# Is it worth using IPython parallel with scipy's eig?

I'm writing a code which has to compute large numbers of eigenvalue problems (typical matrices dimension is a few hundreds). I was wondering whether it is possible to speed up the process by using `IPython.parallel` module. As a former MATLAB user and Python newbie I was looking for something similar to MATLAB's `parfor`...

Following some tutorials online I wrote a simple code to check if it speeds the computation up at all and I found out that it doesn't and often actually slows it down(case dependent). I think, I might be missing a point in it and maybe `scipy.linalg.eig` is implemented in such a way that it uses all the cores available and by trying to parallelise it i interrupt the engine management.

Here is the 'parralel' code:

``````import numpy as np
from scipy.linalg import eig
from IPython import parallel

#create the matrices
matrix_size = 300
matrices = {}

for i in range(100):
matrices[i] = np.random.rand(matrix_size, matrix_size)

rc = parallel.Client()
results = {}

#compute the eigenvalues
for i in range(len(matrices)):
asyncresult = lview.apply(eig, matrices[i], right=False)
results[i] = asyncresult

for i, asyncresult in results.iteritems():
results[i] = asyncresult.get()
``````

The non-parallelised variant:

``````#no parallel
for i in range(len(matrices)):
results[i] = eig(matrices[i], right=False)
``````

The difference in CPU time for the two is very subtle. If on top of the eigenvalue problem the parallelised function has to do some more matrix operations it starts to last forever, i.e. at least 5 times longer than non-parallelised variant.

Am I right that eigenvalue problems are not really suited for this kind of parallelisation, or am I missing the whole point?

Many thanks!

# EDITED 29 Jul 2013; 12:20 BST

Following moarningsun's suggestion i tried to run `eig` while fixing the number of threads with `mkl.set_num_threads`. For a 500-by-500 matrix minimum times of 50 repetitions set are the following:

``````No of. threads    minimum time(timeit)    CPU usage(Task Manager)
=================================================================
1                  0.4513775764796151                 12-13%
2                  0.36869288559927327                25-27%
3                  0.34014644287680085                38-41%
4                  0.3380558903450037                 49-53%
5                  0.33508234276183657                49-53%
6                  0.3379019065051807                 49-53%
7                  0.33858615048501406                49-53%
8                  0.34488405094054997                49-53%
9                  0.33380300334101776                49-53%
10                 0.3288481198342197                 49-53%
11                 0.3512653110685733                 49-53%
``````

Apart from one thread case there is no substantial difference (maybe 50 samples is a bit to small...). I still think I'm missing the point and a lot could be done to improve the performance, however not really sure how. These were run on a 4 cores machine with hyperthreading enabled giving 4 virtual cores.

Thanks for any input!

-
Aren't you having the same problem as stackoverflow.com/questions/16323743/… ? are you sure that the computation were indeed done in several core ? –  hivert Jul 24 '13 at 9:23
@hivert Thanks. But I think that all the cores are used. When viewing performance in the Windows Task Manager all eight cores jump to 100% during computation. Is it a poor indicator? –  MKK_ Jul 24 '13 at 9:29
You said "maybe `scipy.linalg.eig` is implemented in such a way that it uses all the cores available" but did you actually check this? On my dualcore pc `eig` uses 99% cpu. –  moarningsun Jul 24 '13 at 12:18
It sounds like you have hyperthreading enabled, i.e. you have only 4 physical cores plus 4 virtual ones. In that case CPU use can be a bad indicator. –  moarningsun Jul 25 '13 at 11:28
I deleted my answer because I'm not too sure anymore this 'thing' can be attributed to hyperthreading. The calculation might also be memory bandwidth limited (or something else..). Maybe you could do some checks by running `eig` on 1 thread only and see how it scales with number of IPython engines? For example my scipy uses LAPACK routines from MKL so I can do `import mkl; mkl.set_num_threads(1)`. –  moarningsun Jul 29 '13 at 9:07

Interesting problem. Because I would think it should be possible to achieve better scaling I investigated the performance with a small "benchmark". With this test I compared the performance of single and multi-threaded `eig` (multi-threading being delivered through MKL LAPACK/BLAS routines) with IPython parallelized `eig`. To see what difference it would make I varied the view type, the number of engines and MKL threading as well as the method of distributing the matrices over the engines.

