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Update batchnorm to have the running stats in parameters (#305)
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@ -243,8 +243,15 @@ class BatchNorm(Module):
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self.bias = mx.zeros((num_features,))
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if self.track_running_stats:
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self._running_mean = mx.zeros((num_features,))
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self._running_var = mx.ones((num_features,))
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self.running_mean = mx.zeros((num_features,))
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self.running_var = mx.ones((num_features,))
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self.freeze(keys=["running_mean", "running_var"], recurse=False)
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def unfreeze(self, *args, **kwargs):
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"""Wrap unfreeze to make sure that running_mean and var are always
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frozen parameters."""
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super().unfreeze(*args, **kwargs)
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self.freeze(keys=["running_mean", "running_var"], recurse=False)
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def _extra_repr(self):
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return (
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@ -255,46 +262,47 @@ class BatchNorm(Module):
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def _calc_stats(self, x: mx.array) -> Tuple[mx.array, mx.array]:
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"""
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Calculate the mean and variance of the input tensor.
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Calculate the mean and variance of the input tensor across the batch
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and spatial dimensions.
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Args:
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x (mx.array): Input tensor.
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x (array): Input tensor.
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Returns:
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tuple: Tuple containing mean and variance.
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"""
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reduction_axes = tuple(range(0, x.ndim - 1))
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means = mx.mean(x, axis=reduction_axes, keepdims=True)
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mean = mx.mean(x, axis=reduction_axes, keepdims=True)
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var = mx.var(x, axis=reduction_axes, keepdims=True)
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if self.track_running_stats and self.training:
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self._running_mean = (
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1 - self.momentum
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) * self._running_mean + self.momentum * means
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self._running_var = (
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1 - self.momentum
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) * self._running_var + self.momentum * var
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return means, var
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return mean, var
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def __call__(self, x: mx.array) -> mx.array:
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"""
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Forward pass of BatchNorm.
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Args:
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x (mx.array): Input tensor.
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x (array): Input tensor.
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Returns:
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mx.array: Output tensor.
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array: Normalized output tensor.
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"""
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if x.ndim < 2 or x.ndim > 4:
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raise ValueError(
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f"Expected input tensor to have 2, 3 or 4 dimensions, but got {x.ndim}"
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)
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if self.training or not self.track_running_stats:
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means, var = self._calc_stats(x)
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else:
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means, var = self._running_mean, self._running_var
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x = (x - means) * mx.rsqrt(var + self.eps)
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# Calculate the mean and variance used to normalize the input x. If we
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# are in training mode update the running stats if needed.
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mean, var = self._calc_stats(x)
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if self.training and self.track_running_stats:
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mu = self.momentum
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self.running_mean = (1 - mu) * self.running_mean + mu * mean
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self.running_var = (1 - mu) * self.running_var + mu * var
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elif self.track_running_stats:
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mean = self.running_mean
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var = self.running_var
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x = (x - mean) * mx.rsqrt(var + self.eps)
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return (self.weight * x + self.bias) if "weight" in self else x
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@ -326,8 +326,8 @@ class TestNN(mlx_tests.MLXTestCase):
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# Batch norm
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bn = nn.BatchNorm(num_features=4, affine=True)
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self.assertTrue(mx.allclose(bn._running_mean, mx.zeros_like(bn._running_mean)))
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self.assertTrue(mx.allclose(bn._running_var, mx.ones_like(bn._running_var)))
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self.assertTrue(mx.allclose(bn.running_mean, mx.zeros_like(bn.running_mean)))
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self.assertTrue(mx.allclose(bn.running_var, mx.ones_like(bn.running_var)))
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y = bn(x)
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expected_y = mx.array(
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[
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@ -342,8 +342,8 @@ class TestNN(mlx_tests.MLXTestCase):
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expected_var = mx.array([0.928435, 1.00455, 1.04117, 0.94258])
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self.assertTrue(x.shape == y.shape)
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self.assertTrue(mx.allclose(y, expected_y, atol=1e-5))
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self.assertTrue(mx.allclose(bn._running_mean, expected_mean, atol=1e-5))
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self.assertTrue(mx.allclose(bn._running_var, expected_var, atol=1e-5))
