I want to store data from SQL to Pandas dataframe and do some data transformations and then load to another table suing airflow

Issue that I am facing is that connection string to tables are accessbale only through Airflow. So I need to use airflow as medium to read and write data.

How can this be done ?

MY code

Task1 = PostgresOperator(
    sql="SELECT * FROM Western.trip limit 5 ",
    params={'limit': '50'},

The output of task needs to be stored to dataframe (df) and after tranfromations and load back into another table.

How can this be done?

  • I am also looking for similar solution – pankaj May 2 at 6:40
  • Good Question, I am also facing excat same issue. Looking forward to the solution – Ria Alves May 2 at 6:41
  • @LuckyGuess, Any solutions from your side – Rahul rajan May 3 at 4:29
  • @Bernardo stearns reisen, Any solutions from your side – Rahul rajan May 3 at 4:30
  • @Bernardostearnsreisen, Can you look at this question. I really liked your explinations while answering questions with examples . I think is useful for many people – Ria Alves May 3 at 4:40

I doubt there's an in-built operator for this. You can easily write a custom operator

  • Extend PostgresOperator or just BaseOperator / any other operator of your choice. All custom code goes into the overridden execute() method
  • Then use PostgresHook to obtain a Pandas DataFrame by invoking get_pandas_df() function
  • Perform whatever transformations you have to do in your pandas df
  • Finally use insert_rows() function to insert data into table


As requested, I'm hereby adding the code for operator

from typing import Dict, Any, List, Tuple

from airflow.hooks.postgres_hook import PostgresHook
from airflow.operators.postgres_operator import PostgresOperator
from airflow.utils.decorators import apply_defaults
from pandas import DataFrame

class MyCustomOperator(PostgresOperator):

    def __init__(self, destination_table: str, *args, **kwargs):
        super().__init__(*args, **kwargs)
        self.destination_table: str = destination_table

    def execute(self, context: Dict[str, Any]):
        # create PostgresHook
        self.hook: PostgresHook = PostgresHook(postgres_conn_id=self.postgres_conn_id,
        # read data from Postgres-SQL query into pandas DataFrame
        df: DataFrame = self.hook.get_pandas_df(sql=self.sql, parameters=self.parameters)
        # perform transformations on df here
        df['column_to_be_doubled'] = df['column_to_be_doubled'].multiply(2)
        # convert pandas DataFrame into list of tuples
        rows: List[Tuple[Any, ...]] = list(df.itertuples(index=False, name=None))
        # insert list of tuples in destination Postgres table
        self.hook.insert_rows(table=self.destination_table, rows=rows)

Note: The snippet is for reference only; it has NOT been tested


Further modifications / improvements

  • The destination_table param can be read from Variable
  • If the destination table doesn't necessarily reside in same Postgres schema, then we can take another param like destination_postgres_conn_id in __init__ and use that to create a destination_hook on which we can invoke insert_rows method
| improve this answer | |
  • ,can you demostrate with an example , it will be really helpful – LDF_VARUM_ELLAM_SHERIAAVUM May 2 at 17:32
  • @y2k-Shubam, Can you show a sample example it will really helpful – pankaj May 2 at 17:34
  • @y2k-shubham, It will be helpful you can show a sample code, I am also having a similar issue. – sneha nair May 2 at 17:36
  • @LDF_VARUM_ELLAM_SHERIAAVUM, @pankaj, @sneha nair, @Ria Alves i've updated my answer to include code-snippet for reference – y2k-shubham May 2 at 20:33

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