Example #1
0
    def __init__(self):
        super(MainWindow,self).__init__()

        self.resize(500, 40)
        self.setWindowTitle("Key Frame View")



        self.keyPanel = KeyFramePanel(None)

        dataModel = DataModel(dataContainer = DemoData(50),prefetchSize = 0)
        transModel = TransformModel()
        transModel.setModel(dataModel)

        transModel.setValueScale(0,200)
        dataModel.setPos(2)
        self.keyPanel.connect_to_transform(transModel)


        k = KeyFrameList()
        k.addItem(KeyFrame(0.1))
        k.addItem(KeyFrame(0.9))

        # k = KeyFrameList._from_JSON(open("test.json").read())

        # print k

        # self.keyPanel.setModel(k)

        self.keyPanel.load_from_JSON("test.json")

        self.setCentralWidget(self.keyPanel)

        self.setStyleSheet("background-color:black;")
Example #2
0
    def __init__(self):
        super(MainWindow,self).__init__()

        self.resize(500, 40)
        self.setWindowTitle("Key Frame View")



        self.keyPanel = KeyFramePanel(None)

        dataModel = DataModel(dataContainer = DemoData(50),prefetchSize = 0)
        transModel = TransformModel()
        transModel.setModel(dataModel)

        dataModel.setPos(2)

        self.keyPanel.keyView.setTransformModel(transModel)

        k = KeyFrameList()
        k.addItem(KeyFrame(0.4))
        # k.addItem(KeyFrame(0.9))



        self.keyPanel.keyView.setKeyListModel(k)


        self.setCentralWidget(self.keyPanel)

        self.setStyleSheet("background-color:black;")
def get_data_from_folder(trainfolderpath):
    imagePaths = list(p.list_images(trainfolderpath))
    features = []
    labels = []

    for (i, imagePath) in enumerate(imagePaths):
        # load the image and extract the class label (assuming that our
        # path as the format: /path/to/dataset/{class}.{image_num}.jpg
        image = cv2.imread(imagePath)
        label = imagePath.split(os.path.sep)[-1].split(".")[0]
        hist = extract_color_histogram(image)
        features.append(hist)
        labels.append(label)

        if i > 0 and i % 1000 == 0:
            print("[INFO] processed {}/{}".format(i, len(imagePaths)))

    # zmiana listy na tablicę
    features = np.array(features)
    labels = np.array(labels)

    (trainFeat, testFeat, trainLabels, testLabels) = train_test_split(
        features, labels, test_size=0.25, random_state=42)

    dataModel = DataModel()
    dataModel.setTrainFeat(trainFeat)
    dataModel.setTrainLabels(trainLabels)
    dataModel.setTestFeat(testFeat)
    dataModel.setTestLabels(testLabels)

    return dataModel
Example #4
0
class W2Vec:
    def __init__(self):
        self.data = DataModel()
        self.xtrain_q = self.input_feature(self.data.X_train()[0])
        print(len(self.xtrain_q))
        self.xtrain_qa = self.input_feature(self.data.X_train()[1])
        self.models = [
            Word2Vec(self.xtrain_q, min_count=1, size=100, workers=4),
            Word2Vec(self.xtrain_qa, min_count=1, size=100, workers=4)
        ]
        self.train_wv = [
            np.array(
                [self.word_vectors(q, self.models[0]) for q in self.xtrain_q]),
            np.array(
                [self.word_vectors(q, self.models[1]) for q in self.xtrain_qa])
        ]
        #print(self.train_wv[0])
        self.qa = self.data.getQA()

    def word2vec_data(self, data):
        return [[word for word in row.split()] for row in data]

    def input_feature(self, q):
        q = [q]
        q = self.data.text_preprocessor(q)
        q = self.word2vec_data(q)
        return q

    def word_vectors(self, q, model, test=False):
        if test:
            q = self.input_feature(q)
        wv = []
        for row in q:
            vec = np.zeros(100)
            count = 0
            for word in row:
                try:
                    vec += model[word]
                    count += 1
                except:
                    pass
            wv.append(vec / count)
        return np.array(wv)

