Python deployment.model_deploy.create_clones() Examples
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Example #1
Source File: model_deploy_test.py From garbage-object-detection-tensorflow with MIT License | 6 votes |
def testCreateLogisticClassifier(self): g = tf.Graph() with g.as_default(): tf.set_random_seed(0) tf_inputs = tf.constant(self._inputs, dtype=tf.float32) tf_labels = tf.constant(self._labels, dtype=tf.float32) model_fn = LogisticClassifier clone_args = (tf_inputs, tf_labels) deploy_config = model_deploy.DeploymentConfig(num_clones=1) self.assertEqual(slim.get_variables(), []) clones = model_deploy.create_clones(deploy_config, model_fn, clone_args) clone = clones[0] self.assertEqual(len(slim.get_variables()), 2) for v in slim.get_variables(): self.assertDeviceEqual(v.device, 'CPU:0') self.assertDeviceEqual(v.value().device, 'CPU:0') self.assertEqual(clone.outputs.op.name, 'LogisticClassifier/fully_connected/Sigmoid') self.assertEqual(clone.scope, '') self.assertDeviceEqual(clone.device, 'GPU:0') self.assertEqual(len(slim.losses.get_losses()), 1) update_ops = tf.get_collection(tf.GraphKeys.UPDATE_OPS) self.assertEqual(update_ops, [])
Example #2
Source File: model_deploy_test.py From yolo_v2 with Apache License 2.0 | 6 votes |
def testCreateLogisticClassifier(self): g = tf.Graph() with g.as_default(): tf.set_random_seed(0) tf_inputs = tf.constant(self._inputs, dtype=tf.float32) tf_labels = tf.constant(self._labels, dtype=tf.float32) model_fn = LogisticClassifier clone_args = (tf_inputs, tf_labels) deploy_config = model_deploy.DeploymentConfig(num_clones=1) self.assertEqual(slim.get_variables(), []) clones = model_deploy.create_clones(deploy_config, model_fn, clone_args) clone = clones[0] self.assertEqual(len(slim.get_variables()), 2) for v in slim.get_variables(): self.assertDeviceEqual(v.device, 'CPU:0') self.assertDeviceEqual(v.value().device, 'CPU:0') self.assertEqual(clone.outputs.op.name, 'LogisticClassifier/fully_connected/Sigmoid') self.assertEqual(clone.scope, '') self.assertDeviceEqual(clone.device, 'GPU:0') self.assertEqual(len(slim.losses.get_losses()), 1) update_ops = tf.get_collection(tf.GraphKeys.UPDATE_OPS) self.assertEqual(update_ops, [])
Example #3
Source File: model_deploy_test.py From CVTron with Apache License 2.0 | 6 votes |
def testCreateSingleclone(self): g = tf.Graph() with g.as_default(): tf.set_random_seed(0) tf_inputs = tf.constant(self._inputs, dtype=tf.float32) tf_labels = tf.constant(self._labels, dtype=tf.float32) model_fn = BatchNormClassifier clone_args = (tf_inputs, tf_labels) deploy_config = model_deploy.DeploymentConfig(num_clones=1) self.assertEqual(slim.get_variables(), []) clones = model_deploy.create_clones(deploy_config, model_fn, clone_args) clone = clones[0] self.assertEqual(len(slim.get_variables()), 5) for v in slim.get_variables(): self.assertDeviceEqual(v.device, 'CPU:0') self.assertDeviceEqual(v.value().device, 'CPU:0') self.assertEqual(clone.outputs.op.name, 'BatchNormClassifier/fully_connected/Sigmoid') self.assertEqual(clone.scope, '') self.assertDeviceEqual(clone.device, 'GPU:0') self.assertEqual(len(slim.losses.get_losses()), 1) update_ops = tf.get_collection(tf.GraphKeys.UPDATE_OPS) self.assertEqual(len(update_ops), 2)
Example #4
Source File: model_deploy_test.py From ctw-baseline with MIT License | 6 votes |
def testCreateLogisticClassifier(self): g = tf.Graph() with g.as_default(): tf.set_random_seed(0) tf_inputs = tf.constant(self._inputs, dtype=tf.float32) tf_labels = tf.constant(self._labels, dtype=tf.float32) model_fn = LogisticClassifier clone_args = (tf_inputs, tf_labels) deploy_config = model_deploy.DeploymentConfig(num_clones=1) self.assertEqual(slim.get_variables(), []) clones = model_deploy.create_clones(deploy_config, model_fn, clone_args) clone = clones[0] self.assertEqual(len(slim.get_variables()), 2) for v in slim.get_variables(): self.assertDeviceEqual(v.device, 'CPU:0') self.assertDeviceEqual(v.value().device, 'CPU:0') self.assertEqual(clone.outputs.op.name, 'LogisticClassifier/fully_connected/Sigmoid') self.assertEqual(clone.scope, '') self.assertDeviceEqual(clone.device, 'GPU:0') self.assertEqual(len(slim.losses.get_losses()), 1) update_ops = tf.get_collection(tf.GraphKeys.UPDATE_OPS) self.assertEqual(update_ops, [])
