

Most MMP evaluations start with feature lists and pricing. They should start with one question: how long until this tool tells me whether my campaigns are working?
That question has a name — Time to Value. And for MarTech, the answer is worse than almost any other software category. MarTech products take an average of 44 hours to deliver first value — the second-longest TTV in SaaS, with the lowest onboarding completion rate of any category.
For UA teams running paid campaigns, every hour between "we signed up" and "we can see which channels convert" is an hour of ad spend without attribution. That is not a setup inconvenience. It is budget burned without visibility.
Key Takeaways
When evaluating an MMP, teams typically ask about LTV prediction, multi-touch attribution, and reporting depth. These matter — eventually. But none of them determine whether the tool delivers value in your first weeks.
Time to Value measures the gap between adopting a tool and getting the first actionable insight from it. For an MMP, that means: how long from signup to "I can see which channel drove the most trial-to-subscription conversions"?
LTV models require months of subscription data to validate. You need multiple renewal cycles, churn curves, and cohort maturity before LTV predictions become reliable. By the time your LTV model is trustworthy, you have already spent months of ad budget based on incomplete data.
TTV flips the question. Instead of "how well will this tool predict long-term revenue?", it asks: "how fast can this tool show me what is working right now?" For early-stage UA teams — where campaign budgets are limited and every week of blind spend matters — TTV is the more actionable metric.
Userpilot's 2024 benchmark measured Time to Value across SaaS categories. The results for MarTech are not encouraging.

This is not just a MarTech problem — it is a compounding one. ChiefMartec's 2024 State of MarTech report found that:
The pattern: MarTech tools are complex to set up, hard to learn, and most teams never use the full capability. For MMPs specifically, this means teams are paying for features they will never configure — while waiting longer to get the one insight they need.
44 hours is not just a setup delay. It is a strategic cost.
Campaign cycles do not pause while you onboard. If your UA team launched campaigns on Monday, those campaigns are spending budget and generating installs whether your MMP is ready or not. Every install that arrives before attribution is active is an install you cannot tie to a channel, a creative, or a cost.
What this looks like in practice:
The cost of slow TTV is not the setup time itself — it is the decisions you cannot make while you wait. Slow onboarding directly correlates with lower activation rates, and in the MMP context, activation means the moment you can act on attribution data.
MMP Time to Value is not one step. It is a sequence — and not all steps contribute equally.

The unavoidable steps — SDK, channels, testing — are roughly the same across all MMPs. The TTV gap lives in what surrounds them: the purchase process, the schema decisions, and the feature complexity.
Reduce MMP friction. Self-serve signup, predefined events, subscription-focused. $0.05/install, 15K free.
Core Plan is built around one principle: keep the technical steps every MMP requires, strip everything else. The friction layers identified above — purchase process, schema decisions, feature complexity — are the variables Core Plan targets.
The result is a self-serve MMP where you sign up, integrate the SDK, connect your channels (GMAT — Meta, Google, Apple Search Ads, TikTok), and start collecting data. No demo calls. No contract negotiation. No decisions about which events to track — 25 subscription-optimized standard events (Start Trial, Subscribe, Unsubscribe, etc.) are predefined, reducing schema design work without removing the implementation step.
Features that add onboarding scope without value for early-stage subscription apps — fraud detection, raw data export, agency access — are intentionally excluded. The platform surface area is smaller because it is designed that way, not because it is missing capability.
Native RevenueCat and Adapty S2S integration is included in the base — subscription events flow into attribution without additional tier upgrades.
For UA teams where every day without attribution data is a day of budget without visibility, the path to first insight matters.

MarTech's 44-hour TTV is an industry average — and for MMPs with annual contracts and enterprise onboarding, the real number is often higher. Every hour between "we need attribution" and "we have attribution" is an hour of ad spend without visibility.
TTV is not a setup metric. It is a business metric. It determines how fast your team can answer the question that matters: which channels are converting into subscribers?
If your UA team is running campaigns now — or planning to launch soon — the MMP that gets you to first insight fastest is the one that saves you the most budget.

Self-serve MMP attribution. 25 predefined events. $0.05/install. 15K free. Start now on Airbridge Core Plan.

