w = mg.tensor(10.0)
learning_rate = 0.3
num_steps = 10
print(w)
for step_cnt in range(num_steps):
ℒ = w ** 2 # compute L(w) (this also "nulls" any derivatives")
ℒ.backward() # compute derivative of L
# Update w via gradient-step..
# We do an augmented update on the underlying numpy-array
# stored by `w`
w.data -= learning_rate * w.grad
print(w)