Exemple #1
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def get_kline_data(strategy):
    """
    this function acts on kline
    first get all stock code
    then call the function named get_kline by multiprocessing
    :param strategy:
    :return:
    """
    dd = Calendar.today()
    if not Calendar.in_business(dt=Calendar.today(), day=True):
        exit()
    print('kline_in')
    # t = Calendar.today()
    st = None
    et = None
    t = Calendar.today()
    if Calendar().query(date=t):
        mm = ['sh', 'sz']
        #cc = ['day', 'min60', 'min30', 'min15', 'min5']
        cc = [strategy]
        strategy = 'kline_' + strategy
        s = list()
        for m in mm:
            sl = get_stock_code_list(markets[m])
            num = 50
            aa = (lambda a: map(lambda b: a[b:b + num], range(0, len(a), num))
                  )(sl)
            for a in aa:
                for k in cc:
                    s.append(
                        dict(market=m,
                             category=k,
                             stock_code_list=a,
                             start_date=st,
                             end_date=et))
        # if st == None and et == None:
        # model_list[strategy].remove(date=t)
        # else:
        # sql = analyzer('date >= {} and date <= {}'.format(st, et))
        # model_list[strategy].remove(sql)

        pool = multiprocessing.Pool(processes=10)
        for i in s:
            pool.apply_async(gt_kline, (i, ))
        pool.close()
        pool.join()
        # for i in s:
        #     gt_kline(i)
        # model_list[strategy].remove(volume=0)
        print('-----------------' + str())
        print('kline_done')
Exemple #2
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def gt_kline(*args):
    # print('gt')
    _ = args[0]
    obj = model_list['kline_' + _['category']]
    t = Calendar.today()
    data = None

    # print(os.getpid())
    try:
        data = k_specified_a(market_name=_['market'],
                             category_name=_['category'],
                             stock_code_list=_['stock_code_list'],
                             start_date=_['start_date'],
                             end_date=_['end_date'])
    except Exception as e:
        print(e)
    # if _['category'] == 'min5':
    #     if datetime.now() <= n and datetime.now() >= n2:
    #         obj2 = model_list['tmp_kline_min5']
    #         obj2.insert_batch(data)
    #         print('ojb2 ok')
    # Mark.update_mark_success('tmp_kline_min5')

    # for sc in _['stock_code_list']:
    #     obj.remove(date=t, stock_code=sc)
    obj.insert_batch(data)

    # gc.collect()
    # print('____')
    print(os.getpid(), _['stock_code_list'])

    return 0
Exemple #3
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def get_index_data(strategy):
    print('index_in')
    t = Calendar.today()
    if Calendar().query(date=t):
        mm = ['sh', 'sz']
        cc = [strategy]
        strategy = 'index_' + strategy
        s = list()

        for m in mm:
            sl = index_dict[m]
            num = 10
            aa = (lambda a: map(lambda b: a[b:b + num], range(0, len(a), num))
                  )(sl)
            for a in aa:
                for k in cc:
                    s.append(
                        dict(market=m,
                             category=k,
                             stock_code_list=a,
                             start_date=None,
                             end_date=None))
        print('item')
        model_list[strategy].remove(date=t)
        print(s)

        pool = Pool(7)
        pool.map(gt_index, s)

        # p=multiprocessing.Process(target=gt_index,args=s)
        # p.start()
        # p.join(timeout=60)
        print('index_done')
Exemple #4
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    def check_kline(cls, strategy='kline_min5'):
        dt = Calendar.today()
        # pre_date = Calendar.calc(dt, -10)

        dt = Calendar.calc(dt, -1)['date']
        # sql = analyzer('date = {}'.format(str(dt.year * 10000 + dt.month * 100 + dt.day)))
        # model_list['check_data'].remove(sql)
        # print(pre_date)
        sql = analyzer("date >= {} and date <= {}".format(
            str(20180111), str(dt.year * 10000 + dt.month * 100 + dt.day)))
        print("____________________" + strategy)
        print(sql)
        print('稍等几秒')
        cursor = model_list[strategy].query(sql)
        print(cursor)
        all_count = cursor.count()
        print(all_count)
        day_count = cls.number_of_branches(strategy)
        print(day_count)
        dic = {
            'date': dt,
            'strategy': strategy,
            'all_count': all_count,
            'day_count': day_count,
            'result': all_count % day_count == 0
        }
        print('insert')
        model_list['check_data'].insert(dic)
        if all_count % day_count == 0:
            return strategy + ' is true'
            print("____________________")
        else:
            return strategy + "有问题"
Exemple #5
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def get_kline_data(strategy):
    # print('kline_in')
    # file_log(strategy,'time:'+str(datetime.now())+'\n'+'op:start')
    # t = Calendar.today()
    print('step into')
    t = Calendar.today()
    # 111=555
    if Calendar().query(date=t):
        mm = ['sh', 'sz']
        # cc = ['day', 'min60', 'min30', 'min15', 'min5']
        cc = [strategy]
        strategy = 'kline_' + strategy
        s = list()
        # ss = datetime.now()
        # print(ss)
        for m in mm:
            sl = get_stock_code_list(markets[m])
            num = 10
            aa = (lambda a: map(lambda b: a[b:b + num], range(0, len(a), num))
                  )(sl)
            print(aa)
            for a in aa:
                for k in cc:
                    s.append(
                        dict(market=m,
                             category=k,
                             stock_code_list=a,
                             start_date=None,
                             end_date=None))
        # e = datetime.now()
        # print(e)
        # file_log(strategy, 'time:' + str(datetime.now()) + '\n' + 'op:get stock_code')
        print('step getstocks')
        model_list[strategy].remove(date=t)
        print('remove over')
        # file_log(strategy, 'time:' + str(datetime.now()) + '\n' + 'op:remove today')
        # f = datetime.now()
        # print(f)

