I have a Redshift server, which I initiate via psycopg2 (note that ODBC is not supported on the company server so I cant use pyodbc).
Currently it is taken over 10 minutes for 30-35k rows via
pd.to_sql(), which writes from dataframe into the Redshift DB. So as a work-around I download DF as csv, push file to S3, and then use
copy to write into the DB.
fast_executemany solution as per Speeding up pandas.DataFrame.to_sql with fast_executemany of pyODBC would have been perfect- however this is not supported in
I also found
d6tstack as per https://github.com/d6t/d6tstack/blob/master/examples-sql.ipynb but
pd_to_psql doesn't work for Redshift, only Postgresql (can't
copy... from stdin)
Any alternatives I can use for my case?
This is my code:
import sqlalchemy as sa DATABASE = "" USER = "" PASSWORD = "" HOST = "...us-east-1.redshift.amazonaws.com" PORT = "5439" SCHEMA = "public" server = "redshift+psycopg2://%s:%s@%s:%s/%s" % (USER,PASSWORD,HOST,str(PORT),DATABASE) engine = sa.create_engine(server) conn = engine.raw_connection() with conn.cursor() as cur: cur.execute('truncate table_name') df.to_sql('table_name', engine, index=False, if_exists='append')