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Preference Model is building automated ML research engineering.
Existing frontier models are brittle when applied to real-world ML tasks. The present bottleneck is the lack of high-quality RL training environments. Our first step is to build RL environments that reflect real-world complexity, with diverse tasks and robust reward functions.
Our founding team has previous experience on Anthropic’s data team building data infrastructure, and datasets behind Claude. We are partnering with leading AI labs to push AI closer to achieving its transformative potential.
Frontier models still fail at the complex, judgment-heavy work that would make them genuinely transformative: long-horizon research, system design under constraints, iterative debugging in unfamiliar environments. The bottleneck isn't compute; it's training data. We build the RL environments that expose those failures and the infrastructure that turns them into reward.
The role blends research and engineering. It will require you to both develop novel approaches and realize them in code. Your work will include designing and implementing RL environments, conducting experiments and evaluations, delivering your work into production training runs, and collaborating with other teams.
Design and build RL environments end-to-end: Own the full lifecycle: tasks, reward functions, grading infrastructure, failure analysis, and iteration until environments produce clean signal.
Build RL training infrastructure: Develop scalable post-training systems including orchestration, performance optimization, and monitoring.
Create model evaluations: Define what good agent performance looks like and build the tooling to measure it.
Shape technical strategy: Drive architecture decisions and help build our engineering culture as an early team member.
4+ years of software engineering experience with strong project ownership
Deep expertise in at least one domain: infra, distributed systems, performance, security, or research tooling
Skilled in Python, Rust, or TypeScript across the full stack
Hands-on experience with Kubernetes, AWS, or GCP
Have extensive experience working with coding agents
Thrive working independently on ambiguous, high-ownership problems
ML infrastructure or RL systems experience
Simulation environments or LLM eval pipelines
Distributed systems or performance optimization
No prior ML experience required
This role is not a good fit if you want a product role shipping features to end users.
Competitive cash and equity compensation (>90th percentile)
Ownership and autonomy in a fast moving startup environment
Opportunity to work with top machine learning engineers
Health, vision, dental, benefits
401K match
Lunch provided everyday onsite
Weekly snack orders
Visa sponsorship & relocation support available
We value diverse perspectives and experiences. If you're excited about this role but don't check every box, we still encourage you to apply.
Note: We utilize AI note-taking during our interview sessions to ensure we capture all answers and details accurately. Candidates are allowed to use AI note-takers as well, however, no other AI tools are permitted during any live interviews.
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