# How do I reorder the dimensions of a rank 3 tensor in Tensorflow.js?

Suppose I have the following 2 tensors:

``````var a = tf.tensor([[1,2],[3,4]]);
var b = tf.tensor([[5,6],[7,8]]);
``````

I can stack them together like this:

``````var c = tf.stack([a, b]);
``````

By doing `c.print()`, I can see how Tensorflow has stacked the 2 tensors:

``````Tensor
[[[1, 2],
[3, 4]],

[[5, 6],
[7, 8]]]

``````

However, I want to stack them like so instead:

``````Tensor
[[[1, 5],
[2, 6]],
[[3, 7],
[4, 8]]]
``````

In other words, if the dimensions of tensor `c` are `A, B, C`, how can I reorder the dimensions to be `B, C, A`?

I have tried reading the Tensorflow.js API documentation, but from what I can see there isn't a way of doing this (unless I've missed it).

I have also tried implementing this with plain Javascript arrays, but I have noted that this is very inefficient and slow (code for this available upon request, I suspect it's because when handling multiple arrays ~3Kx2K it allocates a lot on the heap).

How can I reorder the dimensions of a tensor from `A, B, C` to be `B, C, A`?

the two tensors can be stacked along the axis -1

``````const a = tf.tensor([[1,2],[3,4]]);
const b = tf.tensor([[5,6],[7,8]]);
const c = tf.stack([a, b], axis=-1);
c.print()``````
``````<html>
<script src="https://cdn.jsdelivr.net/npm/@tensorflow/tfjs@latest"> </script>

<body>
</body>
</html>``````

To change the ordering of a tensor, `transpose` can be used and the way the axis are to be reordered can be given as parameter

``````const a = tf.tensor([[1,2, 3],[3,4, 7]]);
const b = tf.tensor([[5,6, 20],[7,8, 10]]);
const c = tf.stack([a, b]); // default axis = 0
const d = c.transpose([1, 2, 0])
d.print()``````
``````<html>
<script src="https://cdn.jsdelivr.net/npm/@tensorflow/tfjs@latest"> </script>

<body>
</body>
</html>``````

``````var a = tf.tensor([[1,2],[3,4],[10,11]]);