File R-mgcv.spec of Package R-mgcv

# Automatically generated by CRAN2OBS
# 
# Spec file for package mgcv 
# This file is auto-generated using information in the package source, 
# esp. Description and Summary. Improvements in that area should be 
# discussed with upstream. 
# 
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%global packname  mgcv 
%global rlibdir   %{_libdir}/R/library 
 
Name:           R-%{packname} 
Version:        1.9.3 
Release:        0 
Summary:        Mixed GAM Computation Vehicle with Automatic Smoothness Estimation 
Group:          Development/Libraries/Other 
License:        GPL (>= 2) 
URL:            http://cran.r-project.org/web/packages/%{packname} 
Source:         mgcv_1.9-3.tar.gz 
Requires:       R-base 
 
# %%if 0%%{?sle_version} > 120400 || 0%%{?is_opensuse} 
# # Three others commonly needed 
# BuildRequires:  tex(ae.sty) 
# BuildRequires:  tex(fancyvrb.sty) 
# BuildRequires:  tex(inconsolata.sty) 
# BuildRequires:  tex(natbib.sty) 
# %else 
# BuildRequires:  texlive 
# %endif 
# BuildRequires:  texinfo 
BuildRequires:  fdupes 
BuildRequires:  R-base 
BuildRequires:  gcc gcc-c++ gcc-fortran
 
%description 
Generalized additive (mixed) models, some of their extensions and other 
generalized ridge regression with multiple smoothing parameter 
estimation by (Restricted) Marginal Likelihood, Generalized Cross 
Validation and similar, or using iterated nested Laplace approximation 
for fully Bayesian inference. See Wood (2017) 
<doi:10.1201/9781315370279> for an overview. Includes a gam() function, 
a wide variety of smoothers, 'JAGS' support and distributions beyond 
the exponential family. 
 
%prep 
%setup -q -c -n %{packname} 
# the next line is needed, because we build without --clean in between two packages 
rm -rf ~/.R  
 
 
%build 
 
%install 
mkdir -p %{buildroot}%{rlibdir} 
%{_bindir}/R CMD INSTALL -l %{buildroot}%{rlibdir} %{packname} 
test -d %{packname}/src && (cd %{packname}/src; rm -f *.o *.so) 
rm -f %{buildroot}%{rlibdir}/R.css 
%fdupes -s %{buildroot}%{rlibdir} 
 
#%%check 
#%%{_bindir}/R CMD check %%{packname} 
 
%files 
%dir %{rlibdir}/%{packname} 
%{rlibdir}/%{packname}/CITATION
%doc %{rlibdir}/%{packname}/DESCRIPTION
%{rlibdir}/%{packname}/INDEX
%{rlibdir}/%{packname}/Meta
%{rlibdir}/%{packname}/NAMESPACE
%{rlibdir}/%{packname}/R
%{rlibdir}/%{packname}/data
%doc %{rlibdir}/%{packname}/help
%doc %{rlibdir}/%{packname}/html
%{rlibdir}/%{packname}/libs
%{rlibdir}/%{packname}/po
 
%changelog 
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