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In the following, male_trips is a big pandas data frame and stations is a small pandas data frame. For each station id I'd like to know how many male trips took place. The following does the job, but takes a long time:

mc = [ sum( male_trips['start_station_id'] == id ) for id in stations['id'] ]

how should I go about this instead?


Update! So there were two main approaches: groupby() followed by size(), and the simpler .value_counts(). I did a quick timeit, and the groupby approach wins by quite a large margin! Here is the code:

from timeit import Timer
setup = "import pandas; male_trips=pandas.load('maletrips')"
a  = "male_trips.start_station_id.value_counts()"
b = "male_trips.groupby('start_station_id').size()"
Timer(a,setup).timeit(100)
Timer(b,setup).timeit(100)

and here is the result:

In [4]: Timer(a,setup).timeit(100) # <- this is value_counts
Out[4]: 9.709594964981079

In [5]: Timer(b,setup).timeit(100) # <- this is groupby / size
Out[5]: 1.5574288368225098

Note that, at this speed, for exploring data typing value_counts is marginally quicker and less remembering!

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How big is the data frame? Do you have enough memory? I don't see anything wrong with it speed wise. –  myusuf3 Oct 12 '12 at 21:25
    
@myusuf3 just for comparison, my approach above takes more than a minute (I got bored counting) whereas Dani's solution below would be measured in ms. –  Mike Dewar Oct 14 '12 at 11:14
    
This is really surprising since there is a specific value count function in algorithms.py and I doubt Wes would have added this if it wasn't faster than groupby and then size. I get different results for a DataFrame I just loaded : In [20]: timeit df.groupby(df.columns[8]).size() 100 loops, best of 3: 13.4 ms per loop In [22]: timeit df[df.columns[8]].value_counts() 100 loops, best of 3: 5.62 ms per loop. –  Arthur G Oct 14 '12 at 14:35
1  
Be sure to run timing tests multiple times (10 or more) and in multiple orders (a before b, a after b). If you only did two tests, it is possible the first run loaded the data from disk into a disk buffer, and the second run read it directly from the buffer, avoiding the disk access time. –  BobC Dec 19 '12 at 20:46

5 Answers 5

up vote 35 down vote accepted

I'd do like Vishal but instead of using sum() using size() to get a count of the number of rows allocated to each group of 'start_station_id'. So:

df = male_trips.groupby('start_station_id').size()
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You solution is the same of male_trips.value_counts('start_station_id') –  gunzapper Feb 26 at 16:19

My answer below works in Pandas 0.7.3. Not sure about the new releases.

This is what the pandas.Series.value_counts method is for:

count_series = male_trips.start_station_id.value_counts()

It should be straight-forward to then inspect count_series based on the values in stations['id']. However, if you insist on only considering those values, you could do the following:

count_series = (
                male_trips[male_trips.start_station_id.isin(stations.id.values)]
                    .start_station_id
                    .value_counts()
               )

and this will only give counts for station IDs actually found in stations.id.

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male_trips.count()

doesnt work? http://pandas.pydata.org/pandas-docs/stable/generated/pandas.DataFrame.count.html

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.count() seems to count all the non-null values in each column which is cool, just not quite what I'm after. –  Mike Dewar Oct 14 '12 at 11:17
    
I just get this now too. would like to remove my upvote. –  bmu Oct 14 '12 at 12:45

edit: after seeing in the answer above that isin and value_counts exist (and value_counts even comes with its own entry in pandas.core.algorithm and also isin isn't simply np.in1d) I updated the three methods below

male_trips.start_station_id[male_trips.start_station_id.isin(station.id)].value_counts()

You could also do an inner join on stations.id: pd.merge(male_trips, station, left_on='start_station_id', right_on='id') followed by value_counts. Or:

male_trips.set_index('start_station_id, inplace=True)
station.set_index('id, inplace=True)
male_trips.ix[male_trips.index.intersection(station.index)].reset_index().start_station_id.value_counts()

If you have the time I'd be interested how this performs differently with a huge DataFrame.

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cool. So male_trips.start_station_id[male_trips.start_station_id.isin(stations.id)].value‌​_counts() does the trick, though is maybe a heartbeat slower than groupby. –  Mike Dewar Oct 14 '12 at 11:19
    
the merge complains that there's 'no item named start_station_id'. This approach is one of the ones I'd been trying to get work and was bumping into this problem a lot. Not quite sure what's going on here... –  Mike Dewar Oct 14 '12 at 11:20
    
the reindexing also complains, and I'm definitely not sure what's going on here. Here's the error: Reindexing only valid with uniquely valued Index objects. –  Mike Dewar Oct 14 '12 at 11:23
    
incidentally you have just shown me 5 completely new pandas concepts. Thanks! –  Mike Dewar Oct 14 '12 at 11:24
    
It was my bad: "on" is only to be used when the columns occur in both DataFrames (so my code was referring to a join on both id and start_station_id which is wrong here). Here you have to use "left_on" and "right_on". For the reindex: non-unique indices are rather new in pandas. It could be that this isn't supported. Try df.ix[...] instead of df.reindex which doesn't throw this error. –  Arthur G Oct 14 '12 at 14:20

how long would this take:

df = male_trips.groupby('start_station_id').sum()
share|improve this answer
    
.sum() adds up the numeric columns in the db. Nearly does the job, though! –  Mike Dewar Oct 14 '12 at 11:15

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