DiffOpt does not support differentiating a conic program if the problem's data depends nonlinearly from the parameters (e.g. if A(theta) x <= b(theta) with A(.) and b(.) given by nonlinear expressions).
Here is a simple MWE:
using JuMP
using Clarabel
using DiffOpt
model = DiffOpt.diff_model(Clarabel.Optimizer)
@variable(model, x >= 0)
@variable(model, θ ∈ MOI.Parameter(1.0))
@objective(model, Min, x)
@constraint(model, sin(θ) * x >= 1.0)
JuMP.optimize!(model)
If we replace Clarabel by Ipopt, the code works like a charm. But Clarabel works much better than Ipopt if the problem is conic.
We can use the chain-rule to differentiate the problem w.r.t. A instead of theta. However, I think it would be more intuitive to support nonlinear expressions depending on the parameters in DiffOpt. What do you think?