First sorry if the question was already answered, I searched both here and Google and couldn't find my answer. This question can't possibly haven't been asked, but it is hidden pretty deep under all the "Just use LEFT JOIN" and "store it in an array" answers.
I need to load a lot of data spread across multiple tables (then insert it into another database engine, but that's not important, I need to optimize my SELECTs).
The table layout looks like this:
Table A with a_id field Table B with a_id and b_id field Table C with b_id and c_id field ... (goes another 3-4 levels like this).
I currently access the data this way (pseudo code):
query1 = SELECT ... FROM TableA WHERE something=$something foreach query1 as result1: query2 = SELECT ... FROM TableB WHERE b_id=result1.a_id foreach query2 as result2: query3 = SELECT ... FROM TableC WHERE bc_id=result2.b_id foreach query3 as result3: // Another few levels of this, see the millions of SELECTs coming?
The only solutions I have found so far are:
- Use the slow way and send multiple queries (current solution, and it takes ages to complete my small test set)
- Use a ton of LEFT JOIN to have all the data in one query. Involves transmitting a ton of data thousands of times and so some fancy logic on client side to split this into their appropriate tables again since each row will contain the content of its parent tables. (I use OOP and each table maps to an object, and each object contains each-other).
- Store each object from table A in an array, then load all Table B, store into an array, continue on Table C. Works for small sets, but mine is a few GB large, won't fit into ram at all.
Is there a way to avoid doing 10k queries per second in such a loop?
(I'm using PHP, converting from MySQL to MongoDB which handles nested objects like this way better, if this helps)
EDIT: There seem to have some confusions about what I'm trying to do and why. I will try to explain better: I need to do a batch conversion to a new structure. The new structure works very well, don't even bother looking on that. I'm remaking a very old website from scratch, and chose MongoDB as my storage engine because we have loads of nested data like this, and it works very well for me. Switching back to MySQL is not even an option for me, the new structure and code is alreay well established and I've been working on this for about a year now. I am not looking in a way to optimize the current schema, I can't. The data is that way, and I need to read the whole database. Once. Then I'm done with it.
All I need to do, is to import the data from the old website, process this and convert it so I can insert it into our new website. Here comes MySQL: The older site was a very normal PHP/MySQL site. We have a lot of tables (about 70 actually or something). We don't have many users, but each users have a ton of data spanned on 7 tables.
What I currently do, is that I loop on each user (1 query). For each of these users (70k), I load Table A which contains 10-80 rows for each user. I then query Table B on every loop of A (so, 10-80 times 70k), which contains 1-16 rows for each A. There comes Table C, which holds 1-4 rows for each B. We are now at 4*80*70k queries to do. Then I have D, 1-32 rows for each C. E with 1-16 rows for each D. F with 1-16 rows for each E. Table F has a couple of millions rows.
I end up doing thousands if not millions of queries to the MySQL server, where the production database is not even on my local machine, but 5-10ms away. Even at 0.01ms, I have hours just in network latency. I created a local replica so my restricted test set runs quite faster, but it's still going to take a long while to download a few GB of data like this.
I could keep the members table in RAM and maybe Table A so I can download each database in one shot instead of doing thousands of queries, but once at Table B and further it would be a real mess to track this in memory, especially since I use PHP (command line, at least), which uses a bit more memory than if it was a C++ program where I could have tight RAM control. So this solution doesn't work either.
I could JOIN all the tables together, but if it works for 2-3 tables, doing this for 7 tables would result in an extra huge bandwidth loss transferring the same data from the server millions of times without a use (while also making the code really complicated to split them back in the appropriate order).
Question is: Is there a way to not query the database so often? Like, telling the MySQL server with a procedure or something that I will need all these datasets in this order so I don't have to re-do a query each row and so the database just continually spits out data for me? The current problem is just that I do so much queries that both the script AND the database are almost idle because one is always waiting for another one. The queries themselves are actually very fast, basic prepared SELECT queries on indexed int fields.
This is a problem I always got myself into with MySQL in the past, which never really caused me trouble until now. In its current state, the script takes several hours if not days to complete. It's not THAT bad, but if there's a way I can do better I'd appreciate to know. If not, then okay, I'll just wait for it to finish, at least it will run max 3-4 times (2-3 test runs, have users check their data is converted correctly, fix bugs, try again, and the final run with the last bugfixes).
Thanks in advance!