Suppose I have data of the form

Name    h1    h2    h3    h4
A       1     nan   2     3
B       nan   nan   1     3
C       1     3     2     nan

I want to move all non-nan cells to the left (or collect all non-nan data in new columns) while preserving the order from left to right, getting

Name    h1    h2    h3    h4
A       1     2     3     nan
B       1     3     nan   nan
C       1     3     2     nan

I can of course do so row by row. But I hope to know if there are other ways with better performance.

up vote 2 down vote accepted

Here's what I did:

I unstacked your dataframe into a longer format, then grouped by the name column. Within each group, I drop the NaNs, but then reindex to the full h1 thought h4 set, thus re-creating your NaNs to the right.

from io import StringIO
import pandas

def defragment(x):
    values = x.dropna().values
    return pandas.Series(values, index=df.columns[:len(values)])

datastring = StringIO("""\
Name    h1    h2    h3    h4
A       1     nan   2     3
B       nan   nan   1     3
C       1     3     2     nan""")

df = pandas.read_table(datastring, sep='\s+').set_index('Name')
long_index = pandas.MultiIndex.from_product([df.index, df.columns])

print(
    df.stack()
      .groupby(level='Name')
      .apply(defragment)
      .reindex(long_index)  
      .unstack()  
)

And so I get:

   h1  h2  h3  h4
A   1   2   3 NaN
B   1   3 NaN NaN
C   1   3   2 NaN
  • I seem to remember there being a "trick" to do this efficiently, but can't recall it. I think by @DSM. – Andy Hayden Aug 18 '15 at 2:51
  • It works as described. Thank you! I'll go dig up the documentations on the methods you used. – Lelouch Aug 18 '15 at 3:02
  • @AndyHayden where'd your answer go? It was so much better! – Paul H Aug 18 '15 at 3:07
  • @PaulH it was wrong! Sort destroys the ordering as pointed out by Lelouch. There's definitely a trick here.... – Andy Hayden Aug 18 '15 at 3:09
  • Hurry up to 10k and you can see deleted answers :p – Andy Hayden Aug 18 '15 at 3:10

First, make function.

        def squeeze_nan(x):
            original_columns = x.index.tolist()

            squeezed = x.dropna()
            squeezed.index = [original_columns[n] for n in range(squeezed.count())]

            return squeezed.reindex(original_columns, fill_value=np.nan)

Second, apply the function.

df.apply(squeeze_nan, axis=1)

You can also try axis=0 and .[::-1] to squeeze nan to any direction.

[EDIT]

@Mxracer888 you want this?

def squeeze_nan(x, hold):
    if x.name not in hold:
        original_columns = x.index.tolist()

        squeezed = x.dropna()
        squeezed.index = [original_columns[n] for n in range(squeezed.count())]

        return squeezed.reindex(original_columns, fill_value=np.nan)
    else:
        return x

df.apply(lambda x: squeeze_nan(x, ['B']), axis=1)

enter image description here

  • I know this is a pretty dead thread. But I came across it and this particular answer mostly worked for me. I have more columns after the ones I need shifted that I need to stay unaffected. How can this one be modified to only 'shift' a range of a few certain columns? – Mxracer888 Oct 24 '17 at 1:22
  • @Mxracer888 Please check edit. If it's not what you want, please show me your desired I/O. – su79eu7k Oct 24 '17 at 2:57

Here's how you could do it with a regex (possibly not recommended):

pd.read_csv(StringIO(re.sub(',+',',',df.to_csv())))
Out[20]: 
  Name  h1  h2  h3  h4
0    A   1   2   3 NaN
1    B   1   3 NaN NaN
2    C   1   3   2 NaN
  • Can you post the results you get from this? I'm not seeing the OP's desired output when I try this. – Paul H Aug 18 '15 at 2:33
  • Ah I hadn't read the question properly, what do you think of my new answer ;) – maxymoo Aug 18 '15 at 4:52
  • mind: blown 0_o – Paul H Aug 18 '15 at 4:56

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