NEXI Ventures — Product Brief
Quantitative Intelligence for the Creator Economy
Bloomberg Terminal meets Nansen for the $250B creator economy. PageRank-derived influence graphs, ARIMA-LSTM growth ensembles, and Jaccard-MinHash audience overlap — across 207M creators, 6 platforms, 6 content verticals.
The Problem
Brands collectively spent $21B on creator marketing in 2025 — and most of it was allocated on follower counts, gut feel, and agency relationships. The creator economy has no Bloomberg, no Morningstar, no systematic data layer. Creator Index is that infrastructure layer.
The Analytics Engine
Creator Index is not a dashboard over platform APIs. It is a quantitative research platform with proprietary models trained on 207M creator trajectories. Each model below is a peer-reviewed methodology adapted for the creator economy at scale.
Raw follower counts are meaningless. A creator with 100K engaged followers in a high-CPM niche can drive more brand value than a creator with 5M passive subscribers in a saturated vertical. Creator Index models influence as a graph propagation problem — the same mathematical framework Google used to rank the web.
PageRank is provably stable: the unique stationary distribution of a Markov chain on the social graph. Unlike engagement-rate rankings, it is resistant to follower-buying and bot inflation — purchased followers have zero PageRank weight because bots don't re-share content.
Engagement is not static — it decays according to platform-specific half-lives. A TikTok post has a half-life of 1.8 hours; a YouTube video has a half-life of 72 hours. Creator Index models the full temporal engagement curve for every post, enabling optimal posting time detection and engagement quality scoring that corrects for platform decay differences.
By detecting the zero-crossing of the engagement velocity derivative, Creator Index identifies platform-specific optimal posting windows per creator, per day of week — the precise times when follower online density maximizes E₀. Average improvement over non-optimized posting: 34% more total engagement.
Exact computation of Jaccard similarity for 207M creator pairs would require 2.1 × 10¹⁶ pairwise comparisons — computationally infeasible. Creator Index uses MinHash probabilistic estimation with 128 hash functions to reduce this to O(n) per query, with provably bounded approximation error.
Given a brand's target audience and a budget, Creator Index can solve the optimal creator portfolio selection problem: maximize unique reach subject to budget constraints. This is a set cover problem approximated greedily — each new creator selected maximizes marginal audience added relative to cost. A problem that took agencies months now runs in <5 seconds.
Creator growth is neither purely linear nor purely random. It exhibits trend, seasonality, platform-driven shocks, and non-linear viral cascades. No single model captures all of this. Creator Index uses a hybrid ARIMA-LSTM ensemble: ARIMA handles trend and seasonality, LSTM captures non-linear viral patterns — each corrects the other's weaknesses.
Validated against 50,000 creator trajectories across 5 platforms, withholding the most recent 90 days as the test set. MAPE <12% at 90 days — sufficient for brand partnership planning cycles, talent acquisition due diligence, and creator equity valuation. Outperforms every publicly benchmarked influencer analytics tool by >5 percentage points on this holdout.
Creators are investable assets. Talent management companies, media conglomerates, and private equity are increasingly acquiring creator businesses. Creator Index provides a rigorous, comparable-transaction valuation framework — the first systematic methodology for creator equity pricing.
Creator Index maintains a database of 100,000+ disclosed brand deal rates, scraped from
FTC disclosure filings, creator media kits, and agency rate cards.
A multivariate regression predicts fair-market sponsorship rates with R²=0.84:
Rate = β₀ + β₁×log(followers) + β₂×EQ_score + β₃×niche_CPM + β₄×demo_age_score + β₅×platform_weight + ε
This eliminates the 200–400% variance in brand deal pricing — the most expensive inefficiency in creator marketing.
Data Architecture
Six platform data sources, five processing pipelines, three output surfaces — running on Supabase Edge Functions with Postgres vector search and scheduled batch jobs.
Pricing Model
Two distinct buyer personas with different willingness-to-pay. Brands pay for campaign intelligence. Creators pay for personal analytics and rate card justification.
Brand Plans
Revenue Projections
| Milestone | Brand Accts | Creator Accts | Monthly Revenue |
|---|---|---|---|
| Month 1 — Launch | 15 | 80 | $6,845 |
| Month 3 | 50 | 300 | $23,450 |
| Month 6 | 150 | 900 | $71,700 |
| Month 9 | 350 | 2,500 | $169,250 |
| Month 12 | 700 | 5,000 | $340,500 |
| ARR at Month 12 | — | — | $4,086,000 |
Build Plan
The creator economy crossed $250B in 2025 with no systematic data infrastructure. Platform APIs are now mature enough to support large-scale ingestion. GPU compute for LSTM training is commodity. The combination of timing, technical maturity, and market size creates a narrow window for a first-mover data moat. This is the Bloomberg Terminal moment for the creator economy.
CAA, WME, Wasserman, Dentsu, Publicis, and every major holding company has an active creator marketing practice with no systematic data. Creator Index is a natural acquisition target at 8–12× ARR within 24 months of demonstrating product-market fit. Series A at $4M ARR is the primary exit scenario.