Here are the results on an old AMD dual core system:

`````` m_size=300, n_mat=64, repeat=3
+------------------------------------+----------------------+
| settings                           | speedup factor       |
+--------+------+------+-------------+-----------+----------+
| func   | neng | nmkl | view type   | vs single | vs multi |
+--------+------+------+-------------+-----------+----------+
| ip_map |    2 |    1 | direct_view |      1.67 |     1.62 |
| ip_map |    2 |    1 |  loadb_view |      1.60 |     1.55 |
| ip_map |    2 |    2 | direct_view |      1.59 |     1.54 |
| ip_map |    2 |    2 |  loadb_view |      0.94 |     0.91 |
| ip_map |    4 |    1 | direct_view |      1.69 |     1.64 |
| ip_map |    4 |    1 |  loadb_view |      1.61 |     1.57 |
| ip_map |    4 |    2 | direct_view |      1.15 |     1.12 |
| ip_map |    4 |    2 |  loadb_view |      0.88 |     0.85 |
| parfor |    2 |    1 | direct_view |      0.81 |     0.79 |
| parfor |    2 |    1 |  loadb_view |      1.61 |     1.56 |
| parfor |    2 |    2 | direct_view |      0.71 |     0.69 |
| parfor |    2 |    2 |  loadb_view |      0.94 |     0.92 |
| parfor |    4 |    1 | direct_view |      0.41 |     0.40 |
| parfor |    4 |    1 |  loadb_view |      1.62 |     1.58 |
| parfor |    4 |    2 | direct_view |      0.34 |     0.33 |
| parfor |    4 |    2 |  loadb_view |      0.90 |     0.88 |
+--------+------+------+-------------+-----------+----------+
``````

As you see the performance gain varies greatly over the different settings used, with a maximum of 1.64 times that of regular multi threaded `eig`. In these results the `parfor` function you used performs badly unless MKL threading is disabled on the engines (using `view.apply_sync(mkl.set_num_threads, 1)`).

Varying the matrix size also gives a noteworthy difference. The speedup of using `ip_map` on a `direct_view` with 4 engines and MKL threading disabled vs regular multi threaded `eig`:

`````` n_mat=32, repeat=3
+--------+----------+
| m_size | vs multi |
+--------+----------+
|     50 |     0.78 |
|    100 |     1.44 |
|    150 |     1.71 |
|    200 |     1.75 |
|    300 |     1.68 |
|    400 |     1.60 |
|    500 |     1.57 |
+--------+----------+
``````

Apparently for relatively small matrices there is a performance penalty, for intermediate size the speedup is the largest and for larger matrices the speedup decreases again. I you could achieve a performance gain of 1.75 that would make using `IPython.parallel` worthwhile in my opinion.

I did some tests earlier on an Intel dual core laptop also, but I got some funny results, apparently the laptop was overheating. But on that system the speedups were generally a little lower, around 1.5-1.6 max.

Now I think the answer to your question should be: It depends. The performance gain depends on the hardware, the BLAS/LAPACK library, the problem size and the way `IPython.parallel` is deployed, among other things perhaps that I'm not aware of. And last but not least, whether it's worth it also depends on how much of a performance gain you think is worthwhile.

The code that I used:

``````from __future__ import print_function
from numpy.random import rand
from IPython.parallel import Client
from timeit import default_timer as clock
from scipy.linalg import eig
from functools import partial
from itertools import product

eig = partial(eig, right=False)  # desired keyword arg as standard

class Bench(object):
def __init__(self, m_size, n_mat, repeat=3):
self.n_mat = n_mat
self.matrix = rand(n_mat, m_size, m_size)
self.repeat = repeat
self.rc = Client()

def map(self):
results = map(eig, self.matrix)

def ip_map(self):
results = self.view.map_sync(eig, self.matrix)

def parfor(self):
results = {}
for i in range(self.n_mat):
results[i] = self.view.apply_async(eig, self.matrix[i,:,:])
for i in range(self.n_mat):
results[i] = results[i].get()

def timer(self, func):
t = clock()
func()
return clock() - t

def run(self, func, n_engines, n_mkl, view_method):
self.view = view_method(range(n_engines))
return min(self.timer(func) for _ in range(self.repeat))

def run_all(self):
funcs = self.ip_map, self.parfor
n_engines = 2, 4
n_mkls = 1, 2
times = []
for n_mkl in n_mkls:
args = self.map, 0, n_mkl, views[0]
times.append(self.run(*args))
for args in product(funcs, n_engines, n_mkls, views):
times.append(self.run(*args))
return times
``````

Dunno if it matters but to start 4 IPython parallel engines I typed at the command line:

``````ipcluster start -n 4
``````

Hope this helps :)

-
Thanks, moarningsun. Although your answer does provide me with clear understanding of the reasons, it gives a diagnosis-based answer powered by a nice and consistent idea for investigating the effect. From what you've written and I observed, 'it depends' serves as the best answer to question posted. However, the quest for the knowledge of the intrinsic reasons makes me still a bit hungry;). –  MKK_ Aug 28 '13 at 12:16