I run my own company on AI — not as a pilot, not as a concept, but as the actual operating model, every day. I've already made the mistakes, found the edge cases, and worked out what doesn't scale before my clients ever see it.
But even running that way, I was in the room when a senior manager who'd been using the same workflow for 15 years stopped using the new system the moment the field labels changed. Someone had to sit next to him for three days before it clicked. AI got smarter. That messy, human part didn't go away.
So the real question is: what do you hand to AI, and where does human judgment stay in the loop? Designing that boundary is what's needed most right now. That's where a sounding board session starts.
AI moved from "something you use" to "something that works alongside you." Claude Code, Cursor, Microsoft Copilot — agents reading files, writing code, making decisions. The question is no longer whether you use AI. It's whether you've designed where the boundary sits.
The companies getting results aren't the ones with the best AI tools. They're the ones that designed what AI handles and what stays with humans — before the rollout, not during the cleanup after.
At one company I worked with, the mandate was simple: no work on Wednesdays that doesn't involve AI. That sounds blunt, but it worked — because it came after the harder work. The team had already mapped out which decisions could be handed off and which ones couldn't. The mandate didn't create the momentum. The prior clarity did.
At a manufacturing client, we rebuilt the estimate entry screen to look exactly like the one they'd been using for 12 years. A modern interface would have been unused within a week. There's nothing wrong with the people — a 55-year-old who's built their whole workflow around one screen doesn't need a redesign, they need their workflow respected.
Then there's the flip side. At another company I worked with, AI made the team 30 times more efficient — and immediately broke something else. Procurement couldn't keep up with the volume. And as the AI automated more, the checkpoints where humans would normally catch errors became invisible. More throughput, less oversight. Nobody had designed for what happens when it works too well.
Nobody designed
what happens
when it works.
Honest note
This is not the right fit if:
This is the right fit if:
You want to change how the work actually happens
"I watched the AI hit 30× throughput in week three.
By week eight, there were 2,800 procurement tasks
with nobody assigned to review them.
Getting it to run was never the hard part.
Knowing what breaks next — that's the work."
— Shogo Harada, CEO, Linnoedge
These come up in almost every conversation — regardless of company size or industry.
Depending on where your organization is stuck, the sounding board session will surface a different next step. It might be one of the paths below — or it might be "not right now" or "a different vendor would be a better fit." Either way, you'll leave with a clearer picture than you came in with.
ChatGPT, Copilot, Gemini — licenses distributed, and maybe 20% of the team actually uses them. This is the most common pattern we see right now.
The first thing we do is spend a week observing how the tools are actually being used, and more importantly, why they're not. Almost every time, the answer isn't the tool — it's the workflow. Nobody mapped out which decisions can go to AI and which ones need a human. Until that's clear, more training just adds noise.
We redefine the scope for one workflow, make the boundary explicit, and run it there first before spreading it further.
Before getting internal sign-off, there's more to sort out than success metrics. Who's making decisions? Who's checking the outputs? Who stops the process when something's off?
Without that role design in place first, even a well-defined success metric doesn't move the team. We set the exit threshold before anything is built — so if it doesn't work, the course correction happens while the damage is still manageable.
We help you go into budget approval with numbers you can actually report on — not "we'll see how it goes."
With AI agents in the mix, a system that would have cost $130,000 to build two years ago can now come in around $65,000. That's real — but it's the development cost, not the full picture.
This becomes especially critical with agentic AI systems — RAG pipelines, LLM-orchestrated workflows, and multi-step automation — where the model makes sequential decisions without a human in the loop for each step. The boundary between autonomous execution and human escalation must be explicit before deployment, not discovered during a production incident.
Getting the system to stick in the actual workflow takes more time than building it. Before any code is written, someone needs to go on-site, watch the work happen for a day, and understand what's on which screen, in what order, and what decisions get made where. That's where the boundary gets drawn: which tasks go to AI, which ones stay with the person.
Skip that step, and you get a technically correct system that nobody uses.
Wherever you enter, the destination is the same — AI and humans each have a defined role, and the work is actually different. The path there depends on where you're starting from.
Measure first
Reaching out cold can feel like a big step. So before that, two free tools to see — right here — whether now is the right time for you, and how much your cost would change. Bring the result to a 30-minute session, and the conversation moves a lot faster.
Answer eight questions and we score your readiness, then send back three specific recommendations from your answers. Not “you should do this” — “here’s what to do, in your situation.”
Check your readiness → Cost calculator / instantEnter your team size and budget, and see how the next 12 months change — right here, with the reasoning behind the numbers laid out.
Calculate your cost →You invested in AI. The tools are there. But the results aren't showing up — or nobody's using them. Most of the time, the cause isn't the technology.
If anything on this page felt like it was describing your situation, that's enough. Use the 30 minutes to say it out loud.

I run my own company the way I tell clients to run theirs — AI in every workflow, not as a side project, but as the actual operating model. Almost no hour of my workday happens without AI in some part of it.
Which means I bring the session what most consultants don't: I've already made the mistakes, hit the edge cases, and worked out what doesn't scale. Not a slide deck about AI potential — what I've actually seen break.
Based in Ho Chi Minh City. Working with companies in Japan, Southeast Asia, and globally.
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