Example #1
0
    def test_degree_analysis_on_nodes(self, log_data, nicks, nick_same_list):
        update_expected_output_directory(log_data)
        message_number_graph = network.message_number_graph(
            log_data, nicks, nick_same_list)
        message_time_graph = network.message_time_graph(
            log_data, nicks, nick_same_list)
        nick_change_graph = user.nick_change_graph(log_data)

        degree_anal_message_number = network.degree_analysis_on_graph(
            message_number_graph)
        degree_anal_message_time = network.degree_analysis_on_graph(
            message_time_graph)
        degree_anal_nick_change = network.degree_analysis_on_graph(
            nick_change_graph)

        expected_analysis_msg_number = []
        expected_analysis_msg_time = []
        expected_analysis_nick_change = []

        unjson('degree_anal_message_number.json', expected_analysis_msg_number)
        unjson('degree_anal_message_time.json', expected_analysis_msg_time)
        unjson('degree_anal_nick_change.json', expected_analysis_nick_change)

        self.assertDictEqual(degree_anal_message_number,
                             expected_analysis_msg_number[0],
                             msg=None)
        self.assertDictEqual(degree_anal_message_time,
                             expected_analysis_msg_time[0],
                             msg=None)
        self.assertDictEqual(degree_anal_nick_change,
                             expected_analysis_nick_change[0],
                             msg=None)
Example #2
0
    def test_degree_distribution_multi_channel(self):
        log_data = reader.linux_input(self.log_data_dir, ["ALL"],
                                      self.start_date, self.end_date)
        expected_result_CC_degree_curve_fit = util.load_from_disk(
            self.current_directory + '/data/output/CC_degree_curve_fit')
        expected_result_CU_degree_curve_fit = util.load_from_disk(
            self.current_directory + '/data/output/CU_degree_curve_fit')
        expected_result_UU_degree_curve_fit = util.load_from_disk(
            self.current_directory + '/data/output/UU_degree_curve_fit')

        nicks, nick_same_list, channels_for_user, nick_channel_dict, nicks_hash, channels_hash = nickTracker.nick_tracker(
            log_data, True)
        dict_out, graph = network.channel_user_presence_graph_and_csv(
            nicks, nick_same_list, channels_for_user, nick_channel_dict,
            nicks_hash, channels_hash)
        degree_anal_message_number_CC = network.degree_analysis_on_graph(
            dict_out["CC"]["graph"], directed=False)
        degree_anal_message_number_UU = network.degree_analysis_on_graph(
            dict_out["UU"]["graph"], directed=False)
        degree_anal_message_number_CU = network.degree_analysis_on_graph(
            dict_out["CU"]["graph"], directed=False)

        Y = degree_anal_message_number_CU["degree"]["raw_for_vis"][1:]
        data = [(i, Y[i]) for i in range(len(Y))]
        CU_truncated, cutoff = channel.truncate_table(data, 0.5)
        CU_T = [data[1] for data in list(CU_truncated)]
        expected_output_CC_degree_curve_fit = vis.generate_log_plots(
            degree_anal_message_number_CC["degree"]["raw_for_vis"],
            self.current_directory, "CC_degree_curve_fit")

        expected_output_CU_degree_curve_fit = vis.generate_log_plots(
            CU_T, self.current_directory, "CU_degree_curve_fit")

        expected_output_UU_degree_curve_fit = vis.generate_log_plots(
            degree_anal_message_number_UU["degree"]["raw_for_vis"],
            self.current_directory, "UU_degree_curve_fit")
        os.remove(self.current_directory + "/CC_degree_curve_fit" + ".png")
        os.remove(self.current_directory + "/CU_degree_curve_fit" + ".png")
        os.remove(self.current_directory + "/UU_degree_curve_fit" + ".png")

