Piperic
similar sites
‹ ProfileAI ReportTools

Sites similar to simonrihs.com

sdr - security developement & research · ranked by shared content topics & relevance
72match
counterplane.com
Counter Plane | Security Research and Development
1 shared topicsinformation-and-network-security
71match
aurelis.io
Aurelis | Cybersecurity Research and Development
1 shared topicsinformation-and-network-security
71match
bugatsec.dev
Bugatsec | Ranveer - Security Researcher
1 shared topicsinformation-and-network-security
71match
0xweiss.com
0xWeiss - Security Researcher & Auditor
1 shared topicsinformation-and-network-security
70match
abetterinternet.org
Internet Security Research Group
1 shared topicsinformation-and-network-security
70match
mu-labs.dev
Trimphus — Security Researcher
1 shared topicsinformation-and-network-security
70match
mthelder.com
mthelder | Full-Stack & Security Developer
1 shared topicsinformation-and-network-security
70match
acmesecurity.org
ACME! Cybersecurity Research
1 shared topicsinformation-and-network-security
70match
0xteles.com
Teles’s Blog | Security Research
1 shared topicsinformation-and-network-security
70match
hoangdainguyen.com
Dai Nguyen — Security Researcher
1 shared topicsinformation-and-network-security
70match
akiner.net
Akıner Kısa | Security Researcher
1 shared topicsinformation-and-network-security
70match
0xfern.com
0xFern | Independent Security Researcher
1 shared topicsinformation-and-network-security
69match
hoodoer.com
Drew Kirkpatrick | Security Researcher
1 shared topicsinformation-and-network-security
69match
0xsha.io
0xSHA · Security Research & Engineering
1 shared topicsinformation-and-network-security
69match
lukavasha.com
Luka Vashakmadze | Development & Cybersecurity
1 shared topicsinformation-and-network-security
69match
anmolsinghyadav.com
Anmol Singh Yadav — Security Researcher
1 shared topicsinformation-and-network-security
69match
aashutoshx24.tech
Aashutosh Devkota — Cyber Security Researcher
1 shared topicsinformation-and-network-security
69match
abbishal.com
Sheikh Ali Akbar - Cybersecurity Researcher
1 shared topicsinformation-and-network-security

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.