I have a query that involves 3 Tables. Let's say A, B and C. A is master of B, and B is the master of C. Let's also assume that for every A there's ate least 30 Bs, and for each B there's at least 100 Cs.
The requirement involves presenting each A, then all the Bs for that A within that A, and then all the Cs within each B. So if there are 200 A's, that would bring me like 600000 rows.
There's also a lot of concurrency on the server, so if queries take long, users may refresh and there can be memory leaks.
So we are implementing and experimenting on various solutions:
Execute a big query that joins the 3 tables and then organize the result in php.
We have built a module that can open a number of http sockets and execute several php pages in parallel. So, we could put each table in separate pages and gather what needed, already ready for presentation through these sockets. The module manages a stack of results, available sockets, and rendering, so data will only be rendered when it has to, not when it arrives.
Pros and Cons:
Pro: Database does everything for me. Pro: There can be more concurrent requests at the same time if datasets are small.
Con: Lots of processing in php, if there are too many records, many users can wait forever for their data to arrive since its being rendered linearly. Con: If users reload, there can be many gigantic long lasting queries and php processes being executed, wich are eating up memory and processor.
2. Pro: In tests we've done, paralleled php processing is a lot faster, like 500% faster than using one process for the whole thing. Pro: Memory usage and memory leaks are reduced since processes last very few time.
Con: Processor is jammed sometimes with the amount of concurrent requests done by the sockets, its being solved by limiting the amount of sockets that can be opened by a page by 5. So for the 3 tables, there can be a maximum of 125 sockets open at a time (A opens 5, all its Bs open 5 (25) and all its Cs open 5(125)). Con: Not using the database at its full.
We are being oriented towards the parallelization that can be done with the 2nd solution. We think that with a little load balancing we can increase the speed even more, but we would be sub-utilizing the database.
The questions are:
has someone done anything similar? what have you done when you've needed to produce big reports using php? have you buffered data on files? should we produce reports in another language and pass them to php?
If sql could produce different data sets within the gigantic query and organize the data by some parameters, that would be so awesome!