# Best way to flatten a 2D tensor containing a vector in TensorFlow?

What is the most efficient way to flatten a 2D tensor which is actually a horizontal or vertical vector into a 1D tensor?

Is there a difference in terms of performance between:

``````tf.reshape(w, [-1])
``````

and

``````tf.squeeze(w)
``````

?

Both `tf.reshape(w, [-1])` and `tf.squeeze(w)` are "cheap" in that they operate only on the metadata (i.e. the shape) of the given tensor, and don't modify the data itself. Of the two `tf.reshape()` has slightly simpler logic internally, but the performance of the two should be indistinguishable.

• See this post for flattening while maintaining the batch dimension. – Alex Nov 14 '17 at 20:37

For a simple 2D tensor the two should function identically, as mentioned by @sv_jan5. However, please note that `tf.squeeze(w)` only squeezes the first layer in the case of a multilayer tensor, whereas `tf.reshape(w,[-1])` will flatten the entire tensor regardless of depth.

For example, let's look at

``````w = [[1,2,],[3,4]]
``````

now the output of the two functions will no longer be the same. `tf.squeeze(w)`will output

``````<tf.Tensor: shape=(2, 2), dtype=int32, numpy=
array([[1, 2],
[3, 4]], dtype=int32)>
``````

while `tf.reshape(w,[-1])` will output

``````<tf.Tensor: shape=(4,), dtype=int32, numpy=array([1, 2, 3, 4], dtype=int32)>
``````