ARTIFICIAL NEURAL NETWORK SIMULATION

▸ Building the neuron layers (input · hidden · output)…
▸ Loading preset weights & biases
▸ Configuring activation functions (ReLU · sigmoid · softmax)
▸ Opening the 7×7 hand-draw board for the input layer
▸ Calibrating the forward pass…
▸ Ready — Online. ✅
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⌂ Mind & Machine

Simulation room Artificial neural network

Artificial Neural Network · Forward Pass
Online
perceptron → MLP · inference
Output layer
🔮 Prediction
Prediction
Confidence
Neurons
Layers
Weights
Viewing
Notes
Each artificial neuron computes a weighted sum of the inputs (Σ wᵢxᵢ + b) then passes it through an activation function. Many neurons stacked in layers form an MLP; the signal flowing one-way in→out is the forward pass.
Draw on the grid (CLICK / drag) → watch the signal flow in→out · pick a "Scenario" (perceptron · XOR · digit · shape · activation · biological bridge) · click a concept for details
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Scores of the 4 strongest outputs over time out₀out₁out₂out₃