    def predict(self, q):
        answers = []
        for index, vectors in enumerate(self.train_wv):
            print(vectors.shape)
 def find_best_single_feature_parameters(self, dataset):
     for feature in dataset.suggested_discretize_features:
         permutations = self.generate_feature_parameters(feature)
         print(permutations)
         best_mean_fcs = self.best_fcs[dataset]
         best_perm = None
         for p, perm in enumerate(permutations):
             logging.error("[Parameters Tester][{}][{}][Perm {:03d}] Current permutation: {}".format(dataset, feature, p+1,  perm))
             dm = DataModel.generate_from_file(dataset, discretize_params=perm)
             classes_list = dm.get_classes_list()
             f_scores = []
             a = 1
             for _ in range(self.best_fold[dataset][1]):
                 for train_set, test_set in dm.generate_k_folds_stratified(self.best_fold[dataset][0]):
                     model_evaluator = ModelEvaluator(train_set, test_set, classes_list)
                     model_evaluator.evaluate()
                     f_scores.append(model_evaluator.get_f_score())
                     logging.error("[Parameters Tester][{}][{}][Perm {:03d}][{:03d}] FCS: {}".format(dataset, feature, p+1, a, f_scores[-1]))
                     a += 1
             f_score_mean = sum(f_scores) / len(f_scores)
             logging.error("[Parameters Tester][{}][{}][Perm {:03d}] Best FCS: {}, Mean FCS {}".format(dataset, feature, p+1, max(f_scores), f_score_mean))
             if f_score_mean > best_mean_fcs:
                 best_perm = perm[0]
                 best_mean_fcs = f_score_mean
         if best_perm is not None:
             self.best_discretize_feature_params[dataset].append(best_perm)
         logging.error("[Parameters Tester][{}][{}] Best mean FCS: {}, Best parameters: {}".format(dataset, feature, best_mean_fcs, best_perm))
Example #6
0
 def __init__(self):
     self.data = DataModel()
     self.xtrain_q = self.input_feature(self.data.X_train()[0])
     print(len(self.xtrain_q))
     self.xtrain_qa = self.input_feature(self.data.X_train()[1])
     self.models = [
         Word2Vec(self.xtrain_q, min_count=1, size=100, workers=4),
         Word2Vec(self.xtrain_qa, min_count=1, size=100, workers=4)
     ]
     self.train_wv = [
         np.array(
             [self.word_vectors(q, self.models[0]) for q in self.xtrain_q]),
         np.array(
             [self.word_vectors(q, self.models[1]) for q in self.xtrain_qa])
     ]
     #print(self.train_wv[0])
     self.qa = self.data.getQA()
Example #7
0
    def __init__(self, data_model=None):
        if data_model is None:
            self.data_model = DataModel.new()
        else:
            self.data_model = data_model

        self.connection_set = ConnectionSet(self.data_model)
        self.node_types = {}
Example #8
0
 def loadData(self):
     # loads the data from mongodb in the table view
     self.search_text.clear()
     try:
         self.model = DataModel(self.mongo_obj.searchData({}, {"_id": 0}))
         self.proxyModel = QSortFilterProxyModel(self)
         self.proxyModel.setSourceModel(self.model)
         self.tableView.setModel(self.proxyModel)
     except Exception as e:
         self.alert("error", "Load failed", str(e))
Example #9
0
def main():
    dm = DataModel.generate_from_file(
        PIMA_DIABETES_DATASET,
        smooth=True,
        discretize_params=[
            DiscretizeParam('Age', kbins_discretize, 10),
            DiscretizeParam('SkinThickness', kbins_discretize, 10),
            DiscretizeParam('Pregnancies', kbins_discretize, 10)
        ])
    print(Discretizer.kmean_models)
Example #10
0
def build_server():
    server = Flask(__name__)
    server.config.from_object(SessionConfig)
    Session(server)

    app = DashAppWrapper(__name__,
                         server=server,
                         external_stylesheets=[dbc.themes.BOOTSTRAP])

