示例#1
0
  def addEntry(self):
    print "New Entry..."
    name = raw_input("Entry name : ")
    if not name:
      print "name cant be blank"
      return
    if self.entries.has_key(name):
      print "An entry with the name ", name ," exists already"
      return False

    username = raw_input("Username : "******"Genrate password? (Y/n)")
    if genPass == False:
      password = raw_input("Password : "******"Password : "******"URL : ")
    newEntry = entry.Entry(name, username, password, "internet", URL)
    self.entries[name]= newEntry
    self.dbChanged = True

    copyToClipboard = utils.choice("Copy password to clipboard? (Y/n)")
    print "\n"

    return True;
示例#2
0
文件: train.py 项目: wanesta/KNI
    def load_data(self):
        print('loading data')
        dataset = pkl.load(open('data/{}.pkl'.format(FLAGS.dataset), 'rb'))
        self.train_data = dataset['train_data']
        self.test_data = dataset['test_data']
        FLAGS.threshold = self.train_data[:, 2].mean()
        print('setting threshold =', FLAGS.threshold)

        adj_mats = dataset['adj']

        if FLAGS.kg:
            support, self.entity_map = get_support(adj_mats, self.train_data,
                                                   self.test_data)
        else:
            support, self.entity_map = get_support(None, self.train_data,
                                                   self.test_data)

        self.n_entity = len(self.entity_map)
        adj_list, _ = support_to_adj_list(self.n_entity, support)

        self.adj_list = []
        for al in adj_list:
            if len(al) >= FLAGS.max_degree:
                self.adj_list.append(choice(al, FLAGS.max_degree))
            else:
                if len(al):
                    self.adj_list.append(
                        choice(al, FLAGS.max_degree, replace=True))
                else:
                    self.adj_list.append([(0, 0)] * FLAGS.max_degree)
        self.adj_list = np.array(self.adj_list, dtype=np.int32)
示例#3
0
  def editEntry(self, name):
    if not self.entries.has_key(name):
      print 'No entry with name ', name
      return

    print "Edit Entry ", name
    print "Press enter to no edit field"

    username = raw_input('Username : '******'Password : '******'URL : ')
    if URL == "":
      URL = self.entries[name].URL

    tag = "internet"
    change = entry.Entry(name, username, password,tag, URL)

    change.display(True)
    modify = utils.choice("complete edit ? (Y/n)")
    if modify:
      self.entries[name].edit(change)
      print "Editted entry ", name
      self.dbChanged = True;
示例#4
0
    def __init__(self, fact_obj, airport_list, flight_number,
                 ref_departure_date, ref_return_date):
        # 1. origin and destination
        self.origin = random.randint(0, len(airport_list) - 1)
        self.dest = random.randint(0, len(airport_list) - 1)
        if self.dest == self.origin:
            self.dest = (self.dest + 1) % len(airport_list)
        self.dest = airport_list[self.dest]
        self.origin = airport_list[self.origin]
        # 2. date and time
        d1 = np.random.normal(ref_departure_date, fact_obj.time_deviation,
                              1)[0]
        d2 = np.random.normal(ref_return_date, fact_obj.time_deviation, 1)[0]

        # makes ure that departure date comes first
        if d1 < d2:
            self.departure_date = d1
            self.return_date = d2
        else:
            self.departure_date = d2
            self.return_date = d1

        # assert self.departure_date <= self.return_date
        # assert self.return_date - self.departure_date <= 3600*24*365/2

        # 3. class
        self.flight_class = utils.choice(fact_obj.class_member,
                                         1,
                                         p=fact_obj.class_prior)[0]

        # 4. connections
        self.connection = utils.choice(fact_obj.connection_member,
                                       1,
                                       p=fact_obj.connection_prior)[0]

        # 5. price
        mean_base_price = fact_obj.flight_price_mean[self.flight_class]
        base = mean_base_price * fact_obj.low_cost_mean_fraction[
            self.flight_class]
        self.price = int(
            np.random.normal(
                base, base * fact_obj.flight_price_norm_std[self.connection]))
        self.price = utils.discrete_price(self.price)

        # 6. flight number
        # self.flight_number = random.randint(1000, 9999)
        self.flight_number = flight_number

        # 7. airline
        airline_ind = random.randint(0, len(fact_obj.airline_list) - 1)
        self.airline = fact_obj.airline_list.keys()[airline_ind]

