示例#1
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 def test_ground_state(self):
     length, n, h, U, t = 2, 0.8, 3.8, -6, 1
     fu = generate_operators('fu', length)
     fd = generate_operators('fd', length)
     _b = flatten([fu, fd])
     monomials = [[ci for ci in _b]]
     monomials[-1].extend([Dagger(ci) for ci in _b])
     monomials.append([cj*ci for ci in _b for cj in _b])
     monomials.append([Dagger(cj)*ci for ci in _b for cj in _b])
     monomials[-1].extend([cj*Dagger(ci)
                           for ci in _b for cj in _b])
     monomials.append([Dagger(cj)*Dagger(ci)
                       for ci in _b for cj in _b])
     hamiltonian = 0
     for j in range(length):
         hamiltonian += U * (Dagger(fu[j])*Dagger(fd[j]) * fd[j]*fu[j])
         hamiltonian += -h/2*(Dagger(fu[j])*fu[j] - Dagger(fd[j])*fd[j])
         for k in get_neighbors(j, len(fu), width=1):
             hamiltonian += -t*Dagger(fu[j])*fu[k]-t*Dagger(fu[k])*fu[j]
             hamiltonian += -t*Dagger(fd[j])*fd[k]-t*Dagger(fd[k])*fd[j]
     momentequalities = [n-sum(Dagger(br)*br for br in _b)]
     sdpRelaxation = SdpRelaxation(_b, verbose=0)
     sdpRelaxation.get_relaxation(-1,
                                  objective=hamiltonian,
                                  momentequalities=momentequalities,
                                  substitutions=fermionic_constraints(_b),
                                  extramonomials=monomials)
     sdpRelaxation.solve()
     s = 0.5*(sum((Dagger(u)*u) for u in fu) -
              sum((Dagger(d)*d) for d in fd))
     magnetization = sdpRelaxation[s]
     self.assertTrue(abs(magnetization-0.021325317328560453) < 10e-5)
示例#2
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 def test_ground_state(self):
     length, n, h, U, t = 2, 0.8, 3.8, -6, 1
     fu = generate_operators('fu', length)
     fd = generate_operators('fd', length)
     _b = flatten([fu, fd])
     monomials = [[ci for ci in _b]]
     monomials[-1].extend([Dagger(ci) for ci in _b])
     monomials.append([cj * ci for ci in _b for cj in _b])
     monomials.append([Dagger(cj) * ci for ci in _b for cj in _b])
     monomials[-1].extend([cj * Dagger(ci) for ci in _b for cj in _b])
     monomials.append([Dagger(cj) * Dagger(ci) for ci in _b for cj in _b])
     hamiltonian = 0
     for j in range(length):
         hamiltonian += U * (Dagger(fu[j]) * Dagger(fd[j]) * fd[j] * fu[j])
         hamiltonian += -h / 2 * (Dagger(fu[j]) * fu[j] -
                                  Dagger(fd[j]) * fd[j])
         for k in get_neighbors(j, len(fu), width=1):
             hamiltonian += -t * Dagger(fu[j]) * fu[k] - t * Dagger(
                 fu[k]) * fu[j]
             hamiltonian += -t * Dagger(fd[j]) * fd[k] - t * Dagger(
                 fd[k]) * fd[j]
     momentequalities = [n - sum(Dagger(br) * br for br in _b)]
     sdpRelaxation = SdpRelaxation(_b, verbose=0)
     sdpRelaxation.get_relaxation(-1,
                                  objective=hamiltonian,
                                  momentequalities=momentequalities,
                                  substitutions=fermionic_constraints(_b),
                                  extramonomials=monomials)
     sdpRelaxation.solve()
     s = 0.5 * (sum((Dagger(u) * u) for u in fu) - sum(
         (Dagger(d) * d) for d in fd))
     magnetization = sdpRelaxation[s]
     self.assertTrue(abs(magnetization - 0.021325317328560453) < 10e-5)
示例#3
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 def test_guessing_probability(self):
     p = [
         0.5, 0.5, 0.5, 0.5, 0.4267766952966368, 0.4267766952966368,
         0.4267766952966368, 0.07322330470336313
     ]
     P = Probability([2, 2], [2, 2])
     behaviour_constraint = [
         P([0], [0], 'A') - p[0],
         P([0], [1], 'A') - p[1],
         P([0], [0], 'B') - p[2],
         P([0], [1], 'B') - p[3],
         P([0, 0], [0, 0]) - p[4],
         P([0, 0], [0, 1]) - p[5],
         P([0, 0], [1, 0]) - p[6],
         P([0, 0], [1, 1]) - p[7]
     ]
     behaviour_constraint.append("-0[0,0]+1.0")
     sdpRelaxation = SdpRelaxation(P.get_all_operators(),
                                   normalized=False,
                                   verbose=0)
     sdpRelaxation.get_relaxation(1,
                                  objective=-P([0], [0], 'A'),
                                  momentequalities=behaviour_constraint,
                                  substitutions=P.substitutions)
     sdpRelaxation.solve()
     self.assertTrue(abs(sdpRelaxation.primal + 0.5) < 10e-5)
示例#4
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    def test_maximum_violation(self):
        def expectation_values(measurement, outcomes):
            exp_values = []
            for k in range(len(measurement)):
                exp_value = 0
                for j in range(len(measurement[k])):
                    exp_value += outcomes[k][j] * measurement[k][j]
                exp_values.append(exp_value)
            return exp_values

