Пример #1
0
def _steadystate_svd_dense(L, ss_args):
    """
    Find the steady state(s) of an open quantum system by solving for the
    nullspace of the Liouvillian.
    """
    ss_args['info'].pop('weight', None)
    atol = 1e-12
    rtol = 1e-12
    if settings.debug:
        logger.debug('Starting SVD solver.')
    _svd_start = time.time()
    u, s, vh = svd(L.full(), full_matrices=False)
    tol = max(atol, rtol * s[0])
    nnz = (s >= tol).sum()
    ns = vh[nnz:].conj().T
    _svd_end = time.time()
    ss_args['info']['solution_time'] = _svd_end - _svd_start
    if ss_args['all_states']:
        rhoss_list = []
        for n in range(ns.shape[1]):
            rhoss = Qobj(vec2mat(ns[:, n]), dims=L.dims[0])
            rhoss_list.append(rhoss / rhoss.tr())
        if ss_args['return_info']:
            return rhoss_list, ss_args['info']
        else:
            if ss_args['return_info']:
                return rhoss_list, ss_args['info']
            else:
                return rhoss_list
    else:
        rhoss = Qobj(vec2mat(ns[:, 0]), dims=L.dims[0])
        return rhoss / rhoss.tr()
Пример #2
0
def _steadystate_direct_dense(L, ss_args):
    """
    Direct solver that use numpy dense matrices. Suitable for
    small system, with a few states.
    """
    if settings.debug:
        logger.debug('Starting direct dense solver.')

    dims = L.dims[0]
    n = int(np.sqrt(L.shape[0]))
    b = np.zeros(n ** 2)
    b[0] = ss_args['weight']

    L = L.data.todense()
    L[0, :] = np.diag(ss_args['weight'] * np.ones(n)).reshape((1, n ** 2))
    _dense_start = time.time()
    v = np.linalg.solve(L, b)
    _dense_end = time.time()
    ss_args['info']['solution_time'] = _dense_end - _dense_start
    if ss_args['return_info']:
        ss_args['info']['residual_norm'] = la.norm(b - L * v, np.inf)
    data = vec2mat(v)
    data = 0.5 * (data + data.conj().T)

    return Qobj(data, dims=dims, isherm=True)
Пример #3
0
def _steadystate_eigen(L, ss_args):
    """
    Internal function for solving the steady state problem by
    finding the eigenvector corresponding to the zero eigenvalue
    of the Liouvillian using ARPACK.
    """
    ss_args['info'].pop('weight', None)
    if settings.debug:
        logger.debug('Starting Eigen solver.')

    dims = L.dims[0]
    L = L.data.tocsc()

    if ss_args['use_rcm']:
        ss_args['info']['perm'].append('rcm')
        if settings.debug:
            old_band = sp_bandwidth(L)[0]
            logger.debug('Original bandwidth: %i' % old_band)
        perm = reverse_cuthill_mckee(L)
        rev_perm = np.argsort(perm)
        L = sp_permute(L, perm, perm, 'csc')
        if settings.debug:
            rcm_band = sp_bandwidth(L)[0]
            logger.debug('RCM bandwidth: %i' % rcm_band)
            logger.debug('Bandwidth reduction factor: %f' %
                         (old_band / rcm_band))

    _eigen_start = time.time()
    eigval, eigvec = eigs(L, k=1, sigma=1e-15, tol=ss_args['tol'],
                          which='LM', maxiter=ss_args['maxiter'])
    _eigen_end = time.time()
    ss_args['info']['solution_time'] = _eigen_end - _eigen_start
    if ss_args['return_info']:
        ss_args['info']['residual_norm'] = la.norm(L * eigvec, np.inf)
    if ss_args['use_rcm']:
        eigvec = eigvec[np.ix_(rev_perm,)]
    _temp = vec2mat(eigvec)
    data = dense2D_to_fastcsr_fmode(_temp, _temp.shape[0], _temp.shape[1])
    data = 0.5 * (data + data.H)
    out = Qobj(data, dims=dims, isherm=True)
    if ss_args['return_info']:
        return out / out.tr(), ss_args['info']
    else:
        return out / out.tr()
Пример #4
0
def _steadystate_power(L, ss_args):
    """
    Inverse power method for steady state solving.
    """
    ss_args['info'].pop('weight', None)
    if settings.debug:
        logger.debug('Starting iterative inverse-power method solver.')
    tol = ss_args['tol']
    maxiter = ss_args['maxiter']

    use_solver(assumeSortedIndices=True)
    rhoss = Qobj()
    sflag = issuper(L)
    if sflag:
        rhoss.dims = L.dims[0]
    else:
        rhoss.dims = [L.dims[0], 1]
    n = L.shape[0]
    # Build Liouvillian
    if settings.has_mkl and ss_args['method'] == 'power':
        has_mkl = 1
    else:
        has_mkl = 0
    L, perm, perm2, rev_perm, ss_args = _steadystate_power_liouvillian(L,
                                                                       ss_args, has_mkl)
    orig_nnz = L.nnz
    # start with all ones as RHS
    v = np.ones(n, dtype=complex)
    if ss_args['use_rcm']:
        v = v[np.ix_(perm2,)]

