v1.7.0 'Morphic Mint' #384
MuellerSeb
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Release Notes
This great release brings not only one but two impressive new features to GSTools: Plurigaussian Fields and Sum-Models.
Plurigaussian Fields provide a smart way to introduce structure to random fields and with Sum-Models you are finally able to add two or more covariance models to better capture spatial patterns. In addition, we outsourced the cython code of GSTools into a separate package GSTools-Cython, which makes GSTools itself a lightweight pure python package.
Installation
You can install GSTools with conda:
or with pip:
Documentation
The documentation can be found at: https://gstools.readthedocs.io/
What's new?
Enhancements
SumModel
class+
operator:model = m1 + m2
m1 = model[0]
model[0].nu == model.nu_0
len_scale
is fixed, none of thelen_scale_<i>
can be fixed since len_scale is calculated from variance ratioszero_var
andmodel
attributes to Generator ABC to shortcut field generation for pure nugget modelsChanges
var_raw
attribute from CovModel (was rarely used and only relevant for the truncated power law models)intensity
attribute which calculates whatvar_raw
was beforevar_raw
was a bad idea in the first place)Bugfixes
pnt_cnt
was not recalculated invario_estimate
when a mask was applied, together with a given sample size this resulted in anIndexError
most of the times (#378)This discussion was created from the release v1.7.0 'Morphic Mint'.
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