Every company I talk to has the same two questions about AI: where do we start, and who runs it. The instinct is to answer the second question by hiring a Chief AI Officer. For most mid-market companies, that instinct is early — and expensive.
I've spent a decade inside the machines that run at scale: Site Reliability Engineering at Google, machine learning and cloud architecture at BMW, big-data marketing science at Fashion Nova. The pattern I keep seeing is that AI value doesn't come from seniority on an org chart. It comes from one capable operator who can pick the right problem, ship a working system, and hand it off.
The full-time CAIO problem
A full-time Chief AI Officer is a seven-figure commitment before a single model reaches production. You're betting a large fixed cost on a fast-moving field, and you're asking one person to be strategist, architect, builder, and educator at once. Most companies don't have twelve months of AI roadmap to justify the seat — they have three or four high-value use cases and a team that needs to learn.
You don't need someone to think about AI full-time. You need someone to ship it part-time, and leave your team able to run it.
That's the gap a fractional model fills. I embed with a team a day or two a week, own both the strategy and the execution, and work against a small set of outcomes everyone can see.
What the engagement actually looks like
The first few weeks are unglamorous on purpose. We map where AI pays off in your specific business, prioritize by value and feasibility, and cost it honestly. Then we build the highest-leverage use case — not a slide, a working system — and instrument it so leadership can watch the number it's supposed to move.
- Strategy & roadmap. Where AI pays off, prioritized and costed against real constraints.
- Architecture & tooling. The right stack, models, and vendors for your scale — not the trendiest.
- Build & ship. Priority use cases delivered to production, with reliability treated as a feature.
- Enablement. Your people trained to run and extend it after I roll off.
Why now, and why not forever
This model has a shelf life, and I'll say so plainly: in two or three years, AI fluency will be table stakes and larger companies will absolutely justify a full-time chief. But for the next stretch — where the technology moves faster than any single hire can keep up with, and where most teams need momentum more than headcount — a fractional seat is the honest answer.
If that sounds like where your company is, that's exactly the conversation I like to have. Book a strategy call and we'll find your first use case together.