Example #5
Source File: model_deploy_test.py From CBAM-tensorflow-slim with MIT License | 6 votes |
def testCreateOnecloneWithPS(self): g = tf.Graph() with g.as_default(): tf.set_random_seed(0) tf_inputs = tf.constant(self._inputs, dtype=tf.float32) tf_labels = tf.constant(self._labels, dtype=tf.float32) model_fn = BatchNormClassifier clone_args = (tf_inputs, tf_labels) deploy_config = model_deploy.DeploymentConfig(num_clones=1, num_ps_tasks=1) self.assertEqual(slim.get_variables(), []) clones = model_deploy.create_clones(deploy_config, model_fn, clone_args) self.assertEqual(len(clones), 1) clone = clones[0] self.assertEqual(clone.outputs.op.name, 'BatchNormClassifier/fully_connected/Sigmoid') self.assertDeviceEqual(clone.device, '/job:worker/device:GPU:0') self.assertEqual(clone.scope, '') self.assertEqual(len(slim.get_variables()), 5) for v in slim.get_variables(): self.assertDeviceEqual(v.device, '/job:ps/task:0/CPU:0') self.assertDeviceEqual(v.device, v.value().device)
Example #6
Source File: model_deploy_test.py From garbage-object-detection-tensorflow with MIT License | 6 votes |
def testCreateSingleclone(self): g = tf.Graph() with g.as_default(): tf.set_random_seed(0) tf_inputs = tf.constant(self._inputs, dtype=tf.float32) tf_labels = tf.constant(self._labels, dtype=tf.float32) model_fn = BatchNormClassifier clone_args = (tf_inputs, tf_labels) deploy_config = model_deploy.DeploymentConfig(num_clones=1) self.assertEqual(slim.get_variables(), []) clones = model_deploy.create_clones(deploy_config, model_fn, clone_args) self.assertEqual(len(slim.get_variables()), 5) update_ops = tf.get_collection(tf.GraphKeys.UPDATE_OPS) self.assertEqual(len(update_ops), 2) optimizer = tf.train.GradientDescentOptimizer(learning_rate=1.0) total_loss, grads_and_vars = model_deploy.optimize_clones(clones, optimizer) self.assertEqual(len(grads_and_vars), len(tf.trainable_variables())) self.assertEqual(total_loss.op.name, 'total_loss') for g, v in grads_and_vars: self.assertDeviceEqual(g.device, 'GPU:0') self.assertDeviceEqual(v.device, 'CPU:0')
Example #7
Source File: model_deploy_test.py From CBAM-tensorflow-slim with MIT License | 6 votes |
def testCreateSingleclone(self): g = tf.Graph() with g.as_default(): tf.set_random_seed(0) tf_inputs = tf.constant(self._inputs, dtype=tf.float32) tf_labels = tf.constant(self._labels, dtype=tf.float32) model_fn = BatchNormClassifier clone_args = (tf_inputs, tf_labels) deploy_config = model_deploy.DeploymentConfig(num_clones=1) self.assertEqual(slim.get_variables(), []) clones = model_deploy.create_clones(deploy_config, model_fn, clone_args) self.assertEqual(len(slim.get_variables()), 5) update_ops = tf.get_collection(tf.GraphKeys.UPDATE_OPS) self.assertEqual(len(update_ops), 2) optimizer = tf.train.GradientDescentOptimizer(learning_rate=1.0) total_loss, grads_and_vars = model_deploy.optimize_clones(clones, optimizer) self.assertEqual(len(grads_and_vars), len(tf.trainable_variables())) self.assertEqual(total_loss.op.name, 'total_loss') for g, v in grads_and_vars: self.assertDeviceEqual(g.device, 'GPU:0') self.assertDeviceEqual(v.device, 'CPU:0')
Example #8
Source File: model_deploy_test.py From DOTA_models with Apache License 2.0 | 6 votes |
