Piperic Business Intelligence
similar sites
‹ profile

Sites similar to eshwarkoka.com

Eshwar Koka — Engineering Lead (Backend) · ranked by category · tech stack · backlink co-citation
76match
kendalldascoli.com
Kendall D’Ascoli's Resume
2 co-citations1 shared tech1 shared categoryresume-writing-and-advice
75match
kennyleong-resume.com
Kenny Leong Resume
2 co-citations1 shared tech1 shared categorycareers
75match
jannatp.com
A Cloud Journey
2 co-citations1 shared tech1 shared categorycareers
75match
javierla.com
Resume Javier López Algarra
2 co-citations1 shared tech1 shared categorycareers
65match
jaiwinprince.com
Jaiwin Prince
2 co-citations1 shared tech2 shared categorycareers
63match
julianchuan.com
Julian Chuan | Cloud Resume
2 co-citations1 shared tech1 shared categorycareers
63match
hamza-khan.com
Hamza Khan — Cloud & DevOps Engineer
2 co-citations1 shared tech1 shared categorycareers
60match
kanepenley.com
Kane Penley
2 co-citations1 shared tech1 shared categoryresume-writing-and-advice
58match
kevinmuniz.dev
Kevin Muniz — Software Engineer
2 co-citations0 shared tech2 shared categorycareers
58match
diegotobalina.com
Senior Backend Software Engineer | Diego Tobalina
2 co-citations0 shared tech2 shared categorycareers
58match
hemasreerandhi.com
Hemasree Randhi — Software Engineer
2 co-citations0 shared tech2 shared categorycareers
58match
jhchambers.com
Johanna Chambers's Resume
1 co-citations1 shared tech1 shared categorycareers
58match
haseenasaleh.com
Haseena Saleh - Resume
1 co-citations1 shared tech1 shared categorycareers
57match
jhowd.com
Albino Tonnina - Staff Engineering Lead at ASOS - London
2 co-citations1 shared tech1 shared categorycareers
57match
hezby.com
Muhammad Hezby - Senior Software Engineer
2 co-citations0 shared tech2 shared categorycareers
55match
jhellier.com
JHellier | Portfolio
2 co-citations0 shared tech2 shared categorycareers
55match
jilleliceiri.com
Jill Eliceiri – MS in Applied Computer Science Student
2 co-citations0 shared tech2 shared categorycareers
55match
hasanahmati.com
Hasan Ahmati
2 co-citations0 shared tech2 shared categorycareers

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.