Toward universal steering and monitoring of AI models
Summary
Artificial intelligence (AI) models contain much of human knowledge. Understanding the representation of this knowledge will lead to improvements in model capabilities and safeguards. Building on advances in feature learning, we developed an approach for extracting linear representations of semantic notions or concepts in AI models. We showed how these representations enabled model steering, through which we exposed vulnerabilities and improved model capabilities. We demonstrated that conc
Content
# Toward universal steering and monitoring of AI models
*Published: 2026 Feb 19*
Artificial intelligence (AI) models contain much of human knowledge.
Understanding the representation of this knowledge will lead to improvements in
model capabilities and safeguards. Building on advances in feature learning, we
developed an approach for extracting linear representations of semantic notions
or concepts in AI models. We showed how these representations enabled model
steering, through which we exposed vulnerabilities and improved model
capabilities. We demonstrated that concept representations were transferable
across languages and enabled multiconcept steering. Across hundreds of concepts,
we found that larger models were more steerable and that steering improved model
capabilities beyond prompting. We showed that concept representations were more
effective for monitoring misaligned content than for using judge models. Our
results illustrate the power of internal representations for advancing AI safety
and model capabilities.
DOI: 10.1126/science.aea6792