Piperic
similar sites
‹ ProfileAI ReportTools

Sites similar to avinash-sharma.dev

Avinash Sharma — ML Systems Engineer · ranked by shared content topics & relevance
76match
akro.me
Ahmed — Systems Engineer
2 shared topicstechnology-and-computing
73match
devingupta.dev
Devin Gupta — Systems & AI Engineer
2 shared topicsartificial-intelligence
73match
eulogik.com
Eulogik — AI & Quantitative Systems Engineering
2 shared topicsartificial-intelligence
73match
bhaven-naik.com
Bhaven Naik — AI Engineer
2 shared topicsartificial-intelligence
73match
aadarshsonkamble.dev
Aadarsh Sonkamble | Backend & AI Systems Engineer
2 shared topicsartificial-intelligence
72match
nardit.com
Max Nardit — Data & AI Systems Engineer
2 shared topicsartificial-intelligence
72match
informationbeings.com
Zak El Fassi | Systems Engineering for the Agentic AI Age
2 shared topicsartificial-intelligence
71match
anirudhrao.dev
Anirudh Rao — ML Engineer
2 shared topicsartificial-intelligence
71match
chienda.com
Jeremiah Chienda — AI Engineer | Agents, RAG & LLM Systems
2 shared topicsartificial-intelligence
71match
imaginit.dev
Saad Ahmed | Automation Engineer & Systems Architect
2 shared topicsartificial-intelligence
71match
angelkurten.com
Angel Kurten — Scalable Distributed Systems & AI Engineering
2 shared topicsartificial-intelligence
70match
arjungullbadhar.com
Arjun Gullbadhar — LLM Engineer | Building Production-Grade AI Systems
2 shared topicsartificial-intelligence
70match
malakjoumaa.com
Malak Joumaa — Senior Software Engineer
2 shared topicsartificial-intelligence
70match
archiegarg.me
Harshit Garg — AI Systems Architect & Full-Stack Engineer
2 shared topicsartificial-intelligence
70match
najibninaba.com
Najib Ninaba — Head, Platforms Engineering at AI Singapore
2 shared topicsartificial-intelligence
70match
devarajkudumula.com
Devaraj Kudumula — AI/ML Engineer
2 shared topicsartificial-intelligence
70match
namangupta.dev
Naman Gupta — AI Engineer & Agent Builder
2 shared topicsartificial-intelligence
70match
alekseizhynguel.dev
Aleksei Zhynguel — Senior Backend Engineer · Backend Systems at Scale
2 shared topicstechnology-and-computing

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.