Metadata-Version: 1.1
Name: thymus-timeseries
Version: 0.1.1
Summary: An intuitive library tracking dates and timeseries in common using NumPy arrays. 
Home-page: https://github.com/sidorof/Thymus-timeseries
Author: Don Smiley
Author-email: ds@sidorof.com
License: MIT
Description: 
        # Thymus-timeseries
        
        An intuitive library tracking dates and timeseries in common using numpy
        arrays.
        
        When working with arrays of timeseries, the manipulation process can easily
        cause mismatching sets of arrays in time, arrays in the wrong order, slow down
        the analysis, and lead to generally spending more time to ensure consistency.
        
        This library attempts to address the problem in a way that enables ready access
        to the current date range, but stays out of your way most of the time.
        Essentially, this library is a wrapper around numpy arrays.
        
        This library grew out of the use of market and trading data. The
        timeseries is typically composed of regular intervals but with gaps
        such as weekends and holidays. In the case of intra-day data, there are
        interuptions due to periods when the market is closed or gaps in trading.
        
        While the library grew from addressing issues associated with market
        data, the implementation does not preclude use in other venues. Direct
        access to the numpy arrays is expected and the point of being able to use the
        library.
        
        ## Dependencies
        
        Other than NumPy being installed, there are no other requirements.
        
        ## Installation
        
        pip install thymus-timeseries
        
        ## A Brief Look at Capabilities.
        
        ### Creating a Small Sample Timeseries Object
        
        As a first look, we will create a small timeseries object and show a few ways
        that it can used. For this example, we will use daily data.
        ```
            from datetime import datetime
            import numpy as np
        
            from thymus.timeseries import Timeseries
        
            ts = Timeseries()
        
            # elements of Timeseries()
            key:                (an optional identifier for the timeseries)
            columns: []         (an optional list of column names for the data)
            frequency: d        (the d in this case refers to the default daily data.
                                 current frequencies supported are sec, min, h, d, w,
                                 m, q, y)
        
            dseries:            (this is a numpy array of dates in numeric format)
        
            tseries:            (this is a numpy array of data. most of the work takes
                                    place here.)
        
            end-of-period: True (this is a default indicating that the data is as of
                                    the end of the data. This only comes into play when
                                    converting from one frequency to another and will
                                    be ignored for the moment.) 
        ```
        While normal usage of the timeseries object would involve pulling data from a
        database and inserting data into the timeseries object, we will use a
        quick-and-dirty method of inputting some data. Dates are stored as either
        ordinals or timestamps, avoiding clogging up memory with large sets of datetime
        objects. Because it is daily data, ordinals will be used for this example.
        ```
            ts = Timeseries()
        
            start_date = datetime(2015, 12, 31).toordinal()
        
            ts.dseries = start_date + np.arange(10)
            ts.tseries = np.arange(10)
        
            ts.make_arrays() 
        ```
        We created an initial timeseries object. It starts at the end of
        2015 and continues for 10 days. Setting the values in **dseries** and
        **tseries**
        can be somewhat sloppy. For example, a list could be assigned initially to
        either **dseries** (the dates) and a numpy array to **tseries** (the values).
        
        The use of the **make_arrays()** function converts the date series to an int32
        array (because they are ordinal values) and **tseries** to a float64 array. The
        idea is that the data might often enter the timeseries object as lists, but
        then be converted to arrays of appropriate format for use.
        
        The completed timeseries object is:
        ```
            print(ts)
        
            <Timeseries>
            key: 
            columns: []
            frequency: d
            daterange: ('2015-12-31', '2016-01-09')
            end-of-period: True
            shape: (10,)    
        ```
        You can see the date range contained in the date series. The shape refers
        to the shape of the **tseries** array. **key** and **columns** are free-form,
        available to update as appropriate to identify the timeseries and content of
        the columns. Again, the **end-of-period** flag can be ignored right now.
        
        ## Selection
        
        Selection of elements is the same as numpy arrays. Currently, our sample has
        10 elements.
        ```
            print(ts[:5])
            <Timeseries>
            key: 
            columns: []
            frequency: d
            daterange: ('2015-12-31', '2016-01-04')
            end-of-period: True
            shape: (5,)    
        ```
        Note how the date range above reflects the selected elements.
        ```
            ts1 = ts % 2 == 0
            ts1.tseries
            [ True False  True False  True False  True False  True False]    
        ```
        We can isolate the dates of even numbers:
        ```
            # note that tseries, not the timeseries obj, is explicitly used with
            #   np.argwhere.  More on when to operate directly on tseries later.
            evens = np.argwhere((ts % 2 == 0).tseries)
        
            ts_even = ts[evens]
        
