Frequently the suggestion of supporting PMML or similar is raised, but it's
not clear whether such models would be importable in to scikit-learn, or
how to translate scikit-learn transformation pipelines into its notation
without going mad, etc. Still, even a library of exporters for individual
components would be welcome, IMO, if someone wanted to construct it.

On 19 August 2015 at 15:08, Sebastian Raschka <se.rasc...@gmail.com> wrote:

> Oh wow, thanks for the link, I just skimmed over the code, but this is an
> interesting idea snd looks like the sort of thing that would make my life
> easier in future. I will dig into that! That’s great, thanks!
>
>
> > On Aug 19, 2015, at 12:58 AM, Stefan van der Walt <stef...@berkeley.edu>
> wrote:
> >
> > On 2015-08-18 21:37:41, Sebastian Raschka <se.rasc...@gmail.com>
> > wrote:
> >> I think for “simple” linear models, it would be not a bad idea
> >> to save the weight coefficients in a log file or so. Here, I
> >> think that your model is really not that dependent on the
> >> changes in the scikit-learn code base (for example, imagine that
> >> you trained a model 10 years ago and published the results in a
> >> research paper, and today, someone asked you about this
> >> model). I mean, you know all about how a logistic regression,
> >> SVM etc. works, in the worst case you just use those weights to
> >> make the prediction on new data — I think in a typical “model
> >> persistence” case you don’t “update” your model anyways so
> >> “efficiency” would not be that big of a deal in a typical “worst
> >> case use case”.
> >
> > Agreed—this is exactly the type of use case I want to support.
> > Pickling won't work here, but using HDF5 like MNE does would
> > probably be close to ideal (thanks to Chris Holdgraf for the
> > heads-up):
> >
> > https://github.com/mne-tools/mne-python/blob/master/mne/_hdf5.py
> >
> > Stéfan
> >
> >
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