        E = generate_operators('E', 8, hermitian=True)
        M, outcomes = [], []
        for i in range(4):
            M.append([E[2 * i], E[2 * i + 1]])
            outcomes.append([1, -1])
        A = [M[0], M[1]]
        B = [M[2], M[3]]
        substitutions = projective_measurement_constraints(A, B)
        C = expectation_values(M, outcomes)
        chsh = -(C[0] * C[2] + C[0] * C[3] + C[1] * C[2] - C[1] * C[3])
        sdpRelaxation = SdpRelaxation(E, verbose=0)
        sdpRelaxation.get_relaxation(1,
                                     objective=chsh,
                                     substitutions=substitutions)
        sdpRelaxation.solve()
        self.assertTrue(abs(sdpRelaxation.primal + 2 * np.sqrt(2)) < 10e-5)
示例#5
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 def test_solving(self):
     x = generate_variables(2, commutative=True)
     g0 = 4 * x[0] ** 2 + x[0] * x[1] - 4 * x[1] ** 2 - 2.1 * x[0] ** 4 + 4 * x[1] ** 4 + x[0] ** 6 / 3
     sdpRelaxation = SdpRelaxation(x)
     sdpRelaxation.get_relaxation(3, objective=g0)
     sdpRelaxation.solve()
     self.assertTrue(abs(sdpRelaxation.primal + 1.0316282672706911) < 10e-5)
示例#6
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    def test_maximum_violation(self):

        def expectation_values(measurement, outcomes):
            exp_values = []
            for k in range(len(measurement)):
                exp_value = 0
                for j in range(len(measurement[k])):
                    exp_value += outcomes[k][j] * measurement[k][j]
                exp_values.append(exp_value)
            return exp_values

