Skip to main navigation
Skip to search
Skip to main content
University of Kentucky Home
LOGIN & Help
Home
Research units
Researchers
Projects & Grants
Research Output
Facilities & Equipment
Honors & Awards
Activities
Search by expertise, name or affiliation
Scholarly Editing and AI: Machine Predicted Text and Herculaneum Papyri
James H. Brusuelas
Modern and Classic Languages, Literatures, and Cultures
Computer Science
Research output
:
Contribution to journal
›
Article
›
peer-review
5
Scopus citations
Overview
Fingerprint
Fingerprint
Dive into the research topics of 'Scholarly Editing and AI: Machine Predicted Text and Herculaneum Papyri'. Together they form a unique fingerprint.
Sort by
Weight
Alphabetically
Arts and Humanities
Herculaneum Papyri
100%
Texts
100%
Machines
100%
Scholarly Editing
100%
Artificial Intelligence
100%
Virtual
75%
Digital
50%
Initiative
50%
Methods
50%
Model
50%
Restoration
50%
Science
50%
Kentucky
25%
Scroll
25%
Reality
25%
Copy
25%
Critical edition
25%
Leviticus
25%
Birth
25%
Papyrus
25%
Papyrus Fragment
25%
Greek Script
25%
Parchment
25%
Process
25%
University
25%
Change
25%
Edition
25%
Cultural Heritage
25%
Iron
25%
Teachers
25%
Application
25%
Engineering
Machine Learning Method
100%
Model
100%
Artificial Intelligence
100%
Professor
50%
Data Science
50%
Application
50%
Requirement
50%
Deep Learning Method
50%
Iron
50%
Agricultural and Biological Sciences
Cyperus
100%
Artificial Intelligence
100%
Model
66%
Learning
66%
Gall
33%
Cultural Heritage
33%
Tomography
33%
Teachers
33%
Birth
33%
Material Science
Ink
100%
Iron
33%
Tomography
33%