        self.assertEqual(expected_result_CC_degree_curve_fit,
                         expected_output_CC_degree_curve_fit)
        self.assertEqual(expected_result_CU_degree_curve_fit,
                         expected_output_CU_degree_curve_fit)
        self.assertEqual(expected_result_UU_degree_curve_fit,
                         expected_output_UU_degree_curve_fit)
Example #3
0
def box_plot_for_degree(log_directory, output_directory, channel_name):
    cutoff = 0
    for channel_name_iter in channel_name:
        out_degree_fit_parameters = np.zeros((12, 4))
        in_degree_fit_parameters = np.zeros((12, 4))
        total_degree_fit_parameters = np.zeros((12, 4))
        for month in range(1, 13):
            log_data = reader.linux_input(log_directory, channel_name_iter,
                                          "2013-" + str(month) + "-1",
                                          "2013-" + str(month) + "-31")
            nicks, nick_same_list = nickTracker.nick_tracker(log_data)

            message_number_graph = network.message_number_graph(
                log_data, nicks, nick_same_list, False)
            degree_anal_message_number = network.degree_analysis_on_graph(
                message_number_graph)

            out_degree_fit_parameters[month - 1] = vis.generate_log_plots(
                degree_anal_message_number["out_degree"]["raw_for_vis"],
                output_directory, channel_name_iter[0])
            in_degree_fit_parameters[month - 1] = vis.generate_log_plots(
                degree_anal_message_number["in_degree"]["raw_for_vis"],
                output_directory, channel_name_iter[0])
            total_degree_fit_parameters[month - 1] = vis.generate_log_plots(
                degree_anal_message_number["total_degree"]["raw_for_vis"],
                output_directory, channel_name_iter[0])

        parameters = ['slope', 'intercept', 'r_square']
        for para_ind in range(len(parameters)):
            vis.box_plot(
                out_degree_fit_parameters[:, para_ind], output_directory,
                "out_degree_" + str(parameters[para_ind]) + "_2013_" +
                channel_name_iter[0] + "_cut_" + str(cutoff))
            vis.box_plot(
                in_degree_fit_parameters[:, para_ind], output_directory,
                "in_degree_" + str(parameters[para_ind]) + "_2013_" +
                channel_name_iter[0] + "_cut_" + str(cutoff))
            vis.box_plot(
                total_degree_fit_parameters[:, para_ind], output_directory,
                "total_degree_" + str(parameters[para_ind]) + "_2013_" +
                channel_name_iter[0] + "_cut_" + str(cutoff))

            saver.save_csv([out_degree_fit_parameters[:, para_ind].tolist()],
                           output_directory, "out_degree_" +
                           str(parameters[para_ind]) + "_2013_" +
                           channel_name_iter[0] + "_cut_" + str(cutoff))
            saver.save_csv([in_degree_fit_parameters[:, para_ind].tolist()],
                           output_directory, "in_degree_" +
                           str(parameters[para_ind]) + "_2013_" +
                           channel_name_iter[0] + "_cut_" + str(cutoff))
            saver.save_csv([total_degree_fit_parameters[:, para_ind].tolist()],
                           output_directory, "total_degree_" +
                           str(parameters[para_ind]) + "_2013_" +
                           channel_name_iter[0] + "_cut_" + str(cutoff))
Example #4
0
 def test_message_exchange_network(self):
     log_data = reader.linux_input(self.log_data_dir, ["#kubuntu-devel"],
                                   self.start_date, self.end_date)
     expected_result = util.load_from_disk(
         self.current_directory +
         '/data/output/degree_anal_message_number_graph_kubuntu-devel')
     nicks, nick_same_list = nickTracker.nick_tracker(log_data)
     message_number_graph = network.message_number_graph(
         log_data, nicks, nick_same_list, False)
     expected_output = network.degree_analysis_on_graph(
         message_number_graph)
     self.assertEqual(expected_result, expected_output)
Example #5
0
    def test_degree_analysis_on_nodes(self, log_data, nicks, nick_same_list):
        update_expected_output_directory(log_data)
        message_number_graph = network.message_number_graph(log_data, nicks, nick_same_list)
        message_time_graph = network.message_time_graph(log_data, nicks, nick_same_list)
        nick_change_graph = user.nick_change_graph(log_data)

