and no reopening — not auto-replies. Best-in-class 2026: 40–60%.
Gartner: by 2029 agentic AI will resolve 80% of common incidents on its own, at −30% cost.
Every resolution that moves down a tier costs 3 to 10 times less. A good service shrinks its own volume.
The service's knowledge outlives staff turnover: every resolution leaves accumulated judgement.
Your operation as a service: enforceable SLAs, a single owner and agreed reversibility.
View area → 02Senior squads led by Mindden that take on work packages and answer for delivery.
View area → 04Our own platform — Process Mining, WEAVER and ENGRAM. From data to agents.
View area → 05Turnkey projects with factory discipline: software, data, QA and apps.
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