            # this just prints a list of date and value pairs only useful with
            # very small sets (or examples like this)
            print(ts_even.items('str'))
            ('2015-12-31', '[0.0]')
            ('2016-01-02', '[2.0]')
            ('2016-01-04', '[4.0]')
            ('2016-01-06', '[6.0]')
            ('2016-01-08', '[8.0]')    
        ```
        ## Date-based Selection
        
        So let us use a slightly larger timeseries. 1000 rows 2 columns of data. And,
        use random values to ensure uselessness.
        ```
            ts = Timeseries()
        
            start_date = datetime(2015, 12, 31).toordinal()
        
            ts.dseries = start_date + np.arange(1000)
            ts.tseries = np.random.random((1000, 2))
        
            ts.make_arrays()
        
            print(ts)
            
            <Timeseries>
            key: 
            columns: []
            frequency: d
            daterange: ('2015-12-31', '2018-09-25')
            end-of-period: True
            shape: (1000, 2) 
        ```
        
        You can select on the basis of date ranges, but first we will use a row number
        technique that is based on slicing. This function is called **trunc()** for
        truncation.
        ```
            # normal truncation -- you will end up with a timeseries with row 100
            # through 499. This provides in-place execution.
            ts.trunc(start=100, finish=500)
        
            # this version returns a new timeseries, effective for chaining.
            ts1 = ts.trunc(start=100, finish=500, new=True)
        ```
        But suppose you want to select a specific date range? This leads to the next
        function, **truncdate()**.
        ```
            # select using datetime objects
            ts1 = ts.truncdate(
                start=datetime(2017, 1, 1),
                finish=datetime(2017, 12, 31),
                new=True)
        
            print(ts1)
            
            <Timeseries>
            key: 
            columns: []
            frequency: d
            daterange: ('2017-01-01', '2017-12-31')
            end-of-period: True
            shape: (365, 2) 
        ```
        As you might expect, the timeseries object has a date range of all the days
        during 2017. But see how this is slightly different than slicing. When you use
        **truncdate()** it selects everything within the date range inclusive of the
        ending date as well. The idea is to avoid having to always find one day after
        the date range that you want to select to accommodate slicing behavior. This
        way is more convenient.
        
        You can also convert data from a higer frequency to a lower frequency. Suppose
        we needed monthly data for 2017 from our timeseries.
        ```
            start = datetime(2017, 1, 1)
            finish = datetime(2017, 12, 31)
            ts1 = ts.truncdate(start=start, finish=finish, new=True).convert('m')
        
            print(ts1.items('str'))
        
            ('2017-01-31', '[0.1724835781570483, 0.9856812220255055]')
            ('2017-02-28', '[0.3855043513164875, 0.30697511661843124]')
            ('2017-03-31', '[0.7067982987769881, 0.7680886691626396]')
            ('2017-04-30', '[0.07770763295126926, 0.04697651222041588]')
            ('2017-05-31', '[0.4473657194650975, 0.49443624153533783]')
            ('2017-06-30', '[0.3793816656495891, 0.03646544387811124]')
            ('2017-07-31', '[0.2783335012003322, 0.5144979569785825]')
            ('2017-08-31', '[0.9261879195281345, 0.6980224313957553]')
            ('2017-09-30', '[0.09531834159018227, 0.5435208082899813]')
            ('2017-10-31', '[0.6865842769906441, 0.7951735180348887]')
            ('2017-11-30', '[0.34901775001111657, 0.7014208950555662]')
            ('2017-12-31', '[0.4731393617405252, 0.630488855197775]')
        ```
        Or yearly. In this case, we use a flag that governs whether to include the partial period
        leading up to the last year. The default includes it. However, when unwanted the flag,
        **include_partial** can be set to False.
        ```
            ts1 = ts.convert('y', include_partial=True)
        
            print(ts1.items('str'))
        
            ('2015-12-31', '[0.2288539210230056, 0.288320541664724]')
            ('2016-12-31', '[0.5116274142615629, 0.21680312154651182]')
            ('2017-12-31', '[0.4731393617405252, 0.630488855197775]')
            ('2018-09-25', '[0.7634145837512148, 0.32026411425902257]')
        
            ts2 = ts.convert('y', include_partial=False)
        
            print(ts2.items('str'))
        
            ('2015-12-31', '[[0.2288539210230056, 0.288320541664724]]')
            ('2016-12-31', '[[0.5116274142615629, 0.21680312154651182]]')
            ('2017-12-31', '[[0.4731393617405252, 0.630488855197775]]') 
        ```
        ## Combining Timeseries
        
        Suppose you want to combine multiple timeseries together that are of different
        lengths? In this case we assume that the two timeseries end on the same date,
        but one has a longer tail than the other. However, the operation that you need
        requires common dates.
        
