Mercurial > repos > shellac > sam_consensus_v3
diff env/lib/python3.9/site-packages/networkx/readwrite/graphml.py @ 0:4f3585e2f14b draft default tip
"planemo upload commit 60cee0fc7c0cda8592644e1aad72851dec82c959"
author | shellac |
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date | Mon, 22 Mar 2021 18:12:50 +0000 |
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--- /dev/null Thu Jan 01 00:00:00 1970 +0000 +++ b/env/lib/python3.9/site-packages/networkx/readwrite/graphml.py Mon Mar 22 18:12:50 2021 +0000 @@ -0,0 +1,958 @@ +""" +******* +GraphML +******* +Read and write graphs in GraphML format. + +This implementation does not support mixed graphs (directed and unidirected +edges together), hyperedges, nested graphs, or ports. + +"GraphML is a comprehensive and easy-to-use file format for graphs. It +consists of a language core to describe the structural properties of a +graph and a flexible extension mechanism to add application-specific +data. Its main features include support of + + * directed, undirected, and mixed graphs, + * hypergraphs, + * hierarchical graphs, + * graphical representations, + * references to external data, + * application-specific attribute data, and + * light-weight parsers. + +Unlike many other file formats for graphs, GraphML does not use a +custom syntax. Instead, it is based on XML and hence ideally suited as +a common denominator for all kinds of services generating, archiving, +or processing graphs." + +http://graphml.graphdrawing.org/ + +Format +------ +GraphML is an XML format. See +http://graphml.graphdrawing.org/specification.html for the specification and +http://graphml.graphdrawing.org/primer/graphml-primer.html +for examples. +""" +import warnings +from collections import defaultdict + +from xml.etree.ElementTree import Element, ElementTree, tostring, fromstring + +try: + import lxml.etree as lxmletree +except ImportError: + lxmletree = None + +import networkx as nx +from networkx.utils import open_file + +__all__ = [ + "write_graphml", + "read_graphml", + "generate_graphml", + "write_graphml_xml", + "write_graphml_lxml", + "parse_graphml", + "GraphMLWriter", + "GraphMLReader", +] + + +@open_file(1, mode="wb") +def write_graphml_xml( + G, + path, + encoding="utf-8", + prettyprint=True, + infer_numeric_types=False, + named_key_ids=False, +): + """Write G in GraphML XML format to path + + Parameters + ---------- + G : graph + A networkx graph + path : file or string + File or filename to write. + Filenames ending in .gz or .bz2 will be compressed. + encoding : string (optional) + Encoding for text data. + prettyprint : bool (optional) + If True use line breaks and indenting in output XML. + infer_numeric_types : boolean + Determine if numeric types should be generalized. + For example, if edges have both int and float 'weight' attributes, + we infer in GraphML that both are floats. + named_key_ids : bool (optional) + If True use attr.name as value for key elements' id attribute. + + Examples + -------- + >>> G = nx.path_graph(4) + >>> nx.write_graphml(G, "test.graphml") + + Notes + ----- + This implementation does not support mixed graphs (directed + and unidirected edges together) hyperedges, nested graphs, or ports. + """ + writer = GraphMLWriter( + encoding=encoding, + prettyprint=prettyprint, + infer_numeric_types=infer_numeric_types, + named_key_ids=named_key_ids, + ) + writer.add_graph_element(G) + writer.dump(path) + + +@open_file(1, mode="wb") +def write_graphml_lxml( + G, + path, + encoding="utf-8", + prettyprint=True, + infer_numeric_types=False, + named_key_ids=False, +): + """Write G in GraphML XML format to path + + This function uses the LXML framework and should be faster than + the version using the xml library. + + Parameters + ---------- + G : graph + A networkx graph + path : file or string + File or filename to write. + Filenames ending in .gz or .bz2 will be compressed. + encoding : string (optional) + Encoding for text data. + prettyprint : bool (optional) + If True use line breaks and indenting in output XML. + infer_numeric_types : boolean + Determine if numeric types should be generalized. + For example, if edges have both int and float 'weight' attributes, + we infer in GraphML that both are floats. + named_key_ids : bool (optional) + If True use attr.name as