def testCreateSingleclone(self): g = tf.Graph() with g.as_default(): tf.set_random_seed(0) tf_inputs = tf.constant(self._inputs, dtype=tf.float32) tf_labels = tf.constant(self._labels, dtype=tf.float32) model_fn = BatchNormClassifier clone_args = (tf_inputs, tf_labels) deploy_config = model_deploy.DeploymentConfig(num_clones=1) self.assertEqual(slim.get_variables(), []) clones = model_deploy.create_clones(deploy_config, model_fn, clone_args) self.assertEqual(len(slim.get_variables()), 5) update_ops = tf.get_collection(tf.GraphKeys.UPDATE_OPS) self.assertEqual(len(update_ops), 2) optimizer = tf.train.GradientDescentOptimizer(learning_rate=1.0) total_loss, grads_and_vars = model_deploy.optimize_clones(clones, optimizer) self.assertEqual(len(grads_and_vars), len(tf.trainable_variables())) self.assertEqual(total_loss.op.name, 'total_loss') for g, v in grads_and_vars: self.assertDeviceEqual(g.device, 'GPU:0') self.assertDeviceEqual(v.device, 'CPU:0')
Example #9
Source File: model_deploy_test.py From DOTA_models with Apache License 2.0 | 6 votes |
def testCreateOnecloneWithPS(self): g = tf.Graph() with g.as_default(): tf.set_random_seed(0) tf_inputs = tf.constant(self._inputs, dtype=tf.float32) tf_labels = tf.constant(self._labels, dtype=tf.float32) model_fn = BatchNormClassifier clone_args = (tf_inputs, tf_labels) deploy_config = model_deploy.DeploymentConfig(num_clones=1, num_ps_tasks=1) self.assertEqual(slim.get_variables(), []) clones = model_deploy.create_clones(deploy_config, model_fn, clone_args) self.assertEqual(len(clones), 1) clone = clones[0] self.assertEqual(clone.outputs.op.name, 'BatchNormClassifier/fully_connected/Sigmoid') self.assertDeviceEqual(clone.device, '/job:worker/device:GPU:0') self.assertEqual(clone.scope, '') self.assertEqual(len(slim.get_variables()), 5) for v in slim.get_variables(): self.assertDeviceEqual(v.device, '/job:ps/task:0/CPU:0') self.assertDeviceEqual(v.device, v.value().device)
Example #10
Source File: model_deploy_test.py From DOTA_models with Apache License 2.0 | 6 votes |
def testCreateLogisticClassifier(self): g = tf.Graph() with g.as_default(): tf.set_random_seed(0) tf_inputs = tf.constant(self._inputs, dtype=tf.float32) tf_labels = tf.constant(self._labels, dtype=tf.float32) model_fn = LogisticClassifier clone_args = (tf_inputs, tf_labels) deploy_config = model_deploy.DeploymentConfig(num_clones=1) self.assertEqual(slim.get_variables(), []) clones = model_deploy.create_clones(deploy_config, model_fn, clone_args) clone = clones[0] self.assertEqual(len(slim.get_variables()), 2) for v in slim.get_variables(): self.assertDeviceEqual(v.device, 'CPU:0') self.assertDeviceEqual(v.value().device, 'CPU:0') self.assertEqual(clone.outputs.op.name, 'LogisticClassifier/fully_connected/Sigmoid') self.assertEqual(clone.scope, '') self.assertDeviceEqual(clone.device, 'GPU:0') self.assertEqual(len(slim.losses.get_losses()), 1) update_ops = tf.get_collection(tf.GraphKeys.UPDATE_OPS) self.assertEqual(update_ops, [])
Example #11
Source File: model_deploy_test.py From DOTA_models with Apache License 2.0 | 6 votes |
def testCreateSingleclone(self): g = tf.Graph() with g.as_default(): tf.set_random_seed(0) tf_inputs = tf.constant(self._inputs, dtype=tf.float32) tf_labels = tf.constant(self._labels, dtype=tf.float32) model_fn = BatchNormClassifier clone_args = (tf_inputs, tf_labels) deploy_config = model_deploy.DeploymentConfig(num_clones=1) self.assertEqual(slim.get_variables(), []) clones = model_deploy.create_clones(deploy_config, model_fn, clone_args) clone = clones[0] self.assertEqual(len(slim.get_variables()), 5) for v in slim.get_variables(): self.assertDeviceEqual(v.device, 'CPU:0') self.assertDeviceEqual(v.value().device, 'CPU:0') self.assertEqual(clone.outputs.op.name, 'BatchNormClassifier/fully_connected/Sigmoid') self.assertEqual(clone.scope, '') self.assertDeviceEqual(clone.device, 'GPU:0') self.assertEqual(len(slim.losses.get_losses()), 1) update_ops = tf.get_collection(tf.GraphKeys.UPDATE_OPS) self.assertEqual(len(update_ops), 2)
Example #12
Source File: model_deploy_test.py From ctw-baseline with MIT License | 6 votes |