        E = generate_operators('E', 8, hermitian=True)
        M, outcomes = [], []
        for i in range(4):
            M.append([E[2 * i], E[2 * i + 1]])
            outcomes.append([1, -1])
        A = [M[0], M[1]]
        B = [M[2], M[3]]
        substitutions = projective_measurement_constraints(A, B)
        C = expectation_values(M, outcomes)
        chsh = -(C[0] * C[2] + C[0] * C[3] + C[1] * C[2] - C[1] * C[3])
        sdpRelaxation = SdpRelaxation(E, verbose=0)
        sdpRelaxation.get_relaxation(1, objective=chsh,
                                     substitutions=substitutions)
        sdpRelaxation.solve()
        self.assertTrue(abs(sdpRelaxation.primal + 2*np.sqrt(2)) < 10e-5)
示例#7
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 def test_solving_with_sdpa(self):
     x = generate_variables('x', 2, commutative=True)
     sdpRelaxation = SdpRelaxation(x)
     sdpRelaxation.get_relaxation(2, objective=x[0]*x[1] + x[1]*x[0],
                                  inequalities=[-x[1]**2 + x[1] + 0.5],
                                  substitutions={x[0]**2: x[0]})
     sdpRelaxation.solve(solver="sdpa")
     self.assertTrue(abs(sdpRelaxation.primal + 0.7320505301965234) < 10e-5)
示例#8
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 def test_solving(self):
     x = generate_variables('x', 2, commutative=True)
     g0 = 4 * x[0] ** 2 + x[0] * x[1] - 4 * x[1] ** 2 - \
         2.1 * x[0] ** 4 + 4 * x[1] ** 4 + x[0] ** 6 / 3
     sdpRelaxation = SdpRelaxation(x)
     sdpRelaxation.get_relaxation(3, objective=g0)
     sdpRelaxation.solve()
     self.assertTrue(abs(sdpRelaxation.primal + 1.0316282672706911) < 10e-5)
示例#9
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 def test_solving_with_sdpa(self):
     x = generate_variables('x', 2, commutative=True)
     sdpRelaxation = SdpRelaxation(x)
     sdpRelaxation.get_relaxation(2, objective=x[0]*x[1] + x[1]*x[0],
                                  inequalities=[-x[1]**2 + x[1] + 0.5],
                                  substitutions={x[0]**2: x[0]})
     sdpRelaxation.solve(solver="sdpa")
     self.assertTrue(abs(sdpRelaxation.primal + 0.7320505301965234) < 10e-5)
示例#10
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 def test_chordal_extension(self):
     X = generate_variables(3, commutative=True)
     inequalities = [1 - X[0] ** 2 - X[1] ** 2, 1 - X[1] ** 2 - X[2] ** 2]
     sdpRelaxation = SdpRelaxation(X)
     sdpRelaxation.get_relaxation(
         2, objective=X[1] - 2 * X[0] * X[1] + X[1] * X[2], inequalities=inequalities, chordal_extension=True
     )
     sdpRelaxation.solve()
     self.assertTrue(abs(sdpRelaxation.primal + 2.2443690631722637) < 10e-5)
示例#11
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 def test_ground_state_energy(self):
     N = 3
     a = generate_variables(N, name="a")
     substitutions = bosonic_constraints(a)
     hamiltonian = sum(Dagger(a[i]) * a[i] for i in range(N))
     sdpRelaxation = SdpRelaxation(a, verbose=0)
     sdpRelaxation.get_relaxation(1, objective=hamiltonian, substitutions=substitutions)
     sdpRelaxation.solve()
     self.assertTrue(abs(sdpRelaxation.primal) < 10e-5)
示例#12
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 def test_maximum_violation(self):
     I = [[0, -1, 0], [-1, 1, 1], [0, 1, -1]]
     P = Probability([2, 2], [2, 2])
     relaxation = SdpRelaxation(P.get_all_operators())
     relaxation.get_relaxation(1,
                               objective=define_objective_with_I(I, P),
                               substitutions=P.substitutions,
                               extramonomials=P.get_extra_monomials('AB'))
     relaxation.solve()
     self.assertTrue(abs(relaxation.primal + (np.sqrt(2) - 1) / 2) < 10e-5)
示例#13
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 def test_chordal_extension(self):
     X = generate_variables('x', 3, commutative=True)
     inequalities = [1-X[0]**2-X[1]**2, 1-X[1]**2-X[2]**2]
     sdpRelaxation = SdpRelaxation(X)
     sdpRelaxation.get_relaxation(2,
                                  objective=X[1] - 2*X[0]*X[1] + X[1]*X[2],
                                  inequalities=inequalities,
                                  chordal_extension=True)
     sdpRelaxation.solve()
     self.assertTrue(abs(sdpRelaxation.primal + 2.2443690631722637) < 10e-5)
示例#14
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 def test_maximum_violation(self):
     I = [[0, -1, 0], [-1, 1, 1], [0, 1, -1]]
     P = Probability([2, 2], [2, 2])
     relaxation = SdpRelaxation(P.get_all_operators())
     relaxation.get_relaxation(1,
                               objective=define_objective_with_I(I, P),
                               substitutions=P.substitutions,
                               extramonomials=P.get_extra_monomials('AB'))
     relaxation.solve()
     self.assertTrue(abs(relaxation.primal + (np.sqrt(2)-1)/2) < 10e-5)
示例#15
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 def test_ground_state_energy(self):
     N = 3
     a = generate_operators('a', N)
     substitutions = bosonic_constraints(a)
     hamiltonian = sum(Dagger(a[i]) * a[i] for i in range(N))
     sdpRelaxation = SdpRelaxation(a, verbose=0)
     sdpRelaxation.get_relaxation(1, objective=hamiltonian,
                                  substitutions=substitutions)
     sdpRelaxation.solve()
     self.assertTrue(abs(sdpRelaxation.primal) < 10e-5)
示例#16
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 def test_max_cut(self):
     W = np.diag(np.ones(8), 1) + np.diag(np.ones(7), 2) + np.diag([1, 1], 7) + np.diag([1], 8)
     W = W + W.T
     Q = (np.diag(np.dot(np.ones(len(W)).T, W)) - W) / 4
     x = generate_variables(len(W), commutative=True)
     equalities = [xi ** 2 - 1 for xi in x]
     objective = -np.dot(x, np.dot(Q, np.transpose(x)))
     sdpRelaxation = SdpRelaxation(x)
     sdpRelaxation.get_relaxation(1, objective=objective, equalities=equalities, removeequalities=True)
     sdpRelaxation.solve()
     self.assertTrue(abs(sdpRelaxation.primal + 4.5) < 10e-5)
示例#17
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 def test_max_cut(self):
     W = np.diag(np.ones(8), 1) + np.diag(np.ones(7), 2) + \
         np.diag([1, 1], 7) + np.diag([1], 8)
     W = W + W.T
     Q = (np.diag(np.dot(np.ones(len(W)).T, W)) - W) / 4
     x = generate_variables('x', len(W), commutative=True)
     equalities = [xi ** 2 - 1 for xi in x]
     objective = -np.dot(x, np.dot(Q, np.transpose(x)))
     sdpRelaxation = SdpRelaxation(x)
     sdpRelaxation.get_relaxation(1, objective=objective,
                                  equalities=equalities,
                                  removeequalities=True)
     sdpRelaxation.solve()
     self.assertTrue(abs(sdpRelaxation.primal + 13.5) < 10e-5)
示例#18
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class ExampleNoncommutative(unittest.TestCase):

