# How to resample a dataframe with different functions applied to each column?

I have a times series with temperature and radiation in a pandas dataframe. The time resolution is 1 minute in regular steps.

``````import datetime
import pandas as pd
import numpy as np

date_times = pd.date_range(datetime.datetime(2012, 4, 5, 8, 0),
datetime.datetime(2012, 4, 5, 12, 0),
freq='1min')
tamb = np.random.sample(date_times.size) * 10.0
radiation = np.random.sample(date_times.size) * 10.0
frame = pd.DataFrame(data={'tamb': tamb, 'radiation': radiation},
index=date_times)
frame
<class 'pandas.core.frame.DataFrame'>
DatetimeIndex: 241 entries, 2012-04-05 08:00:00 to 2012-04-05 12:00:00
Freq: T
Data columns:
radiation    241  non-null values
tamb         241  non-null values
dtypes: float64(2)
``````

How can I down-sample this dataframe to a resolution of one hour, computing the hourly mean for the temperature and the hourly sum for radiation?

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Mind providing us with an example dataset to work with. – diliop Apr 4 '12 at 23:57
@diliop: I added an example, hope that helps. – bmu Apr 5 '12 at 0:37

## 4 Answers

I am answering my question to reflect the time series related changes in `pandas >= 0.8` (all other answers are outdated).

Using pandas >= 0.8 the answer is:

``````In [75]: frame.resample('1H', how={'radiation': np.sum, 'tamb': np.mean})
Out[14]:
tamb   radiation
2012-04-05 08:00:00  4.459108  275.820847
2012-04-05 09:00:00  5.343115  282.242943
2012-04-05 10:00:00  4.988707  280.426667
2012-04-05 11:00:00  4.946707  276.593614
2012-04-05 12:00:00  4.571588    2.115954
``````
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This can be extended to a list of functions per column: `frame.resample('1H', how={'radiation': [np.sum, np.min], 'tamb': np.mean})`. The resulting DataFrame has a MultiIndex on its columns, with the original column name as level 0 and the function name as level 1. – Def_Os May 26 at 23:36
To add to my previous comment: instead of a list of functions per column, you can also use a dictionary, where the key is the new column name and the value is the function to use: `frame.resample('1H', how={'radiation': {'sum_rad': np.sum, 'min_rad': np.min}, 'tamb': np.mean})` – Def_Os May 27 at 20:27

To tantalize you, in pandas 0.8.0 (under heavy development in the `timeseries` branch on GitHub), you'll be able to do:

``````In [5]: frame.convert('1h', how='mean')
Out[5]:
radiation      tamb
2012-04-05 08:00:00   7.840989  8.446109
2012-04-05 09:00:00   4.898935  5.459221
2012-04-05 10:00:00   5.227741  4.660849
2012-04-05 11:00:00   4.689270  5.321398
2012-04-05 12:00:00   4.956994  5.093980
``````

The above mentioned methods are the right strategy with the current production version of pandas.

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Thanks, but what I want to have would be something like `frame.convert('1h', how={'radiation': 'sum, 'tamb': 'mean'})`. Is this an option in 0.8? – bmu Apr 8 '12 at 10:30
@ Wes McKinney this should be `resample` in 0.8, isn't it? – bmu Jun 15 '12 at 20:58
If you would update your answer, I would accept it. otherwise you should remove it I think, because it will point users to the wrong direction. – bmu Oct 13 '12 at 8:23

You can also downsample using the `asof` method of `pandas.DateRange` objects.

``````In [21]: hourly = pd.DateRange(datetime.datetime(2012, 4, 5, 8, 0),
...                          datetime.datetime(2012, 4, 5, 12, 0),
...                          offset=pd.datetools.Hour())

In [22]: frame.groupby(hourly.asof).size()
Out[22]:
key_0
2012-04-05 08:00:00    60
2012-04-05 09:00:00    60
2012-04-05 10:00:00    60
2012-04-05 11:00:00    60
2012-04-05 12:00:00    1
In [23]: frame.groupby(hourly.asof).agg({'radiation': np.sum, 'tamb': np.mean})
Out[23]:
radiation  tamb
key_0
2012-04-05 08:00:00  271.54     4.491
2012-04-05 09:00:00  266.18     5.253
2012-04-05 10:00:00  292.35     4.959
2012-04-05 11:00:00  283.00     5.489
2012-04-05 12:00:00  0.5414     9.532
``````
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+1 for using `DateRange.asof` – diliop Apr 5 '12 at 2:48

You need to use `groupby` as such:

``````grouped = frame.groupby(lambda x: x.hour)
grouped.agg({'radiation': np.sum, 'tamb': np.mean})
# Same as: grouped.agg({'radiation': 'sum', 'tamb': 'mean'})
``````

with the output being:

``````        radiation      tamb
key_0
8      298.581107  4.883806
9      311.176148  4.983705
10     315.531527  5.343057
11     288.013876  6.022002
12       5.527616  8.507670
``````

So in essence I am splitting on the hour value and then calculating the mean of `tamb` and the sum of `radiation` and returning back the `DataFrame` (similar approach to R's `ddply`). For more info I would check the documentation page for groupby as well as this blog post.

Edit: To make this scale a bit better you could group on both the day and time as such:

``````grouped = frame.groupby(lambda x: (x.day, x.hour))
grouped.agg({'radiation': 'sum', 'tamb': 'mean'})
radiation      tamb
key_0
(5, 8)   298.581107  4.883806
(5, 9)   311.176148  4.983705
(5, 10)  315.531527  5.343057
(5, 11)  288.013876  6.022002
(5, 12)    5.527616  8.507670
``````
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