Yutori

AI Engineer — Reinforcement Learning

1y ago
USASenior
Yutori

AI Engineer — Reinforcement Learning

1y ago
USASeniorreinforcement learningmultimodalllmdistributed systems

Building superhuman AI agents using large-scale reinforcement learning with multimodal language models to act on the web.

Responsibilities

  • Build a superhuman generalist web-agent
  • Scale infra, data, algorithms for large-scale distributed async reinforcement learning with multimodal LLMs acting in web environments
  • Work closely with product engineers to translate cutting-edge AI capabilities into elegant and reliable product experiences.

Conditions

  • Competitive salary and equity
  • Visa sponsorship and relocation stipend to bring you to SF
  • Generous health, dental, vision insurance for you and your dependents
  • 20 days of paid time off per year
  • Work laptop and budget to set up your work office
  • Daily team lunches
  • Commuter benefits
  • Small, focused team of high-potential individuals. In-person in SF.

Other

  • Yutori is reimagining how people interact with the web by building AI agents that can reliably do everyday digital tasks. We are building the entire stack to be agent-first, from training our own models to generative product interfaces.
  • Towards this goal, we are looking for a member of the AI technical staff to join the founding team. Someone technically strongly, and excited about building superhuman AI agents that take actions on the web.
  • Our founders — Devi Parikh, Abhishek Das, Dhruv Batra — have decades of experience in AI research and product spanning generative, multimodal and embodied AI at Meta. Our team combines AI experience with design-minded product thinking to build and deliver on Yutori’s mission.
  • Yutori is backed by a stellar set of visionary investors — Elad Gil, Sarah Guo, Jeff Dean, Fei-Fei Li, Amjad Masad, Guillermo Rauch, Akshay Kothari, Soleio, Oliver Cameron, Julien Chaumond, Logan Kilpatrick, Bryan McCann, Vladlen Koltun, Jamie Cuffe, Michele Catasta, etc.
  • Experience with large-scale RL, ideally for post-training multimodal LLMs
  • Experience building distributed systems for RL (balancing trainer, environment, actor workloads)
  • Experience with ML infrastructure (GPU clusters) and supporting networking (NCCL)
  • High IQ, high EQ, high agency, high craftsmanship, low ego. Proactive, clear communication.