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I'm familiar with the R data holders like vectors, dataframe, etc. but need to do some text analysis and it seems like python has some good setups for doing so. My question is where can I find an explanation of how python holds data.

Specifically I have a data set in a tab-separated file where the text is in the 3rd column and the scoring of the data that I need is in the 4th column.

id1            id2            text                             score
123            889     "This is the text I need to read..."      88
234            778     "This is the text I need to read..."      78
345            667     "This is the text I need to read..."      91

In R I'd just load it into a data frame named df1 and when I wanted to call a column I'd use df1$text or df1[,3] and if I wanted a specific cell I could use df1[1,3].

I am getting a feel for how to read data into python but not how to deal with table like structures.

How would you suggest working with this for a python newbie?

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Python has no equivalent to the data frame – David Heffernan Mar 8 '12 at 16:33
@DavidHeffernan What about that pandas stuff? Isn't that (intended to be) close? – joran Mar 8 '12 at 16:39
@joran That's 3rd party. I suppose I meant there is nothing built in in the way that the R data frame is built in. – David Heffernan Mar 8 '12 at 16:40
up vote 28 down vote accepted

Look at the DataFrame object in the pandas library.

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Mr Ullrich's answer of using the pandas library is the closest approach to the R data frame. However, you can get extremely similar functionality using the numpy array, with the data type set to object if necessary. Newer versions of numpy have field name capabilities similar to a data.frame, its indexing is actually somewhat more powerful than R's, and its ability to contain objects goes well beyond what R can do.

I use both R and numpy, depending on the task at hand. R is way better with formulas and built-in statistics. The Python code is more maintainable and easier to hook up to other systems.

Edited: added note that numpy now has field name capabilities

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R's data.frame can contain list columns. Each element of a list column can be anything you like including data objects, functions, etc. Is that what you mean? – Matt Dowle Mar 27 '12 at 14:10

I'm not sure how well this translates to 'R' which I never used, but in Python this is how I would approach it:

lines = list()
with open('data.txt','r') as f:
  for line in f:

That will read everything in a python list. Lists are zero-based. To get the text column from the second line:

print lines[1][2]

The score for that line:

print lines[1][3]
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There is no native equivalent to an R dataframe (and it's the main reason why I moved to R). However, you can use the rpy2 library (from http://thread.gmane.org/gmane.comp.python.rpy/1344):

import array
import rpy2.robjects as ro

d = dict(x = array.array('i', [1,2]), y = array.array('i', [2,3]))
dataf = ro.r['data.frame'](**d)

When I was using Python, I would mainly use the dict, which are not nearly as nice for tabular data and it is a pain if there are nested dicts (because the default entry types needs to be defined when you create a dict, you have to tell it that the type is a dict within a dict, etc.). My most egregious example is:

spikecounts = defaultdict(lambda: defaultdict(lambda: defaultdict(dict)))

Which I could then access with the keys I wanted:

spikecounts[cellid][rep][vkey][trialkey] = 0.0

You can also use a 2d array and convert all the data into numerical types (bye-bye factors).

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One option that I've used in the past is csv.DictReader, which lets you reference data in a row by name (each row becomes a dict):

import csv
with open('data.txt') as f:
    reader = csv.DictReader(f, delimiter = '\t')
    for row in reader:
        print row


{'text': 'This is the text I need to read...', 'score': '88', 'id2': '889', 'id1': '123'}
{'text': 'This is the text I need to read...', 'score': '78', 'id2': '778', 'id1': '234'}
{'text': 'This is the text I need to read...', 'score': '91', 'id2': '667', 'id1': '345'}
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