Exemplo n.º 1
0
def dump_graph(fileobj, n, p, g, **kwargs):
  """Creates and dumps a graph to the open pickle file.

  NOTE: It is important to create the graph here, in order to be garbage
        collected upon exit.
  """
  adj_list, _ = graph.random_graph(n=n,
                                   p_0=p / 10,
                                   random_seed=g,
                                   **kwargs)
  pickle.dump(adj_list, fileobj)
Exemplo n.º 2
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def graph_density_contour(n,
                          graphs_per_measure=10,
                          directed=True,
                          weights_on="edges-and-nodes"):
  """Plots density vs sigmoid_center & initial_probability: d(c, p_0)."""
  import numpy as np
  densities = [[0] * 10 for _ in range(10)]
  # The density of each graph type is taken as the mean density of the
  # <graphs_per_measure> graphs.
  densities_per_graph_type = []

  for c in range(1, 11):
    for p in range(1, 11):
      for g in range(graphs_per_measure):
        print((f"Graph batch: {(c - 1) * 10 + p}/100"
               f"   Instance: {g + 1}/{graphs_per_measure}"),
              end='\r')
        G, probs, edge_lengths, edge_lengths_true = \
            graph.random_graph(n,
                               directed=directed,
                               weights_on=weights_on,
                               random_seed=1,
                               center_portion=c / 10,
                               gradient=1,
                               p_0=p / 10,
                               get_probability_distribution=True)
        densities_per_graph_type.append(
            graph.density(n, len(edge_lengths_true), directed)
        )
      densities[c - 1][p - 1] = mean(densities_per_graph_type)
      densities_per_graph_type.clear()

  plt.figure(figsize=(10, 10), dpi=200)
  x = y = np.arange(0.1, 1.1, 0.1)
  X, Y = np.meshgrid(x, y)
  cm = plt.cm.get_cmap('viridis')
  levels = np.arange(0, 1.1, 0.1)

  cp = plt.contour(X, Y, densities,
                   levels=levels, colors="gainsboro", linewidths=0.2)
  plt.clabel(cp, fmt="%1.1f", fontsize=10, colors="gainsboro",
             rightside_up=False, manual=True)
  plt.contourf(X, Y, densities, cmap=cm, levels=levels)

  plt.xlabel("${p_0}$", fontsize=10)
  plt.ylabel("sigmoid center portion", fontsize=10)
  plt.tick_params(axis='both', which='major', labelsize=10)
  plot_title = ("Graph density\n"
                f"n: {n}   random-graphs/measure: {graphs_per_measure}")
  plt.title(plot_title, fontsize=12)
  plt.show()
def measure(n, i, modes, problem, k, times, failing, online, **kwargs):
    """Replacement-paths search timer on the <i>th graph and for all the <modes>.

  It is important that upon function exit, the graphs are garbage collected.
  """
    adj_list, _ = graph.random_graph(n=n,
                                     random_seed=i,
                                     gradient=0.3,
                                     center_portion=0.15,
                                     p_0=0.3,
                                     **kwargs)

    init_config = {
        "adj_list": adj_list,
        "adj_list_reverse": graph.adj_list_reversed(adj_list),
        "source": 1,
        "sink": n
    }

    for solver, m in modes.items():
        mode = {
            "bidirectional": m[0],
            "parallel": m[1],
            "dynamic": m[2],
            "failing": failing,
            "online": online,
            "verbose": 0
        }
        start = timer()
        if problem == "k-shortest-paths":
            paths = core.k_shortest_paths(k, mode, init_config)
        else:
            paths = core.replacement_paths(mode, init_config)
        end = timer()
        times[solver].append(end - start)

    return times
Exemplo n.º 4
0
def main(ctx, path, nodetype, comments, delimiter, encoding, source, target, n,
         weighted, directed, weights_on, max_edge_weight, max_node_weight, K,
         yen, lawler, bidirectional, parallel, dynamic, random_seed,
         layout_seed, show_graph, save_graph, verbose):

