======================== UPDATE #2 =============================================
What a day. I am very slowly making progress. But while PANDAS is very fast and powerful it has a steep learning curve and there are not very good examples (at least for what I am trying to do).
The latest issue is with a specific line:
catfile = infile[infile['dtu_topic_split'].map(lambda x: any(targetcat in x))]
which works in IPyNotebook, but not under Ubuntu and python 2.7
here is the error on Ubuntu:
Traceback (most recent call last): File "scikit2.py", line 27, in <module> catfile = infile[infile['dtu_topic_split'].map(lambda x: any(targetcat in x))] File "/usr/local/lib/python2.7/dist-packages/pandas-0.11.0-py2.7-linux-x86_64.egg/pandas/core/series.py", line 2408, in map mapped = map_f(values, arg) File "inference.pyx", line 861, in pandas.lib.map_infer (pandas/lib.c:41822) File "scikit2.py", line 27, in <lambda> catfile = infile[infile['dtu_topic_split'].map(lambda x: any(targetcat in x))] TypeError: 'bool' object is not iterable
and the working code + results in iPyNotebook
targetcat = 'Financial Services Industries' #targetcat = 'Payroll & Employment Tax' criterion = foo[foo['dtu_topic_split'].map(lambda x: any(targetcat in x))] print criterion[['dtu_docid','dtu_topic_split']][:10] dtu_docid dtu_topic_split 9 2010-0185 [Financial Services Industries] 17 2010-0152 [Financial Services Industries, International ... 46 2012-1421 [Financial Services Industries, Payroll & Empl... 49 2012-1413 [Financial Services Industries, Payroll & Empl... 66 2012-1370 [Energy Taxation, Financial Services Industrie... 94 2009-1786 [Financial Services Industries] 144 2012-1170 [Financial Services Industries, Real Estate] 163 2012-1101 [Financial Services Industries, Real Estate] 170 2009-1386 [Financial Services Industries] 249 2012-0754 [Expatriate Taxation, Financial Services Indus...
Here is the python version for iPYNotebook
print sys.version 2.7.4 (default, Apr 19 2013, 18:28:01) [GCC 4.7.3]
and from Ubuntu:
>>> import sys >>> print sys.version 2.7.4 (default, Apr 19 2013, 18:28:01) [GCC 4.7.3] >>>
Need help. I am sure I could be done with this data set-up and grooming if I used traditional processing. Still trying PANDAS but this is tough sledding and the saddest part is I am not even sure why the stuff I got to work, works. These type of errors breed frustration
======================== UPDATE #1 =============================================
Using the info in the 1st answer (thanks tshauck) I have found one way to accomplish the issue:
targetcat = 'International Taxation' criterion = foo[foo['dtu_topic_split'].map(lambda x: any(targetcat in x))]
This yields a list of rows where the targetcat is in the dataframe.dtu_topic_split series. Given I am new to panda is this the best way to handle. My intention it to build separate training modules for each of the 30-50 categories. I am unsure if I should iterate over the approximately 100K records in more traditional python style, or use the pandas technique. Again any alternatives or advise would be greatly appreciated.
I am new to Pandas and struggling to learn how to make use of the powerful capabilities. I posted yesterday with a strategy to solve this problem by building a separate dataframe. After reading more I am not sure it is the most efficient. I have tried several techniques to slect specific rows form a datafarame based on the existance of a specific value in a series field of the dataframe. Below is an sample of the data and my attempts.
print foo[['dtu_docid','dtu_topic_split']] /home/davidwaldrop/Dropbox/Miscelaneous/E&Y M&C Project/scikit training dtu_docid dtu_topic_split 0 2012-1553 [Energy Taxation, State & Local Taxation] 1 2012-1552 [Legislation & Policy, Financial Services] 2 2010-0227 [Quantitative Economics and Statistics] 3 2010-0215 [International Taxation, Asia] 4 2012-1529 [Ernst & Young Newsletters, This Week in Tax R...
And here is what I am working on now, to no avail:
targetcat = ['International Taxation'] criterion = foo['dtu_topic_split'].map(lambda x: x == targetcat) print foo[criterion] Empty DataFrame Columns: [id, dtu_docid, dtu_topic, dtu_content, dtu_topic_split] Index: 
What I want is a dataframe containing the records where 'International Taxation' is in the series stored in the field dtu_topic_split, or in the above example the record in foo with a dtu_topic_split value of [International Taxation, Asia].
As I mentioned I am really trying to learn Pandas and think it very powerful. As a newbie it is very difficult to not only find a way to do what I want, but also the best way along with the rational. My instinct tells me this may best be done with indexing, but I have not even gotten to that feature yet. Any insight is most appreciated.