36

I'm using python 2.7.3 and Pandas version 0.12.0.

I want to drop the row with the NaN index so that I only have valid site_id values.

print df.head()
            special_name
site_id
NaN          Banana
OMG          Apple

df.drop(df.index[0])

TypeError: 'NoneType' object is not iterable

If I try dropping a range, like this:

df.drop(df.index[0:1])

I get this error:

AttributeError: 'DataFrame' object has no attribute 'special_name'

7 Answers 7

52

With pandas version >= 0.20.0 you can:

df = df[df.index.notnull()]

With older versions:

df = df[pandas.notnull(df.index)]

To break it down:

notnull generates a boolean mask, e.g. [False, False, True], where True denotes the value at the corresponding position is null (numpy.nan or None). We then select the rows whose index corresponds to a true value in the mask by using df[boolean_mask].

4
  • 1
    Shouldn't that be notnull() instead of isnull()?
    – kadee
    Jan 10, 2016 at 15:53
  • 1
    Is same as df[df.index.notnull()]
    – Zero
    Oct 4, 2017 at 17:46
  • 1
    Thanks to Pietro Battiston and Zero for the latest best answer.
    – Tim Diels
    Dec 18, 2017 at 11:34
  • This is indeed the cleanest and most concise answer. I'd just add that it needs to be assigned back to the original df or to another dataframe for the null indices to be truly considered dropped from the dataframe.
    – autonopy
    Mar 12, 2021 at 15:04
19

I've found that the easiest way is to reset the index, drop the NaNs, and then reset the index again.

In [26]: dfA.reset_index()
Out[26]: 
  index special_name
0   NaN        Apple
1   OMG       Banana

In [30]: df = dfA.reset_index().dropna().set_index('index')

In [31]: df
Out[31]: 
      special_name
index             
OMG         Banana
2
  • 14
    df.loc[df.index.dropna()] works in recent versions.
    – Zero
    Oct 4, 2017 at 17:45
  • 1
    This is going to drop rows that have a null value in ANY row, not just the index. I'd recommend using @timdiels's answer instead.
    – Robert Yi
    May 16, 2019 at 20:32
4

None of the answers worked 100% for me. Here's what worked:

In [26]: print df
Out[26]:            
          site_id      special_name
0         OMG          Apple
1         NaN          Banana
2         RLY          Orange


In [27]: df.dropna(inplace=True)
Out[27]:            
          site_id      special_name
0         OMG          Apple
2         RLY          Orange

In [28]: df.reset_index(inplace=True)
Out[28]:            
          index     site_id      special_name
0         0         OMG          Apple
1         2         RLY          Orange

In [29]: df.drop('index', axis='columns', inplace=True)
Out[29]:             
          site_id      special_name
0         OMG          Apple
1         RLY          Orange
4

As of pandas 0.19, Indexes do have a .notnull() method, so the answer by timdiels can be simplified to:

df[df.index.notnull()]

which I think is (currently) the simplest you can get.

2

Tested this to be working :

df.reset_index(inplace=True)

df.drop(df[df['index'].isnull()].index, inplace=True)


How I checked the above

Replicated the table in the original question using df=pd.DataFrame(data=['Banana', 'Apple'], index=[np.nan, 'OMG'],columns=['Special_name'])

then input the above two code lines- which I try to explain in human language below:

  • 1st line resets the index to integers, and the NaN is now in a column named after the original name of the index ('index' in the example above as there was no name specified) - pandas does this automatically with the reset_index() command.
  • 2nd line from innermost brackets: df[df['index'].isnull()] filters rows for which column named 'index' shows 'NaN' values using isnull() command. .index is used to pass an unambiguous index object pointing to all 'index'=NaN rows to the df.drop( in the outermost part of the expression.

nb: tested the above command to work on multiple NaN values in a column

Using Python 3.5.1 , Pandas 0.17.1 via Anaconda package 32bits

2

Edit: the following probably only applies to MultiIndexs, and is in any case obsoleted by the new df.index.isnull() function (see other answers). I'll leave this answer just for historical interest.

For people who come to this now, one can do this directly without reindexing by relying on the fact that NaNs in the index will be represented with the label -1. So:

df = dfA[dfA.index.labels!=-1]

Even better, in Pandas>0.16.1, one can use drop() to do this inplace without copying:

dfA.drop(labels=[-1], level='index', inplace=True)

NB: It's a bit misleading that the index level is called 'index': it would usually be something more use-specific like 'date' or 'experimental_run'..

4
  • 1
    Doesn't work in pandas 0.17.0. Index has no labels attribute, The suggested drop leads to AssertionError: axis must be a MultiIndex.
    – Tim Diels
    Nov 26, 2015 at 12:39
  • What if my index has both NaN values and -1 values? Dec 7, 2017 at 11:04
  • @LaurensKoppenol The code above references the labels of the index, not the index directly: NaN values in the index are represented by -1 in the labels. I don't believe the labels attribute can ever contain NaN. Dec 9, 2017 at 19:04
  • @timdiels thanks for comment - could well be the case that this doesn't work without MultiIndex. In any case I think it's an obsoleted answer now that pandas has a df.index.notnull() function. I'll leave it stand for historical interest. Dec 9, 2017 at 19:06
0

Alternatively you can use query:

In [4]: df.query('index == index')
Out[4]: 
        special_name
site_id             
OMG            Apple

This works as NaN when compared to itself returns False:

In [5]: np.nan == np.nan
Out[5]: False

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.