view env/lib/python3.9/site-packages/networkx/readwrite/json_graph/adjacency.py @ 0:4f3585e2f14b draft default tip

"planemo upload commit 60cee0fc7c0cda8592644e1aad72851dec82c959"
author shellac
date Mon, 22 Mar 2021 18:12:50 +0000
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from itertools import chain
import networkx as nx

__all__ = ["adjacency_data", "adjacency_graph"]

_attrs = dict(id="id", key="key")


def adjacency_data(G, attrs=_attrs):
    """Returns data in adjacency format that is suitable for JSON serialization
    and use in Javascript documents.

    Parameters
    ----------
    G : NetworkX graph

    attrs : dict
        A dictionary that contains two keys 'id' and 'key'. The corresponding
        values provide the attribute names for storing NetworkX-internal graph
        data. The values should be unique. Default value:
        :samp:`dict(id='id', key='key')`.

        If some user-defined graph data use these attribute names as data keys,
        they may be silently dropped.

    Returns
    -------
    data : dict
       A dictionary with adjacency formatted data.

    Raises
    ------
    NetworkXError
        If values in attrs are not unique.

    Examples
    --------
    >>> from networkx.readwrite import json_graph
    >>> G = nx.Graph([(1, 2)])
    >>> data = json_graph.adjacency_data(G)

    To serialize with json

    >>> import json
    >>> s = json.dumps(data)

    Notes
    -----
    Graph, node, and link attributes will be written when using this format
    but attribute keys must be strings if you want to serialize the resulting
    data with JSON.

    The default value of attrs will be changed in a future release of NetworkX.

    See Also
    --------
    adjacency_graph, node_link_data, tree_data
    """
    multigraph = G.is_multigraph()
    id_ = attrs["id"]
    # Allow 'key' to be omitted from attrs if the graph is not a multigraph.
    key = None if not multigraph else attrs["key"]
    if id_ == key:
        raise nx.NetworkXError("Attribute names are not unique.")
    data = {}
    data["directed"] = G.is_directed()
    data["multigraph"] = multigraph
    data["graph"] = list(G.graph.items())
    data["nodes"] = []
    data["adjacency"] = []
    for n, nbrdict in G.adjacency():
        data["nodes"].append(dict(chain(G.nodes[n].items(), [(id_, n)])))
        adj = []
        if multigraph:
            for nbr, keys in nbrdict.items():
                for k, d in keys.items():
                    adj.append(dict(chain(d.items(), [(id_, nbr), (key, k)])))
        else:
            for nbr, d in nbrdict.items():
                adj.append(dict(chain(d.items(), [(id_, nbr)])))
        data["adjacency"].append(adj)
    return data


def adjacency_graph(data, directed=False, multigraph=True, attrs=_attrs):
    """Returns graph from adjacency data format.

    Parameters
    ----------
    data : dict
        Adjacency list formatted graph data

    Returns
    -------
    G : NetworkX graph
       A NetworkX graph object

    directed : bool
        If True, and direction not specified in data, return a directed graph.

    multigraph : bool
        If True, and multigraph not specified in data, return a multigraph.

    attrs : dict
        A dictionary that contains two keys 'id' and 'key'. The corresponding
        values provide the attribute names for storing NetworkX-internal graph
        data. The values should be unique. Default value:
        :samp:`dict(id='id', key='key')`.

    Examples
    --------
    >>> from networkx.readwrite import json_graph
    >>> G = nx.Graph([(1, 2)])
    >>> data = json_graph.adjacency_data(G)
    >>> H = json_graph.adjacency_graph(data)

    Notes
    -----
    The default value of attrs will be changed in a future release of NetworkX.

    See Also
    --------
    adjacency_graph, node_link_data, tree_data
    """
    multigraph = data.get("multigraph", multigraph)
    directed = data.get("directed", directed)
    if multigraph:
        graph = nx.MultiGraph()
    else:
        graph = nx.Graph()
    if directed:
        graph = graph.to_directed()
    id_ = attrs["id"]
    # Allow 'key' to be omitted from attrs if the graph is not a multigraph.
    key = None if not multigraph else attrs["key"]
    graph.graph = dict(data.get("graph", []))
    mapping = []
    for d in data["nodes"]:
        node_data = d.copy()
        node = node_data.pop(id_)
        mapping.append(node)
        graph.add_node(node)
        graph.nodes[node].update(node_data)
    for i, d in enumerate(data["adjacency"]):
        source = mapping[i]
        for tdata in d:
            target_data = tdata.copy()
            target = target_data.pop(id_)
            if not multigraph:
                graph.add_edge(source, target)
                graph[source][target].update(tdata)
            else:
                ky = target_data.pop(key, None)
                graph.add_edge(source, target, key=ky)
                graph[source][target][ky].update(tdata)
    return graph