5

I searched and I couldn't find a problem like mine. So if there is and somehow I couldn't find please let me know. So I can delete this post.

I stuck with a problem to split pandas dataframe into different data frames (df) by a value.

I have a dataset inside a text file and I store them as pandas dataframe that has only one column. There are more than one sets of information inside the dataset and a certain value defines the end of that set, you can see a sample below:

The Sample Input

In [8]: df
Out[8]: 
  var1
0    a
1    b
2    c
3    d
4    endValue
5    h
6    f
7    b
8    w
9    endValue

So I want to split this df into different data frames. I couldn't find a way to do that but I'm sure there must be an easy way. The format I display in sample output can be a wrong format. So, If you have a better idea I'd love to see. Thank you for help.

The sample output I'd like

  var1
{[0    a
1    b
2    c
3    d
4    endValue]},
{[0    h
1    f
2    b
3    w
4    endValue]}

2
  • I have a dataset inside a text file and I store them as pandas dataframe that has only one column. Might it be possible to change how to data is parsed to get the correct format? Can you share some of the data?
    – AMC
    May 10, 2020 at 23:43
  • I shared sample input data and expected output data on my question and actually, I found a good way to solve it. Below you can see. Thank you. May 11, 2020 at 8:12

2 Answers 2

3

You could check where var1 is endValue, take the cumsum, and use the result as a custom grouper. Then Groupby and build a dictionary from the result:

d = dict(tuple(df.groupby(df.var1.eq('endValue').cumsum().shift(fill_value=0.))))

Or for a list of dataframes (effectively indexed in the same way):

l = [v for _,v in df.groupby(df.var1.eq('endValue').cumsum().shift(fill_value=0.))]

print(l[0])

       var1
0         a
1         b
2         c
3         d
4  endValue
0
3

One idea with unique index values is replace non matched values to NaNs and backfilling them, last loop groupby object for list of DataFrames:

g = df.index.to_series().where(df['var1'].eq('endValue')).bfill()
dfs = [a for i, a in df.groupby(g, sort=False)]
print (dfs)
[       var1
0         a
1         b
2         c
3         d
4  endValue,        var1
5         h
6         f
7         b
8         w
9  endValue]

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