Posted Jul 14, 2026

Founding Robot Learning Research Engineer

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The Company

Our client is a vertically integrated robotics company building dexterous factory automation, backed by Jeff Dean, Pieter Abbeel, and senior leaders from OpenAI. This mission demands tight integration across robot learning, hardware, factory operations, and a consumer-facing brand. The founding team includes the creator of the DROID dataset, a 15-year veteran building intelligent factory automation from scratch, a 40-year operator who has built factories from the ground up, and an SVP from a $10B+ global consumer brand.

Our client's thesis: the biggest bottleneck in robot learning is data, and the best way to solve it is to generate it as a byproduct of revenue. They have their own Vietnam factory, where workers use handheld devices shaped like our robot's hands to generate morphology-matched demonstration data at scale through real production work. That data trains the robots that will automate the factory. Experimentation, data collection, model training, and deployment collapse into one self-sustaining in-house loop. Their systems run in a factory, not a lab, under real constraints: throughput, uptime, reliability, and fine-grained manipulation on actual materials.

Position Overview

The Role

Your job is to build the learning pipeline that turns our factory data engine into dexterous robots. This is a founding research engineering role. You'll need to think rigorously about hard problems, figure out what the right systems are, and then build them.

This role spans four areas, all live simultaneously from day one:

You’ll build these systems yourself with full ownership in a lean founding environment, bringing in help where you need it as things scale. As the infrastructure stabilizes, the work shifts toward what it's ultimately about: building better models, advancing learning paradigms, and pushing the frontier of dexterous automation. If you want deep ownership on a hard problem from day one, this is the role.

Your First Year

Responsibilities & Technical Scope

Ideal Background

This Role is Not

Why Vietnam?

Vietnam is where systems get put under real pressure and hypotheses meet reality: production-grade factories, real deployment constraints (uptime, throughput, task complexity), and data collection at a scale no US lab can match. The factory immersion surfaces patterns and builds intuition that compounds over time.

How much time you spend there is up to your strategy and preference for achieving your deliverables. Some people will base there; others will make targeted trips timed around experiments. Our client's factory collapses ideation, development, data collection, training, and real-world deployment into one tight loop. That loop is yours to close.

Compensation & Relocation

Apply if you thrive in high-agency, collaborative hardware environments. Individuals or pre-existing duos are welcome. Please send your resume, a brief note on your interest in this system evolution, and a portfolio of relevant hardware work.

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