2

I am trying to do a simple thing: use autograd to get gradients and do gradient descent:

import tangent

def model(x):
    return a*x + b

def loss(x,y):
    return (y-model(x))**2.0

After getting loss for an input-output pair, I want to get gradients wrt loss:

    l = loss(1,2)
    # grad_a = gradient of loss wrt a?
    a = a - grad_a
    b = b - grad_b

But the library tutorials don't show how to do obtain gradient with respect to a or b i.e. the parameters so, neither autograd nor tangent.

  • What do you mean by they don't show? – sascha Feb 2 '18 at 13:10
  • @sascha yes, i tried that first before tangent. They show an example with tanh only; 1. not a composition of function and then 2. their function doesn't have any parameters ie. its just x, so no partial derivatives. – Andy Markman Feb 2 '18 at 13:12
1

You can specify this with the second argument of the grad function:

def f(x,y):
    return x*x + x*y

f_x = grad(f,0) # derivative with respect to first argument
f_y = grad(f,1) # derivative with respect to second argument

print("f(2,3)   = ", f(2.0,3.0))
print("f_x(2,3) = ", f_x(2.0,3.0)) 
print("f_y(2,3) = ", f_y(2.0,3.0))

In your case, 'a' and 'b' should be an input to the loss function, which passes them to the model in order to calculate the derivatives.

There was a similar question i just answered: Partial Derivative using Autograd

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.