Piperic
similar sites
‹ ProfileAI ReportTools

Sites similar to svoboda.dev

Marek Svoboda - Lead iOS/macOS Developer · ranked by shared content topics & relevance
71match
swiftdev.dev
SwiftDev | iOS Developer
1 shared topicssoftware-and-applications
70match
genebogdanovich.com
Gene Bogdanovich | iOS Developer
1 shared topicssoftware-and-applications
70match
dmitriivlasov.com
Dmitrii Vlasov - iOS Developer
1 shared topicssoftware-and-applications
70match
shandrakov.com
Artyom Shandrakov — iOS Developer
1 shared topicssoftware-and-applications
70match
swiftninjadev.com
Rajan Panchal — iOS Developer
1 shared topicssoftware-and-applications
70match
andrealufino.com
Andrea Mario Lufino — Senior iOS & macOS Developer | Milan, Italy
1 shared topicssoftware-and-applications
70match
itram.dev
Martí Espinosa - iOS Developer | ITRAM
1 shared topicssoftware-and-applications
70match
hessianapps.com
Hessian Apps - iOS Developers
1 shared topicssoftware-and-applications
69match
hertzelle.com
Todd Hertzelle: Mobile Software Engineer & Full-Stack Developer
1 shared topicssoftware-and-applications
69match
codehive.be 🇧🇪
CodeHive — Freelance iOS Developer in Belgium
1 shared topicssoftware-and-applications
69match
camiloorozco.com
Camilo Orozco - Software Engineer | Senior iOS Developer
1 shared topicssoftware-and-applications
69match
m-bilal.com
Muhammad Bilal - Senior iOS Developer Berlin
1 shared topicssoftware-and-applications
69match
gayane.dev
Gayane - Software Developer
1 shared topicssoftware-and-applications
69match
m-kat-developers.com
M-Kat Developers | Privacy-Focused Mobile Apps
1 shared topicssoftware-and-applications
68match
swiftswiftapps.com
Swift Swift Apps - iOS & macOS MVP Development
1 shared topicssoftware-and-applications
68match
7afidi.com
Anas Hafidi — Mobile Developer
1 shared topicssoftware-and-applications
68match
divmultech.com
DivMulTech - iOS & Android App Development Studio
1 shared topicssoftware-and-applications
68match
genctasbasi.com
Genc Tasbasi - Android team lead, application developer
1 shared topicssoftware-and-applications

How the match score works

Each match is a 0–100 similarity score — the higher it is, the more two sites resemble one another. It’s computed automatically from our own crawl data (never from what a site says about itself) by combining several independent signals, so a high score means several of them point the same way:

No single signal decides the result — they’re blended together. Treat the score as a way to rank candidates rather than an absolute percentage; the chips on each result show which signals contributed.