Please bear with me as I explain the problem, how I tried to solve it,
and my question on how to improve it is at the end.
I have a 100,000 line csv file from an offline batch job and I needed to
insert it into the database as its proper models. Ordinarily, if this is a fairly straight-forward load, this can be trivially loaded by just munging the CSV file to fit a schema, but I had to do some external processing that requires querying and it's just much more convenient to use SQLAlchemy to generate the data I want.
The data I want here is 3 models that represent 3 pre-exiting tables
in the database and each subsequent model depends on the previous model.
For example:
Model C --> Foreign Key --> Model B --> Foreign Key --> Model A
So, the models must be inserted in the order A, B, and C. I came up
with a producer/consumer approach:
- instantiate a multiprocessing.Process which contains a
threadpool of 50 persister threads that have a threadlocal
connection to a database
- read a line from the file using the csv DictReader
- enqueue the dictionary to the process, where each thread creates
the appropriate models by querying the right values and each
thread persists the models in the appropriate order
This was faster than a non-threaded read/persist but it is way slower than
bulk-loading a file into the database. The job finished persisting
after about 45 minutes. For fun, I decided to write it in SQL
statements, it took 5 minutes.
Writing the SQL statements took me a couple of hours, though. So my
question is, could I have used a faster method to insert rows using
SQLAlchemy? As I understand it, SQLAlchemy is not designed for bulk
insert operations, so this is less than ideal.
This follows to my question, is there a way to generate the SQL statements using SQLAlchemy, throw
them in a file, and then just use a bulk-load into the database? I
know about str(model_object) but it does not show the interpolated
values.
I would appreciate any guidance for how to do this faster.
Thanks!