[expression of Interest] Research Scientist / Engineer, Honesty

Anthropic Anthropic · AI Frontier · San Francisco, CA · AI Research & Engineering

Research Scientist/Engineer focused on honesty in language models, developing techniques to minimize hallucinations and enhance truthfulness. This involves data curation, classifier development, evaluation frameworks, RAG implementation, human feedback collection, prompting pipelines, RL environments, and tools for human evaluators.

What you'd actually do

  1. Design and implement novel data curation pipelines to identify, verify, and filter training data for accuracy given the model’s knowledge
  2. Develop specialized classifiers to detect potential hallucinations or miscalibrated claims made by the model
  3. Create and maintain comprehensive honesty benchmarks and evaluation frameworks
  4. Implement techniques to ground model outputs in verified information, such as search and retrieval-augmented generation (RAG) systems
  5. Design and deploy human feedback collection specifically for identifying and correcting miscalibrated responses

Skills

Required

  • Python
  • language model finetuning
  • classifier training
  • experimental design
  • statistical analysis
  • data science
  • creation and curation of datasets for finetuning LLMs
  • metrics of uncertainty
  • calibration
  • truthfulness in model outputs

Nice to have

  • Published work on hallucination prevention, factual grounding, or knowledge integration in language models
  • Experience with fact-grounding techniques
  • Background in developing confidence estimation or calibration methods for ML models
  • A track record of creating and maintaining factual knowledge bases
  • Familiarity with RLHF specifically applied to improving model truthfulness
  • Worked with crowd-sourcing platforms and human feedback collection systems
  • Experience developing evaluations of model accuracy or hallucinations

What the JD emphasized

  • minimize hallucinations
  • enhance truthfulness
  • accurate
  • honesty
  • miscalibrated claims
  • honesty benchmarks
  • ground model outputs in verified information
  • miscalibrated responses
  • model accuracy and honesty
  • truthful outputs
  • fabricated claims
  • model outputs for accuracy
  • hallucination prevention
  • factual grounding
  • knowledge integration
  • fact-grounding techniques
  • confidence estimation
  • calibration methods
  • factual knowledge bases
  • model truthfulness
  • model accuracy
  • hallucinations

Other signals

  • minimize hallucinations
  • enhance truthfulness
  • robust systems that are accurate
  • avoid being deceptive or misleading
  • ground model outputs in verified information