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Python Datasets.get_mapping方法代码示例

本文整理汇总了Python中utils.datasets.Datasets.get_mapping方法的典型用法代码示例。如果您正苦于以下问题:Python Datasets.get_mapping方法的具体用法?Python Datasets.get_mapping怎么用?Python Datasets.get_mapping使用的例子?那么恭喜您, 这里精选的方法代码示例或许可以为您提供帮助。您也可以进一步了解该方法所在utils.datasets.Datasets的用法示例。


在下文中一共展示了Datasets.get_mapping方法的11个代码示例,这些例子默认根据受欢迎程度排序。您可以为喜欢或者感觉有用的代码点赞,您的评价将有助于系统推荐出更棒的Python代码示例。

示例1: get_all_matched_rows

# 需要导入模块: from utils.datasets import Datasets [as 别名]
# 或者: from utils.datasets.Datasets import get_mapping [as 别名]
def get_all_matched_rows(query, request, inclusive_instructions):
    buffer_ = StringIO()
    writer = csv.writer(buffer_)

    ds = Datasets().activate_dataset(request.session)
    es_m = ds.build_manager(ES_Manager)

    features = sorted([field['path'] for field in es_m.get_mapped_fields()])

    query['size'] = ES_SCROLL_BATCH

    writer.writerow(features)

    ds.get_index()
    ds.get_mapping()
    es_url

    request_url = os.path.join(es_url, ds.get_index(), ds.get_mapping(), '_search?scroll=1m')
    response = requests.get(request_url, data=json.dumps(query)).json()

    scroll_id = response['_scroll_id']
    hits = response['hits']['hits']

    scroll_payload = json.dumps({'scroll':'1m', 'scroll_id':scroll_id})
    while hits:
        for hit in hits:
            feature_dict = {feature_name:hit['_source'][feature_name] for feature_name in hit['_source']}

            feature_dict = {}

            row = []
            for feature_name in features:
                feature_path = feature_name.split('.')
                parent_source = hit['_source']
                for path_component in feature_path:
                    if path_component in parent_source:
                        parent_source = parent_source[path_component]
                    else:
                        parent_source = ""
                        break

                content = parent_source
                row.append(content)
                feature_dict[feature_name] = content

            layer_dict = matcher.LayerDict(feature_dict)
            if inclusive_instructions.match(layer_dict):
                writer.writerow([element.encode('utf-8') if isinstance(element,unicode) else element for element in row])

        buffer_.seek(0)
        data = buffer_.read()
        buffer_.seek(0)
        buffer_.truncate()
        yield data

        response = requests.get(os.path.join(es_url,'_search','scroll'), data=scroll_payload).json()
        hits = response['hits']['hits']
        scroll_id = response['_scroll_id']
开发者ID:cbentes,项目名称:texta,代码行数:60,代码来源:views.py

示例2: get_grammar_listing

# 需要导入模块: from utils.datasets import Datasets [as 别名]
# 或者: from utils.datasets.Datasets import get_mapping [as 别名]
def get_grammar_listing(request):
    ds = Datasets().activate_dataset(request.session)
    dataset = ds.get_index()
    mapping = ds.get_mapping()

    grammars = Grammar.objects.filter(author=request.user, dataset__index=dataset, dataset__mapping=mapping).order_by('-last_modified')
    grammar_json = json.dumps([{'id':grammar.id, 'name':grammar.name, 'last_modified':grammar.last_modified.strftime("%d/%m/%y %H:%M:%S")} for grammar in grammars])

    return HttpResponse(grammar_json)
开发者ID:cbentes,项目名称:texta,代码行数:11,代码来源:views.py

示例3: parse_request

# 需要导入模块: from utils.datasets import Datasets [as 别名]
# 或者: from utils.datasets.Datasets import get_mapping [as 别名]
    def parse_request(self,request):

        self.lookup_types = request.POST['lookup_types'].split(',')
        self.key_constraints = request.POST['key_constraints'].split(',')
        self.content = request.POST['content'].split('\n')[-1].strip()
        print(self.content)
        ds = Datasets().activate_dataset(request.session)
        self.dataset = ds.get_index()
        self.mapping = ds.get_mapping()
        self.es_m = ES_Manager(self.dataset, self.mapping)

        self.user = request.user
开发者ID:cbentes,项目名称:texta,代码行数:14,代码来源:autocomplete.py

示例4: get_example_texts

# 需要导入模块: from utils.datasets import Datasets [as 别名]
# 或者: from utils.datasets.Datasets import get_mapping [as 别名]
def get_example_texts(request, field, value):
    ds = Datasets().activate_dataset(request.session)
    dataset = ds.get_index()
    mapping = ds.get_mapping()

