Example #1
0
def main():
    print("PROJEKCIK 3 GRAFY")

    print("--------AD1--------")
    graph = random_connected_graph()
    graph = WeightedGraph(graph)

    weights, nodes_and_neighbours = dijkstra(graph)
    print("--------AD2--------")
    print_dijkstry(weights, nodes_and_neighbours)
    draw_graph(graph)

    print("--------AD3--------")
    dist_matrix = distance_matrix(graph)
    print_distance_matrix(dist_matrix)

    print("--------AD4--------")
    center_vertex = center_index(graph) + 1
    minmax_center_vertex = minmax_center_index(graph) + 1
    print("graph center vertex: " + str(center_vertex))
    print("graph minmax center vertex: " + str(minmax_center_vertex))
    draw_graph(graph)

    print("--------AD5--------")
    graph = minimum_spanning_tree_PRIM_V2(graph)
    draw_weighted_graph(graph)
Example #2
0
def run():
    logo()
    selection = validate()  # Select log file to analyse
    if selection == "exit":  # Exit option
        os.system("python3 hello.py")
        sys.exit()

    count_ID(selection)  # Count IDs

    clock = timestamp.get_time()  # Get time
    fw = open(C5235_directory + "Visdata_Log_" + clock,
              "w+")  # Create Log file
    fw.write("Matched Event ID statistics:\r\n\r\n")

    for ids, info in idlist.items(
    ):  # Print out each item and values in dictionary
        print("Event ID:", ids)
        fw.write("Event ID: " + str(ids) + "\n")
        item_array.append(ids)  # Append all IDs to array for graph

        for key in info:  # Print out nested dictionary
            print(key + ':', info[key], "\n")
            fw.write(str(key) + ': ' + str(info[key]) + "\n\n")
    fw.close()
    input("\n# Log file saved. Press enter to visualise data #")
    count_array = get_graph_data(clock)
    graph.draw_graph(item_array, count_array)  # Call script to draw graph
Example #3
0
    def _updateMode(self):
        self.ui.tabWidget.setTabEnabled(self.ui.tabWidget.indexOf(self.ui.editorTab), not self.no_alg)
        self.ui.tabWidget.setTabEnabled(self.ui.tabWidget.indexOf(self.ui.modelTab), bool(self.model))
        self.ui.tabWidget.setTabEnabled(self.ui.tabWidget.indexOf(self.ui.analysisTab), bool(self.model))
        self.ui.tabWidget.setTabEnabled(self.ui.tabWidget.indexOf(self.ui.machineTab), bool(self.machine))
        self.ui.tabWidget.setTabEnabled(self.ui.tabWidget.indexOf(self.ui.tableTab), bool(self.tr_table))
        self.ui.tabWidget.setTabEnabled(self.ui.tabWidget.indexOf(self.ui.vhdlTab), bool(self.machine))
        #use full ABSOLUTE path to the image, not relative
        ren = None
        self._update_graph()
        if self.machine:
            ren = graph.renumerate(self.machine[0])
            graph.draw_machine(*self.machine)
        self._fill_signals()
        if self.model:
            txt = self.ui.info.toPlainText()
            self.ui.info.setPlainText("%s\nInput signals: %d\nOutput signals: %d" % (txt, len(self.model.in_signals), len(self.model.out_signals)))
            graph.draw_graph(self.model.barenodes, self.model.connections, self.model.matrix, loop=self.model.loop, renumerated=ren, added=self.machine[3])


        if os.path.exists(IMG_PATH):
            self.canvas.setPixmap(QtGui.QPixmap(IMG_PATH))
            self.canvas.adjustSize()

        if os.path.exists(IMG_MACHINE_PATH):
            self.m_canvas.setPixmap(QtGui.QPixmap(IMG_MACHINE_PATH))
            self.m_canvas.adjustSize()

        if os.path.exists(IMG_FORMULAS_PATH):
            self.f_canvas.setPixmap(QtGui.QPixmap(IMG_FORMULAS_PATH))
            self.f_canvas.adjustSize()
Example #4
0
def main():
    f = open("result.csv", "w")

    N = []
    tempos = []

    iterations = range(1, 23)
    k = 0  # apenas para dar print a uma percentagem de progresso

    f.write("N, tempo(s)\n")

    for i in iterations:
        array = generate_array(2**i)
        start = t.time()
        root = tree.build_tree(array)
        total_time = t.time() - start

        tempos.append(total_time)
        N.append(2**i)
        f.write(f"{2**i},{total_time}\n")

        k += 1
        print(f"{((k/len(iterations))*100):.0f}%")  # Print do progresso

    g.draw_graph(N, tempos)
    f.close()
Example #5
0
    def btn_get_pressed(self):
        if (self.selected_faculty
                is not None) and (self.selected_program
                                  is not None) and (self.selected_term
                                                    is not None):
            self.db.update_courses(self.selected_term)
            self.db.update_dmajor_courses(self.selected_dmajor_term)

            graph.draw_graph(self.selected_term, self.selected_dmajor_term)
Example #6
0
def process():
    character = request.args.get('character0')