        # post process
        self.departure_month, self.departure_day = utils.get_month_and_day(
            fact_obj, self.departure_date)
        self.return_month, self.return_day = utils.get_month_and_day(
            fact_obj, self.return_date)
        self.departure_time_num = utils.get_hour(self.departure_date)
        self.return_time_num = utils.get_hour(self.return_date)
 def getVal_text(self, mode):
     if mode == 'right' and self.cloak_only:
         print('Right mode can not be used in cloak only mode')
         return
     if not self.__chars_count:
         with open(self.__column_path, "r") as read_file:
             self.__chars_count = json.load(read_file)
             self.__email = self.is_email()
     options = ["synthetic", "fromCloak"]
     prob = [
         self.__chars_count["hidden"] / self.__chars_count["total_count"],
         1 -
         (self.__chars_count["hidden"] / self.__chars_count["total_count"])
     ]
     option = utils.choice(options, p=prob)
     if option == "synthetic":
         generated_str = self.generateString(mode)
         while self.__email and not utils.is_valid_address(generated_str):
             generated_str = self.generateString(mode)
         if self.__email:
             generated_str = generated_str.replace('.....', '.')
             generated_str = generated_str.replace('....', '.')
             generated_str = generated_str.replace('...', '.')
             generated_str = generated_str.replace('..', '.')
             generated_str = generated_str.replace('.@', '@')
             generated_str = generated_str.replace('@.', '@')
             if generated_str[-1] == ".":
                 generated_str = generated_str[:-1]
     else:
         generated_str = utils.getRandomString(
             self.__chars_count["strings"], self.__chars_count["counts"])
     return generated_str
示例#6
0
def main_menu(name):
    while True:
        choice = utils.choice('Main Menu', [
            'Games', 'Harry Potter Games', 'Programs',
            'Run Your Own Python Code'
        ], 'What do you want to do?')

        if choice == 0:
            games(name)
        elif choice == 1:
            hpgames(name)
        elif choice == 2:
            programs(name)
        elif choice == 3:
            print('===== Python Runner =====')
            print('Enter your Python code below. Leave blank to end.\n')
            code = ''

            while True:
                line = input('> ')

                if line == '':
                    break
                else:
                    code += line + '\n'

            print('\nRunning This:')
            print(code)
            print('-----')
            exec(code)
示例#7
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def programs(name):
    rooms = ['this']

    choice = utils.choice('Games', ['[Back]', 'Zen of Python'],
                          'What do you want to do?')

    if choice == 0: return
    exec('import ' + rooms[choice - 1])
示例#8
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def hpgames(name):
    rooms = [
        'this', 'hpgames.selection', 'hpgames.hp_game', 'hpgames.mm',
        'hpgames.story', 'hpgames.hpapi', 'hpgames.elflife', 'hpgames.pf'
    ]

    choice = utils.choice('Games', [
        '[Back]', 'Zen of Python', 'House Selection', 'Journey of Options',
        'Muggle Madness', 'Madlibs Story', 'HP Trivia Game', 'HP Elf Life',
        'Patronus Finder'
    ], 'What do you want to do?')

    if choice == 0: return
    exec('import ' + rooms[choice - 1])
 def getVal_numeric(self, low, high):
     if not self.__length_frequency:
         with open(self.__column_path, "r") as read_file:
             self.__length_frequency = json.load(read_file)
     self.__length_frequency.pop('cloak_only', None)
     lengths = list(self.__length_frequency.keys())
     counts = list(self.__length_frequency.values())
     lengths = np.array(lengths, dtype=np.int64)
     counts = np.array(counts, dtype=np.float64)
     counts /= counts.sum()
     values = np.linspace(low, high)
     generated = []
     for x in range(len(values)):
         length = utils.choice(lengths, p=counts)
         value = np.round(utils.getRandomVal(values),
                          length) if length > 0 else int(
                              utils.getRandomVal(values))
         generated.append(value)
     return utils.getRandomVal(generated)
    def sample_word(self, to_N, sampling_error_samples):
        # empty targets...
        if to_N == -1:
            return self.word

