Esempio n. 1
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    def test_checkPricing(self):
        import time
        instrumentList = [
            Instrument(symbol='A', asset_type=AssetType.us_equity, currency=Currency.usd),
            Instrument(symbol='AAAL', asset_type=AssetType.us_equity, currency=Currency.usd),
            Instrument(symbol='AAPL', asset_type=AssetType.us_equity, currency=Currency.usd),
            Instrument(symbol='ABT', asset_type=AssetType.us_equity, currency=Currency.usd),

        ]
        for instrument in instrumentList:
            self.vector_service.vectorDao.delete(instrument)

            self.vector_service.vectorizedDataService.historicalMarketDataService.deleteBar(instrument=instrument,
                                                                                            period=Period.day,
                                                                                            number_of_periods=1)

        start = time.time()
        dictPricing = {}
        wrongInstrumentsSymbolLists = []
        for instrument in instrumentList:
            self.vector_service.vectorizedDataService.__downloadHistoricalPrices__(
                wrongInstrumentsSymbolLists=wrongInstrumentsSymbolLists,
                outputDict=dictPricing,
                fromDate=datetime.datetime(year=2010,
                                           day=1,
                                           month=1),
                toDate=self.toDate,
                instrument=instrument
            )

        dict_of_matrix = self.vector_service.getDataDictOfMatrix(instrumentList=instrumentList,
                                                                 ratioList=[],
                                                                 fromDate=datetime.datetime(year=2010, day=1, month=1),
                                                                 toDate=self.toDate,
                                                                 )
        end = time.time()
        elapsed = end - start
        print('1-Took %d seconds to complete 4 instrument downloading' % (elapsed))
        self.assertIsNotNone(dict_of_matrix)
        self.assertEqual(5, len(dict_of_matrix))
        keysOutput = dict_of_matrix.keys()
        for key in DataDictKeys.keys:
            self.assertEqual(key in keysOutput, True)

        # %%
        for key in dictPricing.keys():
            if key == 'wrong':
                continue
            for symbol in dict_of_matrix[key].columns:
                print('testing pricing equality in %s:%s' % (key, symbol))
                isBusinessDay = BDay().onOffset
                match_series = pd.to_datetime(dictPricing[key].index).map(isBusinessDay)
                dictPricing_df = dictPricing[key][match_series].copy()
                dictPricing_df.fillna(method='ffill', inplace=True)

                df = dict_of_matrix[key][symbol]
                df_pricing = dictPricing_df[symbol]
                # self.assertEqual(len(df), len(df_pricing.dropna()))
                sum1 = df.sum()
                sum2 = df_pricing.sum()
class InstrumentTest(unittest.TestCase):
    instrumentList = [
        Instrument(symbol='ABC',
                   asset_type=AssetType.us_equity,
                   currency=Currency.usd),
        Instrument(symbol='ACN',
                   asset_type=AssetType.us_equity,
                   currency=Currency.usd),
        Instrument(symbol='AAPL',
                   asset_type=AssetType.us_equity,
                   currency=Currency.usd),
        Instrument(symbol='GOOGL',
                   asset_type=AssetType.us_equity,
                   currency=Currency.usd),
        Instrument(symbol='MSFT',
                   asset_type=AssetType.us_equity,
                   currency=Currency.usd),
    ]

    def test_checkUnstackStackInstrumentList(self):
        symbolList, assetType, currency = __unstackInstrumentList__(
            self.instrumentList)
        self.assertIsNotNone(symbolList)
        self.assertIsNotNone(assetType)
        self.assertIsNotNone(currency)

        self.assertEqual(len(symbolList), len(self.instrumentList))

        instrumentListBack = __stackInstrumentList__(symbolList, assetType,
                                                     currency)
        self.assertIsNotNone(instrumentListBack)
        self.assertEqual(len(instrumentListBack), len(self.instrumentList))
Esempio n. 3
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class AlphaVantageHistoricalDataTestCase(unittest.TestCase):
    symbol = 'MSFT'
    broker = Broker.manual_email
    currency = Currency.usd
    asset_type = AssetType.future
    instrument = Instrument(symbol,
                            asset_type=asset_type,
                            broker=broker,
                            currency=currency)

    instrument_wrong = Instrument(symbol + 'losif',
                                  asset_type=asset_type,
                                  broker=broker,
                                  currency=currency)

    fromDate = datetime.datetime.today() - datetime.timedelta(days=5)
    user_settings = user_settings_tests
    market_data_object = AlphaVantageHistoricalMarketData(user_settings)

    # def setUp(self):
    #     pass
    #
    # def tearDown(self):
    #     pass

    @unittest.skip("error premium account")
    def test_download_data_minute(self):
        # premium
        fromDateMin = datetime.datetime.today() - datetime.timedelta(days=1)
        dataframe = self.market_data_object.download(self.instrument,
                                                     period=Period.minute,
                                                     number_of_periods=1,
                                                     fromDate=fromDateMin)

        self.assertIsNotNone(dataframe)

    def test_download_data_day(self):
        dataframe = self.market_data_object.download(self.instrument,
                                                     period=Period.day,
                                                     number_of_periods=1,
                                                     fromDate=self.fromDate)

        self.assertIsNotNone(dataframe)

    def test_download_data_day_wrong(self):
        dataframe = self.market_data_object.download(self.instrument_wrong,
                                                     period=Period.day,
                                                     number_of_periods=1,
                                                     fromDate=self.fromDate)

        self.assertIsNone(dataframe)

    def test_download_data_minute_wrong(self):
        dataframe = self.market_data_object.download(self.instrument_wrong,
                                                     period=Period.minute,
                                                     number_of_periods=1,
                                                     fromDate=self.fromDate)

        self.assertIsNone(dataframe)
Esempio n. 4
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class OandaHistoricalDataTestCase(unittest.TestCase):
    symbol = 'EUR'
    broker = Broker.manual_email
    currency = Currency.usd
    asset_type = AssetType.forex
    instrument = Instrument(symbol,
                            asset_type=asset_type,
                            broker=broker,
                            currency=currency)
    instrument_wrong = Instrument(symbol + 'losif',
                                  asset_type=asset_type,
                                  broker=broker,
                                  currency=currency)

    fromDate = datetime.datetime.today() - datetime.timedelta(days=5)
    user_settings = user_settings_tests
    market_data_object = OandaHistoricalMarketData(user_settings)

    # def setUp(self):
    #     pass
    #
    # def tearDown(self):
    #     pass

    def test_download_data_minute(self):
        dataframe = self.market_data_object.download(
            self.instrument,
            period=Period.minute,
            number_of_periods=1,
            fromDate=datetime.datetime(2018, 6, 20),
            toDate=datetime.datetime(2018, 6, 21))

        self.assertIsNotNone(dataframe)

    def test_download_data_day(self):
        dataframe = self.market_data_object.download(self.instrument,
                                                     period=Period.day,
                                                     number_of_periods=1,
                                                     fromDate=self.fromDate)

        self.assertIsNotNone(dataframe)

    def test_download_data_day_wrong(self):
        dataframe = self.market_data_object.download(self.instrument_wrong,
                                                     period=Period.day,
                                                     number_of_periods=1,
                                                     fromDate=self.fromDate)

        self.assertIsNone(dataframe)

    def test_download_data_minute_wrong(self):
        dataframe = self.market_data_object.download(self.instrument_wrong,
                                                     period=Period.minute,
                                                     number_of_periods=1,
                                                     fromDate=self.fromDate)

        self.assertIsNone(dataframe)
class CryptoCompareHistoricalDataTestCase(unittest.TestCase):
    symbol = 'BTC'
    broker = Broker.gdax
    currency = Currency.eur
    instrument = Instrument(symbol, broker, currency)
    asset_type = AssetType.crypto
    instrument_wrong = Instrument(symbol + 'losif',
                                  asset_type=asset_type,
                                  broker=broker,
                                  currency=currency)

    fromDate = datetime.datetime.today() - datetime.timedelta(days=5)
    user_settings = user_settings_tests
    market_data_object = CryptoCompareHistoricalMarketData(user_settings)

    # def setUp(self):
    #     pass
    #
    # def tearDown(self):
    #     pass

    def test_download_data_minute(self):
        dataframe = self.market_data_object.download(self.instrument,
                                                     period=Period.minute,
                                                     number_of_periods=1,
                                                     fromDate=self.fromDate)

        self.assertIsNotNone(dataframe)

    def test_download_data_day(self):
        dataframe = self.market_data_object.download(self.instrument,
                                                     period=Period.day,
                                                     number_of_periods=1,
                                                     fromDate=self.fromDate)

        self.assertIsNotNone(dataframe)

    def test_download_data_day_wrong(self):
        dataframe = self.market_data_object.download(self.instrument_wrong,
                                                     period=Period.day,
                                                     number_of_periods=1,
                                                     fromDate=self.fromDate)

        self.assertIsNone(dataframe)

    def test_download_data_minute_wrong(self):
        dataframe = self.market_data_object.download(self.instrument_wrong,
                                                     period=Period.minute,
                                                     number_of_periods=1,
                                                     fromDate=self.fromDate)

        self.assertIsNone(dataframe)
 def test_getAllBatch_wrong(self):
     fromDate = datetime.datetime(year=2010, day=1, month=1)
     instrument = Instrument('A123APL', asset_type=AssetType.us_equity, currency=Currency.usd)
     df_batch = self.fundamental_data_object.downloadBatch(instrument=instrument,
                                                           fundamental_ratio_list=Ratio.fundamental_list_Y,
                                                           fromDate=fromDate, toDate=self.toDate)
     self.assertIsNone(df_batch)
Esempio n. 7
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class QuandlQuantCalculatorTestCase(unittest.TestCase):
    instrument = Instrument('AAPL',
                            asset_type=AssetType.us_equity,
                            currency=Currency.usd)
    user_settings = user_settings_tests
    quant_data_object = QuantDataImpl(user_settings)

