import torch from safetensors.torch import load_file def load_model(path='model.safetensors'): return load_file(path) def xor2(a, b, prefix, w): or_out = int(a * w[f'{prefix}.or.weight'][0] + b * w[f'{prefix}.or.weight'][1] + w[f'{prefix}.or.bias'] >= 0) nand_out = int(a * w[f'{prefix}.nand.weight'][0] + b * w[f'{prefix}.nand.weight'][1] + w[f'{prefix}.nand.bias'] >= 0) return int(or_out * w[f'{prefix}.and.weight'][0] + nand_out * w[f'{prefix}.and.weight'][1] + w[f'{prefix}.and.bias'] >= 0) def parity5(a, b, c, d, e, weights): xor_ab = xor2(a, b, 'xor_ab', weights) xor_cd = xor2(c, d, 'xor_cd', weights) xor_abcd = xor2(xor_ab, xor_cd, 'xor_abcd', weights) return xor2(xor_abcd, e, 'xor_final', weights) if __name__ == '__main__': w = load_model() print('parity5 selected outputs:') for n_ones in range(6): bits = [1 if j < n_ones else 0 for j in range(5)] print(f' {n_ones} ones: {bits} -> {parity5(*bits, w)}')