    empty_data = pd.DataFrame(columns=states + ["natl_pop_vote", "dem_ec"])
    app.layout = DashLayout(DataModel(empty_data)).get_layout()
    set_app_callbacks(app)
    return server
Example #11
0
    def __init__(self, constraints_generator: str, sigma0: float,
                 scaler: bool, model_name: str, k: int, n: int, margin: float,
                 x0: np.ndarray = None, benchmark_mode: bool = False, clustering_k_min: int=0, seed: int = 404,
                 db: str = 'experiments', draw: bool = False, max_iter: int = int(50), train_sample: int = 500):
        data_model = DataModel(name=model_name, k=k, n=n, seed=seed, train_sample=train_sample) if model_name != "case_study" else CaseStudyDataModel()

        self.__n_constraints = cg.generate(constraints_generator, n)
        self.__w0 = np.repeat(1, self.__n_constraints)
        self.__x0 = x0
        log.debug('Creating train X')
        self.train_X = data_model.train_set()
        log.debug('Creating valid X')
        self.valid_X = data_model.valid_set()
        log.debug('Finished creating datasets')
        self.__dimensions = self.train_X.shape[1]
        self.__constraints_generator = constraints_generator
        self.test_X, self.test_Y = None, None
        self.__sigma0 = sigma0
        self.__scaler = StandardScaler() if scaler else None
        self.__data_model = data_model
        self.__margin = margin
        self.matches_constraints = data_model.benchmark_model.benchmark_objective_function if benchmark_mode else self.satisfies_constraints
        self.__clustering = clustering_k_min
        self.__results = list()
        self.__seed = seed
        self.db = db
        self.benchmark_mode = benchmark_mode
        self.draw = draw
        self.time_delta = None
        self.current_cluster = None
        self.max_iter = max_iter

        if self.__scaler is not None:
            self.__scaler.fit(self.train_X)
            self.train_X = self.__scaler.transform(self.train_X)
            self.valid_X = self.__scaler.transform(self.valid_X)

        if self.__clustering:
            self.clusters = xmeans_clustering(self.train_X, kmin=clustering_k_min, visualize=False)
def get_session_dict():
    if not session.get("initialized", False):
        return init_session_data()

    print("get", sorted(session.keys()))
    session_dict = dict(
        random_data_sample=deserialize_pd(session["random_data_sample"]),
        random_sample_mode=session["random_sample_mode"],
        new_random_538_map=session["new_random_538_map"],
        new_average_538_map=session["new_average_538_map"],
        reset_button_pressed=session["reset_button_pressed"],
        data_model=DataModel.from_json(session["data_model_json"])
    )
    return session_dict
def init_session_data():
    csv_filenames = glob(f"{data_folder}/*.csv")
    elections_data = data_functions.load_data(csv_filenames)
    new_session_dict = dict(
        data_model=DataModel(
            elections_data.iloc[random.sample(range(len(elections_data)), data_size)]
        ),
        random_data_sample=None,
        random_sample_mode=False,
        new_random_538_map=False,
        new_average_538_map=False,
        reset_button_pressed=False
    )
    set_session_dict(new_session_dict)
    return new_session_dict
Example #14
0
def save_data_db(data, session):
    for d in data:
        result = session.query(DataModel).filter_by(mes=d['mes'],
                                                    ano=d['ano']).first()

        if (result == None):
            event = DataModel(id=str(uuid.uuid4()),
                              ano=d['ano'],
                              bandeira=d['bandeira'],
                              mes=d['mes'],
                              numero_mes=d['numero_mes'],
                              valor=d['valor'],
                              created_at=datetime.datetime.now())

