# qiskit.algorithms.Grover¶

class Grover(iterations=None, growth_rate=None, sample_from_iterations=False, quantum_instance=None)[código fonte]

Grover’s Search algorithm.

Grover’s Search [1, 2] is a well known quantum algorithm for that can be used for searching through unstructured collections of records for particular targets with quadratic speedup compared to classical algorithms.

Given a set $$X$$ of $$N$$ elements $$X=\{x_1,x_2,\ldots,x_N\}$$ and a boolean function $$f : X \rightarrow \{0,1\}$$, the goal of an unstructured-search problem is to find an element $$x^* \in X$$ such that $$f(x^*)=1$$.

The search is called unstructured because there are no guarantees as to how the database is ordered. On a sorted database, for instance, one could perform binary search to find an element in $$\mathbb{O}(\log N)$$ worst-case time. Instead, in an unstructured-search problem, there is no prior knowledge about the contents of the database. With classical circuits, there is no alternative but to perform a linear number of queries to find the target element. Conversely, Grover’s Search algorithm allows to solve the unstructured-search problem on a quantum computer in $$\mathcal{O}(\sqrt{N})$$ queries.

To carry out this search a so-called oracle is required, that flags a good element/state. The action of the oracle $$\mathcal{S}_f$$ is

$\mathcal{S}_f |x\rangle = (-1)^{f(x)} |x\rangle,$

i.e. it flips the phase of the state $$|x\rangle$$ if $$x$$ is a hit. The details of how $$S_f$$ works are unimportant to the algorithm; Grover’s search algorithm treats the oracle as a black box.

This class supports oracles in form of QuantumCircuit

With oracle at hand, Grover’s Search constructs the Grover operator to amplify the amplitudes of the good states:

$\mathcal{Q} = H^{\otimes n} \mathcal{S}_0 H^{\otimes n} \mathcal{S}_f = D \mathcal{S}_f,$

where $$\mathcal{S}_0$$ flips the phase of the all-zero state and acts as identity on all other states. Sometimes the first three operands are summarized as diffusion operator, which implements a reflection over the equal superposition state.

If the number of solutions is known, we can calculate how often $$\mathcal{Q}$$ should be applied to find a solution with very high probability, see the method optimal_num_iterations. If the number of solutions is unknown, the algorithm tries different powers of Grover’s operator, see the iterations argument, and after each iteration checks if a good state has been measured using good_state.

The generalization of Grover’s Search, Quantum Amplitude Amplification [3] uses a modified version of $$\mathcal{Q}$$ where the diffusion operator does not reflect about the equal superposition state, but another state specified via an operator $$\mathcal{A}$$:

$\mathcal{Q} = \mathcal{A} \mathcal{S}_0 \mathcal{A}^\dagger \mathcal{S}_f.$

For more information, see the GroverOperator in the circuit library.

Referências

[1]: L. K. Grover (1996), A fast quantum mechanical algorithm for database search,
[2]: I. Chuang & M. Nielsen, Quantum Computation and Quantum Information,

Cambridge: Cambridge University Press, 2000. Chapter 6.1.2.

[3]: Brassard, G., Hoyer, P., Mosca, M., & Tapp, A. (2000).

Quantum Amplitude Amplification and Estimation. arXiv:quant-ph/0005055.

Parâmetros
• iterations (Union[List[int], Iterator[int], int, None]) – Specify the number of iterations/power of Grover’s operator to be checked. * If an int, only one circuit is run with that power of the Grover operator. If the number of solutions is known, this is option should be used with the optimal power. The optimal power can be computed with Grover.optimal_num_iterations. * If a list, all the powers in the list are run in the specified order. * If an iterator, the powers yielded by the iterator are checked, until a maximum number of iterations or maximum power is reached.

• growth_rate (Optional[float]) – If specified, the iterator is set to increasing powers of growth_rate, i.e. to int(growth_rate ** 1), int(growth_rate ** 2), ... until a maximum number of iterations is reached.

• sample_from_iterations (bool) – If True, instead of taking the values in iterations as powers of the Grover operator, a random integer sample between 0 and smaller value than the iteration is used as a power, see [1], Section 4.

• quantum_instance (Union[QuantumInstance, BaseBackend, Backend, None]) – A Quantum Instance or Backend to run the circuits.

Levanta
• ValueError – If growth_rate is a float but not larger than 1.

• ValueError – If both iterations and growth_rate is set.

Referências

[1]: Boyer et al., Tight bounds on quantum searching

https://arxiv.org/abs/quant-ph/9605034

__init__(iterations=None, growth_rate=None, sample_from_iterations=False, quantum_instance=None)[código fonte]
Parâmetros
• iterations (Union[List[int], Iterator[int], int, None]) – Specify the number of iterations/power of Grover’s operator to be checked. * If an int, only one circuit is run with that power of the Grover operator. If the number of solutions is known, this is option should be used with the optimal power. The optimal power can be computed with Grover.optimal_num_iterations. * If a list, all the powers in the list are run in the specified order. * If an iterator, the powers yielded by the iterator are checked, until a maximum number of iterations or maximum power is reached.

• growth_rate (Optional[float]) – If specified, the iterator is set to increasing powers of growth_rate, i.e. to int(growth_rate ** 1), int(growth_rate ** 2), ... until a maximum number of iterations is reached.

• sample_from_iterations (bool) – If True, instead of taking the values in iterations as powers of the Grover operator, a random integer sample between 0 and smaller value than the iteration is used as a power, see [1], Section 4.

• quantum_instance (Union[QuantumInstance, BaseBackend, Backend, None]) – A Quantum Instance or Backend to run the circuits.

Levanta
• ValueError – If growth_rate is a float but not larger than 1.

• ValueError – If both iterations and growth_rate is set.

Referências

[1]: Boyer et al., Tight bounds on quantum searching

https://arxiv.org/abs/quant-ph/9605034

Methods

 __init__([iterations, growth_rate, …]) type iterations Union[List[int], Iterator[int], int, None] amplify(amplification_problem) Run the Grover algorithm. construct_circuit(problem[, power, measurement]) Construct the circuit for Grover’s algorithm with power Grover operators. optimal_num_iterations(num_solutions, num_qubits) Return the optimal number of iterations, if the number of solutions is known.

Attributes

 quantum_instance Get the quantum instance.
amplify(amplification_problem)[código fonte]

Run the Grover algorithm.

Parâmetros

amplification_problem (AmplificationProblem) – The amplification problem.

Tipo de retorno

GroverResult

Retorna

The result as a GroverResult, where e.g. the most likely state can be queried as result.top_measurement.

construct_circuit(problem, power=None, measurement=False)[código fonte]

Construct the circuit for Grover’s algorithm with power Grover operators.

Parâmetros
• problem (AmplificationProblem) – The amplification problem for the algorithm.

• power (Optional[int]) – The number of times the Grover operator is repeated. If None, this argument is set to the first item in iterations.

• measurement (bool) – Boolean flag to indicate if measurement should be included in the circuit.

Retorna

the QuantumCircuit object for the constructed circuit

Tipo de retorno

QuantumCircuit

Levanta

ValueError – If no power is passed and the iterations are not an integer.

static optimal_num_iterations(num_solutions, num_qubits)[código fonte]

Return the optimal number of iterations, if the number of solutions is known.

Parâmetros
• num_solutions (int) – The number of solutions.

• num_qubits (int) – The number of qubits used to encode the states.

Tipo de retorno

int

Retorna

The optimal number of iterations for Grover’s algorithm to succeed.

property quantum_instance

Get the quantum instance. :rtype: Optional[QuantumInstance] :returns: The quantum instance used to run this algorithm.