    query = json.dumps({ "size":10, "highlight": {"fields": {field: {}}}, "query": {"match": {field: value}}})
    response = ES_Manager.plain_scroll(es_url, dataset, mapping, query)

    matched_sentences = []
    for hit in response['hits']['hits']:
        for match in hit['highlight'].values():
            matched_sentences.append(match[0])

    return matched_sentences
开发者ID:cbentes,项目名称:texta,代码行数:16,代码来源:views.py

示例5: get_table_header

# 需要导入模块: from utils.datasets import Datasets [as 别名]
# 或者: from utils.datasets.Datasets import get_mapping [as 别名]
def get_table_header(request):
    ds = Datasets().activate_dataset(request.session)
    es_m = ds.build_manager(ES_Manager)

    # get columns names from ES mapping
    fields = es_m.get_column_names()
    template_params = {'STATIC_URL': STATIC_URL,
                       'URL_PREFIX': URL_PREFIX,
                       'fields': fields,
                       'searches': Search.objects.filter(author=request.user),
                       'columns': [{'index':index, 'name':field_name} for index, field_name in enumerate(fields)],
                       'dataset': ds.get_index(),
                       'mapping': ds.get_mapping()}
    template = loader.get_template('searcher_results.html')
    return HttpResponse(template.render(template_params, request))
开发者ID:cbentes,项目名称:texta,代码行数:17,代码来源:views.py

示例6: __init__

# 需要导入模块: from utils.datasets import Datasets [as 别名]
# 或者: from utils.datasets.Datasets import get_mapping [as 别名]
    def __init__(self,request):
        ds = Datasets().activate_dataset(request.session)
        self.dataset = ds.get_index()
        self.mapping = ds.get_mapping()
        self.es_m = ES_Manager(self.dataset, self.mapping)

        # PREPARE AGGREGATION
        self.es_params = request.POST
        interval = self.es_params["interval_1"]


        self.daterange = self._get_daterange(self.es_params)
        
        self.ranges,self.date_labels = self._get_date_intervals(self.daterange,interval)
        self.agg_query = self.prepare_agg_query()
        # EXECUTE AGGREGATION
        agg_results = self.aggregate()

        # PARSE RESPONSES INTO JSON OBJECT
        self.agg_data = self.parse_responses(agg_results)
开发者ID:cbentes,项目名称:texta,代码行数:22,代码来源:agg_manager.py

示例7: index

# 需要导入模块: from utils.datasets import Datasets [as 别名]
# 或者: from utils.datasets.Datasets import get_mapping [as 别名]
def index(request):
    # Define selected mapping
    ds = Datasets().activate_dataset(request.session)
    dataset = ds.get_index()
    mapping = ds.get_mapping()

    es_m = ds.build_manager(ES_Manager)

    fields = get_fields(es_m)

    searches = [{'id':search.pk,'desc':search.description} for search in
                Search.objects.filter(author=request.user, dataset__index=dataset, dataset__mapping=mapping)]

    datasets = Datasets().get_allowed_datasets(request.user)
    language_models = Task.objects.filter(task_type='train_model').filter(status__iexact='completed').order_by('-pk')

    template = loader.get_template('grammar_builder.html')
    return HttpResponse(template.render({'STATIC_URL':STATIC_URL,
                                         'searches':searches,
                                         'features':fields,
                                         'language_models': language_models, 
                                         'allowed_datasets': datasets},request))
开发者ID:cbentes,项目名称:texta,代码行数:24,代码来源:views.py

示例8: save_grammar

# 需要导入模块: from utils.datasets import Datasets [as 别名]
# 或者: from utils.datasets.Datasets import get_mapping [as 别名]
def save_grammar(request):
    grammar_dict = json.loads(request.POST['json'])

    grammar_id = grammar_dict[0]['id']

    if grammar_id == 'new':
        name = grammar_dict[0]['text']

        ds = Datasets().activate_dataset(request.session)
        dataset = ds.get_index()
        mapping = ds.get_mapping()

        grammar = Grammar(name=name, json='', author=request.user, dataset=Dataset.objects.filter(index=dataset, mapping=mapping)[0])
        grammar.save()

        grammar_dict[0]['id'] = grammar.id
    else:
        grammar = Grammar.objects.get(id=grammar_id)

    grammar.json = json.dumps(grammar_dict)
    grammar.save()

    return HttpResponse(json.dumps({'id':grammar.id}))
开发者ID:cbentes,项目名称:texta,代码行数:25,代码来源:views.py

