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---
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license: mit
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tags:
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- pytorch
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- safetensors
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- threshold-logic
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- neuromorphic
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---
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# threshold-8to3encoder
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8-to-3 priority encoder. Outputs binary index of highest-priority set input.
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## Function
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encode(I7..I0) -> (Y2, Y1, Y0)
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Priority: I7 > I6 > I5 > I4 > I3 > I2 > I1 > I0
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## Example Encodings
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| Input | Highest | Output |
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|-------|---------|--------|
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| 10000000 | I7 | 111 (7) |
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| 01000000 | I6 | 110 (6) |
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| 00100000 | I5 | 101 (5) |
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| 00010000 | I4 | 100 (4) |
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| 00001000 | I3 | 011 (3) |
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| 00000100 | I2 | 010 (2) |
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| 00000010 | I1 | 001 (1) |
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| 00000001 | I0 | 000 (0) |
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| 11111111 | I7 | 111 (7) |
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## Architecture
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Single layer with 3 neurons using weighted priority:
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| Output | Function | Weights [I7..I0] | Bias |
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|--------|----------|------------------|------|
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| Y2 | I7∨I6∨I5∨I4 | [1,1,1,1,0,0,0,0] | -1 |
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| Y1 | Priority bit 1 | [16,16,-4,-4,1,1,0,0] | -1 |
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| Y0 | Priority bit 0 | [128,-64,32,-16,8,-4,2,0] | -1 |
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Y1 and Y0 use weighted dominance: higher-priority inputs have larger weights
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that override lower-priority inputs through the threshold mechanism.
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## Parameters
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|---|---|
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| Inputs | 8 |
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| Outputs | 3 |
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| Neurons | 3 |
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| Layers | 1 |
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| Parameters | 27 |
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| Magnitude | 303 |
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## Usage
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```python
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from safetensors.torch import load_file
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import torch
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w = load_file('model.safetensors')
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def encode8to3(i7, i6, i5, i4, i3, i2, i1, i0):
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inp = torch.tensor([float(i7), float(i6), float(i5), float(i4),
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float(i3), float(i2), float(i1), float(i0)])
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y2 = int((inp @ w['y2.weight'].T + w['y2.bias'] >= 0).item())
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y1 = int((inp @ w['y1.weight'].T + w['y1.bias'] >= 0).item())
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y0 = int((inp @ w['y0.weight'].T + w['y0.bias'] >= 0).item())
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return y2, y1, y0
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# I5 is highest set bit
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print(encode8to3(0, 0, 1, 0, 1, 0, 0, 0)) # (1, 0, 1) = 5
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```
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## License
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MIT
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