Member of Technical Staff - Post-training Research

Modal Modal · Data AI · New York, NY · Engineering

Research role focused on post-training LLMs, aiming to develop and productize frontier techniques for Modal's AI infrastructure platform. The role involves end-to-end ownership of research bets, customer collaboration, and shaping the research agenda.

What you'd actually do

  1. Own end-to-end post-training research bets: async and agentic RL, on-policy distillation, long-context RL, small routing models, and whatever else the research agenda calls for.
  2. Work directly with customers alongside our Forward Deployed Engineers to train models and bring what you learn back into the research.
  3. Carry and expand collaborations with outside research labs. For example, our work with ZLab on [DFlash](https://modal.com/blog/spec-is-all-u-need), a speculator design built on KV injection and blockwise parallel drafting.
  4. Work with engineering to turn frontier post-training techniques into products: an opinionated post-training framework, distributed-training approaches (DiLoCo, evolutionary strategies), online training for deployed models, and more.
  5. Help shape the research agenda. None of the above is prescriptive; your work will help guide our future.

Skills

Required

  • Post-training LLMs
  • Research
  • Product sense
  • Shipping research

Nice to have

  • Async RL
  • Agentic RL
  • On-policy distillation
  • Long-context RL
  • Small routing models
  • Customer collaboration
  • Distributed training
  • Online training

What the JD emphasized

  • A research-leaning background in post-training LLMs, with work you can point to.
  • A record of shipping research that other people build on, whether in a lab or in industry.

Other signals

  • Post-training research
  • LLM infrastructure
  • Production workloads
  • Customer collaboration