        degree_anal_message_number = network.degree_analysis_on_graph(message_number_graph)
        degree_anal_message_time = network.degree_analysis_on_graph(message_time_graph)
        degree_anal_nick_change = network.degree_analysis_on_graph(nick_change_graph)

        expected_analysis_msg_number = []
        expected_analysis_msg_time = []
        expected_analysis_nick_change = []

        unjson('degree_anal_message_number.json', expected_analysis_msg_number)
        unjson('degree_anal_message_time.json', expected_analysis_msg_time)
        unjson('degree_anal_nick_change.json', expected_analysis_nick_change)

        self.assertDictEqual(degree_anal_message_number, expected_analysis_msg_number[0], msg=None)
        self.assertDictEqual(degree_anal_message_time, expected_analysis_msg_time[0], msg=None)
        self.assertDictEqual(degree_anal_nick_change, expected_analysis_nick_change[0], msg=None)
Example #6
0
    def test_degree_analysis_on_graph(self):
        directed_graph = util.load_from_disk(current_directory +
                                             '/data/directed_graph')
        undirected_graph = util.load_from_disk(current_directory +
                                               '/data/undirected_graph')
        directed_deg_analysis_expected = util.load_from_disk(
            current_directory + '/data/directed_deg_analysis_result')
        undirected_deg_analysis_expected = util.load_from_disk(
            current_directory + '/data/undirected_deg_anlaysis_result')

        capturedOutput = StringIO.StringIO()
        sys.stdout = capturedOutput

        directed_deg_analysis = network.degree_analysis_on_graph(
            directed_graph, directed=True)
        undirected_deg_analysis = network.degree_analysis_on_graph(
            undirected_graph, directed=False)

        sys.stdout = sys.__stdout__
        capturedOutput.close()

        self.assertEqual(directed_deg_analysis, directed_deg_analysis_expected)
        self.assertEqual(undirected_deg_analysis,
                         undirected_deg_analysis_expected)
Example #7
0
 def test_degree_distribution_message_exchange_network(self):
     degree_type = ["out_degree", "in_degree", "total_degree"]
     log_data = reader.linux_input(self.log_data_dir, ["#kubuntu-devel"],
                                   self.start_date, self.end_date)
     expected_result = util.load_from_disk(
         self.current_directory +
         '/data/output/message_exchange_network_curve_fit')
     nicks, nick_same_list = nickTracker.nick_tracker(log_data)
     message_number_graph = network.message_number_graph(
         log_data, nicks, nick_same_list, False)
     degree_anal_message_number = network.degree_analysis_on_graph(
         message_number_graph)
     expected_output = {}
     for dtype in degree_type:
         expected_output[dtype] = vis.generate_log_plots(
             degree_anal_message_number[dtype]["raw_for_vis"],
             self.current_directory, "#kubuntu-devel" + dtype)
         os.remove(self.current_directory + "/#kubuntu-devel" + dtype +
                   ".png")
     self.assertEqual(expected_result, expected_output)
Example #8
0
channel_name = config.CHANNEL_NAME
starting_date = config.STARTING_DATE
ending_date = config.ENDING_DATE
output_directory = config.OUTPUT_DIRECTORY

# ============== INPUT==================
log_data = reader.linux_input(log_directory, channel_name, starting_date,
                              ending_date)
nicks, nick_same_list = nickTracker.nick_tracker(log_data)

# ============== ANALYSIS =============
message_number_graph = network.message_number_graph(log_data, nicks,
                                                    nick_same_list, False)
message_number_graph_day_list = network.message_number_graph(
    log_data, nicks, nick_same_list, True)
degree_anal_message_numder = network.degree_analysis_on_graph(
    message_number_graph)
message_time_graph_list = network.message_time_graph(log_data, nicks,
                                                     nick_same_list, True)
message_time_graph = network.message_time_graph(log_data, nicks,
                                                nick_same_list, False)
out_degree_node_number, in_degree_node_number, total_degree_node_number = network.degree_node_number_csv(
    log_data, nicks, nick_same_list)
nick_change_graph_list = user.nick_change_graph(log_data, True)
bin_matrix, total_messages = network.message_number_bins_csv(
    log_data, nicks, nick_same_list)
conv_len, conv_ref_time = channel.conv_len_conv_refr_time(
    log_data, nicks, nick_same_list)
resp_time = channel.response_time(log_data, nicks, nick_same_list)

