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I am trying to use make_template() to avoid passing reuse flag throughout my model. But it seems that make_template() doesn't work correctly when it is used inside of a python class. I pasted ]my model code and the error I am getting below. It is a simple MLP to train on the MNIST dataset.

Since the code is kinda long, the main part here is the _weights() function. I try to wrap it using make_template() and then use get_variables() inside it to create and reuse weights throughout my model. _weights() is used by _create_dense_layer() and that in turn is used by _create_model() to create the graph. The train() function accepts tensors that I get from a data reader.

Model

class MLP(object):
    def __init__(self, hidden=[], biases=False, activation=tf.nn.relu):
        self.graph = tf.get_default_graph()
        self.hidden = hidden
        self.activation = activation
        self.biases = biases
        self.n_features = 784
        self.n_classes = 10
        self.bsize = 100
        self.l2 = 0.1

    def _real_weights(self, shape):
        initializer=tf.truncated_normal_initializer(stddev=0.1)
        weights = tf.get_variable('weights', shape, initializer=initializer)
        return weights
    # use make_template to make variable reuse transparent
    _weights = tf.make_template('_weights', _real_weights)

    def _real_biases(self, shape):
        initializer=tf.constant_initializer(0.0)
        return tf.get_variable('biases', shape, initializer=initializer)
    # use make_template to make variable reuse transparent
    _biases = tf.make_template('_biases', _real_biases)

    def _create_dense_layer(self, name, inputs, n_in, n_out, activation=True):
        with tf.variable_scope(name):
            weights = self._weights([n_in, n_out])
            layer = tf.matmul(inputs, weights)
            if self.biases:
                biases = self._biases([n_out])
                layer = layer + biases
            if activation:
                layer = self.activation(layer)
            return layer

    def _create_model(self, inputs):
        n_in = self.n_features
        for i in range(len(self.hidden)):
            n_out = self.hidden[i]
            name = 'hidden%d' % (i)
            inputs = self._create_dense_layer(name, inputs, n_in, n_out)
            n_in = n_out
        output = self._create_dense_layer('output', inputs, n_in, self.n_classes, activation=False)    
        return output

    def _create_loss_op(self, logits, labels):
        cent = tf.nn.softmax_cross_entropy_with_logits(logits, labels)
        weights = self.graph.get_collection('weights')
        l2 = (self.l2 / self.bsize) * tf.reduce_sum([tf.reduce_sum(tf.square(w)) for w in weights])
        return tf.reduce_mean(cent, name='loss') + l2

    def _create_train_op(self, loss):
        optimizer = tf.train.AdamOptimizer()
        return optimizer.minimize(loss)

    def _create_accuracy_op(self, logits, labels):
        predictions = tf.nn.softmax(logits)
        errors = tf.equal(tf.argmax(predictions, 1), tf.argmax(labels, 1))
        return tf.reduce_mean(tf.cast(errors, tf.float32))

    def train(self, images, labels):
        logits = model._create_model(images)
        loss = model._create_loss_op(logits, labels)
        return model._create_train_op(loss)       

    def accuracy(self, images, labels):
        logits = model._create_model(images)
        return model._create_accuracy_op(logits, labels)

    def predict(self, images):
        return model._create_model(images)

The error:

---------------------------------------------------------------------------
TypeError                                 Traceback (most recent call last)
 in ()
     25     model = MLP(hidden=[128])
     26     # define ops
---> 27     train = model.train(images, labels)
     28     accuracy = model.accuracy(eval_images, eval_labels)
     29     # load test data and create a prediction op

 in train(self, images, labels)
     60 
     61     def train(self, images, labels):
---> 62         logits = model._create_model(images)
     63         loss = model._create_loss_op(logits, labels)
     64         return model._create_train_op(loss)

 in _create_model(self, inputs)
     39             n_out = self.hidden[i]
     40             name = 'hidden%d' % (i)
---> 41             inputs = self._create_dense_layer(name, inputs, n_in, n_out)
     42             n_in = n_out
     43         output = self._create_dense_layer('output', inputs, n_in, self.n_classes, activation=False)

 in _create_dense_layer(self, name, inputs, n_in, n_out, activation)
     25     def _create_dense_layer(self, name, inputs, n_in, n_out, activation=True):
     26         with tf.variable_scope(name):
---> 27             weights = self._weights([n_in, n_out])
     28             layer = tf.matmul(inputs, weights)
     29             if self.biases:

