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Thin Section Analysis, Segmentation and Interference Color Detector – Our site uses simple and quick algorithms and AI for mineral identification, segmentation, modal abundances, interference order detection and much more — 18 websites ranked by shared content topics, category and on-page relevance.

Each result shows its full tech stack, contacts and AI-policy — not just a name · Browse all sites in Artificial Intelligence →

DomainMatchTitleCountry/LangCategoryAI filesContactAI-protection
alguilas.com 62 match
2 shared topics
Innovation in AI Research with ALGUILAS Method AI Dialectical Engine in scientific article. | Alguilas-AI Dialectical Engine. A Structured Virtues-AI Process for Systematic Production of Frontier Scientific Articles at the Limit of Knowledge. en artificial-intelligence robotsllmsaihumans emailphone none
spin-theory.com 62 match
2 shared topics
SPIN | A multilingual* data sheet containing proofs of natural and artificial intelligence en artificial-intelligenceWordPress robotsllmsaihumans emailphone none
srait.org 61 match
2 shared topics
Scientific Research in AI and Technology en artificial-intelligence robotsllmsaihumans emailphone none
thelabtree.com 61 match
2 shared topics
Labtree – Reasoning Infrastructure for Experimental Science en artificial-intelligence robotsllmsaihumans emailphone none
subspatial.org 61 match
2 shared topics
Subspatial — Building foundational subcellular spatial intelligence en artificial-intelligence robotsllmsaihumans emailphone none
romalabs.io 61 match
2 shared topics
Roma Labs | AI for Science en artificial-intelligence robotsllmsaihumans emailphone none
romain-thoreau.com 61 match
2 shared topics
Romain Thoreau - PhD in Machine Learning for Environmental Sciences en artificial-intelligence robotsllmsaihumans emailphone none
sst-group.org 61 match
2 shared topics
Signal & System Theory Group – Academic group performing research in data science, machine learning, and statistical signal processing en artificial-intelligenceWordPress robotsllmsaihumans emailphone none
stephenornes.com 61 match
2 shared topics
Stephen Ornes – science writer en artificial-intelligenceWordPress robotsllmsaihumans emailphone none
cmonterola.net 61 match
2 shared topics
Christopher Monterola — AI Scientist & Data Science Pioneer, Philippines PH~ en artificial-intelligence robotsllmsaihumans emailphone none
efeoztaban.com 61 match
2 shared topics
Efe Öztaban - Computational Astrophysicist & ML Researcher en artificial-intelligence robotsllmsaihumans emailphone none
romylorenz.com 61 match
2 shared topics
Romy Lorenz – Cognitive Neuroscience & Neurotechnology en artificial-intelligenceWordPress robotsllmsaihumans emailphone none
mccollum.dev 60 match
2 shared topics
Constellation en artificial-intelligence robotsllmsaihumans emailphone none
sequoia-project.eu 60 match
2 shared topics
SEQUOIA – Sensing using quantum OCT with AI European Union en artificial-intelligenceWordPress robotsllmsaihumans emailphone none
amazon.science 60 match
2 shared topics
Amazon Science homepage en artificial-intelligence robotsllmsaihumans emailphone none
clickandboom.com 60 match
2 shared topics
Click&Boom — AI-Powered Science Summaries from Peer-Reviewed Research en artificial-intelligence robotsllmsaihumans emailphone partial · 8
billclancey.name 60 match
2 shared topics
William J. Clancey - Home en artificial-intelligenceWeebly robotsllmsaihumans emailphone none
spencermkaplan.com 60 match
2 shared topics
Spencer Kaplan en artificial-intelligenceWordPress robotsllmsaihumans emailphone none

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.