Piperic
similar sites
‹ ProfileAI ReportTools

Sites similar to ayberkmogol.dev

Ayberk Mogol - iOS Developer · ranked by shared content topics & relevance
72match
doganaltinbas.com
Dogan Altinbas - iOS Developer
2 shared topicssoftware-and-applications
72match
kuzminov-dev.com
Aleksandr Kuzminov – iOS Developer
2 shared topicssoftware-and-applications
72match
nikolaveljanovski.com
Swift Notes — iOS Development Blog
2 shared topicssoftware-and-applications
71match
asghar.net
Asghar - Swift Developer
2 shared topicssoftware-and-applications
70match
0xmayank.dev
Mayank Tiku | Embedded Systems & iOS Developer
2 shared topicssoftware-and-applications
68match
bitecode.org
bitecode - iOS and Mac development
2 shared topicssoftware-and-applications
67match
asserty.dev
Yannick Assert App Developer
2 shared topicsprogramming-languages
67match
aakib.cloud
Mohd Aakib | Android & Flutter Developer
2 shared topicsprogramming-languages
67match
inteljava.com
Inteljava: The Java IDE for Professional Developers by Inteljava
2 shared topicssoftware-and-applications
66match
felixparey.com
Felix Parey iOS Dev
2 shared topicssoftware-and-applications
66match
nhuga.com
Nhuga | Custom Algo Development & Strategy Coding
2 shared topicssoftware-and-applications
66match
niceonecode.com
NiceOneCode – Free Developer Tools, Coding Resources & Programming Utilities
2 shared topicsprogramming-languages
65match
intellij.com
The Leading IDE for Professional Java and Kotlin Development
2 shared topicssoftware-and-applications
65match
intellijidea.com
The Leading IDE for Professional Java and Kotlin Development
2 shared topicssoftware-and-applications
64match
mayowaolunuga.com
MO
2 shared topicsprogramming-languages
64match
adamwulf.me
Adam Wulf
2 shared topicssoftware-and-applications
64match
gtiapps.com
SerialCoder.dev – iOS & macOS app development tutorials and content
2 shared topicsprogramming-languages
64match
ahmad-mukhlis.com
Ahmad Mukhlis Saputra - Mobile Engineer Portfolio
2 shared topicsprogramming-languages

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.