I think of it this way:
None
means an unspecified dimension. So if for example you define a placeholder, you use None
to say "this dimension can have any size".
A placeholder can have multiple None
dimensions. This simply means multiple dimensions can be different size. Even the whole shape can be None
to specify an unknown number of dimensions.
-1
is an instruction to Tensorflow to infer the size of the dimension on its own. In tf.reshape(input, [-1, input_size])
, this means "reshape it such that the second dimension is input_size
, and the first dimension is whatever is needed to match the total number of elements".
This does not necessarily mean that the dimension is unknown, as it is for None
. If your input tensor has a known size of 10 elements, and you reshape to [-1, 2]
, Tensorflow is able to infer the full shape [5, 2]
.
-1
is purely for convenience. You could always write down the shape explicitly instead of letting Tensorflow infer it. None
on the other hand is necessary for accepting variable-size tensors.
You can only ever have one -1
in a shape. Multiple ones don't make sense because it would be impossible to infer the shape. E.g. if you have 12 elements in a tensor, reshaping to [-1, -1, 2]
is undefined -- should we do [3, 2, 2]
? [2, 3, 2]
? [6, 1, 2]
?...
Finally, the question mark is just what Tensorflow uses to mark an "unknown" dimension when printing tensors and/or their shapes. The example you posted would actually produce a syntax error -- you cannot use question marks yourself. Causes of unknown dimensions can of course be placeholders with None
dimensions, and often tensors that are defined in terms of placeholders (i.e. the result of some ops applied to them) will have unknown dimensions as well. Also some ops may not specify (parts of) their output shape which can also result in unknowns.
There are likely some more technicalities I missed here, but as a rule of thumb: Use None
for placeholders and use -1
for reshape. This should cover the majority of use cases.