2

This question is similar to the simple mysql operation -

UPDATE hpaai_month_div t, fahafa_monthly s 
SET t.col1=s.col1 WHERE t.col2=s.col2 AND t.year=s.year AND t.month=s.month;

Data :

CSV A
month    year   col2      col1
abc      2000   DEFSSDS   190
def      2001   GHISFDS   210
ghi      2002   SJDYHGF   910

CSV B
month   year    col2     col1    stat_fips
abc     2000    DEFSSDS   0        a
def     2001    GHISFDS   0        b
ghi     2002    SJDYHGF   0        c


Resulting CSV :

month    year   col2      col1    stat_fips
abc     2000    DEFSSDS   190       a
def     2001    GHISFDS   210       b
ghi     2002    SJDYHGF   910       c

Code so far : (not working as desired)

   df_a = pd.read_csv('a.csv')
   df_b = pd.read_csv('b.csv')
   merged_df = pd.merge(df_a, df_b, on="col1", how="left")

   merged_df = pd.concat([merged_df], axis=1)
   merged_df.to_csv('final_output.csv', encoding='utf-8', index=False)
   print open('final_output.csv').read()

How to get data as the result csv

2

If you drop 'col1' from 'df_b' ahead of time, you can let merge work with its defaults.

df_a.merge(df_b.drop('col1', 1))

  month  year     col2  col1 stat_fips
0   abc  2000  DEFSSDS   190         a
1   def  2001  GHISFDS   210         b
2   ghi  2002  SJDYHGF   910         c
0
2

It seems you need merge, last remove column col_:

#default inner join 
df = pd.merge(df1, df2, on=['col2','year','month'], suffixes=('','_'))
       .drop('col1_',axis=1)
print (df)
  month  year     col2  col1 stat_fips
0   abc  2000  DEFSSDS   190         a
1   def  2001  GHISFDS   210         b
2   ghi  2002  SJDYHGF   910         c

df = pd.merge(df1, df2, on=['col2','year','month'])
print (df)
  month  year     col2  col1_x  col1_y stat_fips
0   abc  2000  DEFSSDS     190       0         a
1   def  2001  GHISFDS     210       0         b
2   ghi  2002  SJDYHGF     910       0         c


df = pd.merge(df1, df2, on=['col2','year','month'], suffixes=('','_'))
print (df)
  month  year     col2  col1  col1_ stat_fips
0   abc  2000  DEFSSDS   190      0         a
1   def  2001  GHISFDS   210      0         b
2   ghi  2002  SJDYHGF   910      0         c
2
  • Whats the suffixes for?
    – Viv
    Mar 23 '17 at 13:55
  • If overlapping columns in both dataframes, it by default add _x and _y. suffixes. And parameter suffixes is for change default values.
    – jezrael
    Mar 23 '17 at 13:57

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