def __init__(self,
                 a: DataCoordinateOrProcessor,
                 *,
                 start: Optional[DateOrDatetimeOrRDate] = None,
                 end: Optional[DateOrDatetimeOrRDate] = None,
                 w: Union[Window, int] = Window(None, 0),
                 returns_type: Returns = Returns.SIMPLE,
                 **kwargs):
        """ VolatilityProcessor

        :param a: DataCoordinate or BaseProcessor for the series to apply the volatility timeseries function
        :param start: start date or time used in the underlying data query
        :param end: end date or time used in the underlying data query
        :param w: Window or int: size of window and ramp up to use. e.g. Window(22, 10) where 22 is the window size
              and 10 the ramp up value.  If w is a string, it should be a relative date like '1m', '1d', etc.
              Window size defaults to length of series.
        :param returns_type: returns type: simple, logarithmic or absolute
        """
        super().__init__(**kwargs)
        # coordinate
        self.children['a'] = a

        self.start = start
        self.end = end

        self.w = w
        self.returns_type = returns_type
Beispiel #2
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    def __init__(self,
                 a: DataCoordinateOrProcessor,
                 benchmark: Entity,
                 start: Optional[DateOrDatetimeOrRDate] = None,
                 end: Optional[DateOrDatetimeOrRDate] = None,
                 w: Union[Window, int] = Window(None, 0),
                 type_: SeriesType = SeriesType.PRICES):
        """ Correlation Processor

        :param a: Coordinate
        :param benchmark: Benchmark Entity to correlate coordinate data to
        """
        super().__init__()
        # coordinate
        self.children['a'] = a

        # Used for additional query
        self.benchmark: Entity = benchmark

        # datetime
        self.start = start
        self.end = end

        self.children['benchmark'] = self.get_benchmark_coordinate()

        # parameters
        self.w = w
        self.type_ = type_
    def __init__(self,
                 a: DataCoordinateOrProcessor,
                 b: DataCoordinateOrProcessor,
                 *,
                 start: Optional[DateOrDatetimeOrRDate] = None,
                 end: Optional[DateOrDatetimeOrRDate] = None,
                 w: Union[Window, int] = Window(None, 0),
                 **kwargs):
        """ BetaProcessor

        :param a: DataCoordinate or BaseProcessor for the first series
        :param b: DataCoordinate or BaseProcessor for the second series
        :param start: start date or time used in the underlying data query
        :param end: end date or time used in the underlying data query
        :param w:  Window or int: size of window and ramp up to use. e.g. Window(22, 10) where 22 is the window size
              and 10 the ramp up value.  If w is a string, it should be a relative date like '1m', '1d', etc.
              Window size defaults to length of series.

         **Usage**

        Calculate rolling `beta <https://en.wikipedia.org/wiki/Beta_(finance)>`_
        If window is not provided, computes beta over the full series

        """
        super().__init__(**kwargs)
        self.children['a'] = a
        self.children['b'] = b

        self.start = start
        self.end = end
        self.w = w
    def __init__(self,
                 a: DataCoordinateOrProcessor,
                 *,
                 benchmark: Entity,
                 start: Optional[DateOrDatetimeOrRDate] = None,
                 end: Optional[DateOrDatetimeOrRDate] = None,
                 w: Union[Window, int] = Window(None, 0),
                 type_: SeriesType = SeriesType.PRICES):
        """ CorrelationProcessor

        :param a: DataCoordinate or BaseProcessor for the series
        :param benchmark: benchmark to compare price series
        :param start: start date or time used in the underlying data query
        :param end: end date or time used in the underlying data query
        :param w: Window, int, or str: size of window and ramp up to use. e.g. Window(22, 10) where 22 is the window
                size and 10 the ramp up value. If w is a string, it should be a relative date like '1m', '1d', etc.
                Window size defaults to length of series.
        :param type_: type of both input series: prices or returns
        """
        super().__init__()
        # coordinate
        self.children['a'] = a

        # Used for additional query
        self.benchmark: Entity = benchmark

        # datetime
        self.start = start
        self.end = end

        self.children['benchmark'] = self.get_benchmark_coordinate()

        # parameters
        self.w = w
        self.type_ = type_
 def process(self,
             w: Union[Window, int] = Window(None, 0),
             type_: SeriesType = SeriesType.PRICES):
     a_data = self.children_data.get('a')
     excess_returns_data = self.children_data.get('excess_returns')
     if isinstance(a_data, ProcessorResult) and isinstance(
             excess_returns_data, ProcessorResult):
         if a_data.success and excess_returns_data.success:
             excess_returns = excess_returns_pure(a_data.data,
                                                  excess_returns_data.data)
             ratio = get_ratio_pure(excess_returns, self.w)
             self.value = ProcessorResult(True, ratio)
    def __init__(self,
                 a: DataCoordinateOrProcessor,
                 b: Optional[DataCoordinateOrProcessor] = None,
                 start: Optional[DateOrDatetimeOrRDate] = None,
                 end: Optional[DateOrDatetimeOrRDate] = None,
                 w: Union[Window, int] = Window(None, 0)):
        """ Last Processor

        :param a: Value series to get the rolling percentiles
        :param b: Distribution series
        """
        super().__init__()
        self.children['a'] = a
        self.children['b'] = b

        self.start = start
        self.end = end
        self.w = w
Beispiel #7
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 def process(self,
             w: Union[Window, int] = Window(None, 0),
             type_: SeriesType = SeriesType.PRICES):
     a_data = self.children_data.get('a')
     benchmark_data = self.children_data.get('benchmark')
     if isinstance(a_data, ProcessorResult) and isinstance(
             benchmark_data, ProcessorResult):
         if a_data.success and benchmark_data.success:
             result = correlation(a_data.data,
                                  benchmark_data.data,
                                  w=self.w,
                                  type_=SeriesType.PRICES)
             self.value = ProcessorResult(True, result)
         else:
             self.value = ProcessorResult(
                 False, "Processor does not have A and Benchmark data yet")
     else:
         self.value = ProcessorResult(
             False, "Processor does not have A and Benchmark data yet")
Beispiel #8
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    def __init__(self,
                 a: DataCoordinateOrProcessor,
                 *,
                 b: Optional[DataCoordinateOrProcessor] = None,
                 start: Optional[DateOrDatetimeOrRDate] = None,
                 end: Optional[DateOrDatetimeOrRDate] = None,
                 w: Union[Window, int] = Window(None, 0)):
        """ PercentilesProcessor

        :param a: DataCoordinate or BaseProcessor for the first series
        :param b: DataCoordinate or BaseProcessor for the second series
        :param start: start date or time used in the underlying data query
        :param end: end date or time used in the underlying data query
        :param w:  Window or int: size of window and ramp up to use. e.g. Window(22, 10) where 22 is the window size
              and 10 the ramp up value.  If w is a string, it should be a relative date like '1m', '1d', etc.
              Window size defaults to length of series.
        """
        super().__init__()
        self.children['a'] = a
        self.children['b'] = b

        self.start = start
        self.end = end
        self.w = w
Beispiel #9
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import gs_quant.timeseries as ts
from gs_quant.timeseries import Window

x = ts.generate_series(
    1000)  # Generate random timeseries with 1000 observations
vol = ts.volatility(
    x, Window(22, 0)
)  # Compute realized volatility using a window of 22 and a ramp up value of 0
vol.tail()  # Show last few values