doc/source/user_guide/timeseries.rst
.. _timeseries:
{{ header }}
Time series / date functionality
pandas contains extensive capabilities and features for working with time series data for all domains.
Using the NumPy datetime64 and timedelta64 dtypes, pandas has consolidated a large number of
features from other Python libraries like scikits.timeseries as well as created
a tremendous amount of new functionality for manipulating time series data.
For example, pandas supports:
Parsing time series information from various sources and formats
.. ipython:: python
import datetime
dti = pd.to_datetime( ["1/1/2018", np.datetime64("2018-01-01"), datetime.datetime(2018, 1, 1)] ) dti
Generate sequences of fixed-frequency dates and time spans
.. ipython:: python
dti = pd.date_range("2018-01-01", periods=3, freq="h") dti
Manipulating and converting date times with timezone information
.. ipython:: python
dti = dti.tz_localize("UTC") dti dti.tz_convert("US/Pacific")
Resampling or converting a time series to a particular frequency
.. ipython:: python
idx = pd.date_range("2018-01-01", periods=5, freq="h") ts = pd.Series(range(len(idx)), index=idx) ts ts.resample("2h").mean()
Performing date and time arithmetic with absolute or relative time increments
.. ipython:: python
friday = pd.Timestamp("2018-01-05")
friday.day_name()
# Add 1 day
saturday = friday + pd.Timedelta("1 day")
saturday.day_name()
# Add 1 business day (Friday --> Monday)
monday = friday + pd.offsets.BDay()
monday.day_name()
pandas provides a relatively compact and self-contained set of tools for performing the above tasks and more.
.. _timeseries.overview:
pandas captures 4 general time related concepts:
#. Date times: A specific date and time with timezone support. Similar to datetime.datetime from the standard library.
#. Time deltas: An absolute time duration. Similar to datetime.timedelta from the standard library.
#. Time spans: A span of time defined by a point in time and its associated frequency.
#. Date offsets: A relative time duration that respects calendar arithmetic. Similar to dateutil.relativedelta.relativedelta from the dateutil package.
===================== ================= =================== ============================================ ========================================
Concept Scalar Class Array Class pandas Data Type Primary Creation Method
===================== ================= =================== ============================================ ========================================
Date times Timestamp DatetimeIndex datetime64[us] or datetime64[us, tz] to_datetime or date_range
Time deltas Timedelta TimedeltaIndex timedelta64[us] to_timedelta or timedelta_range
Time spans Period PeriodIndex period[freq] Period or period_range
Date offsets DateOffset None None DateOffset
===================== ================= =================== ============================================ ========================================
The default resolution for date times and time deltas is microsecond ("us"), though second ("s"),
millisecond ("ms"), and nanosecond ("ns") are also supported. The resolution can be changed using
:meth:~Series.dt.as_unit.
For time series data, it's conventional to represent the time component in the index of a :class:Series or :class:DataFrame
so manipulations can be performed with respect to the time element.
.. ipython:: python
pd.Series(range(3), index=pd.date_range("2000", freq="D", periods=3))
However, :class:Series and :class:DataFrame can directly also support the time component as data itself.
.. ipython:: python
pd.Series(pd.date_range("2000", freq="D", periods=3))
:class:Series and :class:DataFrame have extended data type support and functionality for datetime, timedelta
and Period data when passed into those constructors. DateOffset
data however will be stored as object data.
.. ipython:: python
pd.Series(pd.period_range("1/1/2011", freq="M", periods=3)) pd.Series([pd.DateOffset(1), pd.DateOffset(2)]) pd.Series(pd.date_range("1/1/2011", freq="ME", periods=3))
Lastly, pandas represents null date times, time deltas, and time spans as NaT which
is useful for representing missing or null date like values and behaves similar
as np.nan does for float data.
.. ipython:: python
pd.Timestamp(pd.NaT) pd.Timedelta(pd.NaT) pd.Period(pd.NaT)
pd.NaT == pd.NaT
.. _timeseries.representation:
Timestamped data is the most basic type of time series data that associates values with points in time. For pandas objects it means using the points in time.
.. ipython:: python
import datetime
pd.Timestamp(datetime.datetime(2012, 5, 1)) pd.Timestamp("2012-05-01") pd.Timestamp(2012, 5, 1)
However, in many cases it is more natural to associate things like change
variables with a time span instead. The span represented by Period can be
specified explicitly, or inferred from datetime string format.
For example:
.. ipython:: python
pd.Period("2011-01")
pd.Period("2012-05", freq="D")
:class:Timestamp and :class:Period can serve as an index. Lists of
Timestamp and Period are automatically coerced to :class:DatetimeIndex
and :class:PeriodIndex respectively.
.. ipython:: python
dates = [ pd.Timestamp("2012-05-01"), pd.Timestamp("2012-05-02"), pd.Timestamp("2012-05-03"), ] ts = pd.Series(np.random.randn(3), dates)
type(ts.index) ts.index
ts
periods = [pd.Period("2012-01"), pd.Period("2012-02"), pd.Period("2012-03")]
ts = pd.Series(np.random.randn(3), periods)
type(ts.index) ts.index
ts
pandas allows you to capture both representations and
convert between them. Under the hood, pandas represents timestamps using
instances of Timestamp and sequences of timestamps using instances of
DatetimeIndex. For regular time spans, pandas uses Period objects for
scalar values and PeriodIndex for sequences of spans.
.. _timeseries.converting:
To convert a :class:Series or list-like object of date-like objects e.g. strings,
epochs, or a mixture, you can use the to_datetime function. When passed
a Series, this returns a Series (with the same index), while a list-like
is converted to a DatetimeIndex:
.. ipython:: python
pd.to_datetime(pd.Series(["Jul 31, 2009", "Jan 10, 2010", None]))
pd.to_datetime(["2005/11/23", "2010/12/31"])
If you use dates which start with the day first (i.e. European style),
you can pass the dayfirst flag:
.. ipython:: python :okwarning:
pd.to_datetime(["04-01-2012 10:00"], dayfirst=True)
pd.to_datetime(["04-14-2012 10:00"], dayfirst=True)
.. warning::
You see in the above example that dayfirst isn't strict. If a date
can't be parsed with the day being first it will be parsed as if
dayfirst were False and a warning will also be raised.
If you pass a single string to to_datetime, it returns a single Timestamp.
Timestamp can also accept string input, but it doesn't accept string parsing
options like dayfirst or format, so use to_datetime if these are required.
.. ipython:: python
pd.to_datetime("2010/11/12")
pd.Timestamp("2010/11/12")
You can also use the DatetimeIndex constructor directly:
.. ipython:: python
pd.DatetimeIndex(["2018-01-01", "2018-01-03", "2018-01-05"])
The string 'infer' can be passed in order to set the frequency of the index as the inferred frequency upon creation:
.. ipython:: python
pd.DatetimeIndex(["2018-01-01", "2018-01-03", "2018-01-05"], freq="infer")
In most cases, parsing strings to datetimes (with any of :func:to_datetime, :class:DatetimeIndex, or :class:Timestamp) will produce objects with microsecond ("us") unit. The exception to this rule is if your strings have nanosecond precision, in which case the result will have "ns" unit:
.. ipython:: python
pd.to_datetime(["2016-01-01 02:03:04"]).unit pd.to_datetime(["2016-01-01 02:03:04.123"]).unit pd.to_datetime(["2016-01-01 02:03:04.123456"]).unit pd.to_datetime(["2016-01-01 02:03:04.123456789"]).unit
.. versionchanged:: 3.0.0
Previously, :func:`to_datetime` and :class:`DatetimeIndex` would always parse strings to "ns" unit. During pandas 2.x, :class:`Timestamp` could give any of "s", "ms", "us", or "ns" depending on the specificity of the input string.
.. _timeseries.converting.format:
Providing a format argument
In addition to the required datetime string, a ``format`` argument can be passed to ensure specific parsing.
This could also potentially speed up the conversion considerably.
.. ipython:: python
pd.to_datetime("2010/11/12", format="%Y/%m/%d")
pd.to_datetime("12-11-2010 00:00", format="%d-%m-%Y %H:%M")
For more information on the choices available when specifying the ``format``
option, see the Python `datetime documentation`_.
.. _datetime documentation: https://docs.python.org/3/library/datetime.html#strftime-and-strptime-behavior
Assembling datetime from multiple DataFrame columns
You can also pass a DataFrame of integer or string columns to assemble into a Series of Timestamps.
.. ipython:: python
df = pd.DataFrame( {"year": [2015, 2016], "month": [2, 3], "day": [4, 5], "hour": [2, 3]} ) pd.to_datetime(df)
You can pass only the columns that you need to assemble.
.. ipython:: python
pd.to_datetime(df[["year", "month", "day"]])
pd.to_datetime looks for standard designations of the datetime component in the column names, including:
year, month, dayhour, minute, second, millisecond, microsecond, nanosecondInvalid data
The default behavior, ``errors='raise'``, is to raise when unparsable:
.. ipython:: python
:okexcept:
pd.to_datetime(['2009/07/31', 'asd'], errors='raise')
Pass ``errors='coerce'`` to convert unparsable data to ``NaT`` (not a time):
.. ipython:: python
pd.to_datetime(["2009/07/31", "asd"], errors="coerce")
.. _timeseries.converting.epoch:
Epoch timestamps
pandas supports converting integer or float epoch times to Timestamp and
DatetimeIndex. The default unit is nanoseconds when no unit is specified.
However, epochs are often stored in another unit
which can be specified. These are computed from the starting point specified by the
origin parameter.
.. ipython:: python
pd.to_datetime( [1349720105, 1349806505, 1349892905, 1349979305, 1350065705], unit="s" )
pd.to_datetime( [1349720105100, 1349720105200, 1349720105300, 1349720105400, 1349720105500], unit="ms", )
.. note::
The unit parameter does not use the same strings as the format parameter
that was discussed :ref:above<timeseries.converting.format>. The
available units are listed on the documentation for :func:pandas.to_datetime.
Constructing a :class:Timestamp or :class:DatetimeIndex with an epoch timestamp
with the tz argument specified will raise a ValueError. If you have
epochs in wall time in another timezone, you can read the epochs
as timezone-naive timestamps and then localize to the appropriate timezone:
.. ipython:: python
pd.Timestamp(1262347200000000000).tz_localize("US/Pacific") pd.DatetimeIndex([1262347200000000000]).tz_localize("US/Pacific")
.. note::
Epoch times will be rounded to the nearest nanosecond.
.. warning::
Conversion of float epoch times can lead to inaccurate and unexpected results.
:ref:Python floats <python:tut-fp-issues> have about 15 digits precision in
decimal. Rounding during conversion from float to high precision Timestamp is
unavoidable. The only way to achieve exact precision is to use a fixed-width
types (e.g. an int64).