    # 1. Preprocessing
    if path is None:
        decoder = None
        source = int(source) if source else 1
        target = int(target) if target else n
        adj_list, G = graph.random_graph(n=n,
                                         weighted=weighted,
                                         directed=directed,
                                         weights_on=weights_on,
                                         max_edge_weight=max_edge_weight,
                                         max_node_weight=max_node_weight,
                                         random_seed=random_seed)
    else:
        if (source is None) or (target is None):
            raise Exception(
                "Both source and target sould be defined via the -s and"
                " -t options.")
        nodetype = utils.str_to_type(nodetype)
        read_graph_config = {
            "path": path,
            "nodetype": nodetype,
            "comments": comments,
            "delimiter": delimiter,
            "encoding": encoding
        }
        if directed:
            read_graph_config["create_using"] = nx.DiGraph
        else:
            read_graph_config["create_using"] = nx.Graph

        adj_list, G, encoder, decoder = io.read_graph(read_graph_config,
                                                      weighted)
        source = encoder[nodetype(source)]
        target = encoder[nodetype(target)]

    if dynamic:
        bidirectional = True
    if bidirectional:
        adj_list_reverse = graph.adj_list_reversed(adj_list)
    else:
        adj_list_reverse = None

    init_config = {
        "adj_list": adj_list,
        "adj_list_reverse": adj_list_reverse,
        "source": source,
        "sink": target
    }
    mode = {
        "bidirectional": bidirectional,
        "parallel": parallel,
        "dynamic": dynamic,
        "failing": "edges",
        "online": True,
        "verbose": verbose
    }
    ctx_config = {
        "init_config": init_config,
        "mode": mode,
        "G": G,
        "layout_seed": layout_seed,
        "show_graph": show_graph,
        "save_graph": save_graph,
        "decoder": decoder
    }
    if ctx.invoked_subcommand is not None:
        if ctx.invoked_subcommand == "dynamic_graph_demo":
            ctx_config["random_seed"] = random_seed
        ctx.ensure_object(dict)
        ctx.obj.update(ctx_config)
        return

    mode.update({"yen_": yen, "lawler": lawler})

    # 2. Paths generation
    k_paths = core.k_shortest_paths(K, mode, init_config)

    if decoder:
        k_paths = graph.decode_path_nodes(k_paths, decoder)

    # 3. Post-processing
    if verbose:
        post.print_paths(k_paths)
    if save_graph or show_graph:
        ctx_config.pop("init_config")
        ctx_config.pop("decoder")
        post.plot_paths(paths_data=k_paths, **ctx_config)
Exemplo n.º 5
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def main():
    n = 100
    directed = False
    weights_on = "edges-and-nodes"
    c = 0.3
    gradient = 0.5
    random_seed = 1
    if directed:
        m_max = n * (n - 1)
    else:
        m_max = n * (n - 1) // 2
    center = c * (n - 1)

    G_1, probs_1, edge_lengths_1, edge_lengths_true_1 = random_graph(
        n,
        directed=directed,
        weights_on=weights_on,
        random_seed=random_seed,
        gradient=gradient,
        center_portion=c,
        p_0=1,
        get_probability_distribution=True)
    m_1 = G_1.number_of_edges()

    G_2, probs_2, edge_lengths_2, edge_lengths_true_2 = random_graph(
        n,
        directed=directed,
        weights_on=weights_on,
        random_seed=random_seed,
        gradient=gradient,
        center_portion=c,
        p_0=0.7,
        get_probability_distribution=True)
    m_2 = G_2.number_of_edges()

    axes_title_fontsize = 12

    fig1, ax1 = plt.subplots(1, 3, figsize=(10, 5), dpi=200)
    # a
    ax1[0].scatter(edge_lengths_1, probs_1, s=10)
    ax1[0].set_ylim(0, 1.1)
    ax1[0].set_xlim(0, 110)
    # ax1[0].set_ylabel("p(x)", rotation=False, fontsize=10)
    ax1[0].set_title(
        "a)  $\mathregular{p_0}$: 1.0" +
        f", λ: {gradient}, c: {c}",  # noqa: W605
        fontsize=axes_title_fontsize)
    # b
    ax1[1].hist(edge_lengths_1, bins=range(1, 102))
    ax1[1].set_ylim(0, 110)
    ax1[1].set_xlim(0, 110)
    # complete graph edge distance frequency
    ax1[1].set_title("b)  f'(x) = 100 - x", fontsize=axes_title_fontsize)
    # c
    ax1[2].hist(edge_lengths_true_1, bins=range(1, 102))
    ax1[2].set_ylim(0, 110)
    ax1[2].set_xlim(0, 110)
    ax1[2].set_title(f"c)  {m_1}/{m_max}", fontsize=axes_title_fontsize)