    def setUp(self):
        X = generate_operators('x', 2, hermitian=True)
        self.sdpRelaxation = SdpRelaxation(X)
        self.sdpRelaxation.get_relaxation(2, objective=X[0]*X[1] + X[1]*X[0],
                                          inequalities=[-X[1]**2 + X[1] + 0.5],
                                          substitutions={X[0]**2: X[0]})

    def tearDown(self):
        clear_cache()

    def test_solving_with_sdpa(self):
        self.sdpRelaxation.solve(solver="sdpa")
        self.assertTrue(abs(self.sdpRelaxation.primal + 0.75) < 10e-5)

    def test_solving_with_mosek(self):
        self.sdpRelaxation.solve(solver="mosek")
        self.assertTrue(abs(self.sdpRelaxation.primal + 0.75) < 10e-5)

    def test_solving_with_cvxopt(self):
        self.sdpRelaxation.solve(solver="cvxopt")
        self.assertTrue(abs(self.sdpRelaxation.primal + 0.75) < 10e-5)

    def test_solving_with_cvxpy(self):
        self.sdpRelaxation.solve(solver="cvxpy")
        self.assertTrue(abs(self.sdpRelaxation.primal + 0.75) < 10e-5)
示例#19
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class ExampleNoncommutative(unittest.TestCase):
    def setUp(self):
        X = generate_operators('x', 2, hermitian=True)
        self.sdpRelaxation = SdpRelaxation(X)
        self.sdpRelaxation.get_relaxation(2,
                                          objective=X[0] * X[1] + X[1] * X[0],
                                          inequalities=[-X[1]**2 + X[1] + 0.5],
                                          substitutions={X[0]**2: X[0]})