    fromDate = datetime.datetime(year=2017, day=1, month=1)
    toDate = datetime.datetime(year=2018, day=26, month=6)

    def test_calculateReturnDiff(self):
        ratio = Ratio.quant_returnsDiff_120
        data = self.quant_data_object.download(self.instrument,
                                               quant_ratio=ratio,
                                               fromDate=self.fromDate,
                                               toDate=self.toDate)
        self.assertIsNotNone(data)
        self.assertTrue(Ratio.ratio in data.columns)
        self.assertEqual(len(data.columns), 1)

    def test_all_quants(self):
        ratioList = Ratio.quant_list
        for ratio in ratioList:
            print('testing ratio %s ' % ratio)
            downloadTest = self.quant_data_object.download(
                self.instrument,
                quant_ratio=ratio,
                fromDate=self.fromDate,
                toDate=self.toDate)
            self.assertIsNotNone(downloadTest)
            self.assertNotEquals(len(downloadTest), 0)
            self.assertTrue(Ratio.ratio in downloadTest.columns)
            self.assertEqual(len(downloadTest.columns), 1)
Esempio n. 8
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    def getDataFile_instrument_from_to_period_numberPeriods(self, file):
        import datetime
        filename = file.split(os.sep)[-1][:-4]
        fileSplitted = filename.split('_')
        symbol = fileSplitted[0][:3]
        currency = fileSplitted[0][3:]
        periodDukas = fileSplitted[1]
        if periodDukas == self.period_dict[Period.tick]:
            # tick
            number_periods = int(1)
            period = Period.tick
            dates = fileSplitted[2].split('-')
            fromDate = datetime.datetime.strptime(dates[0],
                                                  self.filenameDateFormat)
            toDate = datetime.datetime.strptime(dates[1],
                                                self.filenameDateFormat)
        else:
            # bars
            number_periods = int(fileSplitted[2])
            period = {
                key
                for key, value in self.period_dict.items()
                if value == fileSplitted[3]
            }.pop()  # self.period_dict[fileSplitted[3]]
            dates = fileSplitted[5].split('-')
            fromDate = datetime.datetime.strptime(dates[0],
                                                  self.filenameDateFormat)
            toDate = datetime.datetime.strptime(dates[1],
                                                self.filenameDateFormat)

        toDate = self.getToDateFromFile(toDate, period)
        instrument = Instrument(symbol=symbol,
                                currency=currency,
                                asset_type=AssetType.forex)
        return instrument, fromDate, toDate, period, number_periods
Esempio n. 9
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class HistoricalMarketDataServiceTestCase(unittest.TestCase):
    user_settings = user_settings_tests
    historicalMarketService = HistoricalMarketDataService(user_settings)
    instrument = Instrument(symbol='ETH',
                            broker=Broker.gdax,
                            asset_type=AssetType.crypto,
                            currency=Currency.eur)
    period = Period.hour
    number_of_periods = 1

    def setUp(self):
        pass

    def tearDown(self):
        # delete
        # self.historicalMarketService.deleteBar(instrument=self.instrument,period=self.period,number_of_periods=self.number_of_periods)
        pass

    def test_getHistorical_hour(self):
        # clean first
        # self.historicalMarketService.deleteBar(instrument=self.instrument, period=self.period,
        #                                        number_of_periods=self.number_of_periods)

        import datetime
        from_date = datetime.datetime.today() - datetime.timedelta(days=2)
        to_date = datetime.datetime.today() - datetime.timedelta(days=1)

        data = self.historicalMarketService.getHistoricalData(
            self.instrument,
            period=self.period,
            number_of_periods=self.number_of_periods,
            fromDate=from_date,
            toDate=to_date,
            force_download=True)
        self.assertIsNotNone(data)

    def test_getHistorical__dailyClean(self):
        # clean first
        # self.historicalMarketService.deleteBar(instrument=self.instrument, period=self.period,
        #                                        number_of_periods=self.number_of_periods)

        import datetime
        instrument = Instrument(symbol='AAPL',
                                broker=Broker.manual_email,
                                asset_type=AssetType.us_equity,
                                currency=Currency.usd)

        from_date = datetime.datetime(year=2010, month=1, day=1)
        to_date = datetime.datetime(year=2012, month=1, day=1)
        period = Period.day
        number_of_periods = 1
        data = self.historicalMarketService.getHistoricalData(
            instrument,
            period=period,
            number_of_periods=number_of_periods,
            fromDate=from_date,
            toDate=to_date,
            force_download=True,
            endOfDayData=True)
        self.assertIsNotNone(data)
Esempio n. 10
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            def _pricing_iter():
                sid = 0
                with maybe_show_progress(
                        symbols,
                        show_progress,
                        label='Downloading Tradea Database pricing data ') as it, \
                        requests.Session() as session:
                    for symbol in it:
                        logger.debug('zipline bundle downloading %s' % symbol)
                        try:
                            instrument = Instrument(
                                symbol=symbol, asset_type=AssetType.us_equity)

                            df = self.historical_market_data_service.getHistoricalData(
                                instrument,
                                period=Period.day,
                                number_of_periods=1,
                                fromDate=start,
                                toDate=end,
                                bar_type=BarType.time_bar,
                                force_download=False,
                                cleanOutliers=False)
                        except Exception as e:
                            logger.error(
                                'Error downloading bundle zipline %s : %s' %
                                (symbol, str(e)))
                            print('Error downloading bundle zipline %s : %s' %
                                  (symbol, str(e)))
                            df = None
                            continue

                        # the start date is the date of the first trade and
                        # the end date is the date of the last trade
                        indexSet = df.index.copy()
                        indexSet = (indexSet + pd.DateOffset(hours=3)
                                    ) - pd.DateOffset(days=1)
                        df.index = indexSet

                        start_date = df.index[0]
                        end_date = df.index[-1]
                        # The auto_close date is the day after the last trade.
                        ac_date = end_date + pd.Timedelta(days=1)
                        metadata.iloc[
                            sid] = start_date, end_date, ac_date, symbol

                        df.rename(
                            columns={
                                Bar.open: 'open',
                                Bar.high: 'high',
                                Bar.low: 'low',
                                Bar.close: 'close',
                                Bar.volume: 'volume',
                            },
                            inplace=True,
                        )
                        yield sid, df
                        sid += 1
class InteractiveBrokersHistoricalDataTestCase(unittest.TestCase):
    symbol = 'EUR'
    broker = Broker.manual_email
    currency = Currency.usd
    asset_type = AssetType.forex
    instrument = Instrument(symbol, asset_type=asset_type, broker=broker, currency=currency)

    fromDate = datetime.datetime.today() - datetime.timedelta(days=5)
    user_settings = user_settings_tests
    market_data_object = InteractiveBrokersHistoricalMarketData(user_settings)

    @unittest.skip  # no reason needed
    def test_getPeriodsRequests(self):
        fromDate = datetime.datetime.today() - datetime.timedelta(days=40)
        toDate = datetime.datetime.today()
        periodSplit = Period.hour
        durationStr_list, toDateString_list = self.market_data_object.getPeriodsRequests(periodSplit, fromDate, toDate)
        self.assertGreater(len(durationStr_list), 1)
        self.assertGreater(len(toDateString_list), 1)
        pass

    @unittest.skip  # no reason needed
    def test_download_fx(self):
        symbol = 'EUR'
        broker = Broker.manual_email
        currency = Currency.usd
        asset_type = AssetType.forex
        instrument = Instrument(symbol, asset_type=asset_type, broker=broker, currency=currency)

        fromDate = datetime.datetime.today() - datetime.timedelta(days=40)
        toDate = datetime.datetime.today()
        periodSplit = Period.hour

        dataframe = self.market_data_object.download(instrument, periodSplit, 1, fromDate, toDate)
        self.assertIsNotNone(dataframe)
        self.assertGreater(len(dataframe), 1)

        pass

    @unittest.skip  # no reason needed
    def test_download_equity(self):
        symbol = 'IBM'
        broker = Broker.manual_email
        currency = Currency.usd
        asset_type = AssetType.equity
        instrument = Instrument(symbol, asset_type=asset_type, broker=broker, currency=currency)

        fromDate = datetime.datetime.today() - datetime.timedelta(days=40)
        toDate = datetime.datetime.today()
        periodSplit = Period.hour

        dataframe = self.market_data_object.download(instrument, periodSplit, 1, fromDate, toDate)
        self.assertIsNotNone(dataframe)
        self.assertGreater(len(dataframe), 1)

        pass
Esempio n. 12
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    def test_download_wrong(self):
        instrument = Instrument('AAPqwL',
                                asset_type=AssetType.us_equity,
                                currency=Currency.usd)

        downloadTest = self.fundamental_data_object.download(
            instrument,
            fundamental_ratio=Ratio.fundamental_ebitda_Y,
            fromDate=self.fromDate,
            toDate=self.toDate)
        self.assertIsNone(downloadTest)
class BarDaoTestCase(unittest.TestCase):
    symbol = 'aapl_test'
    instrument = Instrument(symbol, 'quandl')
    period = Period.hour
    barDataframe = None

    dao_test = None
    collection = None

    def setUp(self):
        self.dao_test = BarDao(user_settings_tests)
        self.barDataframe = self.generateRandomData()

    def tearDown(self):
        self.dao_test.delete(instrument=self.instrument,
                             period=self.period,
                             number_of_periods=1)

    def generateRandomData(self):
        import numpy as np
        import pandas as pd
        import datetime

        columns = Bar.columns
        output = pd.DataFrame(np.random.rand(20, len(columns)),
                              columns=columns)

        base = datetime.datetime.today()
        date_list = [base - datetime.timedelta(days=x) for x in range(0, 20)]
        output[Bar.index] = date_list

        output.set_index(Bar.index, inplace=True)
        return output

    def test_save_load(self):
        initial_size = self.dao_test.load(instrument=self.instrument,
                                          period=self.period,
                                          number_of_periods=1)
        if initial_size is None:
            initial_size = 0

        self.dao_test.save(self.barDataframe,
                           instrument=self.instrument,
                           period=self.period,
                           number_of_periods=1)
        dataframeLoaded = self.dao_test.load(instrument=self.instrument,
                                             period=self.period,
                                             number_of_periods=1)
        self.assertIsNotNone(dataframeLoaded)

        final_size = len(dataframeLoaded)
        self.assertEqual(initial_size + len(self.barDataframe), final_size,
                         'incorrect size after save')
Esempio n. 14
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    def test___getInputKeys__(self):
        import time
        pk = self.vectorized_data_service.__getInputKeys__(instrumentList=self.instrumentList, fromDate=self.fromDate,
                                                           toDate=self.toDate)
        time.sleep(1)
        pk1 = self.vectorized_data_service.__getInputKeys__(instrumentList=self.instrumentList, fromDate=self.fromDate,
                                                            toDate=self.toDate)

        time.sleep(1)
        instrumentList2 = [
            Instrument(symbol='ABC', asset_type=AssetType.us_equity, currency=Currency.usd),
            Instrument(symbol='ACN', asset_type=AssetType.us_equity, currency=Currency.usd),
            Instrument(symbol='AAPL', asset_type=AssetType.us_equity, currency=Currency.usd),
            Instrument(symbol='GOOGL', asset_type=AssetType.us_equity, currency=Currency.usd),
            Instrument(symbol='MSFT', asset_type=AssetType.us_equity, currency=Currency.usd),