def testCreateSingleclone(self): g = tf.Graph() with g.as_default(): tf.set_random_seed(0) tf_inputs = tf.constant(self._inputs, dtype=tf.float32) tf_labels = tf.constant(self._labels, dtype=tf.float32) model_fn = BatchNormClassifier clone_args = (tf_inputs, tf_labels) deploy_config = model_deploy.DeploymentConfig(num_clones=1) self.assertEqual(slim.get_variables(), []) clones = model_deploy.create_clones(deploy_config, model_fn, clone_args) clone = clones[0] self.assertEqual(len(slim.get_variables()), 5) for v in slim.get_variables(): self.assertDeviceEqual(v.device, 'CPU:0') self.assertDeviceEqual(v.value().device, 'CPU:0') self.assertEqual(clone.outputs.op.name, 'BatchNormClassifier/fully_connected/Sigmoid') self.assertEqual(clone.scope, '') self.assertDeviceEqual(clone.device, 'GPU:0') self.assertEqual(len(slim.losses.get_losses()), 1) update_ops = tf.get_collection(tf.GraphKeys.UPDATE_OPS) self.assertEqual(len(update_ops), 2)
Example #13
Source File: model_deploy_test.py From CVTron with Apache License 2.0 | 6 votes |
def testCreateOnecloneWithPS(self): g = tf.Graph() with g.as_default(): tf.set_random_seed(0) tf_inputs = tf.constant(self._inputs, dtype=tf.float32) tf_labels = tf.constant(self._labels, dtype=tf.float32) model_fn = BatchNormClassifier clone_args = (tf_inputs, tf_labels) deploy_config = model_deploy.DeploymentConfig(num_clones=1, num_ps_tasks=1) self.assertEqual(slim.get_variables(), []) clones = model_deploy.create_clones(deploy_config, model_fn, clone_args) self.assertEqual(len(clones), 1) clone = clones[0] self.assertEqual(clone.outputs.op.name, 'BatchNormClassifier/fully_connected/Sigmoid') self.assertDeviceEqual(clone.device, '/job:worker/device:GPU:0') self.assertEqual(clone.scope, '') self.assertEqual(len(slim.get_variables()), 5) for v in slim.get_variables(): self.assertDeviceEqual(v.device, '/job:ps/task:0/CPU:0') self.assertDeviceEqual(v.device, v.value().device)
Example #14
Source File: model_deploy_test.py From Hands-On-Machine-Learning-with-OpenCV-4 with MIT License | 6 votes |
def testCreateSingleclone(self): g = tf.Graph() with g.as_default(): tf.set_random_seed(0) tf_inputs = tf.constant(self._inputs, dtype=tf.float32) tf_labels = tf.constant(self._labels, dtype=tf.float32) model_fn = BatchNormClassifier clone_args = (tf_inputs, tf_labels) deploy_config = model_deploy.DeploymentConfig(num_clones=1) self.assertEqual(slim.get_variables(), []) clones = model_deploy.create_clones(deploy_config, model_fn, clone_args) self.assertEqual(len(slim.get_variables()), 5) update_ops = tf.get_collection(tf.GraphKeys.UPDATE_OPS) self.assertEqual(len(update_ops), 2) optimizer = tf.train.GradientDescentOptimizer(learning_rate=1.0) total_loss, grads_and_vars = model_deploy.optimize_clones(clones, optimizer) self.assertEqual(len(grads_and_vars), len(tf.trainable_variables())) self.assertEqual(total_loss.op.name, 'total_loss') for g, v in grads_and_vars: self.assertDeviceEqual(g.device, 'GPU:0') self.assertDeviceEqual(v.device, 'CPU:0')
Example #15
Source File: model_deploy_test.py From CVTron with Apache License 2.0 | 6 votes |
def testCreateSingleclone(self): g = tf.Graph() with g.as_default(): tf.set_random_seed(0) tf_inputs = tf.constant(self._inputs, dtype=tf.float32) tf_labels = tf.constant(self._labels, dtype=tf.float32) model_fn = BatchNormClassifier clone_args = (tf_inputs, tf_labels) deploy_config = model_deploy.DeploymentConfig(num_clones=1) self.assertEqual(slim.get_variables(), []) clones = model_deploy.create_clones(deploy_config, model_fn, clone_args) self.assertEqual(len(slim.get_variables()), 5) update_ops = tf.get_collection(tf.GraphKeys.UPDATE_OPS) self.assertEqual(len(update_ops), 2) optimizer = tf.train.GradientDescentOptimizer(learning_rate=1.0) total_loss, grads_and_vars = model_deploy.optimize_clones(clones, optimizer) self.assertEqual(len(grads_and_vars), len(tf.trainable_variables())) self.assertEqual(total_loss.op.name, 'total_loss') for g, v in grads_and_vars: self.assertDeviceEqual(g.device, 'GPU:0') self.assertDeviceEqual(v.device, 'CPU:0')
