Michael Simeone

Associate Research Professor, School For Complex Adaptive Systems

Scottsdale, Arizona, United States
email-iconphone-icongithub-logolinkedin-logotwitter-logostackoverflow-logofacebook-logo
Join Prog.AI to see contacts
email-iconphone-icongithub-logolinkedin-logotwitter-logostackoverflow-logofacebook-logo
Join Prog.AI to see contacts

Summary

👤
Senior
🎓
Top School
Michael Simeone is an associate research professor and interdisciplinary data science leader with 11 years of experience building research programs that diagnose and remediate failures in information ecosystems. At Arizona State University he founded and directs units bridging libraries, digital humanities, and transdisciplinary informatics, applying network and text analytics to problems spanning sustainability, engineering, and the social sciences. Trained as a PhD in English and a postdoctoral informatics scholar, he combines humanistic inquiry with computational methods to make data-driven insights accessible to diverse stakeholders. Based in Scottsdale, he is known for translating scholarly research into practical data science collaborations and visualizations that reveal how information environments degrade and reshape institutions.
code11 years of coding experience
job5 years of employment as a software developer
bookUniversity of Illinois Urbana-Champaign
bookBachelor's degree, English Language and Literature/Letters, Bachelor's degree, English Language and Literature/Letters at Hendrix College
languagesSpanish
github-logo-circle

Github Skills (3)

php8
modeling3
python2

Programming languages (1)

Python

Github contributions (5)

github-logo-circle
Contributions:9 commits in 4 months
enronphp
Contributions:8 pushes, 1 branch in 4 months
Find and Hire Top DevelopersWe’ve analyzed the programming source code of over 60 million software developers on GitHub and scored them by 50,000 skills. Sign-up on Prog,AI to search for software developers.
Request Free Trial
Michael Simeone - Associate Research Professor, School For Complex Adaptive Systems