Piperic
similar sites
‹ ProfileAI ReportTools

Sites similar to bubbling-library.com

Bubbling Library · ranked by shared content topics & relevance
62match
aboring.dev
A Boring Dev
3 shared topicsprogramming-languages
62match
justfuckinguseredux.com
Just Fucking Use Redux
3 shared topicstechnology-and-computing
62match
mplibunao.com
MP Libunao - Software Engineer
3 shared topicstechnology-and-computing
62match
andrewmcodes.dev
Andrew Mason // Senior Full Stack Ruby Developer
3 shared topicsprogramming-languages
62match
jwebbytes.com
JWebBytes // Programming Blog
3 shared topicstechnology-and-computing
62match
owlsdont.com
Owls Dont Talk
3 shared topicsweb-development
62match
jussaw.com
jussaw — Software Engineer
3 shared topicsweb-development
62match
lorandbiro.com
Loránd Biró's coding blog
3 shared topicstechnology-and-computing
62match
craftmend.com
Mats | Developer journal
3 shared topicsweb-development
62match
julianbez.com
Julian Bez - Senior Software Engineer
3 shared topicsweb-development
62match
muhammadrahmatullah.com
Muhammad Rahmatullah | Senior Full-stack Engineer
3 shared topicsweb-development
62match
ozkary.com
Ozkary - Emerging Technologies
3 shared topicstechnology-and-computing
62match
juanlinaresorihuela.com
Juan Linares Orihuela — Building meaningful things
3 shared topicsweb-development
62match
juliusrummel.com
Julius Constantin Rummel
3 shared topicstechnology-and-computing
62match
justinvk.com
Justin Von Konsky — QA automation, CS50P, SDET journey
3 shared topicsprogramming-languages
62match
ozanhasdemir.com
Ozan Hasdemir | Senior Backend Developer
3 shared topicstechnology-and-computing
61match
jsonstyler.com
JSON Styler: Formatter, Validator, Minifier & Converters
3 shared topicsweb-development
61match
juliuskrah.com
Software Musings | Software Musings is my attempt to document the little things I have learnt, for reference later. Some of the things I document, include Web Application Development, Web Services, Microservices, Docker, Java and Python. Once I gain a broader understanding of a topic, I will documen
3 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.