def search_portrait(condition_num, query, sort, size):
    user_result = []
    index_name = portrait_index_name
    index_type = portrait_index_type
    search_result_max = get_evaluate_max()
    if condition_num > 0:
        result = es_user_portrait.search(index=index_name, doc_type=index_type, \
        body={'query':{'bool':{'must':query}}, 'sort':[{sort:{'order':'desc'}}], 'size':size})['hits']['hits']
    else:
        result = es_user_portrait.search(index=index_name, doc_type=index_type, \
        body={'query':{'match_all':{}}, 'sort':[{sort:{"order":"desc"}}], 'size':size})['hits']['hits']

    if result:
        for item in result:
            user_dict = item['_source']
            score = item['_score']
            result_normal_activeness = math.log(user_dict['activeness'] / float(search_result_max['activeness']) * 9 + 1, 10)
            result_normal_importance = math.log(user_dict['importance'] / float(search_result_max['importance']) * 9 + 1, 10)
            result_normal_influence = math.log(user_dict['influence'] / float(search_result_max['influence']) * 9 + 1, 10)
            result_normal_sensitive = math.log(user_dict['sensitive'] / float(search_result_max['sensitive']) * 9 + 1, 10)
            user_dict['activeness'] = result_normal_activeness*100
            user_dict['importance'] = result_normal_importance*100
            user_dict['influence'] = result_normal_influence*100
            user_dict['sensitive'] = result_normal_sensitive*100
            user_result.append([user_dict['uid'], user_dict['uname'], user_dict['location'], user_dict['activeness'],\
                user_dict['importance'], user_dict['influence'], user_dict['sensitive'], score])

    return user_result
def search_portrait(condition_num, query, sort, size):
    user_result = []
    index_name = portrait_index_name
    index_type = portrait_index_type
    search_result_max = get_evaluate_max()
    if condition_num > 0:
        result = es_user_portrait.search(index=index_name, doc_type=index_type, \
        body={'query':{'bool':{'must':query}}, 'sort':[{sort:{'order':'desc'}}], 'size':size})['hits']['hits']
    else:
        result = es_user_portrait.search(index=index_name, doc_type=index_type, \
        body={'query':{'match_all':{}}, 'sort':[{sort:{"order":"desc"}}], 'size':size})['hits']['hits']

    if result:
        max_score = result[0]['_score']
        for item in result:
            user_dict = item['_source']
            score = item['_score']
            result_normal_activeness = math.log(user_dict['activeness'] / float(search_result_max['activeness']) * 9 + 1, 10)
            result_normal_importance = math.log(user_dict['importance'] / float(search_result_max['importance']) * 9 + 1, 10)
            result_normal_influence = math.log(user_dict['influence'] / float(search_result_max['influence']) * 9 + 1, 10)
            result_normal_sensitive = math.log(user_dict['sensitive'] / float(search_result_max['sensitive']) * 9 + 1, 10)
            user_dict['activeness'] = result_normal_activeness*100
            user_dict['importance'] = result_normal_importance*100
            user_dict['influence'] = result_normal_influence*100
            user_dict['sensitive'] = result_normal_sensitive*100
            user_dict['score'] = math.log(score/float(max_score)*9+1, 10)*100
            user_result.append([user_dict['uid'], user_dict['uname'], user_dict['location'], user_dict['activeness'],\
                user_dict['importance'], user_dict['influence'], user_dict['sensitive'], user_dict['score']])

    return user_result
def show_social_sensing_task():
    query_body = {
        "query": {
            "filtered": {
                "filter": {
                    "term": {
                        "finish": "1"
                    }
                }
            }
        },
        "sort": {
            "create_at": {
                "order": "desc"
            }
        },
        "size": 10000
    }

    results = []
    search_results = es.search(index=index_manage_social_task,
                               doc_type=task_doc_type,
                               body=query_body)['hits']['hits']
    if search_results:
        for item in search_results:
            results.append(item['_source']['task_name'])

