Reputation: 5385
I have the following problem: I have two pandas data frames of different length containing some rows and columns that have common values and some that are different, like this:
df1: df2:
Column1 Column2 Column3 ColumnA ColumnB ColumnC
0 a x x 0 c y y
1 c x x 1 e z z
2 e x x 2 a s s
3 d x x 3 d f f
4 h x x
5 k x x
What I want to do now is merging the two dataframes so that if ColumnA and Column1 have the same value the rows from df2 are appended to the corresponding row in df1, like this:
df1:
Column1 Column2 Column3 ColumnB ColumnC
0 a x x s s
1 c x x y y
2 e x x z z
3 d x x f f
4 h x x NaN NaN
5 k x x NaN NaN
I know that the merge is doable through
df1.merge(df2,left_on='Column1', right_on='ColumnA')
but this command drops all rows that are not the same in Column1 and ColumnA in both files. Instead of that I want to keep these rows in df1 and just assign NaN to them in the columns where other rows have a value from df2, as shown above. Is there a smooth way to do this in pandas?
Upvotes: 49
Views: 124291
Reputation: 9348
How about using "concat"?
Dataframe column contents no need to be the same/matched, it will append.
import pandas as pd
from io import StringIO
csvfile = StringIO(
"""Column1 Column2 Column3
a x x
c x x
e x x
d x x
h x x
k x x
""")
csvfile_1 = StringIO(
"""ColumnA ColumnB ColumnC
c y y
e z z
a s s
d f f
""")
df = pd.read_csv(csvfile, sep = '\t', engine='python')
df_1 = pd.read_csv(csvfile_1, sep = '\t', engine='python')
df_1 = df_1.rename({'ColumnA':'Column1'}, axis='columns')
df.set_index('Column1',inplace=True)
df_1.set_index('Column1',inplace=True)
# column contents no need to be the same, it will append
df_final = pd.concat([df,df_1],axis=1,sort=False).reset_index()
print (df_final)
Output as:
index Column2 Column3 ColumnB ColumnC
0 a x x s s
1 c x x y y
2 e x x z z
3 d x x f f
4 h x x NaN NaN
5 k x x NaN NaN
Upvotes: 3
Reputation: 2048
You can read the documentation here: http://pandas.pydata.org/pandas-docs/stable/generated/pandas.DataFrame.merge.html
What you are looking for is a left join. The default option is an inner join. You can change this behavior by passing a different how argument:
df1.merge(df2,how='left', left_on='Column1', right_on='ColumnA')
Upvotes: 62
Reputation: 388
You can simply use merge with using on and list as well
result = df1.merge(df2, on=['Column1'])
For more information follow link
Upvotes: 5
Reputation: 1230
Looks like you're looking for something like a left-join. See if this example helps: http://pandas.pydata.org/pandas-docs/stable/comparison_with_sql.html#left-outer-join
You can basically pass a parameter to merge()
called how='left'
Upvotes: 7