Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

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()"

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!

share|improve this question
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
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()
share|improve this answer
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 = (

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

share|improve this answer

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

share|improve this answer
.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


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)

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

share|improve this answer
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

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.