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I have a Pandas TimeSeries with values of <0.1 that indicate detection limits:

In [1]: type(ts)
Out[1]: pandas.core.series.TimeSeries

In [2]: ts[55:63]
Out[2]: Date
2006-08-07    0.8809099
2006-08-21     1.027876
2007-07-10    0.5982836
2007-07-26          0.8
2007-08-09         <0.1
2007-08-23     1.013378
2008-07-14    0.6568888
2008-07-29    0.6966623
Name: PO4 uM

I've been trying:

ts.str.contains('<0.1')

but can't figure out how to use this to replace my data values.

How best to replace these detection limit indicators with values that Pandas can handle?

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1 Answer 1

up vote 2 down vote accepted

I think you're best bet is to remove these special values when reading in (that way your dtype will be correct, float64).
To do this read_csv (and most similar functions) have an na_values argument:

na_values : list-like or dict, default None
    Additional strings to recognize as NA/NaN. If dict passed, specific per-column NA values

Note: I've copied ts[55:63] and used read_clipboard (which also takes this argument).

In [1]: pd.read_clipboard(sep='\s+', header=None, na_values='<0.1')
Out[1]: 
            0         1
0  2006-08-07  0.880910
1  2006-08-21  1.027876
2  2007-07-10  0.598284
3  2007-07-26  0.800000
4  2007-08-09       NaN
5  2007-08-23  1.013378
6  2008-07-14  0.656889
7  2008-07-29  0.696662

Into a (Time)Series you could use:

ts = pd.read_clipboard(sep='\s+', header=None, na_values='<0.1',
                       index_col=['date'], squeeze=True, names=['date', 'P04'],
                       parse_dates=['date'])

In [3]: ts
Out[3]: 
date
2006-08-07    0.880910
2006-08-21    1.027876
2007-07-10    0.598284
2007-07-26    0.800000
2007-08-09         NaN
2007-08-23    1.013378
2008-07-14    0.656889
2008-07-29    0.696662
Name: P04

This seems a much cleaner way than using:

ts[ts.str.contains('<0.1')] = np.nan
share|improve this answer
    
Yes, using na_values with pd.ExcelFile.parse worked to replace the <0.1 values with NaN, but I don't really want NaN here, because below detection limit is very different than missing values (Tufte argued that leaving out "no damage" values on the plot of o-ring damage played a significant role in the Challenger disaster). I would like to replace the '<0.1' values with 0.1 to be conservative. Unfortunately the Series with the '<0.1' values also had NaNs, so I had to do this to get it to work:ts[ts.str.contains('<0.1').replace(NaN,False)]=0.1 –  Rich Signell Feb 12 '13 at 10:51
    
@RichSignell You could use converters argument e.g. pd.read_clipboard(sep='\s+', header=None, converters={1: lambda x: 0.1 if x=='<0.1' else x}) :) –  Andy Hayden Feb 12 '13 at 12:39
    
Andy, I would love to use the converters approach, but I can't seem to get it to work. I'm sure it's something simple. urllib.urlretrieve(url='http://epi.whoi.edu/ipython/results/mdistefano/Falmouth‌​_data.csv',filename='Falmouth_data.csv');pd.read_csv('Falmouth_data.csv',index_co‌​l='Date', na_values=['?',None,'NS','no sample left','Sample Destroyed','machine error','#VALUE!'], converters={'PO4 uM': lambda x: 0.1 if x=='<0.1' else x}) –  Rich Signell Feb 12 '13 at 21:30
    
@RichSignell I get a 404 on that url, so I'm afraid I can't help. Also, I think this would be better for you to ask as a separate question rather than here :) –  Andy Hayden Feb 12 '13 at 22:39

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