def test_read_no_adjustments(self):
        adjustment_reader = NullAdjustmentReader()
        columns = [USEquityPricing.close, USEquityPricing.volume]
        query_days = self.calendar_days_between(TEST_QUERY_START, TEST_QUERY_STOP)
        # Our expected results for each day are based on values from the
        # previous day.
        shifted_query_days = self.calendar_days_between(TEST_QUERY_START, TEST_QUERY_STOP, shift=-1)

        adjustments = adjustment_reader.load_adjustments(columns, query_days, self.assets)
        self.assertEqual(adjustments, [{}, {}])

        baseline_reader = BcolzDailyBarReader(self.bcolz_path)
        pricing_loader = USEquityPricingLoader(baseline_reader, adjustment_reader)

        closes, volumes = pricing_loader.load_adjusted_array(
            columns, dates=query_days, assets=self.assets, mask=ones((len(query_days), len(self.assets)), dtype=bool)
        )

        expected_baseline_closes = self.bcolz_writer.expected_values_2d(shifted_query_days, self.assets, "close")
        expected_baseline_volumes = self.bcolz_writer.expected_values_2d(shifted_query_days, self.assets, "volume")

        # AdjustedArrays should yield the same data as the expected baseline.
        for windowlen in range(1, len(query_days) + 1):
            for offset, window in enumerate(closes.traverse(windowlen)):
                assert_array_equal(expected_baseline_closes[offset : offset + windowlen], window)

            for offset, window in enumerate(volumes.traverse(windowlen)):
                assert_array_equal(expected_baseline_volumes[offset : offset + windowlen], window)

        # Verify that we checked up to the longest possible window.
        with self.assertRaises(WindowLengthTooLong):
            closes.traverse(windowlen + 1)
        with self.assertRaises(WindowLengthTooLong):
            volumes.traverse(windowlen + 1)
    def test_read_no_adjustments(self):
        adjustment_reader = NullAdjustmentReader()
        columns = [USEquityPricing.close, USEquityPricing.volume]
        query_days = self.calendar_days_between(
            TEST_QUERY_START,
            TEST_QUERY_STOP
        )

        adjustments = adjustment_reader.load_adjustments(
            columns,
            query_days,
            self.assets,
        )
        self.assertEqual(adjustments, [{}, {}])

        baseline_reader = BcolzDailyBarReader(self.bcolz_path)
        pricing_loader = USEquityPricingLoader(
            baseline_reader,
            adjustment_reader,
        )

        closes, volumes = pricing_loader.load_adjusted_array(
            columns,
            DataFrame(True, index=query_days, columns=self.assets),
        )

        expected_baseline_closes = self.bcolz_writer.expected_values_2d(
            query_days,
            self.assets,
            'close',
        )
        expected_baseline_volumes = self.bcolz_writer.expected_values_2d(
            query_days,
            self.assets,
            'volume',
        )

        # AdjustedArrays should yield the same data as the expected baseline.
        for windowlen in range(1, len(query_days) + 1):
            for offset, window in enumerate(closes.traverse(windowlen)):
                assert_array_equal(
                    expected_baseline_closes[offset:offset + windowlen],
                    window,
                )

            for offset, window in enumerate(volumes.traverse(windowlen)):
                assert_array_equal(
                    expected_baseline_volumes[offset:offset + windowlen],
                    window,
                )

        # Verify that we checked up to the longest possible window.
        with self.assertRaises(WindowLengthTooLong):
            closes.traverse(windowlen + 1)
        with self.assertRaises(WindowLengthTooLong):
            volumes.traverse(windowlen + 1)
    def test_read_no_adjustments(self):
        adjustment_reader = NullAdjustmentReader()
        columns = [USEquityPricing.close, USEquityPricing.volume]
        query_days = self.calendar_days_between(TEST_QUERY_START,
                                                TEST_QUERY_STOP)

        adjustments = adjustment_reader.load_adjustments(
            columns,
            query_days,
            self.assets,
        )
        self.assertEqual(adjustments, [{}, {}])

        baseline_reader = BcolzDailyBarReader(self.bcolz_path)
        pricing_loader = USEquityPricingLoader(
            baseline_reader,
            adjustment_reader,
        )

        closes, volumes = pricing_loader.load_adjusted_array(
            columns,
            DataFrame(True, index=query_days, columns=self.assets),
        )

        expected_baseline_closes = self.bcolz_writer.expected_values_2d(
            query_days,
            self.assets,
            'close',
        )
        expected_baseline_volumes = self.bcolz_writer.expected_values_2d(
            query_days,
            self.assets,
            'volume',
        )

