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	### What problem does this PR solve? - remove repeat func ### Type of change - [x] Other (please describe): remove repeat func
		
			
				
	
	
		
			142 lines
		
	
	
		
			5.0 KiB
		
	
	
	
		
			Python
		
	
	
	
	
	
			
		
		
	
	
			142 lines
		
	
	
		
			5.0 KiB
		
	
	
	
		
			Python
		
	
	
	
	
	
# Copyright (c) 2024 Microsoft Corporation.
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# Licensed under the MIT License
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"""
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Reference:
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 - [graphrag](https://github.com/microsoft/graphrag)
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"""
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import logging
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from typing import Any, cast, List
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import html
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from graspologic.partition import hierarchical_leiden
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from graspologic.utils import largest_connected_component
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import networkx as nx
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from networkx import is_empty
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log = logging.getLogger(__name__)
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def _stabilize_graph(graph: nx.Graph) -> nx.Graph:
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    """Ensure an undirected graph with the same relationships will always be read the same way."""
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    fixed_graph = nx.DiGraph() if graph.is_directed() else nx.Graph()
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    sorted_nodes = graph.nodes(data=True)
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    sorted_nodes = sorted(sorted_nodes, key=lambda x: x[0])
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    fixed_graph.add_nodes_from(sorted_nodes)
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    edges = list(graph.edges(data=True))
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    # If the graph is undirected, we create the edges in a stable way, so we get the same results
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    # for example:
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    # A -> B
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    # in graph theory is the same as
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    # B -> A
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    # in an undirected graph
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    # however, this can lead to downstream issues because sometimes
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    # consumers read graph.nodes() which ends up being [A, B] and sometimes it's [B, A]
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    # but they base some of their logic on the order of the nodes, so the order ends up being important
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    # so we sort the nodes in the edge in a stable way, so that we always get the same order
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    if not graph.is_directed():
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        def _sort_source_target(edge):
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            source, target, edge_data = edge
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            if source > target:
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                temp = source
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                source = target
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                target = temp
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            return source, target, edge_data
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        edges = [_sort_source_target(edge) for edge in edges]
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    def _get_edge_key(source: Any, target: Any) -> str:
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        return f"{source} -> {target}"
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    edges = sorted(edges, key=lambda x: _get_edge_key(x[0], x[1]))
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    fixed_graph.add_edges_from(edges)
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    return fixed_graph
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def normalize_node_names(graph: nx.Graph | nx.DiGraph) -> nx.Graph | nx.DiGraph:
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    """Normalize node names."""
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    node_mapping = {node: html.unescape(node.upper().strip()) for node in graph.nodes()}  # type: ignore
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    return nx.relabel_nodes(graph, node_mapping)
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def stable_largest_connected_component(graph: nx.Graph) -> nx.Graph:
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    """Return the largest connected component of the graph, with nodes and edges sorted in a stable way."""
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    graph = graph.copy()
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    graph = cast(nx.Graph, largest_connected_component(graph))
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    graph = normalize_node_names(graph)
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    return _stabilize_graph(graph)
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def _compute_leiden_communities(
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        graph: nx.Graph | nx.DiGraph,
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        max_cluster_size: int,
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        use_lcc: bool,
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        seed=0xDEADBEEF,
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) -> dict[int, dict[str, int]]:
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    """Return Leiden root communities."""
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    results: dict[int, dict[str, int]] = {}
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    if is_empty(graph): return results
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    if use_lcc:
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        graph = stable_largest_connected_component(graph)
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    community_mapping = hierarchical_leiden(
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        graph, max_cluster_size=max_cluster_size, random_seed=seed
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    )
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    for partition in community_mapping:
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        results[partition.level] = results.get(partition.level, {})
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        results[partition.level][partition.node] = partition.cluster
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    return results
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def run(graph: nx.Graph, args: dict[str, Any]) -> dict[int, dict[str, dict]]:
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    """Run method definition."""
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    max_cluster_size = args.get("max_cluster_size", 12)
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    use_lcc = args.get("use_lcc", True)
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    if args.get("verbose", False):
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        log.info(
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            "Running leiden with max_cluster_size=%s, lcc=%s", max_cluster_size, use_lcc
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        )
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    if not graph.nodes(): return {}
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    node_id_to_community_map = _compute_leiden_communities(
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        graph=graph,
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        max_cluster_size=max_cluster_size,
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        use_lcc=use_lcc,
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        seed=args.get("seed", 0xDEADBEEF),
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    )
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    levels = args.get("levels")
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    # If they don't pass in levels, use them all
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    if levels is None:
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        levels = sorted(node_id_to_community_map.keys())
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    results_by_level: dict[int, dict[str, list[str]]] = {}
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    for level in levels:
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        result = {}
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        results_by_level[level] = result
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        for node_id, raw_community_id in node_id_to_community_map[level].items():
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            community_id = str(raw_community_id)
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            if community_id not in result:
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                result[community_id] = {"weight": 0, "nodes": []}
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            result[community_id]["nodes"].append(node_id)
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            result[community_id]["weight"] += graph.nodes[node_id].get("rank", 0) * graph.nodes[node_id].get("weight", 1)
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        weights = [comm["weight"] for _, comm in result.items()]
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        if not weights:continue
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        max_weight = max(weights)
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        for _, comm in result.items(): comm["weight"] /= max_weight
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    return results_by_level
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def add_community_info2graph(graph: nx.Graph, nodes: List[str], community_title):
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    for n in nodes:
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        if "communities" not in graph.nodes[n]:
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            graph.nodes[n]["communities"] = []
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        graph.nodes[n]["communities"].append(community_title)
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