Piperic
similar sites
‹ ProfileAI ReportTools

Sites similar to vivekrai.dev

Vivek Rai - Full-Stack Developer & AI Systems Builder · ranked by shared content topics & relevance
80match
kienha.dev
Ha Minh Kien - Full-stack Developer & AI Researcher
2 shared topicsweb-development
80match
aakashdeepyadav.dev
Aakash Deep Yadav - Full Stack Developer & AI Builder | Portfolio
2 shared topicsweb-development
79match
aayushmohan.dev
Aayush Mohan | Full-Stack Developer & AI Engineer
2 shared topicsweb-development
78match
adityachaudhari.tech
Aditya Chaudhari | Full-Stack Developer & AI/ML Engineer
2 shared topicsweb-development
78match
khanshaheb.com
Seratul Alim Khan | AI Systems Architect & Full-Stack Developer
2 shared topicsartificial-intelligence
77match
aryalakshmi.tech
Arya Lakshmi M | Full Stack Developer & AI Engineer
2 shared topicsweb-development
77match
rennvalo.com
Renn Valo - Full Stack Developer & AI Engineer
2 shared topicsweb-development
77match
developerfaizan.com
Faizan — Full-Stack & AI Developer
2 shared topicsweb-development
76match
abhayp.tech
Abhay Parekh | Full-Stack Developer & AI/ML
2 shared topicsweb-development
76match
majomaken.dev
Miguel Ángel Jimenez | Full-Stack Developer & AI Automation
2 shared topicsweb-development
76match
ilhankurt.com
İlhan Kurt - Full-Stack Developer & AI Automation Specialist
2 shared topicsweb-development
76match
abdulhadisaqib.tech
Abdul Hadi Saqib | Full Stack Developer & AI Engineer
2 shared topicsartificial-intelligence
76match
ayushsonone.dev
Ayush Sonone | Full-Stack & ML Developer
2 shared topicsweb-development
75match
albertosanz.dev
albertosanzdev - Full-Stack Developer
2 shared topicsweb-development
75match
amirsyncs.com
Amir » Full-Stack Developer
2 shared topicsartificial-intelligence
75match
ignuxas.com
Ignas Mikolaitis - Full Stack Developer & AI Engineer
2 shared topicsartificial-intelligence
75match
namanbhayana.com
Naman Bhayana | Full-Stack Developer & AI/ML Engineer
2 shared topicsweb-development
75match
abdurrehman.dev
Abdur Rehman — Full-Stack SaaS & AI Developer
2 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.