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

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

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