Código fuente para qiskit_optimization.algorithms.recursive_minimum_eigen_optimizer

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# (C) Copyright IBM 2020, 2023.
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"""A recursive minimal eigen optimizer in Qiskit optimization module."""

from copy import deepcopy
from enum import Enum
from typing import Dict, List, Optional, Tuple, Union, cast

import numpy as np
from qiskit_algorithms import NumPyMinimumEigensolver
from qiskit_algorithms.utils.validation import validate_min

from ..converters.quadratic_program_to_qubo import QuadraticProgramConverter, QuadraticProgramToQubo
from ..exceptions import QiskitOptimizationError
from ..problems import Variable
from ..problems.quadratic_program import QuadraticProgram
from .minimum_eigen_optimizer import MinimumEigenOptimizationResult, MinimumEigenOptimizer
from .optimization_algorithm import (
    OptimizationAlgorithm,
    OptimizationResult,
    OptimizationResultStatus,
)


[documentos]class IntermediateResult(Enum): """ Defines whether the intermediate results of :class:`~qiskit_optimization.algorithms.RecursiveMinimumEigenOptimizer` at each iteration should be stored and returned to the end user. """ NO_ITERATIONS = 0 """No intermediate results are stored.""" LAST_ITERATION = 1 """Only results from the last iteration are stored.""" ALL_ITERATIONS = 2 """All intermediate results are stored."""
[documentos]class RecursiveMinimumEigenOptimizationResult(OptimizationResult): """Recursive Eigen Optimizer Result.""" def __init__( self, x: Union[List[float], np.ndarray], fval: float, variables: List[Variable], status: OptimizationResultStatus, replacements: Dict[str, Tuple[str, int]], history: Tuple[List[MinimumEigenOptimizationResult], OptimizationResult], ) -> None: """ Constructs an instance of the result class. Args: x: the optimal value found in the optimization. fval: the optimal function value. variables: the list of variables of the optimization problem. status: the termination status of the optimization algorithm. replacements: a dictionary of substituted variables. Key is a variable being substituted, value is a tuple of substituting variable and a weight, either 1 or -1. history: a tuple containing intermediate results. The first element is a list of :class:`~qiskit_optimization.algorithms.MinimumEigenOptimizerResult` obtained by invoking :class:`~qiskit_optimization.algorithms.MinimumEigenOptimizer` iteratively, the second element is an instance of :class:`~qiskit_optimization.algorithm.OptimizationResult` obtained at the last step via `min_num_vars_optimizer`. """ super().__init__(x, fval, variables, status, None) self._replacements = replacements self._history = history @property def replacements(self) -> Dict[str, Tuple[str, int]]: """ Returns a dictionary of substituted variables. Key is a variable being substituted, value is a tuple of substituting variable and a weight, either 1 or -1.""" return self._replacements @property def history( self, ) -> Tuple[List[MinimumEigenOptimizationResult], OptimizationResult]: """ Returns intermediate results. The first element is a list of :class:`~qiskit_optimization.algorithms.MinimumEigenOptimizerResult` obtained by invoking :class:`~qiskit_optimization.algorithms.MinimumEigenOptimizer` iteratively, the second element is an instance of :class:`~qiskit_optimization.algorithm.OptimizationResult` obtained at the last step via `min_num_vars_optimizer`. """ return self._history
[documentos]class RecursiveMinimumEigenOptimizer(OptimizationAlgorithm): """A meta-algorithm that applies a recursive optimization. The recursive minimum eigen optimizer applies a recursive optimization on top of :class:`~qiskit_optimization.algorithms.OptimizationAlgorithm`. This optimizer can use :class:`~qiskit_optimization.algorithms.MinimumEigenOptimizer` as an optimizer that is called at each iteration. The algorithm is introduced in [1]. Examples: Outline of how to use this class: .. code-block:: python from qiskit_algorithms import QAOA from qiskit_optimization.problems import QuadraticProgram from qiskit_optimization.algorithms import ( MinimumEigenOptimizer, RecursiveMinimumEigenOptimizer ) problem = QuadraticProgram() # specify problem here # specify minimum eigen solver to be used, e.g., QAOA qaoa = QAOA(...) internal_optimizer = MinimumEigenOptimizer(qaoa) optimizer = RecursiveMinimumEigenOptimizer(internal_optimizer) result = optimizer.solve(problem) References: [1] Bravyi et al. (2019), Obstacles to State Preparation and Variational Optimization from Symmetry Protection. `arXiv:1910.08980 <http://arxiv.org/abs/1910.08980>`_ """ def __init__( self, optimizer: OptimizationAlgorithm, min_num_vars: int = 1, min_num_vars_optimizer: Optional[OptimizationAlgorithm] = None, penalty: Optional[float] = None, history: Optional[IntermediateResult] = IntermediateResult.LAST_ITERATION, converters: Optional[ Union[QuadraticProgramConverter, List[QuadraticProgramConverter]] ] = None, ) -> None: """Initializes the recursive minimum eigen optimizer. This initializer takes an ``OptimizationAlgorithm``, the parameters to specify until when to to apply the iterative scheme, and the optimizer to be applied once the threshold number of variables is reached. Args: optimizer: The optimizer to use in every iteration. min_num_vars: The minimum number of variables to apply the recursive scheme. If this threshold is reached, the min_num_vars_optimizer is used. min_num_vars_optimizer: This optimizer is used after the recursive scheme for the problem with the remaining variables. Default value is :class:`~qiskit_optimization.algorithms.MinimumEigenOptimizer` created on top of :class:`~qiskit_algorithms.NumPyMinimumEigensolver`. penalty: The factor that is used to scale the penalty terms corresponding to linear equality constraints. history: Whether the intermediate results are stored. Default value is :py:obj:`~IntermediateResult.LAST_ITERATION`. converters: The converters to use for converting a problem into a different form. By default, when None is specified, an internally created instance of :class:`~qiskit_optimization.converters.QuadraticProgramToQubo` will be used. Raises: QiskitOptimizationError: In case of invalid parameters (num_min_vars < 1). TypeError: When there one of converters is an invalid type. """ validate_min("min_num_vars", min_num_vars, 1) self._optimizer = optimizer self._min_num_vars = min_num_vars if min_num_vars_optimizer: self._min_num_vars_optimizer = min_num_vars_optimizer else: self._min_num_vars_optimizer = MinimumEigenOptimizer(NumPyMinimumEigensolver()) self._penalty = penalty self._history = history self._converters = self._prepare_converters(converters, penalty)
[documentos] def get_compatibility_msg(self, problem: QuadraticProgram) -> str: """Checks whether a given problem can be solved with this optimizer. Checks whether the given problem is compatible, i.e., whether the problem can be converted to a QUBO, and otherwise, returns a message explaining the incompatibility. Args: problem: The optimization problem to check compatibility. Returns: A message describing the incompatibility. """ return QuadraticProgramToQubo.get_compatibility_msg(problem)
[documentos] def solve(self, problem: QuadraticProgram) -> OptimizationResult: """Tries to solve the given problem using the recursive optimizer. Runs the optimizer to try to solve the optimization problem. Args: problem: The problem to be solved. Returns: The result of the optimizer applied to the problem. Raises: QiskitOptimizationError: Incompatible problem. QiskitOptimizationError: Infeasible due to variable substitution """ self._verify_compatibility(problem) # convert problem to QUBO, this implicitly checks if the problem is compatible problem_ = self._convert(problem, self._converters) problem_ref = deepcopy(problem_) # run recursive optimization until the resulting problem is small enough replacements = {} # type: Dict[str, Tuple[str, int]] optimization_results = [] # type: List[OptimizationResult] while problem_.get_num_vars() > self._min_num_vars: # solve current problem with optimizer res = self._optimizer.solve(problem_) # type: OptimizationResult if self._history == IntermediateResult.ALL_ITERATIONS: optimization_results.append(res) # analyze results to get strongest correlation correlations = res.get_correlations() i, j = self._find_strongest_correlation(correlations) x_i = problem_.variables[i].name x_j = problem_.variables[j].name if correlations[i, j] > 0: # set x_i = x_j problem_ = problem_.substitute_variables(variables={i: (j, 1)}) if problem_.status == QuadraticProgram.Status.INFEASIBLE: raise QiskitOptimizationError("Infeasible due to variable substitution") replacements[x_i] = (x_j, 1) else: # set x_i = 1 - x_j, this is done in two steps: # 1. set x_i = 1 + x_i # 2. set x_i = -x_j # 1a. get additional offset constant = problem_.objective.constant constant += problem_.objective.linear[i] constant += problem_.objective.quadratic[i, i] problem_.objective.constant = constant # 1b. get additional linear part for k in range(problem_.get_num_vars()): coeff = problem_.objective.linear[k] if k == i: coeff += 2 * problem_.objective.quadratic[i, k] else: coeff += problem_.objective.quadratic[i, k] # set new coefficient if not too small if np.abs(coeff) > 1e-10: problem_.objective.linear[k] = coeff else: problem_.objective.linear[k] = 0 # 2. replace x_i by -x_j problem_ = problem_.substitute_variables(variables={i: (j, -1)}) if problem_.status == QuadraticProgram.Status.INFEASIBLE: raise QiskitOptimizationError("Infeasible due to variable substitution") replacements[x_i] = (x_j, -1) # solve remaining problem result = self._min_num_vars_optimizer.solve(problem_) # unroll replacements var_values = {} for i, x in enumerate(problem_.variables): var_values[x.name] = result.x[i] def find_value(x, replacements, var_values): if x in var_values: # if value for variable is known, return it return var_values[x] elif x in replacements: # get replacement for variable (y, sgn) = replacements[x] # find details for replacing variable value = find_value(y, replacements, var_values) # construct, set, and return new value var_values[x] = value if sgn == 1 else 1 - value return var_values[x] else: raise QiskitOptimizationError("Invalid values!") # loop over all variables to set their values for x_i in problem_ref.variables: if x_i.name not in var_values: find_value(x_i.name, replacements, var_values) # build history before any translations are applied # min_eigen_results is an empty list if history is set to NO or LAST. history = ( optimization_results, None if self._history == IntermediateResult.NO_ITERATIONS else result, ) # construct result x_v = np.array([var_values[x_aux.name] for x_aux in problem_ref.variables]) return cast( RecursiveMinimumEigenOptimizationResult, self._interpret( x=x_v, converters=self._converters, problem=problem, result_class=RecursiveMinimumEigenOptimizationResult, replacements=replacements, history=history, ), )
@staticmethod def _find_strongest_correlation(correlations): # get absolute values and set diagonal to -1 to make sure maximum is always on off-diagonal abs_correlations = np.abs(correlations) for i in range(len(correlations)): abs_correlations[i, i] = -1 # get index of maximum (by construction on off-diagonal) m_max = np.argmax(abs_correlations.flatten()) # translate back to indices i = int(m_max // len(correlations)) j = int(m_max - i * len(correlations)) return (i, j)