吴恩达Coursera, 机器学习专项课程, Machine Learning:Advanced Learning Algorithms第二周所有jupyter notebook文件:
本次作业
Exercise 1
# UNQ_C1
# GRADED CELL: my_softmax
def my_softmax(z):
""" Softmax converts a vector of values to a probability distribution.
Args:
z (ndarray (N,)) : input data, N features
Returns:
a (ndarray (N,)) : softmax of z
"""
### START CODE HERE ###
ez = np.exp(z) #element-wise exponenial
a = ez/np.sum(ez)
### END CODE HERE ###
return a
Exercise 2
# UNQ_C2
# GRADED CELL: Sequential model
tf.random.set_seed(1234) # for consistent results
model = Sequential(
[
### START CODE HERE ###
tf.keras.Input(shape=(400,)), #specify input shape
Dense(25, activation = 'relu', name = "L1"),
Dense(15, activation = 'relu', name = "L2"),
Dense(10, activation = 'linear', name = "L3")
### END CODE HERE ###
], name = "my_model"
)