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self.assertTrue(mx.allclose(bn.running_mean, expected_mean, atol=1e-5))
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self.assertTrue(mx.allclose(bn.running_var, expected_var, atol=1e-5))
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# test eval mode
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bn.eval()
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@ -385,8 +385,8 @@ class TestNN(mlx_tests.MLXTestCase):
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# Batch norm
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bn = nn.BatchNorm(num_features=C, affine=True)
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self.assertTrue(mx.allclose(bn._running_mean, mx.zeros_like(bn._running_mean)))
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self.assertTrue(mx.allclose(bn._running_var, mx.ones_like(bn._running_var)))
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self.assertTrue(mx.allclose(bn.running_mean, mx.zeros_like(bn.running_mean)))
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self.assertTrue(mx.allclose(bn.running_var, mx.ones_like(bn.running_var)))
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y = bn(x)
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self.assertTrue(x.shape == y.shape)
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expected_y = mx.array(
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@ -410,13 +410,33 @@ class TestNN(mlx_tests.MLXTestCase):
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[[[0.00207845, -5.3259e-05, 0.04755, -0.0697296, 0.0236228]]]
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)
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expected_var = mx.array([[[0.968415, 1.05322, 0.96913, 0.932305, 0.967224]]])
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self.assertTrue(mx.allclose(bn._running_mean, expected_mean, atol=1e-5))
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self.assertTrue(mx.allclose(bn._running_var, expected_var, atol=1e-5))
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self.assertTrue(mx.allclose(bn.running_mean, expected_mean, atol=1e-5))
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self.assertTrue(mx.allclose(bn.running_var, expected_var, atol=1e-5))
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x = mx.random.normal((N, L, C, L, C), dtype=mx.float32)
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with self.assertRaises(ValueError):
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y = bn(x)
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# Check that the running stats are in the param dictionary
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bn_parameters = bn.parameters()
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self.assertIn("running_mean", bn_parameters)
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self.assertIn("running_var", bn_parameters)
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self.assertIn("weight", bn_parameters)
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self.assertIn("bias", bn_parameters)
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bn_trainable = bn.trainable_parameters()
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self.assertNotIn("running_mean", bn_trainable)
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self.assertNotIn("running_var", bn_trainable)
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self.assertIn("weight", bn_trainable)
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self.assertIn("bias", bn_trainable)
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bn.unfreeze()
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bn_trainable = bn.trainable_parameters()
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self.assertNotIn("running_mean", bn_trainable)
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self.assertNotIn("running_var", bn_trainable)
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self.assertIn("weight", bn_trainable)
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self.assertIn("bias", bn_trainable)
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def test_batch_norm_stats(self):
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batch_size = 2
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num_features = 4
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@ -427,8 +447,8 @@ class TestNN(mlx_tests.MLXTestCase):
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batch_norm = nn.BatchNorm(num_features)
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batch_norm.train()
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running_mean = np.array(batch_norm._running_mean)
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running_var = np.array(batch_norm._running_var)
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running_mean = np.array(batch_norm.running_mean)
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running_var = np.array(batch_norm.running_var)
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data = mx.random.normal((batch_size, num_features))
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@ -438,14 +458,14 @@ class TestNN(mlx_tests.MLXTestCase):
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variances = np.var(np_data, axis=0)
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running_mean = (1 - momentum) * running_mean + momentum * means
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running_var = (1 - momentum) * running_var + momentum * variances
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self.assertTrue(np.allclose(batch_norm._running_mean, running_mean, atol=1e-5))
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self.assertTrue(np.allclose(batch_norm._running_var, running_var, atol=1e-5))
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self.assertTrue(np.allclose(batch_norm.running_mean, running_mean, atol=1e-5))
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self.assertTrue(np.allclose(batch_norm.running_var, running_var, atol=1e-5))
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batch_norm = nn.BatchNorm(num_features)
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batch_norm.train()
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running_mean = np.array(batch_norm._running_mean)
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running_var = np.array(batch_norm._running_var)
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running_mean = np.array(batch_norm.running_mean)
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running_var = np.array(batch_norm.running_var)
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data = mx.random.normal((batch_size, h, w, num_features))
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normalized_data = batch_norm(data)
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@ -454,8 +474,8 @@ class TestNN(mlx_tests.MLXTestCase):
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variances = np.var(np_data, axis=(0, 1, 2))
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running_mean = (1 - momentum) * running_mean + momentum * means
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running_var = (1 - momentum) * running_var + momentum * variances
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self.assertTrue(np.allclose(batch_norm._running_mean, running_mean, atol=1e-5))
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self.assertTrue(np.allclose(batch_norm._running_var, running_var, atol=1e-5))
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self.assertTrue(np.allclose(batch_norm.running_mean, running_mean, atol=1e-5))
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self.assertTrue(np.allclose(batch_norm.running_var, running_var, atol=1e-5))
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def test_conv1d(self):
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N = 5
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