    query = load_data.form_query4(character)
    data = load_data.load_data(query, "http://3.101.82.158:3030/SER531")
    result = load_data.clean_data(data)
    print(result)
    graph.draw_graph(character, result)
    # return send_from_directory(app.config['CLIENT_IMAGES'],"unix.gv.pdf", as_attachment=True)
    return send_file('unix.gv.pdf', attachment_filename='something.pdf')
 def next_solution(number_of_genes, adjacency_matrix, number_of_color, show_solution):
     global idx_solution
     global number_of_solution
     idx_solution += 1
     if idx_solution == number_of_solution:
         Button_solution = Button(root, text="Quit ...", width= 15, command=root.destroy)
         Button_solution.grid(row=13, column=2, padx=5, pady=5)
     else:
         Button_solution = Button(root, text="next solution", width= 15, command=lambda: next_solution(number_of_genes, adjacency_matrix, number_of_color, final_solution[idx_solution]))
         Button_solution.grid(row=13, column=2, padx=5, pady=5)
     draw_graph(number_of_genes, adjacency_matrix, number_of_color, show_solution)
Example #8
0
    def run_task_6(self, doc_id: str, user_id: str):
        """
        A method to run the task 6 using methods and functions written in this class. It simply displays the graph.

        :param doc_id: The input document ID
        :param user_id: The input user ID
        """
        readers = self.get_relevant_readers(doc_id, user_id)
        d = self.get_documents(readers)
        out = self.sort_graph_nodes(d)
        out[user_id] = {doc_id}
        graph.draw_graph(out, doc_id, user_id)
Example #9
0
def eval_cplex_lp(links, paths, capacity, demand_k, draw=False):
    # parse solution
    fp = open(os.path.join(cplex_dir, 'solution.txt'), 'r')
    solution = ''.join(fp.readlines())
    fp.close()
    z, dvars = parse_solution(solution)

    # initial route to store paths and demands
    route = {}
    for s in paths:
        route[s] = {}
        for t in paths[s]:
            route[s][t] = {}

    # fill values to route
    k = -1
    for s in paths:
        for t in paths[s]:
            k += 1
            p = dvars[k].index(1)
            route[s][t]['path'] = paths[s][t][p]['path']
            route[s][t]['demand'] = demand_k[k]

    # calculate link capacity utilization rate
    link_util = exec_route(links, capacity, route)

    if draw:
        # draw graph with link utilization rate
        edge_labels = {}
        for edge in G.edges:
            i, j = edge
            if i > j: i, j = j, i
            edge_labels[edge] = '({}%/{}%)'.format(i, j,
                                                   link_util[(i, j)] * 100, j,
                                                   i, link_util[(j, i)] * 100)
        draw_graph(G, edge_labels)

        # draw distribution of link utilization rate
        draw_dist(link_util, interval=0.1, prefix='CPLEX ROUTE')

    link_max = None
    util_max = 0.
    for link in link_util:
        if link_util[link] >= util_max:
            util_max = link_util[link]
            link_max = link

    assert util_max == z, 'util_max={},z={}'.format(util_max, z)
    return util_max, link_max
Example #10
0
    def wrap_up_4_topology(self, path):
        for port1 in UDP_PORTs:
            for port2 in UDP_PORTs:
                elapsed_time = int(
                    time.time()) - self.topology_last_update_time[
                        self.make_node_id(port1)][self.make_node_id(port2)]
                if elapsed_time >= DISCONNECT_TIME_LIMIT:
                    self.topology[self.make_node_id(port1)][self.make_node_id(
                        port2)] = False
                    self.topology[self.make_node_id(port2)][self.make_node_id(
                        port1)] = False

        for uni_port in self.current_unidirectional_neighbors:
            self.topology[self.make_node_id(uni_port)][self.make_node_id(
                self.port)] = True

        for port in UDP_PORTs:
            if port in self.current_bidirectional_neighbors:
                self.topology[self.make_node_id(port)][self.make_node_id(
                    self.port)] = True
                self.topology[self.make_node_id(
                    self.port)][self.make_node_id(port)] = True
            else:
                self.topology[self.make_node_id(
                    self.port)][self.make_node_id(port)] = False

        with open(path + "/4_topology.json", "w") as available_file:
            available_file.write(json.dumps(self.topology))
        plt = draw_graph(self.topology,
                         [self.make_node_id(port) for port in UDP_PORTs])
        plt.savefig(path + "/4_topology.png", bbox_inches='tight')
Example #11
0
def compare_trajectory():
    n = None
    set_x = []
    set_y = []

    while True:
        try:
            n = int(input("How many trajectories? "))
            if (type(n) == int) and (n > 0):
                break
            print("Enter a positive integer number")
        except Exception as e:
            print(e)

    for _ in range(n):
        while True:
            try:
                ivelo = float(input("Enter initial velocity (m/s): "))
                if ivelo > 0:
                    break
                print("Initial velocity cannot be negative")
            except Exception as e:
                print(e)

