Not content marketing. A compounding market presence that makes you the obvious choice. 8-12 posts/month, distributed everywhere buyers research.
They're evaluating models, testing APIs, building prototypes in staging. But nothing is live. Nothing is generating revenue.
Every week you wait, the gap widens. They're closing deals on AI roadmaps. You're still in "evaluation mode".
Everyone has opinions. Nobody has data. You're guessing which AI use cases your users would actually adopt.
Your board sees AI adoption metrics in every meeting. Your sales team closes deals faster because you have AI capabilities competitors don't.
Your engineering team has a repeatable playbook for shipping AI features. No more "we need to research this." No more 6-month "evaluations." They ship AI the way they ship any other feature — with confidence, with instrumentation, with adoption targets.
You're not asking "should we do AI?" You're asking "which AI feature next?"
| Before | After |
|---|---|
| AI strategy is a slide deck | AI strategy is 3-5 shipped features with adoption data |
| Prototypes dying in staging | Production features with 10%+ adoption |
| Engineering researching "which model to use" | Engineering shipping features on a repeatable playbook |
| Board asks "what's our AI strategy?" | Board sees AI adoption, retention lift, expansion revenue |
| Competitors announce AI first | You're known as "the AI company" in your category |
How It Works
A.I.M. runs the engagement. D.A.T.A. ensures your foundation is ready. Together: production AI in 6-8 weeks.
Week 1-2. We identify which AI features would actually move revenue — not which models are coolest.
Week 3-6. We build and deploy one production AI feature — not a prototype, not a proof of concept.
Week 7-8. We track adoption, iterate based on usage data, and hand off a playbook your team can use.
Before we build anything, we run D.A.T.A. — a readiness assessment that tells you if your data can actually support AI. No surprises in week 4.
Do you have enough historical data for model training?
Is your data clean, labeled, and reliable?
Is your event tracking structured for ML consumption?
Can models query your data in real-time, or is it siloed?
Why this matters: We've seen teams spend $200K on AI features only to discover their data couldn't support them. D.A.T.A. catches this in week 1. If your data scores low, we fix that first — before writing a single model training script.
Pricing
One-time · 3 weeks
One-time · 6-8 weeks
Ongoing · 3-month minimum
| AI Opportunity Assessment | $15,000 |
| Data Pipeline Build | $12,000 |
| Model Development | $18,000 |
| AI UX Design | $10,000 |
| Production Deployment | $8,000 |
| Adoption Instrumentation | $7,000 |
| Total itemized value | $70,000 |
| AI Feature Sprint price | $50,000 |
If your AI feature doesn't hit 10% adoption among active users within 60 days of launch, we iterate free until it does. We're incentivized to build something your users actually want — not just something that works technically.
Everything you need to know before booking a call.
Most SaaS companies that struggle with content don't lack writers or ideas. They lack a system that connects content production to actual business growth.
They publish inconsistently. They have blogs but no distribution. They have traffic but no conversions. They have a board asking "what's our content ROI?" and no answer.
The problem isn't the writing. The problem is that there's no content engine underneath it.
We're not the right fit for everyone. Here's how we compare.
| ProductQuant | Growth Agency | Fractional CPO | |
|---|---|---|---|
| What you get | Operating system + shipped features | Recommendations + slide decks | Strategy + guidance |
| Time to value | 6-8 weeks | 3-6 months | 2-4 months |
| Team required | None (we execute) | Your PM + eng team | Your entire team |
| Cost (3 months) | $35K–$65K | $150K–$300K | $60K–$120K |
| What happens after | You own the system | Dependency continues | They leave, system stays |
Note: If you have a strong internal growth team and just need strategic guidance, a fractional CPO might be a better fit. If you want someone to own growth end-to-end long-term, an agency might work. If you want to ship fast and own the system afterwards, we're your best option.
Let's do the math. If you're at $2M ARR with 20% activation and the benchmark for your product type is 35%:
You're converting 15% fewer signups to revenue every month.
At 500 signups/month with $100 ACV: that's 75 users who paid for acquisition and never became customers.
That's $7,500 MRR lost. Every month. $90K ARR burning while you read this.
And that's just activation. We haven't talked about churn, expansion, or competitive positioning.
6-8 weeks from now, this could be fixed. Or you could keep burning $90K/month. Your call.
We're so confident in our system that we put our money where our mouth is.
If your AI feature doesn't hit 10% adoption among active users within 60 days of launch, we iterate free until it does.
If we don't ship production features in 6-8 weeks, you pay 10% less per week of delay. If we miss by 4+ weeks, the final 4 weeks are free.
If we can't find $100K+ in addressable revenue opportunity in the first 6 weeks, we won't continue the engagement. No hard feelings.
Everything we build is yours. Code, dashboards, playbooks, documentation. We don't rent you a system. We install one you own.
6-8 weeks. Production-ready. 10% adoption guaranteed.