Neural Networks For Electronics Hobbyists- A Non Technical Project Based Introduction -

// Final weights after training float weights[] = 2.1, 0.3, 4.5; float bias = -2.8; void loop() float t = measureTapPattern(); if (neuron(t)) digitalWrite(LED, HIGH);

void train(float input1, float input2, float input3, int expected_output) float output = neuron(input1, input2, input3); float error = expected_output - output; // Adjust each weight slightly toward the correct answer weights[0] += error * input1 * 0.1; // 0.1 = learning rate weights[1] += error * input2 * 0.1; weights[2] += error * input3 * 0.1; bias += error * 0.1; // Final weights after training float weights[] = 2

Build the tap switch. Train it. Then unplug the USB – it still works. That’s your first embedded neural network. No PhD required. That’s your first embedded neural network

After 20–30 training examples, the weights change so that your pattern activates the neuron, while random knocks don’t. The beauty: After training, you upload a new sketch that only has the final weights . No training code. The neural network is now "frozen" into your hardware. The beauty: After training, you upload a new

float neuron(float input1, float input2, float input3) float sum = input1 weights[0] + input2 weights[1] + input3*weights[2] + bias; if (sum > 0) return 1; // Tap pattern recognized else return 0;