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?


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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