Chris Olah
Mechanistic interpretabilityInterpretability
in Black box
Chris Olah, interpretability researcher. He led the Clarity team at OpenAI when "Zoom In: An Introduction to Circuits" appeared in Distill, the web journal he had founded and edited; in 2021 he co-founded Anthropic, where he leads the interpretability team. With his collaborators he is the originator of the circuits approach to neural-network interpretability.
Stake§
Reputational and intellectual, and total — the article states the thesis that neural networks are not irreducible black boxes, which the same people then spent years trying to vindicate, at OpenAI and then at Anthropic. Distill was nonprofit, so the early investment was in the idea rather than a product; the later Anthropic work carries the commercial dimension.
Olah's contribution to this topic is the claim that a network not built to be transparent can still be reverse-engineered from the inside — mechanistic interpretability. "Zoom In" traces individual feature detectors in a vision model and the circuits of weights that assemble them into complex ones, and the programme scales toward a frontier language model in Scaling Monosemanticity. The bet runs against Jonas and Kording's demonstration that standard analysis methods can miss a mechanism that is fully known.