I two python files File1, File2. One used to generate a tensorflow model and other other to consume the model. A problem similar to the one in SO.

File1 is something like below

   def test():
      weights = {'out': tf.Variable(tf.random_normal([n_hidden, vocab_size]), name="weights")}
      biases = {'out': tf.Variable(tf.random_normal([vocab_size]), name="biases")}

      tf.matmul(outputs[-1], weights['out']) + biases['out']

       # Initializing the variables
      init = tf.global_variables_initializer()

      saver = tf.train.Saver()

      # Launch the graph
      with tf.Session() as session:
          while step < training_iters:
            _, acc, loss, onehot_pred = session.run([optimizer, accuracy, cost, pred], \
                                                      feed_dict={x: symbols_in_keys, y: symbols_out_onehot})
          saver.save(session, "resources/model")

File 2: Which restores the model is as shown below

   modelLocation ='resources/model.meta'
    with tf.Session().as_default() as restored_session:        
        saver = tf.train.import_meta_graph(modelLocation, clear_devices=True)
        saver.restore(restored_session, modelLocation[0:len(modelLocation)-5])

        weights_restored_n = tf.get_variable("weights:0")
        biases_restored_n = tf.get_variable("biases:0")
        # weights_restored = tf.get_default_graph().get_tensor_by_name("weights:0")
        # biases_restored = tf.get_default_graph().get_tensor_by_name("biases:0")
        pred = RNN(x, weights_restored_n, biases_restored_n)

The error I get when I run File2 with

ValueError: Shape of a new variable (weights:0) must be fully defined, but instead was <unknown>.

if I run the file with pred = RNN(x, weights_restored_n, biases_restored_n) commenting the other two I get the following error

ValueError: Variable rnn/basic_lstm_cell/weights does not exist, or was not created with tf.get_variable(). Did you mean to set reuse=None in VarScope?

When I check for the available variables, I see both weights and biases variable win the restored graph.

<tf.Variable 'weights:0' shape=(512, 112) dtype=float32_ref>
<tf.Variable 'biases:0' shape=(112,) dtype=float32_ref>
<tf.Variable 'rnn/basic_lstm_cell/weights:0' shape=(513, 2048) dtype=float32_ref>
<tf.Variable 'rnn/basic_lstm_cell/biases:0' shape=(2048,) dtype=float32_ref>
<tf.Variable 'weights/RMSProp:0' shape=(512, 112) dtype=float32_ref>
<tf.Variable 'weights/RMSProp_1:0' shape=(512, 112) dtype=float32_ref>
<tf.Variable 'biases/RMSProp:0' shape=(112,) dtype=float32_ref>
<tf.Variable 'biases/RMSProp_1:0' shape=(112,) dtype=float32_ref>
<tf.Variable 'rnn/basic_lstm_cell/weights/RMSProp:0' shape=(513, 2048) dtype=float32_ref>
<tf.Variable 'rnn/basic_lstm_cell/weights/RMSProp_1:0' shape=(513, 2048) dtype=float32_ref>
<tf.Variable 'rnn/basic_lstm_cell/biases/RMSProp:0' shape=(2048,) dtype=float32_ref>
<tf.Variable 'rnn/basic_lstm_cell/biases/RMSProp_1:0' shape=(2048,) dtype=float32_ref>

The places where these variables are used are also set to

rnn_cell = rnn.BasicLSTMCell(n_hidden, reuse=True)

EDIT: 2nd Iteration

with tf.Session() as restored_session:
    modelLocation = resources/model + '.meta'       
    saver = tf.train.import_meta_graph(modelLocation)
    saver.restore(restored_session, resources/model)

    # Checking what variables are present in the restored graph.
    for v in tf.get_default_graph().get_collection("variables"):

    graph = tf.get_default_graph()
    weights_restored = graph.get_tensor_by_name("weights:0")
    biases_restored = graph.get_tensor_by_name("biases:0")
    x_restored = graph.get_tensor_by_name("x:0")

    pred = RNN(x_restored, weights_restored, biases_restored)

If I get you right, you are trying to reuse a pre-trained variable named "weights:0", restored from a saved model.meta graph file.

To do this you need to import your model and its graph definition and set it as the default graph

saver = tf.train.import_meta_graph('resources/model.meta')
graph = tf.get_default_graph()

To get a list of all operations contained in the graph you can use get_operations():

[op.name for op in graph.get_operations()]

Within the scope of the default_graph you can access all operations of the graph, in your case you would do something like this:

with graph.as_default() as default_graph:
  # get the output tensor of an operation
  weights_restored_n = default_graph.get_operation_by_name('weights').outputs[0]
  biases_restored_n = default_graph.get_operation_by_name('biases').outputs[0]
  # ... do some computations ...
  x = tf.get_variable('x') # adds a new tensor to default_graph!
  pred = RNN(x, weights_restored_n, biases_restored_n)

  with tf.Session() as sess:
    # restore values of 'weights:0' etc., instead of initializing
    saver.restore(sess, 'resources/model')
    # run pred operation and feed some data
    sess.run(pred, feed_dict={x:x_train})

I hope you get an idea how to reuse a saved meta graph and reuse trained parameters.

Note: tf.get_variable() adds a new tensor to the graph or reuses an existing one in the sense of a variable scope, that is different to the case of restoring a tensor and its values from a pre-trained model.

EDIT: tf.get_tensor_by_name('weights:0') and tf.get_operation_by_name('weights').outputs[0] gives the same result

  • Thanks for the explanation. Very useful . But, this did not solve my problem. I again checked the code with the following modifications (from TF guide) the code edit. Can you see why is it causing the error. ValueError: Variable rnn/basic_lstm_cell/weights does not exist, or was not created with tf.get_variable(). Did you mean to set reuse=None in VarScope? – Betafish Aug 2 '18 at 8:42
  • How do you call the variable rnn/basic_lstm_cell/weights? The code above isn't showing that. Note: foo/bar/x is the name of a tf.operation of type Variable whereas foo/bar/x:0 is the name of the output tensor of the operation you are interested in. – J.E.K Aug 2 '18 at 10:38
  • I have pasted the actual code on Link. Did not want to paste it on SO for its length. I still get the same error on the tf.variable – Betafish Aug 6 '18 at 6:13
  • I've checked your code. You should implement the code structure shown above, especially encapsulating graph and session. The tf.variable_scope encapsulation is used for sharing variables when calling functions, in the case where you build a computation graph. Here you only restore one variable. So you can just omit the encapsulation with tf.variable_scope in your code. – J.E.K Aug 6 '18 at 7:52

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