value for key elements' id attribute. + + Examples + -------- + >>> G = nx.path_graph(4) + >>> nx.write_graphml_lxml(G, "fourpath.graphml") # doctest: +SKIP + + Notes + ----- + This implementation does not support mixed graphs (directed + and unidirected edges together) hyperedges, nested graphs, or ports. + """ + writer = GraphMLWriterLxml( + path, + graph=G, + encoding=encoding, + prettyprint=prettyprint, + infer_numeric_types=infer_numeric_types, + named_key_ids=named_key_ids, + ) + writer.dump() + + +def generate_graphml(G, encoding="utf-8", prettyprint=True, named_key_ids=False): + """Generate GraphML lines for G + + Parameters + ---------- + G : graph + A networkx graph + encoding : string (optional) + Encoding for text data. + prettyprint : bool (optional) + If True use line breaks and indenting in output XML. + named_key_ids : bool (optional) + If True use attr.name as value for key elements' id attribute. + + Examples + -------- + >>> G = nx.path_graph(4) + >>> linefeed = chr(10) # linefeed = \n + >>> s = linefeed.join(nx.generate_graphml(G)) # doctest: +SKIP + >>> for line in nx.generate_graphml(G): # doctest: +SKIP + ... print(line) + + Notes + ----- + This implementation does not support mixed graphs (directed and unidirected + edges together) hyperedges, nested graphs, or ports. + """ + writer = GraphMLWriter( + encoding=encoding, prettyprint=prettyprint, named_key_ids=named_key_ids + ) + writer.add_graph_element(G) + yield from str(writer).splitlines() + + +@open_file(0, mode="rb") +def read_graphml(path, node_type=str, edge_key_type=int, force_multigraph=False): + """Read graph in GraphML format from path. + + Parameters + ---------- + path : file or string + File or filename to write. + Filenames ending in .gz or .bz2 will be compressed. + + node_type: Python type (default: str) + Convert node ids to this type + + edge_key_type: Python type (default: int) + Convert graphml edge ids to this type. Multigraphs use id as edge key. + Non-multigraphs add to edge attribute dict with name "id". + + force_multigraph : bool (default: False) + If True, return a multigraph with edge keys. If False (the default) + return a multigraph when multiedges are in the graph. + + Returns + ------- + graph: NetworkX graph + If parallel edges are present or `force_multigraph=True` then + a MultiGraph or MultiDiGraph is returned. Otherwise a Graph/DiGraph. + The returned graph is directed if the file indicates it should be. + + Notes + ----- + Default node and edge attributes are not propagated to each node and edge. + They can be obtained from `G.graph` and applied to node and edge attributes + if desired using something like this: + + >>> default_color = G.graph["node_default"]["color"] # doctest: +SKIP + >>> for node, data in G.nodes(data=True): # doctest: +SKIP + ... if "color" not in data: + ... data["color"] = default_color + >>> default_color = G.graph["edge_default"]["color"] # doctest: +SKIP + >>> for u, v, data in G.edges(data=True): # doctest: +SKIP + ... if "color" not in data: + ... data["color"] = default_color + + This implementation does not support mixed graphs (directed and unidirected + edges together), hypergraphs, nested graphs, or ports. + + For multigraphs the GraphML edge "id" will be used as the edge + key. If not specified then they "key" attribute will be used. If + there is no "key" attribute a default NetworkX multigraph edge key + will be provided. + + Files with the yEd "yfiles" extension will can be read but the graphics + information is discarded. + + yEd compressed files ("file.graphmlz" extension) can be read by renaming + the file to "file.graphml.gz". + + """ + reader = GraphMLReader(node_type, edge_key_type, force_multigraph) + # need to check for multiple graphs + glist = list(reader(path=path)) + if len(glist) == 0: + # If no graph comes back, try looking for an incomplete header + header = b'<graphml xmlns="http://graphml.graphdrawing.org/xmlns">' + path.seek(0) + old_bytes = path.read() + new_bytes = old_bytes.replace(b"<graphml>", header) + glist = list(reader(string=new_bytes)) + if len(glist) == 0: + raise nx.NetworkXError("file not successfully read as graphml") + return glist[0] + + +def parse_graphml( + graphml_string, node_type=str, edge_key_type=int, force_multigraph=False +): + """Read graph in