        # AdjustedArrays should yield the same data as the expected baseline.
        for windowlen in range(1, len(query_days) + 1):
            for offset, window in enumerate(closes.traverse(windowlen)):
                assert_array_equal(
                    expected_baseline_closes[offset:offset + windowlen],
                    window,
                )

            for offset, window in enumerate(volumes.traverse(windowlen)):
                assert_array_equal(
                    expected_baseline_volumes[offset:offset + windowlen],
                    window,
                )

        # Verify that we checked up to the longest possible window.
        with self.assertRaises(WindowLengthTooLong):
            closes.traverse(windowlen + 1)
        with self.assertRaises(WindowLengthTooLong):
            volumes.traverse(windowlen + 1)
    def test_read_with_adjustments(self):
        columns = [USEquityPricing.high, USEquityPricing.volume]
        query_days = self.calendar_days_between(TEST_QUERY_START, TEST_QUERY_STOP)
        # Our expected results for each day are based on values from the
        # previous day.
        shifted_query_days = self.calendar_days_between(TEST_QUERY_START, TEST_QUERY_STOP, shift=-1)

        baseline_reader = BcolzDailyBarReader(self.bcolz_path)
        adjustment_reader = SQLiteAdjustmentReader(self.db_path)
        pricing_loader = USEquityPricingLoader(baseline_reader, adjustment_reader)

        highs, volumes = pricing_loader.load_adjusted_array(
            columns, dates=query_days, assets=Int64Index(arange(1, 7)), mask=ones((len(query_days), 6), dtype=bool)
        )

        expected_baseline_highs = self.bcolz_writer.expected_values_2d(shifted_query_days, self.assets, "high")
        expected_baseline_volumes = self.bcolz_writer.expected_values_2d(shifted_query_days, self.assets, "volume")

        # At each point in time, the AdjustedArrays should yield the baseline
        # with all adjustments up to that date applied.
        for windowlen in range(1, len(query_days) + 1):
            for offset, window in enumerate(highs.traverse(windowlen)):
                baseline = expected_baseline_highs[offset : offset + windowlen]
                baseline_dates = query_days[offset : offset + windowlen]
                expected_adjusted_highs = self.apply_adjustments(
                    baseline_dates,
                    self.assets,
                    baseline,
                    # Apply all adjustments.
                    concat([SPLITS, MERGERS, DIVIDENDS], ignore_index=True),
                )
                assert_allclose(expected_adjusted_highs, window)

            for offset, window in enumerate(volumes.traverse(windowlen)):
                baseline = expected_baseline_volumes[offset : offset + windowlen]
                baseline_dates = query_days[offset : offset + windowlen]
                # Apply only splits and invert the ratio.
                adjustments = SPLITS.copy()
                adjustments.ratio = 1 / adjustments.ratio

                expected_adjusted_volumes = self.apply_adjustments(baseline_dates, self.assets, baseline, adjustments)
                # FIXME: Make AdjustedArray properly support integral types.
                assert_array_equal(expected_adjusted_volumes, window.astype(uint32))

        # Verify that we checked up to the longest possible window.
        with self.assertRaises(WindowLengthTooLong):
            highs.traverse(windowlen + 1)
        with self.assertRaises(WindowLengthTooLong):
            volumes.traverse(windowlen + 1)
示例#5
0
    def setUpClass(cls):
        cls.AAPL = 1
        cls.MSFT = 2
        cls.BRK_A = 3
        cls.assets = [cls.AAPL, cls.MSFT, cls.BRK_A]
        asset_info = make_simple_asset_info(
            cls.assets,
            Timestamp('2014'),
            Timestamp('2015'),
            ['AAPL', 'MSFT', 'BRK_A'],
        )
        cls.env = trading.TradingEnvironment()
        cls.env.write_data(equities_df=asset_info)
        cls.asset_finder = AssetFinder(cls.env.engine)
        cls.tempdir = tempdir = TempDirectory()
        tempdir.create()
        try:
            cls.raw_data, cls.bar_reader = cls.create_bar_reader(tempdir)
            cls.adj_reader = cls.create_adjustment_reader(tempdir)
            cls.ffc_loader = USEquityPricingLoader(
                cls.bar_reader, cls.adj_reader
            )
        except:
            cls.tempdir.cleanup()
            raise