示例9: find_mappings

# 需要导入模块: from utils.datasets import Datasets [as 别名]
# 或者: from utils.datasets.Datasets import get_mapping [as 别名]
def find_mappings(request):
    try:
        slop     = int(request.POST['slop'])
        max_len  = int(request.POST['max_len'])
        min_len  = int(request.POST['min_len'])
        min_freq = int(request.POST['min_freq'])
        match_field = request.POST['match_field']
        description = request.POST['description']

        batch_size = 50

        # Define selected mapping
        ds = Datasets().activate_dataset(request.session)
        dataset = ds.get_index()
        mapping = ds.get_mapping()

        lexicon = []
        word_index = {}
        num_lexicons = 0
        for i,lexicon_id in enumerate(request.POST.getlist('lexicons[]')):
            num_lexicons +=1
            for word in Word.objects.filter(lexicon=lexicon_id):
                word = word.wrd
                lexicon.append(word)
                if word not in word_index:
                    word_index[word] = []
                word_index[word].append(i)
        lexicon = list(set(lexicon))
        if min_len > num_lexicons:
            min_len = num_lexicons
        mwe_counter = 0
        group_counter = 0
        phrases = []
        final   = {}
        data = []
        new_run = Run(minimum_frequency=min_freq,maximum_length=max_len,minimum_length=min_len,run_status='running',run_started=datetime.now(),run_completed=None,user=request.user,description=description)
        new_run.save()
        logging.getLogger(INFO_LOGGER).info(json.dumps({'process':'MINE MWEs','event':'mwe_mining_started','args':{'user_name':request.user.username,'run_id':new_run.id,'slop':slop,'min_len':min_len,'max_len':max_len,'min_freq':min_freq,'match_field':match_field,'desc':description}}))
        for i in range(min_len,max_len+1):
            print('Permutation len:',i)
            for permutation in itertools.permutations(lexicon,i):
                word_indices = list(flatten([word_index[word] for word in permutation])) 
                if len(word_indices) == len(set(word_indices)):
                    permutation = ' '.join(permutation)
                    if slop > 0:
                        query = {"query": {"match_phrase": {match_field: {"query": permutation,"slop": slop}}}}
                    else:
                        query = {"query": {"match_phrase": {match_field: {"query": permutation}}}}
                    data.append(json.dumps({"index":dataset,"mapping":mapping})+'\n'+json.dumps(query))
                    phrases.append(permutation)
                    if len(data) == batch_size:
                        for j,response in enumerate(ES_Manager.plain_multisearch(es_url, dataset, mapping, data)):
                            try:
                                if response['hits']['total'] >= min_freq:
                                    sorted_phrase = ' '.join(sorted(phrases[j].split(' ')))
                                    sorted_conceptualised_phrase = conceptualise_phrase(sorted_phrase,request.user)
                                    if sorted_conceptualised_phrase not in final:
                                        final[sorted_conceptualised_phrase] = {'total_freq':0,'mwes':[],'display_name':{'freq':0,'label':False},'id':group_counter}
                                        group_counter+=1
                                    final[sorted_conceptualised_phrase]['total_freq']+=response['hits']['total']
                                    final[sorted_conceptualised_phrase]['mwes'].append({'mwe':phrases[j],'freq':response['hits']['total'],'accepted':False,'id':mwe_counter})
                                    mwe_counter+=1
                                    final[sorted_conceptualised_phrase]['mwes'].sort(reverse=True,key=lambda k: k['freq'])
                                    if response['hits']['total'] > final[sorted_conceptualised_phrase]['display_name']['freq']:
                                        final[sorted_conceptualised_phrase]['display_name']['freq'] = response['hits']['total']
                                        final[sorted_conceptualised_phrase]['display_name']['label'] = phrases[j]
                            except KeyError as e:
                                raise e
                        data = []
                        phrases = []
            logging.getLogger(INFO_LOGGER).info(json.dumps({'process':'MINE MWEs','event':'mwe_mining_progress','args':{'user_name':request.user.username,'run_id':new_run.id},'data':{'permutations_processed':i+1-min_len,'total_permutations':max_len-min_len+1}}))
        
        m_response = ES_Manager.plain_multisearch(es_url, dataset, mapping, data)
        