GraphML format from string. + + Parameters + ---------- + graphml_string : string + String containing graphml information + (e.g., contents of a graphml file). + + node_type: Python type (default: str) + Convert node ids to this type + + edge_key_type: Python type (default: int) + Convert graphml edge ids to this type. Multigraphs use id as edge key. + Non-multigraphs add to edge attribute dict with name "id". + + force_multigraph : bool (default: False) + If True, return a multigraph with edge keys. If False (the default) + return a multigraph when multiedges are in the graph. + + + Returns + ------- + graph: NetworkX graph + If no parallel edges are found a Graph or DiGraph is returned. + Otherwise a MultiGraph or MultiDiGraph is returned. + + Examples + -------- + >>> G = nx.path_graph(4) + >>> linefeed = chr(10) # linefeed = \n + >>> s = linefeed.join(nx.generate_graphml(G)) + >>> H = nx.parse_graphml(s) + + Notes + ----- + Default node and edge attributes are not propagated to each node and edge. + They can be obtained from `G.graph` and applied to node and edge attributes + if desired using something like this: + + >>> default_color = G.graph["node_default"]["color"] # doctest: +SKIP + >>> for node, data in G.nodes(data=True): # doctest: +SKIP + ... if "color" not in data: + ... data["color"] = default_color + >>> default_color = G.graph["edge_default"]["color"] # doctest: +SKIP + >>> for u, v, data in G.edges(data=True): # doctest: +SKIP + ... if "color" not in data: + ... data["color"] = default_color + + This implementation does not support mixed graphs (directed and unidirected + edges together), hypergraphs, nested graphs, or ports. + + For multigraphs the GraphML edge "id" will be used as the edge + key. If not specified then they "key" attribute will be used. If + there is no "key" attribute a default NetworkX multigraph edge key + will be provided. + + """ + reader = GraphMLReader(node_type, edge_key_type, force_multigraph) + # need to check for multiple graphs + glist = list(reader(string=graphml_string)) + if len(glist) == 0: + # If no graph comes back, try looking for an incomplete header + header = '<graphml xmlns="http://graphml.graphdrawing.org/xmlns">' + new_string = graphml_string.replace("<graphml>", header) + glist = list(reader(string=new_string)) + if len(glist) == 0: + raise nx.NetworkXError("file not successfully read as graphml") + return glist[0] + + +class GraphML: + NS_GRAPHML = "http://graphml.graphdrawing.org/xmlns" + NS_XSI = "http://www.w3.org/2001/XMLSchema-instance" + # xmlns:y="http://www.yworks.com/xml/graphml" + NS_Y = "http://www.yworks.com/xml/graphml" + SCHEMALOCATION = " ".join( + [ + "http://graphml.graphdrawing.org/xmlns", + "http://graphml.graphdrawing.org/xmlns/1.0/graphml.xsd", + ] + ) + + types = [ + (int, "integer"), # for Gephi GraphML bug + (str, "yfiles"), + (str, "string"), + (int, "int"), + (float, "float"), + (float, "double"), + (bool, "boolean"), + ] + + # These additions to types allow writing numpy types + try: + import numpy as np + except: + pass + else: + # prepend so that python types are created upon read (last entry wins) + types = [ + (np.float64, "float"), + (np.float32, "float"), + (np.float16, "float"), + (np.float_, "float"), + (np.int_, "int"), + (np.int8, "int"), + (np.int16, "int"), + (np.int32, "int"), + (np.int64, "int"), + (np.uint8, "int"), + (np.uint16, "int"), + (np.uint32, "int"), + (np.uint64, "int"), + (np.int_, "int"), + (np.intc, "int"), + (np.intp, "int"), + ] + types + + xml_type = dict(types) + python_type = dict(reversed(a) for a in types) + + # This page says that data types in GraphML follow Java(TM). + # http://graphml.graphdrawing.org/primer/graphml-primer.html#AttributesDefinition + # true and false are the only boolean literals: + # http://en.wikibooks.org/wiki/Java_Programming/Literals#Boolean_Literals + convert_bool = { + # We use data.lower() in actual use. + "true": True, + "false": False, + # Include integer strings for convenience. + "0": False, + 0: False, + "1": True, + 1: True, + } + + +class GraphMLWriter(GraphML): + def __init__( + self, + graph=None, + encoding="utf-8", + prettyprint=True, + infer_numeric_types=False, + named_key_ids=False, + ): + self.myElement = Element + + self.infer_numeric_types = infer_numeric_types + self.prettyprint = prettyprint + self.named_key_ids = named_key_ids + self.encoding = encoding + self.xml = self.myElement( + "graphml", + { + "xmlns": self.NS_GRAPHML, + "xmlns:xsi": self.NS_XSI, + "xsi:schemaLocation": self.SCHEMALOCATION, + }, + ) + self.keys = {} + self.attributes = defaultdict(list) + self.attribute_types = defaultdict(set) + + if graph is not None: + self.add_graph_element(graph) + + def __str__(self): + if self.prettyprint: + self.indent(self.xml) + s = tostring(self.xml).decode(self.encoding) + return s + + def attr_type(self, name, scope, value): + """Infer the attribute type of data named name. Currently this only + supports inference of numeric types. + + If self.infer_numeric_types is false, type is used. Otherwise, pick the + most general of types found across all values with name and scope. This + means edges with data named 'weight' are treated separately from nodes + with data named 'weight'. + """ + if self.infer_numeric_types: + types = self.attribute_types[(name, scope)] + + if len(types) > 1: + types = {self.xml_type[t] for t in types} + if "string" in types: + return str + elif "float" in types or "double" in types: + return float + else: + return int + else: + return list(types)[0] + else: + return type(value) + + def get_key(self, name, attr_type, scope, default): + keys_key = (name, attr_type, scope) + try: + return self.keys[keys_key] + except KeyError: + if self.named_key_ids: + new_id = name + else: + new_id = f"d{len(list(self.keys))}" + + self.keys[keys_key] = new_id + key_kwargs = { + "id": new_id, + "for": scope, + "attr.name": name, + "attr.type": attr_type, + } + key_element = self.myElement("key", **key_kwargs) + # add subelement for data default value if present + if default is not None: + default_element = self.myElement("default") + default_element.text = str(default) + key_element.append(default_element) + self.xml.insert(0, key_element) + return new_id + + def add_data(self, name, element_type, value, scope="all", default=None): + """ + Make a data element for an edge or a node. Keep a log of the + type in the keys table. + """ + if element_type not in self.xml_type: + msg = f"GraphML writer does not support {element_type} as data values." + raise nx.NetworkXError(msg) + keyid = self.get_key(name, self.xml_type[element_type], scope, default) + data_element = self.myElement("data", key=keyid) + data_element.text = str(value) + return data_element + + def add_attributes(self, scope, xml_obj, data, default): + """Appends attribute data to edges or nodes, and stores type information + to be added later. See add_graph_element. + """ + for k, v in data.items(): + self.attribute_types[(str(k), scope)].add(type(v)) + self.attributes[xml_obj].append([k, v, scope, default.get(k)]) + + def add_nodes(self, G, graph_element): + default = G.graph.get("node_default", {}) + for node, data in G.nodes(data=True): + node_element = self.myElement("node", id=str(node)) + self.add_attributes("node", node_element, data, default) + graph_element.append(node_element) + + def add_edges(self, G, graph_element): + if G.is_multigraph(): + for u, v, key, data in G.edges(data=True, keys=True): + edge_element = self.myElement( + "edge", source=str(u), target=str(v), id=str(key) + ) + default = G.graph.get("edge_default", {}) + self.add_attributes("edge", edge_element, data, default) + graph_element.append(edge_element) + else: + for u, v, data in G.edges(data=True): + edge_element = self.myElement("edge", source=str(u), target=str(v)) + default = G.graph.get("edge_default", {}) + self.add_attributes("edge", edge_element, data, default) + graph_element.append(edge_element) + + def add_graph_element(self, G): + """ + Serialize graph G in GraphML to the stream. + """ + if G.is_directed(): + default_edge_type = "directed" + else: + default_edge_type = "undirected" + + graphid = G.graph.pop("id", None) + if graphid is None: + graph_element = self.myElement("graph", edgedefault=default_edge_type) + else: + graph_element = self.myElement( + "graph", edgedefault=default_edge_type, id=graphid + ) + default = {} + data = { + k: v + for (k, v) in G.graph.items() + if k not in ["node_default", "edge_default"] + } + self.add_attributes("graph", graph_element, data, default) + self.add_nodes(G, graph_element) + self.add_edges(G, graph_element) + + # self.attributes