/usr/local/lib/python3.5/site-packages/tensorflow/python/ops/template.py in __call__(self, *args, **kwargs)
    265           self._unique_name, self._name) as vs:
    266         self._var_scope = vs
--> 267         return self._call_func(args, kwargs, check_for_new_variables=False)
    268 
    269   @property

/usr/local/lib/python3.5/site-packages/tensorflow/python/ops/template.py in _call_func(self, args, kwargs, check_for_new_variables)
    206           ops.get_collection(ops.GraphKeys.TRAINABLE_VARIABLES))
    207 
--> 208       result = self._func(*args, **kwargs)
    209       if check_for_new_variables:
    210         trainable_variables = ops.get_collection(

TypeError: _real_weights() missing 1 required positional argument: 'shape'

originally defined at:
  File "", line 1, in 
    class MLP(object):
  File "", line 17, in MLP
    _weights = tf.make_template('_weights', _real_weights)
2

There are multiple problems with this code as it is here, e.g. the model references in the train, accuracy and predict methods. I assume this is due to cutting the code from its natural habitat.

The reason for the TypeError you mention,

TypeError: _real_weights() missing 1 required positional argument: 'shape'

most likely comes from the fact that _real_weights itself is an instance method of the MLP class, not a regular function or static method. As such, the first parameter to the function is always the self reference pointing to the instance of the class at the time of the call (an explicit version of the this pointer in C-like languages), as can be seen in the function declaration:

def _real_weights(self, shape):
    initializer=tf.truncated_normal_initializer(stddev=0.1)
    weights = tf.get_variable('weights', shape, initializer=initializer)
    return weights

Note that even though you don't use the argument, it's still required in this case. Thus when creating a template of the function using

tf.make_template('_weights', self._real_weights)

you basically state that the _weights template you create should take two positional arguments: self and weights (as does the _real_weights method). Consequently, when you call the function created from the template as

weights = self._weights([n_in, n_out])

you pass the array to the self argument, leaving the (required) shape argument unspecified.

From what it looks like you'd have two options here: You could either make _real_weights a regular function outside of the MLP class, so that

def _real_weights(shape):
    initializer=tf.truncated_normal_initializer(stddev=0.1)
    weights = tf.get_variable('weights', shape, initializer=initializer)
    return weights

class MLP():
    # etc.

which is probably not what you want, given that you already created a class for the model - or you could explicitly make it a static method of the MLP class, so that

class MLP():
    @staticmethod
    def _real_weights(shape):
        initializer=tf.truncated_normal_initializer(stddev=0.1)
        weights = tf.get_variable('weights', shape, initializer=initializer)
        return weights

Since static methods by definition do not operate on a class instance, you can (and have to) omit the self reference.

You would then create the templates as

tf.make_template('_weights', _real_weights)

in the first case and

tf.make_template('_weights', MLP._real_weights)

in the second case, explicitly specifying the class MLP as the name scope of the static method. Either way, the _real_weights function/method and the _weights template both now have only one argument, the shape of the variable to create.

  • "you pass the array to the self argument" Why? I am calling it as a method self._weights([in, out]), so the first argument of self should be included automatically by python – Mad Wombat Mar 15 '17 at 18:07
  • Because _weights is a free function created by tf.make_template, not a class method. The reference to the original class is lost, so Python does not know about self. – sunside Mar 15 '17 at 18:10
  • But the function generated by make_template is assigned to a class member, so it is actually a method and it is being called like one – Mad Wombat Mar 15 '17 at 18:13
  • Well, try it. :) gist.github.com/sunsided/3e603f4cf3265fbb61c9da56a265259d – sunside Mar 15 '17 at 18:20
  • 1
    But this is not what happens in my code. If I change your example to what actually happens in MLP() it works :) gist.github.com/MadWombat/dfb667614ff9c8b2a55e32f6aa1ab46f – Mad Wombat Mar 15 '17 at 18:29

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