torch.autograd.forward_ad.make_dual¶
- torch.autograd.forward_ad.make_dual(tensor, tangent, *, level=None)[source]¶
- Associate a tensor value with its tangent to create a “dual tensor” for forward AD gradient computation. - The result is a new tensor aliased to - tensorwith- tangentembedded as an attribute as-is if it has the same storage layout or copied otherwise. The tangent attribute can be recovered with- unpack_dual().- This function is backward differentiable. - Given a function f whose jacobian is J, it allows one to compute the Jacobian-vector product (jvp) between J and a given vector v as follows. - Example: - >>> with dual_level(): ... inp = make_dual(x, v) ... out = f(inp) ... y, jvp = unpack_dual(out) - Please see the forward-mode AD tutorial for detailed steps on how to use this API.