        # print("word: {}".format(self.word))
        if to_N in self.target_samples:

            possibilities = self.target_samples[to_N]

            if sampling_error_samples == 'uniform':
                i = random.randint(0, len(possibilities) - 1)
                return possibilities[i]

            # sample word by probability ....
            wrds = []
            weights = []

            for poss in possibilities:
                w, p = poss
                wrds.append(w)
                weights.append(1 / p)

                # if self.word not in w.split():
                #     narrower.append((w, p))
                # print(poss)
            weights = [float(i) / max(weights) for i in weights]

            selected = choice(wrds, weights)
            return selected

        # this won't happen is N i selected by Node function select_N
        else:
            self.logger.warning(
                "for id:{} word:'{}' target_meta to_N[{}] not available".
                format(self.sampling_id, self.word, to_N))
            self.logger.warning("{}".format(self.target_samples))

            # Just select randomly some other [available] key...
            N_list = list(self.target_samples.keys())
            i = random.randint(0, len(N_list) - 1)
            N = N_list[i]
            return self.sample_word(N, sampling_error_samples)
    def select_N(self, sampling_N):
        # select N
        # we do it weighted.... the higher the N, the lower the probability

        if len(self.target_samples) == 0:
            # self.logger.warning("for id:{} word:'{}' empty targets, returning -1".format(self.sampling_id, self.word))
            return -1

        N_list = list(self.target_samples.keys())  # 1 2 4  ... 7

        if sampling_N == 'uniform':
            i = random.randint(0, len(N_list) - 1)
            N = N_list[i]
        else:
            _sum = sum(N_list)
            weights = [_sum - v + 1 for v in N_list]
            N = choice(N_list, weights)

        return N
示例#12
0
def games(name):
    rooms = [
        'this', 'planet.main', 'games.swr1r', 'games.sw2e', 'games.sw2eJD',
        'games.spacetrails', 'games.jd', 'games.sugar1', 'games.sugar2',
        'games.dog2', 'games.trivia', 'games.rhyme', 'games.walker',
        'games.cookie', 'games.murder', 'games.translator', 'games.orc',
        'games.cataclone1', 'games.hangman'
    ]

    choice = utils.choice('Games', [
        '[Back]', 'Zen of Python', 'Planet Selector',
        'Space Wars 1 - Retirement', 'Space Wars 2 - Escape (MAXs Version)',
        'Space Wars 2 - Escape (JDs Version)', 'Space Trails',
        'Star Wars Quiz', 'Sugar Bank 1', 'Sugar Bank 2', 'Dog Adventure 2',
        'Trivia', 'Rhyme Adventure', 'Time Travel', 'Fortune Cookie',
        'Murder Mystery', 'Translator', 'Orc', 'Cataclone', 'Hangman',
        'Guess the Number'
    ], 'What do you want to do?')

    if choice == 0: return
    exec('import ' + rooms[choice - 1])
示例#13
0
文件: main.py 项目: ufal/npfl087
    def run(self):
        # For all sentences in the dataset ...
        for s in input_sentence_generator:
            source_doc_path, sentence_id, sentence = s

            # We must add sentence to the graph
            self.sentence_graph.set_sentence(sentence)

            # Score of the original sentence (only for debug purposes ...)
            if self.verbose:
                if self.bert_lm is not None:
                    score = self.bert_lm.get_score(sentence)
                    self.logger.debug("LM[{:.2f}]{}".format(score, sentence))
                else:
                    self.logger.debug("LM[ - ]{}".format(sentence))

            # Now we generate multiple (cnt_sentence_samples) "noisified variants" from current sentence
            avg_wer = 0
            samples_list = []

            # A. Crate samples
            tries = -1
            while True:
                tries += 1

                # all samples collected ( or we  do not want to wait too long ... )
                if len(
                        samples_list
                ) == self.cnt_sentence_samples or tries * 2 > self.cnt_sentence_samples:
                    break

                debug, sample = self.sentence_graph.sample_sentence()
                if self.bert_lm is not None:
                    score = self.bert_lm.get_score(sample)
                else:
                    score = 1.
                error = wer(sentence, sample)

                if self.min_wer <= error <= self.max_wer:
                    avg_wer += error
                    samples_list.append((sample, score, error))

