Role DescriptionYou will build 0->1 products at the edge of AI research, customer workflows, and production engineering.
This role is for someone who likes turning ambiguous problems into real products: talking to users, understanding messy technical workflows, designing the right abstraction, building the full stack, and iterating quickly as the research and customer needs evolve.
You might build product surfaces for labs to inspect and validate generated environments, workflows for startups to turn real-world traces into training tasks, tools for enterprises to evaluate agent behavior, or internal systems that help researchers understand rollouts, failures, rewards, and telemetry.
You will stay close to the research loop, but your center of gravity is the product: making powerful systems usable, legible, and dependable.
You Will Work On- Build end-user product surfaces for labs, startups, and enterprises working with Plato's RL environment generation platform.
- Turn ambiguous customer and research workflows into clear, usable, technically durable product experiences.
- Design and implement full-stack systems across frontend, backend, data models, observability, and internal tooling.
- Create interfaces for inspecting traces, tuning scenarios, validating environments, reviewing rollouts, and understanding model behavior.
- Work closely with researchers and customers to prototype quickly, learn from usage, and turn rough ideas into durable products.
- Ship high-quality software in a fast-moving, deeply technical team.
What We're Looking ForWe're looking for a product-minded engineer who wants to build the end product while staying close to the frontier research loop.
You may be a strong fit if you:
- Enjoy going from 0->1 on new products, especially in ambiguous or fast-changing problem spaces.
- Have strong product taste and can make complex technical workflows feel simple and usable.
- Are comfortable owning full-stack product work across frontend, backend, data, and systems.
- Like talking to users, understanding their workflows, and translating that into software that solves real problems.
- Can operate with high agency when the product, customer need, and technical architecture are still being discovered.
- Care about correctness, craft, observability, and iteration speed.
- Want to build software that is part of the core AI training loop, not a wrapper around it.
How We WorkBeing an engineer at an early-stage AI startup is not easy. These are the values we care about.
OwnershipWe value teammates who bring novel ideas to the table, experiment, and see results through end to end. You'll have access to massive compute budgets to test large scale experiments.
Move Fast, Build DurableDemand is growing faster than our team. We move quickly, prioritize ruthlessly, and ship systems that keep working under load.
Reality Over NarrativesTraining data is incredibly fragile and prone to reward-hacking. We prioritize digging deep through data, manually if we have to, to garner deep intuition on retaining high quality throughput.
Stay Close to the FrontierNew AI capabilities rapidly change how we think about problems and what doors open. We stay close to the frontier of model capability, and encourage teammates to constantly share new findings and update their world model of what's possible.