Forensic audit for your dating profile

Zygnal is a data-driven audit for dating profiles that identifies why a profile is underperforming and what to change first. It combines feedback from real people in a target audience with AI analysis to provide a clear, measurable view of profile effectiveness.
Designed for people who want evidence-based guidance rather than guesswork, Zygnal provides a VCI Score, photo ratings, and prioritized recommendations. The system emphasizes anonymous, verified human voting and uses statistical methods to quantify confidence in the results. Zygnal is available on iOS and Android and is free to start.
Users start by creating a test: upload photos and a bio, then specify the audience they want to attract by age, gender, and overall vibe. This establishes the criteria for collecting relevant feedback from people who resemble the intended match pool.
Zygnal then combines two inputs: votes from verified people in the target demographic and AI analysis of photo quality and facial expressions. Results are processed with ordinal-Bayesian scoring and MRP (multilevel regression and poststratification) correction to reduce sampling bias and provide confidence intervals rather than single-point guesses.
Finally, the app returns a VCI Score, photo-level ratings, and a focused action plan. It highlights the single highest-impact change, recommends which photo to remove or feature, and provides match rate predictions tied to specific improvements.
| Aspect | Details |
|---|---|
| Platforms | iOS, Android |
| Getting Started | Free to start; no credit card required |
| Inputs | Photos, bio, target audience (age, gender, vibe) |
| Outputs | VCI Score, photo ratings, prioritized recommendations, match rate predictions, confidence intervals |
| Methods | Real-person voting; AI analysis; ordinal-Bayesian scoring with MRP correction |
| Privacy | Anonymous voting; verified voters |