86 lines
3.1 KiB
Python
86 lines
3.1 KiB
Python
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# flake8: noqa
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import numpy as np
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from keras_core import backend
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from keras_core import testing
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from keras_core.optimizers.adagrad import Adagrad
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class AdagradTest(testing.TestCase):
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def test_config(self):
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optimizer = Adagrad(
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learning_rate=0.5,
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initial_accumulator_value=0.2,
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epsilon=1e-5,
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)
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self.run_class_serialization_test(optimizer)
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def test_single_step(self):
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optimizer = Adagrad(learning_rate=0.5)
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grads = np.array([1.0, 6.0, 7.0, 2.0])
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vars = backend.Variable([1.0, 2.0, 3.0, 4.0])
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optimizer.apply_gradients(zip([grads], [vars]))
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self.assertAllClose(
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vars, [0.5233, 1.5007, 2.5005, 3.5061], rtol=1e-4, atol=1e-4
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)
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def test_weight_decay(self):
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grads, var1, var2, var3 = (
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np.zeros(()),
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backend.Variable(2.0),
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backend.Variable(2.0, name="exclude"),
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backend.Variable(2.0),
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)
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optimizer_1 = Adagrad(learning_rate=1.0, weight_decay=0.004)
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optimizer_1.apply_gradients(zip([grads], [var1]))
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optimizer_2 = Adagrad(learning_rate=1.0, weight_decay=0.004)
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optimizer_2.exclude_from_weight_decay(var_names=["exclude"])
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optimizer_2.apply_gradients(zip([grads, grads], [var1, var2]))
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optimizer_3 = Adagrad(learning_rate=1.0, weight_decay=0.004)
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optimizer_3.exclude_from_weight_decay(var_list=[var3])
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optimizer_3.apply_gradients(zip([grads, grads], [var1, var3]))
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self.assertAlmostEqual(var1.numpy(), 1.9760959, decimal=6)
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self.assertAlmostEqual(var2.numpy(), 2.0, decimal=6)
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self.assertAlmostEqual(var3.numpy(), 2.0, decimal=6)
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def test_correctness_with_golden(self):
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optimizer = Adagrad(
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learning_rate=0.2, initial_accumulator_value=0.3, epsilon=1e-6
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)
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x = backend.Variable(np.ones([10]))
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grads = np.arange(0.1, 1.1, 0.1)
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first_grads = np.full((10,), 0.01)
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# fmt: off
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golden = np.array(
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[[0.9963, 0.9963, 0.9963, 0.9963, 0.9963, 0.9963, 0.9963, 0.9963, 0.9963, 0.9963],
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[0.9604, 0.9278, 0.9003, 0.8784, 0.8615, 0.8487, 0.8388, 0.8313, 0.8255, 0.8209],
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[0.9251, 0.8629, 0.8137, 0.7768, 0.7497, 0.7298, 0.7151, 0.704, 0.6956, 0.6891],
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[0.8903, 0.8012, 0.7342, 0.6862, 0.6521, 0.6277, 0.6099, 0.5967, 0.5867, 0.579],
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[0.856, 0.7422, 0.6604, 0.6037, 0.5644, 0.5367, 0.5168, 0.5021, 0.491, 0.4825]]
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)
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# fmt: on
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optimizer.apply_gradients(zip([first_grads], [x]))
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for i in range(5):
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self.assertAllClose(x, golden[i], rtol=5e-4, atol=5e-4)
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optimizer.apply_gradients(zip([grads], [x]))
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def test_clip_norm(self):
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optimizer = Adagrad(clipnorm=1)
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grad = [np.array([100.0, 100.0])]
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clipped_grad = optimizer._clip_gradients(grad)
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self.assertAllClose(clipped_grad[0], [2**0.5 / 2, 2**0.5 / 2])
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def test_clip_value(self):
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optimizer = Adagrad(clipvalue=1)
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grad = [np.array([100.0, 100.0])]
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clipped_grad = optimizer._clip_gradients(grad)
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self.assertAllClose(clipped_grad[0], [1.0, 1.0])
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