        for j,response in enumerate(m_response):
            try:
                if response['hits']['total'] >= min_freq:
                    sorted_phrase = ' '.join(sorted(phrases[j].split(' ')))
                    sorted_conceptualised_phrase = conceptualise_phrase(sorted_phrase,request.user)
                    if sorted_conceptualised_phrase not in final:
                        final[sorted_conceptualised_phrase] = {'total_freq':0,'mwes':[],'display_name':{'freq':0,'label':False},'id':group_counter}
                        group_counter+=1
                    final[sorted_conceptualised_phrase]['total_freq']+=response['hits']['total']
                    final[sorted_conceptualised_phrase]['mwes'].append({'mwe':phrases[j],'freq':response['hits']['total'],'accepted':False,'id':mwe_counter})
                    mwe_counter+=1
                    final[sorted_conceptualised_phrase]['mwes'].sort(reverse=True,key=lambda k: k['freq'])
                    if response['hits']['total'] > final[sorted_conceptualised_phrase]['display_name']['freq']:
                        final[sorted_conceptualised_phrase]['display_name']['freq'] = response['hits']['total']
                        final[sorted_conceptualised_phrase]['display_name']['label'] = phrases[j]
            except KeyError as e:       
                raise e
        for key in final:
            final[key]['concept_name'] = {'freq':-1,'label':''}
        r = Run.objects.get(pk=new_run.pk)
        r.run_completed = datetime.now()
        r.run_status = 'completed'
        r.results =json.dumps(final)
        r.save()
        logging.getLogger(INFO_LOGGER).info(json.dumps({'process':'MINE MWEs','event':'mwe_mining_completed','args':{'user_name':request.user.username,'run_id':new_run.id}}))
    except Exception as e:
#.........这里部分代码省略.........
开发者ID:cbentes,项目名称:texta,代码行数:103,代码来源:views.py

示例10: get_table_data

# 需要导入模块: from utils.datasets import Datasets [as 别名]
# 或者: from utils.datasets.Datasets import get_mapping [as 别名]
def get_table_data(request):
    query_data = {}

    query_data['search_id'] = request.GET['search_id']
    query_data['polarity'] = request.GET['polarity']
    query_data['requested_page'] = int(request.GET['iDisplayStart'])/int(request.GET['iDisplayLength'])+1
    query_data['page_length'] = int(request.GET['iDisplayLength'])

    if request.GET['is_test'] == 'true':
        query_data['inclusive_metaquery'] = json.loads(request.GET['inclusive_test_grammar'])

        query_data['inclusive_grammar_id'] = -1
        query_data['exclusive_grammar_id'] = -1

        query_data['features'] = sorted(extract_layers(query_data['inclusive_metaquery']))

    else:
        query_data['inclusive_grammar_id'] = request.GET['inclusive_grammar_id']
        query_data['exclusive_grammar_id'] = request.GET['exclusive_grammar_id']

        query_data['inclusive_metaquery'] = generate_metaquery_dict(int(query_data['inclusive_grammar_id']), request.user, component={})
        query_data['exclusive_metaquery'] = generate_metaquery_dict(int(query_data['exclusive_grammar_id']), request.user, component={})

        query_data['features'] = sorted(extract_layers(query_data['inclusive_metaquery']) | extract_layers(query_data['exclusive_metaquery']))


    GrammarPageMapping.objects.filter(search_id=query_data['search_id'],
                                    inclusive_grammar=query_data['inclusive_grammar_id'],
                                    exclusive_grammar=query_data['exclusive_grammar_id'],
                                    polarity=query_data['polarity'], author=request.user).delete()


    ds = Datasets().activate_dataset(request.session)

    query_data['dataset'] = ds.get_index()
    query_data['mapping'] = ds.get_mapping()

    component_query = ElasticGrammarQuery(query_data['inclusive_metaquery'], None).generate()

    es_m = ds.build_manager(ES_Manager)
    if query_data['search_id'] != '-1':
        saved_query = json.loads(Search.objects.get(pk=query_data['search_id']).query)
        es_m.load_combined_query(saved_query)

        if query_data['polarity'] == 'positive':
            es_m.merge_combined_query_with_query_dict(component_query)
    else:
        #es_m.combined_query = {"main": {"query": {"bool": {"should": [{"match_all":{}}], "must": [], "must_not": []}}},
                                #"facts": {"include": [], 'total_include': 0,
                                     #"exclude": [], 'total_exclude': 0}}
        es_m.combined_query = {"main": {"query":{"match_all":{}}}}
        if query_data['polarity'] == 'positive':
            es_m.combined_query = component_query