Example #16
Source File: model_deploy_test.py From garbage-object-detection-tensorflow with MIT License | 6 votes |
def testCreateSingleclone(self): g = tf.Graph() with g.as_default(): tf.set_random_seed(0) tf_inputs = tf.constant(self._inputs, dtype=tf.float32) tf_labels = tf.constant(self._labels, dtype=tf.float32) model_fn = BatchNormClassifier clone_args = (tf_inputs, tf_labels) deploy_config = model_deploy.DeploymentConfig(num_clones=1) self.assertEqual(slim.get_variables(), []) clones = model_deploy.create_clones(deploy_config, model_fn, clone_args) clone = clones[0] self.assertEqual(len(slim.get_variables()), 5) for v in slim.get_variables(): self.assertDeviceEqual(v.device, 'CPU:0') self.assertDeviceEqual(v.value().device, 'CPU:0') self.assertEqual(clone.outputs.op.name, 'BatchNormClassifier/fully_connected/Sigmoid') self.assertEqual(clone.scope, '') self.assertDeviceEqual(clone.device, 'GPU:0') self.assertEqual(len(slim.losses.get_losses()), 1) update_ops = tf.get_collection(tf.GraphKeys.UPDATE_OPS) self.assertEqual(len(update_ops), 2)
Example #17
Source File: model_deploy_test.py From Hands-On-Machine-Learning-with-OpenCV-4 with MIT License | 6 votes |
def testCreateOnecloneWithPS(self): g = tf.Graph() with g.as_default(): tf.set_random_seed(0) tf_inputs = tf.constant(self._inputs, dtype=tf.float32) tf_labels = tf.constant(self._labels, dtype=tf.float32) model_fn = BatchNormClassifier clone_args = (tf_inputs, tf_labels) deploy_config = model_deploy.DeploymentConfig(num_clones=1, num_ps_tasks=1) self.assertEqual(slim.get_variables(), []) clones = model_deploy.create_clones(deploy_config, model_fn, clone_args) self.assertEqual(len(clones), 1) clone = clones[0] self.assertEqual(clone.outputs.op.name, 'BatchNormClassifier/fully_connected/Sigmoid') self.assertDeviceEqual(clone.device, '/job:worker/device:GPU:0') self.assertEqual(clone.scope, '') self.assertEqual(len(slim.get_variables()), 5) for v in slim.get_variables(): self.assertDeviceEqual(v.device, '/job:ps/task:0/CPU:0') self.assertDeviceEqual(v.device, v.value().device)
Example #18
Source File: model_deploy_test.py From yolo_v2 with Apache License 2.0 | 6 votes |
def testCreateSingleclone(self): g = tf.Graph() with g.as_default(): tf.set_random_seed(0) tf_inputs = tf.constant(self._inputs, dtype=tf.float32) tf_labels = tf.constant(self._labels, dtype=tf.float32) model_fn = BatchNormClassifier clone_args = (tf_inputs, tf_labels) deploy_config = model_deploy.DeploymentConfig(num_clones=1) self.assertEqual(slim.get_variables(), []) clones = model_deploy.create_clones(deploy_config, model_fn, clone_args) clone = clones[0] self.assertEqual(len(slim.get_variables()), 5) for v in slim.get_variables(): self.assertDeviceEqual(v.device, 'CPU:0') self.assertDeviceEqual(v.value().device, 'CPU:0') self.assertEqual(clone.outputs.op.name, 'BatchNormClassifier/fully_connected/Sigmoid') self.assertEqual(clone.scope, '') self.assertDeviceEqual(clone.device, 'GPU:0') self.assertEqual(len(slim.losses.get_losses()), 1) update_ops = tf.get_collection(tf.GraphKeys.UPDATE_OPS) self.assertEqual(len(update_ops), 2)
Example #19
Source File: model_deploy_test.py From morph-net with Apache License 2.0 | 6 votes |
def testCreateLogisticClassifier(self): g = tf.Graph() with g.as_default(): tf.set_random_seed(0) tf_inputs = tf.constant(self._inputs, dtype=tf.float32) tf_labels = tf.constant(self._labels, dtype=tf.float32) model_fn = LogisticClassifier clone_args = (tf_inputs, tf_labels) deploy_config = model_deploy.DeploymentConfig(num_clones=1) self.assertEqual(slim.get_variables(), []) clones = model_deploy.create_clones(deploy_config, model_fn, clone_args) clone = clones[0] self.assertEqual(len(slim.get_variables()), 2) for v in slim.get_variables(): self.assertDeviceEqual(v.device, 'CPU:0') self.assertDeviceEqual(v.value().device, 'CPU:0') self.assertEqual(clone.outputs.op.name, 'LogisticClassifier/fully_connected/Sigmoid') self.assertEqual(clone.scope, '') self.assertDeviceEqual(clone.device, 'GPU:0') self.assertEqual(len(slim.losses.get_losses()), 1) update_ops = tf.get_collection(tf.GraphKeys.UPDATE_OPS) self.assertEqual(update_ops, [])