    return results
def get_evaluate_max():
    max_result = {}
    index_name = portrait_index_name
    index_type = portrait_index_type
    evaluate_index = ['activeness', 'importance', 'influence']
    for evaluate in evaluate_index:
        query_body = {
            'query': {
                'match_all': {}
            },
            'size': 1,
            'sort': [{
                evaluate: {
                    'order': 'desc'
                }
            }]
        }
        try:
            result = es_user_portrait.search(index=index_name,
                                             doc_type=index_type,
                                             body=query_body)['hits']['hits']
        except Exception, e:
            raise e
        max_evaluate = result[0]['_source'][evaluate]
        max_result[evaluate] = max_evaluate
def ajax_show_task():
    # show all working task
    # "0": unfinish working task
    # "1": finish working task
    status = request.args.get("finish", "01")
    user = request.args.get('user', '')
    length = len(status)
    query_body = {
        "query": {
            "filtered": {
                "filter": {
                    "bool": {
                        "must": [{
                            "term": {
                                "create_by": user
                            }
                        }]
                    }
                }
            }
        },
        "sort": {
            "create_at": {
                "order": "desc"
            }
        },
        "size": 10000
    }
    #if length == 2:
    #    category_list = [status[0], status[1]]
    #    query_body['query']['filtered']['filter']["bool"]["must"].append({"term":{"finish": category_list}})
    if length == 1:
        query_body['query']['filtered']['filter']['bool']['must'].append(
            {"term": {
                "finish": status
            }})
    #else:
    #    print "error"

    try:
        search_results = es.search(index=index_manage_sensing_task,
                                   doc_type=task_doc_type,
                                   body=query_body)['hits']['hits']
    except:
        search_results = []
    results = []
    if search_results:
        for item in search_results:
            item = item['_source']
            history_status = json.loads(item['history_status'])
            if history_status:
                item['history_status'] = sorted(history_status,
                                                key=lambda x: x,
                                                reverse=True)
            else:
                item['history_status'] = []
            results.append(item)
    return json.dumps(results)
def get_evaluate_max():
    max_result = {}
    evaluate_index = ["importance", "influence"]
    for evaluate in evaluate_index:
        query_body = {"query": {"match_all": {}}, "size": 1, "sort": [{evaluate: {"order": "desc"}}]}
        try:
            result = es_user_portrait.search(index=portrait_index_name, doc_type=portrait_index_type, body=query_body)[
                "hits"
            ]["hits"]
        except Exception, e:
            raise e
        max_evaluate = result[0]["_source"][evaluate]
        max_result[evaluate] = max_evaluate
def save_detect_single_task(input_dict):
    results = {}
    #step1: identify the seed user is in user_portrait
    seed_user = input_dict['query_condition']['seed_user']
    query = []
    query_list = []
    for user_item in seed_user:
        query_list.append({'term': {user_item: seed_user[user_item]}})
    query.append({'bool': {'should': query_list}})
    try:
        seed_user_result = es_user_portrait.search(index=portrait_index_name, doc_type=portrait_index_type, \
                            body={'query':{'bool':{'must':query}}, 'size':1})['hits']['hits']
    except Exception, e:
        raise e
Beispiel #8
0
def get_top_influence(key):
    query_body = {
        "query":{
            "match_all": {}
        },
        "sort":{key:{"order":"desc"}},
        "size": 1
    }

    search_result = es.search(index=portrait_index_name, doc_type=portrait_index_type, body=query_body)['hits']['hits']
    if search_result:
        result = search_result[0]['_source'][key]

    return result
def save_detect_single_task(input_dict):
    results = {}
    #step1: identify the seed user is in user_portrait
    seed_user = input_dict['query_condition']['seed_user']
    query = []
    query_list = []
    for user_item in seed_user:
        query_list.append({'term':{user_item: seed_user[user_item]}})
    query.append({'bool':{'should': query_list}})
    try:
        seed_user_result = es_user_portrait.search(index=portrait_index_name, doc_type=portrait_index_type, \
                            body={'query':{'bool':{'must':query}}, 'size':1})['hits']['hits']
    except Exception, e:
        raise e
def get_evaluate_max():
    max_result = {}
    evaluate_index = ['influence', 'activeness', 'importance', 'sensitive']
    for evaluate in evaluate_index:
        query_body = {
            'query':{
                'match_all':{}
                    },
                'size':1,
                'sort':[{evaluate: {'order': 'desc'}}]
                }
        try:
            result = es.search(index=portrait_index_name, doc_type=portrait_index_type, body=query_body)['hits']['hits']
        except Exception, e:
            raise e
        max_evaluate = result[0]['_source'][evaluate]
        max_result[evaluate] = max_evaluate
def ajax_show_task():
    # show all working task
    # "0": unfinish working task
    # "1": finish working task
    status = request.args.get("finish", "01")
    user = request.args.get('user', '')
    length = len(status)
    query_body = {
        "query":{
            "filtered":{
                "filter":{
                    "bool":{
                        "must":[
                            {"term":{"create_by": user}}
                        ]
                    }
                }
            }
        },
        "sort": {"create_at": {"order": "desc"}},
        "size": 10000
    }
    #if length == 2:
    #    category_list = [status[0], status[1]]
    #    query_body['query']['filtered']['filter']["bool"]["must"].append({"term":{"finish": category_list}})
    if length == 1:
        query_body['query']['filtered']['filter']['bool']['must'].append({"term":{"finish": status}})
    #else:
    #    print "error"