    # Do preconditioning
    if ss_args['M'] is None and ss_args['use_precond'] and \
            ss_args['method'] in ['power-gmres',
                                  'power-lgmres', 'power-bicgstab']:
        ss_args['M'], ss_args = _iterative_precondition(
            L, int(np.sqrt(n)), ss_args)
        if ss_args['M'] is None:
            warnings.warn("Preconditioning failed. Continuing without.",
                          UserWarning)

    ss_iters = {'iter': 0}

    def _iter_count(r):
        ss_iters['iter'] += 1
        return

    _power_start = time.time()
    # Get LU factors
    if ss_args['method'] == 'power':
        if settings.has_mkl:
            lu = mkl_splu(L)
        else:
            lu = splu(L, permc_spec=ss_args['permc_spec'],
                      diag_pivot_thresh=ss_args['diag_pivot_thresh'],
                      options=dict(ILU_MILU=ss_args['ILU_MILU']))

            if settings.debug and _scipy_check:
                L_nnz = lu.L.nnz
                U_nnz = lu.U.nnz
                logger.debug('L NNZ: %i ; U NNZ: %i' % (L_nnz, U_nnz))
                logger.debug('Fill factor: %f' % ((L_nnz + U_nnz) / orig_nnz))

    it = 0
    _tol = max(ss_args['tol'] / 10, 1e-15)  # Should make this user accessible
    while (la.norm(L * v, np.inf) > tol) and (it < maxiter):

        if ss_args['method'] == 'power':
            v = lu.solve(v)
        elif ss_args['method'] == 'power-gmres':
            v, check = gmres(L, v, tol=_tol, M=ss_args['M'],
                             x0=ss_args['x0'], restart=ss_args['restart'],
                             maxiter=ss_args['maxiter'], callback=_iter_count)
        elif ss_args['method'] == 'power-lgmres':
            v, check = lgmres(L, v, tol=_tol, M=ss_args['M'],
                              x0=ss_args['x0'], maxiter=ss_args['maxiter'],
                              callback=_iter_count)
        elif ss_args['method'] == 'power-bicgstab':
            v, check = bicgstab(L, v, tol=_tol, M=ss_args['M'],
                                x0=ss_args['x0'],
                                maxiter=ss_args['maxiter'], callback=_iter_count)
        else:
            raise Exception("Invalid iterative solver method.")

        v = v / la.norm(v, np.inf)
        it += 1
    if ss_args['method'] == 'power' and settings.has_mkl:
        lu.delete()
    if it >= maxiter:
        raise Exception('Failed to find steady state after ' +
                        str(maxiter) + ' iterations')
    _power_end = time.time()
    ss_args['info']['solution_time'] = _power_end - _power_start
    ss_args['info']['iterations'] = it
    if ss_args['return_info']:
        ss_args['info']['residual_norm'] = la.norm(L * v, np.inf)
    if settings.debug:
        logger.debug('Number of iterations: %i' % it)

    if ss_args['use_rcm']:
        v = v[np.ix_(rev_perm,)]

    # normalise according to type of problem
    if sflag:
        trow = v[::rhoss.shape[0] + 1]
        data = v / np.sum(trow)
    else:
        data = data / la.norm(v)

    data = dense2D_to_fastcsr_fmode(
        vec2mat(data), rhoss.shape[0], rhoss.shape[0])
    rhoss.data = 0.5 * (data + data.H)
    rhoss.isherm = True
    if ss_args['return_info']:
        return rhoss, ss_args['info']
    else:
        return rhoss
Пример #5
0
def _steadystate_iterative(L, ss_args):
    """
    Iterative steady state solver using the GMRES, LGMRES, or BICGSTAB
    algorithm and a sparse incomplete LU preconditioner.
    """
    ss_iters = {'iter': 0}

    def _iter_count(r):
        ss_iters['iter'] += 1
        return

    if settings.debug:
        logger.debug('Starting %s solver.' % ss_args['method'])

    dims = L.dims[0]
    n = int(np.sqrt(L.shape[0]))
    b = np.zeros(n ** 2)
    b[0] = ss_args['weight']

