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Forward Deployed Research Scientist

140k – 200kSan Francisco, CAHybrid
Summary

Forward Deployed Research Scientist collaborates with frontier AI labs on data strategies, fine-tunes open-weight LLMs, runs ablation studies, and validates data impact for client projects. Requires MS/PhD in ML/NLP/CS, hands-on LLM fine-tuning, and fast-paced experimental rigor.

About the role

Responsibilities

  • Engage directly with frontier lab research teams in scoping meetings, challenge assumptions, and shape project specifications based on data composition effects on model outcomes.
  • Develop deep scientific understanding of client architectures, training methodologies, and target capabilities to reason about data strategies, identify risks, and iterate empirically.
  • Run ablation studies and fine-tune open-weight models on client data to validate data impact on model performance.
  • Consult on workflow and quality systems, reviewing annotation schemas, task designs, and quality rubrics with Human Data Operations.
  • Collaborate with Applied Research on publications, benchmarks, white papers, and conference submissions using client-grounded findings.

Requirements

Required:

  • MS or PhD in Machine Learning, NLP, Computer Science, or related quantitative field.
  • Hands-on experience fine-tuning large language models (e.g., Llama, Mistral, Qwen).
  • Strong understanding of LLM training pipelines (pretraining, supervised fine-tuning, RLHF/DPO) and data quality/composition effects.
  • Experience designing/executing rigorous experiments (hypothesis formation, controlled comparisons, statistical analysis).
  • Ability to operate at speed (problem to results in days).
  • Strong written/verbal communication for client presentations and publications.

Strongly Preferred:

  • Experience at frontier AI lab, applied ML startup, or research with client interaction.
  • LLM evaluation/benchmarking (metrics, eval harnesses).
  • Human data pipelines (annotation workflows, quality assurance, inter-annotator agreement).
  • Reinforcement learning, reward modeling, or RLHF.
  • Published ML/NLP research.

What Matters:

  • Applied instinct, comfort with ambiguity, cross-functional fluency, intellectual honesty.
Skills
Machine LearningLarge Language ModelsFine-tuningLLM Training PipelinesRLHFDPOAblation StudiesExperiment DesignStatistical AnalysisEvaluation FrameworksBenchmarkingAnnotation WorkflowsLlamaMistralQwen
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