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authorericmarin <maarin.eric@gmail.com>2026-04-13 19:42:39 +0200
committerericmarin <maarin.eric@gmail.com>2026-04-13 21:38:16 +0200
commitfcbbc960f43137aa170b78ba0be2d89aec3bc766 (patch)
tree15e0249bf429888d9b64f19eb0c6e2d9af0901e4 /examples/iris/iris_wide_to_deep.py
parent8f4f24523235965cfa2041ed00cc40fc0b4bd367 (diff)
downloadvein-fcbbc960f43137aa170b78ba0be2d89aec3bc766.tar.gz
vein-fcbbc960f43137aa170b78ba0be2d89aec3bc766.zip
New ONNX ops and testsHEADmaster
New ops: Slice, Squeeze, Unsqueeze New tests based on papers: - Wide-to-Deep, Deep-to-Wide Transformation - Pruining of stably inactive (always negative) and active (always positive) ReLUs
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diff --git a/examples/iris/iris_wide_to_deep.py b/examples/iris/iris_wide_to_deep.py
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+import torch, torch.nn as nn
+from sklearn.datasets import load_iris
+from sklearn.preprocessing import StandardScaler
+from torch.utils.data import DataLoader, TensorDataset
+
+class Wide_Iris_MLP(nn.Module):
+ def __init__(self, hidden_dim):
+ super().__init__()
+ self.layers = nn.Sequential(
+ nn.Linear(4, hidden_dim),
+ nn.ReLU(),
+ nn.Linear(hidden_dim, 3),
+ )
+ def forward(self, x):
+ return self.layers(x)
+
+class Deep_Block(nn.Module):
+ def __init__(self, w1, b1, w2):
+ super().__init__()
+ self.fc1 = nn.Linear(4, 1)
+ self.fc1.weight.data = w1.clone().unsqueeze(0)
+ self.fc1.bias.data = b1.clone().unsqueeze(0)
+ self.fc2 = nn.Linear(1, 3, bias=False)
+ self.fc2.weight.data = w2.clone().unsqueeze(1)
+
+ def forward(self, x_s):
+ x, s = x_s
+ z = torch.relu(self.fc1(x))
+ ds = self.fc2(z)
+ return (x, s + ds)
+
+class Deep_Iris_MLP(nn.Module):
+ def __init__(self, wide_net):
+ super().__init__()
+ w1 = wide_net.layers[0].weight.data
+ b1 = wide_net.layers[0].bias.data
+ w2 = wide_net.layers[2].weight.data
+ b2 = wide_net.layers[2].bias.data
+ num_neurons = w1.shape[0]
+
+ self.blocks = nn.Sequential(*[
+ Deep_Block(w1[j], b1[j], w2[:, j]) for j in range(num_neurons)
+ ])
+ self.final_bias = nn.Parameter(b2.clone())
+
+ def forward(self, x):
+ s = torch.zeros(x.shape[0], 3, device=x.device)
+ _, final_s = self.blocks((x, s))
+ return final_s + self.final_bias
+
+iris = load_iris()
+scaler = StandardScaler()
+X = scaler.fit_transform(iris.data).astype('float32') # pyright: ignore
+y = iris.target.astype('int64') # pyright: ignore
+
+dataset = TensorDataset(torch.from_numpy(X), torch.from_numpy(y))
+trainloader = DataLoader(dataset, batch_size=16, shuffle=True)
+
+def train_model(name:str, dim):
+ net = Wide_Iris_MLP(hidden_dim=dim)
+ loss_fn = nn.CrossEntropyLoss()
+ optimizer = torch.optim.Adam(net.parameters(), lr=1e-2)
+
+ print(f"Training {name} ({dim} neurons)...")
+ for epoch in range(100):
+ global loss
+ for data in trainloader:
+ inputs, targets = data
+ optimizer.zero_grad()
+ outputs = net(inputs)
+ loss = loss_fn(outputs, targets)
+ loss.backward()
+ optimizer.step()
+ if (epoch + 1) % 10 == 0:
+ print(f" Epoch {epoch+1}, Loss: {loss.item():.4f}")
+ return net
+
+if __name__ == "__main__":
+ torch_net_a = train_model("Wide Network", 10).eval()
+ torch_net_b = Deep_Iris_MLP(torch_net_a).eval()
+
+ torch.onnx.export(torch_net_a, (torch.randn(1, 4),), "iris_a.onnx")
+ torch.onnx.export(torch_net_b, (torch.randn(1, 4),), "iris_b.onnx")