I am developing a neural network model using Tensorflow. In the LOSO cross validation, I need to train a model for 10 folds, since I have data from 10 different subjects.

Taking this into account, I need to reset the optimizer and the network weights at the start of every cross-validation fold. I defined the weights as follows:

```
weights = {
'w1' : tf.Variable(tf.random_uniform(shape = [100, 10],seed = 0)),
'w2' : tf.Variable(tf.random_uniform(shape = [10, 100],seed = 0))}
```

and I reset the Optimizer and the weights by reinitializing all global variables as follows:

```
# Start session to run Tensors and Operations
with tf.Session() as sess:
# Optimizer
optimizer = tf.train.GradientDescentOptimizer(lr).minimize(loss)
# Variables initializer
init = tf.global_variables_initializer()
# Loop over the 10 cross-validation subjects
for subject in range(0,10):
# Initialize global variables and optimizer
sess.run(init)
# Print initialized weights (should be always the same)
print(sess.run(weights['w1']))
# Loop over epochs to train the model
for epoch in range(epochs):
# Run network optimizer for the current epoch
_,cost = sess.run([optimizer,loss], feed_dict ={X:x_train[subject,:], Y:y_train[subject,:]})
```

However, in every iteration of the loop I get printed different values for the weights, like the Operation seed I set to 0 is not doing its job. Does anyone know what I am missing?