        By **combine** we mean instead of two timeseries make one timeseries that has
        the columns of both.
        ```
            ts_short = Timeseries()
            ts_long = Timeseries()
        
            end_date = datetime(2016, 12, 31)
        
            ts_short.dseries = [
                    (end_date + timedelta(days=-i)).toordinal()
                    for i in range(5)]
        
            ts_long.dseries = [
                    (end_date + timedelta(days=-i)).toordinal()
                    for i in range(10)]
        
            ts_short.tseries = np.zeros((5))
            ts_long.tseries = np.ones((10))
        
            ts_short.make_arrays()
            ts_long.make_arrays()
        
            ts_combine = ts_short.combine(ts_long)
        
            print(ts.items('str'))
        
            ('2016-12-31', '[0.0, 1.0]')
            ('2016-12-30', '[0.0, 1.0]')
            ('2016-12-29', '[0.0, 1.0]')
            ('2016-12-28', '[0.0, 1.0]')
            ('2016-12-27', '[0.0, 1.0]')
        ```
        The combine function has a couple variations. While it can be helpful to automatically discard the
        unwanted rows, you can also enforce that combining does not take place if the number of rows do not
        match. Also, you can build out the missing information with padding to create a timeseries that has
        the length of the longest timeseries.
        ```
            # this would raise an error -- the two are different lengths
            ts_combine = ts_short.combine(ts_long discard=False)
        
            # this combines, and fills 99 as a missing value
            ts_combine = ts_short.combine(ts_long discard=False, pad=99)
        
            print(ts_combine.items('str'))
            ('2016-12-31', '[0.0, 1.0]')
            ('2016-12-30', '[0.0, 1.0]')
            ('2016-12-29', '[0.0, 1.0]')
            ('2016-12-28', '[0.0, 1.0]')
            ('2016-12-27', '[0.0, 1.0]')
            ('2016-12-26', '[99.0, 1.0]')
            ('2016-12-25', '[99.0, 1.0]')
            ('2016-12-24', '[99.0, 1.0]')
            ('2016-12-23', '[99.0, 1.0]')
            ('2016-12-22', '[99.0, 1.0]')
        ```
        The combining can also receive multiple timeseries.
        ```
            ts_combine = ts_short.combine([ts_long, ts_long, ts_long])
        
            print(ts_combine.items('str'))
            ('2016-12-31', '[0.0, 1.0, 1.0, 1.0]')
            ('2016-12-30', '[0.0, 1.0, 1.0, 1.0]')
            ('2016-12-29', '[0.0, 1.0, 1.0, 1.0]')
            ('2016-12-28', '[0.0, 1.0, 1.0, 1.0]')
            ('2016-12-27', '[0.0, 1.0, 1.0, 1.0]')
        ```
        ## Splitting Timeseries
        
        In some ways it would make sense to mirror the **combine()** function
        with a **split()** from an aesthetic standpoint. However, splitting is very
        straight-forward without such a function. For example, suppose you want a
        timeseries that only has the the first two columns from our previous example.
        As you can see in the ts_split tseries, the first two columns were taken.
        ```
            ts_split = ts_combine[:, :2]
        
            print(ts_split.items('str'))
            ('2016-12-31', '[0.0, 1.0]')
            ('2016-12-30', '[0.0, 1.0]')
            ('2016-12-29', '[0.0, 1.0]')
            ('2016-12-28', '[0.0, 1.0]')
            ('2016-12-27', '[0.0, 1.0]')
        ```
        ## Arithmetic Operations
        
        We have combined timeseries together to stack up rows in common. In
        addition, we looked at the issue of mismatched lengths. Now we will look at
        arithmetic approaches and some of the design decisions and tradeoffs associated
        with mathematical operations.
        
        We will start with the **add()** function. First, if we assume that all we are
        adding together are arrays that have exactly the same dateseries, and
        therefore the same length, and we assume they have exactly the same number of
        columns, then the whole question becomes trivial. If we relax those
        constraints, then some choices need to be made.
        
        We will use the long and short timeseries from the previous example.
        ```
            # this will fail due to dissimilar lengths
            ts_added = ts_short.add(ts_long, match=True)
        
            # this will work
            ts_added = ts_short.add(ts_long, match=False)
        
            [ 1.  1.  1.  1.  1.  1.  1.  1.  1.  1.]    
        ```
        The **add()** function checks to see if the number of columns match. If they do
        not an error is raised. If the **match** flag is True, then it also checks
        that all the dates in both timeseries match prior to the operation.
        