        while True:
            try:
                angle = float(input("Enter angle of trajectory (deg): "))
                if (angle > 0) and (angle < 180):
                    break
                print("Enter a positive number")
            except Exception as e:
                print(e)

        print(f"${n, ivelo, angle}")
        t_x, t_y, t_ax = get_coords_trajectory(ivelo, angle)

        set_x.extend(t_x)
        set_x = list(set(set_x))

        set_y.extend(t_y)
        set_y = list(set(set_y))

        t_ax = [min(set_x), max(set_x), min(set_y), max(set_y)]
        graph.draw_graph(t_x, t_y, t_ax)
    graph.show_graph()
Example #12
0
    def _updateMode(self):
        self.ui.tabWidget.setTabEnabled(
            self.ui.tabWidget.indexOf(self.ui.editorTab), not self.no_alg)
        self.ui.tabWidget.setTabEnabled(
            self.ui.tabWidget.indexOf(self.ui.modelTab), bool(self.model))
        self.ui.tabWidget.setTabEnabled(
            self.ui.tabWidget.indexOf(self.ui.analysisTab), bool(self.model))
        self.ui.tabWidget.setTabEnabled(
            self.ui.tabWidget.indexOf(self.ui.machineTab), bool(self.machine))
        self.ui.tabWidget.setTabEnabled(
            self.ui.tabWidget.indexOf(self.ui.tableTab), bool(self.tr_table))
        self.ui.tabWidget.setTabEnabled(
            self.ui.tabWidget.indexOf(self.ui.vhdlTab), bool(self.machine))
        #use full ABSOLUTE path to the image, not relative
        ren = None
        self._update_graph()
        if self.machine:
            ren = graph.renumerate(self.machine[0])
            graph.draw_machine(*self.machine)
        self._fill_signals()
        if self.model:
            txt = self.ui.info.toPlainText()
            self.ui.info.setPlainText(
                "%s\nInput signals: %d\nOutput signals: %d" %
                (txt, len(self.model.in_signals), len(self.model.out_signals)))
            graph.draw_graph(self.model.barenodes,
                             self.model.connections,
                             self.model.matrix,
                             loop=self.model.loop,
                             renumerated=ren,
                             added=self.machine[3])

        if os.path.exists(IMG_PATH):
            self.canvas.setPixmap(QtGui.QPixmap(IMG_PATH))
            self.canvas.adjustSize()

        if os.path.exists(IMG_MACHINE_PATH):
            self.m_canvas.setPixmap(QtGui.QPixmap(IMG_MACHINE_PATH))
            self.m_canvas.adjustSize()

        if os.path.exists(IMG_FORMULAS_PATH):
            self.f_canvas.setPixmap(QtGui.QPixmap(IMG_FORMULAS_PATH))
            self.f_canvas.adjustSize()
Example #13
0
def compute_graph(g, f_times=None, draw=False):
    t1 = datetime.now()

    print(g.name, file=stderr)

    if draw:
        layout = nx.spring_layout(g)

    measures = {}
    for pert in [0, .05, .1, .2, .5, 1]:
        print('  perturbation ({:.0%} of edges)...'.format(pert), file=stderr)

        pert_graph = anonymity.perturbation(g, pert)
        if draw:
            graph.draw_graph(pert_graph, pert, layout)

        print('    measurements...', file=stderr)
        measurements = graph.get_measurements(pert_graph)

        print('    h...', file=stderr)
        h = [anonymity.deanonymize_h(pert_graph, i) for i in range(0, 5)]

        print('    edge facts...', file=stderr)
        ef = [
        ]  #[anonymity.deanonymize_edgefacts(g, pert_graph, n) for n in range(0, 51, 10)]

        measures[pert] = pd.concat([measurements, *h, *ef])

    t2 = datetime.now()
    t = t2 - t1

    print('  execution time: {}'.format(t), file=stderr)

    if f_times is not None:
        print('{},{}'.format(g.name, t.total_seconds()), file=f_times)

    df = pd.DataFrame(measures)
    # print(df.to_string(), file=stderr)

    df.to_csv('out/{}.csv'.format(g.name))
Example #14
0
def teste(arq):
    cot =  int(arq[1])
    G = [[0 for _i in range(2)] for _i in range(cot)]   
    weights = [[0 for _i in range(1)] for _i in range(cot)]
    
    i = 3; j = 0
    while i < len(arq): 
        G[j][0] = arq[i]
        i = i + 1
    
        G[j][1] = arq[i]
        i = i + 1

        weights[j][0] = arq[i] 
        i = i + 1
        j = j + 1 
    
    edge_labels ={}

    for i in range(cot):
        edge_labels.setdefault((G[i][0], G[i][1]), weights[i][0])
        
    graph.draw_graph(G, edge_labels)
Example #15
0
def dynamic_generate_bi(file_path, out_dir):
    df = pd.DataFrame.from_csv(file_path)
    bar_generator = BarGenerator()
    bi_generator = BiGenerator()

