BwUniCluster2.0/Software/R/Glmnet: Difference between revisions
< BwUniCluster2.0 | Software | R
Jump to navigation
Jump to search
No edit summary |
Tag: Manual revert |
||
(4 intermediate revisions by the same user not shown) | |||
Line 16: | Line 16: | ||
CXX17FLAGS += -std=c++17 |
CXX17FLAGS += -std=c++17 |
||
CXXFLAGS = -O3 -fPIC -march=cascadelake -ffp-contract=off -fno-fast-math -fno-signed-zeros -fopenmp -Wno-unknown-warning-option |
CXXFLAGS = -O3 -fPIC -march=cascadelake -ffp-contract=off -fno-fast-math -fno-signed-zeros -fopenmp -Wno-unknown-warning-option |
||
</pre> |
|||
If necessary, the appropriate compiler flags can be set by running the following lines of code: |
|||
<pre> |
|||
⚫ | |||
⚫ | |||
⚫ | |||
echo "CXXFLAGS = -O3 -fPIC -march=cascadelake -ffp-contract=off -fno-fast-math -fno-signed-zeros -fopenmp -Wno-unknown-warning-option" >> ~/.R/Makevars |
|||
echo "CXX14FLAGS += -std=c++14" >> ~/.R/Makevars |
|||
echo "CXX17FLAGS += -std=c++17" >> ~/.R/Makevars |
|||
</pre> |
</pre> |
||
Line 23: | Line 33: | ||
</pre> |
</pre> |
||
== Install <code>glmnet</code> == |
|||
⚫ | |||
<pre> |
|||
⚫ | |||
⚫ | |||
⚫ | |||
# Prepare .R directory (if it does not already exists) |
|||
⚫ | |||
# Write the following environment variables to Makevars |
|||
# Skip the 2nd and 3rd commands below if Makevars already consist these variables (1st command shows content of Makevars) |
|||
⚫ | |||
⚫ | |||
echo "CXX17FLAGS=-O3 -fPIC -std=c++17 -axCORE-AVX512,CORE-AVX2,AVX -xSSE4.2 -fp-model strict -qopenmp" >> ~/.R/Makevars |
|||
# Install the glmnet package from within R session |
# Install the glmnet package from within R session |
||
R -q |
R -q |
||
⚫ | |||
⚫ | |||
</pre> |
|||
== Test the installation == |
|||
As a quick test of the installation of <code>glmnet</code> the following lines of code can be run: |
|||
<pre> |
|||
# Run a quick test |
# Run a quick test |
||
> library(glmnet) |
> library(glmnet) |
Latest revision as of 10:48, 30 October 2024
Note that the instructions provided below refer to R 4.4.1 (but not R 4.2.1)!
General information
glmnet
is an R
package that fits generalized linear and similar models via penalized maximum likelihood, particularly, lasso and elastic-net.
Installation instructions
Preparations
Installing glmnet
involves compiling source code. Therefore, ensure that the following flags are set in $HOME/.R/Makevars
:
cat ~/.R/Makevars CXX14=g++ CXX17=g++ CXX14FLAGS += -std=c++14 CXX17FLAGS += -std=c++17 CXXFLAGS = -O3 -fPIC -march=cascadelake -ffp-contract=off -fno-fast-math -fno-signed-zeros -fopenmp -Wno-unknown-warning-option
If necessary, the appropriate compiler flags can be set by running the following lines of code:
mkdir -p ~/.R echo "CXX14=g++" > ~/.R/Makevars echo "CXX17=g++" >> ~/.R/Makevars echo "CXXFLAGS = -O3 -fPIC -march=cascadelake -ffp-contract=off -fno-fast-math -fno-signed-zeros -fopenmp -Wno-unknown-warning-option" >> ~/.R/Makevars echo "CXX14FLAGS += -std=c++14" >> ~/.R/Makevars echo "CXX17FLAGS += -std=c++17" >> ~/.R/Makevars
Since installing glmnet
involves compiling, we start an interactive session on one of the compute nodes:
salloc -n 1 -t 30 -p dev_single
Install glmnet
# Load the R software module: module load math/R/4.4.1-mkl-2022.2.1-gnu-13.3 # Install the glmnet package from within R session R -q R> install.packages("glmnet")
Test the installation
As a quick test of the installation of glmnet
the following lines of code can be run:
# Run a quick test > library(glmnet) > data(QuickStartExample) > x <- QuickStartExample$x > y <- QuickStartExample$y > fit <- glmnet(x, y) > print(fit)