Beispiel #1
0
def plot_CIR_edit_types(filename1, filename2, save=False):
    # Open the two dataframes
    df_1 = open_pickle("data/" + filename1)
    df_2 = open_pickle("data/" + filename2)

    #  Add the edit type to the dataframes
    e_type_pf = []
    e_type_pp = []
    for _ in range(0, df_1.shape[0]):
        e_type_pf.append("pertubate_force")
        e_type_pp.append("pertubate_points")

    df_1.insert(1, "edit_type", e_type_pf, True)
    df_2.insert(1, "edit_type", e_type_pp, True)

    df = [df_1, df_2]
    df = pd.concat(df)

    optimal_solution_weight = 9.985281

    ax = sns.lineplot(x="n", y="cost", hue="edit_type", data=df)
    ax.axhline(optimal_solution_weight,
               color="black",
               linestyle="dashed",
               alpha=0.8)
    ax.set(xlabel="n", ylabel="E")

    plt.tight_layout()

    if save:
        plt.savefig("figs/" + filename1 + "_" + filename2 + ".pdf")
    else:
        plt.show()
Beispiel #2
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def clt():
    k = open_pickle("data/clt")

    vals = np.split((np.asarray(k) / 10) * 16, 1000)

    # Take distribution of one sample
    ax = sns.distplot((np.asarray(vals[0]) / 10) * 16, label="mc")
    ax = ax.set(xlabel="area", ylabel="frequency")
    plt.show()

    # Take mean of all samples
    ax = sns.distplot(np.mean(vals, axis=1), label="mc")
    ax = ax.set(xlabel="area", ylabel="frequency")
    plt.show()
Beispiel #3
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def plot_TSP_cs_temp(filename, save=False):
    df = open_pickle("data/" + filename + "_cooling_schedules")
    ax = sns.lineplot(x="n",
                      y="temp",
                      hue="cooling_schedule",
                      ci=None,
                      data=df)

    plt.tight_layout()
    if save:
        plt.savefig("figs/" + filename + "_cs_temp_lin.pdf")
    else:
        plt.show()
    plt.clf()
Beispiel #4
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def plot_TSP_temp_temps(filename, save=False):
    df = open_pickle("data/" + filename + "_temps")

    sns.lineplot(x="n",
                 y="temp",
                 hue="init_temp",
                 ci=None,
                 data=df,
                 palette=sns.color_palette('husl', n_colors=3))

    plt.tight_layout()
    if save:
        plt.savefig("figs/" + filename + "_temp_temps.pdf")
    else:
        plt.show()
    plt.clf()
Beispiel #5
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def plot_TSP_mcl(filename, save=False):
    df = open_pickle("data/" + filename + "_mcls")

    optimal_solution_weight = Network("routes/" +
                                      filename).optimal_solution_weight

    ax = sns.lineplot(x="n", y="cost", hue="l", data=df, palette=palette)
    ax.axhline(optimal_solution_weight,
               color="black",
               linestyle="dashed",
               alpha=0.8)

    plt.tight_layout()
    if save:
        plt.savefig("figs/" + filename + "_mcls.pdf")
    else:
        plt.show()
    plt.clf()
Beispiel #6
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def plot_CIR_cs_weight(filename, save=False):
    df = open_pickle("data/" + filename + "_cooling_schedules")

    optimal_solution_weight = 9.985281  # From https://www.nrcresearchpress.com/doi/pdf/10.1139/v88-343

    ax = sns.lineplot(x="n", y="cost", hue="cooling_schedule", data=df)
    ax.axhline(optimal_solution_weight,
               color="black",
               linestyle="dashed",
               alpha=0.8)
    ax.set(xlabel="n", ylabel="E")

    plt.tight_layout()
    if save:
        plt.savefig("figs/" + filename + "_cooling_schedule_cost.pdf")
    else:
        plt.show()

    plt.clf()
Beispiel #7
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def plot_CIR_mcl(filename, save=False):
    df = open_pickle("data/" + filename + "_mcls")

    optimal_solution_weight = 9.985281

    ax = sns.lineplot(x="n", y="cost", hue="l", data=df, palette=palette)
    ax.axhline(optimal_solution_weight,
               color="black",
               linestyle="dashed",
               alpha=0.8)
    ax.set(xlabel="n", ylabel="E")

    plt.tight_layout()

    if save:
        plt.savefig("figs/" + filename + "mcl" + ".pdf")
        plt.ylim(0, 100)
        plt.xlim(500, 1000)
        plt.savefig("figs/" + filename + "mcl_zoomed" + ".pdf")
    else:
        plt.show()