        If **match** is False, then as long as the columns are compatible, the
        operation can take place. It also supports the concept of sparse arrays as
        well. For example, suppose you have a timeseries that is primary, but you would
        like to add in a timeseries values from only a few dates within the range. This
        function will find the appropriate dates adding in the values at just those
        rows.
        
        To summarize, all dates in common to both timeseries will be included in the
        new timeseries if **match** is False.
        
        Because the previous function is somewhat specialized, you can assume that the
        checking of common dates and creating the new timeseries can be somewhat slower
        than other approaches.
        
        If we assume some commonalities about our timeseries, then we can do our work
        in a more intuitive fashion.
        
        ### Assumptions of Commonality
        
        Let us assume that our timeseries might be varying in length, but we absolutely
        know what either our starting date or ending date is. And, let us assume that
        all the dates for the periods in common to the timeseries match.
        
        If we accept those assumptions, then a number of operations become quite easy.
        
        The timeseries object can accept simple arithmetic as if it is an array. It
        automatically passes the values on to the **tseries** array. If the two arrays
        are not the same length the longer array is truncated to the shorter length. So
        if you were add two arrays together that end at the same date, you would want
        to sort them latest date to earliest date using the function
        **sort_by_date()**.
        
        ### Examples
        ```
            # starting tseries
            ts.tseries
            [ 0.  1.  2.  3.  4.  5.  6.  7.  8.  9.]
        
            (ts + 3).tseries
            [  3.   4.   5.   6.   7.   8.   9.  10.  11.  12.]
        
            # Also, reverse (__radd__)
            (3 + ts).tseries
            [  3.   4.   5.   6.   7.   8.   9.  10.  11.  12.]
        
            # of course not just addition
            5 * ts.tseries
            [  0.   5.  10.  15.  20.  25.  30.  35.  40.  45.]    
        ```
        Also, in-place operations. But first, we will make a copy.
        ```
            ts1 = ts.clone()
            ts1.tseries /= 3
            print(ts1.tseries)
            [0.0
            0.3333333333333333
            0.6666666666666666
            1.0
            1.3333333333333333
            1.6666666666666667
            2.0
            2.3333333333333335
            2.6666666666666665
            3.0]
        
            ts1 = ts ** 3
            ts1.tseries
            0.0
            1.0
            8.0
            27.0
            64.0
            125.0
            216.0
            343.0
            512.0
            729.0
        
            ts1 = 10 ** ts
            ts1.tseries
            [1.0
            10.0
            100.0
            1000.0
            10000.0
            100000.0
            1000000.0
            10000000.0
            100000000.0
            1000000000.0]  
        ```
        
        In other words, the normal container functions you can use with numpy arrays
        are available to the timeseries objects. The following container functions for
        arrays are supported.
        ```
            __pow__ __add__ __rsub__ __sub__    __eq__      __ge__   __gt__   __le__
            __lt__  __mod__ __mul__  __ne__     __radd__    __rmod__ __rmul__ __rpow__
            __abs__ __pos__ __neg__  __invert__ __rdivmod__ __rfloordiv__
            __floordiv__ __truediv__
            __rtruediv__ __divmod__
        
            __and__ __or__ __ror__ __rand__ __rxor__ __xor__ __rshift__
            __rlshift__ __lshift__ __rrshift__
        
            __iadd__ __ifloordiv__ __imod__ __imul__ __ipow__ __isub__
            __itruediv__]
        
            __iand__ __ilshift__ __ior__ __irshift__ __ixor__ 
        ```
        ### Functions of Arrays Not Supported
        
        The purpose the timeseries objects is to implement an intuitive usage of
        timeseries objects in a fashion that is consistent with NumPy. However, it is
        not intended to replace functions that are better handled explicitly with
        the **dseries** and **tseries** arrays directly. The difference will be clear
        by
        comparing the list of functions for the timeseries object versus a numpy array. Most of the
        functions of the timeseries object is related to handling the commonality of date series with
        time series. You can see that the bulk of the thymus functions relate to maintenance of the
        coordination betwee the date series and timeseries. The meat of the functions still lie with the
        numpy arrays.
        ```
        # timeseries members and functions:
        ts.add                   ts.daterange             ts.get_pcdiffs           ts.series_direction
        ts.as_dict               ts.datetime_series       ts.header                ts.set_ones
        ts.as_json               ts.dseries               ts.if_dseries_match      ts.set_zeros
        ts.as_list               ts.end_date              ts.if_tseries_match      ts.shape
        ts.clone                 ts.end_of_period         ts.items                 ts.sort_by_date
        ts.closest_date          ts.extend                ts.key                   ts.start_date
        ts.columns               ts.fmt_date              ts.lengths               ts.trunc
        ts.combine               ts.frequency             ts.make_arrays           ts.truncdate
        ts.common_length         ts.get_date_series_type  ts.months                ts.tseries
        ts.convert               ts.get_datetime          ts.replace               ts.years
        ts.date_native           ts.get_diffs             ts.reverse
        ts.date_string_series    ts.get_duped_dates       ts.row_no
        
