[SciPy-User] Fitting procedure to take advantage of cluster
Giovanni Luca Ciampaglia
ciampagg at usi.ch
Wed Jun 29 13:18:17 EDT 2011
Hi,
there are several strategies, depending on your problem. You could use a
surrogate model, like a Gaussian Process, to fit the data (see for
example Higdon et al
http://epubs.siam.org/sisc/resource/1/sjoce3/v26/i2/p448_s1?isAuthorized=no).
I have personally used scikits.learn for GP estimation but there is also
PyMC that should do the same (never tried it).
Another option could be indirect inference, but if each run of your
model takes several minutes to compute probably it's not the best option:
http://cscs.umich.edu/~crshalizi/notabene/indirect-inference.html
HTH
Giovanni
Il 29. 06. 11 18:54, J. David Lee ha scritto:
> Hello,
>
> I'm attempting to perform a fit of a model function's output to some
> measured data. The model has around 12 parameters, and takes tens of
> minutes to run. I have access to a cluster with several thousand
> processors that can run the simulations in parallel, so I'm wondering if
> there are any algorithms out there that I can use to leverage this
> computing power to efficiently solve my problem - that is, besides grid
> searches or Monte-Carlo methods.
>
> Thanks for your help,
>
> David
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--
Giovanni Luca Ciampaglia
Ph.D. Candidate
Faculty of Informatics
University of Lugano
Web: http://www.inf.usi.ch/phd/ciampaglia/
Bertastraße 36 ? 8003 Zürich ? Switzerland
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