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* chore: Fix tests * chore: Fix failing ruff * chore: Fix ruff errors * chore: Fix ruff errors * chore: Fix ruff errors * chore: Fix ruff errors * chore: Fix ruff errors * chore: Fix ruff errors * chore: Fix ruff errors * chore: Fix ruff errors * chore: Fix ruff errors * chore: Fix ruff errors * chore: Fix ruff errors * [pre-commit.ci] auto fixes from pre-commit.com hooks for more information, see https://pre-commit.ci * chore: Fix ruff errors * chore: Fix ruff errors * [pre-commit.ci] auto fixes from pre-commit.com hooks for more information, see https://pre-commit.ci * Update cellular_automata/game_of_life.py Co-authored-by: Christian Clauss <cclauss@me.com> * chore: Update ruff version in pre-commit * chore: Fix ruff errors * Update edmonds_karp_multiple_source_and_sink.py * Update factorial.py * Update primelib.py * Update min_cost_string_conversion.py --------- Co-authored-by: pre-commit-ci[bot] <66853113+pre-commit-ci[bot]@users.noreply.github.com> Co-authored-by: Christian Clauss <cclauss@me.com>
194 lines
6.4 KiB
Python
194 lines
6.4 KiB
Python
class FlowNetwork:
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def __init__(self, graph, sources, sinks):
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self.source_index = None
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self.sink_index = None
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self.graph = graph
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self._normalize_graph(sources, sinks)
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self.vertices_count = len(graph)
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self.maximum_flow_algorithm = None
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# make only one source and one sink
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def _normalize_graph(self, sources, sinks):
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if sources is int:
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sources = [sources]
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if sinks is int:
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sinks = [sinks]
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if len(sources) == 0 or len(sinks) == 0:
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return
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self.source_index = sources[0]
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self.sink_index = sinks[0]
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# make fake vertex if there are more
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# than one source or sink
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if len(sources) > 1 or len(sinks) > 1:
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max_input_flow = 0
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for i in sources:
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max_input_flow += sum(self.graph[i])
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size = len(self.graph) + 1
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for room in self.graph:
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room.insert(0, 0)
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self.graph.insert(0, [0] * size)
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for i in sources:
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self.graph[0][i + 1] = max_input_flow
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self.source_index = 0
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size = len(self.graph) + 1
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for room in self.graph:
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room.append(0)
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self.graph.append([0] * size)
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for i in sinks:
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self.graph[i + 1][size - 1] = max_input_flow
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self.sink_index = size - 1
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def find_maximum_flow(self):
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if self.maximum_flow_algorithm is None:
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raise Exception("You need to set maximum flow algorithm before.")
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if self.source_index is None or self.sink_index is None:
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return 0
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self.maximum_flow_algorithm.execute()
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return self.maximum_flow_algorithm.getMaximumFlow()
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def set_maximum_flow_algorithm(self, algorithm):
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self.maximum_flow_algorithm = algorithm(self)
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class FlowNetworkAlgorithmExecutor:
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def __init__(self, flow_network):
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self.flow_network = flow_network
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self.verticies_count = flow_network.verticesCount
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self.source_index = flow_network.sourceIndex
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self.sink_index = flow_network.sinkIndex
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# it's just a reference, so you shouldn't change
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# it in your algorithms, use deep copy before doing that
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self.graph = flow_network.graph
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self.executed = False
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def execute(self):
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if not self.executed:
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self._algorithm()
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self.executed = True
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# You should override it
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def _algorithm(self):
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pass
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class MaximumFlowAlgorithmExecutor(FlowNetworkAlgorithmExecutor):
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def __init__(self, flow_network):
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super().__init__(flow_network)
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# use this to save your result
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self.maximum_flow = -1
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def get_maximum_flow(self):
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if not self.executed:
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raise Exception("You should execute algorithm before using its result!")
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return self.maximum_flow
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class PushRelabelExecutor(MaximumFlowAlgorithmExecutor):
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def __init__(self, flow_network):
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super().__init__(flow_network)
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self.preflow = [[0] * self.verticies_count for i in range(self.verticies_count)]
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self.heights = [0] * self.verticies_count
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self.excesses = [0] * self.verticies_count
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def _algorithm(self):
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self.heights[self.source_index] = self.verticies_count
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# push some substance to graph
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for nextvertex_index, bandwidth in enumerate(self.graph[self.source_index]):
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self.preflow[self.source_index][nextvertex_index] += bandwidth
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self.preflow[nextvertex_index][self.source_index] -= bandwidth
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self.excesses[nextvertex_index] += bandwidth
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# Relabel-to-front selection rule
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vertices_list = [
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i
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for i in range(self.verticies_count)
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if i not in {self.source_index, self.sink_index}
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]
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# move through list
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i = 0
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while i < len(vertices_list):
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vertex_index = vertices_list[i]
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previous_height = self.heights[vertex_index]
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self.process_vertex(vertex_index)
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if self.heights[vertex_index] > previous_height:
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# if it was relabeled, swap elements
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# and start from 0 index
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vertices_list.insert(0, vertices_list.pop(i))
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i = 0
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else:
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i += 1
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self.maximum_flow = sum(self.preflow[self.source_index])
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def process_vertex(self, vertex_index):
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while self.excesses[vertex_index] > 0:
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for neighbour_index in range(self.verticies_count):
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# if it's neighbour and current vertex is higher
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if (
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self.graph[vertex_index][neighbour_index]
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- self.preflow[vertex_index][neighbour_index]
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> 0
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and self.heights[vertex_index] > self.heights[neighbour_index]
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):
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self.push(vertex_index, neighbour_index)
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self.relabel(vertex_index)
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def push(self, from_index, to_index):
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preflow_delta = min(
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self.excesses[from_index],
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self.graph[from_index][to_index] - self.preflow[from_index][to_index],
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)
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self.preflow[from_index][to_index] += preflow_delta
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self.preflow[to_index][from_index] -= preflow_delta
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self.excesses[from_index] -= preflow_delta
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self.excesses[to_index] += preflow_delta
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def relabel(self, vertex_index):
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min_height = None
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for to_index in range(self.verticies_count):
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if (
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self.graph[vertex_index][to_index]
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- self.preflow[vertex_index][to_index]
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> 0
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) and (min_height is None or self.heights[to_index] < min_height):
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min_height = self.heights[to_index]
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if min_height is not None:
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self.heights[vertex_index] = min_height + 1
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if __name__ == "__main__":
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entrances = [0]
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exits = [3]
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# graph = [
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# [0, 0, 4, 6, 0, 0],
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# [0, 0, 5, 2, 0, 0],
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# [0, 0, 0, 0, 4, 4],
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# [0, 0, 0, 0, 6, 6],
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# [0, 0, 0, 0, 0, 0],
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# [0, 0, 0, 0, 0, 0],
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# ]
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graph = [[0, 7, 0, 0], [0, 0, 6, 0], [0, 0, 0, 8], [9, 0, 0, 0]]
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# prepare our network
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flow_network = FlowNetwork(graph, entrances, exits)
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# set algorithm
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flow_network.set_maximum_flow_algorithm(PushRelabelExecutor)
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# and calculate
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maximum_flow = flow_network.find_maximum_flow()
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print(f"maximum flow is {maximum_flow}")
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