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I have a text file (data.txt) like below:

name height  weight
    A   15.5    55.7
    B   18.9    51.6
    C   17.4    67.3
    D   11.4    34.5
    E   23.4    92.1

I want to make list in python for each column using pandas.

import pandas
with open (pandas.read_csv('data.txt')) as df:
    name= df.icol(0)
    height= df.icol(1)
    weight= df.icol(2)
    print (name)
    print (height)
    print (weight)

I also want to avoid the headers (name, height, weight) from the list.

print (df) provides as follows:

0        A\t15.5\t55.7
1        B\t18.9\t51.6
2        C\t17.4\t67.3
3        D\t11.4\t34.5
4        E\t23.4\t92.1
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did you not ask this same question with an account named lisa? – dansalmo Jun 12 '13 at 4:25
read_csv expects commas by default, not tabs, so it has failed to parse your data into columns. Try again with read_csv('data.txt', delim_whitespace=True). – Dan Allan Jun 12 '13 at 5:02
But... why would you want these as lists?? – Andy Hayden Jun 12 '13 at 5:10
@andy for further computation – user2476874 Jun 12 '13 at 5:11
Exactly... you don't want to be using lists for that!! – Andy Hayden Jun 12 '13 at 5:12

4 Answers 4

up vote 0 down vote accepted

Its not clear why you want to use pandas because you haven't said why you want them specifically in a list, so here is a solution using csv:

import csv

with open('data.txt') as f:
    reader = csv.DictReader(f, delimiter='\t')
    rows = list(reader)

Now rows is a list of dictionaries, each with a header that represents your rows; to get each of your columns:

names = [i['name'] for i in rows]
heights = [float(i['height']) if i['height'] else 0.0 for i in rows]
weights = [float(i['weight']) if i['weight'] else 0.0 for i in rows]
share|improve this answer
@ burhan actually, i wanted to use pandas thinking that will simplify the program. but pandas did not work as i thought. so now considering your solution too. – user2476874 Jun 12 '13 at 5:19
It is often best to ask for help with the problem and not the solution to the problem. This is often referred to the XY problem – Burhan Khalid Jun 12 '13 at 5:23
@ burhan i got error with your code Traceback (most recent call last): File "E:\PYTHON\", line 3, in <module> reader = csv.DictReader(delimiter='\t') TypeError: __init__() takes at least 2 arguments (1 given) – user2476874 Jun 12 '13 at 5:32
still the lists of height and weight are in strings, want to get in floats – user2476874 Jun 12 '13 at 5:52
See the updated answer. I added a default value of 0.0 to heights and weights in case they were blank in the file (otherwise you'd get a TypeError exception). – Burhan Khalid Jun 12 '13 at 6:45

To convert a Series (e.g., a column of a DataFrame) to an ordinary Python list of values without the header, use the Series method tolist().

In [9]: df
  name  height  weight
0    A    15.5    55.7
1    B    18.9    51.6
2    C    17.4    67.3
3    D    11.4    34.5
4    E    23.4    92.1

In [10]: name, height, weight = [df[col].tolist() for col in df]

In [11]: name
Out[11]: ['A', 'B', 'C', 'D', 'E']

and so on.

share|improve this answer
my df output looks like yours above, but when I try df['name'].tolist() I get a KeyError: u'no item named name' message. – dansalmo Jun 12 '13 at 4:47
@ dansalmo yes, i also got similiar error as you. please explore further... – user2476874 Jun 12 '13 at 4:53
Would you post the output of df exactly? I suspect your column names have not loaded correctly. – Dan Allan Jun 12 '13 at 4:56
yes, i have appended to the question – user2476874 Jun 12 '13 at 5:01
df = pandas.read_csv("pandas_test.txt", sep=r"\s+") was needed to handle the leading white space in example file. – dansalmo Jun 12 '13 at 15:30

Try something like this:

import pandas
df = pandas.read_csv('data.txt')
# Assuming there's a columns with the headers 'name', 'height', 'weight'
name = list(df['name'])
height = list(df['height'])
weight = list(df['weight'])
print name
print height
print weight

Figured this might work after playing with this example and looking at the docs for read_csv

If you want to be a bit more dynamic with headers you can do

for k in df.keys():
    l = list(df[k])
    print l

which will iterate over all columns and create lists for them.

share|improve this answer

Because the example text file above has leading white space in the first column, the following must be used to prevent incorrect table importing:

df = pandas.read_csv("pandas_test.txt", sep=r"\s+")
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