I am trying run a total of 8 threads on 4 cores.
I bind the threads in sets of 2 to each of the core by setting the affinity.
0,1 -> core A 2,3 -> core B 4,5 -> core C 6,7 -> core D
I am able to poll the threads to check if they are running. I am also able to collect the time at which it (s)tarted, (e)nd and the time at which (p)erformnace events are collected precisely. I know which of the two threads in the set is dead(by dead, i mean, the execution time is over). There can be cases where the thread 0 or thread 1 is longer than one another.
In either of the cases, i.e, when thread 0 or thread 1 is longer, I want to reiterate the shorter thread till the end of the bigger thread.
Previously, when I had just two threads per core on the overall system. I used to do a manual check like.. if either of the thread is dead.. keep running it till the point where the other is also dead.
But this comes with a lot of redundancy and loss of efficiency(because I was using IF statements)
If I want to scale it for two threads/ more than two threads per core, when each of the cores have a two/ more than two. How can we that?
I need ideas so that we can discuss on that.
this is what I got: As an example take "ted" and "talks" and as two threads on Core A. Assuming ted is shorter of the two threads. the data we have: Time at which it starts, ends, and data collection time. We can calculate the time difference between end-start of the thread ted and the thread talks.
TED_TIME_DIFF = 100ms
but the time period of thread talks keeps on increasing(checking from the calulation of collected times(c)). Assuming the collection time is 1ms
for example it can
TALKS_TIME_DIFF = 110ms next ms it is 111ms.. etc.
we can keep reiterating ted till talks time diff is stagnent.
Scripting language: Python 2.7 OS: Linux Kernel:2.6.xx using SPEC CPU BENCHMARK threads - if that is any importance
would be glad if you can help me out.