        ]

        pk2 = self.vectorized_data_service.__getInputKeys__(instrumentList=instrumentList2, fromDate=self.fromDate,
                                                            toDate=self.toDate)

        self.assertEqual(pk, pk2)
Esempio n. 15
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class RatioDataServiceTestCase(unittest.TestCase):
    user_settings = user_settings_tests
    ratio_fundamental_service = RatioDataService(user_settings)
    instrument = Instrument(symbol='AAPL',
                            asset_type=AssetType.us_equity,
                            currency=Currency.usd)
    ratio_fundamental = Ratio.fundamental_ebitda_Y
    ratio_quant = Ratio.quant_returnsDiff_120
    fromDate = datetime.datetime(year=2017, day=1, month=1)
    toDate = datetime.datetime(year=2018, day=26, month=6)

    def test_getRatio_fund(self):
        # clean first

        data = self.ratio_fundamental_service.getRatioData(
            self.instrument,
            ratio=self.ratio_fundamental,
            fromDate=self.fromDate,
            toDate=self.toDate,
            force_download=True)

        self.assertIsNotNone(data)

    def test_getRatio_quant(self):
        # clean first

        data = self.ratio_fundamental_service.getRatioData(
            self.instrument,
            ratio=self.ratio_quant,
            fromDate=self.fromDate,
            toDate=self.toDate,
            force_download=True)

        self.assertIsNotNone(data)

    def test_getRatioList_fund(self):
        # clean first

        data = self.ratio_fundamental_service.getRatioDataBatch(
            self.instrument,
            ratio_list=[
                Ratio.fundamental_ebit_Y, Ratio.fundamental_net_income_Y
            ],
            fromDate=self.fromDate,
            toDate=self.toDate,
            force_download=True)

        self.assertIsNotNone(data)

        self.assertEqual(len(data.columns), 2)
Esempio n. 16
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 def getInstrument(self, filename):
     import os
     filenameArray = filename.split(os.sep)
     lastPart = filenameArray[-1]
     nameFile = os.path.splitext(lastPart)[0]
     nameFileList = nameFile.split('_')
     symbol = nameFileList[0]
     currency = nameFileList[1]
     if currency == Currency.eur:
         assetType = AssetType.es_equity
     elif currency == Currency.usd:
         assetType = AssetType.us_equity
     instrument = Instrument(symbol=symbol,
                             asset_type=assetType,
                             currency=currency)
     return instrument
    def test_download_equity(self):
        symbol = 'IBM'
        broker = Broker.manual_email
        currency = Currency.usd
        asset_type = AssetType.equity
        instrument = Instrument(symbol, asset_type=asset_type, broker=broker, currency=currency)

        fromDate = datetime.datetime.today() - datetime.timedelta(days=40)
        toDate = datetime.datetime.today()
        periodSplit = Period.hour

        dataframe = self.market_data_object.download(instrument, periodSplit, 1, fromDate, toDate)
        self.assertIsNotNone(dataframe)
        self.assertGreater(len(dataframe), 1)

        pass
Esempio n. 18
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    def __getInstrumentData__(self, instrument_symbol, instrument_currency,
                              instrument_assetType, columnList, fromDate,
                              toDate, outputDict, wrongInstrumentsSymbolLists):
        instrument = Instrument(symbol=instrument_symbol,
                                currency=instrument_currency,
                                asset_type=instrument_assetType)

        if self.useFunctionTemp:
            functionTemp = self.cacher.cache(
                self.___getInstrumentData___,
                ignore=['self', 'outputDict', 'wrongInstrumentsSymbolLists'])

            columnList.sort()
            functionTemp(instrument, columnList, fromDate, toDate, outputDict,
                         wrongInstrumentsSymbolLists)
        else:
            # logger.debug('Not using functionTemp cache in __getInstrumentData__ in vector_service for %s' % instrument)
            self.___getInstrumentData___(instrument, columnList, fromDate,
                                         toDate, outputDict,
                                         wrongInstrumentsSymbolLists)
Esempio n. 19
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class DukasCopyHistoricalDataTestCase(unittest.TestCase):
    symbol = 'EUR'
    broker = Broker.manual_email
    currency = Currency.usd
    instrument = Instrument(symbol=symbol, asset_type=AssetType.forex, broker=broker, currency=currency)

    fromDate = datetime.datetime(year=2018, day=1, month=6)
    fromDate_tick = datetime.datetime(year=2018, day=26, month=6)
    toDate = datetime.datetime(year=2018, day=26, month=6)
    user_settings = user_settings_tests
    market_data_object = DukasCopyFileHistoricalMarketData(user_settings)

    def setUp(self):
        import os
        os.environ[
            "TRADEA_DUKASCOPY_INPUT_PATH"] = "D:\javif\Coding\Python\AInvesting\tradeasystems_connector\tests\historical_market_data\dukascopy_test"
        pass

    def tearDown(self):
        import os
        filesInDirectory = glob.glob(
            self.user_settings.dukascopy_source_folder + os.sep + "*" + self.market_data_object.processedFilesPattern)
        for processedFiles in filesInDirectory:
            os.rename(processedFiles, processedFiles[:-len(self.market_data_object.processedFilesPattern)])
        pass

    @unittest.skip  # no reason needed
    def test_download_data_tick(self):
        dataframe = self.market_data_object.download(self.instrument, period=Period.tick,
                                                     number_of_periods=1, fromDate=self.fromDate_tick,
                                                     toDate=self.toDate)

        self.assertIsNotNone(dataframe)

    @unittest.skip  # no reason needed
    def test_download_data_day(self):
        dataframe = self.market_data_object.download(self.instrument, period=Period.day,
                                                     number_of_periods=1, fromDate=self.fromDate, toDate=self.toDate)

        self.assertIsNotNone(dataframe)
Esempio n. 20
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    def test_getHistorical__dailyClean(self):
        # clean first
        # self.historicalMarketService.deleteBar(instrument=self.instrument, period=self.period,
        #                                        number_of_periods=self.number_of_periods)

        import datetime
        instrument = Instrument(symbol='AAPL',
                                broker=Broker.manual_email,
                                asset_type=AssetType.us_equity,
                                currency=Currency.usd)

        from_date = datetime.datetime(year=2010, month=1, day=1)
        to_date = datetime.datetime(year=2012, month=1, day=1)
        period = Period.day
        number_of_periods = 1
        data = self.historicalMarketService.getHistoricalData(
            instrument,
            period=period,
            number_of_periods=number_of_periods,
            fromDate=from_date,
            toDate=to_date,
            force_download=True,
            endOfDayData=True)
        self.assertIsNotNone(data)
class EmailConnectorTestCase(unittest.TestCase):
    symbol = 'MSFT'
    broker = Broker.manual_email
    currency = Currency.usd
    asset_type = AssetType.equity
    instrument = Instrument(symbol,
                            asset_type=asset_type,
                            broker=broker,
                            currency=currency)

    order = Order(instrument,
                  666,
                  Side.buy,
                  10.66,
                  order_type=OrderType.fill_or_kill)
    email_connector = EmailConnector(user_settings_tests)

    @unittest.skip  # no reason needed
    def test_send_buy_cancel(self):
        self.email_connector.sendOrder(self.order)
        # self.email_connector.cancelOrder(self.order)

    @unittest.skip  # no reason needed
    def test_send_html(self):
        text = ""
        html = """\
        <html>
          <head></head>
          <body>
            <p>Hi!<br>
               How are you?<br>
               Here is the <a href="http://www.python.org">link</a> you wanted.
            </p>
          </body>
        </html>
        """
        self.email_connector.__sendEmail__(
            recipient=user_settings_tests.email_notify,
            subject='test',
            body=text,
            html=html)

    @unittest.skip  # no reason needed
    def test_ipython_to_html(self):
        ipythonFile = 'test'
        htmlPythonFile = getNotebookHTML(ipythonFile)
        self.assertIsNotNone(htmlPythonFile)

    @unittest.skip  # no reason needed
    def test_ipython_exec(self):
        ipythonFile = 'test'
        result = updateNotebook(ipythonFile)
        self.assertIsNotNone(result)
        self.assertTrue(result)