    # Add paging data to the query
    #es_m.set_query_parameter('from', request.session['grammar_'+polarity+'_cursor'])
    es_m.set_query_parameter('size', request.GET['iDisplayLength'])
    es_m.set_query_parameter('_source', query_data['features'])

    query_data['inclusive_instructions'] = generate_instructions(query_data['inclusive_metaquery'])
    query_data['exclusive_instructions'] = {} #generate_instructions(query_data['exclusive_metaquery'])

    data = scroll_data(es_m.combined_query['main'], request, query_data)
    data['sEcho'] = request.GET['sEcho']

    return HttpResponse(json.dumps(data,ensure_ascii=False))
开发者ID:cbentes,项目名称:texta,代码行数:68,代码来源:views.py

示例11: facts_agg

# 需要导入模块: from utils.datasets import Datasets [as 别名]
# 或者: from utils.datasets.Datasets import get_mapping [as 别名]
def facts_agg(es_params, request):
    logger = LogManager(__name__, 'FACTS AGGREGATION')

    distinct_values = []
    query_results = []
    lexicon = []
    aggregation_data = es_params['aggregate_over']
    aggregation_data = json.loads(aggregation_data)
    original_aggregation_field = aggregation_data['path']
    aggregation_field = 'texta_link.facts'

    try:
        aggregation_size = 50
        aggregations = {"strings": {es_params['sort_by']: {"field": aggregation_field, 'size': 0}},
                        "distinct_values": {"cardinality": {"field": aggregation_field}}}

        # Define selected mapping
        ds = Datasets().activate_dataset(request.session)
        dataset = ds.get_index()
        mapping = ds.get_mapping()
        date_range = ds.get_date_range()
        es_m = ES_Manager(dataset, mapping, date_range)

        for item in es_params:
            if 'saved_search' in item:
                s = Search.objects.get(pk=es_params[item])
                name = s.description
                saved_query = json.loads(s.query)
                es_m.load_combined_query(saved_query)
                es_m.set_query_parameter('aggs', aggregations)
                response = es_m.search()

                # Filter response
                bucket_filter = '{0}.'.format(original_aggregation_field.lower())
                final_bucket = []
                for b in response['aggregations']['strings']['buckets']:
                    if bucket_filter in b['key']:
                        fact_name = b['key'].split('.')[-1]
                        b['key'] = fact_name
                        final_bucket.append(b)
                final_bucket = final_bucket[:aggregation_size]
                response['aggregations']['distinct_values']['value'] = len(final_bucket)
                response['aggregations']['strings']['buckets'] = final_bucket

                normalised_counts,labels = normalise_agg(response, es_m, es_params, 'strings')
                lexicon = list(set(lexicon+labels))
                query_results.append({'name':name,'data':normalised_counts,'labels':labels})
                distinct_values.append({'name':name,'data':response['aggregations']['distinct_values']['value']})


        es_m.build(es_params)
        # FIXME
        # this is confusing for the user
        if not es_m.is_combined_query_empty():
            es_m.set_query_parameter('aggs', aggregations)
            response = es_m.search()

            # Filter response
            bucket_filter = '{0}.'.format(original_aggregation_field.lower())
            final_bucket = []
            for b in response['aggregations']['strings']['buckets']:
                if bucket_filter in b['key']:
                    fact_name = b['key'].split('.')[-1]
                    b['key'] = fact_name
                    final_bucket.append(b)
            final_bucket = final_bucket[:aggregation_size]
            response['aggregations']['distinct_values']['value'] = len(final_bucket)
            response['aggregations']['strings']['buckets'] = final_bucket

            normalised_counts,labels = normalise_agg(response, es_m, es_params, 'strings')
            lexicon = list(set(lexicon+labels))
            query_results.append({'name':'Query','data':normalised_counts,'labels':labels})
            distinct_values.append({'name':'Query','data':response['aggregations']['distinct_values']['value']})

        data = [a+zero_list(len(query_results)) for a in map(list, zip(*[lexicon]))]
        data = [['Word']+[query_result['name'] for query_result in query_results]]+data

        for i,word in enumerate(lexicon):
            for j,query_result in enumerate(query_results):
                for k,label in enumerate(query_result['labels']):
                    if word == label:
                        data[i+1][j+1] = query_result['data'][k]

        logger.set_context('user_name', request.user.username)
        logger.info('facts_aggregation_queried')

    except Exception as e:
        print('-- Exception[{0}] {1}'.format(__name__, e))
        logger.set_context('user_name', request.user.username)
        logger.exception('facts_aggregation_query_failed')

    table_height = len(data)*15
    table_height = table_height if table_height > 500 else 500
    return {'data':[data[0]]+sorted(data[1:], key=lambda x: sum(x[1:]), reverse=True),'height':table_height,'type':'bar','distinct_values':json.dumps(distinct_values)}
开发者ID:cbentes,项目名称:texta,代码行数:96,代码来源:views.py


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