user.keywords_clusters(log_data, nicks, nick_same_list)
network.degree_analysis_on_graph(message_number_graph)
Example #9
0
channel_name = config.CHANNEL_NAME
starting_date = config.STARTING_DATE
ending_date = config.ENDING_DATE
output_directory = config.OUTPUT_DIRECTORY

degree_type = ["out_degree", "in_degree", "total_degree"]
presence_type = ["CC", "UU", "CU"]

# ============== INPUT==================
log_data = reader.linux_input(log_directory, channel_name, starting_date, ending_date)
nicks, nick_same_list = nickTracker.nick_tracker(log_data)

# ============== ANALYSIS =============
message_number_graph = network.message_number_graph(log_data, nicks, nick_same_list, False)

degree_anal_message_number = network.degree_analysis_on_graph(message_number_graph)

bin_matrix, total_messages = network.message_number_bins_csv(log_data, nicks, nick_same_list)
data = [[i for i in range(len(bin_matrix[0]))]]
data.append([sum(i) for i in zip(*bin_matrix)])

default_cutoff = config.CUTOFF_PERCENTILE
percentiles = [0, 1, 5, 10, 20]

for cutoff in percentiles:
    config.CUTOFF_PERCENTILE = cutoff
    truncated_rt, rt_cutoff_time = channel.response_time(log_data, nicks, nick_same_list, config.CUTOFF_PERCENTILE)
    conv_len, conv_ref_time = channel.conv_len_conv_refr_time(log_data, nicks, nick_same_list, rt_cutoff_time, config.CUTOFF_PERCENTILE)
    saver.save_csv(conv_len, output_directory, "conv_len-cutoff-" + str(cutoff))
    saver.save_csv(truncated_rt, output_directory, "resp_time-cutoff-" + str(cutoff))
    saver.save_csv(conv_ref_time, output_directory, "conv_ref_time-cutoff-" + str(cutoff))
Example #10
0
from lib.analysis import network, channel, user, community

log_directory = config.LOG_DIRECTORY
channel_name = config.CHANNEL_NAME
starting_date = config.STARTING_DATE
ending_date = config.ENDING_DATE
output_directory = config.OUTPUT_DIRECTORY

# ============== INPUT==================
log_data = reader.linux_input(log_directory, channel_name, starting_date, ending_date)
nicks, nick_same_list = nickTracker.nick_tracker(log_data)

# ============== ANALYSIS =============
message_number_graph = network.message_number_graph(log_data, nicks, nick_same_list, False)
message_number_graph_day_list = network.message_number_graph(log_data, nicks, nick_same_list, True)
degree_anal_message_numder = network.degree_analysis_on_graph(message_number_graph)
message_time_graph_list = network.message_time_graph(log_data, nicks, nick_same_list, True)
message_time_graph = network.message_time_graph(log_data, nicks, nick_same_list, False)
out_degree_node_number, in_degree_node_number, total_degree_node_number = network.degree_node_number_csv(log_data, nicks, nick_same_list)
nick_change_graph_list =  user.nick_change_graph(log_data, True)
bin_matrix, total_messages = network.message_number_bins_csv(log_data, nicks, nick_same_list)
conv_len, conv_ref_time = channel.conv_len_conv_refr_time(log_data, nicks, nick_same_list)
resp_time = channel.response_time(log_data, nicks, nick_same_list)

user.keywords_clusters(log_data, nicks, nick_same_list)
network.degree_analysis_on_graph(message_number_graph)

# adjCC_graph, adjCC_membership = community.infomap_igraph(ig_graph=None, net_file_location="/home/rohan/Desktop/adjCC.net")

# ============== OUTPUT ================
saver.draw_nx_graph(message_number_graph, output_directory, "message_number_graph")
Example #11
0
def box_plot_for_degree(log_directory, output_directory, channel_name,
                        start_date, end_date):
    """
        Correlational : statistical distribution of curve fit parameters generated for degree distribution. The function
        takes the given time duration and selects one month at a time for generation of a degree distribution sample. Each
        degree distribution sample shall have 3 curve fit parameters namely slope, intercept & r_square. The function collects these parameters
        for all the months of the given time duration. The function produces box plot separately for each parameter.