            # DEBUG: print the all sentence the variants
            if self.verbose:
                for sam in samples_list:
                    sample, score, error = sam
                    if self.bert_lm is not None:
                        self.logger.debug(" LM[{:.2f}] WER[{:.2f}]{}".format(
                            score, error, sample))
                    else:
                        self.logger.debug(" LM[ - ] WER[{:.2f}]{}".format(
                            error, sample))

                self.logger.debug("avg WER: {:.2f}".format(
                    avg_wer / self.cnt_sentence_samples))

            # B. Finally we choose one sentence .....
            if len(samples_list) == 0:
                selected_sentence = sentence
            else:
                sentences = []
                lm_weights = []
                for s in samples_list:  # (sentence, LM, WER)
                    sentences.append(s[0])
                    lm_weights.append(s[1])
                selected_sentence = utils.choice(sentences, lm_weights)

            # And we write it to file
            source_doc = ntpath.basename(source_doc_path)
            target_doc_path = os.path.join(self.base_target_dir, source_doc)
            if os.path.isfile(target_doc_path):
                newline = True
            else:
                newline = False
            with open(target_doc_path, "a") as file:
                if newline:
                    file.write("\n")
                file.write(selected_sentence)
        self.logger.info("All files successfully processed")
        self.logger.info("Calculating WER on files...")
        time.sleep(0.5)
        return wer_over_files(self.input_source_dir, self.base_target_dir,
                              self.input_filename_list)
    def sample_sentence(self):
        """
        Example of how the final sentence is constructed:
                             0     1  2   3  4      5       6   7   8
        original sentence: Hello THIS ,   is 123   welcome ??? there !
                             0     1        3         5           7
        alpha sentence   : Hello THIS      is       welcome    there
                             0  1          3          5 7
        synth sentence   : [hellish ]   [is this] [welcomere]

                             0 1      2    3       4     5 7      8
        final sentecnce  : [Hellish] , [is this] 123 [welcomere] !
        we can see, that non alpha token '???' at position 6 in the original sentence have to be omitted
        also the letter casing is forgotten
        and finally, spacing between alpha and non-alpha characters (like punctuation symbols) will also be different
        """

        current_node = self.start_node
        debug_sentence = []
        synth_sentence = []

        while True:
            if current_node.from_M_variant == -2:  # ... '.'
                # sentence.append(".")
                break
            if current_node.from_M_variant == -1:
                pass  # sentence.append("<eps> ")

            elif current_node.from_M_variant == 0:  # original word
                debug_sentence.append(current_node.word + " ")
            else:  # sampled word ...
                # sentence.append(">" + current_node.word + "<[{}] ".format(current_node.variant))
                # we are sampling now ....
                to_N_parts = current_node.select_N(self.sampling_N)
                sampled_word = current_node.sample_word(
                    to_N_parts, self.sampling_error_samples)
                synth_sentence.append(
                    (sampled_word, current_node.sentence_start_idx,
                     current_node.from_M_variant))
                debug_sentence.append(
                    ">" + sampled_word +
                    "<[{}->{}] ".format(current_node.from_M_variant,
                                        to_N_parts))  # current_node.variant

            # current_node.display()

            if len(current_node.neighbours) == 1:
                current_node = current_node.neighbours[0]
            else:
                current_node = choice(current_node.neighbours,
                                      current_node.weights)

        final_sentence = []
        last_idx_in = -1
        for synth_word in synth_sentence:
            word, start_idx, cnt_words = synth_word
            word = word.replace(".", "")
            if start_idx == 0:
                word = word.capitalize()

            # fill in missing  non-alpha words
            while 1 + last_idx_in < start_idx:
                last_idx_in += 1
                final_sentence.append(self.original_words[last_idx_in])

            # we fill current word
            assert start_idx == 1 + last_idx_in, "safety check"

            final_sentence.append(word)
            # wrong... last_idx_in = last_idx_in + cnt_words  # from 1 , from 2 ...
            # because we can occasionally skip  " this && is " => "thisis" ] and we need to check this ... here
            # ( we actually moved 3 words forward, not 2  )
            # we check it against the index in the alpha sentence
            for final_idx, w_p_idx in enumerate(self.words_alpha_pos):
                _, _, orig_idx = w_p_idx
                if orig_idx == start_idx:
                    _, _, true_idx = self.words_alpha_pos[final_idx +
                                                          cnt_words - 1]
                    last_idx_in = true_idx
                    # synth word:      welcomere(5)
                    # words alpha pos: welcome(5)    there(7)
                    # last indx in : not 6
                    # but ... ....       7
                    break

