I am managing a data pipeline using Kedro and at the last step I have a huge csv file stored in a S3 bucket and I need to load it back to SQL Server.
I'd normally go about that with a bulk insert, but not quite sure how to fit that into the kedro templates. This are the destination table and the S3 Bucket as configured in the catalog.yml
flp_test:
type: pandas.SQLTableDataSet
credentials: dw_dev_credentials
table_name: flp_tst
load_args:
schema: 'dwschema'
save_args:
schema: 'dwschema'
if_exists: 'replace'
bulk_insert_input:
type: pandas.CSVDataSet
filepath: s3://your_bucket/data/02_intermediate/company/motorbikes.csv
credentials: dev_s3
def insert_data(self, conn, csv_file_nm, db_table_nm):
qry = "BULK INSERT " + db_table_nm + " FROM '" + csv_file_nm + "' WITH (FORMAT = 'CSV')"
# Execute the query
cursor = conn.cursor()
success = cursor.execute(qry)
conn.commit()
cursor.close
- How do I point
csv_file_nm
to mybulk_insert_input
S3 catalog? - Is there a proper way to indirectly access
dw_dev_credentials
to do the insert?