I am doing an example for boosting(4 layers DNN to 5 layers DNN) via Tensorflow. I am making it with save session and restore in TF because there is a brief paragraph in TF tute: 'For example, you may have trained a neural net with 4 layers, and you now want to train a new model with 5 layers, restoring the parameters from the 4 layers of the previously trained model into the first 4 layers of the new model.', where tensorflow tute inspires in https://www.tensorflow.org/how_tos/variables/.

However, I found that nobody has asked how to use 'restore' when the checkpoint saves parameters of 4 layers but we need to put that into 5 layers, raising a red flag.

Making this in real code, I made

```
with tf.name_scope('fcl1'):
hidden_1 = fully_connected_layer(inputs, train_data.inputs.shape[1], num_hidden)
with tf.name_scope('fcl2'):
hidden_2 = fully_connected_layer(hidden_1, num_hidden, num_hidden)
with tf.name_scope('fclf'):
hidden_final = fully_connected_layer(hidden_2, num_hidden, num_hidden)
with tf.name_scope('outputl'):
outputs = fully_connected_layer(hidden_final, num_hidden, train_data.num_classes, tf.identity)
outputs = tf.nn.softmax(outputs)
with tf.name_scope('boosting'):
boosts = fully_connected_layer(outputs, train_data.num_classes, train_data.num_classes, tf.identity)
```

where variables inside(or called from) 'fcl1' - so that I have 'fcl1/Variable' and 'fcl1/Variable_1' for weight and bias - 'fcl2', 'fclf', and 'outputl' are stored by saver.save() in the script without 'boosting' layer. However, as we now have 'boosting' layer, saver.restore(sess, "saved_models/model_list.ckpt") does not work as

```
NotFoundError: Key boosting/Variable_1 not found in checkpoint
```

I really hope to hear about this problem. Thank you. Below code is the main part of the code I am in trouble.

```
def fully_connected_layer(inputs, input_dim, output_dim, nonlinearity=tf.nn.relu):
weights = tf.Variable(
tf.truncated_normal(
[input_dim, output_dim], stddev=2. / (input_dim + output_dim)**0.5),
'weights')
biases = tf.Variable(tf.zeros([output_dim]), 'biases')
outputs = nonlinearity(tf.matmul(inputs, weights) + biases)
return outputs
inputs = tf.placeholder(tf.float32, [None, train_data.inputs.shape[1]], 'inputs')
targets = tf.placeholder(tf.float32, [None, train_data.num_classes], 'targets')
with tf.name_scope('fcl1'):
hidden_1 = fully_connected_layer(inputs, train_data.inputs.shape[1], num_hidden)
with tf.name_scope('fcl2'):
hidden_2 = fully_connected_layer(hidden_1, num_hidden, num_hidden)
with tf.name_scope('fclf'):
hidden_final = fully_connected_layer(hidden_2, num_hidden, num_hidden)
with tf.name_scope('outputl'):
outputs = fully_connected_layer(hidden_final, num_hidden, train_data.num_classes, tf.identity)
with tf.name_scope('error'):
error = tf.reduce_mean(tf.nn.softmax_cross_entropy_with_logits(outputs, targets))
with tf.name_scope('accuracy'):
accuracy = tf.reduce_mean(tf.cast(
tf.equal(tf.argmax(outputs, 1), tf.argmax(targets, 1)),
tf.float32))
with tf.name_scope('train'):
train_step = tf.train.AdamOptimizer().minimize(error)
init = tf.global_variables_initializer()
saver = tf.train.Saver()
with tf.Session() as sess:
sess.run(init)
saver.restore(sess, "saved_models/model.ckpt")
print("Model restored")
print("Optimization Starts!")
for e in range(training_epochs):
...
#Save model - save session
save_path = saver.save(sess, "saved_models/model.ckpt")
### I once saved the variables using var_list, but didn't work as well...
print("Model saved in file: %s" % save_path)
```

For clarity, the checkpoint file has

```
fcl1/Variable:0
fcl1/Variable_1:0
fcl2/Variable:0
fcl2/Variable_1:0
fclf/Variable:0
fclf/Variable_1:0
outputl/Variable:0
outputl/Variable_1:0
```

As the original 4 layers model does not have 'boosting' layer.

`var_list`

parameter of the`tf.Saver`

constructor. You will thereafter be in charge of initializing layer 5 properly. – drpng Feb 14 '17 at 7:32