Piperic
similar sites
‹ ProfileAI ReportTools

Sites similar to mevdevelopment.com

Mev - Full-Stack Developer & Integrations Specialist · ranked by shared content topics & relevance
80match
teoislearning.com
Full-Stack Developer | Backend Specialist
1 shared topicsweb-development
79match
nasgunawan.dev
Nasrullah Gunawan | Full-Stack Developer & AI Specialist
1 shared topicsweb-development
78match
amirrahemi.com
Amir Rahemi - Full-Stack Developer
1 shared topicsweb-development
78match
ilostname.dev
iLostName - Full-Stack Developer Portfolio
1 shared topicsweb-development
78match
devmehrab.com
Mehrab Hossain | Full-Stack Developer & Next.js Specialist
1 shared topicsweb-development
78match
archishaupadhyaya.dev
Archisha - Full-Stack Developer Portfolio
1 shared topicsweb-development
78match
demianlee.com
Demian Lee | Full-Stack Web Developer & SEO Specialist
1 shared topicsweb-development
77match
angeljuarez.dev
Angel Juarez | Full-Stack Developer
1 shared topicsweb-development
77match
ahsanansari.dev
Ahsan Ansari - Full Stack Developer & SEO Specialist
1 shared topicsweb-development
77match
devmomen.com
Momen Medhat | مؤمن مدحت - Full-Stack Developer & ERP Specialist
1 shared topicsweb-development
77match
pedrofelippe.com
Pedro Felippe - Full-Stack Developer
1 shared topicsweb-development
77match
pedroeugelmi.com
Pedro Eugelmi | Full Stack Developer & Automation Specialist
1 shared topicsweb-development
77match
khirsagarnayak.com
Khirsagar Nayak - Full Stack Developer & React Specialist
1 shared topicsweb-development
77match
ananiko.dev
Ana Nikoleishvili - Full-Stack Developer
1 shared topicsweb-development
76match
aaronarenas.dev
Aaron Arenas | Full-Stack Developer
1 shared topicsweb-development
76match
abdullahasif.net
Muhammad Abdullah Asif | Full Stack Developer & CRM Automation Specialist
1 shared topicsweb-development
76match
anis-tech.com
Anis Yuva Ziani - Full-Stack Developer
1 shared topicsweb-development
76match
naazimkhan.com
Naazim Khan - Full-stack Developer Portfolio
1 shared topicsweb-development

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.