            session.add(event)
            session.commit()
 def find_best_fold(self, dataset):
     dm = DataModel.generate_from_file(dataset)
     classes_list = dm.get_classes_list()
     for fold in FOLDS:
         f_scores = []
         a = 1
         for _ in range(fold[1]):
             for train_set, test_set in dm.generate_k_folds_stratified(fold[0]):
                 model_evaluator = ModelEvaluator(train_set, test_set, classes_list)
                 model_evaluator.evaluate()
                 f_scores.append(model_evaluator.get_f_score())
                 logging.error("[Parameters Tester][{}][CV{:02d}][{:03d}] FCS: {}".format(dataset, fold[0], a, f_scores[-1]))
                 a += 1
         f_score_mean = sum(f_scores) / len(f_scores)
         logging.error("[Parameters Tester][{}][CV{:02d}] Best FCS: {}, Mean FCS {}".format(dataset, fold[0], max(f_scores), f_score_mean))
         self.append_result({'dataset':dataset.name, 'fold':fold[0], 'f_score':f_score_mean, 'permutation':-1})
         if f_score_mean > self.best_fcs[dataset]:
             self.best_fold[dataset] = fold
             self.best_fcs[dataset] = f_score_mean
     logging.error("[Parameters Tester][{}] Best mean FCS: {}, Best fold: {}".format(dataset, self.best_fcs[dataset], self.best_fold[dataset]))   
Example #16
0
    def getRecommendations(self):
        ''' Use demographic filtering to get recommended apps '''
        try:
            # mongodb query
            x = list(self.mongo_obj.getCollection().aggregate([{
                "$match": {
                    "Rating": {
                        "$gt": 0
                    }
                }
            }, {
                "$group": {
                    "_id": "_id",
                    "AverageRating": {
                        "$avg": "$Rating"
                    }
                }
            }]))
            data = self.mongo_obj.searchData({}, {
                "_id": 0,
                "App": 1,
                "Category": 1,
                "Rating": 1,
                "Reviews": 1
            })
            data.dropna(inplace=True)

            # determine the score of all apps
            C = x[0]["AverageRating"]  # C - average rating for all apps
            # minimum number of reviews required
            m = data["Reviews"].quantile(0.9)
            filter_data = data.copy().loc[data["Reviews"] >= m]
            filter_data['Score'] = self.weighted_rating(filter_data, m, C)
            filter_data = filter_data.sort_values('Score', ascending=False)

            # display results
            dlg = Recommended_Apps_Dialog(self)
            dlg.tableView.setModel(DataModel(filter_data.head(n=20)))
            dlg.show()
        except Exception as e:
            self.alert("error", "Error", str(e))
Example #17
0
    def from_json(file_name, data_model_type='dict'):
        '''
        Import a network from a JSON file using the nio library.
        '''
        data_model = DataModel.new(data_model_type)
        network = Network(data_model)
        data = nio.read(file_name)

        nodes = data.get('nodes', None)
        if nodes is not None:
            network.data_model.insert('nodes', nodes)

        types = data.get('types', None)
        if types is not None:
            network.types = types

        connections = data.get('connections', None)
        if connections is not None:
            network.connection_set.add_list(connections)

        return network
 def find_best_parameters(self, dataset):
     permutations = self.generate_permutations(dataset)
     for p, perm in enumerate(permutations):
         logging.error("[Parameters Tester][{}][Perm {:08d}] Current permutation: {}".format(dataset, p+1, perm))
         dm = DataModel.generate_from_file(dataset, discretize_params=perm)
         classes_list = dm.get_classes_list()
         f_scores = []
         a = 1
         for _ in range(self.best_fold[dataset][1]):
             for train_set, test_set in dm.generate_k_folds_stratified(self.best_fold[dataset][0]):
                 model_evaluator = ModelEvaluator(train_set, test_set, classes_list)
                 model_evaluator.evaluate()
                 f_scores.append(model_evaluator.get_f_score())
                 logging.error("[Parameters Tester][{}][Perm {:08d}][{:03d}] FCS: {}".format(dataset, p+1, a, f_scores[-1]))
                 a += 1
         f_score_mean = sum(f_scores) / len(f_scores)
         logging.error("[Parameters Tester][{}][Perm {:08d}] Best FCS: {}, Mean FCS {}".format(dataset, p+1, max(f_scores), f_score_mean))
         for param in perm:
             self.append_result({'dataset':dataset.name, 'fold':self.best_fold[dataset][0], 'f_score':f_score_mean, 'permutation':p + 1, 'feature':param.feature_name, 'function':param.discretize_function.__name__, 'bins':param.buckets_amount})
         if f_score_mean > self.best_fcs[dataset]:
             self.best_discretize_parameters[dataset] = perm
             self.best_fcs[dataset] = f_score_mean
     logging.error("[Parameters Tester][{}] Best mean FCS: {}, Best parameters: {}".format(dataset, self.best_fcs[dataset], self.best_discretize_parameters[dataset]))
Example #19
0
    def __init__(self):