    L, perm, perm2, rev_perm, ss_args = _steadystate_LU_liouvillian(L, ss_args)
    if np.any(perm):
        b = b[np.ix_(perm,)]
    if np.any(perm2):
        b = b[np.ix_(perm2,)]

    use_solver(assumeSortedIndices=True)

    if ss_args['M'] is None and ss_args['use_precond']:
        ss_args['M'], ss_args = _iterative_precondition(L, n, ss_args)
        if ss_args['M'] is None:
            warnings.warn("Preconditioning failed. Continuing without.",
                          UserWarning)

    # Select iterative solver type
    _iter_start = time.time()
    if ss_args['method'] == 'iterative-gmres':
        v, check = gmres(L, b, tol=ss_args['tol'], M=ss_args['M'],
                            x0=ss_args['x0'], restart=ss_args['restart'],
                            maxiter=ss_args['maxiter'], callback=_iter_count)

    elif ss_args['method'] == 'iterative-lgmres':
        v, check = lgmres(L, b, tol=ss_args['tol'], M=ss_args['M'],
                          x0=ss_args['x0'], maxiter=ss_args['maxiter'],
                          callback=_iter_count)

    elif ss_args['method'] == 'iterative-bicgstab':
        v, check = bicgstab(L, b, tol=ss_args['tol'], M=ss_args['M'],
                            x0=ss_args['x0'],
                            maxiter=ss_args['maxiter'], callback=_iter_count)
    else:
        raise Exception("Invalid iterative solver method.")
    _iter_end = time.time()

    ss_args['info']['iter_time'] = _iter_end - _iter_start
    if ss_args['info']['precond_time'] is not None:
        ss_args['info']['solution_time'] = (ss_args['info']['iter_time'] +
                                            ss_args['info']['precond_time'])
    else:
        ss_args['info']['solution_time'] = ss_args['info']['iter_time']
    ss_args['info']['iterations'] = ss_iters['iter']
    if ss_args['return_info']:
        ss_args['info']['residual_norm'] = la.norm(b - L * v, np.inf)

    if settings.debug:
        logger.debug('Number of Iterations: %i' % ss_iters['iter'])
        logger.debug('Iteration. time: %f' % (_iter_end - _iter_start))

    if check > 0:
        raise Exception("Steadystate error: Did not reach tolerance after " +
                        str(ss_args['maxiter']) + " steps." +
                        "\nResidual norm: " +
                        str(ss_args['info']['residual_norm']))

    elif check < 0:
        raise Exception(
            "Steadystate error: Failed with fatal error: " + str(check) + ".")

    if ss_args['use_rcm']:
        v = v[np.ix_(rev_perm,)]

    data = vec2mat(v)
    data = 0.5 * (data + data.conj().T)
    if ss_args['return_info']:
        return Qobj(data, dims=dims, isherm=True), ss_args['info']
    else:
        return Qobj(data, dims=dims, isherm=True)
Пример #6
0
def _steadystate_direct_sparse(L, ss_args):
    """
    Direct solver that uses scipy sparse matrices
    """
    if settings.debug:
        logger.debug('Starting direct LU solver.')

    dims = L.dims[0]
    n = int(np.sqrt(L.shape[0]))
    b = np.zeros(n ** 2, dtype=complex)
    b[0] = ss_args['weight']

    if settings.has_mkl:
        has_mkl = 1
    else:
        has_mkl = 0

    L, perm, perm2, rev_perm, ss_args = _steadystate_LU_liouvillian(
        L, ss_args, has_mkl)
    if np.any(perm):
        b = b[np.ix_(perm,)]
    if np.any(perm2):
        b = b[np.ix_(perm2,)]

    ss_args['info']['permc_spec'] = ss_args['permc_spec']
    ss_args['info']['drop_tol'] = ss_args['drop_tol']
    ss_args['info']['diag_pivot_thresh'] = ss_args['diag_pivot_thresh']
    ss_args['info']['fill_factor'] = ss_args['fill_factor']
    ss_args['info']['ILU_MILU'] = ss_args['ILU_MILU']