contains a mapping from XML Objects to a list of + # data that needs to be added to them. + # We postpone processing in order to do type inference/generalization. + # See self.attr_type + for (xml_obj, data) in self.attributes.items(): + for (k, v, scope, default) in data: + xml_obj.append( + self.add_data( + str(k), self.attr_type(k, scope, v), str(v), scope, default + ) + ) + self.xml.append(graph_element) + + def add_graphs(self, graph_list): + """ Add many graphs to this GraphML document. """ + for G in graph_list: + self.add_graph_element(G) + + def dump(self, stream): + if self.prettyprint: + self.indent(self.xml) + document = ElementTree(self.xml) + document.write(stream, encoding=self.encoding, xml_declaration=True) + + def indent(self, elem, level=0): + # in-place prettyprint formatter + i = "\n" + level * " " + if len(elem): + if not elem.text or not elem.text.strip(): + elem.text = i + " " + if not elem.tail or not elem.tail.strip(): + elem.tail = i + for elem in elem: + self.indent(elem, level + 1) + if not elem.tail or not elem.tail.strip(): + elem.tail = i + else: + if level and (not elem.tail or not elem.tail.strip()): + elem.tail = i + + +class IncrementalElement: + """Wrapper for _IncrementalWriter providing an Element like interface. + + This wrapper does not intend to be a complete implementation but rather to + deal with those calls used in GraphMLWriter. + """ + + def __init__(self, xml, prettyprint): + self.xml = xml + self.prettyprint = prettyprint + + def append(self, element): + self.xml.write(element, pretty_print=self.prettyprint) + + +class GraphMLWriterLxml(GraphMLWriter): + def __init__( + self, + path, + graph=None, + encoding="utf-8", + prettyprint=True, + infer_numeric_types=False, + named_key_ids=False, + ): + self.myElement = lxmletree.Element + + self._encoding = encoding + self._prettyprint = prettyprint + self.named_key_ids = named_key_ids + self.infer_numeric_types = infer_numeric_types + + self._xml_base = lxmletree.xmlfile(path, encoding=encoding) + self._xml = self._xml_base.__enter__() + self._xml.write_declaration() + + # We need to have a xml variable that support insertion. This call is + # used for adding the keys to the document. + # We will store those keys in a plain list, and then after the graph + # element is closed we will add them to the main graphml element. + self.xml = [] + self._keys = self.xml + self._graphml = self._xml.element( + "graphml", + { + "xmlns": self.NS_GRAPHML, + "xmlns:xsi": self.NS_XSI, + "xsi:schemaLocation": self.SCHEMALOCATION, + }, + ) + self._graphml.__enter__() + self.keys = {} + self.attribute_types = defaultdict(set) + + if graph is not None: + self.add_graph_element(graph) + + def add_graph_element(self, G): + """ + Serialize graph G in GraphML to the stream. + """ + if G.is_directed(): + default_edge_type = "directed" + else: + default_edge_type = "undirected" + + graphid = G.graph.pop("id", None) + if graphid is None: + graph_element = self._xml.element("graph", edgedefault=default_edge_type) + else: + graph_element = self._xml.element( + "graph", edgedefault=default_edge_type, id=graphid + ) + + # gather attributes types for the whole graph + # to find the most general numeric format needed. + # Then pass through attributes to create key_id for each. + graphdata = { + k: v + for k, v in G.graph.items() + if k not in ("node_default", "edge_default") + } + node_default = G.graph.get("node_default", {}) + edge_default = G.graph.get("edge_default", {}) + # Graph attributes + for k, v in graphdata.items(): + self.attribute_types[(str(k), "graph")].add(type(v)) + for k, v in graphdata.items(): + element_type = self.xml_type[self.attr_type(k, "graph", v)] + self.get_key(str(k), element_type, "graph", None) + # Nodes and data + for node, d in G.nodes(data=True): + for k, v in d.items(): + self.attribute_types[(str(k), "node")].add(type(v)) + for node, d in G.nodes(data=True): + for k, v in d.items(): + T = self.xml_type[self.attr_type(k, "node", v)] + self.get_key(str(k), T, "node", node_default.get(k)) + # Edges and data + if G.is_multigraph(): + for u, v, ekey, d in G.edges(keys=True, data=True): + for k, v in d.items(): + self.attribute_types[(str(k), "edge")].add(type(v)) + for u, v, ekey, d in G.edges(keys=True, data=True): + for