.. ipython:: python
pd.to_datetime([1490195805.433, 1490195805.433502912], unit="s")
pd.to_datetime(1490195805433502912, unit="ns")
.. seealso::
:ref:timeseries.origin
.. _timeseries.converting.epoch_inverse:
From timestamps to epoch
To invert the operation from above, namely, to convert from a ``Timestamp`` to a 'unix' epoch:
.. ipython:: python
stamps = pd.date_range("2012-10-08 18:15:05", periods=4, freq="D")
stamps
We subtract the epoch (midnight at January 1, 1970 UTC) and then floor divide by the
"unit" (1 second).
.. ipython:: python
(stamps - pd.Timestamp("1970-01-01")) // pd.Timedelta("1s")
Another common way to perform this conversion is to convert directly to an integer dtype. Note that the exact integers this produces will depend on the specific unit
or resolution of the datetime64 dtype:
.. ipython:: python
stamps.astype(np.int64)
stamps.as_unit("s").astype(np.int64)
stamps.as_unit("ns").astype(np.int64)
.. _timeseries.origin:
Using the ``origin`` parameter
Using the origin parameter, one can specify an alternative starting point for creation
of a DatetimeIndex. For example, to use 1960-01-01 as the starting date:
.. ipython:: python
pd.to_datetime([1, 2, 3], unit="D", origin=pd.Timestamp("1960-01-01"))
The default is set at origin='unix', which defaults to 1970-01-01 00:00:00.
Commonly called 'unix epoch' or POSIX time.
.. ipython:: python
pd.to_datetime([1, 2, 3], unit="D")
.. _timeseries.daterange:
To generate an index with timestamps, you can use either the DatetimeIndex or
Index constructor and pass in a list of datetime objects:
.. ipython:: python
dates = [ datetime.datetime(2012, 5, 1), datetime.datetime(2012, 5, 2), datetime.datetime(2012, 5, 3), ]
index = pd.DatetimeIndex(dates) index
index = pd.Index(dates) index
In practice this becomes very cumbersome because we often need a very long
index with a large number of timestamps. If we need timestamps on a regular
frequency, we can use the :func:date_range and :func:bdate_range functions
to create a DatetimeIndex. The default frequency for date_range is a
calendar day while the default for bdate_range is a business day:
.. ipython:: python
start = datetime.datetime(2011, 1, 1) end = datetime.datetime(2012, 1, 1)
index = pd.date_range(start, end) index
index = pd.bdate_range(start, end) index
Convenience functions like date_range and bdate_range can utilize a
variety of :ref:frequency aliases <timeseries.offset_aliases>:
.. ipython:: python
pd.date_range(start, periods=1000, freq="ME")
pd.bdate_range(start, periods=250, freq="BQS")
date_range and bdate_range make it easy to generate a range of dates
using various combinations of parameters like start, end, periods,
and freq. The start and end dates are strictly inclusive, so dates outside
of those specified will not be generated:
.. ipython:: python
pd.date_range(start, end, freq="BME")
pd.date_range(start, end, freq="W")
pd.bdate_range(end=end, periods=20)
pd.bdate_range(start=start, periods=20)
Specifying start, end, and periods will generate a range of evenly spaced
dates from start to end inclusively, with periods number of elements in the
resulting DatetimeIndex:
.. ipython:: python
pd.date_range("2018-01-01", "2018-01-05", periods=5)
pd.date_range("2018-01-01", "2018-01-05", periods=10)
.. _timeseries.custom-freq-ranges:
Custom frequency ranges
``bdate_range`` can also generate a range of custom frequency dates by using
the ``weekmask`` and ``holidays`` parameters. These parameters will only be
used if a custom frequency string is passed.
.. ipython:: python
weekmask = "Mon Wed Fri"
holidays = [datetime.datetime(2011, 1, 5), datetime.datetime(2011, 3, 14)]
pd.bdate_range(start, end, freq="C", weekmask=weekmask, holidays=holidays)
pd.bdate_range(start, end, freq="CBMS", weekmask=weekmask)
.. seealso::
:ref:`timeseries.custombusinessdays`
.. _timeseries.timestamp-limits:
Timestamp limitations
---------------------
The limits of timestamp representation depend on the chosen resolution. For
nanosecond resolution, the time span that
can be represented using a 64-bit integer is limited to approximately 584 years:
.. ipython:: python
pd.Timestamp.min
pd.Timestamp.max
When choosing second-resolution, the available range grows to ``+/- 2.9e11 years``.
Different resolutions can be converted to each other through ``as_unit``.
.. seealso::
:ref:`timeseries.oob`
.. _timeseries.datetimeindex:
Indexing
--------
One of the main uses for ``DatetimeIndex`` is as an index for pandas objects.
The ``DatetimeIndex`` class contains many time series related optimizations:
* A large range of dates for various offsets are pre-computed and cached
under the hood in order to make generating subsequent date ranges very fast
(just have to grab a slice).
* Fast shifting using the ``shift`` method on pandas objects.
* Unioning of overlapping ``DatetimeIndex`` objects with the same frequency is
very fast (important for fast data alignment).
* Quick access to date fields via properties such as ``year``, ``month``, etc.
* Regularization functions like ``snap`` and very fast ``asof`` logic.
``DatetimeIndex`` objects have all the basic functionality of regular ``Index``
objects, and a smorgasbord of advanced time series specific methods for easy
frequency processing.
.. seealso::
:ref:`Reindexing methods <basics.reindexing>`
.. note::
While pandas does not force you to have a sorted date index, some of these
methods may have unexpected or incorrect behavior if the dates are unsorted.
``DatetimeIndex`` can be used like a regular index and offers all of its
intelligent functionality like selection, slicing, etc.
.. ipython:: python
rng = pd.date_range(start, end, freq="BME")
ts = pd.Series(np.random.randn(len(rng)), index=rng)
ts.index
ts[:5].index
ts[::2].index
.. _timeseries.partialindexing:
Partial string indexing
Dates and strings that parse to timestamps can be passed as indexing parameters:
.. ipython:: python
ts["1/31/2011"]
ts[datetime.datetime(2011, 12, 25):]
ts["10/31/2011":"12/31/2011"]
To provide convenience for accessing longer time series, you can also pass in the year or year and month as strings:
.. ipython:: python
ts["2011"]
ts["2011-6"]
This type of slicing will work on a DataFrame with a DatetimeIndex as well. Since the
partial string selection is a form of label slicing, the endpoints will be included. This
would include matching times on an included date:
.. note::
Indexing DataFrame rows with a single string with getitem (e.g. frame[dtstring])
is no longer supported. Use .loc instead (e.g. frame.loc[dtstring]).
.. ipython:: python
dft = pd.DataFrame( np.random.randn(100000, 1), columns=["A"], index=pd.date_range("20130101", periods=100000, freq="min"), ) dft dft.loc["2013"]
This starts on the very first time in the month, and includes the last date and time for the month:
.. ipython:: python
dft["2013-1":"2013-2"]
This specifies a stop time that includes all of the times on the last day:
.. ipython:: python
dft["2013-1":"2013-2-28"]
This specifies an exact stop time (and is not the same as the above):
.. ipython:: python
dft["2013-1":"2013-2-28 00:00:00"]
We are stopping on the included end-point as it is part of the index:
.. ipython:: python
dft["2013-1-15":"2013-1-15 12:30:00"]
DatetimeIndex partial string indexing also works on a DataFrame with a MultiIndex:
.. ipython:: python
dft2 = pd.DataFrame( np.random.randn(20, 1), columns=["A"], index=pd.MultiIndex.from_product( [pd.date_range("20130101", periods=10, freq="12h"), ["a", "b"]] ), ) dft2 dft2.loc["2013-01-05"] idx = pd.IndexSlice dft2 = dft2.swaplevel(0, 1).sort_index() dft2.loc[idx[:, "2013-01-05"], :]
Slicing with string indexing also honors UTC offset.
.. ipython:: python
df = pd.DataFrame([0], index=pd.DatetimeIndex(["2019-01-01"], tz="US/Pacific"))
df
df["2019-01-01 12:00:00+04:00":"2019-01-01 13:00:00+04:00"]
.. _timeseries.slice_vs_exact_match:
Slice vs. exact match
The same string used as an indexing parameter can be treated either as a slice or as an exact match depending on the resolution of the index. If the string is less accurate than the index, it will be treated as a slice, otherwise as an exact match.
Consider a ``Series`` object with a minute resolution index:
.. ipython:: python
series_minute = pd.Series(
[1, 2, 3],
pd.DatetimeIndex(
["2011-12-31 23:59:00", "2012-01-01 00:00:00", "2012-01-01 00:02:00"]
),
)
series_minute.index.resolution
A timestamp string less accurate than a minute gives a ``Series`` object.
.. ipython:: python
series_minute["2011-12-31 23"]
A timestamp string with minute resolution (or more accurate), gives a scalar instead, i.e. it is not casted to a slice.
.. ipython:: python
series_minute["2011-12-31 23:59"]
series_minute["2011-12-31 23:59:00"]
If index resolution is second, then the minute-accurate timestamp gives a
``Series``.
.. ipython:: python
series_second = pd.Series(
[1, 2, 3],
pd.DatetimeIndex(
["2011-12-31 23:59:59", "2012-01-01 00:00:00", "2012-01-01 00:00:01"]
),
)
series_second.index.resolution
series_second["2011-12-31 23:59"]
If the timestamp string is treated as a slice, it can be used to index ``DataFrame`` with ``.loc[]`` as well.
.. ipython:: python
dft_minute = pd.DataFrame(
{"a": [1, 2, 3], "b": [4, 5, 6]}, index=series_minute.index
)
dft_minute.loc["2011-12-31 23"]
.. note::
As :ref:`noted above <timeseries.partialindexing>`, indexing ``DataFrame`` rows
with a single string via ``[]`` is no longer supported; use ``.loc`` instead.
.. ipython:: python
dft_minute.loc["2011-12-31 23:59"]
Note also that ``DatetimeIndex`` resolution cannot be less precise than day.
.. ipython:: python
series_monthly = pd.Series(
[1, 2, 3], pd.DatetimeIndex(["2011-12", "2012-01", "2012-02"])
)
series_monthly.index.resolution
series_monthly["2011-12"] # returns Series
Exact indexing
~~~~~~~~~~~~~~
As discussed in previous section, indexing a ``DatetimeIndex`` with a partial string depends on the "accuracy" of the period, in other words how specific the interval is in relation to the resolution of the index. In contrast, indexing with ``Timestamp`` or ``datetime`` objects is exact, because the objects have exact meaning. These also follow the semantics of *including both endpoints*.
These ``Timestamp`` and ``datetime`` objects have exact ``hours, minutes,`` and ``seconds``, even though they were not explicitly specified (they are ``0``).
.. ipython:: python
dft[datetime.datetime(2013, 1, 1): datetime.datetime(2013, 2, 28)]
With no defaults.
.. ipython:: python
dft[
datetime.datetime(2013, 1, 1, 10, 12, 0): datetime.datetime(
2013, 2, 28, 10, 12, 0
)
]
Truncating & fancy indexing
A :meth:~DataFrame.truncate convenience function is provided that is similar
to slicing. Note that truncate assumes a 0 value for any unspecified date
component in a DatetimeIndex in contrast to slicing which returns any
partially matching dates:
.. ipython:: python
rng2 = pd.date_range("2011-01-01", "2012-01-01", freq="W") ts2 = pd.Series(np.random.randn(len(rng2)), index=rng2)
ts2.truncate(before="2011-11", after="2011-12") ts2["2011-11":"2011-12"]
Even complicated fancy indexing that breaks the DatetimeIndex frequency
regularity will result in a DatetimeIndex, although frequency is lost:
.. ipython:: python
ts2.iloc[[0, 2, 6]].index
.. _timeseries.components:
There are several time/date properties that one can access from Timestamp or a collection of timestamps like a DatetimeIndex.
.. csv-table:: :header: "Property", "Description" :widths: 15, 65
year, "The year of the datetime"
month,"The month of the datetime"
day,"The days of the datetime"
hour,"The hour of the datetime"
minute,"The minutes of the datetime"
second,"The seconds of the datetime"
microsecond,"The microseconds of the datetime"
nanosecond,"The nanoseconds of the datetime"
date,"Returns datetime.date (does not contain timezone information)"
time,"Returns datetime.time (does not contain timezone information)"
timetz,"Returns datetime.time as local time with timezone information"
dayofyear,"The ordinal day of year"
day_of_year,"The ordinal day of year"
dayofweek,"The number of the day of the week with Monday=0, Sunday=6"
day_of_week,"The number of the day of the week with Monday=0, Sunday=6"
weekday,"The number of the day of the week with Monday=0, Sunday=6"
quarter,"Quarter of the date: Jan-Mar = 1, Apr-Jun = 2, etc."
days_in_month,"The number of days in the month of the datetime"
is_month_start,"Logical indicating if first day of month (defined by frequency)"
is_month_end,"Logical indicating if last day of month (defined by frequency)"
is_quarter_start,"Logical indicating if first day of quarter (defined by frequency)"
is_quarter_end,"Logical indicating if last day of quarter (defined by frequency)"
is_year_start,"Logical indicating if first day of year (defined by frequency)"
is_year_end,"Logical indicating if last day of year (defined by frequency)"
is_leap_year,"Logical indicating if the date belongs to a leap year"
.. note::
You can use DatetimeIndex.isocalendar().week to access week of year date information.
Furthermore, if you have a Series with datetimelike values, then you can
access these properties via the .dt accessor, as detailed in the section
on :ref:.dt accessors<basics.dt_accessors>.
You may obtain the year, week and day components of the ISO year from the ISO 8601 standard:
.. ipython:: python
idx = pd.date_range(start="2019-12-29", freq="D", periods=4) idx.isocalendar() idx.to_series().dt.isocalendar()
.. _timeseries.offsets:
In the preceding examples, frequency strings (e.g. 'D') were used to specify
a frequency that defined:
DatetimeIndex were spaced when using :meth:date_rangePeriod or :class:PeriodIndexThese frequency strings map to a :class:DateOffset object and its subclasses. A :class:DateOffset
is similar to a :class:Timedelta that represents a duration of time but follows specific calendar duration rules.
For example, a :class:Timedelta day will always increment datetimes by 24 hours, while a :class:DateOffset day
will increment datetimes to the same time the next day whether a day represents 23, 24 or 25 hours due to daylight
savings time. However, all :class:DateOffset subclasses that are an hour or smaller
(Hour, Minute, Second, Milli, Micro, Nano) behave like
:class:Timedelta and respect absolute time.
The basic :class:DateOffset acts similar to dateutil.relativedelta (relativedelta documentation_)
that shifts a date time by the corresponding calendar duration specified. The
arithmetic operator (+) can be used to perform the shift.
.. ipython:: python
ts = pd.Timestamp("2016-10-30 00:00:00", tz="Europe/Helsinki")
ts + pd.Timedelta(days=1)
ts + pd.DateOffset(days=1) friday = pd.Timestamp("2018-01-05") friday.day_name()
two_business_days = 2 * pd.offsets.BDay() friday + two_business_days (friday + two_business_days).day_name()
Most DateOffsets have associated frequencies strings, or offset aliases, that can be passed
into freq keyword arguments. The available date offsets and associated frequency strings can be found below:
.. csv-table:: :header: "Date Offset", "Frequency String", "Description" :widths: 15, 15, 65
:class:`~pandas.tseries.offsets.DateOffset`, None, "Generic offset class, defaults to absolute 24 hours"
:class:`~pandas.tseries.offsets.BDay` or :class:`~pandas.tseries.offsets.BusinessDay`, ``'B'``,"business day (weekday)"
:class:`~pandas.tseries.offsets.CDay` or :class:`~pandas.tseries.offsets.CustomBusinessDay`, ``'C'``, "custom business day"
:class:`~pandas.tseries.offsets.Week`, ``'W'``, "one week, optionally anchored on a day of the week"
:class:`~pandas.tseries.offsets.WeekOfMonth`, ``'WOM'``, "the x-th day of the y-th week of each month"
:class:`~pandas.tseries.offsets.LastWeekOfMonth`, ``'LWOM'``, "the x-th day of the last week of each month"
:class:`~pandas.tseries.offsets.MonthEnd`, ``'ME'``, "calendar month end"
:class:`~pandas.tseries.offsets.MonthBegin`, ``'MS'``, "calendar month begin"
:class:`~pandas.tseries.offsets.BMonthEnd` or :class:`~pandas.tseries.offsets.BusinessMonthEnd`, ``'BME'``, "business month end"
:class:`~pandas.tseries.offsets.BMonthBegin` or :class:`~pandas.tseries.offsets.BusinessMonthBegin`, ``'BMS'``, "business month begin"
:class:`~pandas.tseries.offsets.CBMonthEnd` or :class:`~pandas.tseries.offsets.CustomBusinessMonthEnd`, ``'CBME'``, "custom business month end"
:class:`~pandas.tseries.offsets.CBMonthBegin` or :class:`~pandas.tseries.offsets.CustomBusinessMonthBegin`, ``'CBMS'``, "custom business month begin"
:class:`~pandas.tseries.offsets.SemiMonthEnd`, ``'SME'``, "15th (or other day_of_month) and calendar month end"
:class:`~pandas.tseries.offsets.SemiMonthBegin`, ``'SMS'``, "15th (or other day_of_month) and calendar month begin"
:class:`~pandas.tseries.offsets.QuarterEnd`, ``'QE'``, "calendar quarter end"
:class:`~pandas.tseries.offsets.QuarterBegin`, ``'QS'``, "calendar quarter begin"
:class:`~pandas.tseries.offsets.BQuarterEnd`, ``'BQE``, "business quarter end"
:class:`~pandas.tseries.offsets.BQuarterBegin`, ``'BQS'``, "business quarter begin"
:class:`~pandas.tseries.offsets.FY5253Quarter`, ``'REQ'``, "retail (aka 52-53 week) quarter"
:class:`~pandas.tseries.offsets.HalfYearEnd`, ``'HYE'``, "calendar half year end"
:class:`~pandas.tseries.offsets.HalfYearBegin`, ``'HYS'``, "calendar half year begin"
:class:`~pandas.tseries.offsets.BHalfYearEnd`, ``'BHYE``, "business half year end"
:class:`~pandas.tseries.offsets.BHalfYearBegin`, ``'BHYS'``, "business half year begin"
:class:`~pandas.tseries.offsets.YearEnd`, ``'YE'``, "calendar year end"
:class:`~pandas.tseries.offsets.YearBegin`, ``'YS'`` or ``'BYS'``,"calendar year begin"
:class:`~pandas.tseries.offsets.BYearEnd`, ``'BYE'``, "business year end"
:class:`~pandas.tseries.offsets.BYearBegin`, ``'BYS'``, "business year begin"
:class:`~pandas.tseries.offsets.FY5253`, ``'RE'``, "retail (aka 52-53 week) year"
:class:`~pandas.tseries.offsets.Easter`, None, "Easter holiday"
:class:`~pandas.tseries.offsets.BusinessHour`, ``'bh'``, "business hour"
:class:`~pandas.tseries.offsets.CustomBusinessHour`, ``'cbh'``, "custom business hour"
:class:`~pandas.tseries.offsets.Day`, ``'D'``, "one calendar day"
:class:`~pandas.tseries.offsets.Hour`, ``'h'``, "one hour"
:class:`~pandas.tseries.offsets.Minute`, ``'min'``,"one minute"
:class:`~pandas.tseries.offsets.Second`, ``'s'``, "one second"
:class:`~pandas.tseries.offsets.Milli`, ``'ms'``, "one millisecond"
:class:`~pandas.tseries.offsets.Micro`, ``'us'``, "one microsecond"
:class:`~pandas.tseries.offsets.Nano`, ``'ns'``, "one nanosecond"
DateOffsets additionally have :meth:rollforward and :meth:rollback
methods for moving a date forward or backward respectively to a valid offset
date relative to the offset. For example, business offsets will roll dates
that land on the weekends (Saturday and Sunday) forward to Monday since
business offsets operate on the weekdays.
.. ipython:: python
ts = pd.Timestamp("2018-01-06 00:00:00") ts.day_name()
offset = pd.offsets.BusinessHour(start="09:00")
offset.rollforward(ts)
ts + offset
These operations preserve time (hour, minute, etc) information by default.
To reset time to midnight, use :meth:normalize before or after applying
the operation (depending on whether you want the time information included
in the operation).
.. ipython:: python
ts = pd.Timestamp("2014-01-01 09:00") day = pd.offsets.Day() day + ts (day + ts).normalize()
ts = pd.Timestamp("2014-01-01 22:00") hour = pd.offsets.Hour() hour + ts (hour + ts).normalize() (hour + pd.Timestamp("2014-01-01 23:30")).normalize()
.. _relativedelta documentation: https://dateutil.readthedocs.io/en/stable/relativedelta.html
Parametric offsets
Some of the offsets can be "parameterized" when created to result in different
behaviors. For example, the ``Week`` offset for generating weekly data accepts a
``weekday`` parameter which results in the generated dates always lying on a
particular day of the week:
.. ipython:: python
d = datetime.datetime(2008, 8, 18, 9, 0)
d
d + pd.offsets.Week()
d + pd.offsets.Week(weekday=4)
(d + pd.offsets.Week(weekday=4)).weekday()
d - pd.offsets.Week()
The ``normalize`` option will be effective for addition and subtraction.
.. ipython:: python
d + pd.offsets.Week(normalize=True)
d - pd.offsets.Week(normalize=True)
Another example is parameterizing ``YearEnd`` with the specific ending month:
.. ipython:: python
d + pd.offsets.YearEnd()
d + pd.offsets.YearEnd(month=6)
.. _timeseries.offsetseries:
Using offsets with ``Series`` / ``DatetimeIndex``
Offsets can be used with either a Series or DatetimeIndex to
apply the offset to each element.
.. ipython:: python
rng = pd.date_range("2012-01-01", "2012-01-03") s = pd.Series(rng) rng rng + pd.DateOffset(months=2) s + pd.DateOffset(months=2) s - pd.DateOffset(months=2)
If the offset class maps directly to a Timedelta (Hour,
Minute, Second, Micro, Milli, Nano) it can be
used exactly like a Timedelta - see the
:ref:Timedelta section<timedeltas.operations> for more examples.
.. ipython:: python
s - pd.offsets.Day(2) td = s - pd.Series(pd.date_range("2011-12-29", "2011-12-31")) td td + pd.offsets.Minute(15)
Note that some offsets (such as BQuarterEnd) do not have a
vectorized implementation. They can still be used but may
calculate significantly slower and will show a PerformanceWarning
.. ipython:: python :okwarning:
rng + pd.offsets.BQuarterEnd()
.. _timeseries.custombusinessdays:
Custom business days
The ``CDay`` or ``CustomBusinessDay`` class provides a parametric
``BusinessDay`` class which can be used to create customized business day
calendars which account for local holidays and local weekend conventions.
As an interesting example, let's look at Egypt where a Friday-Saturday weekend is observed.
.. ipython:: python
weekmask_egypt = "Sun Mon Tue Wed Thu"
# They also observe International Workers' Day so let's
# add that for a couple of years
holidays = [
"2012-05-01",
datetime.datetime(2013, 5, 1),
np.datetime64("2014-05-01"),
]
bday_egypt = pd.offsets.CustomBusinessDay(
holidays=holidays,
weekmask=weekmask_egypt,
)
dt = datetime.datetime(2013, 4, 30)
dt + 2 * bday_egypt
Let's map to the weekday names:
.. ipython:: python
dts = pd.date_range(dt, periods=5, freq=bday_egypt)
pd.Series(dts.weekday, dts).map(pd.Series("Mon Tue Wed Thu Fri Sat Sun".split()))
Holiday calendars can be used to provide the list of holidays. See the
:ref:`holiday calendar<timeseries.holiday>` section for more information.
.. ipython:: python
from pandas.tseries.holiday import USFederalHolidayCalendar
bday_us = pd.offsets.CustomBusinessDay(calendar=USFederalHolidayCalendar())
# Friday before MLK Day
dt = datetime.datetime(2014, 1, 17)
# Tuesday after MLK Day (Monday is skipped because it's a holiday)
dt + bday_us
Monthly offsets that respect a certain holiday calendar can be defined
in the usual way.
.. ipython:: python
bmth_us = pd.offsets.CustomBusinessMonthBegin(calendar=USFederalHolidayCalendar())
# Skip new years
dt = datetime.datetime(2013, 12, 17)
dt + bmth_us
# Define date index with custom offset
pd.date_range(start="20100101", end="20120101", freq=bmth_us)
.. note::
The frequency string 'C' is used to indicate that a CustomBusinessDay
DateOffset is used, it is important to note that since CustomBusinessDay is
a parameterised type, instances of CustomBusinessDay may differ and this is
not detectable from the 'C' frequency string. The user therefore needs to
ensure that the 'C' frequency string is used consistently within the user's
application.
.. _timeseries.businesshour:
Business hour
~~~~~~~~~~~~~
The ``BusinessHour`` class provides a business hour representation on ``BusinessDay``,
allowing to use specific start and end times.
By default, ``BusinessHour`` uses 9:00 - 17:00 as business hours.
Adding ``BusinessHour`` will increment ``Timestamp`` by hourly frequency.
If target ``Timestamp`` is out of business hours, move to the next business hour
then increment it. If the result exceeds the business hours end, the remaining
hours are added to the next business day.
.. ipython:: python
bh = pd.offsets.BusinessHour()
bh
# 2014-08-01 is Friday
pd.Timestamp("2014-08-01 10:00").weekday()
pd.Timestamp("2014-08-01 10:00") + bh
# Below example is the same as: pd.Timestamp('2014-08-01 09:00') + bh
pd.Timestamp("2014-08-01 08:00") + bh
# If the results is on the end time, move to the next business day
pd.Timestamp("2014-08-01 16:00") + bh
# Remainings are added to the next day
pd.Timestamp("2014-08-01 16:30") + bh
# Adding 2 business hours
pd.Timestamp("2014-08-01 10:00") + pd.offsets.BusinessHour(2)
# Subtracting 3 business hours
pd.Timestamp("2014-08-01 10:00") + pd.offsets.BusinessHour(-3)
You can also specify ``start`` and ``end`` time by keywords. The argument must
be a ``str`` with an ``hour:minute`` representation or a ``datetime.time``
instance. Specifying seconds, microseconds and nanoseconds as business hour
results in ``ValueError``.
.. ipython:: python
bh = pd.offsets.BusinessHour(start="11:00", end=datetime.time(20, 0))
bh
pd.Timestamp("2014-08-01 13:00") + bh
pd.Timestamp("2014-08-01 09:00") + bh
pd.Timestamp("2014-08-01 18:00") + bh
Passing ``start`` time later than ``end`` represents midnight business hour.
In this case, business hour exceeds midnight and overlap to the next day.
Valid business hours are distinguished by whether it started from valid ``BusinessDay``.
.. ipython:: python
bh = pd.offsets.BusinessHour(start="17:00", end="09:00")
bh
pd.Timestamp("2014-08-01 17:00") + bh
pd.Timestamp("2014-08-01 23:00") + bh
# Although 2014-08-02 is Saturday,
# it is valid because it starts from 08-01 (Friday).
pd.Timestamp("2014-08-02 04:00") + bh
# Although 2014-08-04 is Monday,
# it is out of business hours because it starts from 08-03 (Sunday).
pd.Timestamp("2014-08-04 04:00") + bh
Applying ``BusinessHour.rollforward`` and ``rollback`` to out of business hours results in
the next business hour start or previous day's end. Different from other offsets, ``BusinessHour.rollforward``
may output different results from ``apply`` by definition.
This is because one day's business hour end is equal to next day's business hour start. For example,
under the default business hours (9:00 - 17:00), there is no gap (0 minutes) between ``2014-08-01 17:00`` and
``2014-08-04 09:00``.
.. ipython:: python
# This adjusts a Timestamp to business hour edge
pd.offsets.BusinessHour().rollback(pd.Timestamp("2014-08-02 15:00"))
pd.offsets.BusinessHour().rollforward(pd.Timestamp("2014-08-02 15:00"))
# It is the same as BusinessHour() + pd.Timestamp('2014-08-01 17:00').
# And it is the same as BusinessHour() + pd.Timestamp('2014-08-04 09:00')
pd.offsets.BusinessHour() + pd.Timestamp("2014-08-02 15:00")
# BusinessDay results (for reference)
pd.offsets.BusinessHour().rollforward(pd.Timestamp("2014-08-02"))
# It is the same as BusinessDay() + pd.Timestamp('2014-08-01')
# The result is the same as rollworward because BusinessDay never overlap.
pd.offsets.BusinessHour() + pd.Timestamp("2014-08-02")
``BusinessHour`` regards Saturday and Sunday as holidays. To use arbitrary
holidays, you can use ``CustomBusinessHour`` offset, as explained in the
following subsection.
.. _timeseries.custombusinesshour:
Custom business hour
The CustomBusinessHour is a mixture of BusinessHour and CustomBusinessDay which
allows you to specify arbitrary holidays. CustomBusinessHour works as the same
as BusinessHour except that it skips specified custom holidays.
.. ipython:: python
from pandas.tseries.holiday import USFederalHolidayCalendar
bhour_us = pd.offsets.CustomBusinessHour(calendar=USFederalHolidayCalendar())
# Friday before MLK Day
dt = datetime.datetime(2014, 1, 17, 15)
dt + bhour_us
# Tuesday after MLK Day (Monday is skipped because it's a holiday)
dt + bhour_us * 2
You can use keyword arguments supported by either BusinessHour and CustomBusinessDay.
.. ipython:: python
bhour_mon = pd.offsets.CustomBusinessHour(start="10:00", weekmask="Tue Wed Thu Fri")
# Monday is skipped because it's a holiday, business hour starts from 10:00
dt + bhour_mon * 2
.. _timeseries.offset_aliases:
Offset aliases
A number of string aliases are given to useful common time series
frequencies. We will refer to these aliases as *offset aliases*.
.. csv-table::
:header: "Alias", "Description"
:widths: 15, 100
"B", "business day frequency"
"C", "custom business day frequency"
"D", "calendar day frequency"
"W", "weekly frequency"
"ME", "month end frequency"
"SME", "semi-month end frequency (15th and end of month)"
"BME", "business month end frequency"
"CBME", "custom business month end frequency"
"MS", "month start frequency"
"SMS", "semi-month start frequency (1st and 15th)"
"BMS", "business month start frequency"
"CBMS", "custom business month start frequency"
"QE", "quarter end frequency"
"BQE", "business quarter end frequency"
"QS", "quarter start frequency"
"BQS", "business quarter start frequency"
"YE", "year end frequency"
"BYE", "business year end frequency"
"YS", "year start frequency"
"BYS", "business year start frequency"
"h", "hourly frequency"
"bh", "business hour frequency"
"cbh", "custom business hour frequency"
"min", "minutely frequency"
"s", "secondly frequency"
"ms", "milliseconds"
"us", "microseconds"
"ns", "nanoseconds"
.. note::
When using the offset aliases above, it should be noted that functions
such as :func:`date_range`, :func:`bdate_range`, will only return
timestamps that are in the interval defined by ``start_date`` and
``end_date``. If the ``start_date`` does not correspond to the frequency,
the returned timestamps will start at the next valid timestamp, same for
``end_date``, the returned timestamps will stop at the previous valid
timestamp.
For example, for the offset ``MS``, if the ``start_date`` is not the first
of the month, the returned timestamps will start with the first day of the
next month. If ``end_date`` is not the first day of a month, the last
returned timestamp will be the first day of the corresponding month.
.. ipython:: python
dates_lst_1 = pd.date_range("2020-01-06", "2020-04-03", freq="MS")
dates_lst_1
dates_lst_2 = pd.date_range("2020-01-01", "2020-04-01", freq="MS")
dates_lst_2
We can see in the above example :func:`date_range` and
:func:`bdate_range` will only return the valid timestamps between the
``start_date`` and ``end_date``. If these are not valid timestamps for the
given frequency it will roll to the next value for ``start_date``
(respectively previous for the ``end_date``)
.. _timeseries.period_aliases:
Period aliases
A number of string aliases are given to useful common time series frequencies. We will refer to these aliases as period aliases.
.. csv-table:: :header: "Alias", "Description" :widths: 15, 100
"B", "business day frequency"
"D", "calendar day frequency"
"W", "weekly frequency"
"M", "monthly frequency"
"Q", "quarterly frequency"
"Y", "yearly frequency"
"h", "hourly frequency"
"min", "minutely frequency"
"s", "secondly frequency"
"ms", "milliseconds"
"us", "microseconds"
"ns", "nanoseconds"
Combining aliases
As we have seen previously, the alias and the offset instance are fungible in
most functions:
.. ipython:: python
pd.date_range(start, periods=5, freq="B")
pd.date_range(start, periods=5, freq=pd.offsets.BDay())
You can combine together day and intraday offsets:
.. ipython:: python
pd.date_range(start, periods=10, freq="2h20min")
pd.date_range(start, periods=10, freq="1D10us")
Anchored offsets
~~~~~~~~~~~~~~~~
For some frequencies you can specify an anchoring suffix:
.. csv-table::
:header: "Alias", "Description"
:widths: 15, 100
"W\-SUN", "weekly frequency (Sundays). Same as 'W'"
"W\-MON", "weekly frequency (Mondays)"
"W\-TUE", "weekly frequency (Tuesdays)"
"W\-WED", "weekly frequency (Wednesdays)"
"W\-THU", "weekly frequency (Thursdays)"
"W\-FRI", "weekly frequency (Fridays)"
"W\-SAT", "weekly frequency (Saturdays)"
"(B)Q(E)(S)\-DEC", "quarterly frequency, year ends in December. Same as 'QE'"
"(B)Q(E)(S)\-JAN", "quarterly frequency, year ends in January"
"(B)Q(E)(S)\-FEB", "quarterly frequency, year ends in February"
"(B)Q(E)(S)\-MAR", "quarterly frequency, year ends in March"
"(B)Q(E)(S)\-APR", "quarterly frequency, year ends in April"
"(B)Q(E)(S)\-MAY", "quarterly frequency, year ends in May"
"(B)Q(E)(S)\-JUN", "quarterly frequency, year ends in June"
"(B)Q(E)(S)\-JUL", "quarterly frequency, year ends in July"
"(B)Q(E)(S)\-AUG", "quarterly frequency, year ends in August"
"(B)Q(E)(S)\-SEP", "quarterly frequency, year ends in September"
"(B)Q(E)(S)\-OCT", "quarterly frequency, year ends in October"
"(B)Q(E)(S)\-NOV", "quarterly frequency, year ends in November"
"(B)Y(E)(S)\-DEC", "annual frequency, anchored end of December. Same as 'YE'"
"(B)Y(E)(S)\-JAN", "annual frequency, anchored end of January"
"(B)Y(E)(S)\-FEB", "annual frequency, anchored end of February"
"(B)Y(E)(S)\-MAR", "annual frequency, anchored end of March"
"(B)Y(E)(S)\-APR", "annual frequency, anchored end of April"
"(B)Y(E)(S)\-MAY", "annual frequency, anchored end of May"
"(B)Y(E)(S)\-JUN", "annual frequency, anchored end of June"
"(B)Y(E)(S)\-JUL", "annual frequency, anchored end of July"
"(B)Y(E)(S)\-AUG", "annual frequency, anchored end of August"
"(B)Y(E)(S)\-SEP", "annual frequency, anchored end of September"
"(B)Y(E)(S)\-OCT", "annual frequency, anchored end of October"
"(B)Y(E)(S)\-NOV", "annual frequency, anchored end of November"
These can be used as arguments to ``date_range``, ``bdate_range``, constructors
for ``DatetimeIndex``, as well as various other timeseries-related functions
in pandas.
Anchored offset semantics
For those offsets that are anchored to the start or end of specific
frequency (MonthEnd, MonthBegin, WeekEnd, etc), the following
rules apply to rolling forward and backwards.
When n is not 0, if the given date is not on an anchor point, it snapped to the next(previous)
anchor point, and moved |n|-1 additional steps forwards or backwards.
.. ipython:: python
pd.Timestamp("2014-01-02") + pd.offsets.MonthBegin(n=1) pd.Timestamp("2014-01-02") + pd.offsets.MonthEnd(n=1)
pd.Timestamp("2014-01-02") - pd.offsets.MonthBegin(n=1) pd.Timestamp("2014-01-02") - pd.offsets.MonthEnd(n=1)
pd.Timestamp("2014-01-02") + pd.offsets.MonthBegin(n=4) pd.Timestamp("2014-01-02") - pd.offsets.MonthBegin(n=4)
If the given date is on an anchor point, it is moved |n| points forwards
or backwards.
.. ipython:: python
pd.Timestamp("2014-01-01") + pd.offsets.MonthBegin(n=1) pd.Timestamp("2014-01-31") + pd.offsets.MonthEnd(n=1)
pd.Timestamp("2014-01-01") - pd.offsets.MonthBegin(n=1) pd.Timestamp("2014-01-31") - pd.offsets.MonthEnd(n=1)
pd.Timestamp("2014-01-01") + pd.offsets.MonthBegin(n=4) pd.Timestamp("2014-01-31") - pd.offsets.MonthBegin(n=4)
For the case when n=0, the date is not moved if on an anchor point, otherwise
it is rolled forward to the next anchor point.
.. ipython:: python
pd.Timestamp("2014-01-02") + pd.offsets.MonthBegin(n=0) pd.Timestamp("2014-01-02") + pd.offsets.MonthEnd(n=0)
pd.Timestamp("2014-01-01") + pd.offsets.MonthBegin(n=0) pd.Timestamp("2014-01-31") + pd.offsets.MonthEnd(n=0)
.. _timeseries.holiday:
Holidays / holiday calendars
Holidays and calendars provide a simple way to define holiday rules to be used
with ``CustomBusinessDay`` or in other analysis that requires a predefined
set of holidays. The ``AbstractHolidayCalendar`` class provides all the necessary
methods to return a list of holidays and only ``rules`` need to be defined
in a specific holiday calendar class. Furthermore, the ``start_date`` and ``end_date``
class attributes determine over what date range holidays are generated. These
should be overwritten on the ``AbstractHolidayCalendar`` class to have the range
apply to all calendar subclasses. ``USFederalHolidayCalendar`` is the
only calendar that exists and primarily serves as an example for developing
other calendars.
For holidays that occur on fixed dates (e.g., US Memorial Day or July 4th) an
observance rule determines when that holiday is observed if it falls on a weekend
or some other non-observed day. Defined observance rules are:
.. csv-table::
:header: "Rule", "Description"
:widths: 15, 70
"next_workday", "move Saturday and Sunday to Monday"
"previous_workday", "move Saturday and Sunday to Friday"
"nearest_workday", "move Saturday to Friday and Sunday to Monday"
"before_nearest_workday", "apply ``nearest_workday`` and then move to previous workday before that day"
"after_nearest_workday", "apply ``nearest_workday`` and then move to next workday after that day"
"sunday_to_monday", "move Sunday to following Monday"
"next_monday_or_tuesday", "move Saturday to Monday and Sunday/Monday to Tuesday"
"previous_friday", "move Saturday and Sunday to previous Friday"
"next_monday", "move Saturday and Sunday to following Monday"
"weekend_to_monday", "same as ``next_monday``"
An example of how holidays and holiday calendars are defined:
.. ipython:: python
from pandas.tseries.holiday import (
Holiday,
USMemorialDay,
AbstractHolidayCalendar,
nearest_workday,
MO,
)
class ExampleCalendar(AbstractHolidayCalendar):
rules = [
USMemorialDay,
Holiday("July 4th", month=7, day=4, observance=nearest_workday),
Holiday(
"Columbus Day",
month=10,
day=1,
offset=pd.DateOffset(weekday=MO(2)),
),
]
cal = ExampleCalendar()
cal.holidays(datetime.datetime(2012, 1, 1), datetime.datetime(2012, 12, 31))
:hint:
**weekday=MO(2)** is same as **2 * Week(weekday=2)**
Using this calendar, creating an index or doing offset arithmetic skips weekends
and holidays (i.e., Memorial Day/July 4th). For example, the below defines
a custom business day offset using the ``ExampleCalendar``. Like any other offset,
it can be used to create a ``DatetimeIndex`` or added to ``datetime``
or ``Timestamp`` objects.
.. ipython:: python
pd.date_range(
start="7/1/2012", end="7/10/2012", freq=pd.offsets.CDay(calendar=cal)
).to_pydatetime()
offset = pd.offsets.CustomBusinessDay(calendar=cal)
datetime.datetime(2012, 5, 25) + offset
datetime.datetime(2012, 7, 3) + offset
datetime.datetime(2012, 7, 3) + 2 * offset
datetime.datetime(2012, 7, 6) + offset
Ranges are defined by the ``start_date`` and ``end_date`` class attributes
of ``AbstractHolidayCalendar``. The defaults are shown below.
.. ipython:: python
AbstractHolidayCalendar.start_date
AbstractHolidayCalendar.end_date
These dates can be overwritten by setting the attributes as
datetime/Timestamp/string.
.. ipython:: python
AbstractHolidayCalendar.start_date = datetime.datetime(2012, 1, 1)
AbstractHolidayCalendar.end_date = datetime.datetime(2012, 12, 31)
cal.holidays()
Every calendar class is accessible by name using the ``get_calendar`` function
which returns a holiday class instance. Any imported calendar class will
automatically be available by this function. Also, ``HolidayCalendarFactory``
provides an easy interface to create calendars that are combinations of calendars
or calendars with additional rules.
.. ipython:: python
from pandas.tseries.holiday import get_calendar, HolidayCalendarFactory, USLaborDay
cal = get_calendar("ExampleCalendar")
cal.rules
new_cal = HolidayCalendarFactory("NewExampleCalendar", cal, USLaborDay)
new_cal.rules
.. _timeseries.advanced_datetime:
Time Series-related instance methods
------------------------------------
Shifting / lagging
~~~~~~~~~~~~~~~~~~
One may want to *shift* or *lag* the values in a time series back and forward in
time. The method for this is :meth:`~Series.shift`, which is available on all of
the pandas objects.
.. ipython:: python
ts = pd.Series(range(len(rng)), index=rng)
ts = ts[:5]
ts.shift(1)
The ``shift`` method accepts a ``freq`` argument which can accept a
``DateOffset`` class or other ``timedelta``-like object or also an
:ref:`offset alias <timeseries.offset_aliases>`.
When ``freq`` is specified, ``shift`` method changes all the dates in the index
rather than changing the alignment of the data and the index:
.. ipython:: python
ts.shift(5, freq="D")
ts.shift(5, freq=pd.offsets.BDay())
ts.shift(5, freq="BME")
Note that with when ``freq`` is specified, the leading entry is no longer NaN
because the data is not being realigned.
Frequency conversion
~~~~~~~~~~~~~~~~~~~~
The primary function for changing frequencies is the :meth:`~Series.asfreq`
method. For a ``DatetimeIndex``, this is basically just a thin, but convenient
wrapper around :meth:`~Series.reindex` which generates a ``date_range`` and
calls ``reindex``.
.. ipython:: python
dr = pd.date_range("1/1/2010", periods=3, freq=3 * pd.offsets.BDay())
ts = pd.Series(np.random.randn(3), index=dr)
ts
ts.asfreq(pd.offsets.BDay())
``asfreq`` provides a further convenience so you can specify an interpolation
method for any gaps that may appear after the frequency conversion.
.. ipython:: python
ts.asfreq(pd.offsets.BDay(), method="pad")
Filling forward / backward
~~~~~~~~~~~~~~~~~~~~~~~~~~
Related to ``asfreq`` and ``reindex`` is :meth:`~Series.fillna`, which is
documented in the :ref:`missing data section <missing_data.fillna>`.
Converting to Python datetimes
DatetimeIndex can be converted to an array of Python native
:py:class:datetime.datetime objects using the to_pydatetime method.
.. _timeseries.resampling:
pandas has a simple, powerful, and efficient functionality for performing resampling operations during frequency conversion (e.g., converting secondly data into 5-minutely data). This is extremely common in, but not limited to, financial applications.
:meth:~Series.resample is a time-based groupby, followed by a reduction method
on each of its groups. See some :ref:cookbook examples <cookbook.resample> for
some advanced strategies.
The resample() method can be used directly from DataFrameGroupBy objects,
see the :ref:groupby docs <groupby.transform.window_resample>.
Basics
.. ipython:: python
rng = pd.date_range("1/1/2012", periods=100, freq="s")
ts = pd.Series(np.random.randint(0, 500, len(rng)), index=rng)
ts.resample("5Min").sum()
The ``resample`` function is very flexible and allows you to specify many
different parameters to control the frequency conversion and resampling
operation.
Any built-in method available via :ref:`GroupBy <api.groupby>` is available as
a method of the returned object, including ``sum``, ``mean``, ``std``, ``sem``,
``max``, ``min``, ``median``, ``first``, ``last``, ``ohlc``:
.. ipython:: python
ts.resample("5Min").mean()
ts.resample("5Min").ohlc()
ts.resample("5Min").max()
For downsampling, ``closed`` can be set to 'left' or 'right' to specify which
end of the interval is closed:
.. ipython:: python
ts.resample("5Min", closed="right").mean()
ts.resample("5Min", closed="left").mean()
Parameters like ``label`` are used to manipulate the resulting labels.
``label`` specifies whether the result is labeled with the beginning or
the end of the interval.
.. ipython:: python
ts.resample("5Min").mean() # by default label='left'
ts.resample("5Min", label="left").mean()
.. warning::
The default values for ``label`` and ``closed`` is '**left**' for all
frequency offsets except for 'ME', 'YE', 'QE', 'BME', 'BYE', 'BQE', and 'W'
which all have a default of 'right'.
This might unintendedly lead to looking ahead, where the value for a later
time is pulled back to a previous time as in the following example with
the :class:`~pandas.tseries.offsets.BusinessDay` frequency:
.. ipython:: python
s = pd.date_range("2000-01-01", "2000-01-05").to_series()
s.iloc[2] = pd.NaT
s.dt.day_name()
# default: label='left', closed='left'
s.resample("B").last().dt.day_name()
Notice how the value for Sunday got pulled back to the previous Friday.
To get the behavior where the value for Sunday is pushed to Monday, use
instead
.. ipython:: python
s.resample("B", label="right", closed="right").last().dt.day_name()
The ``axis`` parameter can be set to 0 or 1 and allows you to resample the
specified axis for a ``DataFrame``.
``kind`` can be set to 'timestamp' or 'period' to convert the resulting index
to/from timestamp and time span representations. By default ``resample``
retains the input representation.
``convention`` can be set to 'start' or 'end' when resampling period data
(detail below). It specifies how low frequency periods are converted to higher
frequency periods.
Upsampling
For upsampling, you can specify a way to upsample and the limit parameter to interpolate over the gaps that are created:
.. ipython:: python
ts[:2].resample("250ms").asfreq()
ts[:2].resample("250ms").ffill()
ts[:2].resample("250ms").ffill(limit=2)
Sparse resampling
Sparse timeseries are the ones where you have a lot fewer points relative
to the amount of time you are looking to resample. Naively upsampling a sparse
series can potentially generate lots of intermediate values. When you don't want
to use a method to fill these values, e.g. ``fill_method`` is ``None``, then
intermediate values will be filled with ``NaN``.
Since ``resample`` is a time-based groupby, the following is a method to efficiently
resample only the groups that are not all ``NaN``.
.. ipython:: python
rng = pd.date_range("2014-1-1", periods=100, freq="D") + pd.Timedelta("1s")
ts = pd.Series(range(100), index=rng)
If we want to resample to the full range of the series:
.. ipython:: python
ts.resample("3min").sum()
We can instead only resample those groups where we have points as follows:
.. ipython:: python
from functools import partial
from pandas.tseries.frequencies import to_offset
def round(t, freq):
# round a Timestamp to a specified freq
freq = to_offset(freq)
td = pd.Timedelta(freq)
return pd.Timestamp((t.value // td.value) * td.value)
ts.groupby(partial(round, freq="3min")).sum()
.. _timeseries.aggregate:
Aggregation
~~~~~~~~~~~
The ``resample()`` method returns a ``pandas.api.typing.Resampler`` instance. Similar to
the :ref:`aggregating API <basics.aggregate>`, :ref:`groupby API <groupby.aggregate>`,
and the :ref:`window API <window.overview>`, a ``Resampler`` can be selectively resampled.
Resampling a ``DataFrame``, the default will be to act on all columns with the same function.
.. ipython:: python
df = pd.DataFrame(
np.random.randn(1000, 3),
index=pd.date_range("1/1/2012", freq="s", periods=1000),
columns=["A", "B", "C"],
)
r = df.resample("3min")
r.mean()
We can select a specific column or columns using standard getitem.
.. ipython:: python
r["A"].mean()
r[["A", "B"]].mean()
You can pass a list or dict of functions to do aggregation with, outputting a ``DataFrame``:
.. ipython:: python
r["A"].agg(["sum", "mean", "std"])
On a resampled ``DataFrame``, you can pass a list of functions to apply to each
column, which produces an aggregated result with a hierarchical index:
.. ipython:: python
r.agg(["sum", "mean"])
By passing a dict to ``aggregate`` you can apply a different aggregation to the
columns of a ``DataFrame``:
.. ipython:: python
:okexcept:
r.agg({"A": "sum", "B": lambda x: np.std(x, ddof=1)})
The function names can also be strings. In order for a string to be valid it
must be implemented on the resampled object:
.. ipython:: python
r.agg({"A": "sum", "B": "std"})
Furthermore, you can also specify multiple aggregation functions for each column separately.
.. ipython:: python
r.agg({"A": ["sum", "std"], "B": ["mean", "std"]})
If a ``DataFrame`` does not have a datetimelike index, but instead you want
to resample based on datetimelike column in the frame, it can passed to the
``on`` keyword.
.. ipython:: python
df = pd.DataFrame(
{"date": pd.date_range("2015-01-01", freq="W", periods=5), "a": np.arange(5)},
index=pd.MultiIndex.from_arrays(
[[1, 2, 3, 4, 5], pd.date_range("2015-01-01", freq="W", periods=5)],
names=["v", "d"],
),
)
df
df.resample("MS", on="date")[["a"]].sum()
Similarly, if you instead want to resample by a datetimelike
level of ``MultiIndex``, its name or location can be passed to the
``level`` keyword.
.. ipython:: python
df.resample("MS", level="d")[["a"]].sum()
.. _timeseries.iterating-label:
Iterating through groups
With the Resampler object in hand, iterating through the grouped data is very
natural and functions similarly to :py:func:itertools.groupby:
.. ipython:: python
small = pd.Series( range(6), index=pd.to_datetime( [ "2017-01-01T00:00:00", "2017-01-01T00:30:00", "2017-01-01T00:31:00", "2017-01-01T01:00:00", "2017-01-01T03:00:00", "2017-01-01T03:05:00", ] ), ) resampled = small.resample("h")
for name, group in resampled: print("Group: ", name) print("-" * 27) print(group, end="\n\n")
See :ref:groupby.iterating-label or :class:Resampler.__iter__ for more.
.. _timeseries.adjust-the-start-of-the-bins:
Use origin or offset to adjust the start of the bins
The bins of the grouping are adjusted based on the beginning of the day of the time series starting point. This works well with frequencies that are multiples of a day (like ``30D``) or that divide a day evenly (like ``90s`` or ``1min``). This can create inconsistencies with some frequencies that do not meet this criteria. To change this behavior you can specify a fixed Timestamp with the argument ``origin``.
For example:
.. ipython:: python
start, end = "2000-10-01 23:30:00", "2000-10-02 00:30:00"
middle = "2000-10-02 00:00:00"
rng = pd.date_range(start, end, freq="7min")
ts = pd.Series(np.arange(len(rng)) * 3, index=rng)
ts
Here we can see that, when using ``origin`` with its default value (``'start_day'``), the result after ``'2000-10-02 00:00:00'`` are not identical depending on the start of time series:
.. ipython:: python
ts.resample("17min", origin="start_day").sum()
ts[middle:end].resample("17min", origin="start_day").sum()
Here we can see that, when setting ``origin`` to ``'epoch'``, the result after ``'2000-10-02 00:00:00'`` are identical depending on the start of time series:
.. ipython:: python
ts.resample("17min", origin="epoch").sum()
ts[middle:end].resample("17min", origin="epoch").sum()
If needed you can use a custom timestamp for ``origin``:
.. ipython:: python
ts.resample("17min", origin="2001-01-01").sum()
ts[middle:end].resample("17min", origin=pd.Timestamp("2001-01-01")).sum()
If needed you can just adjust the bins with an ``offset`` Timedelta that would be added to the default ``origin``.
Those two examples are equivalent for this time series:
.. ipython:: python
ts.resample("17min", origin="start").sum()
ts.resample("17min", offset="23h30min").sum()
Note the use of ``'start'`` for ``origin`` on the last example. In that case, ``origin`` will be set to the first value of the timeseries.
Backward resample
~~~~~~~~~~~~~~~~~
Instead of adjusting the beginning of bins, sometimes we need to fix the end of the bins to make a backward resample with a given ``freq``. The backward resample sets ``closed`` to ``'right'`` by default since the last value should be considered as the edge point for the last bin.
We can set ``origin`` to ``'end'``. The value for a specific ``Timestamp`` index stands for the resample result from the current ``Timestamp`` minus ``freq`` to the current ``Timestamp`` with a right close.
.. ipython:: python
ts.resample('17min', origin='end').sum()
Besides, in contrast with the ``'start_day'`` option, ``end_day`` is supported. This will set the origin as the ceiling midnight of the largest ``Timestamp``.
.. ipython:: python
ts.resample('17min', origin='end_day').sum()
The above result uses ``2000-10-02 00:29:00`` as the last bin's right edge since the following computation.
.. ipython:: python
ceil_mid = rng.max().ceil('D')
freq = pd.offsets.Minute(17)
bin_res = ceil_mid - freq * ((ceil_mid - rng.max()) // freq)
bin_res
.. _timeseries.periods:
Time span representation
------------------------
Regular intervals of time are represented by ``Period`` objects in pandas while
sequences of ``Period`` objects are collected in a ``PeriodIndex``, which can
be created with the convenience function ``period_range``.
Period
~~~~~~
A ``Period`` represents a span of time (e.g., a day, a month, a quarter, etc).
You can specify the span via ``freq`` keyword using a frequency alias like below.
Because ``freq`` represents a span of ``Period``, it cannot be negative like "-3D".
.. ipython:: python
pd.Period("2012", freq="Y-DEC")
pd.Period("2012-1-1", freq="D")
pd.Period("2012-1-1 19:00", freq="h")
pd.Period("2012-1-1 19:00", freq="5h")
Adding and subtracting integers from periods shifts the period by its own
frequency. Arithmetic is not allowed between ``Period`` with different ``freq`` (span).
.. ipython:: python
p = pd.Period("2012", freq="Y-DEC")
p + 1
p - 3
p = pd.Period("2012-01", freq="2M")
p + 2
p - 1
p == pd.Period("2012-01", freq="3M")
If ``Period`` freq is daily or higher (``D``, ``h``, ``min``, ``s``, ``ms``, ``us``, and ``ns``), ``offsets`` and ``timedelta``-like can be added if the result can have the same freq. Otherwise, ``ValueError`` will be raised.
.. ipython:: python
p = pd.Period("2014-07-01 09:00", freq="h")
p + pd.offsets.Hour(2)
p + datetime.timedelta(minutes=120)
p + np.timedelta64(7200, "s")
.. ipython:: python
:okexcept:
p + pd.offsets.Minute(5)
If ``Period`` has other frequencies, only the same ``offsets`` can be added. Otherwise, ``ValueError`` will be raised.
.. ipython:: python
p = pd.Period("2014-07", freq="M")
p + pd.offsets.MonthEnd(3)
.. ipython:: python
:okexcept:
p + pd.offsets.MonthBegin(3)
Taking the difference of ``Period`` instances with the same frequency will
return the number of frequency units between them:
.. ipython:: python
pd.Period("2012", freq="Y-DEC") - pd.Period("2002", freq="Y-DEC")
PeriodIndex and period_range
~~~~~~~~~~~~~~~~~~~~~~~~~~~~
Regular sequences of ``Period`` objects can be collected in a ``PeriodIndex``,
which can be constructed using the ``period_range`` convenience function:
.. ipython:: python
prng = pd.period_range("1/1/2011", "1/1/2012", freq="M")
prng
The ``PeriodIndex`` constructor can also be used directly:
.. ipython:: python
pd.PeriodIndex(["2011-1", "2011-2", "2011-3"], freq="M")
Passing multiplied frequency outputs a sequence of ``Period`` which
has multiplied span.
.. ipython:: python
pd.period_range(start="2014-01", freq="3M", periods=4)
If ``start`` or ``end`` are ``Period`` objects, they will be used as anchor
endpoints for a ``PeriodIndex`` with frequency matching that of the
``PeriodIndex`` constructor.
.. ipython:: python
pd.period_range(
start=pd.Period("2017Q1", freq="Q"), end=pd.Period("2017Q2", freq="Q"), freq="M"
)
Just like ``DatetimeIndex``, a ``PeriodIndex`` can also be used to index pandas
objects:
.. ipython:: python
ps = pd.Series(np.random.randn(len(prng)), prng)
ps
``PeriodIndex`` supports addition and subtraction with the same rule as ``Period``.
.. ipython:: python
idx = pd.period_range("2014-07-01 09:00", periods=5, freq="h")
idx
idx + pd.offsets.Hour(2)
idx = pd.period_range("2014-07", periods=5, freq="M")
idx
idx + pd.offsets.MonthEnd(3)
``PeriodIndex`` has its own dtype named ``period``, refer to :ref:`Period Dtypes <timeseries.period_dtype>`.
.. _timeseries.period_dtype:
Period dtypes
~~~~~~~~~~~~~
``PeriodIndex`` has a custom ``period`` dtype. This is a pandas extension
dtype similar to the :ref:`timezone aware dtype <timeseries.timezone_series>` (``datetime64[ns, tz]``).
The ``period`` dtype holds the ``freq`` attribute and is represented with
``period[freq]`` like ``period[D]`` or ``period[M]``, using :ref:`frequency strings <timeseries.period_aliases>`.
.. ipython:: python
pi = pd.period_range("2016-01-01", periods=3, freq="M")
pi
pi.dtype
The ``period`` dtype can be used in ``.astype(...)``. It allows one to change the
``freq`` of a ``PeriodIndex`` like ``.asfreq()`` and convert a
``DatetimeIndex`` to ``PeriodIndex`` like ``to_period()``:
.. ipython:: python
# change monthly freq to daily freq
pi.astype("period[D]")
# convert to DatetimeIndex
pi.astype("datetime64[ns]")
# convert to PeriodIndex
dti = pd.date_range("2011-01-01", freq="ME", periods=3)
dti
dti.astype("period[M]")
PeriodIndex partial string indexing
~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~
PeriodIndex now supports partial string slicing with non-monotonic indexes.
You can pass in dates and strings to ``Series`` and ``DataFrame`` with ``PeriodIndex``, in the same manner as ``DatetimeIndex``. For details, refer to :ref:`DatetimeIndex Partial String Indexing <timeseries.partialindexing>`.
.. ipython:: python
ps["2011-01"]
ps[datetime.datetime(2011, 12, 25):]
ps["10/31/2011":"12/31/2011"]
Passing a string representing a lower frequency than ``PeriodIndex`` returns partial sliced data.
.. ipython:: python
ps["2011"]
dfp = pd.DataFrame(
np.random.randn(600, 1),
columns=["A"],
index=pd.period_range("2013-01-01 9:00", periods=600, freq="min"),
)
dfp
dfp.loc["2013-01-01 10h"]
As with ``DatetimeIndex``, the endpoints will be included in the result. The example below slices data starting from 10:00 to 11:59.
.. ipython:: python
dfp["2013-01-01 10h":"2013-01-01 11h"]
Frequency conversion and resampling with PeriodIndex
~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~
The frequency of ``Period`` and ``PeriodIndex`` can be converted via the ``asfreq``
method. Let's start with the fiscal year 2011, ending in December:
.. ipython:: python
p = pd.Period("2011", freq="Y-DEC")
p
We can convert it to a monthly frequency. Using the ``how`` parameter, we can
specify whether to return the starting or ending month:
.. ipython:: python
p.asfreq("M", how="start")
p.asfreq("M", how="end")
The shorthands 's' and 'e' are provided for convenience:
.. ipython:: python
p.asfreq("M", "s")
p.asfreq("M", "e")
Converting to a "super-period" (e.g., annual frequency is a super-period of
quarterly frequency) automatically returns the super-period that includes the
input period:
.. ipython:: python
p = pd.Period("2011-12", freq="M")
p.asfreq("Y-NOV")
Note that since we converted to an annual frequency that ends the year in
November, the monthly period of December 2011 is actually in the 2012 Y-NOV
period.
.. _timeseries.quarterly:
Period conversions with anchored frequencies are particularly useful for
working with various quarterly data common to economics, business, and other
fields. Many organizations define quarters relative to the month in which their
fiscal year starts and ends. Thus, first quarter of 2011 could start in 2010 or
a few months into 2011. Via anchored frequencies, pandas works for all quarterly
frequencies ``Q-JAN`` through ``Q-DEC``.
``Q-DEC`` define regular calendar quarters:
.. ipython:: python
p = pd.Period("2012Q1", freq="Q-DEC")
p.asfreq("D", "s")
p.asfreq("D", "e")
``Q-MAR`` defines fiscal year end in March:
.. ipython:: python
p = pd.Period("2011Q4", freq="Q-MAR")
p.asfreq("D", "s")
p.asfreq("D", "e")
.. _timeseries.interchange:
Converting between representations
----------------------------------
Timestamped data can be converted to PeriodIndex-ed data using ``to_period``
and vice-versa using ``to_timestamp``:
.. ipython:: python
rng = pd.date_range("1/1/2012", periods=5, freq="ME")
ts = pd.Series(np.random.randn(len(rng)), index=rng)
ts
ps = ts.to_period()
ps
ps.to_timestamp()
Remember that 's' and 'e' can be used to return the timestamps at the start or
end of the period:
.. ipython:: python
ps.to_timestamp("D", how="s")
Converting between period and timestamp enables some convenient arithmetic
functions to be used. In the following example, we convert a quarterly
frequency with year ending in November to 9am of the end of the month following
the quarter end:
.. ipython:: python
prng = pd.period_range("1990Q1", "2000Q4", freq="Q-NOV")
ts = pd.Series(np.random.randn(len(prng)), prng)
ts.index = (prng.asfreq("M", "e") + 1).asfreq("h", "s") + 9
ts.head()
.. _timeseries.oob:
Representing out-of-bounds spans
--------------------------------
If you have data that is outside of the ``Timestamp`` bounds, see :ref:`Timestamp limitations <timeseries.timestamp-limits>`,
then you can use a ``PeriodIndex`` and/or ``Series`` of ``Periods`` to do computations.
.. ipython:: python
span = pd.period_range("1215-01-01", "1381-01-01", freq="D")
span
To convert from an ``int64`` based YYYYMMDD representation.
.. ipython:: python
s = pd.Series([20121231, 20141130, 99991231])
s
def conv(x):
return pd.Period(year=x // 10000, month=x // 100 % 100, day=x % 100, freq="D")
s.apply(conv)
s.apply(conv)[2]
These can easily be converted to a ``PeriodIndex``:
.. ipython:: python
span = pd.PeriodIndex(s.apply(conv))
span
.. _timeseries.timezone:
Time zone handling
------------------
pandas provides rich support for working with timestamps in different time
zones using the ``zoneinfo``, ``pytz`` and ``dateutil`` libraries or :class:`datetime.timezone`
objects from the standard library.
Working with time zones
~~~~~~~~~~~~~~~~~~~~~~~
By default, pandas objects are time zone unaware:
.. ipython:: python
rng = pd.date_range("3/6/2012 00:00", periods=15, freq="D")
rng.tz is None
To localize these dates to a time zone (assign a particular time zone to a naive date),
you can use the ``tz_localize`` method or the ``tz`` keyword argument in
:func:`date_range`, :class:`Timestamp`, or :class:`DatetimeIndex`.
You can either pass ``zoneinfo``, ``pytz`` or ``dateutil`` time zone objects or Olson time zone database strings.
Olson time zone strings will return ``zoneinfo`` time zone objects by default.
To return ``dateutil`` time zone objects, append ``dateutil/`` before the string.
* For ``zoneinfo``, a list of available timezones are available from :py:func:`zoneinfo.available_timezones`.
* If ``pytz`` is installed (optional), you can find a list of common (and less common)
time zones using ``pytz.all_timezones``.
* ``dateutil`` uses the OS time zones so there isn't a fixed list available. For
common zones, the names are the same as ``zoneinfo``.
.. ipython:: python
import dateutil
from zoneinfo import ZoneInfo
# zoneinfo (default when using Olson strings)
rng_zi = pd.date_range("3/6/2012 00:00", periods=3, freq="D", tz="Europe/London")
rng_zi.tz
# dateutil
rng_dateutil = pd.date_range("3/6/2012 00:00", periods=3, freq="D")
rng_dateutil = rng_dateutil.tz_localize("dateutil/Europe/London")
rng_dateutil.tz
# dateutil - utc special case
rng_utc = pd.date_range(
"3/6/2012 00:00",
periods=3,
freq="D",
tz=dateutil.tz.tzutc(),
)
rng_utc.tz
.. ipython:: python
# datetime.timezone
rng_utc = pd.date_range(
"3/6/2012 00:00",
periods=3,
freq="D",
tz=datetime.timezone.utc,
)
rng_utc.tz
Note that the ``UTC`` time zone is a special case in ``dateutil`` and should be constructed explicitly
as an instance of ``dateutil.tz.tzutc``. You can also construct other time
zones objects explicitly first.
.. ipython:: python
# zoneinfo
tz_zi = ZoneInfo("Europe/London")
rng_zi = pd.date_range("3/6/2012 00:00", periods=3, freq="D")
rng_zi = rng_zi.tz_localize(tz_zi)
rng_zi.tz == tz_zi
# dateutil
tz_dateutil = dateutil.tz.gettz("Europe/London")
rng_dateutil = pd.date_range("3/6/2012 00:00", periods=3, freq="D", tz=tz_dateutil)
rng_dateutil.tz == tz_dateutil
To convert a time zone aware pandas object from one time zone to another,
you can use the ``tz_convert`` method.
.. ipython:: python
rng_zi.tz_convert("US/Eastern")
.. warning::
Be wary of conversions between time zone libraries. For some time zones,
different libraries may have different definitions of the zone. This is more
of a problem for unusual time zones than for 'standard' zones like ``US/Eastern``.
.. warning::
Be aware that a time zone definition across versions of time zone libraries may not
be considered equal. This may cause problems when working with stored data that
is localized using one version and operated on with a different version.
See :ref:`here<io.hdf5-notes>` for how to handle such a situation.
.. warning::
Be aware that for times in the future, correct conversion between time zones
(and UTC) cannot be guaranteed by any time zone library because a timezone's
offset from UTC may be changed by the respective government.
Under the hood, all timestamps are stored in UTC. Values from a time zone aware
:class:`DatetimeIndex` or :class:`Timestamp` will have their fields (day, hour, minute, etc.)
localized to the time zone. However, timestamps with the same UTC value are
still considered to be equal even if they are in different time zones:
.. ipython:: python
rng_eastern = rng_utc.tz_convert("US/Eastern")
rng_berlin = rng_utc.tz_convert("Europe/Berlin")
rng_eastern[2]
rng_berlin[2]
rng_eastern[2] == rng_berlin[2]
Operations between :class:`Series` in different time zones will yield UTC
:class:`Series`, aligning the data on the UTC timestamps:
.. ipython:: python
ts_utc = pd.Series(range(3), pd.date_range("20130101", periods=3, tz="UTC"))
eastern = ts_utc.tz_convert("US/Eastern")
berlin = ts_utc.tz_convert("Europe/Berlin")
result = eastern + berlin
result
result.index
To remove time zone information, use ``tz_localize(None)`` or ``tz_convert(None)``.
``tz_localize(None)`` will remove the time zone yielding the local time representation.
``tz_convert(None)`` will remove the time zone after converting to UTC time.
.. ipython:: python
didx = pd.date_range(start="2014-08-01 09:00", freq="h", periods=3, tz="US/Eastern")
didx
didx.tz_localize(None)
didx.tz_convert(None)
# tz_convert(None) is identical to tz_convert('UTC').tz_localize(None)
didx.tz_convert("UTC").tz_localize(None)
.. _timeseries.fold:
Fold
~~~~
For ambiguous times, pandas supports explicitly specifying the keyword-only fold argument.
Due to daylight saving time, one wall clock time can occur twice when shifting
from summer to winter time; fold describes whether the datetime-like corresponds
to the first (0) or the second time (1) the wall clock hits the ambiguous time.
Fold is supported only for constructing from naive ``datetime.datetime``
(see `datetime documentation <https://docs.python.org/3/library/datetime.html>`__ for details) or from :class:`Timestamp`
or for constructing from components (see below). Fold is supported with ``zoneinfo`` and ``dateutil``
timezones. We recommend using :meth:`Timestamp.tz_localize` when localizing ambiguous datetimes
if you need direct control over how they are handled.
.. ipython:: python
pd.Timestamp(
datetime.datetime(2019, 10, 27, 1, 30, 0, 0),
tz="dateutil/Europe/London",
fold=0,
)
pd.Timestamp(
year=2019,
month=10,
day=27,
hour=1,
minute=30,
tz="dateutil/Europe/London",
fold=1,
)
.. _timeseries.timezone_ambiguous:
Ambiguous times when localizing
~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~
``tz_localize`` may not be able to determine the UTC offset of a timestamp
because daylight savings time (DST) in a local time zone causes some times to occur
twice within one day ("clocks fall back"). The following options are available:
* ``'raise'``: Raises a ``ValueError`` (the default behavior)
* ``'infer'``: Attempt to determine the correct offset based on the monotonicity of the timestamps
* ``'NaT'``: Replaces ambiguous times with ``NaT``
* ``bool``: ``True`` represents a DST time, ``False`` represents non-DST time. An array-like of ``bool`` values is supported for a sequence of times.
.. ipython:: python
rng_hourly = pd.DatetimeIndex(
["11/06/2011 00:00", "11/06/2011 01:00", "11/06/2011 01:00", "11/06/2011 02:00"]
)
This will fail as there are ambiguous times (``'11/06/2011 01:00'``)
.. ipython:: python
:okexcept:
rng_hourly.tz_localize('US/Eastern')
Handle these ambiguous times by specifying the following.
.. ipython:: python
rng_hourly.tz_localize("US/Eastern", ambiguous="infer")
rng_hourly.tz_localize("US/Eastern", ambiguous="NaT")
rng_hourly.tz_localize("US/Eastern", ambiguous=[True, True, False, False])
.. _timeseries.timezone_nonexistent:
Nonexistent times when localizing
~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~
A DST transition may also shift the local time ahead by 1 hour creating nonexistent
local times ("clocks spring forward"). The behavior of localizing a timeseries with nonexistent times
can be controlled by the ``nonexistent`` argument. The following options are available:
* ``'raise'``: Raises a ``ValueError`` (the default behavior)
* ``'NaT'``: Replaces nonexistent times with ``NaT``
* ``'shift_forward'``: Shifts nonexistent times forward to the closest real time
* ``'shift_backward'``: Shifts nonexistent times backward to the closest real time
* timedelta object: Shifts nonexistent times by the timedelta duration
.. ipython:: python
dti = pd.date_range(start="2015-03-29 02:30:00", periods=3, freq="h")
# 2:30 is a nonexistent time
Localization of nonexistent times will raise an error by default.
.. ipython:: python
:okexcept:
dti.tz_localize('Europe/Warsaw')
Transform nonexistent times to ``NaT`` or shift the times.
.. ipython:: python
dti
dti.tz_localize("Europe/Warsaw", nonexistent="shift_forward")
dti.tz_localize("Europe/Warsaw", nonexistent="shift_backward")
dti.tz_localize("Europe/Warsaw", nonexistent=pd.Timedelta(1, unit="h"))
dti.tz_localize("Europe/Warsaw", nonexistent="NaT")
.. _timeseries.timezone_series:
Time zone Series operations
~~~~~~~~~~~~~~~~~~~~~~~~~~~
A :class:`Series` with time zone **naive** values is
represented with a dtype of ``datetime64[us]``.
.. ipython:: python
s_naive = pd.Series(pd.date_range("20130101", periods=3))
s_naive
A :class:`Series` with a time zone **aware** values is
represented with a dtype of ``datetime64[us, tz]`` where ``tz`` is the time zone
.. ipython:: python
s_aware = pd.Series(pd.date_range("20130101", periods=3, tz="US/Eastern"))
s_aware
Both of these :class:`Series` time zone information
can be manipulated via the ``.dt`` accessor, see :ref:`the dt accessor section <basics.dt_accessors>`.
For example, to localize and convert a naive stamp to time zone aware.
.. ipython:: python
s_naive.dt.tz_localize("UTC").dt.tz_convert("US/Eastern")
Time zone information can also be manipulated using the ``astype`` method.
This method can convert between different timezone-aware dtypes.
.. ipython:: python
# convert to a new time zone
s_aware.astype("datetime64[us, CET]")
.. note::
Using :meth:`Series.to_numpy` on a ``Series``, returns a NumPy array of the data.
NumPy does not currently support time zones (even though it is *printing* in the local time zone!),
therefore an object array of Timestamps is returned for time zone aware data:
.. ipython:: python
s_naive.to_numpy()
s_aware.to_numpy()
By converting to an object array of Timestamps, it preserves the time zone
information. For example, when converting back to a Series:
.. ipython:: python
pd.Series(s_aware.to_numpy())
However, if you want an actual NumPy ``datetime64`` array (with the values
converted to UTC) instead of an array of objects, you can specify the
``dtype`` argument:
.. ipython:: python
s_aware.to_numpy(dtype="datetime64[us]")