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import networkx as nx |
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import json |
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from typing import Dict, List |
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def search_algorithm(src, dsts, G, num_partitions): |
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h = G.copy() |
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h.remove_edges_from(list(h.in_edges(src)) + list(nx.selfloop_edges(h))) |
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bc_topology = BroadCastTopology(src, dsts, num_partitions) |
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for dst in dsts: |
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path = nx.dijkstra_path(h, src, dst, weight="cost") |
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for i in range(0, len(path) - 1): |
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s, t = path[i], path[i + 1] |
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for j in range(bc_topology.num_partitions): |
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bc_topology.append_dst_partition_path(dst, j, [s, t, G[s][t]]) |
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return bc_topology |
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class SingleDstPath(Dict): |
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partition: int |
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edges: List[List] |
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class BroadCastTopology: |
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def __init__(self, src: str, dsts: List[str], num_partitions: int = 4, paths: Dict[str, SingleDstPath] = None): |
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self.src = src |
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self.dsts = dsts |
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self.num_partitions = num_partitions |
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if paths is not None: |
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self.paths = paths |
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self.set_graph() |
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else: |
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self.paths = {dst: {str(i): None for i in range(num_partitions)} for dst in dsts} |
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def get_paths(self): |
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print(f"now the set path is: {self.paths}") |
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return self.paths |
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def set_num_partitions(self, num_partitions: int): |
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self.num_partitions = num_partitions |
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def set_dst_partition_paths(self, dst: str, partition: int, paths: List[List]): |
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""" |
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Set paths for partition = partition to reach dst |
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""" |
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partition = str(partition) |
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self.paths[dst][partition] = paths |
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def append_dst_partition_path(self, dst: str, partition: int, path: List): |
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""" |
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Append path for partition = partition to reach dst |
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""" |
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partition = str(partition) |
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if self.paths[dst][partition] is None: |
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self.paths[dst][partition] = [] |
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self.paths[dst][partition].append(path) |
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def make_nx_graph(cost_path=None, throughput_path=None, num_vms=1): |
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""" |
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Default graph with capacity constraints and cost info |
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nodes: regions, edges: links |
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per edge: |
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throughput: max tput achievable (gbps) |
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cost: $/GB |
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flow: actual flow (gbps), must be < throughput, default = 0 |
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""" |
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if cost_path is None: |
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cost = pd.read_csv("profiles/cost.csv") |
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else: |
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cost = pd.read_csv(cost_path) |
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if throughput_path is None: |
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throughput = pd.read_csv("profiles/throughput.csv") |
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else: |
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throughput = pd.read_csv(throughput_path) |
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G = nx.DiGraph() |
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for _, row in throughput.iterrows(): |
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if row["src_region"] == row["dst_region"]: |
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continue |
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G.add_edge(row["src_region"], row["dst_region"], cost=None, throughput=num_vms * row["throughput_sent"] / 1e9) |
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for _, row in cost.iterrows(): |
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if row["src"] in G and row["dest"] in G[row["src"]]: |
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G[row["src"]][row["dest"]]["cost"] = row["cost"] |
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no_cost_pairs = [] |
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for edge in G.edges.data(): |
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src, dst = edge[0], edge[1] |
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if edge[-1]["cost"] is None: |
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no_cost_pairs.append((src, dst)) |
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print("Unable to get costs for: ", no_cost_pairs) |
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return G |
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def create_broadcast_topology(src: str, dsts: List[str], num_partitions: int = 4): |
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"""Create a broadcast topology instance""" |
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return BroadCastTopology(src, dsts, num_partitions) |
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def run_search_algorithm(src: str, dsts: List[str], G, num_partitions: int): |
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"""Run the search algorithm and return the topology""" |
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return search_algorithm(src, dsts, G, num_partitions) |
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