k, v in d.items(): + T = self.xml_type[self.attr_type(k, "edge", v)] + self.get_key(str(k), T, "edge", edge_default.get(k)) + else: + for u, v, d in G.edges(data=True): + for k, v in d.items(): + self.attribute_types[(str(k), "edge")].add(type(v)) + for u, v, d in G.edges(data=True): + for k, v in d.items(): + T = self.xml_type[self.attr_type(k, "edge", v)] + self.get_key(str(k), T, "edge", edge_default.get(k)) + + # Now add attribute keys to the xml file + for key in self.xml: + self._xml.write(key, pretty_print=self._prettyprint) + + # The incremental_writer writes each node/edge as it is created + incremental_writer = IncrementalElement(self._xml, self._prettyprint) + with graph_element: + self.add_attributes("graph", incremental_writer, graphdata, {}) + self.add_nodes(G, incremental_writer) # adds attributes too + self.add_edges(G, incremental_writer) # adds attributes too + + def add_attributes(self, scope, xml_obj, data, default): + """Appends attribute data.""" + for k, v in data.items(): + data_element = self.add_data( + str(k), self.attr_type(str(k), scope, v), str(v), scope, default.get(k) + ) + xml_obj.append(data_element) + + def __str__(self): + return object.__str__(self) + + def dump(self): + self._graphml.__exit__(None, None, None) + self._xml_base.__exit__(None, None, None) + + +# Choose a writer function for default +if lxmletree is None: + write_graphml = write_graphml_xml +else: + write_graphml = write_graphml_lxml + + +class GraphMLReader(GraphML): + """Read a GraphML document. Produces NetworkX graph objects.""" + + def __init__(self, node_type=str, edge_key_type=int, force_multigraph=False): + self.node_type = node_type + self.edge_key_type = edge_key_type + self.multigraph = force_multigraph # If False, test for multiedges + self.edge_ids = {} # dict mapping (u,v) tuples to edge id attributes + + def __call__(self, path=None, string=None): + if path is not None: + self.xml = ElementTree(file=path) + elif string is not None: + self.xml = fromstring(string) + else: + raise ValueError("Must specify either 'path' or 'string' as kwarg") + (keys, defaults) = self.find_graphml_keys(self.xml) + for g in self.xml.findall(f"{{{self.NS_GRAPHML}}}graph"): + yield self.make_graph(g, keys, defaults) + + def make_graph(self, graph_xml, graphml_keys, defaults, G=None): + # set default graph type + edgedefault = graph_xml.get("edgedefault", None) + if G is None: + if edgedefault == "directed": + G = nx.MultiDiGraph() + else: + G = nx.MultiGraph() + # set defaults for graph attributes + G.graph["node_default"] = {} + G.graph["edge_default"] = {} + for key_id, value in defaults.items(): + key_for = graphml_keys[key_id]["for"] + name = graphml_keys[key_id]["name"] + python_type = graphml_keys[key_id]["type"] + if key_for == "node": + G.graph["node_default"].update({name: python_type(value)}) + if key_for == "edge": + G.graph["edge_default"].update({name: python_type(value)}) + # hyperedges are not supported + hyperedge = graph_xml.find(f"{{{self.NS_GRAPHML}}}hyperedge") + if hyperedge is not None: + raise nx.NetworkXError("GraphML reader doesn't support hyperedges") + # add nodes + for node_xml in graph_xml.findall(f"{{{self.NS_GRAPHML}}}node"): + self.add_node(G, node_xml, graphml_keys, defaults) + # add edges + for edge_xml in graph_xml.findall(f"{{{self.NS_GRAPHML}}}edge"): + self.add_edge(G, edge_xml, graphml_keys) + # add graph data + data = self.decode_data_elements(graphml_keys, graph_xml) + G.graph.update(data) + + # switch to Graph or DiGraph if no parallel edges were found + if self.multigraph: + return G + + G = nx.DiGraph(G) if G.is_directed() else nx.Graph(G) + # add explicit edge "id" from file as attribute in NX graph. + nx.set_edge_attributes(G, values=self.edge_ids, name="id") + return G + + def add_node(self, G, node_xml, graphml_keys, defaults): + """Add a node to the graph. + """ + # warn on finding unsupported ports tag + ports = node_xml.find(f"{{{self.NS_GRAPHML}}}port") + if ports is not None: + warnings.warn("GraphML port tag not supported.") + # find the node by id and cast it to the appropriate type + node_id = self.node_type(node_xml.get("id")) + # get data/attributes for node + data = self.decode_data_elements(graphml_keys, node_xml) + G.add_node(node_id, **data) + # get child nodes + if