Research, Mid-training

Cognition Cognition · Coding AI · San Francisco, CA · Research & Development

This role focuses on the critical mid-training stage of LLMs, bridging pre-training and post-training. The goal is to sharpen raw base model capabilities in areas like reasoning, generalization, coding, and math through strategic data mix, quality uplift, annealing schedules, context length extension, and synthetic data generation. The role involves both research and engineering, with a strong emphasis on evaluation and iteration to ensure measurable capability gains for AI agents like Devin.

What you'd actually do

  1. Design and iterate on high-quality data mixtures for late-stage and annealing training runs. Develop principled methods for sourcing, filtering, and weighting data to sharpen model capabilities without degrading general performance.
  2. Drive targeted improvements in coding, mathematics, and long-horizon reasoning through curated data strategies and training interventions. Translate research insights into measurable capability gains on our agents.
  3. Develop and evaluate synthetic data pipelines that generate training signal at scale. Understand the limits and failure modes of synthetic approaches and build methods that hold up in production training runs.
  4. Research and optimize multi-stage learning rate schedules, warmup strategies, and compute allocation across training phases. Understand how schedule choices interact with data distribution and model behavior.
  5. Research and implement methods for extending effective context length without degrading short-context performance. This includes positional encoding strategies, data construction, and targeted evaluation.

Skills

Required

  • Python
  • PyTorch
  • distributed training
  • optimization
  • statistics
  • ML theory
  • debugging distributed training at scale
  • distinguish real effects from noise, instability, and overfitting

Nice to have

  • Deep familiarity with the LLM training pipeline end to end: pre-training data, optimization, architecture, and how mid-training and post-training interact
  • Hands-on experience with continual pre-training, annealing, or late-stage data mixing for large models
  • Strong intuition for data quality: what makes a dataset useful for training, how to filter and curate at scale, and how data mix choices compound across evals
  • Experience developing or evaluating synthetic data pipelines for capability improvement
  • A track record of original contributions: publications, open-source impact, or internal results that moved a capability frontier
  • Comfort operating in ambiguous, fast-moving environments where the problem definition is as important as the solution

What the JD emphasized

  • late-stage training decisions
  • data mix and quality uplift
  • capability injection
  • synthetic data strategies
  • annealing and schedule design
  • context length extension
  • evaluation and iteration
  • scaling and methodology
  • Deep familiarity with the LLM training pipeline end to end
  • Hands-on experience with continual pre-training, annealing, or late-stage data mixing for large models
  • Strong intuition for data quality
  • Experience developing or evaluating synthetic data pipelines for capability improvement
  • track record of original contributions

Other signals

  • building end-to-end software agents
  • world-class competitive programmers
  • researchers from the frontier of AI
  • raw base model capability is sharpened
  • late-stage training decisions
  • data mix and quality uplift
  • context length extension
  • capability injection across coding, math, and reasoning
  • synthetic data strategies
  • Devin, the first AI software engineer
  • Windsurf, an AI-native IDE