        BASE_DIR = os.path.dirname(os.path.dirname(os.path.abspath(__file__)))
        sys.path.append(BASE_DIR)

        self.data_model = DataModel()
Example #20
0
def fetch():
    body = request.json['id']
    ret = DataModel.objects(id=body).first()
    return jsonify({'id': str(ret.id), 'text': ret.text})
Example #21
0
__author__ = 'David'

import keras
from data_model import DataModel as DM
from model import Model as M
import random
import numpy as np
import sys

data = DM()

data_input = data.open_file('..\posts_files\posts_Culture.txt')
X, y, chars, char_indices, indices_char = data.prepare_dataset(data_input)
model_class = M()

maxlen = 20
step = 3
sentences = []
next_chars = []

model = model_class.generate_model(data_input, maxlen)

for iteration in range(1, 60):
    print()
    print('-' * 50)
    print('Iteration', iteration)
    model.fit(X, y, batch_size=16, nb_epoch=1)

    start_index = random.randint(0, len(data_input) - maxlen - 1)

    for diversity in [0.2, 0.5, 1.0, 1.2]:
 def __init__(self, parent, page_source_code, **kwargs):
     self.parent = parent
     self.data_model = DataModel(page_source_code=page_source_code)
     self.enable_web_copy(enable=kwargs.get("enable_web_copy", True))
Example #23
0
async def save(request):
    body = request.json
    new_data = DataModel(**body)
    ret = await new_data.save()
    return response.json({'id': str(ret.id)}, status=201)
from data_model import model_name, DataModel
import json

json_name = "data/data_model.json"

if __name__ == "__main__":
    data = DataModel.load(model_name)

    with open(json_name, "w") as fh:
        json.dump(data.list, fh)
Example #25
0
                    self.args.batch_threads_num)
                neighbors2 = bat.generate_neighbours(
                    self.eval_kg2_useful_ent_embeddings(),
                    self.kgs.useful_entities_list2, neighbors_num2,
                    self.args.batch_threads_num)
                ent_num = len(self.kgs.kg1.entities_list) + len(
                    self.kgs.kg2.entities_list)
                print('neighbor dict:', len(neighbors1), type(neighbors2))
                print("generating neighbors of {} entities costs {:.3f} s.".
                      format(ent_num,
                             time.time() - t1))
        for i in range(1, self.args.shared_learning_max_epoch + 1):
            self.train_shared_space_mapping_1epo(i, entity_list)
            if i >= self.args.start_valid and i % self.args.eval_freq == 0:
                valid(self, embed_choice='final')
        self.save()
        test(self, embed_choice='nv')
        test(self, embed_choice='rv')
        test(self, embed_choice='av')
        test(self, embed_choice='avg')
        test_WVA(self)
        test(self, embed_choice='final')


if __name__ == '__main__':
    args = load_args('args.json')
    data = DataModel(args)
    attr_align_model = PredicateAlignModel(data.kgs, args)
    model = MultiKE_Late(data, args, attr_align_model)
    model.run()
Example #26
0
    def advSearchData(self):
        # open form dialog
        dlg = Adv_Search_Dialog(self)
        self.search_text.clear()
        if dlg.exec_():
            app = dlg.app.text()
            category = dlg.category.text()
            rating_low = float(dlg.rating_low.text())
            rating_high = float(dlg.rating_high.text())
            reviews_low = dlg.reviews_low.text()
            reviews_high = dlg.reviews_high.text()
            size_low = dlg.size_low.text()
            size_high = dlg.size_high.text()
            installs_low = dlg.installs_low.text()
            installs_high = dlg.installs_high.text()
            price_low = dlg.price_low.text()
            price_high = dlg.price_high.text()
            type = dlg.type.currentText()
            content_rating = dlg.content_rating.currentText()
            genre = dlg.genre.text()
            android_ver = dlg.android_ver.text()
            sort_field = dlg.sort_field.currentText()
            sort_order = dlg.sort_order.currentText()