    Args:
        log_directory(str): path to the location of Logs
        output_directory(str):  path to the location where the results are to be stored
        channel_name(list): channels for which the analysis is to be done.
        start_date(datetime): starting date for the logs to be analysed. This has to be the beginning of the month.
        end_date(datetime): ending date for which the logs are to be analysed. This has to be the end of the month.

    Returns:
       null

    """
    start_date = start_date.strptime('%Y-%m-%d')
    end_date = end_date.strptime('%Y-%m-%d')
    cutoff = 0
    for channel_name_iter in channel_name:
        out_degree_fit_parameters = np.zeros((12, 4))
        in_degree_fit_parameters = np.zeros((12, 4))
        total_degree_fit_parameters = np.zeros((12, 4))
        for dt in rrule(MONTHLY, dtstart=start_date, until=end_date):
            last_day_of_the_month = dt + relativedelta(
                months=1) - datetime.timedelta(days=1)
            # for month in range(1, 13):
            log_data = reader.linux_input(
                log_directory, channel_name_iter, dt.strftime("%Y-%m-%d"),
                last_day_of_the_month.strftime("%Y-%m-%d"))
            nicks, nick_same_list = nickTracker.nick_tracker(log_data)

            message_number_graph = network.message_number_graph(
                log_data, nicks, nick_same_list, False)
            degree_anal_message_number = network.degree_analysis_on_graph(
                message_number_graph)

            out_degree_fit_parameters[dt.month - 1] = vis.generate_log_plots(
                degree_anal_message_number["out_degree"]["raw_for_vis"],
                output_directory, channel_name_iter[0])
            in_degree_fit_parameters[dt.month - 1] = vis.generate_log_plots(
                degree_anal_message_number["in_degree"]["raw_for_vis"],
                output_directory, channel_name_iter[0])
            total_degree_fit_parameters[dt.month - 1] = vis.generate_log_plots(
                degree_anal_message_number["total_degree"]["raw_for_vis"],
                output_directory, channel_name_iter[0])

        parameters = ['slope', 'intercept', 'r_square']
        for para_ind in range(len(parameters)):
            vis.box_plot(
                out_degree_fit_parameters[:, para_ind], output_directory,
                "out_degree_" + str(parameters[para_ind]) + "_2013_" +
                channel_name_iter[0] + "_cut_" + str(cutoff))
            vis.box_plot(
                in_degree_fit_parameters[:, para_ind], output_directory,
                "in_degree_" + str(parameters[para_ind]) + "_2013_" +
                channel_name_iter[0] + "_cut_" + str(cutoff))
            vis.box_plot(
                total_degree_fit_parameters[:, para_ind], output_directory,
                "total_degree_" + str(parameters[para_ind]) + "_2013_" +
                channel_name_iter[0] + "_cut_" + str(cutoff))

            saver.save_csv([out_degree_fit_parameters[:, para_ind].tolist()],
                           output_directory, "out_degree_" +
                           str(parameters[para_ind]) + "_2013_" +
                           channel_name_iter[0] + "_cut_" + str(cutoff))
            saver.save_csv([in_degree_fit_parameters[:, para_ind].tolist()],
                           output_directory, "in_degree_" +
                           str(parameters[para_ind]) + "_2013_" +
                           channel_name_iter[0] + "_cut_" + str(cutoff))
            saver.save_csv([total_degree_fit_parameters[:, para_ind].tolist()],
                           output_directory, "total_degree_" +
                           str(parameters[para_ind]) + "_2013_" +
                           channel_name_iter[0] + "_cut_" + str(cutoff))