I have recently joined a new company and am new to python (their preferred scripting language) and have been working with cx_oracle to create some ETL processes. The scripts I have built so far have been single-threaded jobs that select the subset of columns I need from an Oracle source DB and write the output to a named pipe where an external process is waiting to read that data and insert it into the target.
This has worked fine until I get to some tables that are in the 500 million -2 billion row range. The job still works, but it is taking many hours to complete. These large source tables are partitioned so I have been trying to research ways to coordinate parallel reads of different partitions so I can get two or more threads working concurrently, each writing to a separate named pipe.
Is there an elegant way in cx-oracle to handle multiple threads reading from different partitions of the same table?
Here's my current (simple) code:
import cx_Oracle import csv # connect via SQL*Net string or by each segment in a separate argument connection = cx_Oracle.connect("user/password@TNS") csv.register_dialect('pipe_delimited', escapechar='\\' delimiter='|',quoting=csv.QUOTE_NONE) cursor = connection.cursor() f = open("<path_to_named_pipe>", "w") writer = csv.writer(f, dialect='pipe_delimited', lineterminator="\n") r = cursor.execute("""SELECT <column_list> from <SOURCE_TABLE>""") for row in cursor: writer.writerow(row) f.close()
Some of my source tables have over 1000 partitions so hard-coding the partition names in isn't the preferred option. I have been thinking about setting up arrays of partition names and iterating through them, but if folks have other ideas I'd love to hear them.