I've been toiling with threads and processes for a while now to try to speed up my very parallel job in IPython. I'm not sure how much detail about the function I'm calling is useful, so here's a bash but ask if you need more.
My function's call signature looks like
nl are parameters for observed values and
dmax are parameters that represent models against which the observations will be compared. (
steps are fixed numerical parameters for the function.) The function loops through all the models in
m and, using associated information in
dmax, calculates a probability that this model matches. Note that
m is quite big: it's a list of about 700 000 22x3 NumPy arrays.
dmax are of similar sizes. If releant, my normal IPython instance uses about 25% of system memory in
top: 4GB of my 16GB of RAM.
I've tried to parallelize this in two ways. First, I tried to use the
parallel_map function given over at the SciPy Cookbook. I made the call
P = parallel_map(lambda i: intersplit_array(ob,er,nl,m[i+1],mi[i:i+2],t[i+1],ti[i:i+2],dmax[i+1],range(1,len(m)-1))
which runs, and provides the correct answer. Without the
parallel_ part, this is just the result of applying the function one by one to each element. But this is slower than using a single core. I guess this is related to the Global Interpreter Lock?
Second, I tried to use a
multiprocessing. I initialized a pool with
p = multiprocessing.Pool(6)
and then tried to call my function with
P = p.map(lambda i: intersplit_array(ob,er,nl,m[i+1],mi[i:i+2],t[i+1],ti[i:i+2],dmax[i+1],range(1,len(m)-1))
First, I get an error.
Exception in thread Thread-3: Traceback (most recent call last): File "/usr/lib64/python2.7/threading.py", line 551, in __bootstrap_inner self.run() File "/usr/lib64/python2.7/threading.py", line 504, in run self.__target(*self.__args, **self.__kwargs) File "/usr/lib64/python2.7/multiprocessing/pool.py", line 319, in _handle_tasks put(task) PicklingError: Can't pickle <type 'function'>: attribute lookup __builtin__.function failed
Having a look in
top, I then see all the extra
ipython processes, each of which is apparently taking up 25% of RAM (which can't be so, because I've still got 4GB free) and using 0% CPU. I presume it isn't doing anything. I can't use IPython, either. I tried Ctrl-C for a while, but gave up once I got passed the 300th pool worker.