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This code worked on my other computer with NumPy 1.6:

import pandas as pd
from pandas import DataFrame
import numpy as np

datapath='C:/Users/Alex/Desktop/samoa/WATERSHED_ANALYSIS/FAGAALU/MasterDataFiles/FP-Master.csv'#):

col_names = ['Date', 'Time', 'TempOut', 'HiTemp', 'LowTemp', 'OutHum', 'DewPt', 'WindSpeed', 'WindDir', 'WindRun', 'HiSpeed', 'HiDir', 'WindChill', 'HeatIndex', 'THWIndex', 'Bar', 'Rain', 'RainRate', 'HeatD-D', 'CoolD-D', 'InTemp', 'InHum', 'InDew', 'InHeat', 'InEMC', 'InAirDensity', 'WindSamp', 'WindTx', 'ISSRecept', 'Arc.Int.']

Wx= pd.read_csv(datapath,skiprows=1,header=0,names=col_names,parse_dates=[['Date','Time']],index_col=['Date_Time'],na_values=['---'])
Wx.index = Wx.index.astype('datetime64')
Wx = Wx.resample('15Min',fill_method='pad',limit=2) ## fill the 30min intervals to 15minute

The column 'Date_Time' is a combination of the csv file columns 'Date' and 'Time' and is formatted "%m/%d/%Y %I:%M %p"

On a new computer with NumPy 1.7 I get this error:

>>> Traceback (most recent call last):
  File "<stdin>", line 1, in <module>
  File "C:\Python27\lib\site-packages\pandas\core\index.py", line 198, in astype
    return Index(self.values.astype(dtype), name=self.name,
ValueError: Cannot create a NumPy datetime other than NaT with generic units

I've tried using Wx.index = pd.to_datetime(Wx.index), but it fails to convert the index to a DatetimeIndex.

I've also tried using

Wx.index = Wx['Date_Time'].convert_objects(convert_dates='coerce')

It converts the index to pandas.tseries.index.DatetimeIndex, but then

Wx.resample('15Min',,fill_method='pad',limit=2) 

gives this error:

  File "tslib.pyx", line 1978, in pandas.tslib.normalize_date (pandas\tslib.c:30569)
ValueError: month must be in 1..12

Does anyone know why this won't work? I've tried using .asfreq('15Min') and then .fillna('pad'), but it's klunky and will require a lot of recoding for other modules.

share|improve this question
    
astype is not necessary if your index parsed correctly (and the datetime64) won't work anyhow, pls post Wx.index (immediately after being read from the csv), and a sample of your frame –  Jeff May 23 '13 at 22:20
1  
also post: Wx.info() and your pandas version –  Jeff May 23 '13 at 22:34
    
Here is the Wx.index immediately after read_csv: >>> Wx.index Index([1/7/2012 10:30 AM, 1/7/2012 11:00 AM, 1/7/2012 11:30 AM, ..., 5/4/2013 10:00 AM, 5/4/2013 10:15 AM, 5/4/2013 10:30 AM], dtype=object) –  Alex Messina May 23 '13 at 23:16
    
>>> Wx.info() <class 'pandas.core.frame.DataFrame'> Index: 17396 entries, 1/7/2012 10:30 AM to 5/4/2013 10:30 AM Data columns (total 28 columns): TempOut 8471 non-null values HiTemp 8470 non-null values LowTemp 8470 non-null values OutHum 8469 non-null values DewPt 8469 non-null values ... dtypes: float64(25), object(3)>>> –  Alex Messina May 23 '13 at 23:19
    
pandas version 0.11.0 –  Alex Messina May 23 '13 at 23:20

1 Answer 1

Something funny is going on when you parse the date columns. I would need to look at your file (post a link, or a part of in your question). Your parsing looks fine.In any event, pd.to_datetime will take what you posted and turn it into a DatetimeIndex, which is what you need for resample.

