
don't start with a chatbot
The first step is to measure where AI can reliably add value.

And what works better.
Many organisations start AI in support by connecting their Knowledge Base to a chatbot. For simple, frequently asked questions, this yields an acceptable result. But for complex queries — where customer configuration, permission structures, integrations, historical tickets or product logic play a role — this approach consistently falls short.
Because AI in support directly touches customer data, permission structures and internal processes, trust is not a secondary concern. A Support AI Service must be smart, but also verifiable, secure and explainable.

precisely where it matters most.
The most common approach sounds logical: connect the existing Knowledge Base to a language model and let AI answer the questions. For password resets and standard how-to's, this yields acceptable results. But the questions that require the most expertise — those involving customer configuration, permission structures or integration errors — depend on context that simply is not in a Knowledge Base.
| Support Query | Why a chatbot falls short here |
|---|---|
| Why does user X not have access to module Y? | Dependent on permission structure and customer configuration — not in the KB |
| Is this a bug, a configuration issue or an integration problem? | Requires diagnosis based on multiple data sources simultaneously |
| Which setting determines this behaviour? | Found in functional logic or tenant configuration, not in an article |
| Has this issue occurred before with this customer? | Requires searching historical tickets, not the Knowledge Base |
| Does Engineering need to be involved? | Requires assessment of risk and urgency across multiple signals |
The biggest costs of complex support tickets are not in the answering itself — they are in the research that precedes it. Every time an agent searches across four systems before giving an answer, time, focus and institutional knowledge are lost.
| Hidden Cost Factor | Operational Effect |
|---|---|
| Searching multiple systems | Longer handling time per ticket |
| Incomplete escalations | More back-and-forth between teams |
| Knowledge in agents' heads | Dependency on senior support availability |
| Inconsistent answers | Lower customer trust and more follow-up questions |
| No feedback loop | The same questions keep recurring without resolution |

in your organisation?

Not as a customer-facing chatbot.
For each incoming ticket, the AI works through a structured process — shifting its role from responder to intelligent preparer. Agents spend less time on research and more time on actually solving problems.

Then externally.
| Escalation Package Component | Purpose |
|---|---|
| Brief problem summary | Immediate clarity for the receiving team — no re-reading required |
| Relevant customer context | No back-and-forth for basic account or configuration information |
| Sources consulted | Transparency on what has already been investigated |
| Probable cause | A well-founded starting point for diagnosis |
| Missing information | Clear indication of what is still needed to resolve |
| Urgency and risk assessment | Correct prioritisation from the first handover |
| Draft response to customer | Ready for validation after internal consultation |
MFORZ advises against having AI communicate with customers independently from the outset. The first step is always an internal Support AI Service. Trust in AI is not built through full autonomy — it is built through verifiable support.

that works.
| Measurement Point | What is Measured |
|---|---|
| Classification accuracy | Does AI identify the correct type of support query? |
| Source selection | Does AI select the correct knowledge buckets per query? |
| Draft response quality | Is the response usable for the support agent without major editing? |
| Escalation quality | Is the internal handover complete and immediately actionable? |
| Risk recognition | Does AI recognise when human review is necessary? |

and implementation capability.

Business Case Scan