    try:
        search_results = es.search(index=index_manage_sensing_task, doc_type=task_doc_type, body=query_body)['hits']['hits']
    except:
        search_results = []
    results = []
    if search_results:
        for item in search_results:
            item = item['_source']
            history_status = json.loads(item['history_status'])
            if history_status:
                item['history_status'] = sorted(history_status, key=lambda x:x, reverse=True)
            else:
                item['history_status'] = []
            results.append(item)
    return json.dumps(results)
def get_evaluate_max():
    max_result = {}
    evaluate_index = ['activeness', 'importance', 'influence', 'sensitive']
    for evaluate in evaluate_index:
        query_body = {
            'query':{
                'match_all':{}
            },
            'size':1,
            'sort':[{evaluate: {'order': 'desc'}}]
        }
        result = es_user_portrait.search(index=portrait_index_name, doc_type=portrait_index_type, body=query_body)['hits']['hits']
        max_evaluate = result[0]['_source'][evaluate]
        if max_evaluate != 0:
            max_result[evaluate] = max_evaluate
        else:
            max_result[evaluate] = 99999

    return max_result
def get_evaluate_max():
    max_result = {}
    evaluate_index = ['activeness', 'importance', 'influence', 'sensitive']
    for evaluate in evaluate_index:
        query_body = {
            'query':{
                'match_all':{}
            },
            'size':1,
            'sort':[{evaluate: {'order': 'desc'}}]
        }
        result = es_user_portrait.search(index=portrait_index_name, doc_type=portrait_index_type, body=query_body)['hits']['hits']
        max_evaluate = result[0]['_source'][evaluate]
        if max_evaluate != 0:
            max_result[evaluate] = max_evaluate
        else:
            max_result[evaluate] = 99999

    return max_result
def show_social_sensing_task():
    query_body = {
        "query":{
            "filtered":{
                "filter":{
                    "term": {"finish": "1"}
                }
            }
        },
        "sort": {"create_at": {"order": "desc"}},
        "size": 10000
    }

    results = []
    search_results = es.search(index=index_manage_social_task, doc_type=task_doc_type, body=query_body)['hits']['hits']
    if search_results:
        for item in search_results:
            results.append(item['_source']['task_name'])

    return results
Beispiel #15
0
def get_top_all_influence(key, ts):
    query_body = {
        "query":{
            "match_all": {}
        },
        "sort":{key:{"order":"desc"}},
        "size": 1
    }

    index_name = "bci_" + ts2datetime(ts).replace('-','')
    if not es.indices.exists(index=index_name):
        index_name = "bci_" + ts2datetime(ts-DAY).replace('-','')
    exist_es = es.indices.exists(index=index_name)
    if exist_es:
         search_result = es.search(index=index_name, doc_type="bci", body=query_body)['hits']['hits']
    else:
         search_result = {}
    if search_result:
        result = search_result[0]['_source'][key]
    else:
        result = 2000
    return result
Beispiel #16
0
def search_task(task_name, submit_user, submit_date, state, status):
    results = []
    #query = [{"term": {"submit_user": submit_user}}]
    query = []
    condition_num = 0
    if task_name:
        task_name_list = task_name.split(' ')
        for item in task_name_list:
            query.append({'wildcard': {'task_name': '*' + item + '*'}})
            condition_num += 1
    if submit_date:
        submit_date_ts = datetime2ts(submit_date)
        submit_date_start = submit_date_ts
        submit_date_end = submit_date_ts + DAY
        query.append({
            'range': {
                'submit_date': {
                    'gte': submit_date_start,
                    'lt': submit_date_end
                }
            }
        })
        condition_num += 1
    if state:
        state_list = state.split(' ')
        for item in state_list:
            query.append({'wildcard': {'state': '*' + item + '*'}})
            condition_num += 1
    if status:
        query.append({'match': {'status': status}})
        condition_num += 1
    if condition_num > 0:
        query.append({'term': {'task_type': 'analysis'}})
        try:
            source = es_group_result.search(index=group_index_name,
                                            doc_type=group_index_type,
                                            body={
                                                'query': {
                                                    'bool': {
                                                        'must': query
                                                    }
                                                },
                                                'sort': [{
                                                    'count': {
                                                        'order': 'desc'
                                                    }
                                                }],
                                                'size':
                                                MAX_VALUE
                                            })
        except Exception as e:
            raise e
    else:
        query.append({'term': {'task_type': 'analysis'}})
        source = es.search(index=group_index_name,
                           doc_type=group_index_type,
                           body={
                               'query': {
                                   'bool': {
                                       'must': query
                                   }
                               },
                               'sort': [{
                                   'count': {
                                       'order': 'desc'
                                   }
                               }],
                               'size': MAX_VALUE
                           })