    for index, row in df.iterrows():
        raw_bar = Bar(index, row.High, row.Close, 0)
        result, new_bar = bar_generator.process_bar(raw_bar)
        if result == 'merge':
            bi_generator.replace_last_bar(new_bar)
        elif result == 'new':
            bi_generator.append_bar(new_bar)
        else:
            pass

    ended_bi = bi_generator.ended_bi
    trend_confirmed_bi = bi_generator.trend_confirmed_bi

    processed_bars = bar_generator.processed_bars
    calc_gravity_and_log_change(processed_bars)

    lines = []
    for bi in ended_bi:
        start, end = bi.to_line()
        lines.append(start)
        lines.append(end)

    df2 = bars_to_dataframe(processed_bars)
    df2['gravity'] = (df2.high + df2.low) / 2
    calc_log_change(df2)

    del df2['gravity']

    ticker = os.path.basename(file_path).split('.')[0]
    # df2.to_csv(os.path.join(data_dir, ticker + '_processed.csv'))
    os.chdir(out_dir)
    draw_graph(ticker, df2, lines)
Example #16
0
def page_rank_tags(tags, pages=10, related_tags=2, num_tags=25, min_weight=3):
    all_media = {}
    for tag in tags:
        iSearch = InstagramSearch()
        if related_tags:
            similar_tags = iSearch.tag_search(tag)[0][:related_tags]
            print similar_tags
            if similar_tags:
                similar_tags = [tg.name for tg in similar_tags]
            else:
                similar_tags = [tag]
            print "searching for {0} similar tags {1}".format(related_tags, "\t".join(similar_tags))
        else:
            similar_tags = [tag]
        for t in similar_tags:
            res = iSearch.tag_recent_media(t, pages=pages)
            all_media.update(res)
    # {'tag_info': tag_info, 'tag_page_rank': tpr, 'graph': graph}
    result = results.run_tag_pagerank(all_media, num_tags, min_weight)
    tag_info = result['tag_info']
    tag_page_rank = result['tag_page_rank']
    graph = result['graph']
    draw_graph(graph, file_name="{0}.png".format('_'.join(tags)), rank=tag_page_rank)
    results.print_page_rank(tag_page_rank, tag_info)
Example #17
0
def run(option, Max=12, MAX_T=0.01, p=90):
    global MAX, T_MAX
    MAX = Max
    MAX_T = T_MAX

    nodes = 20
    edges = 30
    graph = gr.create_graph()

    if len(graph.edges()) > edges or len(graph.nodes) != nodes:
        print("Invalid number of edges or nodes! ")
        return

    N = c.init(graph, MAX, CONNECTED, p, option)

    if N != None:
        g = gr.draw_graph(graph)
        c.simulation(N, graph, T_MAX, option, 100)
Example #18
0
def draw_graph(db, subreddit_name, a_month_ago, a_week_ago):
    subreddit.logging.info("Started making graph...")
    actions_to_get = db.get_chart_colors(subreddit_name, "line")

    longterm_actions = db.get_graph_stats(subreddit_name,
                                          actions_to_get=actions_to_get,
                                          since=a_month_ago)
    subreddit.logging.info("Got longterm actions...")
    shortterm_actions = db.get_graph_stats(subreddit_name,
                                           actions_to_get=actions_to_get,
                                           since=a_week_ago)
    subreddit.logging.info("Got shortterm actions...")

    actions_to_get = db.get_chart_colors(subreddit_name, "bar")
    stats = db.get_bar_graph_stats(actions_to_get,
                                   subreddit.get_mods(subreddit_name, db),
                                   subreddit_name, a_week_ago)
    subreddit.logging.info("Got bar chart actions...")

    path = graph.draw_graph(longterm_actions, shortterm_actions, stats)
    subreddit.logging.info("Drew graph... Completed.")
    return path
Example #19
0
def train(model, num_epochs, learning_rate, mini_batch_size):

    print('Start Training...\nModel:', model, '\nTotal Epochs:', num_epochs,
          '\nLearning Rate:', learning_rate, '\nMini Batch Size:',
          mini_batch_size)

    w2i, embedding = set_embedding(model=model,
                                   pretrained_path='./pretrained',
                                   train_data_path='./data/rt-polaritydata')
    longest_setenence_length = longest_sentence(path='./data/rt-polaritydata')
    divide_train_and_test_set(path='./data/rt-polaritydata')

    train_data, train_labels = train_data_ready(
        path='./data/rt-polaritydata',
        w2i=w2i,
        length=longest_setenence_length)
    test_data, answers = test_data_ready(path='./data/rt-polaritydata',
                                         w2i=w2i,
                                         length=longest_setenence_length)

    classifier = Classifier(model, embedding, len(w2i), learning_rate)

    epoch_lst = []
    accuracy_lst = []
    best_accuracy = 0.0
    best_epoch = 0

    #print(classifier.static_check(0)) #you can check CNN-static's Embedding doesn't change during training

    for epoch in range(1, num_epochs + 1):

        start_time = time.time()

        print(
            '-------------------------------------------------------------------'
        )
        print('Epoch:', epoch)