        # fill the end of the sentence
        while last_idx_in + 1 < len(self.original_words):
            last_idx_in += 1
            final_sentence.append(self.original_words[last_idx_in])

        final_sentence = " ".join(final_sentence)
        # fix [ ( {
        final_sentence = re.sub(
            r'\s*([(\[{])\s*', r' \1',
            final_sentence)  # "is ( maybe ) good" -> "is (maybe ) good"
        # fix } ) }
        final_sentence = re.sub(
            r'\s*([)\]\}])\s*', r'\1 ',
            final_sentence)  # "is (maybe ) good" -> "is (maybe) good"
        # fix -  @
        final_sentence = re.sub(
            r'\s*([@])\s*', r'\1',
            final_sentence)  # "hello - kitty" -> "hello-kitty"
        # fix , . ; : ! ? % $
        final_sentence = re.sub(
            r'\s([?,.;!:%$](?:\s|$))', r'\1',
            final_sentence)  # " hello , Peter" -> hello, Peter

        # fix ``
        # final_sentence = re.sub(r'\s*(``)\s*', r' \1', final_sentence)
        final_sentence = re.sub(r"(``)\s", r'"', final_sentence)
        # fix ''
        final_sentence = re.sub(r"\s(''(?:\s|$))", r'" ', final_sentence)

        final_sentence = final_sentence.strip()
        # def remove_s(final_sentence, sym):
        #     p1 = -1
        #     for i, s in enumerate(final_sentence):
        #         if s == sym:
        #             if p1 == -1:
        #                 if i + 1 < len(final_sentence):
        #                     if final_sentence[i + 1] == " ":
        #                         if i == 0 or final_sentence[i - 1] == " ":
        #                             p1 = i
        #                             continue
        #             if p1 != -1:
        #                 if final_sentence[i-1] == " " and i-2 != p1:
        #                     final_sentence = final_sentence[0:p1+1] + final_sentence[p1+2: i-1] + final_sentence[i:]
        #                 else:
        #                     final_sentence = final_sentence[0:p1 + 1] + final_sentence[p1 + 2: ]
        #                 break
        #     return final_sentence
        #
        # cnt = final_sentence.count('"')
        # for i in range(math.floor(cnt/2)):
        #     final_sentence = remove_s(final_sentence, '"')

        # 012345678
        # A " B " C
        #   2   6
        # [0:3]
        debug_sentence = "\t".join(debug_sentence)
        return debug_sentence, final_sentence
示例#15
0
def create_x_y(data, vocab, stats, test=False, verbose=False):
    ''' create input-output pairs for neural network training
    the input is (#examples,
    '''
    data = filter_vocab(data, vocab, stats)
    max_span = stats['max_span']
    max_q = stats['max_q']
    surround_size = stats['surround_size']
    neg_samples = stats['neg_samples']
    ivocab = create_idict(vocab)
    X = []
    verbose=0
    def print_sentence(name, sen):
        if verbose:
            print(name, ' '.join([ivocab[v] for v in sen if v]))

    def map_vocab(word):
        if word in vocab:
            return vocab[word]
        else:
            return vocab['<unk>']

    try:
        for paragraph in data:
            context = paragraph['context.tokens']
            all_spans = sum(paragraph['spans'], [])
            for qa in paragraph['qas']:
                # extract question.
                q = np.zeros(max_q)
                for (i, word) in enumerate(qa['question.tokens']):
                    if i >= len(q):
                        break
                    q[i] = map_vocab(word)

                def extract(pos, span, is_answer=False):
                    if verbose:
                        print('is_answer', is_answer)
                    print_sentence('question', q)
                    # extract span.
                    s = np.zeros(max_span)
                    for (i, word) in enumerate(span):
                        if i >= len(s):
                            break
                        s[i] = map_vocab(word)
                    print_sentence('span', s)
                    # extract context left.
                    answer_start = pos
                    cl = np.zeros(surround_size)
                    cr = np.zeros(surround_size)
                    for i in range(surround_size):
                        ind = answer_start - 1 - i
                        if ind >= 0:
                            cl[i] = map_vocab(context[ind])
                    print_sentence('cl', cl)
                    for i in range(surround_size):
                        ind = answer_start + len(span) + i
                        if ind < len(context):
                            cr[i] = map_vocab(context[ind])
                    print_sentence('cr', cr)
                    if verbose:
                        print()