            # creating the query
            try:
                query = {}
                if not any(
                    (app, category, rating_low, rating_high, reviews_low,
                     reviews_high, size_low, size_high, installs_low,
                     installs_high, price_low, price_high, genre, android_ver)
                ) and type == "None" and content_rating == "None" and sort_field == "None":
                    self.alert("error", "Search Failed",
                               "Please enter some values !")
                    return 0
                if app:
                    query["App"] = {"$regex": app, "$options": "i"}
                if category:
                    category = category.replace(" ", "_").upper()
                    query["Category"] = {"$regex": category, "$options": "i"}
                if rating_low != 0.0 or rating_high != 0.0:
                    query["Rating"] = {"$gte": rating_low}
                    if rating_high != 0.0:
                        query["Rating"]["$lte"] = rating_high
                if reviews_low or reviews_high:
                    query["Reviews"] = {"$gte": int(reviews_low)}
                    if reviews_high:
                        query["Rating"]["$lte"] = int(reviews_high)
                if size_low or size_high:
                    size_low = "" if not size_low else re.findall(
                        r'\d+\.?', size_low)[0] + "M"
                    query["Size"] = {"$gte": size_low}
                    if size_high:
                        size_high = re.findall(r'\d+\.?', size_high)[0] + "M"
                        query["Size"]["$lte"] = size_high
                if installs_low or installs_high:
                    if installs_low:
                        installs_low = installs_low.replace(",", "").replace(
                            "+", "")
                        installs_low = f'{int(installs_low):,}' + "+"
                    query["Installs"] = {"$gte": installs_low}
                    if installs_high:
                        installs_high = installs_high.replace(",", "").replace(
                            "+", "")
                        installs_high = f'{int(installs_high)}' + "+"
                        query["Installs"]["$lte"] = installs_high

                if price_low or price_high:
                    query["Price"] = {"$gte": float(price_low)}
                    if price_high:
                        query["Price"]["$lte"] = float(price_high)
                if type != "None":
                    query["Type"] = type
                if content_rating != "None":
                    query["Content Rating"] = content_rating
                if genre:
                    query["Genre"] = {"$regex": genre, "$options": "i"}
                if android_ver:
                    query["Android Ver"] = {
                        "$regex": "^" + android_ver,
                        "$options": "i"
                    }

                # print(query)
                res = None
                if sort_field == "None":
                    res = self.mongo_obj.searchData(query, {"_id": 0})
                else:
                    sort_order = 1 if sort_order == "Asc" else -1
                    res = self.mongo_obj.searchData(query, {"_id": 0},
                                                    sort_field, sort_order)

                # load data in the table widget
                self.model = DataModel(res)
                self.proxyModel = QSortFilterProxyModel(self)
                self.proxyModel.setSourceModel(self.model)
                self.tableView.setModel(self.proxyModel)
            except Exception as e:
                self.alert("error", "Search Failed", str(e))
Example #27
0
def standard_scaler(name: str, n: int, k: int, seed: int) -> StandardScaler:
    df = DataModel(name, k=k, n=n, seed=seed).train_set()
    scaler = StandardScaler()
    scaler.fit(df)
    return scaler
Example #28
0
from monitor import Monitor
import joblib
from data_model import DataModel
import multiprocessing

word2idx = joblib.load('./preprocessing_data/word2idx.pkl')
label2idx = joblib.load('./preprocessing_data/label2idx.pkl')
idx2vec = joblib.load('./preprocessing_data/idx2vec.pkl')
idx2label = joblib.load('./preprocessing_data/idx2label.pkl')