    if not has_mkl:
        # Use superLU solver
        orig_nnz = L.nnz
        _direct_start = time.time()
        lu = splu(L, permc_spec=ss_args['permc_spec'],
                  diag_pivot_thresh=ss_args['diag_pivot_thresh'],
                  options=dict(ILU_MILU=ss_args['ILU_MILU']))
        v = lu.solve(b)
        _direct_end = time.time()
        ss_args['info']['solution_time'] = _direct_end - _direct_start
        if (settings.debug or ss_args['return_info']) and _scipy_check:
            L_nnz = lu.L.nnz
            U_nnz = lu.U.nnz
            ss_args['info']['l_nnz'] = L_nnz
            ss_args['info']['u_nnz'] = U_nnz
            ss_args['info']['lu_fill_factor'] = (L_nnz + U_nnz) / L.nnz
            if settings.debug:
                logger.debug('L NNZ: %i ; U NNZ: %i' % (L_nnz, U_nnz))
                logger.debug('Fill factor: %f' % ((L_nnz + U_nnz) / orig_nnz))

    else:  # Use MKL solver
        if len(ss_args['info']['perm']) != 0:
            in_perm = np.arange(n**2, dtype=np.int32)
        else:
            in_perm = None
        _direct_start = time.time()
        v = mkl_spsolve(L, b, perm=in_perm, verbose=ss_args['verbose'])
        _direct_end = time.time()
        ss_args['info']['solution_time'] = _direct_end - _direct_start

    if ss_args['return_info']:
        ss_args['info']['residual_norm'] = la.norm(b - L * v, np.inf)

    if ss_args['use_rcm']:
        v = v[np.ix_(rev_perm,)]

    data = dense2D_to_fastcsr_fmode(vec2mat(v), n, n)
    data = 0.5 * (data + data.H)
    if ss_args['return_info']:
        return Qobj(data, dims=dims, isherm=True), ss_args['info']
    else:
        return Qobj(data, dims=dims, isherm=True)
Пример #7
0
def _generic_ode_solve(r, rho0, tlist, e_ops, opt, progress_bar):
    """
    Internal function for solving ME. Solve an ODE which solver parameters
    already setup (r). Calculate the required expectation values or invoke
    callback function at each time step.
    """

    #
    # prepare output array
    #
    n_tsteps = len(tlist)
    e_sops_data = []

    output = Result()
    output.solver = "mesolve"
    output.times = tlist

    if opt.store_states:
        output.states = []

    if isinstance(e_ops, types.FunctionType):
        n_expt_op = 0
        expt_callback = True

    elif isinstance(e_ops, list):

        n_expt_op = len(e_ops)
        expt_callback = False

        if n_expt_op == 0:
            # fall back on storing states
            output.states = []
            opt.store_states = True
        else:
            output.expect = []
            output.num_expect = n_expt_op
            for op in e_ops:
                e_sops_data.append(spre(op).data)
                if op.isherm and rho0.isherm:
                    output.expect.append(np.zeros(n_tsteps))
                else:
                    output.expect.append(np.zeros(n_tsteps, dtype=complex))

    else:
        raise TypeError("Expectation parameter must be a list or a function")

    #
    # start evolution
    #
    progress_bar.start(n_tsteps)

    rho = Qobj(rho0)

    dt = np.diff(tlist)
    for t_idx, t in enumerate(tlist):
        progress_bar.update(t_idx)

        if not r.successful():
            raise Exception("ODE integration error: Try to increase "
                            "the allowed number of substeps by increasing "
                            "the nsteps parameter in the Options class.")

        if opt.store_states or expt_callback:
            rho.data = dense2D_to_fastcsr_fmode(vec2mat(r.y), rho.shape[0], rho.shape[1])

            if opt.store_states:
                output.states.append(Qobj(rho, isherm=True))

            if expt_callback:
                # use callback method
                e_ops(t, rho)

        for m in range(n_expt_op):
            if output.expect[m].dtype == complex:
                output.expect[m][t_idx] = expect_rho_vec(e_sops_data[m],
                                                         r.y, 0)
            else:
                output.expect[m][t_idx] = expect_rho_vec(e_sops_data[m],
                                                         r.y, 1)

        if t_idx < n_tsteps - 1:
            r.integrate(r.t + dt[t_idx])

    progress_bar.finished()

    if (not opt.rhs_reuse) and (config.tdname is not None):
        _cython_build_cleanup(config.tdname)

    if opt.store_final_state:
        rho.data = dense2D_to_fastcsr_fmode(vec2mat(r.y), rho.shape[0], rho.shape[1])
        output.final_state = Qobj(rho, dims=rho0.dims, isherm=True)

    return output
Пример #8
0
def _ode_super_func(t, y, data):
    ym = vec2mat(y)
    return (data*ym).ravel('F')