        train_data, train_labels = shuffle_train_data(train_data, train_labels)
        train_num = len(train_data)
        i = 0
        while i < train_num:
            if i + mini_batch_size <= train_num:
                loss = classifier.train(train_data[i:i + mini_batch_size],
                                        train_labels[i:i + mini_batch_size],
                                        constraint=3.0)
            else:
                loss = classifier.train(train_data[i:],
                                        train_labels[i:],
                                        constraint=3.0)
            i += mini_batch_size
            if i % 1500 == 0:
                print('loss: %.7f' % loss)

        end_time = time.time()
        time_elapsed = end_time - start_time
        print('Time Elapsed for This Epoch: %02d:%02d:%02d\n' %
              (time_elapsed // 3600, (time_elapsed % 3600 // 60),
               (time_elapsed % 60 // 1)))

        test_classified = classifier.test(test_data)  #[N 2]
        accuracy = validate(test_classified, answers)
        print('accuracy: %.5f %%' % accuracy)

        epoch_lst.append(epoch)
        accuracy_lst.append(accuracy)

        if accuracy > best_accuracy:
            best_accuracy = accuracy
            best_epoch = epoch
            classifier.save(epoch=epoch, model=model)
        print('Best Accuracy: %.5f %%, Best Epoch: %04d' %
              (best_accuracy, best_epoch))
        print(
            '-------------------------------------------------------------------\n'
        )

    #print(classifier.static_check(0)) #you can check CNN-static's Embedding doesn't change during training

    print('Training has been Completed')
    print('Best Model has been Saved')
    print(model)
    print('Best Accuracy: %.5f, Best Epoch: %04d' %
          (best_accuracy, best_epoch))

    draw_graph(epoch_lst, accuracy_lst, model)
Example #20
0
import sys
sys.path.append('../')
import matplotlib.pyplot as plt

from graph import load_graph
from graph import draw_graph


if __name__ == "__main__":
    G = load_graph(data_dir='../data')
    draw_graph(G)
    plt.show()
Example #21
0
        state_machine = master
        events = master_events
    else:
        state_machine = slave
        events = slave_events

    print('--------------------------------')
    print('Aktualny stan:', state_machine.current_state.name)
    tranzycje = state_machine.allowed_transitions

    id = state_machine.states.index(state_machine.current_state)
    if master_on:
        state = 'm' + str(id)
    else:
        state = 's' + str(id)
    draw_graph(state)

    # --------------------------------
    # # Ręczne wybieranie tranzycji
    # print('Dostępne tranzycje:')
    # for i in range(len(tranzycje)):
    #     print(str(i + 1) + '.', events[tranzycje[i].identifier], '->', tranzycje[i].destinations[0].name)
    #
    # print('Wybierz zdarzenie:', end=' ')
    # zd = int(input()) - 1
    # while zd not in range(len(tranzycje)):
    #     print('Niepoprawne zdarzenie.')
    #     print('Podaj numer zdarzenia:', end=' ')
    #     zd = int(input()) - 1
    #
    # t = tranzycje[zd]
Example #22
0
                   help='input output filetypes separated by space')
group.add_argument('--show', '-s', action="store_true", help='show the graph')
parser.add_argument('--dir',
                    '-d',
                    default=str(Path.cwd()) + "/out",
                    help='input directory for output files')
parser.add_argument('--name', '-n', help='input filename for the output file')

args = parser.parse_args()
assets = args.asset
filetypes = args.output

# TODO: if filename exists, auto-increment

try:
    current_fig = graph.draw_graph(assets)
except (data.AssetError, data.RequestError, graph.StyleError):
    pass
else:
    if filetypes:
        if not args.name:
            args.name = '_'.join(assets) + datetime.date.today().strftime(
                "%y%m%d")
        print("Program running...Press ^C to exit.")
        # generate output path with dir/filename
        path = Path(args.dir) / args.name
        graph.get_exports(current_fig, filetypes, path)
        print("Export succeeded.")
    else:
        graph.show_graph()
Example #23
0
import graph
import matplotlib.pyplot as plt


def gravity_force(m1, m2, r):
    gravity_constant = 6.674e-11
    force = (gravity_constant * (m1 * m2)) / (r**2)
    return force


def get_coords_gravity(m1, m2, radius):
    x = []
    y = []
    for distance in radius:
        newtons = gravity_force(m1, m2, distance)
        x.append(distance)
        y.append(newtons)
    ax = []
    ax.extend([min(x), max(x), min(y), max(y)])
    plt.title(f"Gravity between {m1}kg & {m2}kg")
    plt.xlabel("Distance [m] between each mass")
    plt.ylabel("Force [N] acting on each mass")
    return x, y, ax


if __name__ == "__main__":
    g_x, g_y, g_ax = get_coords_gravity(0.5, 1.5, graph.ranger(1, 11, 0.1))
    graph.draw_graph(g_x, g_y, g_ax)
    graph.show_graph()
Example #24
0
        start = time.clock()
        branch = branch.upper()
        print('------------------%s ------------------' % branch)
        print 'Loading parameters ...'
        # get config information
        parameters = read_para.read_conf(path, branch)
        print 'Updating chart ...'
        # update data in chart
        chart.update_chart(path, branch, parameters, unstable)
        print 'Reading chart ...'
        # get data for graph
        datelist, datadict = chart.read_chart(path, branch)