    try:
        task_dict_list = source['hits']['hits']
    except:
        return None
    print 'step yes'
    result = []
    for task_dict in task_dict_list:
        try:
            state = task_dict['_source']['state']
        except:
            state = ''
        try:
            status = task_dict['_source']['status']
        except:
            status = 0
        result.append([
            task_dict['_source']['task_name'],
            task_dict['_source']['submit_date'], task_dict['_source']['count'],
            state, status
        ])

    return result
def imagine(uid, query_fields_dict,index_name=portrait_index_name, doctype=portrait_index_type):
    default_setting_dict = query_fields_dict
    print query_fields_dict

    personal_info = es.get(index=portrait_index_name, doc_type=portrait_index_type, id=uid, _source=True)['_source']

    # tag
    tag_dict = dict()
    tag_dict_value = 0
    if "tag" in query_fields_dict:
        tag_dict_value = query_fields_dict["tag"]
        query_fields_dict.pop("tag")
        for key,value in personal_info.iteritems():
            if "tag-" in key:
                tag_dict[key] = value
    print tag_dict, tag_dict_value

    # size
    sort_size = query_fields_dict["size"]
    query_fields_dict.pop("size")

    keys_list = []
    for k, v in query_fields_dict.iteritems():
        if v:
            keys_list.append(k) #需要进行关联的键

    search_dict = {} # 检索的属性字典
    iter_list = []
    tag_attri_vaule = []

    # 对搜索的键值进行过滤,去掉无用的键
    for iter_key in keys_list:
        if iter_key in personal_info:
            if not personal_info[iter_key] or not query_fields_dict[iter_key]:
                query_fields_dict.pop(iter_key)
                continue
            else:
                iter_list.append(iter_key)
                temp = personal_info[iter_key]
                search_dict[iter_key] = temp.split('&')

            """
            query_fields_dict.pop(iter_key)
            if tag_dict.get(iter_key,''):
                tag_attri_vaule.append(iter_key+"-"+tag_dict[iter_key])
            """

    if len(iter_list) == 0 and len(tag_dict) == 0:
        return []

    query_body = {
        'query':{
            'function_score':{
                'query':{
                    'bool':{
                        'must':[
                        ]
                    }
                }
            }
        }
    }

    number = es.count(index=index_name, doc_type=doctype, body=query_body)['count']
    query_body["size"] = sort_size+100

    for (k,v) in query_fields_dict.items():
        temp = {}
        temp_list = []
        if k in personal_info and v != 0:
            for iter_key in search_dict[k]:
                temp_list.append({'wildcard':{k:{'wildcard':'*'+iter_key+'*', 'boost': v}}})

            query_body['query']['function_score']['query']['bool']['must'].append({'bool':{'should':temp_list}})

    if tag_dict and tag_dict_value:
        temp_list = []
        for k,v in tag_dict.iteritems():
            temp = {"term":{k:v}}
            temp_list.append(temp)
        query_body['query']['function_score']['query']['bool']['must'].append({'bool':{'should':temp_list}})

    result = es.search(index=index_name, doc_type=doctype, body=query_body)['hits']['hits']
    field_list = ['uid','uname', 'activeness','importance', 'influence', 'sensitive']
    evaluate_index_list = ['activeness', 'importance', 'influence', 'sensitive']
    return_list = []
    count = 0

    if len(result) > 1 and result:
        if result[0]['_id'] != uid:
            top_score = result[0]['_score']
        else:
            top_score = result[1]['_score']