    def tearDown(self):
        clear_cache()

    def test_solving_with_sdpa(self):
        self.sdpRelaxation.solve(solver="sdpa")
        self.assertTrue(abs(self.sdpRelaxation.primal + 0.75) < 10e-5)

    def test_solving_with_mosek(self):
        self.sdpRelaxation.solve(solver="mosek")
        self.assertTrue(abs(self.sdpRelaxation.primal + 0.75) < 10e-5)

    def test_solving_with_cvxopt(self):
        self.sdpRelaxation.solve(solver="cvxopt")
        self.assertTrue(abs(self.sdpRelaxation.primal + 0.75) < 10e-5)

    def test_solving_with_cvxpy(self):
        self.sdpRelaxation.solve(solver="cvxpy")
        self.assertTrue(abs(self.sdpRelaxation.primal + 0.75) < 10e-5)
示例#20
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 def test_guessing_probability(self):
     p = [0.5, 0.5, 0.5, 0.5, 0.4267766952966368, 0.4267766952966368, 0.4267766952966368, 0.07322330470336313]
     P = Probability([2, 2], [2, 2])
     behaviour_constraint = [
         P([0], [0], "A") - p[0],
         P([0], [1], "A") - p[1],
         P([0], [0], "B") - p[2],
         P([0], [1], "B") - p[3],
         P([0, 0], [0, 0]) - p[4],
         P([0, 0], [0, 1]) - p[5],
         P([0, 0], [1, 0]) - p[6],
         P([0, 0], [1, 1]) - p[7],
     ]
     behaviour_constraint.append("-0[0,0]+1.0")
     sdpRelaxation = SdpRelaxation(P.get_all_operators(), normalized=False, verbose=0)
     sdpRelaxation.get_relaxation(
         1, objective=-P([0], [0], "A"), momentequalities=behaviour_constraint, substitutions=P.substitutions
     )
     sdpRelaxation.solve()
     self.assertTrue(abs(sdpRelaxation.primal + 0.5) < 10e-5)
示例#21
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# -*- coding: utf-8 -*-
"""
This example calculates the maximum quantum violation of the CHSH inequality in
the probability picture with a mixed-level relaxation of 1+AB.

Created on Mon Dec  1 14:19:08 2014

@author: Peter Wittek
"""
from ncpol2sdpa import Probability, SdpRelaxation, define_objective_with_I

level = 1
I = [[ 0,   -1,    0 ],
     [-1,    1,    1 ],
     [ 0,    1,   -1 ]]
P = Probability([2, 2], [2, 2])
objective = define_objective_with_I(I, P)

sdpRelaxation = SdpRelaxation(P.get_all_operators())
sdpRelaxation.get_relaxation(level, objective=objective,
                             substitutions=P.substitutions,
                             extramonomials=P.get_extra_monomials('AB'))
sdpRelaxation.solve()
print(sdpRelaxation.primal, sdpRelaxation.status)
@author: Peter Wittek
"""
from ncpol2sdpa import generate_variables, SdpRelaxation
# Number of Hermitian variables
n_vars = 2
# Level of relaxation
level = 2

# Get Hermitian variables
X = generate_variables(n_vars, hermitian=True)

# Define the objective function
obj = X[0] * X[1] + X[1] * X[0]

# Inequality constraints
inequalities = [-X[1] ** 2 + X[1] + 0.5]

# Equality constraints
equalities = []

# Simple monomial substitutions
monomial_substitution = {}
monomial_substitution[X[0] ** 2] = X[0]

# Obtain SDP relaxation
sdpRelaxation = SdpRelaxation(X, verbose=0)
sdpRelaxation.get_relaxation(level, objective=obj, inequalities=inequalities,
                             substitutions=monomial_substitution)
sdpRelaxation.solve(solver='mosek')
print(sdpRelaxation.primal, sdpRelaxation.dual)