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I am used to using tf.contrib.layers.fully_connected to build a fully connected layer. Recently I ran into tf.layers.dense apparently used where the first functioned could be used. Are the interchangeable, producing the same output?

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They are essentially the same, the later calling the former.

However tf.contrib.fully_connected adds a few functionalities on top of dense, in particular the possibility to pass a normalization and an activation in the parameters, à la Keras. As noted by @wordforthewise, mind that the later defaults to tf.nn.relu.

More generally, the TF API proposes (and mixes somewhat confusingly) low- and hi-level APIs; more on that here.

  • Do you know if either of them require weights to be initialized and passed to them? – Conner M. Jul 4 '17 at 19:42
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    No they don't. Layers in tf.layers (and in tf.contrib.layers) are part of the "higher-level" API of tensorflow that takes care of such variables as weights and biases. However they do require you to chose an initializer fo them. – P-Gn Jul 4 '17 at 19:48
  • As opposed to a lower-level spelled-out implementation like tf.add(tf.matmul(array, weights), bias) ? – Conner M. Jul 4 '17 at 20:00
  • yes, or other low-level layers in tf.nn such as conv2d. – P-Gn Jul 4 '17 at 20:14
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    One major difference is tf.contrib.fully_connected has relu as it's default activation, while tf.layers.dense is a linear activation by default. – wordsforthewise Sep 5 '17 at 14:52

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