    fig2, ax2 = plt.subplots(1, 3, figsize=(10, 5), dpi=200)
    # d
    ax2[0].scatter(edge_lengths_2, probs_2, s=10)
    ax2[0].set_ylim(0, 1.1)
    ax2[0].set_xlim(0, 110)
    # ax2[0].set_ylabel("p(x)", rotation=False, fontsize=10)
    ax2[0].set_title(
        "d)  $\mathregular{p_0}$: 0.7" +
        f", λ: {gradient}, c: {c}",  # noqa: W605
        fontsize=axes_title_fontsize)
    # e
    expected_edge_weight_freq = [
        0.7 * (1 - 1 / (1 + math.exp(-gradient * (i - center)))) *
        edge_lengths_2.count(i) for i in range(1, 102)
    ]
    ax2[1].bar(range(1, 102), expected_edge_weight_freq, width=1)
    ax2[1].set_ylim(0, 110)
    ax2[1].set_xlim(0, 110)
    ax2[1].set_xlabel("x = abs(head - tail)", fontsize=axes_title_fontsize)
    ax2[1].set_title((f"e)  {int(sum(expected_edge_weight_freq))}/{m_max}"
                      "\nf(x) = p(x)f'(x)"),
                     fontsize=axes_title_fontsize,
                     y=0.93,
                     linespacing=1.8)
    # f
    ax2[2].hist(edge_lengths_true_2, bins=range(1, 102))
    ax2[2].set_ylim(0, 110)
    ax2[2].set_xlim(0, 110)
    ax2[2].set_title(f"f)  {m_2}/{m_max}", fontsize=axes_title_fontsize)

    for ax in [ax1, ax2]:
        for j in [0, 1, 2]:
            ax[j].tick_params(axis='both', which='major', labelsize=12)

    fig1.savefig("graph_model_vis_1.png")
    fig2.savefig("graph_model_vis_2.png")
Exemplo n.º 6
0
def main(n, tail_idx, random_seed, layout_seed, center_portion, gradient, p_0,
         online, show_graph, save_graph):
    directed = False
    weights_on = "edges-and-nodes"
    failing = "edges"
    source = 1
    sink = n

    adj_list, G = graph.random_graph(n=n,
                                     directed=directed,
                                     weights_on=weights_on,
                                     random_seed=random_seed,
                                     center_portion=center_portion,
                                     gradient=gradient,
                                     p_0=p_0)
    adj_list_reverse = graph.adj_list_reversed(adj_list)
    init_config = {
        "adj_list": adj_list,
        "adj_list_reverse": adj_list_reverse,
        "source": source,
        "sink": sink
    }
    mode = {
        "bidirectional": True,
        "dynamic": True,
        "failing": failing,
        "online": online
    }
    path_data, tapes = core.first_shortest_path(mode, init_config)
    if online:
        r_paths, visited_reverse_me, visited_reverse_query, failed_head = \
            core.replacement_paths(mode, init_config)
    else:
        r_paths = core.replacement_paths(mode, init_config)

    paths_data_me = [path_data]
    paths_data = [path_data]
    base_path = path_data[0]
    meeting_edge_head = path_data[4]
    meeting_edge_head_idx = path_data[0].index(meeting_edge_head)
    query_tail = base_path[tail_idx]

    num_paths = 0
    for path in r_paths[1:]:
        if path[3][1] == meeting_edge_head:
            paths_data_me.append(path)
            num_paths += 1
        if path[3][0] == query_tail:
            paths_data.append(path)
            num_paths += 1
        if num_paths == 2:
            break

    if online:
        # Get the state that corresponds to the meeting edge.
        visited_nodes_reverse_me = post.visited_nodes(visited_reverse_me, sink)
        # Get the state that corresponds to the query edge.
        if tail_idx > meeting_edge_head_idx:
            visited_nodes_reverse = post.visited_nodes(visited_reverse_query,
                                                       sink)
        else:
            visited_nodes_reverse = visited_nodes_reverse_me
        visited_nodes_forward_me = visited_nodes_forward = set()
    else:
        # Get the state that corresponds to the meeting edge.
        visited_nodes_forward_me, visited_nodes_reverse_me = nodes_retrieved(
            meeting_edge_head_idx - 1, failing, tapes, base_path, source, sink)
        # Get the state that corresponds to the query edge.
        visited_nodes_forward, visited_nodes_reverse = nodes_retrieved(
            tail_idx, failing, tapes, base_path, source, sink)

    visited_after_retrieval_me, visited_after_retrieval = \
        visited_after_retrieved(random_seed, tail_idx, online)

    # 1. State retrieval vis for the meeting edge
    #    (all the visited nodes are retrieved)
    if not online:
        post.state_retrieval_vis(
            G, paths_data_me, visited_nodes_forward_me,
            visited_nodes_reverse_me, visited_nodes_forward_me,
            visited_nodes_reverse_me, visited_after_retrieval_me,
            (base_path[meeting_edge_head_idx - 1], meeting_edge_head), mode,
            random_seed, layout_seed, show_graph, save_graph)

