I'm tired of having to rerun long MCMC chains with PyMC and so using the chain saving features PyMC comes with sounds like a great idea. I'm using the
pickle database backend to get a feel for MCMC workflows with disk-based saves, and I'm finding that if I try to sample from a PyMC MCMC model with a pickle database twice in a row, the second
sample invocation is very slow.
from pymc import MCMC from pymc.examples import disaster_model dbname = 'simple.pickle' S = MCMC(disaster_model, db='pickle', dbname=dbname) S.sample(1e4) # <-- Runs very fast if True: S.sample(1e4) # <-- *very slow* S.db.close()
sample call completes almost instantly, but the second one proceeds very haltingly, taking several seconds to complete. Meanwhile I am looking at the simple.pickle file on the disk during the second call to
sample and noticing its size fluctuating rapidly, between 20 to 60 megabytes.
I expect the second (and all subsequent)
sample calls to complete in approximately the same time as the first, so that I can monitor the chain's mixing properties manually (yes, I know there's all kinds of fancier diagnostics I could be using, but that's besides the question).
What am I doing wrong?
PyMC version 2.2, Python 2.7.3, Ubuntu 12.10 64-bit.