        print 'Drawing graphs ...'
        # draw graph for ci result 
        pic1, pic2 = graph.draw_graph(path, branch, datelist, datadict, parameters['graph']['day_num'])
        # get_labels(path, branch, parameters)
        sources = {'s1': pic1, 's2': pic2}
        print 'Creating email content ...'
        # create the html of email
        sources = mail.create_email(path, branch, datelist[0], sources,  parameters)
        if r == 'a':
            rec = parameters['to']
            cop = parameters['cc']
        elif r == 'm':
            rec = [parameters['from']]
            cop = [parameters['from']]
        mail.send_email(path, branch, datelist[0], parameters['from'], rec, cop,  sources)
        print 'Email('+str(datelist[0])+') sent to:\n\t\t'+'\n\t\t'.join(rec)
        print '            copied to:\n\t\t'+'\n\t\t'.join(cop)
        stop = time.clock()
Example #25
0
#!/bin/python
#%%
import os
import pandas as pd

from dataset import merge_tweets_of_all_groups
from graph import create_graph, graph_measures, merge_graph_feats_with_tweet_feats, draw_graph

# merge_tweets_of_all_groups()

g = create_graph(only_classified_users=True, override=True)
# meas = graph_measures(g)
# merge_graph_feats_with_tweet_feats(meas)

draw_graph(False)
Example #26
0
    def fuzzificate(self, rule_no):
        alpha_cut = min(self.distance_membership, self.brightness_membership)
        ranges = self.ranges
        rule_outs = []

        if (rule_no == 1):
            y1 = []
            for i in range(len(ranges)):
                y1.append(round(power.very_high(ranges[i], alpha_cut), 2))
            draw_graph(ranges, y1, 'rule' + str(1), 1)
            return y1
        elif (rule_no == 2):
            y2 = []
            for i in range(len(ranges)):
                y2.append(round(power.very_high(ranges[i], alpha_cut), 2))
            draw_graph(ranges, y2, 'rule' + str(2), 2)
            return y2
        elif (rule_no == 3):
            y3 = []
            for i in range(len(ranges)):
                y3.append(round(power.high(ranges[i], alpha_cut), 2))
            draw_graph(ranges, y3, 'rule' + str(3), 3)
            return y3
        elif (rule_no == 4):
            y4 = []
            for i in range(len(ranges)):
                y4.append(round(power.high(ranges[i], alpha_cut), 2))
            draw_graph(ranges, y4, 'rule' + str(4), 4)
            return y4
        elif (rule_no == 5):
            y5 = []
            for i in range(len(ranges)):
                y5.append(round(power.low(ranges[i], alpha_cut), 2))
            draw_graph(ranges, y5, 'rule' + str(5), 5)
            return y5
        elif (rule_no == 6):
            y6 = []
            for i in range(len(ranges)):
                y6.append(round(power.low(ranges[i], alpha_cut), 2))
            draw_graph(ranges, y6, 'rule' + str(6), 6)
            return y6
        elif (rule_no == 7):
            y7 = []
            for i in range(len(ranges)):
                y7.append(round(power.low(ranges[i], alpha_cut), 2))
            draw_graph(ranges, y7, 'rule' + str(7), 7)
            return y7
        elif (rule_no == 8):
            y8 = []
            for i in range(len(ranges)):
                y8.append(round(power.low(ranges[i], alpha_cut), 2))
            draw_graph(ranges, y8, 'rule' + str(8), 8)
            return y8
        elif (rule_no == 9):
            y9 = []
            for i in range(len(ranges)):
                y9.append(round(power.very_low(ranges[i], alpha_cut), 2))
            draw_graph(ranges, y9, 'rule' + str(9), 9)
            return y9
        elif (rule_no == 10):
            y10 = []
            for i in range(len(ranges)):
                y10.append(round(power.low(ranges[i], alpha_cut), 2))
            draw_graph(ranges, y10, 'rule' + str(10), 10)
            return y10
        elif (rule_no == 11):
            y11 = []
            for i in range(len(ranges)):
                y11.append(round(power.very_low(ranges[i], alpha_cut), 2))
            draw_graph(ranges, y11, 'rule' + str(11), 11)
            return y11
        elif (rule_no == 12):
            y12 = []
            for i in range(len(ranges)):
                y12.append(round(power.very_low(ranges[i], alpha_cut), 2))
            draw_graph(ranges, y12, 'rule' + str(12), 12)
            return y12
Example #27
0
import graph as gp

print("PROJEKCIK 1 GRAFY")
graph_in_file = gp.read_graph_from_file('projekt1/graph_examples.txt')
graph_type = type(graph_in_file)

