Yiwen Lu

Yiwen Lu 陆逸文

I work on autonomous systems that learn to act without being explicitly programmed. I started with the mathematics of adaptive control: how to safely operate systems you don't fully understand. Then robot manipulation, capturing how humans use their hands. Now I'm building AI agents that reason and act in the world.

Work

Eko logo

Eko

I helped build Eko, a framework for AI agents that work across browser and desktop. Most frameworks target one or the other; Eko handles both. Designed for real deployment: you can pause, inspect, and resume agents mid-task.

DexCanvas dataset showing human hands, simulated hands, and robot hands manipulating objects

DexCanvas

At DexRobot, my team built DexCanvas: 70 hours of human hand demonstrations expanded to 7,000 hours through physics-validated simulation. Unlike vision-only datasets, we capture contact forces, which is essential for learning manipulation that actually works.

RC car performing drift maneuvers on circular and figure-8 trajectories

Learning-Based Control

My PhD asked: how do you control a system you don't understand, safely, while learning? I developed controllers with a "circuit breaker" that guarantees safety and learns efficiently. Validated on real hardware, not just simulations.

Background

Macaron MindLab

Upcoming

Scaling agentic RL

DexRobot

2024–2025

Embodied AI, team lead

Harvard SEAS

2023

Visiting scholar

Tsinghua

2015–2025

PhD + BE, Control