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"""
Threshold Network for NOR Gate
A formally verified single-neuron threshold network computing negated disjunction.
Weights are integer-constrained and activation uses the Heaviside step function.
NOR is functionally complete - any Boolean function can be built from NOR gates.
"""
import torch
from safetensors.torch import load_file
class ThresholdNOR:
"""
NOR gate implemented as a threshold neuron.
Circuit: output = (w1*x1 + w2*x2 + bias >= 0)
With weights=[-1,-1], bias=0: fires only when both inputs are 0.
"""
def __init__(self, weights_dict):
self.weight = weights_dict['weight']
self.bias = weights_dict['bias']
def __call__(self, x1, x2):
inputs = torch.tensor([float(x1), float(x2)])
weighted_sum = (inputs * self.weight).sum() + self.bias
return (weighted_sum >= 0).float()
@classmethod
def from_safetensors(cls, path="model.safetensors"):
return cls(load_file(path))
def forward(x, weights):
"""
Forward pass with Heaviside activation.
Args:
x: Input tensor of shape [..., 2]
weights: Dict with 'weight' and 'bias' tensors
Returns:
NOR(x[0], x[1])
"""
x = torch.as_tensor(x, dtype=torch.float32)
weighted_sum = (x * weights['weight']).sum(dim=-1) + weights['bias']
return (weighted_sum >= 0).float()
if __name__ == "__main__":
weights = load_file("model.safetensors")
model = ThresholdNOR(weights)
print("NOR Gate Truth Table:")
print("-" * 25)
for x1 in [0, 1]:
for x2 in [0, 1]:
out = int(model(x1, x2).item())
expected = 1 - (x1 | x2)
status = "OK" if out == expected else "FAIL"
print(f"NOR({x1}, {x2}) = {out} [{status}]")
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