Skip to content

Researcher, Alignment Oversight

Designs and runs experiments to improve oversight of increasingly capable AI models, including model training, evaluation, and deployment of practical systems. Analyzes failures and develops techniques to train more aligned models using oversight signals.

250k – 445kSan Francisco, CAML EngineeringHybrid

About the role

Responsibilities

  • Design and implement alignment experiments focused on oversight systems for increasingly agentic AI models.
  • Deploy practical systems for action monitoring, red-teaming, and human-in-the-loop control.
  • Develop evaluations for alignment failure modes of frontier models such as overeagerness, instruction following failures, covert actions, avoiding restrictions, and scheming propensity.
  • Analyze deployment data to understand model failures, oversight gaps, and opportunities for training more aligned models.
  • Develop techniques for feeding oversight signals back into training while preserving the reliability and independence of the oversight process.
  • Produce externally publishable research when results advance the broader science of alignment.
  • Collaborate across research, product, security, safety, and engineering teams to turn alignment ideas into working systems.
  • Move quickly from research intuition to working experiments, prototypes, and evidence that can shape future models.

Requirements

  • Strong hands-on experience training, evaluating, or debugging large ML models, especially LLMs.
  • Experience with reinforcement learning, post-training, preference optimization, scalable oversight, model evaluation, or adjacent empirical ML research.
  • Strong engineering execution and ability to turn ambiguous research ideas into reliable experiments, tools, training pipelines, and production-facing systems.
  • Research intuitions for what experiments are likely to teach us something, while staying grounded in implementation details and empirical results.
  • Team player - willing to do a variety of tasks that move the team forward.
  • Enjoy fast-paced, collaborative research environments where priorities shift as models and evidence change.
  • See safety and usefulness as coupled goals.

Skills

Machine LearningLLMsReinforcement LearningPost-TrainingPreference OptimizationScalable OversightModel EvaluationPyTorchTraining PipelinesEvaluation DesignRed-TeamingAction Monitoring

Similar roles

ML Engineering jobs

Research Scientist / Engineer — Multimodal Agent

Builds and trains large-scale multimodal agentic models involving reasoning, planning, coding, and tool calling. Requires strong ML foundations, PyTorch expertise, and experience with distributed training on massive datasets.

250k – 450kPalo Alto, CAML EngineeringHybridVlmLLMs

Research Engineer, Evals

Build benchmarks, datasets, and evaluation systems to measure and improve AI model quality for fraud, identity, and risk judgment tasks. Collaborate across research, engineering, and product to drive rigorous experimentation and iteration in high-stakes environments.

250k – 400kSan Francisco, CAML EngineeringOn-siteLLMsPython

Research Engineer, Judgment Systems

Research Engineer designs evaluations, studies model failures, and builds research loops to improve AI agents for high-stakes fraud detection and judgment tasks. Requires ML training experience, experimental rigor, and strong engineering skills in adversarial environments.

250k – 400kSan Francisco, CAML EngineeringOn-siteLLMsPython

AI Engineer

Builds and deploys AI primitives and agents to automate workflows and enhance user experiences in investment management platform. Requires AI agent experience, distributed systems knowledge, and product-minded engineering across tech stacks.

250k – 325kNew York, NYML EngineeringOn-siteGoPython

Lead AI Engineer

Leads development of proprietary AI reasoning model TRAM for interpreting global trade law, building data pipelines, fine-tuning LLMs, and evaluation frameworks for high-speed, accurate compliance determinations. Requires AI product experience, especially RAG systems and model fine-tuning.

250k – 280kSan Francisco, CAML EngineeringOn-siteRAGLLMs