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I've the following Pandas dataframes with following schemas:

  • df_1:
    • id
    • identifier

Input data here:

 id identifier
    1   SQL
    2   JAVA
    3   C#
  • df_2:
    • id
    • string_resume
    • string_long

Input here:

     id string_resume   string_long
1   Structured Query Language   SQL is a domain-specific language
2   Java is a general-purpose programming language  It is intended to let application developers “write once, run anywhere” (WORA)
3   PHP is a programming language   Usually it is used for Web Apps

And I am trying to join in order to see if the identifier column belongs to string_resume or string_long. I made the logic in SQL:

SELECT *
FROM df_1
INNER JOIN  df_2 ON
    df_1.id = df_2.id 
    AND (   df_2.string_resume LIKE '%' + df_1.identifier + '%'
        OR  df_2.string_long LIKE '%' + df_1.identifier + '%'
        )

In Python I am trying with the below code (merge) but it only returns the inner join with operation "=".

res = pd.merge(df_1, df_2, left_on=['id', 'identifier'], right_on=['cod_system_log_event', 'string_resume', 'string_long'], how='left').drop('id', axis=1)

The output must be:

  id    identifier  id  string_resume   string_long
    1   SQL 1   Structured Query Language   SQL is a domain-specific language used in programming
    2   JAVA    2   Java is a general-purpose programming language  It is intended to let application developers “write once, run anywhere” (WORA)

How can apply the SQL Logic above into Python?

Many thanks

  • show few lines of input and desired output – Zaraki Kenpachi Jun 15 at 10:28
  • @ZarakiKenpachi I add the input and desired output on my question :) – Pedro Alves Jun 15 at 10:39
  • 1
    @anky_91 I only want to join df_1 and df_2 using two conditions: in case of df_2.string_resume contains df_1.identifier OR in case of df_2.string_long contains df_1.identifier. It's only this... – Pedro Alves Jun 15 at 15:09

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