        pool = Pool(10)
        pool.map(gt_kline, s)
        # for i in s:
        #     gt_kline(i)

        # pool.close()
        # pool.join()

        # print('s=',s)
        # p = multiprocessing.Process(target=gt_kline, args=s)
        # p.start()
        # p.join(timeout=300)
        # for i in s:
        #     gt_kline(i)
        # model_list[strategy].remove(volume=0)
        # file_log(strategy, 'time:' + str(datetime.now()) + '\n' + 'op:complate')
        print('kline_done')
        return 0
Exemple #6
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def get_data_allocate(strategy, data_type):
    dd = Calendar.today()
    a = Calendar.in_business(dd, day=True)
    if (a == False):
        print('非工作日!')
        exit(0)
    t1 = time.clock()
    print(time.strftime('%Y-%m-%d %H:%M:%S', time.localtime(time.time())))
    command = "python {}\daily_{}_{}.py".format(project_dir, data_type,
                                                strategy)
    list = []
    if (strategy == 'min5'):
        list = get_min5_time()
    if (strategy == 'min15'):
        list = get_min15_time()
    if (strategy == 'min30'):
        list = get_min30_time()
    if (strategy == 'min60'):
        list = get_min60_time()
    if (strategy == 'day'):
        list = get_day_time()
    print(strategy)

    while True:
        # if in_business(datetime.now(), strategy, True):
        x = datetime.now().hour * 60 + datetime.now().minute
        # print ( datetime.now().hour,datetime.now().minute)
        # print(x)
        # if(x>list[-1]):

        if (x > list[-1]):
            print(list[-1])
            print('收盘!')
            exit(0)
        if (x == 11 * 60 + 45):
            print('上午结束')
            exit(0)
        if (x in list):

            print('finded')
            t1 = time.clock()

            subprocess.call(command, shell=True)
            t3 = time.strftime('%Y-%m-%d %H:%M:%S',
                               time.localtime(time.time()))
            print(t3)
            dit = {'date': t3, 'status': 1, 'kline': strategy, 'other': ''}
            model_list['kline_data_update_mark'].insert(dit)
            t2 = time.clock()
            a = (change_status(strategy)['time']) - ((t2 - t1) / 60)
            print(a)
            if (a > 0):
                time.sleep(a * 60)
                print('睡眠结束')
        else:
            print('finding:')
            time.sleep(10)
Exemple #7
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    def self_check(cls, date=Calendar.today()):
        date = Calendar.calc(date=date, offset=-1)['date']
        sql = analyzer('date = {}'.format(date.year * 10000 +
                                          date.month * 100 + date.day))
        print(sql)

        result = list(model_list['check_data'].query(sql))
        data = pd.DataFrame(result)
        all_count = list(data['all_count'])
        for i in range(0, len(all_count) - 1):
            if i != 4:
                if all_count[i] % all_count[i + 1] != 0:
                    print(all_count[i], all_count[i + 1])
                    return False

        print(data)
        return True
Exemple #8
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def get_kline_data(strategy):
    print('kline_in')
    t = Calendar.today()
    if Calendar().query(date=t):
        mm = ['sh', 'sz']
        cc = [strategy]
        strategy = 'kline_' + strategy
        s = list()
        for m in mm:
            sl = get_stock_code_list(markets[m])
            num = 50
            aa = (lambda a: map(lambda b: a[b:b + num], range(0, len(a), num))
                  )(sl)
            for a in aa:
                for k in cc:
                    s.append(
                        dict(market=m,
                             category=k,
                             stock_code_list=a,
                             start_date=None,
                             end_date=None))