    #get evaluate max to normal
    evaluate_max_dict = get_evaluate_max()
    for item in result:
        if uid == item['_id']:
            score = item['_score']
            continue
        info = []
        for field in field_list:
            if field in evaluate_index_list:
                value = item['_source'][field]
                normal_value = math.log(value / float(evaluate_max_dict[field] )* 9 + 1, 10) * 100
            else:
                normal_value = item['_source'][field]
                if not normal_value:
                    normal_value = item['_id']
            info.append(normal_value)
        info.append(item['_score']/float(top_score)*100)
        return_list.append(info)
        count += 1

        if count == sort_size:
            break

    return_list.append(number)

    temp_list = []
    for field in field_list:
        if field in evaluate_index_list:
            value = personal_info[field]
            normal_value = math.log(value / float(evaluate_max_dict[field]) * 9 + 1, 10) * 100
        else:
            normal_value = personal_info[field]
        temp_list.append(normal_value)

    results = []
    results.append(temp_list)
    results.extend(return_list)


    return results
Beispiel #18
0
def imagine(uid,
            query_fields_dict,
            index_name=portrait_index_name,
            doctype=portrait_index_type):
    default_setting_dict = query_fields_dict
    print query_fields_dict

    personal_info = es.get(index=portrait_index_name,
                           doc_type=portrait_index_type,
                           id=uid,
                           _source=True)['_source']

    # tag
    tag_dict = dict()
    tag_dict_value = 0
    if "tag" in query_fields_dict:
        tag_dict_value = query_fields_dict["tag"]
        query_fields_dict.pop("tag")
        for key, value in personal_info.iteritems():
            if "tag-" in key:
                tag_dict[key] = value
    print tag_dict, tag_dict_value

    # size
    sort_size = query_fields_dict["size"]
    query_fields_dict.pop("size")

    keys_list = []
    for k, v in query_fields_dict.iteritems():
        if v:
            keys_list.append(k)  #需要进行关联的键

    search_dict = {}  # 检索的属性字典
    iter_list = []
    tag_attri_vaule = []

    # 对搜索的键值进行过滤,去掉无用的键
    for iter_key in keys_list:
        if iter_key in personal_info:
            if not personal_info[iter_key] or not query_fields_dict[iter_key]:
                query_fields_dict.pop(iter_key)
                continue
            else:
                iter_list.append(iter_key)
                temp = personal_info[iter_key]
                search_dict[iter_key] = temp.split('&')
            """
            query_fields_dict.pop(iter_key)
            if tag_dict.get(iter_key,''):
                tag_attri_vaule.append(iter_key+"-"+tag_dict[iter_key])
            """

    if len(iter_list) == 0 and len(tag_dict) == 0:
        return []

    query_body = {
        'query': {
            'function_score': {
                'query': {
                    'bool': {
                        'must': []
                    }
                }
            }
        }
    }

    number = es.count(index=index_name, doc_type=doctype,
                      body=query_body)['count']
    query_body["size"] = sort_size + 100

    for (k, v) in query_fields_dict.items():
        temp = {}
        temp_list = []
        if k in personal_info and v != 0:
            for iter_key in search_dict[k]:
                temp_list.append({
                    'wildcard': {
                        k: {
                            'wildcard': '*' + iter_key + '*',
                            'boost': v
                        }
                    }
                })

            query_body['query']['function_score']['query']['bool'][
                'must'].append({'bool': {
                    'should': temp_list
                }})

    if tag_dict and tag_dict_value:
        temp_list = []
        for k, v in tag_dict.iteritems():
            temp = {"term": {k: v}}
            temp_list.append(temp)
        query_body['query']['function_score']['query']['bool']['must'].append(
            {'bool': {
                'should': temp_list
            }})

    result = es.search(index=index_name, doc_type=doctype,
                       body=query_body)['hits']['hits']
    field_list = [
        'uid', 'uname', 'activeness', 'importance', 'influence', 'sensitive'
    ]
    evaluate_index_list = [
        'activeness', 'importance', 'influence', 'sensitive'
    ]
    return_list = []
    count = 0

    if len(result) > 1 and result:
        if result[0]['_id'] != uid:
            top_score = result[0]['_score']
        else:
            top_score = result[1]['_score']

