194 lines
6.5 KiB
Python
194 lines
6.5 KiB
Python
# This file contains utilities for testing the dispatching feature
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# A full test of all dispatchable algorithms is performed by
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# modifying the pytest invocation and setting an environment variable
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# NETWORKX_TEST_BACKEND=nx-loopback pytest
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# This is comprehensive, but only tests the `test_override_dispatch`
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# function in networkx.classes.backends.
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# To test the `_dispatch` function directly, several tests scattered throughout
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# NetworkX have been augmented to test normal and dispatch mode.
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# Searching for `dispatch_interface` should locate the specific tests.
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import networkx as nx
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from networkx import DiGraph, Graph, MultiDiGraph, MultiGraph, PlanarEmbedding
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from networkx.classes.reportviews import NodeView
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class LoopbackGraph(Graph):
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__networkx_backend__ = "nx-loopback"
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class LoopbackDiGraph(DiGraph):
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__networkx_backend__ = "nx-loopback"
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class LoopbackMultiGraph(MultiGraph):
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__networkx_backend__ = "nx-loopback"
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class LoopbackMultiDiGraph(MultiDiGraph):
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__networkx_backend__ = "nx-loopback"
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class LoopbackPlanarEmbedding(PlanarEmbedding):
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__networkx_backend__ = "nx-loopback"
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def convert(graph):
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if isinstance(graph, PlanarEmbedding):
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return LoopbackPlanarEmbedding(graph)
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if isinstance(graph, MultiDiGraph):
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return LoopbackMultiDiGraph(graph)
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if isinstance(graph, MultiGraph):
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return LoopbackMultiGraph(graph)
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if isinstance(graph, DiGraph):
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return LoopbackDiGraph(graph)
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if isinstance(graph, Graph):
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return LoopbackGraph(graph)
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raise TypeError(f"Unsupported type of graph: {type(graph)}")
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class LoopbackDispatcher:
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def __getattr__(self, item):
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try:
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return nx.utils.backends._registered_algorithms[item].orig_func
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except KeyError:
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raise AttributeError(item) from None
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@staticmethod
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def convert_from_nx(
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graph,
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*,
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edge_attrs=None,
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node_attrs=None,
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preserve_edge_attrs=None,
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preserve_node_attrs=None,
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preserve_graph_attrs=None,
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name=None,
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graph_name=None,
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):
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if name in {
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# Raise if input graph changes
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"lexicographical_topological_sort",
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"topological_generations",
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"topological_sort",
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# Sensitive tests (iteration order matters)
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"dfs_labeled_edges",
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}:
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return graph
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if isinstance(graph, NodeView):
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# Convert to a Graph with only nodes (no edges)
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new_graph = Graph()
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new_graph.add_nodes_from(graph.items())
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graph = new_graph
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G = LoopbackGraph()
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elif not isinstance(graph, Graph):
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raise TypeError(
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f"Bad type for graph argument {graph_name} in {name}: {type(graph)}"
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)
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elif graph.__class__ in {Graph, LoopbackGraph}:
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G = LoopbackGraph()
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elif graph.__class__ in {DiGraph, LoopbackDiGraph}:
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G = LoopbackDiGraph()
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elif graph.__class__ in {MultiGraph, LoopbackMultiGraph}:
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G = LoopbackMultiGraph()
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elif graph.__class__ in {MultiDiGraph, LoopbackMultiDiGraph}:
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G = LoopbackMultiDiGraph()
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elif graph.__class__ in {PlanarEmbedding, LoopbackPlanarEmbedding}:
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G = LoopbackDiGraph() # or LoopbackPlanarEmbedding
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else:
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# It would be nice to be able to convert _AntiGraph to a regular Graph
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# nx.algorithms.approximation.kcomponents._AntiGraph
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# nx.algorithms.tree.branchings.MultiDiGraph_EdgeKey
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# nx.classes.tests.test_multidigraph.MultiDiGraphSubClass
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# nx.classes.tests.test_multigraph.MultiGraphSubClass
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G = graph.__class__()
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if preserve_graph_attrs:
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G.graph.update(graph.graph)
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if preserve_node_attrs:
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G.add_nodes_from(graph.nodes(data=True))
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elif node_attrs:
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G.add_nodes_from(
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(
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node,
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{
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k: datadict.get(k, default)
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for k, default in node_attrs.items()
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if default is not None or k in datadict
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},
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)
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for node, datadict in graph.nodes(data=True)
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)
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else:
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G.add_nodes_from(graph)
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if graph.is_multigraph():
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if preserve_edge_attrs:
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G.add_edges_from(
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(u, v, key, datadict)
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for u, nbrs in graph._adj.items()
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for v, keydict in nbrs.items()
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for key, datadict in keydict.items()
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)
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elif edge_attrs:
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G.add_edges_from(
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(
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u,
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v,
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key,
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{
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k: datadict.get(k, default)
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for k, default in edge_attrs.items()
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if default is not None or k in datadict
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},
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)
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for u, nbrs in graph._adj.items()
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for v, keydict in nbrs.items()
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for key, datadict in keydict.items()
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)
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else:
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G.add_edges_from(
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(u, v, key, {})
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for u, nbrs in graph._adj.items()
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for v, keydict in nbrs.items()
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for key, datadict in keydict.items()
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)
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elif preserve_edge_attrs:
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G.add_edges_from(graph.edges(data=True))
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elif edge_attrs:
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G.add_edges_from(
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(
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u,
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v,
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{
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k: datadict.get(k, default)
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for k, default in edge_attrs.items()
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if default is not None or k in datadict
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},
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)
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for u, v, datadict in graph.edges(data=True)
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)
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else:
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G.add_edges_from(graph.edges)
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return G
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@staticmethod
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def convert_to_nx(obj, *, name=None):
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return obj
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@staticmethod
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def on_start_tests(items):
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# Verify that items can be xfailed
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for item in items:
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assert hasattr(item, "add_marker")
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def can_run(self, name, args, kwargs):
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# It is unnecessary to define this function if algorithms are fully supported.
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# We include it for illustration purposes.
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return hasattr(self, name)
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dispatcher = LoopbackDispatcher()
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