process_args_list = []
fold_number = 10

raw_data = DataModel(fold_number)


def sub_process(train_args):
    test_monitor = Monitor(word2idx_dict=word2idx,
                           label2idx_dict=label2idx,
                           idx2vec_dict=idx2vec,
                           idx2label_dict=idx2label,
                           data=raw_data.choice_fold(train_args['fold_idx']),
                           sentence_fixed_len=train_args['sentence_fixed_len'],
                           learning_rate=train_args['learning_rate'],
                           word_vec_size=train_args['word_vec_size'],
                           hidden_num=train_args['hidden_num'],
                           label_num=train_args['label_num'],
                           k_model_src=train_args['k_model_src'])

    test_monitor.train(batch_size=train_args['batch_size'],
                       iter_num=train_args['iter_num'],
Example #29
0
class HtmlGenerator:
    def __init__(self):

        BASE_DIR = os.path.dirname(os.path.dirname(os.path.abspath(__file__)))
        sys.path.append(BASE_DIR)

        self.data_model = DataModel()

    def render_all_categories(self):

        tree = []
        for c in self.data_model.get_categories():
            element = {}
            element['text'] = c['CategoryName']
            tree.append(element)

        self.render_template(json.dumps(tree), 'all_categories')

    def render_single_categorie(self, parent_id):
        data = self.data_model.get_categories_by_parent(parent_id)
        tree = []
        element = {}
        element['text'] = data['parent']['CategoryName']

        element['nodes'] = []
        for i in data['childs']:
            n_element = {}
            n_element['text'] = i['CategoryName']
            element['nodes'].append(n_element)
        tree.append(element)

        self.render_template(json.dumps(tree), str(parent_id))

    def render_template(self, tree, file_name):

        js_script = "$('.tree-container').treeview({data:" + tree + "});"

        template = '''
            <!DOCTYPE html>
            <html lang="en">
            <head>
              <meta charset="utf-8">
              <meta http-equiv="X-UA-Compatible" content="IE=edge">
              <meta name="viewport" content="width=device-width, initial-scale=1">
              <!-- The above 3 meta tags *must* come first in the head; any other head content must come *after* these tags -->
              <title>Ebay Categories</title>

              <!-- Latest compiled and minified CSS -->
              <link rel="stylesheet" href="https://maxcdn.bootstrapcdn.com/bootstrap/3.3.7/css/bootstrap.min.css" integrity="sha384-BVYiiSIFeK1dGmJRAkycuHAHRg32OmUcww7on3RYdg4Va+PmSTsz/K68vbdEjh4u" crossorigin="anonymous">
              <link rel="stylesheet" href="./css/bootstrap-treeview.min.css" media="screen" title="no title">
            </head>

            <body>
              <nav class="navbar navbar-static-top navbar-dark bg-inverse">
                <a class="navbar-brand" href="#">Ebay Cateogries Render</a>
              </nav>

              <!-- Main jumbotron for a primary marketing message or call to action -->
              <div class="jumbotron">
                <div class="container">
                  <h1 class="display-3">Render Ebay Categories Project</h1>
                  <p>With this project you will be able to  download and render all ebay categories on bottom side of this page.</p>
                  <p><a class="btn btn-primary btn-lg" href="#" role="button">Go to github repositorie »</a></p>
                </div>
              </div>

              <div class="container">
                <!-- Example row of columns -->
                <div class="row">
                  <div class="col-md-12">
                    <div class="tree-container">

                    </div>
                  </div>
                </div>

                <hr>

                <footer>
                  <p>© Company 2016</p>
                </footer>
              </div> <!-- /container -->

