SolovayKitaevDecomposition
class qiskit.synthesis.SolovayKitaevDecomposition(basic_approximations=None)
Bases: object
The Solovay Kitaev discrete decomposition algorithm.
This class is called recursively by the transpiler pass, which is why it is separeted. See qiskit.transpiler.passes.SolovayKitaev for more information.
Parameters
basic_approximations (str |dict[str, np.ndarray] | list[GateSequence] | None) – A specification of the basic SU(2) approximations in terms of discrete gates. At each iteration this algorithm, the remaining error is approximated with the closest sequence of gates in this set. If a str, this specifies a .npy filename from which to load the approximation. If a dict, then this contains {gates: effective_SO3_matrix} pairs, e.g. {"h t": np.array([[0, 0.7071, -0.7071], [0, -0.7071, -0.7071], [-1, 0, 0]]}. If a list, this contains the same information as the dict, but already converted to GateSequence objects, which contain the SO(3) matrix and gates.
Methods
find_basic_approximation
find_basic_approximation(sequence)
Find GateSequence in self._basic_approximations that approximates sequence.
Parameters
sequence (GateSequence) – GateSequence to find the approximation to.
Returns
GateSequence in self._basic_approximations that approximates sequence.
Return type
GateSequence
load_basic_approximations
static load_basic_approximations(data)
Load basic approximations.
Parameters
data (list |str |dict) – If a string, specifies the path to the file from where to load the data. If a dictionary, directly specifies the decompositions as {gates: matrix} or {gates: (matrix, global_phase)}. There, gates are the names of the gates producing the SO(3) matrix matrix, e.g. {"h t": np.array([[0, 0.7071, -0.7071], [0, -0.7071, -0.7071], [-1, 0, 0]]} and the global_phase can be given to account for a global phase difference between the U(2) matrix of the quantum gates and the stored SO(3) matrix. If not given, the global_phase will be assumed to be 0.
Returns
A list of basic approximations as type GateSequence.
Raises
ValueError – If the number of gate combinations and associated matrices does not match.
Return type
list[GateSequence]
run
run(gate_matrix, recursion_degree, return_dag=False, check_input=True)
Run the algorithm.
Parameters
- gate_matrix (np.ndarray) – The 2x2 matrix representing the gate. This matrix has to be SU(2) up to global phase.
- recursion_degree (int) – The recursion degree, called in the paper.
- return_dag (bool) – If
Truereturn aDAGCircuit, else aQuantumCircuit. - check_input (bool) – If
Truecheck that the input matrix is valid for the decomposition.
Returns
A one-qubit circuit approximating the gate_matrix in the specified discrete basis.
Return type
QuantumCircuit’ | ‘DAGCircuit