Summary
Daniel Jing is a senior in UC Berkeley’s competitive M.E.T. program combining EECS and Business Administration, focused on building ML-driven solutions for financial markets and robotics. As an undergraduate researcher in BAIR/RAIL, he co-authored ICRA-published work introducing visuomotor affordance learning and develops goal-conditioned RL and deep generative models for goal-image Q-learning. He has hands-on industry experience across trading and tech—internships and selective programs at Jane Street, Citadel, D. E. Shaw, Flow Traders, PEAK6, and AWS—bringing quantitative rigor and product-oriented software engineering to research problems. Daniel’s background in management consulting-style problem solving and teaching (CS and optimization uGSI) helps him translate complex technical ideas into practical, testable solutions. He’s driven by impactful projects that bridge academia and industry, and unusually for an undergrad, has a decade of cumulative experience engaging high-stakes trading and cloud engineering environments.
10 years of coding experience
Bachelor of Science - BS, Electrical Engineering and Computer Science, Bachelor of Science - BS, Electrical Engineering and Computer Science at UC Berkeley College of Engineering
Bachelor of Science - BS, Electrical Engineering and Computer Science, Business Administration, 3.9, Bachelor of Science - BS, Electrical Engineering and Computer Science, Business Administration, 3.9 at UC Berkeley Management, Entrepreneurship, & Technology (M.E.T.) program
High School Diploma, High School Diploma at The Blake School
Bachelor of Science - BS, Business Administration, Bachelor of Science - BS, Business Administration at University of California, Berkeley, Haas School of Business
Chinese, English, Spanish