    @unittest.skip  # no reason needed
    def test_sendNoteBook(self):
        ipythonFile = 'test'
        self.email_connector.sendNotebook(
            recipient=user_settings_tests.email_notify,
            notebookName=ipythonFile)
class VectorDaoTestCase(unittest.TestCase):
    symbol = 'aapl_test'
    instrument = Instrument(symbol, 'quandl')
    period = Period.hour
    vectorDataframe = None

    dao_test = None
    collection = None

    columnList = None

    def setUp(self):
        self.dao_test = VectorDao(user_settings_tests)
        self.vectorDataframe = self.generateRandomData()

    def tearDown(self):
        self.dao_test.delete(instrument=self.instrument)

    def generateRandomData(self):
        import numpy as np
        import pandas as pd
        import datetime

        columns = DataDictKeys.keys.copy()
        columns += ([Ratio.fundamental_ebit_Y, Ratio.quant_std1Y])
        self.columnList = columns
        output = pd.DataFrame(np.random.rand(20, len(columns)),
                              columns=columns)

        base = datetime.datetime.today().replace(hour=0,
                                                 minute=0,
                                                 second=0,
                                                 microsecond=0)
        date_list = [base - datetime.timedelta(days=x) for x in range(0, 20)]
        output[DataDictKeys.index] = date_list

        output.set_index(DataDictKeys.index, inplace=True)
        return output

    def generateRandomData2(self):
        import numpy as np
        import pandas as pd
        import datetime

        columns = DataDictKeys.keys.copy()
        columns += ([
            Ratio.fundamental_ebit_Y, Ratio.quant_std1Y,
            Ratio.fundamental_shares_Y
        ])

        output = pd.DataFrame(np.random.rand(30, len(columns)),
                              columns=columns)

        base = datetime.datetime.today().replace(hour=0,
                                                 minute=0,
                                                 second=0,
                                                 microsecond=0)
        date_list = [base - datetime.timedelta(days=x) for x in range(0, 30)]
        output[DataDictKeys.index] = date_list

        output.set_index(DataDictKeys.index, inplace=True)
        return output

    def test_save_load(self):
        initial_size = self.dao_test.load(instrument=self.instrument,
                                          columnList=self.columnList)
        if initial_size is None:
            initial_size = 0

        isSave = self.dao_test.save(self.vectorDataframe,
                                    instrument=self.instrument)
        self.assertTrue(isSave)
        dataframeLoaded = self.dao_test.load(instrument=self.instrument,
                                             columnList=self.columnList)
        self.assertIsNotNone(dataframeLoaded)

        final_size = len(dataframeLoaded)
        self.assertEqual(initial_size + len(self.vectorDataframe), final_size,
                         'incorrect size after save')

    def test_save_append(self):

        initial_size = self.dao_test.load(instrument=self.instrument,
                                          columnList=self.columnList)
        if initial_size is None:
            initial_size = 0
        else:
            initial_size = len(initial_size)

        isSave = self.dao_test.save(self.vectorDataframe,
                                    instrument=self.instrument)
        self.assertTrue(isSave)

        dataframeLoaded = self.dao_test.load(instrument=self.instrument,
                                             columnList=self.columnList)
        self.assertIsNotNone(dataframeLoaded)

        middle_size = len(dataframeLoaded)
        self.assertEqual(initial_size + len(self.vectorDataframe), middle_size,
                         'incorrect size after save')

        newVector = self.generateRandomData2()
        isSave = self.dao_test.save(newVector, instrument=self.instrument)
        self.assertTrue(isSave)

        dataframeLoaded = self.dao_test.load(instrument=self.instrument,
                                             columnList=self.columnList)
        self.assertIsNotNone(dataframeLoaded)

        end_size = len(dataframeLoaded)
        self.assertEqual(initial_size + len(newVector), end_size,
                         'incorrect size after save')
class QuandlFundamentalCalculatorTestCase(unittest.TestCase):
    instrument = Instrument('AAPL', asset_type=AssetType.us_equity, currency=Currency.usd)
    user_settings = user_settings_tests
    fundamental_data_object = QuandlFundamentalData(user_settings)

    fromDate = datetime.datetime(year=2017, day=1, month=1)
    toDate = datetime.datetime(year=2018, day=26, month=6)
    fundamental_period = FundamentalPeriod.yearly

    def test_getAllBatch(self):
        import time
        start = time.time()
        fromDate = datetime.datetime(year=2010, day=1, month=1)

        df_batch = self.fundamental_data_object.downloadBatch(instrument=self.instrument,
                                                              fundamental_ratio_list=Ratio.fundamental_list_Y,
                                                              fromDate=fromDate, toDate=self.toDate)
        end = time.time()
        secondsElapsed = end - start
        print('Get all fundamentals of %s took %d seconds' % (self.instrument, secondsElapsed))
        self.assertIsNotNone(df_batch)
        for ratio in Ratio.fundamental_list_Y:
            if ratio not in list(df_batch.columns):
                print('Ratio %s is not in output!' % ratio)
            self.assertTrue(ratio in list(df_batch.columns))

        self.assertEqual(len(Ratio.fundamental_list_Y) + 1, len(df_batch.columns))  # +1 because of close_temp
        self.assertLess(secondsElapsed, 30)  # less 30 seconds per instrument

    def test_getROABatch(self):
        import time
        start = time.time()
        fromDate = datetime.datetime(year=2010, day=1, month=1)

        df_batch = self.fundamental_data_object.downloadBatch(instrument=self.instrument, fundamental_ratio_list=[
            Ratio.fundamental_return_over_assets_Y], fromDate=fromDate, toDate=self.toDate)
        end = time.time()
        secondsElapsed = end - start
        print('test_getROABatch of %s took %d seconds' % (self.instrument, secondsElapsed))
        self.assertIsNotNone(df_batch)
        self.assertEqual(1, len(df_batch.columns))

    def test_getBVBatch(self):
        import time
        start = time.time()
        fromDate = datetime.datetime(year=2010, day=1, month=1)

        df_batch = self.fundamental_data_object.downloadBatch(instrument=self.instrument, fundamental_ratio_list=[
            Ratio.fundamental_book_value_per_share_Y], fromDate=fromDate, toDate=self.toDate)
        end = time.time()
        secondsElapsed = end - start
        print('test_getBVBatch of %s took %d seconds' % (self.instrument, secondsElapsed))
        self.assertIsNotNone(df_batch)
        self.assertEqual(1, len(df_batch.columns))

    def test_getBV_BVLiabBatch(self):
        import time
        start = time.time()
        fromDate = datetime.datetime(year=2010, day=1, month=1)

        df_batch = self.fundamental_data_object.downloadBatch(instrument=self.instrument, fundamental_ratio_list=[
            Ratio.fundamental_book_value_liabilities_Y, Ratio.fundamental_book_value_per_share_Y], fromDate=fromDate,
                                                              toDate=self.toDate)
        end = time.time()
        secondsElapsed = end - start
        print('test_getBV_BVLiabBatch of  %s took %d seconds' % (self.instrument, secondsElapsed))
        self.assertIsNotNone(df_batch)
        self.assertEqual(3, len(df_batch.columns))

    def test_getAllBatch_wrong(self):
        fromDate = datetime.datetime(year=2010, day=1, month=1)
        instrument = Instrument('A123APL', asset_type=AssetType.us_equity, currency=Currency.usd)
        df_batch = self.fundamental_data_object.downloadBatch(instrument=instrument,
                                                              fundamental_ratio_list=Ratio.fundamental_list_Y,
                                                              fromDate=fromDate, toDate=self.toDate)
        self.assertIsNone(df_batch)

    def test_getCapitalization(self):
        capitalization = getCapitalization(self.fundamental_data_object, instrument=self.instrument,
                                           fundamental_period=self.fundamental_period, fromDate=self.fromDate,
                                           toDate=self.toDate)

        self.assertIsNotNone(capitalization)

    def test_getNetAssetValue(self):
        nav = getNetAssetValue(self.fundamental_data_object, instrument=self.instrument,
                               fundamental_period=self.fundamental_period)

        self.assertIsNotNone(nav)

    def test_getAdjustedBookValue(self):
        adj_book_value = getAdjustedBookValue(self.fundamental_data_object, instrument=self.instrument,
                                              fundamental_period=self.fundamental_period)

        self.assertIsNotNone(adj_book_value)

    def test_getDaySalesReceivables(self):
        day_sales_receivables = getDaySalesReceivables(self.fundamental_data_object, instrument=self.instrument,
                                                       fundamental_period=self.fundamental_period)

        self.assertIsNotNone(day_sales_receivables)

    def test_getEnterpriseValue(self):
        ev = getEnterpriseValue(self.fundamental_data_object, instrument=self.instrument,
                                fundamental_period=self.fundamental_period)

        self.assertIsNotNone(ev)

    def test_getReturnOverAssets(self):
        roa = getReturnOverAssets(self.fundamental_data_object, instrument=self.instrument,
                                  fundamental_period=self.fundamental_period, fromDate=self.fromDate,
                                  toDate=self.toDate)

        self.assertIsNotNone(roa)

    def test_getOperatingAssets(self):
        op_assets = getOperatingAssets(self.fundamental_data_object, instrument=self.instrument,
                                       fundamental_period=self.fundamental_period)

        self.assertIsNotNone(op_assets)

    def test_getReturnOverCapital(self):
        roc = getReturnOverCapital(self.fundamental_data_object, instrument=self.instrument,
                                   fundamental_period=self.fundamental_period, fromDate=self.fromDate,
                                   toDate=self.toDate)

        self.assertIsNotNone(roc)

    def test_getSalesGrowth(self):
        sales_growth = getSalesGrowth(self.fundamental_data_object, instrument=self.instrument,
                                      fundamental_period=self.fundamental_period)

        self.assertIsNotNone(sales_growth)

    def test_getBookValueLiabilities(self):
        bv_liabilities = getBookValueLiabilities(self.fundamental_data_object, instrument=self.instrument,
                                                 fundamental_period=self.fundamental_period)

        self.assertIsNotNone(bv_liabilities)

    def test_getLongTermDebt(self):
        lt_debt = getLongTermDebt(self.fundamental_data_object, instrument=self.instrument,
                                  fundamental_period=self.fundamental_period)

        self.assertIsNotNone(lt_debt)

    def test_getShortTermDebt(self):
        st_debt = getShortTermDebt(self.fundamental_data_object, instrument=self.instrument,
                                   fundamental_period=self.fundamental_period)

        self.assertIsNotNone(st_debt)

    def test_getWrongInstrument(self):
        instrument_wrong = Instrument('A123APL', asset_type=AssetType.us_equity, currency=Currency.usd)
        st_debt = getShortTermDebt(self.fundamental_data_object, instrument=instrument_wrong,
                                   fundamental_period=self.fundamental_period)

        self.assertIsNone(st_debt)

    def test_getAccrual(self):
        data = getAccrual(self.fundamental_data_object, instrument=self.instrument,
                          fundamental_period=self.fundamental_period, fromDate=self.fromDate, toDate=self.toDate)

        self.assertIsNotNone(data)

    def test_getDaySalesReceivablesIndex(self):
        data = getDaySalesReceivablesIndex(self.fundamental_data_object, instrument=self.instrument,
                                           fundamental_period=self.fundamental_period, fromDate=self.fromDate,
                                           toDate=self.toDate)

        self.assertIsNotNone(data)
Esempio n. 24
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    def test_get4InstrumentCompleteDeleting(self):
        import time
        instrumentList = [
            Instrument(symbol='A', asset_type=AssetType.us_equity, currency=Currency.usd),
            Instrument(symbol='AAAL', asset_type=AssetType.us_equity, currency=Currency.usd),
            Instrument(symbol='AAPL', asset_type=AssetType.us_equity, currency=Currency.usd),
            Instrument(symbol='ABT', asset_type=AssetType.us_equity, currency=Currency.usd),

