Where in your operations
are you losing hours?
Pick the situation closest to yours. We will show you what an agent actually does — not a slide about what it could theoretically do.
Automate client intake end-to-end
An intake agent handles form submission, validates required fields against your criteria, enriches the lead from company registries, routes it to the right team member, and drafts the first response email — all before anyone opens their inbox.
- Typical setup: 3–4 weeks to production
- Integrates with your existing CRM — we do not ask you to switch
- Human review step included by default — agent does the prep, not the decision
Fix the handoff layer with coordination agents
When a task moves between teams — sales to delivery, delivery to support — something always falls through. A coordination agent watches the state of each item, pings the right person at the right moment, and writes the handoff summary so no one needs to dig through a Slack thread.
- Works with Notion, Linear, Jira, or plain spreadsheets
- No process reengineering required — agent fits existing flow
- Audit log of every action the agent took — readable by humans
Build a data retrieval agent across fragmented systems
Your team spends 30 minutes per request pulling data from three different tools, normalising it, and formatting a report. A retrieval agent does that fetch-and-format loop in seconds, on demand, and always returns structured output your downstream tools can read.
- Connects to REST APIs, databases, and file exports
- Schema agreed upfront — outputs never change format without notice
- GDPR data handling included in scoping phase
A failed pilot is a useful map — here is what to do with it
Most AI pilots fail for one of three reasons: the scope was too broad, there was no clear success metric, or the output was never connected to anything real. We do a two-hour post-mortem on your previous attempt and give you a specific go/no-go on whether a revised scope is viable.
- Scoping session is a paid engagement — no free consulting in disguise
- We will tell you if your use case is not ready — saves everyone time
- Deliverable: a written scope doc you can take elsewhere if needed
Four types of agents. Built to run, not to demo.
Workflow agents
Agents that replace multi-step human processes: intake, routing, follow-up, reporting. They know when to act and when to hand off to a person.
See scopeData retrieval agents
Fetch, normalise, and format data from multiple sources on demand. Output is structured and consistent — no more ad hoc reports built in spreadsheets at 5pm.
See scopeIntegration agents
Connect systems that were never designed to talk to each other. The agent handles the translation layer, error recovery, and retry logic so your team does not have to.
See scopeWe map your stack before we write a line of agent code
Every engagement starts with a stack scan: what tools you use, where data moves, where it stops moving, and where a human is doing something a machine should handle.
Request a stack scanThings people ask before engaging
Notes from real agent deployments
What actually makes an AI agent good at its job
It is not the model. It is the boundary conditions.
Agent vs automation: the practical difference in a production environment
When a rule-based system is enough, and when it stops being enough.
How we structure agent workflows before writing any code
The planning step that prevents most production failures.