transformer-lens-interpretability by davila7

Provides guidance for mechanistic interpretability research using TransformerLens to inspect and manipulate transformer internals via HookPoints and activation caching. Use when reverse-engineering model algorithms, studying attention patterns, or performing activation patching experiments.

Coding
15.7K Stars
1.4K Forks
Updated Jan 12, 2026, 05:31 AM

Why Use This

This skill provides specialized capabilities for davila7's codebase.

Use Cases

  • Developing new features in the davila7 repository
  • Refactoring existing code to follow davila7 standards
  • Understanding and working with davila7's codebase structure

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Source & Community

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main
Community
15.7K 1.4K
Updated At Jan 12, 2026, 05:31 AM

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SKILL.md 347 Lines
Total Files 1
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License MIT