Founding Robot Learning Research Engineer
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- Hanoi
- Permanent
- Full-time
- Location: US and Vietnam. Some will be US-based with targeted Vietnam trips; others will base there full-time. We trust you to figure out what your work needs and get it done.
- US Office: City is still being decided, and founding team input is part of that process.
- Stage: Early-stage robot learning research and system development.
- Reports to: Co-founder / CTO.
- Core mandate: Own the research, development, and scaling of robot learning systems.
- Research and problem decomposition: Break hard manipulation challenges into testable hypotheses and resolve them through rapid experiments.
- Core model development: End-to-end ownership for architectures, training pipelines, and evaluation systems for dexterous automation.
- Data collection infrastructure: Build the pipelines that make scalable, continuous data collection possible at a working factory.
- Robot and sensor systems: Develop software for robot, camera, and sensor systems that keep data flowing cleanly.
- Month 2: Data pipelines for human video, handheld device, and industrial robot. First simulation manipulation experiments running.
- Month 4: Early embodiment transfer experiments in simulation. Deformable manipulation experiments in simulation. First manipulation experiments on industrial robots.
- Month 6: Embodiment transfer validated on real hardware. Manipulation experiments on industrial robots and in-house gripper. VLM reward model experiments in simulation.
- Month 8: 1–3 simple factory tasks automated on industrial robots. In-house robot running first manipulation experiments. Continuous deployment experiments in simulation.
- Month 10: World model and reward model proof of concept complete. Deformable manipulation on in-house robot. Factory tasks on industrial robot with in-house gripper.
- Month 12: 1–3 factory tasks automated on in-house robot. Continuous 8-hour deployment demonstrated on industrial robot. Embodiment transfer pipeline production-ready.
- Research and problem decomposition: Hypothesis-driven development across simulation, real robot hardware, and ML systems. Break hard problems into testable hypotheses and resolve them through rapid experiments. Isolate variables in a complex, simultaneously-live stack where hardware, software, training data, and models interact.
- Core model development: VLAs, VLMs, diffusion models, world models, and reward models. Supervised, unsupervised, and RL-based paradigms. PyTorch/JAX with distributed training and inference optimization. Large-scale pretraining, post-training, and finetuning of foundation models. Design evaluation benchmarks grounded in real factory task performance. Maximize research progress per dollar through efficient training, lean inference, and smart compute allocation.
- Data collection infrastructure: Real-time multi-modal capture (vision, force, proprioception) with tight time synchronization. High-throughput disk writes, standardized dataset formats at scale, cloud transfer pipelines, and full versioning for reproducible learning.
- Robot and sensor systems: ROS/ROS2, robot bring-up and commissioning, robot control stack, teleoperation software, and hardware interfacing across cameras, force sensors, SLAM devices, and positional encoders. Keeping heterogeneous hardware running continuously under industrial uptime constraints is the core challenge.
- Hardware collaboration: Work closely with the Founding Hardware team to ensure learning systems and hardware co-evolve.
- PhD or equivalent depth in robot learning through research or hands-on systems building.
- Strong track record training large-scale VLAs, VLMs, diffusion models, or world models from pretraining through finetuning.
- Has shipped a working policy on real hardware: data collection, training, and real-world execution.
- Deep hands-on experience with real robot hardware: bring-up, ROS/ROS2, joint control, inverse kinematics, and building the stack from scratch, not just using it.
- Experience building inside and expanding upon robot simulators.
- Leverages AI-assisted development aggressively to maximize output across a wide stack.
- Low ego, evidence-driven, and comfortable with ambiguity and incomplete infrastructure.
- Thrives in small, tight-knit teams: collaborative, friendly, and easy to work with.
- An environment where strategic input isn't wanted. You're expected to think about the big picture, connect what you're learning to the broader automation thesis, and help shape direction.
- Pure research or engineering. The two are inseparable here: infrastructure unlocks research; research directs engineering.
- Hands-off compatible. This is a small, lean startup where everyone gets their hands dirty.
- Base: US$100,000–180,000 per annum (flexible salary/equity).
- Equity: 1%–2%, 4-year vest/1-year cliff; refreshers on milestones.
- Short Vietnam Deployments: Fully covered (housing, flights, visa).
- Full Vietnam Relocation:Visa support, relocation flights, and flexibility for family needs.