Die Migration der Bereiche "Docker Registry" und "Artifiacts" ist fast abgeschlossen. Die letzten Daten werden im Laufe des heutigen Abend (05.08.2021) noch vollständig hochgeladen. Das Anlegen neuer Images und Artifacts funktioniert bereits wieder.

Commit b4056077 authored by Carlos Alfredo Yeverino Rodriguez's avatar Carlos Alfredo Yeverino Rodriguez
Browse files

corrected target code for tests

parent 0a33983e
Pipeline #105554 passed with stages
in 3 minutes and 33 seconds
......@@ -141,7 +141,7 @@ class CNNCreator_LeNet:
train_model= model_helper.ModelHelper(name="train_net", arg_scope=arg_scope)
data, label, train_dataset_size = self.add_input(train_model, batch_size=batch_size, db=os.path.join(self._data_dir_, 'train_lmdb'), db_type='lmdb', device_opts=device_opts)
predictions = self.create_model(train_model, data, device_opts=device_opts, is_test=False)
self.add_training_operators(train_model, predictions, label, device_opts, opt_type, base_learning_rate, policy, stepsize, epsilon, beta1, beta2, gamma, momentum)
self.add_training_operators(train_model, predictions, label, device_opts, loss, opt_type, base_learning_rate, policy, stepsize, epsilon, beta1, beta2, gamma, momentum)
self.add_accuracy(train_model, predictions, label, device_opts, eval_metric)
with core.DeviceScope(device_opts):
brew.add_weight_decay(train_model, weight_decay)
......
......@@ -187,7 +187,7 @@ class CNNCreator_VGG16:
train_model= model_helper.ModelHelper(name="train_net", arg_scope=arg_scope)
data, label, train_dataset_size = self.add_input(train_model, batch_size=batch_size, db=os.path.join(self._data_dir_, 'train_lmdb'), db_type='lmdb', device_opts=device_opts)
predictions = self.create_model(train_model, data, device_opts=device_opts, is_test=False)
self.add_training_operators(train_model, predictions, label, device_opts, opt_type, base_learning_rate, policy, stepsize, epsilon, beta1, beta2, gamma, momentum)
self.add_training_operators(train_model, predictions, label, device_opts, loss, opt_type, base_learning_rate, policy, stepsize, epsilon, beta1, beta2, gamma, momentum)
self.add_accuracy(train_model, predictions, label, device_opts, eval_metric)
with core.DeviceScope(device_opts):
brew.add_weight_decay(train_model, weight_decay)
......
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