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eslopfer
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README.md | 2 years ago |
README.md
Exercise 0: Environment and libraries
The exercise is validated if all questions of the exercise are validated
Activate the virtual environment. If you used conda
run conda activate your_env
Run python --version
Does it print Python 3.x
? x >= 8
Does import jupyter
, import numpy
, import pandas
, and import keras
run without any error?
Exercise 1: Sequential
For question 1, does the output end with keras.engine.sequential.Sequential object at xxx
?
Exercise 2: Dense
The exercise is validated if all questions of the exercise are validated
For question 1, do the fields batch_input_shape
, units
and activation
match this output?
{'name': 'dense_7',
'trainable': True,
'batch_input_shape': (None, 5),
'dtype': 'float32',
'units': 8,
'activation': 'sigmoid',
'use_bias': True,
'kernel_initializer': {'class_name': 'GlorotUniform',
'config': {'seed': None}},
'bias_initializer': {'class_name': 'Zeros', 'config': {}},
'kernel_regularizer': None,
'bias_regularizer': None,
'activity_regularizer': None,
'kernel_constraint': None,
'bias_constraint': None}
For question 2, do the fields units
and activation
match this output?
{'name': 'dense_8',
'trainable': True,
'dtype': 'float32',
'units': 4,
'activation': 'sigmoid',
'use_bias': True,
'kernel_initializer': {'class_name': 'GlorotUniform',
'config': {'seed': None}},
'bias_initializer': {'class_name': 'Zeros', 'config': {}},
'kernel_regularizer': None,
'bias_regularizer': None,
'activity_regularizer': None,
'kernel_constraint': None,
'bias_constraint': None}
For question 3, do the fields units
and activation
match this output?
{'name': 'dense_9',
'trainable': True,
'dtype': 'float32',
'units': 1,
'activation': 'sigmoid',
'use_bias': True,
'kernel_initializer': {'class_name': 'GlorotUniform',
'config': {'seed': None}},
'bias_initializer': {'class_name': 'Zeros', 'config': {}},
'kernel_regularizer': None,
'bias_regularizer': None,
'activity_regularizer': None,
'kernel_constraint': None,
'bias_constraint': None}
Exercise 3: Architecture
For question 1, is code that creates the neural network the following?
model = keras.Sequential()
model.add(Dense(8, input_shape=(5,), activation= 'sigmoid'))
model.add(Dense(4, activation= 'sigmoid'))
model.add(Dense(1, activation= 'linear'))
The first two layers could use another activation function that sigmoid (eg: relu)
Exercise 4: Optimize
For question 1, does the output of model.get_config()['layers']
match the fields batch_input_shape
, units
and activation
?
[{'class_name': 'InputLayer',
'config': {'batch_input_shape': (None, 30),
'dtype': 'float32',
'sparse': False,
'ragged': False,
'name': 'dense_134_input'}},
{'class_name': 'Dense',
'config': {'name': 'dense_134',
'trainable': True,
'batch_input_shape': (None, 30),
'dtype': 'float32',
'units': 10,
'activation': 'sigmoid',
'use_bias': True,
'kernel_initializer': {'class_name': 'GlorotUniform',
'config': {'seed': None}},
'bias_initializer': {'class_name': 'Zeros', 'config': {}},
'kernel_regularizer': None,
'bias_regularizer': None,
'activity_regularizer': None,
'kernel_constraint': None,
'bias_constraint': None}},
{'class_name': 'Dense',
'config': {'name': 'dense_135',
'trainable': True,
'dtype': 'float32',
'units': 5,
'activation': 'sigmoid',
'use_bias': True,
'kernel_initializer': {'class_name': 'GlorotUniform',
'config': {'seed': None}},
'bias_initializer': {'class_name': 'Zeros', 'config': {}},
'kernel_regularizer': None,
'bias_regularizer': None,
'activity_regularizer': None,
'kernel_constraint': None,
'bias_constraint': None}},
{'class_name': 'Dense',
'config': {'name': 'dense_136',
'trainable': True,
'dtype': 'float32',
'units': 1,
'activation': 'sigmoid',
'use_bias': True,
'kernel_initializer': {'class_name': 'GlorotUniform',
'config': {'seed': None}},
'bias_initializer': {'class_name': 'Zeros', 'config': {}},
'kernel_regularizer': None,
'bias_regularizer': None,
'activity_regularizer': None,
'kernel_constraint': None,
'bias_constraint': None}}]
You should notice that the neural network is struggling to learn. By luck the initialization of the weights might have led to an accuracy close of 90%. But when I trained the neural network, with batch_size=300
on the data here is the output of the last epoch (50):
Epoch 50/50 2/2 [==============================] - 0s 1ms/step - loss: 0.6559 - accuracy: 0.6274