node_xml.attrib.get("yfiles.foldertype") == "group": + graph_xml = node_xml.find(f"{{{self.NS_GRAPHML}}}graph") + self.make_graph(graph_xml, graphml_keys, defaults, G) + + def add_edge(self, G, edge_element, graphml_keys): + """Add an edge to the graph. + """ + # warn on finding unsupported ports tag + ports = edge_element.find(f"{{{self.NS_GRAPHML}}}port") + if ports is not None: + warnings.warn("GraphML port tag not supported.") + + # raise error if we find mixed directed and undirected edges + directed = edge_element.get("directed") + if G.is_directed() and directed == "false": + msg = "directed=false edge found in directed graph." + raise nx.NetworkXError(msg) + if (not G.is_directed()) and directed == "true": + msg = "directed=true edge found in undirected graph." + raise nx.NetworkXError(msg) + + source = self.node_type(edge_element.get("source")) + target = self.node_type(edge_element.get("target")) + data = self.decode_data_elements(graphml_keys, edge_element) + # GraphML stores edge ids as an attribute + # NetworkX uses them as keys in multigraphs too if no key + # attribute is specified + edge_id = edge_element.get("id") + if edge_id: + # self.edge_ids is used by `make_graph` method for non-multigraphs + self.edge_ids[source, target] = edge_id + try: + edge_id = self.edge_key_type(edge_id) + except ValueError: # Could not convert. + pass + else: + edge_id = data.get("key") + + if G.has_edge(source, target): + # mark this as a multigraph + self.multigraph = True + + # Use add_edges_from to avoid error with add_edge when `'key' in data` + # Note there is only one edge here... + G.add_edges_from([(source, target, edge_id, data)]) + + def decode_data_elements(self, graphml_keys, obj_xml): + """Use the key information to decode the data XML if present.""" + data = {} + for data_element in obj_xml.findall(f"{{{self.NS_GRAPHML}}}data"): + key = data_element.get("key") + try: + data_name = graphml_keys[key]["name"] + data_type = graphml_keys[key]["type"] + except KeyError as e: + raise nx.NetworkXError(f"Bad GraphML data: no key {key}") from e + text = data_element.text + # assume anything with subelements is a yfiles extension + if text is not None and len(list(data_element)) == 0: + if data_type == bool: + # Ignore cases. + # http://docs.oracle.com/javase/6/docs/api/java/lang/ + # Boolean.html#parseBoolean%28java.lang.String%29 + data[data_name] = self.convert_bool[text.lower()] + else: + data[data_name] = data_type(text) + elif len(list(data_element)) > 0: + # Assume yfiles as subelements, try to extract node_label + node_label = None + for node_type in ["ShapeNode", "SVGNode", "ImageNode"]: + pref = f"{{{self.NS_Y}}}{node_type}/{{{self.NS_Y}}}" + geometry = data_element.find(f"{pref}Geometry") + if geometry is not None: + data["x"] = geometry.get("x") + data["y"] = geometry.get("y") + if node_label is None: + node_label = data_element.find(f"{pref}NodeLabel") + if node_label is not None: + data["label"] = node_label.text + + # check all the different types of edges avaivable in yEd. + for e in [ + "PolyLineEdge", + "SplineEdge", + "QuadCurveEdge", + "BezierEdge", + "ArcEdge", + ]: + pref = f"{{{self.NS_Y}}}{e}/{{{self.NS_Y}}}" + edge_label = data_element.find(f"{pref}EdgeLabel") + if edge_label is not None: + break + + if edge_label is not None: + data["label"] = edge_label.text + return data + + def find_graphml_keys(self, graph_element): + """Extracts all the keys and key defaults from the xml. + """ + graphml_keys = {} + graphml_key_defaults = {} + for k in graph_element.findall(f"{{{self.NS_GRAPHML}}}key"): + attr_id = k.get("id") + attr_type = k.get("attr.type") + attr_name = k.get("attr.name") + yfiles_type = k.get("yfiles.type") + if yfiles_type is not None: + attr_name = yfiles_type + attr_type = "yfiles" + if attr_type is None: + attr_type = "string" + warnings.warn(f"No key type for id {attr_id}. Using string") + if attr_name is None: + raise nx.NetworkXError(f"Unknown key for id {attr_id}.") + graphml_keys[attr_id] = { + "name": attr_name, + "type": self.python_type[attr_type], + "for": k.get("for"), + } + # check for "default" subelement of key element + default = k.find(f"{{{self.NS_GRAPHML}}}default") + if default is not None: + graphml_key_defaults[attr_id] = default.text + return graphml_keys, graphml_key_defaults