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bio website chris.friedline.net
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Sep
11
comment Entrez epost + elink returns results out of order with Biopython
minor point, but rettype="gp" should be "gb", I guess. Thanks! I was doing this earlier, but wanted to simplify my code a bit through elink.
Jun
4
comment Mulitprocessing and rpy2 (with ape)
Well, I'm getting closer, but I'm still not getting the right stuff back from my code, though the testing works. test: pastie.org/9256603#, new notebook with updated code: nbviewer.ipython.org/gist/cfriedline/0095ad55d645a7202cc6
Jun
4
comment Mulitprocessing and rpy2 (with ape)
I even tried with scipy.random.choice coupled with scipy.random.seed, same problem. Hmmph.
Jun
4
comment Mulitprocessing and rpy2 (with ape)
Not sure that's it: pastie.org/9256494
Jun
4
comment Mulitprocessing and rpy2 (with ape)
That's a good call - I'll check that. Additionally, I set it up to use IPython.parallel, too (nbviewer.ipython.org/gist/cfriedline/57c9f35b31225ced7931). No issues like with multiprocessing, so it's another option, I guess. Just more setup.
Jan
31
comment Using celery to process huge text files
@ionelmc - other than it seeming like an elegant and performant solution, not really. I'm also looking at ways to make better use of our computational facility here. celerly (w/rabbit) seemed like a low barrier to entry. I've also experimented with other distributed caches/queues in the past, with mixed results (e.g., HazelCast).
Jan
31
comment Using celery to process huge text files
Thanks, some more stuff to try, for sure. I've been using the C client, which wasn't obvious from my code snippets. My current round of testing with using the redis backend instead of rpc and submitting using group in batches of 50k read pairs, allows me to submit at 5000-ish/sec, which while not awesome, is definitely better than before.
Jan
30
comment Using celery to process huge text files
Thanks! good testing. Using your code, I'm getting over 7k/sec to the exchange, slightly less with delivery mode dropping to disk. Mode 2, Mode 1
Jan
29
comment Using celery to process huge text files
As yet another test, I fired up another worker on the same box as the rabbitmq broker, put it into its own queue, and ran the speed test from above again. Same results - just under 500/s! Ugh.
Jan
29
comment Using celery to process huge text files
even if I do something like: tasks.speed.apply_async(args=(i,), queue="transient"), where speed() just returns what I send it, I can only get ~500/s. hmmm...
Jan
29
comment Using celery to process huge text files
r1 and r2 are about 80 bytes (per sys.getsizeof), since it's a tuple. Individually, the header, sequence, and quality are 90, 139, and 139 bytes, respectively. Net links are gigabit.
Jan
29
comment Using celery to process huge text files
Added BROKER_POOL_LIMIT = 1000 and bounced my workers. Unfortunately, didn't make any difference.
Jan
29
comment Using celery to process huge text files
Yeah, celery has a default broker pool. I'll try to increase it and see what happens.
Jan
29
comment Using celery to process huge text files
Also not sure it would work the way you wrote it. Wouldn't you need to compress r1, r2, rather than compress the entire task?
Jan
29
comment Using celery to process huge text files
Just using zlib costs me about 100/s. Isn't list basically the same thing? res.append(tasks.process_read_pair.apply_async(args=(r1, r2), queue="transient", compression='zlib'))
Aug
23
comment Error when starting IPython notebook with Canopy
Thanks, I see that too. I cloned a new local git repo and set it up in anaconda with no issues. Hmmm, crazy. If it was interfering, it wasn't obvious where.
Aug
23
comment Error when starting IPython notebook with Canopy
The only zmq is in my User virtualenv. Just tried this test. I checked out the rel-1.0.0 tag, ran setup, and tried the notebook - works fine. Must be something with the 2.0dev branch, I guess.
Mar
13
comment Starting an IPython cluster from the notebook with a delay
I found something that seems to work for now, but I still think it should be able to be configured on a per-cluster basis. In lib/python2.7/site-packages/IPython/frontend/html/notebook/clustermanager.py, I changed delay = CFloat(1., config=True,...) to delay = CFloat(30., config=True,...). The cluster now starts as above with a 30 section delay between controller and engines.
Aug
14
comment Rpy2 and --max-ppsize
Thanks, Laurent. You're totally right. I just didn't have them compiled locally.
Aug
11
comment Rpy2 and --max-ppsize
Guess I assumed relevant google searching was an obvious precursor to hacking on the rpy2 source code...