        # numpy functions in the arrays
        ts.tseries.T             ts.tseries.cumsum        ts.tseries.min           ts.tseries.shape
        ts.tseries.all           ts.tseries.data          ts.tseries.nbytes        ts.tseries.size
        ts.tseries.any           ts.tseries.diagonal      ts.tseries.ndim          ts.tseries.sort
        ts.tseries.argmax        ts.tseries.dot           ts.tseries.newbyteorder  ts.tseries.squeeze
        ts.tseries.argmin        ts.tseries.dtype         ts.tseries.nonzero       ts.tseries.std
        ts.tseries.argpartition  ts.tseries.dump          ts.tseries.partition     ts.tseries.strides
        ts.tseries.argsort       ts.tseries.dumps         ts.tseries.prod          ts.tseries.sum
        ts.tseries.astype        ts.tseries.fill          ts.tseries.ptp           ts.tseries.swapaxes
        ts.tseries.base          ts.tseries.flags         ts.tseries.put           ts.tseries.take
        ts.tseries.byteswap      ts.tseries.flat          ts.tseries.ravel         ts.tseries.tobytes
        ts.tseries.choose        ts.tseries.flatten       ts.tseries.real          ts.tseries.tofile
        ts.tseries.clip          ts.tseries.getfield      ts.tseries.repeat        ts.tseries.tolist
        ts.tseries.compress      ts.tseries.imag          ts.tseries.reshape       ts.tseries.tostring
        ts.tseries.conj          ts.tseries.item          ts.tseries.resize        ts.tseries.trace
        ts.tseries.conjugate     ts.tseries.itemset       ts.tseries.round         ts.tseries.transpose
        ts.tseries.copy          ts.tseries.itemsize      ts.tseries.searchsorted  ts.tseries.var
        ts.tseries.ctypes        ts.tseries.max           ts.tseries.setfield      ts.tseries.view
        ts.tseries.cumprod       ts.tseries.mean          ts.tseries.setflags      
        ```
        ### Other Date Functions
        
        Variations on a theme:
        ```
            # truncation
            ts.truncdate(
                start=datetime(2017, 1, 1),
                finish=datetime(2017, 12, 31))
        
            # just start date etc.
            ts.truncdate(
                start=datetime(2017, 1, 1))
        
            # this was in date order but suppose it was in reverse order?
            # this result will give the same answer
            ts1 = ts.truncdate(
                start=datetime(2017, 1, 1),
                new=True)
        
            ts.reverse()
        
            ts1 = ts.truncdate(
                start=datetime(2017, 1, 1),
                new=True)
        
            # use the date format native to the dateseries (ordinal / timestamp)
            ts1 = ts.truncdate(
                start=datetime(2017, 1, 1).toordinal(),
                new=True)
        
            # suppose you start with a variable that represents a date range
            # date range can be either a list or tuple
            ts.truncdate(
                [datetime(2017, 1, 1), datetime(2017, 12, 31)])
        ```
        ## Assorted Date Functions
        ```
            # native format
            ts.daterange()
            (735963, 735972)
        
            # str format
            ts.daterange('str')
            ('2015-12-31', '2016-01-09')
        
            # datetime format
            ts.daterange('datetime')
            (datetime.datetime(2015, 12, 31, 0, 0), datetime.datetime(2016, 1, 9, 0, 0))
        
            # native format
            ts.start_date(); ts.end_date()
            735963  735972
        
            # str format
            ts.start_date('str'); ts.end_date('str')
            2015-12-31  2016-01-09
        
            # datetime format
            ts.start_date('datetime'); ts.end_date('datetime')
            2015-12-31 00:00:00  2016-01-09 00:00:00
        ```
        Sometimes it is helpful to find a particular row based on the date. Also, that date might not be in
        the dateseries, and so, the closest date will suffice.
        
