What you'll doYou'll design, build, and refine RL tasks, owning the full lifecycle from ideation through grading, failure analysis, and iteration. At this level, we expect you to work on our most complex tasks: environments involving multi-step workflows, realistic stakeholder interactions, large codebases with real conventions and technical debt, or challenging system design problems.
You will use coding agents heavily, and a large part of the job is directing them well, evaluating their output, and knowing when they are failing in subtle ways. You will also contribute to shared infrastructure and tooling, and may take on mentorship responsibilities for newer team members.
What makes someone good at thisDeep software engineering experience across multiple domains, combined with a strong intuition for AI model behavior. You need to anticipate where a model will take shortcuts, distinguish genuine capability gaps from grader issues, and design tasks that target deeper, more subtle failure modes from areas you know well: infrastructure, distributed systems, performance, security, or other specializations.
Good fit if you:- Have deep expertise in at least one area of software engineering
- Can code in Python
- Are confident working independently on complex, ambiguous problems
- Have extensive experience working with coding agents
- No prior ML or AI experience required
Probably not a good fit if you:- Want a product engineering role building features for end users
This is independent, high-ownership work. You own your tasks from start to finish, with regular feedback.
CompensationCompensation includes a $400,000 base salary, equity, and performance bonuses. Top performers can earn more in bonuses than in base salary.
Strong performers are recognized and promoted quickly. Benefits include health, dental, vision, and life insurance.
Learn more about the interview process: https://www.mechanize.work/how-our-interview-process-works
Learn more about the work: https://www.mechanize.work/what-working-here-is-like