if graph_type == gp.AdjacencyMatrix:
    print(gp.convert(graph_in_file, gp.AdjacencyList))
    print(gp.convert(graph_in_file, gp.IncidenceMatrix))
elif graph_type == gp.IncidenceMatrix:
    print(gp.convert(graph_in_file, gp.AdjacencyMatrix))
    print(gp.convert(graph_in_file, gp.AdjacencyList))
elif graph_type == gp.AdjacencyList:
    print(gp.convert(graph_in_file, gp.AdjacencyMatrix))
    print(gp.convert(graph_in_file, gp.IncidenceMatrix))

gp.draw_graph(graph_in_file)

rnd_graph = gp.random_graph(7, 10)
gp.draw_graph(rnd_graph)
rnd1_graph = gp.random_graph(7, edge_probability=0.5)
gp.draw_graph(rnd1_graph)
Example #28
0
louvain_res = [
    "louvain_n400_p0.3_q0.3.txt", "louvain_n400_p0.6_q0.3.txt",
    "louvain_n400_p0.8_q0.1.txt", "louvain_n400_p0.8_q0.2.txt",
    "louvain_benchmark_n128_e1024.txt", "louvain_benchmark_n1000_e8000.txt"
]

if __name__ == '__main__':
    print("Loading Louvain Algorithm's results")
    for i in range(len(louvain_res)):

        louvain_filename = louvain_res[i]
        graph_filename = graphs[i]

        print("---")
        print("Louvain Algorithm's result of graph " + graph_filename)

        cluster = load_community("results/" + louvain_filename, delimiter=" ")
        graph, _, _ = load_graph("data/" + graph_filename)

        labels_unique, partition = np.unique(cluster, return_counts=True)
        number_communities = len(labels_unique)

        community_filename = os.path.splitext(louvain_filename)[0]
        draw_graph(graph, cluster, community_filename + ".png")

        print("Picture of communities exported to graph/" +
              community_filename + ".png")
        print("Number of communities:", number_communities)
        print("Partition of nodes in different clusters/labels:",
              [item for item in partition])
Example #29
0

def opening():
    os.system("cd fabric8-analytics.github.io; git log --pretty=oneline > \
              logs.txt")

    with open("fabric8-analytics.github.io/logs.txt", "r") as f:
        for line in f:
            splitted_line = line.split()
            if splitted_line[1] == "Dashboard" and len(splitted_line) == 3:
                commits.append(splitted_line)
        commits.reverse()
        f.close()
    print(commits, len(commits))


def checkout():
    for commit in commits:
        os.system("cd fabric8-analytics.github.io; git checkout %s" %
                  (commit[0]))
        print(os.path.exists(file))
        if os.path.exists(file):
            graph.opening(file, commit[2])


opening()
checkout()
for file in graph.lines:
    if len(file) > 1:
        graph.draw_graph(file[0])
Example #30
0

def get_coords_poly(fn, coefficients, lo, hi):
    x = []
    y = []
    for n in range(int(lo), int(hi + 1)):
        x.append(n)
        y.append(fn(n, coefficients))
    ax = []
    ax.extend([min(x), max(x), min(y), max(y)])
    plt.title("Plot of polynomial function")
    plt.xlabel("x-values")
    plt.ylabel("y-values")
    return x, y, ax


if __name__ == "__main__":
    coe = [1, 2, 1]
    x_values = list(graph.ranger(-10, 10, 1))
    y_values = []

    for n in x_values:
        y_values.append(polynomial(n, coe))
    value_pairs = list(zip(x_values, y_values))
    print(f"Function values: {value_pairs}")

    coefficients = [0.5, 2, 0.25]
    x, y, ax = get_coords_poly(polynomial, coefficients, 0, 100)
    graph.draw_graph(x, y, ax)
    graph.show_graph()
Example #31
0
def angel_mortal_arrange(player_list):
    '''
    Depending on the gender preferences to follow, run the edge-finding
    algorithm, generate a graph and find a Hamiltonian circuit.
    '''
    print("Arranging player list: %s" % player_list)
    # Convert the list of players into a list of valid edges
    player_edges = get_player_edges_from_player_list(player_list)
    # Generate the overall graph from all edges
    overall_graph = get_graph_from_edges(player_edges)
    print("Number of nodes in overall graph: " +
          str(overall_graph.number_of_nodes()))
    # Find all connected components and find cycles for all
    graphs = list(nx.strongly_connected_component_subgraphs(overall_graph))

    print("\nConnected components detected: %s" % len(graphs))

    print("Printing original player list: ")
    for player in player_list:
        print(player)

    print("\n\n")

    print("Player list size: " + str(len(player_list)))

    list_of_player_chains = []

    for G in graphs:

        print("Printing players in current graph:")
        for graph_player in G.nodes():
            print(graph_player)

        # Draw this intermediate graph
        print("Number of nodes in graph: " + str(G.number_of_nodes()))
        if DISPLAY_GRAPH:
            draw_graph(G)

