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I regularly perform pandas operations on data frames in excess of 15 million or so rows and I'd love to have access to a progress indicator for particular operations.

Does a text based progress indicator for pandas split-apply-combine operations exist?

For example, in something like:

df_users.groupby(['userID', 'requestDate']).apply(feature_rollup)

where feature_rollup is a somewhat involved function that take many DF columns and creates new user columns through various methods. These operations can take a while for large data frames so I'd like to know if it is possible to have text based output in an iPython notebook that updates me on the progress.

So far, I've tried canonical loop progress indicators for Python but they don't interact with pandas in any meaningful way.

I'm hoping there's something I've overlooked in the pandas library/documentation that allows one to know the progress of a split-apply-combine. A simple implementation would maybe look at the total number of data frame subsets upon which the apply function is working and report progress as the completed fraction of those subsets.

Is this perhaps something that needs to be added to the library?

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have u done a %prun (profile) on the code? sometimes you can do operations on the whole frame before you apply to eliminate bottlenecks –  Jeff Sep 4 '13 at 1:30
    
@Jeff: you bet, I did that earlier to squeeze every last bit of performance out of it. The issue really comes down to the pseudo map-reduce boundary I'm working at since the rows are in the tens of millions so I don't expect super speed increases just want some feedback on the progress. –  cwharland Sep 4 '13 at 4:56
    
Consider cythonising: pandas.pydata.org/pandas-docs/dev/… –  Andy Hayden Sep 4 '13 at 9:38
    
@AndyHayden - As I commented on your answer your implementation is quite good and adds a small amount of time to the overall job. I also cythonised three operations inside feature rollup which regained all of the time that is now dedicated reporting progress. So in the end I bet I'll have progress bars with a reduction in total processing time if I follow through with cython on the whole function. –  cwharland Sep 4 '13 at 17:19

3 Answers 3

up vote 4 down vote accepted

To tweak Jeff's answer (and have this as a reuseable function).

def logged_apply(g, func, *args, **kwargs):
    step_percentage = 100. / len(g)
    import sys
    sys.stdout.write('apply progress:   0%')
    sys.stdout.flush()

    def logging_decorator(func):
        def wrapper(*args, **kwargs):
            progress = wrapper.count * step_percentage
            sys.stdout.write('\033[D \033[D' * 4 + format(progress, '3.0f') + '%')
            sys.stdout.flush()
            wrapper.count += 1
            return func(*args, **kwargs)
        wrapper.count = 0
        return wrapper

    logged_func = logging_decorator(func)
    res = g.apply(logged_func)
    sys.stdout.write('\033[D \033[D' * 4 + format(100., '3.0f') + '%' + '\n')
    sys.stdout.flush()
    return res

Note: the apply progress percentage updates inline. If your function stdouts then this won't work.

In [11]: g = df_users.groupby(['userID', 'requestDate'])

In [12]: f = feature_rollup)

In [13]: logged_apply(g, f)
apply progress: 100%
Out[13]: 
...

As usual you can add this to your groupby objects as a method:

from pandas.core.groupby import DataFrameGroupBy
DataFrameGroupBy.logged_apply = logged_apply

In [21]: g.logged_apply(f)
apply progress: 100%
Out[21]: 
...

As mentioned in the comments, this isn't a feature that core pandas would be interested in implementing. But python allows you to create these for many pandas objects/methods (doing so would be quite a bit of work... although you should be able to generalise this approach).

share|improve this answer
    
I say "quite a bit of work", but you could probably rewrite this entire function as a (more general) decorator. –  Andy Hayden Sep 4 '13 at 10:42
    
Thanks for expanding on Jeff's post. I've implemented both and the slowdown for each is quite minimal (added a total of 1.1 mins to an operation that took 27 mins to complete). This way I can view the progress and given the adhoc nature of these operations I think this is an acceptable slow down. –  cwharland Sep 4 '13 at 17:17
    
Excellent, glad it helped. I was actually surprised at the slow down (when I tried an example), I expected it to be a lot worse. –  Andy Hayden Sep 4 '13 at 20:33
    
To further add to the efficiency of the posted methods, I was being lazy about data import (pandas is just too good at handling messy csv!!) and a few of my entries (~1%) had completely whacked out insertions (think whole records inserted into single fields). Eliminating these cause a massive speed up in the feature rollup since there was no ambiguity about what to do during split-apply-combine operations. –  cwharland Sep 4 '13 at 22:41
    
ha! it does make it easy, sanity checks always recommended before crunching the numbers. what did 27 minutes become? –  Andy Hayden Sep 4 '13 at 22:52

You can easily do this with a decorator

from functools import wraps 

def logging_decorator(func):

    @wraps
    def wrapper(*args, **kwargs):
        wrapper.count += 1
        print "The function I modify has been called {0} times(s).".format(
              wrapper.count)
        func(*args, **kwargs)
    wrapper.count = 0
    return wrapper

modified_function = logging_decorator(feature_rollup)

then just use the modified_function (and change when you want it to print)

share|improve this answer
    
Obvious warning being this will slow down your function! You could even have it update with the progress stackoverflow.com/questions/5426546/… e.g. count/len as percentage. –  Andy Hayden Sep 4 '13 at 0:39
    
yep - you will have order(number of groups), so depending on what your bottleneck is this might make a difference –  Jeff Sep 4 '13 at 1:27
    
perhaps the intuitive thing to do is wrap this in a logged_apply(g, func) function, where you'd have access to order, and could log from the beginning. –  Andy Hayden Sep 4 '13 at 9:42
    
I did the above in my answer, also cheeky percentage update. Actually I couldn't get yours working... I think with the wraps bit. If your using it for the apply it's not so important anyway. –  Andy Hayden Sep 4 '13 at 10:44

@AndyHayden, could it be that your solution is missing *args and **kwargs as the arguments to the apply function apply. That is:

res = g.apply(logged_func)

should probably be:

res = g.apply(logged_func, *args, **kwargs)

This should really be a comment to your solution but I am lacking the reputation for that ...

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