    # 2. State retrieval vis for the in query edge
    #    (all the visited nodes are retrieved)
    post.state_retrieval_vis(
        G, paths_data, visited_nodes_forward_me, visited_nodes_reverse_me,
        visited_nodes_forward, visited_nodes_reverse, visited_after_retrieval,
        (base_path[meeting_edge_head_idx - 1], meeting_edge_head), mode,
        random_seed, layout_seed, show_graph, save_graph)
def main(n, bidirectional, random_seed, layout_seed, save_graph):

    # source, sink = 100, n - 100
    source, sink = 1, n

    adj_list, G = graph.random_graph(n,
                                     weighted=True,
                                     directed=False,
                                     weights_on="edges-and-nodes",
                                     max_edge_weight=1000,
                                     max_node_weight=50,
                                     random_seed=random_seed)

    if bidirectional:
        adj_list_reverse = graph.adj_list_reversed(adj_list)
    else:
        adj_list_reverse = None

    forward_config, reverse_config = dijkstra.dijkstra_init(
        source, sink, adj_list, adj_list_reverse)

    if bidirectional:
        prospect = [0, 0, 0, 0]
        top_reverse = 0

        while forward_config["to_visit"] and reverse_config["to_visit"]:
            # Forward step
            visited, top_forward, prospect = dijkstra._dijkstra_step(
                **forward_config,
                opposite_visited=reverse_config["visited"],
                prospect=prospect,
                is_forward=True)
            if top_forward + top_reverse > prospect[0] != 0:
                break

            # Reverse step
            visited_reverse, top_reverse, prospect = dijkstra._dijkstra_step(
                **reverse_config,
                opposite_visited=forward_config["visited"],
                prospect=prospect,
                is_forward=False)
            if top_forward + top_reverse > prospect[0] != 0:
                break

        path, _ = dijkstra.extract_bidirectional_path(
            source,
            sink,
            prospect, {},
            visited=visited,
            visited_reverse=visited_reverse)
        meeting_edge_head = prospect[2]
    else:
        visited = dijkstra.dijkstra(**forward_config)
        path, _ = dijkstra.extract_path(source, sink, visited, {})
        visited_reverse = None
        meeting_edge_head = None

    # post.state_vis(forward_config["to_visit"],
    #                           visited,
    #                           source,
    #                           sink,
    #                           G=G)

    post.plot_search_sphere(G,
                            visited,
                            path,
                            show_graph=True,
                            save_graph=save_graph,
                            layout_seed=layout_seed,
                            visited_reverse=visited_reverse,
                            meeting_edge_head=meeting_edge_head)
Exemplo n.º 8
0
def measure(n,
            g,
            p,
            problems,
            k=None,
            failing=None,
            measurements_per_graph=3,
            ds_fileobj=None,
            dataset=None,
            **kwargs):
    """A measurement corresponds to a single unique graph and incorporates
  all specified problems on all specified search types (solvers).

  It is important that upon function exit, the graphs are garbage collected.

  Returns:
    timings (array) : Each row corresponds to a problem and comprises a list
                      with the timings for each solver.
  """
    if dataset is None:
        adj_list, _ = graph.random_graph(n=n,
                                         random_seed=g,
                                         p_0=p / 10,
                                         **kwargs)
        if ds_fileobj:
            pickle.dump(adj_list, ds_fileobj)
    else:
        adj_list = next(dataset)

    adj_list_reverse = graph.adj_list_reversed(adj_list)
    init_config = {
        "adj_list": adj_list,
        "adj_list_reverse": None,
        "source": 1,
        "sink": n
    }

    timings = []

    for i, probl in enumerate(problems):
        if probl == "k-shortest-paths":
            solvers = {
                'yen_': [False, False],
                'lawler': [False, False],
                'bidirectional': [True, False],
                'dynamic': [True, True]
            }
            mode = {"failing": "edges", "online": True}
        else:
            solvers = {
                'unidirectional': [False, False],
                'bidirectional': [True, False],
                'dynamic': [True, True]
            }
            if probl.endswith("online"):
                mode = {"failing": failing, "online": True}
            else:
                mode = {"failing": failing, "online": False}
        timings.append([0] * len(solvers))

        for j, (s, m) in enumerate(solvers.items()):
            mode.update({"bidirectional": m[0], "dynamic": m[1]})
            if s == "yen_":
                mode.update({"yen_": True, "lawler": False})
            elif s == "lawler":
                mode.update({"yen_": False, "lawler": True})
            elif m[0]:
                init_config["adj_list_reverse"] = adj_list_reverse
                mode.update({"yen_": False, "lawler": False})
            timings[i][j] = time_a_run(mode,
                                       init_config,
                                       probl,
                                       k,
                                       times=measurements_per_graph)
    return timings