    #get evaluate max to normal
    evaluate_max_dict = get_evaluate_max()
    for item in result:
        if uid == item['_id']:
            score = item['_score']
            continue
        info = []
        for field in field_list:
            if field in evaluate_index_list:
                value = item['_source'][field]
                normal_value = math.log(
                    value / float(evaluate_max_dict[field]) * 9 + 1, 10) * 100
            else:
                normal_value = item['_source'][field]
                if not normal_value:
                    normal_value = item['_id']
            info.append(normal_value)
        info.append(item['_score'] / float(top_score) * 100)
        return_list.append(info)
        count += 1

        if count == sort_size:
            break

    return_list.append(number)

    temp_list = []
    for field in field_list:
        if field in evaluate_index_list:
            value = personal_info[field]
            normal_value = math.log(
                value / float(evaluate_max_dict[field]) * 9 + 1, 10) * 100
        else:
            normal_value = personal_info[field]
        temp_list.append(normal_value)

    results = []
    results.append(temp_list)
    results.extend(return_list)

    return results
Beispiel #19
0
def delete_attribute(attribute_name):
    status = False
    try:
        result = es.get(index=attribute_index_name, doc_type=attribute_index_type, id=attribute_name)['_source']
    except Exception, e:
        raise e
        return status
    es.delete(index=attribute_index_name, doc_type=attribute_index_type, id=attribute_name)
    # delete attribute in user_portrait
    query = []
    attribute_value = result['attribute_value'].split('&')
    attribute_name = "tag-" + attribute_name
    for value in attribute_value:
        query.append({'match':{attribute_name: value}})
    try:
        attribute_user_result = es_user_portrait.search(index=user_index_name, doc_type=user_index_type, \
                                         body={'query':{'bool':{'must':query}}})['hits']['hits']
    except:
        attribute_user_result = []
    if attribute_user_result==[]:
        status = True
        return status
    bulk_action = []
    for user_dict in attribute_user_result:
        try:
            user_item = user_dict['_source']
        except:
            next
        user_item.pop(attribute_name)
        user = user_item['uid']
        action = {'index':{'_id':str(user)}}
        bulk_action.extend([action, user_item])
def search_task(task_name, submit_user, submit_date, state, status):
    results = []
    # query = [{"term": {"submit_user": submit_user}}]
    query = []
    condition_num = 0
    if task_name:
        task_name_list = task_name.split(" ")
        for item in task_name_list:
            query.append({"wildcard": {"task_name": "*" + item + "*"}})
            condition_num += 1
    if submit_date:
        submit_date_ts = datetime2ts(submit_date)
        submit_date_start = submit_date_ts
        submit_date_end = submit_date_ts + DAY
        query.append({"range": {"submit_date": {"gte": submit_date_start, "lt": submit_date_end}}})
        condition_num += 1
    if state:
        state_list = state.split(" ")
        for item in state_list:
            query.append({"wildcard": {"state": "*" + item + "*"}})
            condition_num += 1
    if status:
        query.append({"match": {"status": status}})
        condition_num += 1
    if condition_num > 0:
        query.append({"term": {"task_type": "analysis"}})
        try:
            source = es_group_result.search(
                index=group_index_name,
                doc_type=group_index_type,
                body={"query": {"bool": {"must": query}}, "sort": [{"count": {"order": "desc"}}], "size": MAX_VALUE},
            )
        except Exception as e:
            raise e
    else:
        query.append({"term": {"task_type": "analysis"}})
        source = es.search(
            index=group_index_name,
            doc_type=group_index_type,
            body={"query": {"bool": {"must": query}}, "sort": [{"count": {"order": "desc"}}], "size": MAX_VALUE},
        )

    try:
        task_dict_list = source["hits"]["hits"]
    except:
        return None
    print "step yes"
    result = []
    for task_dict in task_dict_list:
        try:
            state = task_dict["_source"]["state"]
        except:
            state = ""
        try:
            status = task_dict["_source"]["status"]
        except:
            status = 0
        result.append(
            [
                task_dict["_source"]["task_name"],
                task_dict["_source"]["submit_date"],
                task_dict["_source"]["count"],
                state,
                status,
            ]
        )

    return result