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I've been running some fairly expensive models with a long burn-in time. I'd like to save & restore the state of the AdaptiveMetropolis step methods (at least) to reduce the burn-in time. Is there a recommended way to do this, or should I just pickle the step_method.current_state() dict and try to update step_method.C, step_method.proposal_sd, and maybe others from pickled data when I want to restart?

(cross-post from deprecated Google Group forum: https://groups.google.com/forum/#!topic/pymc/6U72WuuXmMo)

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migrated from stats.stackexchange.com Jun 11 '13 at 14:03

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At the moment this seems to be a computing question ('how do I get this software to do this particular thing?') rather than a statistics question. Could you more clearly identify a specific statistical issue, or consider flagging this to be moved to StackOverflow? –  Glen_b Jun 11 '13 at 1:44
    
can you show us some code? also please tag your question. this looks like python (based on the pickle reference) –  booyaa Jun 11 '13 at 14:05
    
@booyaa - sorry, this is a pymc question that was intended for their forums, which told me to post on cross-validated, which then redirected me here.... I'll work up a code sample... –  keflavich Jun 11 '13 at 15:45

1 Answer 1

Have you tried using the save_state and restore_sampler_state methods? They should work with any non-sqlite backend (e.g. pickle, txt). The former should save the sampler information to the database; here is an example:

    {'stochastics': {'alpha': array([-0.20073951]), 'beta': array([ 2.77634734])}, 'step_methods': {'AdaptiveMetropolis_beta_alpha': {'C': array([[ 41.28628017,   2.79567393],
       [  2.79567393,   1.8832875 ]]), '_trace': [array([ 10.4010084 ,   1.48321645]), ... [ 0.43509455,  1.30152996]]), 
       'accepted': 69.0, 'shrink_if_necessary': False}}, 
       'sampler': {'status': 'ready', '_iter': 2000, '_tune_interval': 1000, '_tuned_count': 0, '_tune_throughout': True, '_burn_till_tuned': False, '_current_iter': 2000, '_burn': 0, '_thin': 1}}
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What if the sampling was run with a RAM backend? Is there any way to save that state? –  keflavich Jun 13 '13 at 1:08
    
The state will be stored in a _state_ attribute in the ram backend as a dict. –  Chris Fonnesbeck Jun 14 '13 at 4:11
    
There is no _state_ attribute, and _state is just a list. .current_state() reads the attributes referred to by _state, is that what you mean? –  keflavich Jun 14 '13 at 15:12

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