Try also

Wx.index = pd.todatetime(Wx.index.tolist())

Your index should be something like

In [26]: df.index
Out[26]: 
<class 'pandas.tseries.index.DatetimeIndex'>
[2012-01-07 10:30:00, ..., 2013-05-04 10:30:00]
Length: 6, Freq: None, Timezone: None

Here's the example

In [15]: index = pd.to_datetime('1/7/2012 10:30 AM, 1/7/2012 11:00 AM, 1/7/2012 11:30 AM, 5/4/2013 10:00 AM, 5/4/2013 10:15 AM, 5/4/2013 10:30 AM'.split(', '))

In [16]: df = DataFrame(randn(6,2),index=index)

In [17]: df
Out[17]: 
                            0         1
2012-01-07 10:30:00  0.523777 -0.093911
2012-01-07 11:00:00  0.954344  0.830551
2012-01-07 11:30:00 -0.004064 -1.831855
2013-05-04 10:00:00 -1.082163  1.426966
2013-05-04 10:15:00 -1.025252 -0.169916
2013-05-04 10:30:00  1.717222 -0.988228

In [18]: df.resample('15Min',fill_method='pad',limit=2).head(10)
Out[18]: 
                            0         1
2012-01-07 10:30:00  0.523777 -0.093911
2012-01-07 10:45:00  0.523777 -0.093911
2012-01-07 11:00:00  0.954344  0.830551
2012-01-07 11:15:00  0.954344  0.830551
2012-01-07 11:30:00 -0.004064 -1.831855
2012-01-07 11:45:00 -0.004064 -1.831855
2012-01-07 12:00:00 -0.004064 -1.831855
2012-01-07 12:15:00       NaN       NaN
2012-01-07 12:30:00       NaN       NaN
2012-01-07 12:45:00       NaN       NaN

In [19]: np.__version__
Out[19]: '1.7.1'

Here's an example file I parsed (just like you did)

In [32]: pd.read_csv('foo.csv',index_col=['Date_Time'],parse_dates=[['Date','Time']])
Out[32]: 
                            0         1
Date_Time                              
2012-01-07 10:30:00  0.523777 -0.093911
2012-01-07 11:00:00  0.954344  0.830551
2012-01-07 11:30:00 -0.004064 -1.831855
2013-05-04 10:00:00 -1.082163  1.426966
2013-05-04 10:15:00 -1.025252 -0.169916
2013-05-04 10:30:00  1.717222 -0.988228

In [33]: !cat 'foo.csv'
Date,Time,0,1
2012-01-07,10:30:00 AM,0.5237774067993367,-0.0939112810613334
2012-01-07,11:00:00 AM,0.9543438182818779,0.8305511332193324
2012-01-07,11:30:00 AM,-0.004064420703945425,-1.8318551051738328
2013-05-04,10:00:00 AM,-1.082162936479846,1.4269663822610816
2013-05-04,10:15:00 AM,-1.0252522955053849,-0.16991623915937284
2013-05-04,10:30:00 AM,1.7172224344229594,-0.9882282095859544

Maybe somethings not aligned in your file, or you have some weird characters embeded in the Date/Time field?

share|improve this answer
    
Jeff, I think the above answer would work, but your first comment clued me in to the error in the date parsing in pd.read_csv. The .csv file had a blank line which caused an error in the date_parser. I wrote a custom date_parser to pass to read_csv and it works fine now. Thanks so much for your help! –  Alex Messina May 24 '13 at 0:32
    
Here is what I used to fix it, in addition to fixing the file like you suggested! my_parser= lambda x,y: dt.datetime.strptime(x+y,"%m/%d/%Y%I:%M %p") Wx= pd.read_csv(datapath,skiprows=1,header=0,names=col_names,parse_dates=[['Date','T‌​ime']],index_col=['Date_Time'],date_parser=my_parser,na_values=['---']) –  Alex Messina May 24 '13 at 0:35
1  
that looks right, FYI there is an option skiprows that takes a collection of rows to skip (e.g. blank lines ifyou want) –  Jeff May 24 '13 at 0:48
    
@AlexMessina If this answer solved your problem, please consider accepting the answer, so your question is marked as solved. Also, this gives both the poster of the answer and yourself some reputation points! –  nordev May 24 '13 at 8:12

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