Clicks and signups are noise – predictive LTV platforms let you target high-value visitors before the first ad dollar is spent.
ENTRY ANGLES
AI platforms that predict customer outcomes and connect predictions to actionable levers · LTV optimization tools for companies with defined ideal customer profiles · Domain-specific prediction systems for ad targeting, inventory, and promotional decisions
VERTICALS
CAPABILITIES
Machine learning/predictive modeling with domain-specific training data, Integration with operational levers and business systems, Customer segmentation and LTV analysis expertise
VOYANTIS FOUNDER
“What if you knew in advance who would actually pay?”
Marketing has a tendency to drift toward a single obsession: traffic. Spend on ads, get people to the site. Once that loop is running, performance gets measured in the fastest available signals – cost per click, cost per registration, cost per trial signup.
But clicks and signups don't pay the bills. Revenue does. The more important question is: who among those visitors will actually buy, come back, convert from free to paid, or be worth a sales team's time? Those are the people who matter – and they look identical to everyone else in early behavioral signals.
"What if you knew in advance who would actually pay?" is the core question Voyantis asks. The obvious answer: spend less, earn more.
Voyantis built a predictive AI platform that forecasts the long-term value of every user a company is targeting or has acquired. Within the ad platforms of Google or Meta, optimization is typically set against single-event targets: a click, a signup, a first purchase. Voyantis adds LTV (Lifetime Value) as an optimization signal – and applies it across the full customer lifecycle.
That coverage spans four stages: acquisition (ad clicks), activation (completing a meaningful action on the platform), monetization (converting to paid and expanding), and retention (renewals and repeat purchases). At each stage, Voyantis is actively adjusting the available levers – bid strategies, messaging, timing – based on predicted lifetime value.
The model runs on behavioral signals that don't require personal data: device types, location, behavioral patterns, and similar public-facing attributes. And crucially, it doesn't require manual intervention. Voyantis connects directly to ad platforms and engagement systems and updates them automatically as its models evolve.
The results reported by clients are concrete. Customer acquisition cost drops an average of 36%. Annual subscription rates increase by 35%. Revenue per subscriber grows by 26%.
Miro used the platform to increase enterprise plan upgrades by 30%. Notion improved return on ad spend by 38% within the same budgets.
Voyantis appeared in 2022 with a $19M debut round – which immediately drew [attention here](/review/predskazyvat-stalo-vozmozhno). Revenue has tripled annually since, and in 2024 the customer base grew threefold – all with a team of just over 70 people. That trajectory has now produced a $41M follow-on round.
Ocurate ([related review](/review/kak-otdelit-plohih-klientov-ot-horoshih)) built an earlier version of this idea back in late 2021 – focused specifically on optimizing Google and Meta campaigns against predicted LTV – and raised $3.5M in its first round.
Session AI ([related review](/review/prodavat-mozhno-dazhe-neizvestno-komu), when it was still called ZineOne) raised $43M for an AI engine that reads the intent of anonymous visitors from their first five clicks – then adjusts the offers they see to push toward conversion.
Voyantis's real contribution was integration – bringing those capabilities into a single platform that optimizes the entire customer lifecycle, rather than a single point in the funnel.
The broader category here is predictive AI: systems that analyze behavioral data and produce forward-looking signals that reduce costs and grow revenue.
This pattern is spreading across industries. Syrup ([related review](/review/ogromnyj-rynok-bolshaja-problema-no-reshenie-est)) raised $25.1M for demand-forecasting AI in fashion, predicting sell-through down to specific colors and sizes. Guac ([related review](/review/pravilno-predskazyvat-nado-umet)) raised $2.8M for grocery retail, predicting perishable demand with enough granularity to factor in local events that shift store footfall. Monocle raised $7.5M for an AI that optimizes personalized discount offers by predicting profit impact rather than just volume – and perhaps most unexpectedly, Trudy raised £500K for an AI that reads body language in influencer videos to forecast brand partnership effectiveness.
The direction is clear: build AI platforms that predict something useful – and connect those predictions to levers that can actually change outcomes.
The technology principles are now widely understood. The remaining work is finding domains where, first, predictions would change decisions; second, sufficient data exists to train reliable models; and third, the predictions connect to actionable controls – ad targeting, inventory decisions, promotional offers, or anything else.
Beyond the specific use cases above, there are many more areas where this logic applies. Even within the categories mentioned, there's more than enough demand for additional players.
But Voyantis also surfaces a more fundamental strategic point worth pausing on: the problem of defining the ideal customer.
LTV optimization is a tactic. It only works if a company has first made a strategic choice about who it's building for. Without that clarity, LTV tools optimize the details of a process that's aimed at the wrong targets. A startup chasing anyone willing to pay right now – with no strategy about who to pursue long-term – can't be meaningfully helped by Voyantis or anything like it.
Strategy, at its core, is the discipline of saying no. No to 99% of apparent opportunities. No to the customers who won't compound over time. The more precisely a startup can define who it should not pursue – the more focused and effective everything else becomes.
The most important question any startup should be asking is not "who could be our customer?" but "who should never be our customer?" Every customer you rule out sharpens your strategy. And a sharp strategy is what makes tools like Voyantis actually useful.