        # Find out if there is DEFINITELY no hamiltonian cycle
        is_there_full_cycle = is_there_definitely_no_hamiltonian_cycle(G)
        print("Is there DEFINITELY no full cycle? - %s" % is_there_full_cycle)
        # Sleep for a few seconds
        time.sleep(2)
        '''
        # Output all cycles that encompass all nodes (valid pairings)
        full_cycles = get_full_cycles_from_graph(G)
        # Pick any full cycle to draw, or draw nothing if there are no full cycles
        full_cycle = get_one_full_cycle(full_cycles)
        '''
        full_cycle = hamilton(G)  #get_one_full_cycle_from_graph(G)
        # full_cycle = get_hamiltonian_path_from_graph(G)
        # Draw the full cycle if it exists
        if full_cycle is not None:
            G_with_full_cycle = convert_full_cycle_to_graph(full_cycle)
            draw_graph(G_with_full_cycle)
            list_of_player_chains.append(full_cycle)
        else:
            print(
                "There is no full cycle - sorry! This means that the current set of players cannot form a perfect chain given the arrange requirements"
            )

    return list_of_player_chains
Example #32
0
    v = 0
    try:
        (i,j) = x[v][0]
    except IndexError:
        return []
    path = [i, v]
    
    while j != None:
        j = find_match_and_remove(x[v], i)
        path.append(j)
        i, v = v, j
    return path[:-2]
    

    
    
ea_algo = ga.EA(fitness=fitness, mutation=mutation)
best_x = ea_algo.run(n=n, x_init=x_init, offspring_size=10, n_generations=100, p=0.5)

print 'fitness = ', fitness(best_x)
print best_x
path= reconstruct_path(best_x)
print path
graph.draw_graph(edges, 'graph.png')
graph.draw_graph(edges, 'resources/graph_cycle.png', path=path)





Example #33
0
    # Сортировка всех точек
    points.sort(key=lambda point: (point.y, point.x))
    # Строим Ттреугольник на первых 3 точках
    points[0].bind(points[1])
    points[1].bind(points[2])
    points[2].bind(points[0])
    convex_hall = points[:3]
    # Далее идем по остальным точ# convex_hall = add_point(convex_hall, points[3])
    for i in range(3, len(points)):
        convex_hall = add_point(convex_hall, points[i])
    return points


if __name__ == "__main__":
    fig, ax = plt.subplots()
    # points1 = [Point(0, 8.5), Point(8.2, 0), Point(8, 4), Point(14, 4), Point(19, 5.5), Point(3, 11), Point(7, 12),
    #            Point(12, 11.5), Point(17, 9), Point(19, 5.5)]
    coords = [(35, 425), (123, 365), (240, 192), (480, 67), (512, 212),
              (671, 161), (897, 431), (800, 383), (674, 377), (553, 445),
              (454, 542), (374, 452), (266, 394), (344, 374)]
    points2 = [Point(coord[0], coord[1]) for coord in coords]

    # draw_graph(create_triangulation(points1))
    # for point in points1:
    #     plt.plot(point.x, point.y, 'ro')
    # plt.show()
    draw_graph(create_triangulation(points2))
    for point in points2:
        plt.plot(point.x, point.y, 'ro')
    plt.show()
Example #34
0
from google_sheet import read_google_sheet
from topology import topological_sort, preprocess_data
from file_process import generate_deploy_files
from graph import draw_graph

if __name__ == '__main__':
    # read data from google sheet
    list_of_records = read_google_sheet(
        secret_key_file='input_files/secret.json')
    print(list_of_records)

    # # parse data
    apps = preprocess_data(list_of_records)
    print(apps)

    # # topology sort
    result, jobs_order = topological_sort(apps)
    print(jobs_order)

    if result == 'OK':
        generate_deploy_files(jobs_order)
        draw_graph(apps)
Example #35
0
              y_train,
              validation_data=(x_test, y_test),
              epochs=FLAGS.n_e,
              batch_size=FLAGS.b_s,
              verbose=FLAGS.verbose)

    # Evaluate the model
    scores = model.evaluate(x_test, y_test)
    log.logger.info("ACC(test):\t" + str(scores[2] * 100) + "%\t" +
                    log.filename + " s" + str(FLAGS.seed) + "\t")
    log.logger.info("MSE(test):\t" + str(scores[1]) + "\t" + log.filename +
                    " s" + str(FLAGS.seed) + "\t")
    scores = model.evaluate(x_data, y_data)
    log.logger.info("ACC(all):\t" + str(scores[2] * 100) + "%\t" +
                    log.filename + " s" + str(FLAGS.seed) + "\t")
    log.logger.info("MSE(all):\t" + str(scores[1]) + "\t" + log.filename +
                    " s" + str(FLAGS.seed) + "\t")

    # Save model
    model_json = model.to_json()
    with open("result/model/" + log.filename + ".json", "w") as json_file:
        json_file.write(model_json)  # serialize model to JSON
    model.save_weights("result/model/" + log.filename + ".h5")  # weight
    print("Save model ... done")

    # Make graph
    if FLAGS.graph == 1:
        est = model.predict(x_data)
        graph.draw_graph(x_data[:, -1], y_data, est)
        print("Save graph ... done")