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In a Training Loop 🔄

R

juiceb0xc0de

AI & ML interests

destroying heuristic determination in 4 dimensions to flood the engines with diversity and a lot of swear words

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updated a model 13 minutes ago
juiceb0xc0de/gemma-4-e2b-saes
published a model about 4 hours ago
juiceb0xc0de/gemma-4-e2b-saes
posted an update about 10 hours ago
Introducing the Gemma-4-E2B Brain Atlas, an interactive neural census of every layer, every head, 16 behavior categories in Google's flagship 2B model. We ran 184,320 probe prompts across 35 layers × 8 components and mapped what came back. The Brain Atlas is an interactive tool that lets you explore the internal behavior of Google's Gemma-4-E2B model layer by layer, head by head. Pick a behavior category, pick a layer, and see exactly which components light up and which go quiet. The dataset is fully queryable if you want to go deeper. The mapping combines multiple single-direction techniques run in parallel across every layer and component. Activation taxonomy (classifying each neuron by how broadly it fires across prompt categories), coactivation pair analysis (which neurons lock together and on what topics), F-stat behavioral separation (one-way ANOVA per feature across 16 behavior categories), per-head specificity scoring, and a full compliance probe pipeline using SVD, sparse decomposition, and variance analysis. Here's what I found when I ran it. The sharpest behavioral signal isn't at the output. It's Layer 0. Up projection hits F=22.7, nearly 2x anything in the final third of the network. The model does its behavioral sorting before it's barely started, then spends the next 34 layers… doing what exactly? The gate has a lifecycle. 70% dormant at L1, highest in the model. Brutal sparsification at L23–26 (>58% silent). Then reopens. The final five layers are the most alive gates anywhere. The model's last act is a gate flare. Layer 4 routes 5 projections to dim 448. One layer. One dimension. That's a topology highway. Zero specialist neurons. Not one. 1.2M neurons analyzed. None fires exclusively on a single category. This model distributes everything. 🧠 Space: https://huggingface.co/spaces/juiceb0xc0de/gemma-4-e2b-brain-atlas 📊 Dataset (1.3M rows, fully queryable): https://huggingface.co/datasets/juiceb0xc0de/gemma-4-e2b-atlas
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