[Expression of Interest] Research Scientist / Engineer, Honesty

Anthropic
New York, NY, USA / San Francisco, CA, USA2025-02-10

About the job

As a Research Scientist/Engineer focused on honesty within the Finetuning Alignment team, you'll spearhead the development of techniques to minimize hallucinations and enhance truthfulness in language models. Your work will focus on creating robust systems that are accurate and reflect their true levels of confidence across all domains, and that work to avoid being deceptive or misleading.

Responsibilities

Design and implement novel data curation pipelines to identify, verify, and filter training data for accuracy given the model’s knowledge

Develop specialized classifiers to detect potential hallucinations or miscalibrated claims made by the model

Create and maintain comprehensive honesty benchmarks and evaluation frameworks

Implement techniques to ground model outputs in verified information, such as search and retrieval-augmented generation (RAG) systems

Design and deploy human feedback collection specifically for identifying and correcting miscalibrated responses

Design and implement prompting pipelines to generate data that improves model accuracy and honesty

Develop and test novel RL environments that reward truthful outputs and penalize fabricated claims

Create tools to help human evaluators efficiently assess model outputs for accuracy

Qualifications

Minimum

Have an MS/PhD in Computer Science, ML, or related field

Possess strong programming skills in Python

Have industry experience with language model finetuning and classifier training

Show proficiency in experimental design and statistical analysis for measuring improvements in calibration and accuracy

Care about AI safety and the accuracy and honesty of both current and future AI systems

Have experience in data science or the creation and curation of datasets for finetuning LLMs

An understanding of various metrics of uncertainty, calibration, and truthfulness in model outputs

Preferred

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