Adly Templeton
in Black box
Adly Templeton, interpretability researcher at Anthropic and lead author of Scaling Monosemanticity (2024), the work behind the "Golden Gate Claude" demonstration. The paper applies sparse autoencoders to Claude 3 Sonnet to extract interpretable features from a deployed model.
Stake§
Commercial and reputational — Claude is Anthropic's product, and a demonstration that its internals can be identified and steered underwrites the company's positioning on safety and interpretability. The report is self-published, without external peer review.
Templeton led the scaling of mechanistic interpretability from toy models to a frontier system for this topic. Scaling Monosemanticity extracts millions of features with sparse autoencoders and shows control as well as reading: clamping the Golden Gate Bridge feature high makes the model steer every exchange toward, and identify as, the bridge. The work continues the circuits line of Olah and sits in tension with Turpin's finding that the same kind of model's stated reasoning cannot be taken at face value.