        # model_list[strategy].remove(date=t)
        # model_list['kline_min15'].remove(date=t)
        # model_list['kline_min5'].remove(date=t)
        # model_list['kline_min30'].remove(date=t)
        # model_list['kline_min60'].remove(date=t)
        # model_list['kline_day'].remove(date=t)
        print("((((((((((((")
        print(len(s))
        freeze_support()
        pool = Pool(5)
        r = pool.map(gt_kline, s)
        df = pd.concat(r, join='outer', ignore_index=False)
        df.reset_index(inplace=True)
        # print(df.head(10))
        pool.close()
        pool.join()
        return df
Exemple #9
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# -*- coding: utf-8 -*-

from os.path import abspath, pardir, join
from sys import path

from app import markets
from app.models import Calendar
from app.actions import get_stock_code_list, get_xdxr

path.append(abspath(join(abspath(join(abspath(__file__), pardir)), pardir)))

if __name__ == '__main__':
    if not Calendar.in_business(dt=Calendar.today(), day=True):
        exit()
    start_date = None
    end_date = None
    stock_code_list = []
    for m in ['sh', 'sz']:
        stock_code_list = get_stock_code_list(market=markets[m])
        get_xdxr(market_name=m,
                 stock_code_list=stock_code_list,
                 start_date=start_date,
                 end_date=end_date)
Exemple #10
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        k_specified_ex(market_name=_['market'],
                       category_name=_['category'],
                       stock_code_list=_['stock_code_list'],
                       start_date=_['start_date'],
                       end_date=_['end_date']))
    # k_specified_a(market_name=_['market'], category_name=_['category'], stock_code_list=_['stock_code_list'],
    #                             start_date=_['start_date'], end_date=_['end_date'])
    # k_history_a(market_name=_['market'], category_name=_['category'], stock_code_list=_['stock_code_list'],
    #               start_date=_['start_date'], end_date=_['end_date'])
    # obj.insert_batch(k_realtime_a(market_name=_['market'], category_name=_['category'], stock_code_list=_['stock_code_list']))
    print(_['stock_code_list'])


if __name__ == '__main__':
    print('in')
    t = Calendar.today()
    if Calendar().query(date=t):
        mm = ['usa']
        cc = ['day', 'min60', 'min30', 'min15', 'min5']
        # cc = ['min5']
        # cc = ['day']
        s = list()
        # sd = Calendar.today()
        sd = analyzer('date = {}'.format(20170101))['date']
        ed = Calendar.today()
        for m in mm:
            pf = r'{}/{}'.format(project_dir, '{}.txt'.format(m))
            with open(pf) as f:
                sl = f.read().split('\n')
            num = 30
            aa = (lambda a: map(lambda b: a[b:b + num], range(0, len(a), num))
Exemple #11
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from multiprocessing import freeze_support, Pool

from app import cpus
from app.actions import day_feature_index
from app.models import Calendar, model_list
from app.query_str_analyzer import analyzer


def gti(*args):
    _ = args[0]
    day_feature_index(_[0], _[1])


# # daily
if __name__ == '__main__':
    if not Calendar.in_business(dt=Calendar.today(), day=True):
        exit()
    p = list()
    d = None

    c = list(Calendar().asc(Calendar().query(analyzer('date = {}'.format(d))),
                            ['num']))
    for cc in c:
        for k, v in {
                'sz': 'stock_code < 600000',
                'cyb': 'stock_code >= 300000 and stock_code < 600000',
                'sh': 'stock_code >= 600000',
                'zxb': 'stock_code >= 002000 and stock_code < 300000'
        }.items():
            p.append([
                analyzer('date = {} and {}'.format(
Exemple #12
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        print(sql)

        result = list(model_list['check_data'].query(sql))
        data = pd.DataFrame(result)
        all_count = list(data['all_count'])
        for i in range(0, len(all_count) - 1):
            if i != 4:
                if all_count[i] % all_count[i + 1] != 0:
                    print(all_count[i], all_count[i + 1])
                    return False

        print(data)
        return True


dt = Calendar.today()
# pre_date = Calendar.calc(dt, -10)
dt = Calendar.calc(dt, -1)['date']
sql = analyzer('date = {}'.format(
    str(dt.year * 10000 + dt.month * 100 + dt.day)))
model_list['check_data'].remove(sql)
print(Check_Data.check_kline('kline_min5'))
print(Check_Data.check_kline('kline_min15'))
print(Check_Data.check_kline('kline_min30'))
print(Check_Data.check_kline('kline_min60'))
print(Check_Data.check_kline('kline_day'))
print(Check_Data.check_kline('index_min5'))
print(Check_Data.check_kline('index_min15'))
print(Check_Data.check_kline('index_min30'))
print(Check_Data.check_kline('index_min60'))
print(Check_Data.check_kline('index_day'))