finding
pending-review
finding:car-position-encodes-as-a-1d-manifold-in-mountain-car-task-linear-interventions-cross-voids-and-fail-geodesic-following-enables-smooth-controlCar position encodes as a 1D manifold in mountain car task; linear interventions cross voids and fail; geodesic following enables smooth control.
geiger-goodfire-world-inside-neural-networks-2026.mdFrontmatter (11 fields)
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- Mountain Car Case Study(concept)
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geiger-goodfire-world-inside-neural-networks-2026.md