        ]
        for instrument in instrumentList:
            self.vector_service.vectorDao.delete(instrument)

        start = time.time()
        dictPricing = {}
        for instrument in instrumentList:
            self.vector_service.vectorizedDataService.historicalMarketDataService.deleteBar(instrument=instrument,
                                                                                            period=Period.day,
                                                                                            number_of_periods=1)

            self.vector_service.vectorizedDataService.__downloadHistoricalPrices__(wrongInstrumentsSymbolLists=[],
                                                                                   outputDict=dictPricing,
                                                                                   fromDate=datetime.datetime(year=2010,
                                                                                                              day=1,
                                                                                                              month=1),
                                                                                   toDate=self.toDate,
                                                                                   instrument=instrument
                                                                                   )

        dict_of_matrix = self.vector_service.getDataDictOfMatrix(instrumentList=instrumentList,
                                                                 ratioList=Ratio.allRatios,
                                                                 fromDate=datetime.datetime(year=2010, day=1, month=1),
                                                                 toDate=self.toDate,
                                                                 )
        end = time.time()
        elapsed = end - start
        print('1-Took %d seconds to complete 4 instrument downloading' % (elapsed))
        self.assertIsNotNone(dict_of_matrix)
        self.assertEqual(len(Ratio.allRatios) + 5, len(dict_of_matrix))
        keysOutput = dict_of_matrix.keys()
        for key in DataDictKeys.keys:
            self.assertEqual(key in keysOutput, True)
        for key in self.ratio_list:
            self.assertEqual(key in keysOutput, True)

        # %% from DDBB
        start2 = time.time()
        self.vector_service.force_download = False
        dict_of_matrix_2 = self.vector_service.getDataDictOfMatrix(instrumentList=instrumentList,
                                                                   ratioList=Ratio.allRatios,
                                                                   fromDate=datetime.datetime(year=2010, day=1,
                                                                                              month=1),
                                                                   toDate=self.toDate,
                                                                   )

        end2 = time.time()
        elapsed2 = end2 - start2
        self.vector_service.force_download = True
        print('2-Took %d seconds to complete an instrument from DDBB' % (elapsed2))
        self.assertIsNotNone(dict_of_matrix_2)
        self.assertEqual(len(Ratio.allRatios) + 5, len(dict_of_matrix_2))
        keysOutput = dict_of_matrix_2.keys()
        for key in DataDictKeys.keys:
            self.assertEqual(key in keysOutput, True)
        for key in self.ratio_list:
            self.assertEqual(key in keysOutput, True)

        # %%
        for key in dict_of_matrix.keys():
            print('testing equality in %s' % key)
            df = dict_of_matrix[key]
            df2 = dict_of_matrix_2[key]
            self.assertEqual(len(df), len(df2))
            sum1 = df.sum().sum()
            sum2 = df2.sum().sum()
            self.assertEqual(sum1, sum2)

            df_dropna = df.dropna()
            self.assertFalse(df_dropna.empty)
        # %%
        for key in dictPricing.keys():
            if key == 'wrong':
                continue
            for symbol in dict_of_matrix[key].columns:
                print('testing pricing equality in %s:%s' % (key, symbol))
                isBusinessDay = BDay().onOffset
                match_series = pd.to_datetime(dictPricing[key].index).map(isBusinessDay)
                dictPricing[key] = dictPricing[key][match_series]
                dictPricing[key].fillna(method='ffill', inplace=True)

                df = dict_of_matrix[key][symbol]
                df_pricing = dictPricing[key][symbol]
                # self.assertEqual(len(df), len(df_pricing.dropna()))
                sum1 = df.sum()
                sum2 = df_pricing.sum()
                self.assertEqual(sum1, sum2)
        lastSum = None
        for fundamental_key in Ratio.allRatios:
            sum = dict_of_matrix[fundamental_key].sum().sum()
            if lastSum is not None:
                self.assertNotEquals(sum, lastSum)
            lastSum = sum
    def test_getWrongInstrument(self):
        instrument_wrong = Instrument('A123APL', asset_type=AssetType.us_equity, currency=Currency.usd)
        st_debt = getShortTermDebt(self.fundamental_data_object, instrument=instrument_wrong,
                                   fundamental_period=self.fundamental_period)

        self.assertIsNone(st_debt)
Esempio n. 26
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class VectorServiceTestCase(unittest.TestCase):
    user_settings = user_settings_tests

    vector_service = VectorService(user_settings)

    instrumentList = [
        Instrument(symbol='ABC', asset_type=AssetType.us_equity, currency=Currency.usd),
        Instrument(symbol='ACN', asset_type=AssetType.us_equity, currency=Currency.usd),
        Instrument(symbol='AAPL', asset_type=AssetType.us_equity, currency=Currency.usd),
        Instrument(symbol='GOOGL', asset_type=AssetType.us_equity, currency=Currency.usd),
        Instrument(symbol='MSFT', asset_type=AssetType.us_equity, currency=Currency.usd),

    ]

    ratio_list = [Ratio.fundamental_ebitda_Y, Ratio.fundamental_enterprise_value_Y, Ratio.fundamental_ms_Y]
    fromDate = datetime.datetime(year=2017, day=1, month=1)
    toDate = datetime.datetime(year=2018, day=26, month=6)

    def test_getOneInstrumentCompleteDeleting(self):
        import time
        instrument = self.instrumentList[2]
        self.vector_service.vectorDao.delete(instrument)
        self.vector_service.useFunctionTemp = False
        start = time.time()
        dict_of_matrix = self.vector_service.getDataDictOfMatrix(instrumentList=[instrument],
                                                                 ratioList=Ratio.allRatios,
                                                                 fromDate=datetime.datetime(year=2010, day=1, month=1),
                                                                 toDate=self.toDate,
                                                                 )
        end = time.time()
        elapsed = end - start
        print('1-Took %d seconds to complete an instrument downloading' % (elapsed))
        self.assertIsNotNone(dict_of_matrix)
        self.assertEqual(len(Ratio.allRatios) + 5, len(dict_of_matrix))
        keysOutput = dict_of_matrix.keys()
        for key in DataDictKeys.keys:
            self.assertEqual(key in keysOutput, True)
        for key in self.ratio_list:
            self.assertEqual(key in keysOutput, True)
        self.assertLess(elapsed, 40)

        # %% from DDBB
        start2 = time.time()
        self.vector_service.force_download = False
        dict_of_matrix_2 = self.vector_service.getDataDictOfMatrix(instrumentList=[instrument],
                                                                   ratioList=Ratio.allRatios,
                                                                   fromDate=datetime.datetime(year=2010, day=1,
                                                                                              month=1),
                                                                   toDate=self.toDate,
                                                                   )

        end2 = time.time()
        elapsed2 = end2 - start2
        self.vector_service.force_download = True
        print('2-Took %d seconds to complete an instrument from DDBB' % (elapsed2))
        self.assertIsNotNone(dict_of_matrix_2)
        self.assertEqual(len(Ratio.allRatios) + 5, len(dict_of_matrix_2))
        keysOutput = dict_of_matrix_2.keys()
        for key in DataDictKeys.keys:
            self.assertEqual(key in keysOutput, True)
        for key in self.ratio_list:
            self.assertEqual(key in keysOutput, True)
        self.assertLess(elapsed2, 10)
        # %%
        for key in dict_of_matrix.keys():
            df = dict_of_matrix[key]
            df2 = dict_of_matrix_2[key]
            self.assertEqual(len(df), len(df2))
            sum1 = df.sum().sum()
            sum2 = df2.sum().sum()
            self.assertEqual(sum1, sum2)

            df_dropna = df.dropna()
            self.assertFalse(df_dropna.empty)

    def test_get4InstrumentCompleteDeleting(self):
        import time
        instrumentList = [
            Instrument(symbol='A', asset_type=AssetType.us_equity, currency=Currency.usd),
            Instrument(symbol='AAAL', asset_type=AssetType.us_equity, currency=Currency.usd),
            Instrument(symbol='AAPL', asset_type=AssetType.us_equity, currency=Currency.usd),
            Instrument(symbol='ABT', asset_type=AssetType.us_equity, currency=Currency.usd),

