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    1. Home
    2. Google DeepMind · Exploring Gemma 2 with Gemma Scope
    3. Gemma-2-9B
    4. Residual Stream - 16k
    5. 31-GEMMASCOPE-RES-16K
    6. 14737
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    Explanations

    references to notable authors and artists

    oai_token-act-pair · gpt-4o-miniTriggered by @bot

    famous names and proper nouns of notable people and artists.

    oai_token-act-pair · claude-4-5-haikuTriggered by @emiglarou

    proper names of people, particularly authors, artists, athletes, and other notable individuals.

    oai_token-act-pair · claude-4-5-sonnetTriggered by @jyhe0408

    capitalized named entities, especially multiword proper names and titles for notable people, bands, athletes, works, and awards.

    oai_token-act-pair · gpt-5Triggered by @jyhe0408
    New Auto-Interp
    Top Features by Cosine Similarity
    Comparing With GEMMA-2-9B @ 31-gemmascope-res-16k
    Configuration
    google/gemma-scope-9b-pt-res/layer_31/width_16k/average_l0_114
    Prompts (Dashboard)
    24,576 prompts, 128 tokens each
    Dataset (Dashboard)
    monology/pile-uncopyrighted
    Features
    16,384
    Data Type
    float32
    Hook Name
    blocks.31.hook_resid_post
    Hook Layer
    31
    Architecture
    jumprelu
    Context Size
    1,024
    Dataset
    monology/pile-uncopyrighted
    Activation Function
    relu
    Embeds
    IFrame
    Link
    Not in Any Lists

    No Comments

    Negative Logits
    StructEnd
    -0.77
    __':
    
    -0.63
    awtextra
    -0.57
    findpost
    -0.56
    Diwedd
    -0.56
    transQ
    -0.56
     intStringLen
    -0.55
    __':
    -0.54
    OpenHelper
    -0.54
     propOrder
    -0.54
    POSITIVE LOGITS
    whose
    0.41
    pakah
    0.40
     among
    0.38
    Among
    0.37
     amongst
    0.37
    among
    0.37
    whom
    0.36
     czy
    0.36
    (!)
    0.35
    who
    0.35
    Activations Density 0.419%

    No Known Activations