Li Ding | 丁立
I'm a 4th-year Ph.D. candidate at UMass Amherst CICS, advised by Lee Spector. I work closely with Scott Niekum (UMass), Joel Lehman (StabilityAI), Jeff Clune (UBC, DeepMind), and also spent time at Google Research and Meta.
Before Ph.D., I was a full-time research engineer at MIT with Lex Fridman and Bryan Reimer, and concurrently a graduate student at MIT CSAIL. I did my master's at Univ. of Rochester with Chenliang Xu.
liding@{umass.edu, mit.edu}
11/2023 - I'm on the lookout for job opportunities in both the industry and academia, starting 09/2024. If you feel that my background is a good fit for your organization, let's chat!
Research
My research focus is efficient learning algorithms for large AI models, focusing on:
Before Ph.D., I worked on deep learning for autonomous driving, human behavior modeling, and action recognition.
Publications
Representative papers are highlighted.
Quality Diversity through Human Feedback
Li Ding,
Jenny Zhang
,
Jeff Clune
,
Lee Spector
,
Joel Lehman
NeurIPS 2023: Agent Learning in Open-Endedness (ALOE) Workshop (Spotlight)
[project page]
[arXiv]
[code]
[tutorial]
Multi-Objective Evolutionary Architecture Search for Parameterized Quantum Circuits
Li Ding, Lee Spector
Entropy (Special Issue: Quantum Machine Learning), 2023
[paper]
Objectives Are All You Need: Solving Deceptive Problems Without Explicit Diversity Maintenance
Ryan Boldi, Li Ding, Lee Spector
NeurIPS 2023: Agent Learning in Open-Endedness Workshop
[arXiv]
Particularity
Lee Spector, Li Ding, Ryan Boldi
Genetic Programming Theory and Practice XX, 2023
[arXiv]
Going Faster and Hence Further with Lexicase Selection
Li Ding, Ryan Boldi, Thomas Helmuth, Lee Spector
GECCO 2022 (poster)
[paper]
Value of Temporal Dynamics Information in Driving Scene Segmentation
Li Ding, Jack Terwilliger, Rini Sherony, Bryan Reimer, Lex Fridman
IEEE Transactions on Intelligent Vehicles, 2021
[paper]
[arXiv]
[MIT DriveSeg
Dataset]
Press coverage:
[MIT News]
[Forbes]
[InfoQ]
[TechCrunch]
MIT Advanced Vehicle Technology Study:
Large-Scale Naturalistic Driving Study of
Driver Behavior and Interaction with Automation
Lex Fridman, Daniel E. Brown, Michael Glazer, William Angell, Spencer Dodd, Benedikt Jenik, Jack
Terwilliger, Julia Kindelsberger, Li Ding, Sean Seaman, Alea Mehler, Andrew Sipperley, Anthony
Pettinato, Bobbie Seppelt, Linda Angell, Bruce Mehler, Bryan Reimer
IEEE Access, 2019
[paper]
[arXiv]
[video]
Human Interaction with Deep Reinforcement
Learning Agents in Virtual Reality
Lex Fridman, Henri Schmidt, Jack Terwilliger, Li Ding
NeurIPS 2018: Deep RL Workshop
Misc.
Teaching:
TA for UMass COMPSCI 230:
Computer
Systems Principles (Summer 2021).
TA for MIT 6.S094: Deep Learning for Self-Driving
Cars
(Winter 2018-19).
TA for MIT 6.S099:
Artificial General Intelligence (Winter 2019).
Conference Reviewer:
ICLR 2024, AAAI 2024, NeurIPS 2023, ICCV 2023, CVPR 2023, IJCNN 2022, IV 2021-2023, BMVC 2020, 2021, 2023,
AutoUI 2020.
Journal Reviewer:
IEEE Transactions on Intelligent Vehicles, Quantum Machine Intelligence, Pattern Recognition, IEEE
Transactions on Circuits and Systems for Video Technology.
AI
Podcast:
Helped prepare interview questions, search for guest speakers, etc. for a
podcast hosted by Lex Fridman about technology, science, and the
human
condition.
(Ranked #1 on Apple Podcasts in the technology category, 1M views
on YouTube.)
(My personal favorite episode is Tomaso Poggio, highly
recommended!)
Robocar Workshop:
Instructor for a summer/winter workshop at MIT with Dr. Tom Bertalan to
college and high school
students on building and programming autonomous robocars.
Last updated: 03/2024
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