Example #20
Source File: model_deploy_test.py From morph-net with Apache License 2.0 | 6 votes |
def testCreateSingleclone(self): g = tf.Graph() with g.as_default(): tf.set_random_seed(0) tf_inputs = tf.constant(self._inputs, dtype=tf.float32) tf_labels = tf.constant(self._labels, dtype=tf.float32) model_fn = BatchNormClassifier clone_args = (tf_inputs, tf_labels) deploy_config = model_deploy.DeploymentConfig(num_clones=1) self.assertEqual(slim.get_variables(), []) clones = model_deploy.create_clones(deploy_config, model_fn, clone_args) clone = clones[0] self.assertEqual(len(slim.get_variables()), 5) for v in slim.get_variables(): self.assertDeviceEqual(v.device, 'CPU:0') self.assertDeviceEqual(v.value().device, 'CPU:0') self.assertEqual(clone.outputs.op.name, 'BatchNormClassifier/fully_connected/Sigmoid') self.assertEqual(clone.scope, '') self.assertDeviceEqual(clone.device, 'GPU:0') self.assertEqual(len(slim.losses.get_losses()), 1) update_ops = tf.get_collection(tf.GraphKeys.UPDATE_OPS) self.assertEqual(len(update_ops), 2)
Example #21
Source File: model_deploy_test.py From Hands-On-Machine-Learning-with-OpenCV-4 with MIT License | 6 votes |
def testCreateSingleclone(self): g = tf.Graph() with g.as_default(): tf.set_random_seed(0) tf_inputs = tf.constant(self._inputs, dtype=tf.float32) tf_labels = tf.constant(self._labels, dtype=tf.float32) model_fn = BatchNormClassifier clone_args = (tf_inputs, tf_labels) deploy_config = model_deploy.DeploymentConfig(num_clones=1) self.assertEqual(slim.get_variables(), []) clones = model_deploy.create_clones(deploy_config, model_fn, clone_args) clone = clones[0] self.assertEqual(len(slim.get_variables()), 5) for v in slim.get_variables(): self.assertDeviceEqual(v.device, 'CPU:0') self.assertDeviceEqual(v.value().device, 'CPU:0') self.assertEqual(clone.outputs.op.name, 'BatchNormClassifier/fully_connected/Sigmoid') self.assertEqual(clone.scope, '') self.assertDeviceEqual(clone.device, 'GPU:0') self.assertEqual(len(slim.losses.get_losses()), 1) update_ops = tf.get_collection(tf.GraphKeys.UPDATE_OPS) self.assertEqual(len(update_ops), 2)
Example #22
Source File: model_deploy_test.py From morph-net with Apache License 2.0 | 6 votes |
def testCreateOnecloneWithPS(self): g = tf.Graph() with g.as_default(): tf.set_random_seed(0) tf_inputs = tf.constant(self._inputs, dtype=tf.float32) tf_labels = tf.constant(self._labels, dtype=tf.float32) model_fn = BatchNormClassifier clone_args = (tf_inputs, tf_labels) deploy_config = model_deploy.DeploymentConfig(num_clones=1, num_ps_tasks=1) self.assertEqual(slim.get_variables(), []) clones = model_deploy.create_clones(deploy_config, model_fn, clone_args) self.assertEqual(len(clones), 1) clone = clones[0] self.assertEqual(clone.outputs.op.name, 'BatchNormClassifier/fully_connected/Sigmoid') self.assertDeviceEqual(clone.device, '/job:worker/device:GPU:0') self.assertEqual(clone.scope, '') self.assertEqual(len(slim.get_variables()), 5) for v in slim.get_variables(): self.assertDeviceEqual(v.device, '/job:ps/task:0/CPU:0') self.assertDeviceEqual(v.device, v.value().device)
Example #23
Source File: model_deploy_test.py From Hands-On-Machine-Learning-with-OpenCV-4 with MIT License | 6 votes |