        ]
        for instrument in instrumentList:
            self.vector_service.vectorDao.delete(instrument)

        start = time.time()
        dictPricing = {}
        for instrument in instrumentList:
            self.vector_service.vectorizedDataService.historicalMarketDataService.deleteBar(instrument=instrument,
                                                                                            period=Period.day,
                                                                                            number_of_periods=1)

            self.vector_service.vectorizedDataService.__downloadHistoricalPrices__(wrongInstrumentsSymbolLists=[],
                                                                                   outputDict=dictPricing,
                                                                                   fromDate=datetime.datetime(year=2010,
                                                                                                              day=1,
                                                                                                              month=1),
                                                                                   toDate=self.toDate,
                                                                                   instrument=instrument
                                                                                   )

        dict_of_matrix = self.vector_service.getDataDictOfMatrix(instrumentList=instrumentList,
                                                                 ratioList=Ratio.allRatios,
                                                                 fromDate=datetime.datetime(year=2010, day=1, month=1),
                                                                 toDate=self.toDate,
                                                                 )
        end = time.time()
        elapsed = end - start
        print('1-Took %d seconds to complete 4 instrument downloading' % (elapsed))
        self.assertIsNotNone(dict_of_matrix)
        self.assertEqual(len(Ratio.allRatios) + 5, len(dict_of_matrix))
        keysOutput = dict_of_matrix.keys()
        for key in DataDictKeys.keys:
            self.assertEqual(key in keysOutput, True)
        for key in self.ratio_list:
            self.assertEqual(key in keysOutput, True)

        # %% from DDBB
        start2 = time.time()
        self.vector_service.force_download = False
        dict_of_matrix_2 = self.vector_service.getDataDictOfMatrix(instrumentList=instrumentList,
                                                                   ratioList=Ratio.allRatios,
                                                                   fromDate=datetime.datetime(year=2010, day=1,
                                                                                              month=1),
                                                                   toDate=self.toDate,
                                                                   )

        end2 = time.time()
        elapsed2 = end2 - start2
        self.vector_service.force_download = True
        print('2-Took %d seconds to complete an instrument from DDBB' % (elapsed2))
        self.assertIsNotNone(dict_of_matrix_2)
        self.assertEqual(len(Ratio.allRatios) + 5, len(dict_of_matrix_2))
        keysOutput = dict_of_matrix_2.keys()
        for key in DataDictKeys.keys:
            self.assertEqual(key in keysOutput, True)
        for key in self.ratio_list:
            self.assertEqual(key in keysOutput, True)

        # %%
        for key in dict_of_matrix.keys():
            print('testing equality in %s' % key)
            df = dict_of_matrix[key]
            df2 = dict_of_matrix_2[key]
            self.assertEqual(len(df), len(df2))
            sum1 = df.sum().sum()
            sum2 = df2.sum().sum()
            self.assertEqual(sum1, sum2)

            df_dropna = df.dropna()
            self.assertFalse(df_dropna.empty)
        # %%
        for key in dictPricing.keys():
            if key == 'wrong':
                continue
            for symbol in dict_of_matrix[key].columns:
                print('testing pricing equality in %s:%s' % (key, symbol))
                isBusinessDay = BDay().onOffset
                match_series = pd.to_datetime(dictPricing[key].index).map(isBusinessDay)
                dictPricing[key] = dictPricing[key][match_series]
                dictPricing[key].fillna(method='ffill', inplace=True)

                df = dict_of_matrix[key][symbol]
                df_pricing = dictPricing[key][symbol]
                # self.assertEqual(len(df), len(df_pricing.dropna()))
                sum1 = df.sum()
                sum2 = df_pricing.sum()
                self.assertEqual(sum1, sum2)
        lastSum = None
        for fundamental_key in Ratio.allRatios:
            sum = dict_of_matrix[fundamental_key].sum().sum()
            if lastSum is not None:
                self.assertNotEquals(sum, lastSum)
            lastSum = sum

    def test_checkPricing(self):
        import time
        instrumentList = [
            Instrument(symbol='A', asset_type=AssetType.us_equity, currency=Currency.usd),
            Instrument(symbol='AAAL', asset_type=AssetType.us_equity, currency=Currency.usd),
            Instrument(symbol='AAPL', asset_type=AssetType.us_equity, currency=Currency.usd),
            Instrument(symbol='ABT', asset_type=AssetType.us_equity, currency=Currency.usd),

        ]
        for instrument in instrumentList:
            self.vector_service.vectorDao.delete(instrument)

            self.vector_service.vectorizedDataService.historicalMarketDataService.deleteBar(instrument=instrument,
                                                                                            period=Period.day,
                                                                                            number_of_periods=1)

        start = time.time()
        dictPricing = {}
        wrongInstrumentsSymbolLists = []
        for instrument in instrumentList:
            self.vector_service.vectorizedDataService.__downloadHistoricalPrices__(
                wrongInstrumentsSymbolLists=wrongInstrumentsSymbolLists,
                outputDict=dictPricing,
                fromDate=datetime.datetime(year=2010,
                                           day=1,
                                           month=1),
                toDate=self.toDate,
                instrument=instrument
            )

        dict_of_matrix = self.vector_service.getDataDictOfMatrix(instrumentList=instrumentList,
                                                                 ratioList=[],
                                                                 fromDate=datetime.datetime(year=2010, day=1, month=1),
                                                                 toDate=self.toDate,
                                                                 )
        end = time.time()
        elapsed = end - start
        print('1-Took %d seconds to complete 4 instrument downloading' % (elapsed))
        self.assertIsNotNone(dict_of_matrix)
        self.assertEqual(5, len(dict_of_matrix))
        keysOutput = dict_of_matrix.keys()
        for key in DataDictKeys.keys:
            self.assertEqual(key in keysOutput, True)

        # %%
        for key in dictPricing.keys():
            if key == 'wrong':
                continue
            for symbol in dict_of_matrix[key].columns:
                print('testing pricing equality in %s:%s' % (key, symbol))
                isBusinessDay = BDay().onOffset
                match_series = pd.to_datetime(dictPricing[key].index).map(isBusinessDay)
                dictPricing_df = dictPricing[key][match_series].copy()
                dictPricing_df.fillna(method='ffill', inplace=True)

                df = dict_of_matrix[key][symbol]
                df_pricing = dictPricing_df[symbol]
                # self.assertEqual(len(df), len(df_pricing.dropna()))
                sum1 = df.sum()
                sum2 = df_pricing.sum()
                # self.assertEqual(sum1, sum2)

    def test_getDict(self):
        dict_of_matrix = self.vector_service.getDataDictOfMatrix(instrumentList=self.instrumentList,
                                                                 ratioList=self.ratio_list,
                                                                 fromDate=self.fromDate,
                                                                 toDate=self.toDate,
                                                                 )
        self.assertIsNotNone(dict_of_matrix)
        self.assertEqual(8, len(dict_of_matrix))
        keysOutput = dict_of_matrix.keys()
        for key in DataDictKeys.keys:
            self.assertEqual(key in keysOutput, True)
        for key in self.ratio_list:
            self.assertEqual(key in keysOutput, True)

    @unittest.skip(reason='slow')
    def test_getAllDict(self):
        ratio_list = Ratio.fundamental_list_Y
        ratio_list += (Ratio.quant_list)

        dict_of_matrix = self.vector_service.getDataDictOfMatrix(instrumentList=self.instrumentList,
                                                                 ratioList=ratio_list,
                                                                 fromDate=self.fromDate,
                                                                 toDate=self.toDate
                                                                 )
        self.assertIsNotNone(dict_of_matrix)

        keysOutput = dict_of_matrix.keys()
        for key in DataDictKeys.keys:
            self.assertEqual(key in keysOutput, True)
        for key in ratio_list:
            self.assertEqual(key in keysOutput, True)

    @unittest.skip(reason='slow , and not yet')
    def test_getAllDict_timeIt(self):
        import time
        ratio_list = [Ratio.fundamental_shares_Y, Ratio.fundamental_accrual_Y]

        startTemp = time.time()
        dict_of_matrix_normal = self.vector_service.getDataDictOfMatrix(instrumentList=self.instrumentList,
                                                                        ratioList=ratio_list,
                                                                        fromDate=self.fromDate,
                                                                        toDate=self.toDate
                                                                        )

        endTemp = time.time()
        print('TEMP::: Dict matrix of %d ratios of  %d symbols  took %d seconds ' % (
            len(ratio_list), len(self.instrumentList), endTemp - startTemp))

        self.assertIsNotNone(dict_of_matrix_normal)
        start = time.time()
        dict_of_matrix_notTemp = self.vector_service.getDataDictOfMatrix(instrumentList=self.instrumentList,
                                                                         ratioList=ratio_list,
                                                                         fromDate=self.fromDate,
                                                                         toDate=self.toDate,
                                                                         useFunctionTemp=False
                                                                         )
        end = time.time()
        timeInSeconds = end - start
        print('Dict matrix of %d ratios of  %d symbols  took %d seconds ' % (
            len(ratio_list), len(self.instrumentList), timeInSeconds))

        self.assertIsNotNone(dict_of_matrix_notTemp)

        self.assertEqual(dict_of_matrix_normal.keys(), dict_of_matrix_notTemp.keys())

        self.assertEqual(dict_of_matrix_normal[DataDictKeys.close].shape,
                         dict_of_matrix_notTemp[DataDictKeys.close].shape)

        self.assertEqual(dict_of_matrix_normal[Ratio.fundamental_shares_Y].shape,
                         dict_of_matrix_notTemp[Ratio.fundamental_shares_Y].shape)
class QuandlFundamentalDataTestCase(unittest.TestCase):
    instrument = Instrument('AAPL',
                            asset_type=AssetType.us_equity,
                            currency=Currency.usd)
    user_settings = user_settings_tests
    fundamental_data_object = QuandlFundamentalData(user_settings)

    fromDate = datetime.datetime(year=2017, day=1, month=1)
    toDate = datetime.datetime(year=2018, day=26, month=6)