        cls.dates = cls.raw_data[cls.AAPL].index.tz_localize('UTC')
示例#6
0
    def setUpClass(cls):
        cls.first_asset_start = Timestamp('2015-04-01', tz='UTC')
        cls.env = TradingEnvironment()
        cls.trading_day = cls.env.trading_day
        cls.asset_info = make_rotating_asset_info(
            num_assets=6,
            first_start=cls.first_asset_start,
            frequency=cls.trading_day,
            periods_between_starts=4,
            asset_lifetime=8,
        )
        cls.all_assets = cls.asset_info.index
        cls.all_dates = date_range(
            start=cls.first_asset_start,
            end=cls.asset_info['end_date'].max(),
            freq=cls.trading_day,
        )

        cls.env.write_data(equities_df=cls.asset_info)
        cls.finder = cls.env.asset_finder

        cls.temp_dir = TempDirectory()
        cls.temp_dir.create()

        cls.writer = SyntheticDailyBarWriter(
            asset_info=cls.asset_info[['start_date', 'end_date']],
            calendar=cls.all_dates,
        )
        table = cls.writer.write(
            cls.temp_dir.getpath('testdata.bcolz'),
            cls.all_dates,
            cls.all_assets,
        )

        cls.ffc_loader = USEquityPricingLoader(
            BcolzDailyBarReader(table),
            NullAdjustmentReader(),
        )
    def test_read_with_adjustments(self):
        columns = [USEquityPricing.high, USEquityPricing.volume]
        query_days = self.calendar_days_between(TEST_QUERY_START,
                                                TEST_QUERY_STOP)

        baseline_reader = BcolzDailyBarReader(self.bcolz_path)
        adjustment_reader = SQLiteAdjustmentReader(self.db_path)
        pricing_loader = USEquityPricingLoader(
            baseline_reader,
            adjustment_reader,
        )

        closes, volumes = pricing_loader.load_adjusted_array(
            columns,
            DataFrame(True, index=query_days, columns=arange(1, 7)),
        )

        expected_baseline_highs = self.bcolz_writer.expected_values_2d(
            query_days,
            self.assets,
            'high',
        )
        expected_baseline_volumes = self.bcolz_writer.expected_values_2d(
            query_days,
            self.assets,
            'volume',
        )

        # At each point in time, the AdjustedArrays should yield the baseline
        # with all adjustments up to that date applied.
        for windowlen in range(1, len(query_days) + 1):
            for offset, window in enumerate(closes.traverse(windowlen)):
                baseline = expected_baseline_highs[offset:offset + windowlen]
                baseline_dates = query_days[offset:offset + windowlen]
                expected_adjusted_highs = self.apply_adjustments(
                    baseline_dates,
                    self.assets,
                    baseline,
                    # Apply all adjustments.
                    concat([SPLITS, MERGERS, DIVIDENDS], ignore_index=True),
                )
                assert_allclose(expected_adjusted_highs, window)

            for offset, window in enumerate(volumes.traverse(windowlen)):
                baseline = expected_baseline_volumes[offset:offset + windowlen]
                baseline_dates = query_days[offset:offset + windowlen]
                # Apply only splits and invert the ratio.
                adjustments = SPLITS.copy()
                adjustments.ratio = 1 / adjustments.ratio
                expected_adjusted_volumes = self.apply_adjustments(
                    baseline_dates,
                    self.assets,
                    baseline,
                    adjustments,
                )
                # FIXME: Make AdjustedArray properly support integral types.
                assert_array_equal(
                    expected_adjusted_volumes,
                    window.astype(uint32),
                )

        # Verify that we checked up to the longest possible window.
        with self.assertRaises(WindowLengthTooLong):
            closes.traverse(windowlen + 1)
        with self.assertRaises(WindowLengthTooLong):
            volumes.traverse(windowlen + 1)