        We will create a sample timeseries to illustrate.
        ```
            ts = Timeseries()
            ts.dseries = []
            ts.tseries = []
        
            start_date = datetime(2015, 12, 31)
            for i in range(40):
                date = start_date + timedelta(days=i)
                if date.weekday() not in [5, 6]:   # skipping weekends
        
                    ts.dseries.append(date.toordinal())
                    ts.tseries.append(i)
        
            ts.make_arrays()
        
            # row_no, date
            (0, '2015-12-31')
            (1, '2016-01-01')
            (2, '2016-01-04')
            (3, '2016-01-05')
            (4, '2016-01-06')
            (5, '2016-01-07')
            (6, '2016-01-08')
            (7, '2016-01-11')
            (8, '2016-01-12')
            (9, '2016-01-13')
            (10, '2016-01-14')
            (11, '2016-01-15')
            (12, '2016-01-18')
            (13, '2016-01-19')
            (14, '2016-01-20')
            (15, '2016-01-21')
            (16, '2016-01-22')
            (17, '2016-01-25')
            (18, '2016-01-26')
            (19, '2016-01-27')
            (20, '2016-01-28')
            (21, '2016-01-29')
            (22, '2016-02-01')
            (23, '2016-02-02')
            (24, '2016-02-03')
            (25, '2016-02-04')
            (26, '2016-02-05')
            (27, '2016-02-08')
        
            date1 = datetime(2016, 1, 7)    # existing date within date series
            date2 = datetime(2016, 1, 16)   # date falling on a weekend
            date3 = datetime(2015, 6, 16)   # date prior to start of date series
            date4 = datetime(2016, 3, 8)    # date after to end of date series
        
            # as datetime and in the series
            existing_row = ts.row_no(rowdate=date1, closest=1)
            5
        
            existing_date = ts.closest_date(rowdate=date1, closest=1)
            print(datetime.fromordinal(existing_date))
            2016-01-07 00:00:00
        
            # as datetime but date not in series
            next_row = ts.row_no(rowdate=date2, closest=1)
            12
        
            next_date = ts.closest_date(rowdate=date2, closest=1)
            print(datetime.fromordinal(next_date))
            2016-01-18 00:00:00
        
            prev_row = ts.row_no(rowdate=date2, closest=-1)
            11
        
            prev_date = ts.closest_date(rowdate=date2, closest=-1)
            print(datetime.fromordinal(prev_date))
            2016-01-15 00:00:00
        
            # this will fail -- date is outside the date series
            # as datetime but date not in series, look for earlier date
            ts.closest_date(rowdate=date3, closest=-1)
        
            # this will fail -- date is outside the date series
            ts.closest_date(rowdate=date4, closest=1) 
        ```
        ## Functions by Category
        
        ### Output
        
        #### ts.as_dict()
        
                Returns the time series as a dict with the date as the key and without
                the header information.
        
        #### ts.as_json(indent=2)
        
                This function returns the timeseries in JSON format and includes the
                header information.
        
        #### ts.as_list()
        
                Returns the timeseries as a list.
        
        #### ts.header()
        
                This function returns a dict of the non-timeseries data.
        
        #### ts.items(fmt=None)
        
                This function returns the date series and the time series as if it
                is in one list. The term items used to suggest the iteration of dicts
                where items are the key, value combination.
        
                if fmt == 'str':
                    the dates are output as strings
        
        #### ts.months(include_partial=True)
        
                This function provides a quick way to summarize daily (or less)
                as monthly data.
        
                It is basically a pass-through to the convert function with more
                decoration of the months.
        
                Usage:
        
                    months(include_partial=True)
        
                    returns a dict with year-month as keys
        
        #### ts.years(include_partial=True)
        
                This function provides a quick way to summarize daily (or less)
                as yearly data.
        
                It is basically a pass-through to the convert function with more
                decoration of the years.
        
                Usage:
        
                    years(include_partial=True)
        
                    returns a dict with year as keys
        
        #### ts.datetime_series()
        
                This function returns the dateseries converted to a list of
                datetime objects.
        
        #### ts.date_string_series(dt_fmt=None)
        
                This function returns a list of the dates in the timeseries as
                strings.
        
                Usage:
                    self.date_string_series(dt_fmt=None)
        
                dt_fmt is a datetime mask to alter the default formatting.
        
        ### Array Manipulation
        
        #### ts.add(ts, match=True)
        
                Adds two timeseries together.
        
                if match is True:
                    means there should be a one to one corresponding date in each time
                    series.  If not raise error.
                else:
                    means that timeseries with sporadic or missing dates can be added
        
                Note: this does not evaluate whether both timeseries have the same
                        number of columns. It will fail if they do not.
        
