Exemplo n.º 1
0
def symmetry_filter(x, config, symmetry):
    """
    Return True if the candidate sublattice configuration has any symmetry
    which matches the phase model symmetry.

    Parameters
    ----------
    x : dict
        the candidate dataset 'solver' dict. Must contain the "sublattice_configurations" key
    config : list
        the configuration of interest: e.g. ['AL', ['AL', 'NI'], 'VA']
    symmetry : list
        tuple of tuples where each inner tuple is a group of equivalent
        sublattices. A value of ((0, 1), (2, 3, 4)) means that sublattices
        at indices 0 and 1 are symmetrically equivalent to each other and
        sublattices at indices 2, 3, and 4 are symetrically equivalent to
        each other.

    Returns
    -------
    bool

    """
    if x['mode'] == 'manual':
        if len(config) != len(x['sublattice_configurations'][0]):
            return False
        # If even one matches, it's a match
        # We do more filtering downstream
        for data_config in x['sublattice_configurations']:
            if canonicalize(config, symmetry) == canonicalize(data_config, symmetry):
                return True
    return False
Exemplo n.º 2
0
def get_data(comps, phase_name, configuration, symmetry, datasets, prop):
    """
    Return list of cleaned single phase datasets matching the passed arguments.

    Parameters
    ----------
    comps : list
        List of string component names
    phase_name : str
        Name of phase
    configuration : tuple
        Sublattice configuration as a tuple, e.g. ("CU", ("CU", "MG"))
    symmetry : list of lists
        List of sublattice indices with symmetry
    datasets : espei.utils.PickleableTinyDB
        Database of datasets to search for data
    prop : list
        String name of the property of interest.

    Returns
    -------
    list
        List of datasets matching the arguments.

    """
    desired_data = datasets.search((tinydb.where('output').test(lambda x: x in prop)) &
                                   (tinydb.where('components').test(lambda x: set(x).issubset(comps))) &
                                   (tinydb.where('solver').test(symmetry_filter, configuration, recursive_tuplify(symmetry) if symmetry else symmetry)) &
                                   (tinydb.where('phases') == [phase_name]))
    # This seems to be necessary because the 'values' member does not modify 'datasets'
    # But everything else does!
    desired_data = copy.deepcopy(desired_data)

    def recursive_zip(a, b):
        if isinstance(a, (list, tuple)) and isinstance(b, (list, tuple)):
            return list(recursive_zip(x, y) for x, y in zip(a, b))
        else:
            return list(zip(a, b))

    for idx, data in enumerate(desired_data):
        # Filter output values to only contain data for matching sublattice configurations
        matching_configs = np.array([(canonicalize(sblconf, symmetry) == canonicalize(configuration, symmetry))
                                     for sblconf in data['solver']['sublattice_configurations']])
        matching_configs = np.arange(len(data['solver']['sublattice_configurations']))[matching_configs]
        # Rewrite output values with filtered data
        desired_data[idx]['values'] = np.array(data['values'], dtype=np.float)[..., matching_configs]
        desired_data[idx]['solver']['sublattice_configurations'] = recursive_tuplify(np.array(data['solver']['sublattice_configurations'],
                                                                                              dtype=np.object)[matching_configs].tolist())
        try:
            desired_data[idx]['solver']['sublattice_occupancies'] = np.array(data['solver']['sublattice_occupancies'],
                                                                             dtype=np.object)[matching_configs].tolist()
        except KeyError:
            pass
        # Filter out temperatures below 298.15 K (for now, until better refstates exist)
        temp_filter = np.atleast_1d(data['conditions']['T']) >= 298.15
        desired_data[idx]['conditions']['T'] = np.atleast_1d(data['conditions']['T'])[temp_filter]
        # Don't use data['values'] because we rewrote it above; not sure what 'data' references now
        desired_data[idx]['values'] = desired_data[idx]['values'][..., temp_filter, :]
    return desired_data
def filter_sublattice_configurations(
        desired_data: List[Dataset],
        subl_model) -> List[Dataset]:  # TODO: symmetry support
    """Modify the desired_data to remove any configurations that cannot be represented by the sublattice model."""
    subl_model_sets = [set(subl) for subl in subl_model]
    for data in desired_data:
        matching_configs = [
        ]  # binary mask of whether a configuration is represented by the sublattice model
        for config in data['solver']['sublattice_configurations']:
            config = recursive_tuplify(canonicalize(config, None))
            if (len(config) == len(subl_model) and all(
                    subl.issuperset(tuplify(config_subl))
                    for subl, config_subl in zip(subl_model_sets, config))):
                matching_configs.append(True)
            else:
                matching_configs.append(False)
        matching_configs = np.asarray(matching_configs, dtype=np.bool_)

        # Rewrite output values with filtered data
        data['values'] = np.array(data['values'],
                                  dtype=np.float_)[..., matching_configs]
        data['solver']['sublattice_configurations'] = np.array(
            data['solver']['sublattice_configurations'],
            dtype=np.object_)[matching_configs].tolist()
        if 'sublattice_occupancies' in data['solver']:
            data['solver']['sublattice_occupancies'] = np.array(
                data['solver']['sublattice_occupancies'],
                dtype=np.object_)[matching_configs].tolist()
    return desired_data
Exemplo n.º 4
0
def filter_configurations(desired_data: List[Dataset], configuration,
                          symmetry) -> List[Dataset]:
    """
    Return non-equilibrium thermochemical datasets with invalid configurations removed.

    Parameters
    ----------
    desired_data : List[Dataset]
        List of non-equilibrium thermochemical datasets
    configuration : tuple
        Sublattice configuration as a tuple, e.g. ("CU", ("CU", "MG"))
    symmetry : list of lists
        List of sublattice indices with symmetry

    Returns
    -------
    List[Dataset]

    """
    for data in desired_data:
        # Filter output values to only contain data for matching sublattice configurations
        matching_configs = np.array([
            (canonicalize(sblconf,
                          symmetry) == canonicalize(configuration, symmetry))
            for sblconf in data['solver']['sublattice_configurations']
        ])
        matching_configs = np.arange(
            len(data['solver']['sublattice_configurations']))[matching_configs]
        # Rewrite output values with filtered data
        data['values'] = np.array(data['values'],
                                  dtype=np.float_)[..., matching_configs]
        data['solver']['sublattice_configurations'] = recursive_tuplify(
            np.array(data['solver']['sublattice_configurations'],
                     dtype=np.object_)[matching_configs].tolist())
        if 'sublattice_occupancies' in data['solver']:
            data['solver']['sublattice_occupancies'] = np.array(
                data['solver']['sublattice_occupancies'],
                dtype=np.object_)[matching_configs].tolist()
    return desired_data