Pandas beginner here. I'm looking to return a full column's data and I've seen a couple of different methods for this.

What is the difference between the two entries below, if any? It looks like they return the same thing.



4 Answers 4


The latter is basically syntactic sugar for the former. There are (at least) a couple of gotchas:

  • If the name of the column is not a valid Python identifier (e.g., if the column name is my column name?!, you must use the former.

  • Somewhat surprisingly, you can only use the former form to completely correctly add a new column (see, e.g., here).

Example for latter statement:

import pandas as pd

df = pd.DataFrame({'a': range(4)})
df.b = range(4)
>> df.columns
Index([u'a'], dtype='object')

For some reason, though, df.b returns the correct results.

  • Your last statement is untrue unless you can provide sample code
    – EdChum
    Commented Jul 17, 2015 at 14:01
  • Will do so. <padding>
    – Ami Tavory
    Commented Jul 17, 2015 at 14:03
  • I think the issue you link to is surprising but I'd never try that, thanks for the link though
    – EdChum
    Commented Jul 17, 2015 at 14:03
  • @EdChum I remembered there was a problem with it - see above. I've had loads of trouble with this in the past.
    – Ami Tavory
    Commented Jul 17, 2015 at 14:07
  • Yeah it's unclear what the rules are so I always avoid it now
    – EdChum
    Commented Jul 17, 2015 at 14:08

They do return the same thing. The column names in pandas are akin to dictionary keys that refer to a series. The column names themselves are named attributes that are part of the dataframe object.

The first method is preferred as it allows for spaces and other illegal operators.

For a more complete explanation, I recommend you take a look at this article: http://byumcl.bitbucket.org/bootcamp2013/labs/pd_types.html#pandas-types

Search 'Access using dict notation' to find the examples where they show that these two methods return identical values.

  • the article is also a good way to build context about what pandas is and how it thinks :)
    – AZhao
    Commented Jul 17, 2015 at 14:01

They're the same but for me the first method handles spaces in column names and illegal characters so is preferred, example:

In [115]:

df = pd.DataFrame(columns=['a', ' a', '1a'])
Empty DataFrame
Columns: [a,  a, 1a]
Index: []

In [116]:

print(df.a) # works
print([' a']) # works
print(df.1a) # error
  File "<ipython-input-116-4fa4129a400e>", line 3
SyntaxError: invalid syntax

Really when you use dot . it's trying to find a key as an attribute, if for some reason you have used column names that match an attribute then using dot will not do what you expect.


In [121]:

df = pd.DataFrame(columns=['index'], data = np.random.randn(3))
0  0.062698
1 -1.066654
2 -1.560549
In [122]:

Int64Index([0, 1, 2], dtype='int64')

The above has now shown the index as opposed to the column 'index'


In case if you are working on any ML projects and you want to extract feature and target variables separately and need to have them separably. Below code will be useful: This is selecting features through indexing as a list and applying them to the dataframe. in this code data is DF.

print('The dependent variable is')
print('The independent variables are')

The output for the same can be obtained as given below:

The dependent variable is
The independent variables are
['age', 'job', 'marital', 'education','day_of_week', ... etc]

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