On our production server we need to split 900k images into different dirs and update 400k rows (MySQL with InnoDB engine). I wrote a python script which goes through next steps:
- Select small chunk of data from db (10 rows)
- Make new dirs
- Copy files to the created dirs and rename it
- Update db (there are some triggers on update which will load server)
import os, shutil import database # database.py from tornado LIMIT_START_OFFSET = 0 LIMIT_ROW_COUNT = 10 SRC_PATHS = ('/var/www/site/public/upload/images/',) DST_PATH = '/var/www/site/public/upload/new_images/' def main(): offset = LIMIT_START_OFFSET while True: db = Connection(DB_HOST, DB_NAME, DB_USER, DB_PASSWD) db_data = db.query(''' SELECT id AS news_id, image AS src_filename FROM emd_news ORDER BY id ASC LIMIT %s, %s''', offset, LIMIT_ROW_COUNT) offset = offset + LIMIT_ROW_COUNT news_images = get_news_images(db_data) # convert data to easy-to-use list make_dst_dirs(DST_PATH, [i['dst_dirname'] for i in news_images]) # make news dirs news_to_update = copy_news_images(SRC_PATHS, DST_PATH, news_images) # list of moved files db.executemany(''' UPDATE emd_news SET image = %s WHERE id = %s LIMIT 1''', [(i['filename'], i['news_id']) for i in news_to_update]) db.close() if not db_data: break if __name__ == '__main__': main()
Quite simple task, but I'm a little bit nervous about performance.
How can I make this script more efficient?
UPD: After all I've used original script without any modifications. It took about 5 hours. And it was fast in the beginning and very slow in the end.