Xingyu Fu

Lecturer (Assistant Professor) at UNSW

Sydney, New South Wales, Australia
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
Xingyu Fu is a Lecturer (Assistant Professor) at UNSW Business School with eight years of experience bridging operations management and marketing. He earned a PhD in Operations Management from HKUST and researches socially responsible and sustainable operations, the marketing-operations interface, and the economics of AI and digitization. His work appears in leading journals including Manufacturing & Service Operations Management, Naval Research Logistics, and Service Science. Based in Sydney, he combines rigorous quantitative training (BS in Math from Sun Yat-sen and a visiting stint at UC Berkeley) with policy-relevant questions about sustainability and digital transformation. Colleagues describe him as someone who translates complex analytical models into actionable insights for managers and policymakers. Beyond academia, he brings a data-first mindset to teaching and collaborative research that often crosses disciplinary boundaries.
code8 years of coding experience
bookVisiting Undergraduate, Visiting Undergraduate at University of California, Berkeley
bookBachelor of Science - BS, Math and Applied Math, Bachelor of Science - BS, Math and Applied Math at Sun Yat-sen University
bookHigh School Diploma, Science, High School Diploma, Science at Shenzhen Experimental High School
bookHong Kong University of Science and Technology (HKUST)
github-logo-circle

Github Skills (12)

mahjong9
issue-tracking7
apply7
gomoku7
monte-carlo-tree-search6
anaconda4
deep-reinforcement-learning4
python4
machine-learning-algorithms3
machine-learning3
reinforcement-learning3
shen1

Programming languages (1)

Python

Github contributions (5)

github-logo-circle
This project demonstrates how to apply machine learning algorithms to distinguish "good" stocks from the "bad" stocks.
Contributions:69 commits in 11 days
badpythonmachine-learning-algorithmsmachine-learningapply
Contributions:183 commits, 358 pushes, 9 branches in 1 year 9 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
Xingyu Fu - Lecturer (Assistant Professor) at UNSW