def testCreateLogisticClassifier(self): g = tf.Graph() with g.as_default(): tf.set_random_seed(0) tf_inputs = tf.constant(self._inputs, dtype=tf.float32) tf_labels = tf.constant(self._labels, dtype=tf.float32) model_fn = LogisticClassifier clone_args = (tf_inputs, tf_labels) deploy_config = model_deploy.DeploymentConfig(num_clones=1) self.assertEqual(slim.get_variables(), []) clones = model_deploy.create_clones(deploy_config, model_fn, clone_args) clone = clones[0] self.assertEqual(len(slim.get_variables()), 2) for v in slim.get_variables(): self.assertDeviceEqual(v.device, 'CPU:0') self.assertDeviceEqual(v.value().device, 'CPU:0') self.assertEqual(clone.outputs.op.name, 'LogisticClassifier/fully_connected/Sigmoid') self.assertEqual(clone.scope, '') self.assertDeviceEqual(clone.device, 'GPU:0') self.assertEqual(len(slim.losses.get_losses()), 1) update_ops = tf.get_collection(tf.GraphKeys.UPDATE_OPS) self.assertEqual(update_ops, [])
Example #24
Source File: model_deploy_test.py From morph-net with Apache License 2.0 | 6 votes |
def testCreateSingleclone(self): g = tf.Graph() with g.as_default(): tf.set_random_seed(0) tf_inputs = tf.constant(self._inputs, dtype=tf.float32) tf_labels = tf.constant(self._labels, dtype=tf.float32) model_fn = BatchNormClassifier clone_args = (tf_inputs, tf_labels) deploy_config = model_deploy.DeploymentConfig(num_clones=1) self.assertEqual(slim.get_variables(), []) clones = model_deploy.create_clones(deploy_config, model_fn, clone_args) self.assertEqual(len(slim.get_variables()), 5) update_ops = tf.get_collection(tf.GraphKeys.UPDATE_OPS) self.assertEqual(len(update_ops), 2) optimizer = tf.train.GradientDescentOptimizer(learning_rate=1.0) total_loss, grads_and_vars = model_deploy.optimize_clones(clones, optimizer) self.assertEqual(len(grads_and_vars), len(tf.trainable_variables())) self.assertEqual(total_loss.op.name, 'total_loss') for g, v in grads_and_vars: self.assertDeviceEqual(g.device, 'GPU:0') self.assertDeviceEqual(v.device, 'CPU:0')
Example #25
Source File: model_deploy_test.py From yolo_v2 with Apache License 2.0 | 6 votes |
def testCreateOnecloneWithPS(self): g = tf.Graph() with g.as_default(): tf.set_random_seed(0) tf_inputs = tf.constant(self._inputs, dtype=tf.float32) tf_labels = tf.constant(self._labels, dtype=tf.float32) model_fn = BatchNormClassifier clone_args = (tf_inputs, tf_labels) deploy_config = model_deploy.DeploymentConfig(num_clones=1, num_ps_tasks=1) self.assertEqual(slim.get_variables(), []) clones = model_deploy.create_clones(deploy_config, model_fn, clone_args) self.assertEqual(len(clones), 1) clone = clones[0] self.assertEqual(clone.outputs.op.name, 'BatchNormClassifier/fully_connected/Sigmoid') self.assertDeviceEqual(clone.device, '/job:worker/device:GPU:0') self.assertEqual(clone.scope, '') self.assertEqual(len(slim.get_variables()), 5) for v in slim.get_variables(): self.assertDeviceEqual(v.device, '/job:ps/task:0/CPU:0') self.assertDeviceEqual(v.device, v.value().device)
Example #26
Source File: model_deploy_test.py From edafa with MIT License | 6 votes |
def testCreateSingleclone(self): g = tf.Graph() with g.as_default(): tf.set_random_seed(0) tf_inputs = tf.constant(self._inputs, dtype=tf.float32) tf_labels = tf.constant(self._labels, dtype=tf.float32) model_fn = BatchNormClassifier clone_args = (tf_inputs, tf_labels) deploy_config = model_deploy.DeploymentConfig(num_clones=1) self.assertEqual(slim.get_variables(), []) clones = model_deploy.create_clones(deploy_config, model_fn, clone_args) self.assertEqual(len(slim.get_variables()), 5) update_ops = tf.get_collection(tf.GraphKeys.UPDATE_OPS) self.assertEqual(len(update_ops), 2) optimizer = tf.train.GradientDescentOptimizer(learning_rate=1.0) total_loss, grads_and_vars = model_deploy.optimize_clones(clones, optimizer) self.assertEqual(len(grads_and_vars), len(tf.trainable_variables())) self.assertEqual(total_loss.op.name, 'total_loss') for g, v in grads_and_vars: self.assertDeviceEqual(g.device, 'GPU:0') self.assertDeviceEqual(v.device, 'CPU:0')
Example #27
Source File: model_deploy_test.py From edafa with MIT License | 6 votes |
