Chatbot Development
LLM-powered chatbots that answer from your own knowledge base, escalate cleanly to a human and give you analytics on what customers actually ask.

What you get
Conversational AI build
A chatbot that understands natural language and handles real customer questions — not a decision tree in disguise.
Knowledge base integration
The chatbot answers from your actual documentation — not generic training data.
Escalation to human
Smooth handoff to a human agent when the bot reaches its limits — no customer left in a dead end.
Analytics dashboard
Visibility into what customers are asking, where the bot succeeds and where it needs improvement.
How we work
Use case scoping
We identify the enquiries worth automating — the high-volume, low-complexity questions your team answers repeatedly.
Knowledge curation
We work with your team to structure the knowledge base the bot will draw from.
Build and test
We build the bot, test it against real customer questions and iterate until quality meets the bar.
Deploy and optimise
We deploy on your website or messaging channel and refine based on real conversation data.
Chatbots That Answer From Your Own Knowledge
A useful chatbot is not a scripted decision tree dressed up with a chat bubble. It is a conversational assistant that understands a question phrased in the customer's own words and answers from your real documentation — your help articles, your policies, your product details — rather than the generic knowledge baked into a model. That grounding is what separates a bot people trust from one they abandon after the first wrong answer.
The most common problem we are brought in to solve is volume. A business answering the same twenty questions by email and phone all day is spending skilled time on enquiries that never needed a human. A well-built assistant absorbs that repetitive load, replies instantly at any hour, and quietly hands the rest to a person. The aim is deflection of the predictable, not replacement of the team.
Where chatbot work differs from broader AI integration is its focus: this is a conversational surface for customers, tuned for tone, accuracy and a clean escalation path, rather than a model embedded silently inside your product or back office.
How We Ground and Contain the Bot
We build on LLMs from the Claude and OpenAI families and ground them with retrieval-augmented generation over your content. Your documents are chunked, embedded and stored in a vector index, so each answer is assembled from the passages most relevant to the question rather than guessed. When the bot has no good source, it is built to say so and offer a handoff instead of inventing a confident wrong answer.
Containment is deliberate. We set the scope of what the bot will discuss, add guardrails against prompt injection and off-topic drift, and define the exact conditions that trigger escalation to a human — low confidence, sensitive topics, or an explicit request to speak to someone.
- RAG over your docs so answers cite your content, not training data
- Deployment to website chat, WhatsApp or Telegram channels
- Clean escalation to a human with full conversation context passed across
- Analytics on top questions, deflection rate and unanswered queries
- Guardrails against off-topic, unsafe or injected prompts
What's Included and Indicative Timeline
A build includes use-case scoping to pick the enquiries worth automating, knowledge-base curation, the conversational build itself, testing against real customer questions, deployment to your chosen channel, and an analytics dashboard so you can see where the bot succeeds and where it needs more material. We iterate on the knowledge base after launch, because the gaps only become visible once real customers start asking.
A focused website or messaging assistant grounded in an existing knowledge base typically takes two to four weeks. Multi-channel deployments and bots that need to act on your systems — checking an order, booking a slot — take longer and are scoped after we see the integrations involved.
Who It Suits and When It Does Not Fit
Chatbots earn their place in businesses with high enquiry volume and a stable set of repeated questions — retail, hospitality and professional services are the clearest fits. The return is sharpest where customers expect quick answers outside office hours and where a delayed reply costs a sale.
A chatbot is the wrong tool when enquiries are low-volume but highly bespoke, when every conversation genuinely needs human judgement, or when there is no documentation for the bot to draw on. Without a real knowledge base to ground it, even the best model will disappoint, and we would rather fix that first than ship a bot destined to mislead.