I am modelling and solving a linear program (LP) using single-threaded CPLEX with Java (under Linux). My aim is to solve multiple small LPs in parallel threads, ideally with each core independently solving one LP.
The problem is that solving two or more LPs in parallel is a lot slower than solving a single LP. In a very simple test, I concurrently started multiple identical processes that would solve the same LP. The difference in runtimes between starting a single process and starting multiple ones is huge:
- 1 process: 180 s
- 2 processes: 225 s
- 3 processes: 280 s
Likewise, starting multiple threads from the same process to concurrently solve multiple LPs was a lot slower than solving a single LP.
I suspected memory access could be the bottleneck, but testing a piece of code that would often read and write to memory resulted in comparable runtimes:
- 1 process: 87 s
- 2 processes: 85 s
- 3 processes 88 s
Any idea what could be causing the slowness?
The machine I am running this has 6 cores and plenty of memory to avoid any swapping. The IBM ILOG Cplex library is version 12.5.