I've written these Python methods in my custom Airflow operator to convert a dictionary to a dataframe then to StringIO object and upload it to S3 as a CSV file without saving locally.

    def execute(self, context):
        s3_hook = S3Hook(aws_conn_id=self.s3_conn_id)
        retailer, d1 = context['task_instance'].xcom_pull(self.data_source)
        self._upload_file(d1, retailer, s3_hook)

    def _upload_to_s3(self, df, s3_hook):
        csv_buffer = StringIO()

    def _upload_file(self, d, retailer, s3_hook):
        self.s3_key = f"S3_STAGING/{retailer}/{retailer}_summary.csv"
        df = pd.DataFrame.from_dict(d, orient="index")
        df.index.name = 'product_code'
        self._upload_to_s3(df, s3_hook)

The DAG runs and uploads the file successfully, and the file looks normal when using S3 query on it. But when I try to query it in Snowflake:

select t.$1 as description,
       t.$2 as parent_company
from @S3_STAGING/S3_STAGING/sample/sample_summary.csv as t

All columns are concatenated into one for some reasons. Is there any ways to fix this?

1 Answer 1


Can you check if you defined a specific field_delimiter for the stage? To be sure, can you create a file format and use it:

create file format myformat type = 'csv';

select t.$1 as description, t.$2 as parent_company from @S3_STAGING/S3_STAGING/sample/sample_summary.csv (file_format => 'myformat') t;


Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.