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I need to keep track of each position of a named column. So if the first column has the same name k times, its value would be 1*k. It's best shown in an example:

df1 = pd.DataFrame({'name':['n1', 'n2', 'n3']})
df1['pos'] = df1.index + 1

df2 = pd.DataFrame({'name':['n1', 'n3', 'n4']})
df2['pos'] = df2.index + 1

print "df1:\n", df1, '\n'
print "df2:\n", df2, '\n'

# Hack
df3 = df1.merge(df2, on='name', how='outer')
df3 = df3.fillna(0)
print df3

# Sum the desired values
df3['pos'] = df3.pos_x + df3.pos_y
del df3['pos_x']
del df3['pos_y']

# Produce desired output
print "\nDesired Output:\n", df3

The output is:

  name  pos
0   n1    1
1   n2    2
2   n3    3 

  name  pos
0   n1    1
1   n3    2
2   n4    3 

  name  pos_x  pos_y
0   n1      1      1
1   n2      2      0
2   n3      3      2
3   n4      0      3

Desired Output:
  name  pos
0   n1    2
1   n2    2
2   n3    5
3   n4    3

In df1 and df2, the pos column is being constructed by the index. I'm not picky, the pos column could be the same as the index.

Anyone know a more compact way to get the counts in the final pos column for each of the names?

I need to sum like this over hundreds of thousands of dataframes that I'll calculate iteratively, where pos column represents the performance of each name.

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1 Answer 1

up vote 4 down vote accepted

Another option is to concat rather than merge:

In [11]: df4 = pd.concat([df1, df2])

Then you can groupby 'name', and sum the result (pos):

In [12]: g = df4.groupby('name', as_index=False)

In [13]: g.sum()
  name  pos
0   n1    2
1   n2    2
2   n3    5
3   n4    3
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