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Use primitives for solving the relaxed problem #52
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Summary
In this PR, I update the solving of the relaxed problem to use the new primitives-based interfaces in Qiskit Terra 0.22 and higher (
minimum_eigensolvers
, rather than the oldminimum_eigen_solvers
). I did not update the tutorials because I think it is better to update the tutorials in one pass once magic rounding has also been migrated to use the primitives (#21). All changes are backwards compatible: the code works with the oldeigen_solvers
as well. I kept the tests using the old solvers because there is one code path specific to theLegacyNumPyMinimumEigensolver
.Details and comments
Estimator
primitive is able to handle aPauliSumOp
but not aPauliOp
directly, so I had to modify the return type ofqubit_op
(no longer aUnion
, yay!) andterm2op
.test_backends.py
and update the solvers used once Incorporate qiskit primitives into magic rounding #21 is closed.QAOA
inminimum_eigensolvers
intetionally assumes the problem Hamiltonian is diagonal so it can offer some additional features. However, this assumption does not hold for QRAO encoded Hamiltonians. In this case, QAOA is equivalent toVQE
with theQAOAAnsatz
, so that is how we perform QAOA with QRAO using theEstimator
primitive.