              <!-- jQuery (necessary for Bootstrap's JavaScript plugins) -->
              <script src="https://ajax.googleapis.com/ajax/libs/jquery/1.12.4/jquery.min.js"></script>
              <!-- Include all compiled plugins (below), or include individual files as needed -->
              <!-- Latest compiled and minified JavaScript -->
              <script src="https://maxcdn.bootstrapcdn.com/bootstrap/3.3.7/js/bootstrap.min.js" integrity="sha384-Tc5IQib027qvyjSMfHjOMaLkfuWVxZxUPnCJA7l2mCWNIpG9mGCD8wGNIcPD7Txa" crossorigin="anonymous"></script>
              <script src="./js/bootstrap-treeview.min.js" charset="utf-8"></script>
              <script type="text/javascript">
                {js_script}
              </script>
            </body>
            </html>
        '''.format(js_script=js_script)

        file = open("html_generated/" + file_name + ".html", "w")
        file.write(template)

        file.close()

        return template
Example #30
0
def save():
    body = request.json
    new_data = DataModel(**body)
    ret = new_data.save()
    return jsonify({'id': str(ret.id)})
Example #31
0
    idx2vec = joblib.load(idx2vec_path)
    word2idx = joblib.load(word2idx_path)
    idx2word = joblib.load(idx2word_path)
    label2idx = joblib.load(label2idx_src)

    process_args_list = []
    pool = multiprocessing.Pool(processes=4)  # 4 个进程
    for batch_size in batch_size_list:
        for learning_rate in learning_rate_list:
            for dropout in dropout_list:
                for layer_num in layer_num_list:
                    for hidden_num in hidden_num_list:

                        data_model = DataModel(batch_size=batch_size, fold_num=fold_num, sentence_len=sentence_len,
                                               word2idx=word2idx,
                                               label2idx=label2idx)
                        visual_model_name = "batch_size: " + str(batch_size) + "learning_rate: " + str(
                            learning_rate) + "dropout: " + str(dropout) + "layer_num: " + str(
                            layer_num) + "hidden_num: " + str(
                            hidden_num)
                        model_src_name = model_src + "batch_size: " + str(batch_size) + "learning_rate: " + str(
                            learning_rate) + "dropout: " + str(dropout) + "layer_num: " + str(
                            layer_num) + "hidden_num: " + str(
                            hidden_num)
                        if fold_num == 1:
                            k_fold_mode = False
                        else:
                            k_fold_mode = True
                        for k_idx in range(fold_num):
                            process_args_list.append((data_model, learning_rate, dropout, layer_num, hidden_num, k_idx,
import requests
from parse_html import parse
from data_model import DataModel, model_name
from tqdm import tqdm
import time
import random

baseURL = "https://www.indeed.com/jobs?q=&l=Atlanta%2C+GA&filter={}start={}"
filterNumbers = list(range(0, 10))
startNumbers = list(range(0, 1000, 10))
minSleepTime = 1.00
randomRange = 1.50

if __name__ == "__main__":
    data = DataModel.load(model_name)

    compoundNumber = [(filterNumber, startNumber)
                      for filterNumber in filterNumbers
                      for startNumber in startNumbers]
    print("Request Count:", len(compoundNumber))

    for filterNumber, startNumber in tqdm(compoundNumber):
        url = baseURL.format(filterNumber, startNumber)
        print("Request URL: ", url)

        response = requests.get(url)

        items = parse(response.text)

        for item in items:
            data.add(item)
Example #33
0
        return 0.0


_threshold = np.vectorize(_threshold)


def _apply_avg_filter(merged_lines: np.ndarray):
    convolved_img = merged_lines.copy()
    #convolved_img[:,:,0] = scipy.ndimage.convolve(merged_lines[:,:,0], avg_filter, mode="constant")
    #convolved_img[:,:,1] = scipy.ndimage.convolve(merged_lines[:,:,1], avg_filter, mode="constant")
    return _threshold(convolved_img)


def _center_to_left_top_lines(lines):
    for line in lines:
        label, center_x, center_y, w, h = line

        x = center_x
        if center_x - w / 2 > 0:
            x -= w / 2
        y = center_y
        if center_y - h / 2 > 0:
            y -= h / 2

        yield (label, x, y, w, h)


if __name__ == '__main__':
    test_data_model = DataModel("./data/x", "./data/y", (256, 256, 3),
                                (256, 256, 3), (50, 50, 2))
    test(test_data_model)