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qiskit.algorithms.minimum_eigensolvers
Minimum Eigensolvers Package
qiskit.algorithms.minimum_eigensolvers
Minimum Eigensolvers
MinimumEigensolver () | The minimum eigensolver interface. |
NumPyMinimumEigensolver ([filter_criterion]) | The NumPy minimum eigensolver algorithm. |
VQE (estimator, ansatz, optimizer, *[, ...]) | The variational quantum eigensolver (VQE) algorithm. |
AdaptVQE (solver, *[, gradient_threshold, ...]) | The Adaptive Variational Quantum Eigensolver algorithm. |
SamplingMinimumEigensolver () | The Sampling Minimum Eigensolver Interface. |
SamplingVQE (sampler, ansatz, optimizer, *[, ...]) | The Variational Quantum Eigensolver algorithm, optimized for diagonal Hamiltonians. |
QAOA (sampler, optimizer, *[, reps, ...]) | The Quantum Approximate Optimization Algorithm (QAOA). |
MinimumEigensolverResult () | Minimum eigensolver result. |
NumPyMinimumEigensolverResult () | NumPy minimum eigensolver result. |
VQEResult () | Variational quantum eigensolver result. |
AdaptVQEResult () | AdaptVQE Result. |
SamplingMinimumEigensolverResult () | Sampling Minimum Eigensolver Result. |
SamplingVQEResult () | VQE Result. |
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