An interactive visualization of Transformer internals with a focus on attention mechanisms.
Mode
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Model Family
Model Configuration
Model Family - B
Model Config - B
Input Text
A
B
Batch ModeUpload a CSV or JSON to analyse multiple sentences at once.
Drop CSV or JSON file here, or click to browse
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Attention Atlas
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Detect and analyze social bias in text using GUS-Net neural NER.
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Bias Detection Model
Detect Model - B
Sensitivity Threshold
UNFAIR0.50
GEN0.50
STEREO0.50
UNFAIR0.50
GEN0.50
STEREO0.50
Input Text
Batch ModeUpload a CSV or JSON to analyse multiple sentences at once
Drop CSV or JSON file here, or click to browse
Metric Explanation
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Inter-Sentence Attention Details
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Sentence X (Target)
Sentence Y (Source)
ISA Score:
What does this represent?
This value is the average fraction of Sentence X's attention that lands on Sentence Y, with attention averaged over all layers and heads and attention to special tokens excluded. It ranges from 0 to 1 and reads as a share of X's attention budget.
Interpretation
High ISA → strong dependency across sentences (semantic or syntactic connection)
Low ISA → weak or no cross-sentence influence
Token-to-Token Attention
Auditor Notebook
Record one analytical move per entry. Stored in this session and persisted to disk; export when you finish.
New entry
Title is optional. The five thesis elements are saved: hypothesis, automatic conditions, automatic signals, uncertainty, and next steps.
Group related entries under one investigation, e.g. "crows-pairs-race-bert-2026-05".
A short label so the entry is easy to find later.
What you expect the model to do, and why.
What this evidence cannot decide, and what could overturn it.
Concrete follow-ups: another model, another axis, another prompt, a control.
Conditions and signals captured automatically
Entries
Persisted to downloads/sessions/auditor_notebook.json.