def testCreateLogisticClassifier(self): g = tf.Graph() with g.as_default(): tf.set_random_seed(0) tf_inputs = tf.constant(self._inputs, dtype=tf.float32) tf_labels = tf.constant(self._labels, dtype=tf.float32) model_fn = LogisticClassifier clone_args = (tf_inputs, tf_labels) deploy_config = model_deploy.DeploymentConfig(num_clones=1) self.assertEqual(slim.get_variables(), []) clones = model_deploy.create_clones(deploy_config, model_fn, clone_args) clone = clones[0] self.assertEqual(len(slim.get_variables()), 2) for v in slim.get_variables(): self.assertDeviceEqual(v.device, 'CPU:0') self.assertDeviceEqual(v.value().device, 'CPU:0') self.assertEqual(clone.outputs.op.name, 'LogisticClassifier/fully_connected/Sigmoid') self.assertEqual(clone.scope, '') self.assertDeviceEqual(clone.device, 'GPU:0') self.assertEqual(len(slim.losses.get_losses()), 1) update_ops = tf.get_collection(tf.GraphKeys.UPDATE_OPS) self.assertEqual(update_ops, [])
Example #28
Source File: model_deploy_test.py From edafa with MIT License | 6 votes |
def testCreateSingleclone(self): g = tf.Graph() with g.as_default(): tf.set_random_seed(0) tf_inputs = tf.constant(self._inputs, dtype=tf.float32) tf_labels = tf.constant(self._labels, dtype=tf.float32) model_fn = BatchNormClassifier clone_args = (tf_inputs, tf_labels) deploy_config = model_deploy.DeploymentConfig(num_clones=1) self.assertEqual(slim.get_variables(), []) clones = model_deploy.create_clones(deploy_config, model_fn, clone_args) clone = clones[0] self.assertEqual(len(slim.get_variables()), 5) for v in slim.get_variables(): self.assertDeviceEqual(v.device, 'CPU:0') self.assertDeviceEqual(v.value().device, 'CPU:0') self.assertEqual(clone.outputs.op.name, 'BatchNormClassifier/fully_connected/Sigmoid') self.assertEqual(clone.scope, '') self.assertDeviceEqual(clone.device, 'GPU:0') self.assertEqual(len(slim.losses.get_losses()), 1) update_ops = tf.get_collection(tf.GraphKeys.UPDATE_OPS) self.assertEqual(len(update_ops), 2)
Example #29
Source File: model_deploy_test.py From yolo_v2 with Apache License 2.0 | 6 votes |
def testCreateSingleclone(self): g = tf.Graph() with g.as_default(): tf.set_random_seed(0) tf_inputs = tf.constant(self._inputs, dtype=tf.float32) tf_labels = tf.constant(self._labels, dtype=tf.float32) model_fn = BatchNormClassifier clone_args = (tf_inputs, tf_labels) deploy_config = model_deploy.DeploymentConfig(num_clones=1) self.assertEqual(slim.get_variables(), []) clones = model_deploy.create_clones(deploy_config, model_fn, clone_args) self.assertEqual(len(slim.get_variables()), 5) update_ops = tf.get_collection(tf.GraphKeys.UPDATE_OPS) self.assertEqual(len(update_ops), 2) optimizer = tf.train.GradientDescentOptimizer(learning_rate=1.0) total_loss, grads_and_vars = model_deploy.optimize_clones(clones, optimizer) self.assertEqual(len(grads_and_vars), len(tf.trainable_variables())) self.assertEqual(total_loss.op.name, 'total_loss') for g, v in grads_and_vars: self.assertDeviceEqual(g.device, 'GPU:0') self.assertDeviceEqual(v.device, 'CPU:0')
Example #30
Source File: model_deploy_test.py From edafa with MIT License | 6 votes |
def testCreateOnecloneWithPS(self): g = tf.Graph() with g.as_default(): tf.set_random_seed(0) tf_inputs = tf.constant(self._inputs, dtype=tf.float32) tf_labels = tf.constant(self._labels, dtype=tf.float32) model_fn = BatchNormClassifier clone_args = (tf_inputs, tf_labels) deploy_config = model_deploy.DeploymentConfig(num_clones=1, num_ps_tasks=1) self.assertEqual(slim.get_variables(), []) clones = model_deploy.create_clones(deploy_config, model_fn, clone_args) self.assertEqual(len(clones), 1) clone = clones[0] self.assertEqual(clone.outputs.op.name, 'BatchNormClassifier/fully_connected/Sigmoid') self.assertDeviceEqual(clone.device, '/job:worker/device:GPU:0') self.assertEqual(clone.scope, '') self.assertEqual(len(slim.get_variables()), 5) for v in slim.get_variables(): self.assertDeviceEqual(v.device, '/job:ps/task:0/CPU:0') self.assertDeviceEqual(v.device, v.value().device)