                Returns the timeseries. Not in-place.
        
        #### ts.clone()
        
                This function returns a copy of the timeseries.
        
        #### ts.combine(tss, discard=True, pad=None)
        
                This function combines timeseries into a single array. Combining in
                this case means accumulating additional columns of information.
        
                Truncation takes place at the end of rows. So if the timeseries is
                sorted from latest dates to earliest dates, the older values would be
                removed.
        
                Usage:
                    self.combine(tss, discard=True, pad=None)
        
                Think of tss as the plural of timeseries.
        
                If discard:
                    Will truncate all timeseries lengths down to the shortest
                    timeseries.
        
                if discard is False:
                    An error will be raised if the all the lengths do not match
        
                    unless:
                        if pad is not None:
                            the shorter timeseries will be padded with the value pad.
        
                Returns the new ts.
        
        #### ts.common_length(ts1, ts2)
        
                This static method trims the lengths of two timeseries and returns two
                timeseries with the same length.
        
                The idea is that in order to do array operations there must be a
                common length for each timeseries.
        
                Reflecting the bias for using timeseries sorted from latest info to
                earlier info, truncation takes place at the end of the array. That
                way older less important values are removed if necessary.
        
                Usage:
                    ts1_new, ts2_new = self.common_length(ts1, ts2)
        
        #### ts.convert(new_freq, include_partial=True, **kwargs)
        
                This function returns the timeseries converted to another frequency,
                such as daily to monthly.
        
                Usage:
                    convert(new_freq, include_partial=True, **kwargs)
        
                The only kwarg is
                    weekday=<some value>
        
                This is used when converting to weekly data. The weekday number
                corresponds to the the datetime.weekday() function.
        
        #### ts.extend(ts, overlay=True)
        
                This function combines a timeseries to another, taking into account the
                possibility of overlap.
        
                This assumes that the frequency is the same.
        
                This function is chiefly envisioned to extend a timeseries with
                additional dates.
        
                Usage:
                    self.extend(ts, overlay=True)
        
                If overlay is True then the incoming timeseries will overlay
                any values that are duplicated.
        
        #### ts.trunc(start=None, finish=None, new=False)
        
                This function truncates in place, typically.
        
                truncate from (start:finish)
                remember start is lowest number, latest date
        
                This truncation works on the basis of slicing, so
                finish is not inclusive.
        
                Usage:
                    self.trunc(start=None, finish=None, new=False)
        
        #### ts.truncdate(start=None, finish=None, new=False)
        
                This function truncates in place on the basis of dates.
        
                Usage:
                    self.truncdate(start=None, finish=None, new=False)
        
                start and finish are dates, input as either datetime or the actual
                internal format of the **dseries** (ordinals or timestamps).
        
                If the dates are not actually in the list, the starting date will
                be the next viable date after the start date requested. If the finish
                date is not available, the previous date from the finish date will be
                the last.
        
                If new is True, the timeseries will not be modified in place. Rather
                a new timeseries will be returned instead.
        
        #### ts.replace(ts, match=True)
        
                This function replaces values where the dates match an incoming
                timeseries. So if the incoming date on the timeseries matches, the
                value in the current timeseries will be replaced by the incoming
                timeseries.
        
                Usage:
                    self.replace(ts, match=True)
        
                If match is False, the incoming timseries may have dates not found in
                the self timeseries.
        
                Returns the modified timeseries. Not in place.
        
        #### ts.reverse()
        
                This function does in-place reversal of the timeseries and dateseries.
        
        #### ts.get_diffs()
        
                This function gets the differences between values from date to date in
                the timeseries.
        
        #### ts.get_pcdiffs()
        
                This function gets the percent differences between values in the
                timeseries.
        
                No provision for dividing by zero here.
        
        #### ts.set_ones(fmt=None, new=False)
        
                This function converts an existing timeseries to ones using the same
                shape as the existing timeseries.
        
                It is used as a convenience to create an empty timeseries with a
                specified date range.
        
                if fmt use as shape
        
                usage:
                    set_ones(self, fmt=None, new=False)
        
        #### ts.set_zeros(fmt=None, new=False)
        
                This function converts an existing timeseries to zeros using the same
                shape as the existing timeseries.
        
                It is used as a convenience to create an empty timeseries with a
                specified date range.
        
                if fmt use as shape
        
                usage:
                    set_zeros(self, fmt=None, new=False)
        
        #### ts.sort_by_date(reverse=False, force=False)
        
                This function converts a timeseries to either date order or reverse
                date order.
        
                Usage:
                    sort_by_date(self, reverse=False, force=False)
        
                If reverse is True, then order will be newest to oldest.
                If force is False, the assumption is made that comparing the first
                and last date will determine the current order of the timeseries. That
                would mean that unnecessary sorting can be avoided. Also, if the order
                needs to be reversed, the sort is changed via the less expensive
                reverse function.
        
                If dates and values are in no particular order, with force=True, the
                actual sort takes place.
        
                This function changes the data in-place.
        
        ### Evaluation
        
        #### ts.daterange(fmt=None)
        
                This function returns the starting and ending dates of the timeseries.
        
                Usage:
        
                    self.daterange()
                        (735963, 735972)
        
                    self.daterange('str')
                        ('2015-12-31', '2016-01-09')
        
                    self.daterange('datetime')
                        (datetime(2015, 12, 31, 0, 0),
                         datetime.datetime(2016, 1, 9, 0, 0))
        
        #### ts.start_date(fmt=None)
        
                This function returns the starting date of the timeseries in its
                native value, timestamp or ordinal.
        
                If fmt is 'str' returns in string format
                If fmt is 'datetime' returns in string format
        
        #### ts.end_date(fmt=None)
        
                This funtcion returns the ending date of the timeseries in its native
                value, timestamp or ordinal.
        
                If fmt is 'str' returns in string format
                If fmt is 'datetime' returns in string format
        
        #### ts.get_duped_dates()
        
                This function pulls dates that are duplicated. This is to be used to
                locate timeseries that are faulty.
        
                Usage:
                    get_duped_dates()
        
                    returns [[odate1, count], [odate2, count]]
        
        #### ts.series_direction()
        
                if a lower row is a lower date, then 1 for ascending
                if a lower row is a higher date then -1 for descending
        
        #### ts.get_date_series_type()
        
                This function returns the date series type associated with the
                timeseries.  The choices are TS_ORDINAL or TS_TIMESTAMP.
        
        #### ts.if_dseries_match(ts)
        
                This function returns True if the date series are the same.
        
        #### ts.if_tseries_match(ts)
        
                This function returns True if the time series are the same.
        
        ### Utilities
        
        #### ts.date_native(date)
        
                This awkwardly named function returns a date in the native format of
                of the timeseries, namely ordinal or timestamp.
        
        #### ts.row_no(rowdate, closest=0, no_error=False)
        
                Shows the row in the timeseries
        
                Usage:
                    ts.row(rowdate=<datetime>)
                    ts.row(rowdate=<date as either ordinal or timestamp>)
        
                Returns an error if the date is not found in the index
        
                if closest is invoked:
                    closest = 1
                        find the closest date after the rowdate
                    closest = -1
                        find the closest date before the rowdate
        
                If no_error
                    returns -1 instead of raising an error if the date was
                    outside of the timeseries.
        
        #### ts.get_datetime(date)
        
                This function returns a date as a datetime object.
                This takes into account the type of date stored in **dseries**.
        
                Usage:
                    self.get_datetime(date)
        
        #### ts.lengths()
        
                This function returns the lengths of both the date series and time
                series. Both numbers are included in case a mismatch has occurred.
        
        #### ts.shape()
        
                This function return the shape of the timeseries. This is a shortcut
                to putting in ts.tseries.shape.
        
        #### ts.fmt_date(numericdate, dt_type, dt_fmt=None)
        
                This static method accepts a date and converts it to
                the format used in the timeseries.
        
        #### ts.make_arrays()
        
                Convert the date and time series lists (if so) to numpy arrays
        
        #### ts.get_fromDB(**kwargs)
        
                This is just a stub to suggest a viable name for getting data from a
                database.
        
        #### ts.save_toDB(**kwargs):
        
                This is just a stub to suggest a viable name for saving data to a
                database.
Keywords: timeseries
Platform: UNKNOWN
Classifier: Development Status :: 3 - Alpha
Classifier: Intended Audience :: Developers
Classifier: Environment :: Console
Classifier: Intended Audience :: Developers
Classifier: Intended Audience :: Science/Research
Classifier: Natural Language :: English
Classifier: Operating System :: OS Independent
Classifier: Topic :: Adaptive Technologies
Classifier: Topic :: Scientific/Engineering
Classifier: Topic :: Scientific/Engineering
Classifier: Topic :: Software Development :: Libraries :: Python Modules
Classifier: License :: OSI Approved :: MIT License
Classifier: Programming Language :: Python :: 3.4
Classifier: Programming Language :: Python :: 3.5
