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Hi Yaroslav,
First of all, I want to say your tricks here are really neat and have helped me a lot!
I'm currently trying to compute the per-example gradient over two backprops in a typical Hessian vector product calculation, e.g.
output = model(data)
loss = loss_fn(output, targets)
grad = torch.autograd.grad(loss, model.parameters(), create_graph=True)
grad = flat_grad(grad)
grad_p = (grad * p).sum()
hessian_p= torch.autograd.grad(grad_p , actor.parameters())
Is it possible to apply compute_grad1 to this procedure to get the per-example Hessian vector product? Naively applying it fails because currently compute_grad1 only supports a single backprop.
Thanks!
Jack
The text was updated successfully, but these errors were encountered:
Hi Yaroslav,
First of all, I want to say your tricks here are really neat and have helped me a lot!
I'm currently trying to compute the per-example gradient over two backprops in a typical Hessian vector product calculation, e.g.
Is it possible to apply compute_grad1 to this procedure to get the per-example Hessian vector product? Naively applying it fails because currently compute_grad1 only supports a single backprop.
Thanks!
Jack
The text was updated successfully, but these errors were encountered: