15

Is there a way to retrieve the frequency of a time series in pandas?

rng = date_range('1/1/2011', periods=72, freq='H')
ts =pd.Series(np.random.randn(len(rng)), index=rng)

ts.frequency or ts.period are not methods available.

Thanks

Edit: Can we infer the frequency from time series that do not specify frequency?

import pandas.io.data as web
aapl = web.get_data_yahoo("AAPL")

<class 'pandas.tseries.index.DatetimeIndex'>
[2010-01-04 00:00:00, ..., 2013-12-19 00:00:00]
Length: 999, Freq: None, Timezone: None

Can we somehow can the aapl's frequency? As we know, it's business days.

4
  • 3
    this would be not None if it was a regular frequency. it is NOT business days as holidays are excluded.
    – Jeff
    Dec 20, 2013 at 20:37
  • for your last question, freq I can't correctly define freq, so don't know what to suggest.
    – alko
    Dec 20, 2013 at 20:41
  • That's true. Stock returns do exclude holidays. I will start the new question for what I truly want to achieve.
    – zsljulius
    Dec 20, 2013 at 20:42
  • @zsljulius remember that an abritrary other day can be exclueded as well.
    – alko
    Dec 20, 2013 at 20:44

4 Answers 4

23

To infer the frequency, just use the built-in fct 'infer_freq'

import pandas as pd
pd.infer_freq(ts.index)
2
  • This works fine contrary to FaCoffee's comment. (Though of course the code snipped of sweetdream is incomplete because of the undefined ts.) Aug 10, 2019 at 8:06
  • Should be accepted, but it should be noted that it will fail if index is not sorted. Feb 11, 2021 at 14:21
13

For DatetimeIndex

>>> rng
<class 'pandas.tseries.index.DatetimeIndex'>
[2011-01-01 00:00:00, ..., 2011-01-03 23:00:00]
Length: 72, Freq: H, Timezone: None
>>> len(rng)
72
>>> rng.freq
<1 Hour>
>>> rng.freqstr
'H'

Similary for series indexed with this index

>>> ts.index.freq
<1 Hour>
7
  • Thanks Alko, what about Timeseries? Just updated my question.
    – zsljulius
    Dec 20, 2013 at 20:18
  • @zsljulius you have your rng as index, so you can use ts.index.freq
    – alko
    Dec 20, 2013 at 20:20
  • thanks! What about those time series that does not have frequency specified? Can we somehow infer the frequency? I will give an example in my question.
    – zsljulius
    Dec 20, 2013 at 20:31
  • 1
    @zsljulius I don't think it's ok to update question indefinitely, I'd reccomend starting a new one.
    – alko
    Dec 20, 2013 at 20:32
  • Haha, because I think they are related, that's we I kinda group them together in this one question. I promise this is the last question
    – zsljulius
    Dec 20, 2013 at 20:34
1

@sweetdream 's answer is pretty good actually, because frequency of the data is not always kept as an attribute to the index, so this won't work if it isn't specified:

df.index.freq

@sweetdream mentioned the infer_freq solution, which leads to another day that I'm again amazed by Pandas, that infers the frequency by looking at the index. But sometimes it doesn't work, and there are another way of finding.

Both should work:

text_freq_of_hourly_data_infer_freq = pd.infer_freq(df.index)
text_freq_of_hourly_data_inferred_freq = df.index.inferred_freq

They should both return 'H', but if dataframe is not sorted, it will fail on inferring and it will return None as it is stated on documentation. So you should sort the index.

And don't forget to give "index" to it, not the dataframe, it can infer from the column instead of index if it's specified, again documentation tells, in the index.

If passed a Series will use the values of the series (NOT THE INDEX).

References:

https://pandas.pydata.org/pandas-docs/stable/reference/api/pandas.DatetimeIndex.inferred_freq.html?highlight=infer_freq

https://pandas.pydata.org/pandas-docs/stable/reference/api/pandas.infer_freq.html?highlight=infer_freq

0

If your index is datetime64 but it has no frequency associated, None is returned when using the above mentioned methods.

I propose a rudimentary methodology for just aproximate the index frequency:

Being ts a pandas.Series:

abs(np.diff(ts)).mean()

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