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In the new version 0.13.0 of pandas, a dataframe df is printed in one long list of numbers using

df

or

print df

instead of an overview, like before, which is now only possible using

df.info()

Is it possible to change the default 'df' or 'print df' command to show :

In [12]: df.info()
<class 'pandas.core.frame.DataFrame'>
DatetimeIndex: 4319 entries, 2010-02-18 00:00:00 to 2010-03-13 23:15:00
Data columns (total 2 columns):
QInt    4319  non-null values
QHea    4319  non-null values
dtypes: float32(2)

again instead of:

In [11]: df
Out[11]:
                                  QInt         QHea
2010-02-18 00:00:00         169.666672     0.000000
2010-02-18 00:15:00         152.000000    -0.000000
2010-02-18 00:15:00         152.000000    -0.000000
2010-02-18 00:30:00         155.000000    -0.000000
2010-02-18 00:30:04         155.063950    -0.000000
2010-02-18 00:30:04         155.063950 -1136.823364
2010-02-18 00:45:00         169.666672  4587.430176
2010-02-18 01:00:00         137.333328  4532.890137
2010-02-18 01:00:00         137.333328  4532.890137
2010-02-18 01:15:00         177.000000  4464.479980
2010-02-18 01:15:00         177.000000  4464.479980
2010-02-18 01:30:00         169.666672  4391.839844
2010-02-18 01:30:00         169.666672  4391.839844
2010-02-18 01:45:00         155.000000  4313.049805
2010-02-18 01:45:00         155.000000  4313.049805
2010-02-18 02:00:00         144.666672  4230.100098
2010-02-18 02:15:00         162.333328  4144.819824
2010-02-18 02:15:00         162.333328  4144.819824
2010-02-18 02:30:00         177.000000  4059.689941
2010-02-18 02:45:00         144.666672  3987.149902
2010-02-18 02:45:00         144.666672  3987.149902
2010-02-18 03:00:00         155.000000  3924.629883
2010-02-18 03:00:00         155.000000  3924.629883
2010-02-18 03:15:00         162.333328  3865.129883
2010-02-18 03:15:00         162.333328  3865.129883
2010-02-18 03:30:00         162.333328  3811.050049
2010-02-18 03:30:00         162.333328  3811.050049
2010-02-18 03:45:00         152.000000  3765.590088
2010-02-18 03:45:00         152.000000  3765.590088
2010-02-18 04:00:00         162.333328  3735.080078
2010-02-18 04:15:00         162.333328  3703.169922
2010-02-18 04:15:00         162.333328  3703.169922
2010-02-18 04:30:00         144.666672  3673.139893
2010-02-18 04:45:00         169.666672  3647.100098
2010-02-18 04:45:00         169.666672  3647.100098
2010-02-18 05:00:00         162.333328  3622.129883
2010-02-18 05:15:00         155.000000  3594.159912
2010-02-18 05:15:00         155.000000  3594.159912
2010-02-18 05:30:00         159.333328  3569.699951
2010-02-18 05:30:00         159.333328  3569.699951
2010-02-18 05:45:00         147.666672  3551.179932
2010-02-18 05:45:00         147.666672  3551.179932
2010-02-18 06:00:00         177.000000  3531.669922
2010-02-18 06:00:00         177.000000  3531.669922
2010-02-18 06:15:00         159.333328  3514.679932
2010-02-18 06:15:00         159.333328  3514.679932
2010-02-18 06:30:00         155.000000  3499.669922
2010-02-18 06:30:00         155.000000  3499.669922
2010-02-18 06:45:00         155.000000  3485.320068
2010-02-18 06:45:00         155.000000  3485.320068
2010-02-18 06:59:54.750000  162.291245    19.999992
2010-02-18 06:59:54.750000  162.291245     0.000000
2010-02-18 07:00:00         162.333328     0.000000
2010-02-18 07:00:00         162.333328     0.000000
2010-02-18 07:15:00         166.666672     0.000000
2010-02-18 07:15:00         166.666672     0.000000
2010-02-18 07:30:00         155.000000     0.000000
2010-02-18 07:30:00         155.000000     0.000000
2010-02-18 07:45:00         155.000000     0.000000
2010-02-18 07:45:00         155.000000     0.000000
                                   ...          ...

[4319 rows x 2 columns]
share|improve this question
    
You could write a custom __str__ method. Or derive a class from the original one with and overridden __str__ method. – Aleksander Lidtke Jan 31 '14 at 14:55
up vote 3 down vote accepted

Set

pd.options.display.large_repr = 'info'

The default as of v.0.13 is 'truncate'.

In [93]: df = pd.DataFrame(np.arange(4319*2).reshape(4319,2))

In [94]: pd.options.display.large_repr = 'info'

In [95]: df
Out[95]: 
<class 'pandas.core.frame.DataFrame'>
Int64Index: 4319 entries, 0 to 4318
Data columns (total 2 columns):
0    4319 non-null int32
1    4319 non-null int32
dtypes: int32(2)

I found this by searching for the string 'info()' in the output of:

In [65]: pd.set_option?

To make this the default behavior for interactive sessions:

If you haven't set it already, define the environment variable PYTHONSTARTUP to something like /home/user/bin/startup.py

Then edit/create /home/user/bin/startup.py to contain something like

import pandas as pd
pd.options.display.large_repr = 'info'

Now, whenever you start an interactive Python session, the startup.py file will be executed, you'll have access to pandas through the pd variable, and large_repr default will be 'info'.

share|improve this answer
    
Thanks for the quick answer. The config_init.py file is the same, and it actually prints 60 rows, but I would like it to print the info [12] when for df if I enter 'df' instead of the rows [11]. This was the behavior before I updated to pandas 0.13.0 – mvdc7070 Jan 31 '14 at 15:31
    
Oops, sorry -- I misunderstood. – unutbu Jan 31 '14 at 15:38
    
Thanks, that works! Is there any way to change the default to 'info'? – mvdc7070 Jan 31 '14 at 16:02
    
To change the default value directly, line 229 in config_init.py should be changed from cf.register_option('large_repr', 'truncate', pc_larg..., to cf.register_option('large_repr', 'info', pc_larg... – mvdc7070 Feb 4 '14 at 9:52
    
Yes, with some caveats: Hacking the source code directly can become cumbersome as your list of changes grows. You'll have to re-do the changes every time you upgrade pandas. Also, if you rely upon non-standard behavior, your ability to use other people's code or vice versa may be hampered. – unutbu Feb 4 '14 at 10:05

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