Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

My data looks like so:

2012-05-01 00:00:00.203 OFF 0
2012-05-01 00:00:11.203 OFF 0
2012-05-01 00:00:22.203 ON 1
2012-05-01 00:00:33.203 ON 1
2012-05-01 00:00:44.203 OFF 0
2012-05-02 00:00:00.203 OFF 0
2012-05-02 00:00:11.203 OFF 0
2012-05-02 00:00:22.203 OFF 0
2012-05-02 00:00:33.203 ON 1
2012-05-02 00:00:44.203 ON 1
2012-05-02 00:00:55.203 OFF 0

I'm using pandas read_table to read a pre-parsed string (which gets rid of the "TEST" lines) like so:

df = pandas.read_table(buf, sep=' ', header=None, parse_dates=[[0, 1]], date_parser=dateParser, index_col=[0])

So far, i've tried several date parsers, the uncommented one being the fastest.

def dateParser(s):
#return datetime.strptime(s, "%Y-%m-%d %H:%M:%S.%f")
return datetime(int(s[0:4]), int(s[5:7]), int(s[8:10]), int(s[11:13]), int(s[14:16]), int(s[17:19]), int(s[20:23])*1000)
#return np.datetime64(s)
#return pandas.Timestamp(s, "%Y-%m-%d %H:%M:%S.%f", tz='utc' )

Is there anything else I can do to speed things up? I need to read large amounts of data - several Gb per file.

share|improve this question
Do you have an say on the format your data comes in? That is, could you have a tab-delimited file where the date and time fields are space separated? – diliop Jun 23 '12 at 1:26
@diliop: No, I cannot influence the input data format. – user1412286 Jun 25 '12 at 6:27
up vote 4 down vote accepted

The quick answer is that what you indicate as the fastest way to parse your date/time strings into a datetime-type index, is indeed the fastest way. I timed some of your approaches and some others and this is what I get.

First,getting an example DataFrame to work with:

import datetime
from pandas import *

start = datetime(2000, 1, 1)
end = datetime(2012, 12, 1)
d = DateRange(start, end, offset=datetools.Hour())
t_df = DataFrame({'field_1': np.array(['OFF', 'ON'])[np.random.random_integers(0, 1, d.size)], 'field_2': np.random.random_integers(0, 1, d.size)}, index=d)


In [1]: t_df.head()
                    field_1  field_2
2000-01-01 00:00:00      ON        1
2000-01-01 01:00:00     OFF        0
2000-01-01 02:00:00     OFF        1
2000-01-01 03:00:00     OFF        1
2000-01-01 04:00:00      ON        1
In [2]: t_df.shape
Out[2]: (113233, 2)

This is an approx. 3.2MB file if you dump it on disk. We now need to drop the DataRange type of your Index and make it a list of str to simulate how you would parse in your data:

t_df.index =

If you use parse_dates = True when reading your data into a DataFrame using read_table you are looking at 9.5sec mean parse time:

In [3]: import numpy as np
In [4]: import timeit
In [5]: t_df.to_csv('data.tsv', sep='\t', index_label='date_time')
In [6]: t = timeit.Timer("from __main__ import read_table; read_table('data.tsv', sep='\t', index_col=0, parse_dates=True)")
In [7]: np.mean(t.repeat(10, number=1))
Out[7]: 9.5226533889770515

The other strategies rely on parsing your data into a DataFrame first (negligible parsing time) and then converting your index to an Index of datetime objects:

In [8]: t = timeit.Timer("from __main__ import t_df, dateutil; map(dateutil.parser.parse, t_df.index.values)")
In [9]: np.mean(t.repeat(10, number=1))
Out[9]: 7.6590064525604244
In [10]: t = timeit.Timer("from __main__ import t_df, dateutil;")
In [11]: np.mean(t.repeat(10, number=1))
Out[11]: 7.8106775999069216
In [12]: t = timeit.Timer("from __main__ import t_df, datetime; x: datetime.strptime(x, \"%Y-%m-%d %H:%M:%S\"))")
Out[12]: 2.0389052629470825
In [13]: t = timeit.Timer("from __main__ import t_df, np; map(np.datetime_, t_df.index.values)")
In [14]: np.mean(t.repeat(10, number=1))
Out[14]: 3.8656840562820434
In [15]: t = timeit.Timer("from __main__ import t_df, np; map(np.datetime64, t_df.index.values)")
In [16]: np.mean(t.repeat(10, number=1))
Out[16]: 3.9244711160659791

And now for the winner:

In [17]: def f(s):
   ....:         return datetime(int(s[0:4]), 
   ....:                     int(s[5:7]), 
   ....:                     int(s[8:10]), 
   ....:                     int(s[11:13]), 
   ....:                     int(s[14:16]), 
   ....:                     int(s[17:19]))
   ....: t = timeit.Timer("from __main__ import t_df, f;")
In [18]: np.mean(t.repeat(10, number=1))
Out[18]: 0.33927145004272463

When working with numpy, pandas or datetime-type approaches, there definitely might be more optimizations to think of but it seems to me that staying with CPython's standard libraries and converting each date/time str into a tupple of ints and that into a datetime instance is the fastest way to get what you want.

share|improve this answer
Thanks for the effort! – user1412286 Jun 25 '12 at 6:28

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.