Research Scientist, Frontier Capabilities

Lila Sciences Lila Sciences · AI Frontier · One Charles Park, Cambridge, MA · AI

Research Scientist role focused on developing next-generation learning systems and reasoning algorithms for agentic LLMs, particularly in scientific domains with sparse and delayed feedback. The role involves building agentic systems that autonomously propose, execute, and verify scientific hypotheses, or focusing on distillation techniques to create efficient models, or developing scalable experience generation and synthetic data pipelines for training. Requires advanced degree, strong LLM foundation, and ML experiment experience.

What you'd actually do

  1. Create and analyze long-running auto-research systems that propose and verify hypotheses
  2. Develop distillation strategies from large or ensemble models into deployable systems
  3. Design and benchmark inference-time search, sampling, and verification strategies
  4. Design planning frameworks for agentic systems operating over long, sparse feedback loops
  5. Research methods for self-improvement, including iterative self-distillation and critique loops

Skills

Required

  • advanced degree in computer science, machine learning, or a related field, or or comparable experience
  • Strong foundation in LLMs and empirical research
  • Experience designing and executing rigorous ML experiments, including benchmarking and ablations
  • Experience working with large-scale training or evaluation pipelines
  • Ability to define and pursue research directions in open-ended, rapidly evolving spaces
  • Strong collaboration and communication skills across research and engineering teams

Nice to have

  • Experience with synthetic data generation, distillation, or self-improvement loops
  • Familiarity with reinforcement learning (e.g., RLHF, on-policy methods)
  • Experience with planning, search, or decision-making systems at scale
  • Experience in building agentic systems with tool use, or multi-agent workflows
  • Background in program synthesis, coding benchmarks, or long-horizon tasks
  • Experience building evaluation frameworks or large-scale benchmarks

What the JD emphasized

  • learn from experience, reason effectively, and improve through interaction
  • one (ore more)
  • long time horizons
  • long, sparse feedback loops
  • rigorous ML experiments
  • large-scale training or evaluation pipelines
  • open-ended, rapidly evolving spaces
  • principled approach to experimentation
  • understanding _why_ systems work
  • long, nonlinear iteration cycles
  • ambiguous, fast-evolving research environments

Other signals

  • learning systems
  • reasoning algorithms
  • agentic LLMs
  • scientific reasoning
  • learn from experience
  • reason effectively
  • improve through interaction
  • long time horizons
  • long, sparse feedback loops
  • recursive self-improvement
  • multi-agent coordination
  • continual learning
  • distillation
  • self-improvement
  • critique loops
  • synthetic data
  • inference-time algorithms
  • training signal