    @unittest.skip("deprecated class")
    def test_download_data(self):
        downloadTest = self.fundamental_data_object.download(
            self.instrument,
            fundamental_ratio=Ratio.fundamental_ebitda_Y,
            fromDate=self.fromDate,
            toDate=self.toDate)
        self.assertIsNotNone(downloadTest)
        self.assertNotEquals(len(downloadTest), 0)

    def test_download_data_batch(self):
        downloadTest = self.fundamental_data_object.downloadBatch(
            self.instrument,
            fundamental_ratio_list=[
                Ratio.fundamental_ebitda_Y, Ratio.fundamental_assets_Y
            ],
            fromDate=self.fromDate,
            toDate=self.toDate)

        self.assertIsNotNone(downloadTest)
        self.assertNotEquals(len(downloadTest), 0)

        self.assertEquals(len(downloadTest.columns), 2)

    @unittest.skip("deprecated class")
    def test_calculate_download_data(self):
        downloadTest = self.fundamental_data_object.download(
            self.instrument,
            fundamental_ratio=Ratio.fundamental_enterprise_value_Y,
            fromDate=self.fromDate,
            toDate=self.toDate)
        self.assertIsNotNone(downloadTest)
        self.assertNotEquals(len(downloadTest), 0)

    @unittest.skip("deprecated class")
    def test_download_wrong(self):
        instrument = Instrument('AAPqwL',
                                asset_type=AssetType.us_equity,
                                currency=Currency.usd)

        downloadTest = self.fundamental_data_object.download(
            instrument,
            fundamental_ratio=Ratio.fundamental_ebitda_Y,
            fromDate=self.fromDate,
            toDate=self.toDate)
        self.assertIsNone(downloadTest)

    @unittest.skip("deprecated class")
    def test_calculate_gross_margin(self):
        downloadTest = self.fundamental_data_object.download(
            self.instrument,
            fundamental_ratio=Ratio.fundamental_gross_margin_Y,
            fromDate=self.fromDate,
            toDate=self.toDate)
        self.assertIsNotNone(downloadTest)
        self.assertNotEquals(len(downloadTest), 0)
        self.assertTrue(Ratio.ratio in downloadTest.columns)
        self.assertEqual(len(downloadTest.columns), 1)

    @unittest.skip("deprecated class")
    def test_all_fundamentals(self):
        ratioList = Ratio.fundamental_list_Y
        for ratio in ratioList:
            print('testing ratio %s ' % ratio)
            downloadTest = self.fundamental_data_object.download(
                self.instrument,
                fundamental_ratio=ratio,
                fromDate=self.fromDate,
                toDate=self.toDate)
            self.assertIsNotNone(downloadTest)
            self.assertNotEquals(len(downloadTest), 0)
            self.assertTrue(Ratio.ratio in downloadTest.columns)
            self.assertEqual(len(downloadTest.columns), 1)
Esempio n. 28
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class VectorizedDataServiceTestCase(unittest.TestCase):
    user_settings = user_settings_tests
    vectorized_data_service = VectorOnlineService(user_settings)

    instrumentList = [
        Instrument(symbol='ABC', asset_type=AssetType.us_equity, currency=Currency.usd),
        Instrument(symbol='ACN', asset_type=AssetType.us_equity, currency=Currency.usd),
        Instrument(symbol='AAPL', asset_type=AssetType.us_equity, currency=Currency.usd),
        Instrument(symbol='GOOGL', asset_type=AssetType.us_equity, currency=Currency.usd),
        Instrument(symbol='MSFT', asset_type=AssetType.us_equity, currency=Currency.usd),

    ]

    ratio_list = [Ratio.fundamental_ebitda_Y, Ratio.fundamental_enterprise_value_Y, Ratio.fundamental_ms_Y]
    fromDate = datetime.datetime(year=2017, day=1, month=1)
    toDate = datetime.datetime(year=2018, day=26, month=6)

    @unittest.skip('not used anymore')
    def test_getDict(self):
        dict_of_matrix = self.vectorized_data_service.getDataDictOfMatrix(instrumentList=self.instrumentList,
                                                                          ratioList=self.ratio_list,
                                                                          fromDate=self.fromDate,
                                                                          toDate=self.toDate,
                                                                          )
        self.assertIsNotNone(dict_of_matrix)
        self.assertEqual(8, len(dict_of_matrix))
        keysOutput = dict_of_matrix.keys()
        for key in DataDictKeys.keys:
            self.assertEqual(key in keysOutput, True)
        for key in self.ratio_list:
            self.assertEqual(key in keysOutput, True)

    @unittest.skip(reason='slow')
    def test_getAllDict(self):
        ratio_list = Ratio.fundamental_list_Y
        ratio_list += (Ratio.quant_list)

        dict_of_matrix = self.vectorized_data_service.getDataDictOfMatrix(instrumentList=self.instrumentList,
                                                                          ratioList=ratio_list,
                                                                          fromDate=self.fromDate,
                                                                          toDate=self.toDate
                                                                          )
        self.assertIsNotNone(dict_of_matrix)

        keysOutput = dict_of_matrix.keys()
        for key in DataDictKeys.keys:
            self.assertEqual(key in keysOutput, True)
        for key in ratio_list:
            self.assertEqual(key in keysOutput, True)

    @unittest.skip(reason='slow , and not yet')
    def test_getAllDict_timeIt(self):
        import time
        ratio_list = [Ratio.fundamental_shares_Y, Ratio.fundamental_accrual_Y]

        startTemp = time.time()
        dict_of_matrix_normal = self.vectorized_data_service.getDataDictOfMatrix(instrumentList=self.instrumentList,
                                                                                 ratioList=ratio_list,
                                                                                 fromDate=self.fromDate,
                                                                                 toDate=self.toDate
                                                                                 )

        endTemp = time.time()
        print('TEMP::: Dict matrix of %d ratios of  %d symbols  took %d seconds ' % (
            len(ratio_list), len(self.instrumentList), endTemp - startTemp))

        self.assertIsNotNone(dict_of_matrix_normal)
        start = time.time()
        dict_of_matrix_notTemp = self.vectorized_data_service.getDataDictOfMatrix(instrumentList=self.instrumentList,
                                                                                  ratioList=ratio_list,
                                                                                  fromDate=self.fromDate,
                                                                                  toDate=self.toDate,
                                                                                  useFunctionTemp=False
                                                                                  )
        end = time.time()
        timeInSeconds = end - start
        print('Dict matrix of %d ratios of  %d symbols  took %d seconds ' % (
            len(ratio_list), len(self.instrumentList), timeInSeconds))

        self.assertIsNotNone(dict_of_matrix_notTemp)

        self.assertEqual(dict_of_matrix_normal.keys(), dict_of_matrix_notTemp.keys())

        self.assertEqual(dict_of_matrix_normal[DataDictKeys.close].shape,
                         dict_of_matrix_notTemp[DataDictKeys.close].shape)

        self.assertEqual(dict_of_matrix_normal[Ratio.fundamental_shares_Y].shape,
                         dict_of_matrix_notTemp[Ratio.fundamental_shares_Y].shape)

        ## test time <10 seconds
        # self.assertLess(timeInSeconds,10)

    def test___getInputKeys__(self):
        import time
        pk = self.vectorized_data_service.__getInputKeys__(instrumentList=self.instrumentList, fromDate=self.fromDate,
                                                           toDate=self.toDate)
        time.sleep(1)
        pk1 = self.vectorized_data_service.__getInputKeys__(instrumentList=self.instrumentList, fromDate=self.fromDate,
                                                            toDate=self.toDate)

        time.sleep(1)
        instrumentList2 = [
            Instrument(symbol='ABC', asset_type=AssetType.us_equity, currency=Currency.usd),
            Instrument(symbol='ACN', asset_type=AssetType.us_equity, currency=Currency.usd),
            Instrument(symbol='AAPL', asset_type=AssetType.us_equity, currency=Currency.usd),
            Instrument(symbol='GOOGL', asset_type=AssetType.us_equity, currency=Currency.usd),
            Instrument(symbol='MSFT', asset_type=AssetType.us_equity, currency=Currency.usd),

        ]

        pk2 = self.vectorized_data_service.__getInputKeys__(instrumentList=instrumentList2, fromDate=self.fromDate,
                                                            toDate=self.toDate)

        self.assertEqual(pk, pk2)

    # check if parallel downloading is working
    @unittest.skip('not used anymore')
    def test_getDataDictOfMatrixParallel(self):
        # ratio_list = Ratio.fundamental_list_Y
        # symbolList = getSharadarTickers(self.user_settings)[20:30]
        instrumentList2 = [
            Instrument(symbol='ABC', asset_type=AssetType.us_equity, currency=Currency.usd),
            Instrument(symbol='ACN', asset_type=AssetType.us_equity, currency=Currency.usd),
            Instrument(symbol='AAPL', asset_type=AssetType.us_equity, currency=Currency.usd),
            Instrument(symbol='GOOGL', asset_type=AssetType.us_equity, currency=Currency.usd),
            Instrument(symbol='MSFT', asset_type=AssetType.us_equity, currency=Currency.usd),

            Instrument(symbol='GNW', asset_type=AssetType.us_equity, currency=Currency.usd),
            Instrument(symbol='SCG', asset_type=AssetType.us_equity, currency=Currency.usd),
            Instrument(symbol='KANG', asset_type=AssetType.us_equity, currency=Currency.usd),
            Instrument(symbol='S', asset_type=AssetType.us_equity, currency=Currency.usd),
            Instrument(symbol='A', asset_type=AssetType.us_equity, currency=Currency.usd),