                    return (s, q, cl, cr)

                if not test:
                    for answer in qa['answers']:
                        X.append(extract(answer['answer_start'],
                                answer['text.tokens'], is_answer=True) + (1.,))
                    spans = choice(all_spans, neg_samples, replace=True)
                    #spans = all_spans
                if test:
                    spans = all_spans
                for span in spans:
                    pos = locate(context, span)
                    X.append(extract(pos, span) + (0.,))

    except Exception as e:
        print(e.message)
        traceback.print_exc()
        import pdb; pdb.set_trace();
        #raise e

    if not test:
        random.shuffle(X)

    return X
示例#16
0
import math as ma
import utils

if __name__ == "__main__":

    # start the number at 1
    my_num = 1
    
    while True:
        if utils.is_prime(my_num):
            print "> Prime number found: %d" % my_num
            if not utils.choice("Find another?", "y"):
                break
        # increment is prime not found or user wants to continue
        my_num += 1
示例#17
0
    def __init__(self, facts_obj, book_window, airport_list):
        # 1. origin and destination, airport_list guarantees to have unique locations
        self.origin = random.randint(0, len(airport_list) - 1)
        self.dest = random.randint(0, len(airport_list) - 1)
        if self.dest == self.origin:
            self.dest = (self.dest + 1) % len(airport_list)
        self.dest = airport_list[self.dest]
        self.origin = airport_list[self.origin]
        # 2. date
        base_time = facts_obj.base_departure_time_epoch
        a_year_from_now = base_time + 3600 * 24 * 365
        # randomly pick a date between base_time and a_year_from_now
        self.departure_date = random.randint(base_time, a_year_from_now)
        # return adte is book_window away from the departure date
        self.return_date = self.departure_date + 3600 * 24 * book_window
        # 4. passenger information
        num_passengers = 1
        self.passengers = []
        len_first_name = len(facts_obj.first_name_list)
        len_last_name = len(facts_obj.last_name_list)
        # '_' will later be replaced in intent standalization
        for _ in xrange(num_passengers):
            self.passengers.append(
                facts_obj.first_name_list[random.randint(
                    0, len_first_name - 1)] + '_' +
                facts_obj.last_name_list[random.randint(0, len_last_name - 1)])
        # non-required fields during initial query
        # 3. time
        self.departure_time = utils.choice(facts_obj.time_list,
                                           1,
                                           p=facts_obj.time_prior)[0]
        self.return_time = utils.choice(facts_obj.time_list,
                                        1,
                                        p=facts_obj.time_prior)[0]

        # 5. class limit and price limit
        self.class_limit = utils.choice(facts_obj.class_list,
                                        1,
                                        p=facts_obj.class_list_prior)[0]

        # 6. price limist
        if self.class_limit == 'all':
            self.price_limit = facts_obj.price_limit_list[random.randint(
                0,
                len(facts_obj.price_limit_list) - 1)]
        elif self.class_limit == 'economy':
            self.price_limit = facts_obj.price_limit_list[random.randint(
                0,
                len(facts_obj.price_limit_list) - 2)]
        elif self.class_limit == 'business':
            self.price_limit = facts_obj.price_limit_list[random.randint(
                1,
                len(facts_obj.price_limit_list) - 1)]
        # 7. num of connections
        self.max_connection = utils.choice(facts_obj.connection_member,
                                           1,
                                           p=facts_obj.connection_prior)[0]

        # 8. airline preference
        self.airline = utils.choice(facts_obj.airline_preference,
                                    1,
                                    p=facts_obj.airline_preference_prior)[0]
        # 10 post process
        self.departure_month, self.departure_day = utils.get_month_and_day(
            facts_obj, self.departure_date)
        self.return_month, self.return_day = utils.get_month_and_day(
            facts_obj, self.return_date)
        # 11 change reservation
        self.goal = utils.choice([0, 1, 2], p=facts_obj.goal_probaility)