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Function numpy_eval

extra/training.py:44–52  ·  view source on GitHub ↗
(Y_test, num_classes)

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42 target_transform=lambda y: y):
43 Tensor.training = False
44 def numpy_eval(Y_test, num_classes):
45 Y_test_preds_out = np.zeros(list(Y_test.shape)+[num_classes])
46 for i in trange((len(Y_test)-1)//BS+1, disable=None):
47 x = Tensor(transform(X_test[i*BS:(i+1)*BS]))
48 out = model.forward(x) if hasattr(model, 'forward') else model(x)
49 Y_test_preds_out[i*BS:(i+1)*BS] = out.numpy()
50 Y_test_preds = np.argmax(Y_test_preds_out, axis=-1)
51 Y_test = target_transform(Y_test)
52 return (Y_test == Y_test_preds).mean(), Y_test_preds
53
54 if num_classes is None: num_classes = Y_test.max().astype(int)+1
55 acc, Y_test_pred = numpy_eval(Y_test, num_classes)

Callers 1

evaluateFunction · 0.85

Calls 8

trangeFunction · 0.90
TensorClass · 0.90
modelFunction · 0.85
zerosMethod · 0.80
argmaxMethod · 0.80
meanMethod · 0.80
forwardMethod · 0.45
numpyMethod · 0.45

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