# Making a 2D block matrix of variables in Tensorflow

I would like to make a 2D matrix for the model:

y = Mx

where M is a block matrix with the form:

and A and B are square matrices that contain a mixture of variables and constants.

How can I set up the matrix, M, in Tensorflow that will keep the block structure and only optimize for specific elements of A and B?

Here is one way you can do this:

import tensorflow as tf

a11 = tf.Variable(1.0)
a12 = tf.Variable(2.0)
a22 = tf.Variable(3.0)
b12 = tf.Variable(4.0)
zero = tf.constant(0.0)

A = tf.reshape(tf.stack([a11,a12,zero,a22]),(2,2))
B = tf.reshape(tf.stack([zero,b12,zero,zero]),(2,2))
M = tf.concat([tf.concat([A,B],1),tf.concat([B,A],1)],0)
• This is what I need, thanks! Just curious, if I wanted to scale up my code (A and B are actually 6x6 matrices), is there a way to use loops? Feb 13, 2018 at 21:58
• For the more general problem, of defining a large matrix A such that some of its elements are constants (non trainable), I think I have a nice solution but it's hard fit in here. The idea is to define (1) a list of indices where the matrix should be constant, and (2) a list of tf.Variables; and then use a loop or list comprehension to build the final matrix.
– Lior
Feb 13, 2018 at 22:20
• That makes sense. Thanks! Feb 14, 2018 at 2:28