docs: example — Cross-SAE alignment via FeatureMatch (cosine + top-k)#572
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BentleyRolling wants to merge 1 commit intodecoderesearch:mainfrom
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docs: example — Cross-SAE alignment via FeatureMatch (cosine + top-k)#572BentleyRolling wants to merge 1 commit intodecoderesearch:mainfrom
BentleyRolling wants to merge 1 commit intodecoderesearch:mainfrom
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- Add tutorial notebook showing cross-SAE feature alignment - Runs on synthetic data by default (works in CI/docs builds) - Includes commented section for real SAE code collection - Add to Community Tutorials section in docs/index.md - External package: FeatureMatch (MIT, Course Correct Labs)
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Summary
Adds an example notebook demonstrating cross-SAE feature alignment using the external FeatureMatch package (MIT, Course Correct Labs). Provides cosine similarity heatmap, top-k matches, and quick stats.
Why
Researchers often need to compare whether two SAEs learned similar dictionaries across seeds/hparams. This example standardizes a quick, reproducible check.
How to use
Notes
Checklist