        ]
        ratio_list = [Ratio.fundamental_ebitda_Y,
                      Ratio.fundamental_enterprise_value_Y,
                      Ratio.fundamental_ms_Y,
                      # Ratio.quant_return1Y,
                      # Ratio.quant_return1YFrom20,
                      # Ratio.quant_returnsDiff_120,
                      # Ratio.quant_std1Y,
                      # Ratio.fundamental_asset_quality_index_Y,
                      # Ratio.fundamental_book_value_liabilities_Y,
                      # Ratio.fundamental_shares_Y
                      ]

        instrumentList = instrumentList2  # getInstrumentList(symbolList, asset_type=AssetType.us_equity, currency=Currency.usd)

        fromDate = datetime.datetime(year=2015, day=1, month=1)
        self.vectorized_data_service.parallelDownloadInstruments = False
        self.vectorized_data_service.parallelDownloadRatios = False
        self.vectorized_data_service.force_download = True
        self.vectorized_data_service.threads = 8
        dict_of_matrix_serial = self.vectorized_data_service.getDataDictOfMatrix(instrumentList=instrumentList,
                                                                                 ratioList=ratio_list,
                                                                                 fromDate=fromDate,
                                                                                 toDate=self.toDate,
                                                                                 )

        self.assertIsNotNone(dict_of_matrix_serial)
        closeDF = dict_of_matrix_serial[DataDictKeys.close]
        self.assertIsNotNone(closeDF)
        prices = closeDF

        columnsRemove = list(prices.sum(axis=0)[prices.sum(axis=0) == 0].index)
        if len(columnsRemove) > 0:
            prices = prices.drop(columnsRemove, axis=1)
        self.assertIsNotNone(prices)
        self.assertTrue(len(prices) > 0)

        self.vectorized_data_service.parallelDownloadInstruments = True
        self.vectorized_data_service.parallelDownloadRatios = True
        dict_of_matrix_parallel = self.vectorized_data_service.getDataDictOfMatrix(instrumentList=instrumentList,
                                                                                   ratioList=ratio_list,
                                                                                   fromDate=fromDate,
                                                                                   toDate=self.toDate
                                                                                   )
        self.assertIsNotNone(dict_of_matrix_parallel)

        self.assertEquals(len(dict_of_matrix_serial), len(dict_of_matrix_parallel))
        for key in DataDictKeys.keys:
            print('Checking %s' % key)
            self.assertEquals(len(dict_of_matrix_serial[key]), len(dict_of_matrix_parallel[key]))
            self.assertEquals(dict_of_matrix_serial[key].sum().sum(), dict_of_matrix_parallel[key].sum().sum())

        for key in ratio_list:
            print('Checking %s' % key)
            self.assertEquals(len(dict_of_matrix_serial[key]), len(dict_of_matrix_parallel[key]))
            self.assertEquals(dict_of_matrix_serial[key].sum().sum(), dict_of_matrix_parallel[key].sum().sum())
Esempio n. 29
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    def test_getDataDictOfMatrixParallel(self):
        # ratio_list = Ratio.fundamental_list_Y
        # symbolList = getSharadarTickers(self.user_settings)[20:30]
        instrumentList2 = [
            Instrument(symbol='ABC', asset_type=AssetType.us_equity, currency=Currency.usd),
            Instrument(symbol='ACN', asset_type=AssetType.us_equity, currency=Currency.usd),
            Instrument(symbol='AAPL', asset_type=AssetType.us_equity, currency=Currency.usd),
            Instrument(symbol='GOOGL', asset_type=AssetType.us_equity, currency=Currency.usd),
            Instrument(symbol='MSFT', asset_type=AssetType.us_equity, currency=Currency.usd),

            Instrument(symbol='GNW', asset_type=AssetType.us_equity, currency=Currency.usd),
            Instrument(symbol='SCG', asset_type=AssetType.us_equity, currency=Currency.usd),
            Instrument(symbol='KANG', asset_type=AssetType.us_equity, currency=Currency.usd),
            Instrument(symbol='S', asset_type=AssetType.us_equity, currency=Currency.usd),
            Instrument(symbol='A', asset_type=AssetType.us_equity, currency=Currency.usd),

        ]
        ratio_list = [Ratio.fundamental_ebitda_Y,
                      Ratio.fundamental_enterprise_value_Y,
                      Ratio.fundamental_ms_Y,
                      # Ratio.quant_return1Y,
                      # Ratio.quant_return1YFrom20,
                      # Ratio.quant_returnsDiff_120,
                      # Ratio.quant_std1Y,
                      # Ratio.fundamental_asset_quality_index_Y,
                      # Ratio.fundamental_book_value_liabilities_Y,
                      # Ratio.fundamental_shares_Y
                      ]

        instrumentList = instrumentList2  # getInstrumentList(symbolList, asset_type=AssetType.us_equity, currency=Currency.usd)

        fromDate = datetime.datetime(year=2015, day=1, month=1)
        self.vectorized_data_service.parallelDownloadInstruments = False
        self.vectorized_data_service.parallelDownloadRatios = False
        self.vectorized_data_service.force_download = True
        self.vectorized_data_service.threads = 8
        dict_of_matrix_serial = self.vectorized_data_service.getDataDictOfMatrix(instrumentList=instrumentList,
                                                                                 ratioList=ratio_list,
                                                                                 fromDate=fromDate,
                                                                                 toDate=self.toDate,
                                                                                 )

        self.assertIsNotNone(dict_of_matrix_serial)
        closeDF = dict_of_matrix_serial[DataDictKeys.close]
        self.assertIsNotNone(closeDF)
        prices = closeDF

        columnsRemove = list(prices.sum(axis=0)[prices.sum(axis=0) == 0].index)
        if len(columnsRemove) > 0:
            prices = prices.drop(columnsRemove, axis=1)
        self.assertIsNotNone(prices)
        self.assertTrue(len(prices) > 0)

        self.vectorized_data_service.parallelDownloadInstruments = True
        self.vectorized_data_service.parallelDownloadRatios = True
        dict_of_matrix_parallel = self.vectorized_data_service.getDataDictOfMatrix(instrumentList=instrumentList,
                                                                                   ratioList=ratio_list,
                                                                                   fromDate=fromDate,
                                                                                   toDate=self.toDate
                                                                                   )
        self.assertIsNotNone(dict_of_matrix_parallel)

        self.assertEquals(len(dict_of_matrix_serial), len(dict_of_matrix_parallel))
        for key in DataDictKeys.keys:
            print('Checking %s' % key)
            self.assertEquals(len(dict_of_matrix_serial[key]), len(dict_of_matrix_parallel[key]))
            self.assertEquals(dict_of_matrix_serial[key].sum().sum(), dict_of_matrix_parallel[key].sum().sum())

        for key in ratio_list:
            print('Checking %s' % key)
            self.assertEquals(len(dict_of_matrix_serial[key]), len(dict_of_matrix_parallel[key]))
            self.assertEquals(dict_of_matrix_serial[key].sum().sum(), dict_of_matrix_parallel[key].sum().sum())
Esempio n. 30
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class QuandlFundamentalDataCSVTestCase(unittest.TestCase):
    instrument = Instrument('AAPL',
                            asset_type=AssetType.us_equity,
                            currency=Currency.usd)
    user_settings = user_settings_tests
    fundamental_data_object = QuandlFundamentalDataCSV(user_settings)

    fromDate = datetime.datetime(year=2017, day=1, month=1)
    toDate = datetime.datetime(year=2018, day=26, month=6)

    @unittest.skip
    def test_download_data(self):
        downloadTest = self.fundamental_data_object.download(
            self.instrument,
            fundamental_ratio=Ratio.fundamental_ebitda_Y,
            fromDate=self.fromDate,
            toDate=self.toDate)
        self.assertIsNotNone(downloadTest)
        self.assertNotEquals(len(downloadTest), 0)

    @unittest.skip
    def test_calculate_download_data(self):
        downloadTest = self.fundamental_data_object.download(
            self.instrument,
            fundamental_ratio=Ratio.fundamental_enterprise_value_Y,
            fromDate=self.fromDate,
            toDate=self.toDate)
        self.assertIsNotNone(downloadTest)
        self.assertNotEquals(len(downloadTest), 0)

    @unittest.skip
    def test_download_wrong(self):
        instrument = Instrument('AAPqwL',
                                asset_type=AssetType.us_equity,
                                currency=Currency.usd)

        downloadTest = self.fundamental_data_object.download(
            instrument,
            fundamental_ratio=Ratio.fundamental_ebitda_Y,
            fromDate=self.fromDate,
            toDate=self.toDate)
        self.assertIsNone(downloadTest)

    @unittest.skip
    def test_calculate_gross_margin(self):
        downloadTest = self.fundamental_data_object.download(
            self.instrument,
            fundamental_ratio=Ratio.fundamental_gross_margin_Y,
            fromDate=self.fromDate,
            toDate=self.toDate)
        self.assertIsNotNone(downloadTest)
        self.assertNotEquals(len(downloadTest), 0)
        self.assertTrue(Ratio.ratio in downloadTest.columns)
        self.assertEqual(len(downloadTest.columns), 1)

    @unittest.skip
    def test_all_fundamentals(self):
        ratioList = Ratio.fundamental_list_Y
        for ratio in ratioList:
            print('testing ratio %s ' % ratio)
            downloadTest = self.fundamental_data_object.download(
                self.instrument,
                fundamental_ratio=ratio,
                fromDate=self.fromDate,
                toDate=self.toDate)
            self.assertIsNotNone(downloadTest)
            self.assertNotEquals(len(downloadTest), 0)
            self.assertTrue(Ratio.ratio in downloadTest.columns)
            self.assertEqual(len(downloadTest.columns), 1)

    @unittest.skip
    def test_all_fundamentals_allSymbols(self):
        fromDate = datetime.datetime(year=2000, day=1, month=1)
        toDate = datetime.datetime(year=2018, day=26, month=6)
        symbolList = getSF0Tickers(self.user_settings)
        instrumentList = getInstrumentList(symbolList=symbolList,
                                           currency=Currency.usd,
                                           asset_type=AssetType.us_equity)
        ratioList = Ratio.fundamental_list_Y
        for ratio in ratioList:
            for instrument in instrumentList:
                print('testing ratio %s for %s ' % (ratio, instrument))
                downloadTest = self.fundamental_data_object.download(
                    instrument,
                    fundamental_ratio=ratio,
                    fromDate=fromDate,
                    toDate=toDate)
                self.assertIsNotNone(downloadTest)
                self.assertNotEquals(len(downloadTest), 0)
                self.assertTrue(Ratio.ratio in downloadTest.columns)
                self.assertEqual(len(downloadTest.columns), 1)