I want to calculate Jacobian matrix by Tensorflow.
What I have:
def compute_grads(fn, vars, data_num):
grads = []
for n in range(0, data_num):
for v in vars:
grads.append(tf.gradients(tf.slice(fn, [n, 0], [1, 1]), v)[0])
return tf.reshape(tf.stack(grads), shape=[data_num, -1])
fn is a loss function, vars are all trainable variables, and data_num is a number of data.
But if we increase the number of data, it takes tremendous time to run the function compute_grads.
Any ideas?
Assuming that X and Y are Tensorflow tensors and that Y depends on X:
from tensorflow.python.ops.parallel_for.gradients import jacobian
J=jacobian(Y,X)
The result has the shape Y.shape + X.shape and provides the partial derivative of each element of Y with respect to each element of X.
Assuming you are using Tensorflow 2 or Tensorflow <2 and Eager mode, you can use the GradientTape and the inbuild function:
with tf.GradientTape() as g:
x = tf.constant([1.0, 2.0])
g.watch(x)
y = x * x
jacobian = g.jacobian(y, x)
# jacobian value is [[2., 0.], [0., 4.]]
Check the official documentation for more
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