One Robot Verified
Robotics, Artificial Intelligence, Automation, Software
Machine Learning Intern
San Francisco, California, United StatesOnsiteInternshipJunior / Entry-level$6,000–$8,000 /yrPosted 5 days agoHidden Gem · YC Startup
Role summary
One Robot is building an evaluation platform for robot manipulation policies to replace trial-and-error with rigorous validation. This internship offers the opportunity to work on real problems with physical robots, contributing to active research in world models, policy training, and evaluation. Interns will embed with the technical team, assist with training runs, conduct real-robot evaluations, build tooling using Python and PyTorch, and help close the sim-to-real gap.
One Robot builds task-specific world models and an evaluation platform for robot manipulation policies.
Training end-to-end policies for robots is vibes-based today. Teams collect data, train, deploy on a real robot, find out what fails, collect more, retry. We replace the trial-and-error with rigorous validation that tells you where your policy will fail and what data to collect to fix it.
Robotics can't industrialize without an evaluation layer. We're building it.
We're based in San Francisco, backed by Accel, YC, several exited founders, and engineering leaders at leading AI companies. We're small and deliberately so — everyone owns a wide surface area and moves fast.
This internship is for people who want to work on real problems with real robots, not toy datasets. You'll embed directly with the technical team and contribute to active research across world models, policy training, and evaluation.
**What you'll do:**
* Contribute to training runs: Work alongside founding engineers on world model or eval model experiments end-to-end
* Run real-robot evaluations: Collect demonstration data, run policies on physical hardware, and document failure modes
* Build tooling: Write Python and PyTorch code that improves our data engine, training pipelines, or eval infrastructure
* Close the sim-to-real gap: Run experiments that test how well simulation predicts real-robot behavior
**Requirements:**
* Strong coding in Python and PyTorch
* Currently enrolled in a BS, MS, or PhD program in ML, robotics, computer vision, or a related field
* Hands-on experience training or fine-tuning a generative model, VLM, or policy (coursework or research counts)
* Ability to work in-person in San Francisco
**Nice to have:**
* Experience with real robot hardware or simulation environments (Isaac, MuJoCo, etc.)
* Prior research in manipulation, 3D vision, or model evaluation
Training end-to-end policies for robots is vibes-based today. Teams collect data, train, deploy on a real robot, find out what fails, collect more, retry. We replace the trial-and-error with rigorous validation that tells you where your policy will fail and what data to collect to fix it.
Robotics can't industrialize without an evaluation layer. We're building it.
We're based in San Francisco, backed by Accel, YC, several exited founders, and engineering leaders at leading AI companies. We're small and deliberately so — everyone owns a wide surface area and moves fast.
This internship is for people who want to work on real problems with real robots, not toy datasets. You'll embed directly with the technical team and contribute to active research across world models, policy training, and evaluation.
**What you'll do:**
* Contribute to training runs: Work alongside founding engineers on world model or eval model experiments end-to-end
* Run real-robot evaluations: Collect demonstration data, run policies on physical hardware, and document failure modes
* Build tooling: Write Python and PyTorch code that improves our data engine, training pipelines, or eval infrastructure
* Close the sim-to-real gap: Run experiments that test how well simulation predicts real-robot behavior
**Requirements:**
* Strong coding in Python and PyTorch
* Currently enrolled in a BS, MS, or PhD program in ML, robotics, computer vision, or a related field
* Hands-on experience training or fine-tuning a generative model, VLM, or policy (coursework or research counts)
* Ability to work in-person in San Francisco
**Nice to have:**
* Experience with real robot hardware or simulation environments (Isaac, MuJoCo, etc.)
* Prior research in manipulation, 3D vision, or model evaluation
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