After the usual R package installation, torch
requires
installing other 2 libraries: LibTorch and LibLantern. They are
automatically installed by detecting information about you OS if you are
using torch
in interactive mode. If you are running
torch
in non-interactive environments you need to set the
TORCH_INSTALL
env var to 1, so it’s automatically installed
or manually call torch::install_torch()
.
We have provide pre-compiled binaries for all major platforms and you can find specific installation instructions below.
If you don’t have a GPU or want to install the CPU version of
torch
, you can install with:
install.packages("torch")
Some Windows distributions don’t have the Visual Studio runtime pre-installed and you will observe an error like:
Error in cpp_lantern_init(normalizePath(install_path())): C:\Users\User\Documents\R\R-4.0.2\library\torch\deps\lantern.dll - The specified module could not be found.
See here for instructions on how to install it.
Since version 0.1.1 torch supports GPU installation on Windows. In order to use GPU’s with torch you need to:
Have a CUDA compatible NVIDIA GPU. You can find if you have a CUDA compatible GPU here.
Have properly installed the NVIDIA CUDA toolkit version 11.3. For CUDA v11.3, follow the installation instructions here. Note: The version of the CUDA toolkit must match exactly what’s mentioed above.
Have installed cuDNN version cuDNN 8.4. Follow the installation instructions available here.
Once you have installed all pre-requisites you can install
torch
with:
install.packages("torch")
If you have followed default installation locations we will detect
that you have CUDA software installed and automatically download the GPU
enabled Lantern binaries. You can also specify the CUDA
env
var with something like Sys.setenv(CUDA="11.3")
if you want
to force an specific version of the CUDA toolkit.
We only support CPU builds of torch on MacOS. On MacOS you can install torch with:
install.packages("torch")
To install the cpu version of torch
you can run:
install.packages("torch")
To install the GPU version of torch
on linux you must
verify that:
You have a NVIDIA CUDA compatible GPU. You can find if you have a CUDA compatible GPU here.
You have correctly installed the NVIDIA CUDA Toolkit versions 10.2 or 11.3, follow the instructions here.
You have installed cuDNN version 7.6 - (for CUDA 10.2) and 8.4 for CUDA 11.3. Follow the installation instructions available here.
Once you have installed all pre-requisites you can install
torch
with:
install.packages("torch")
If you have followed default installation locations we will detect
that you have CUDA software installed and automatically download the GPU
enabled Lantern binaries. You can also specify the CUDA
env
var with something like Sys.setenv(CUDA="10.2")
if you want
to force an specific version of the CUDA toolkit.
If you encounter timeout during library download, or if after a while, downloads end-up with a warning such as:
Warning messages:
1: In utils::download.file(library_url, temp_file) :
downloaded length 44901568 != reported length 141774525
2: In utils::download.file(library_url, temp_file) :
URL '...': Timeout of 60 seconds was reached
3: Failed to install Torch, manually run install_torch(). download from 'https://download.pytorch.org/libtorch/cpu/libtorch-macos-1.7.1.zip' failed
This means you encounter a download timeout. then, you should
increase the timeout value in install_torch()
like
install_torch(timeout = 600)
In cases where you cannot reach download servers from the machine you intend to install torch on, last resort is to install Torch and Lantern library from files. This is done in 3 steps :
1- get the download URLs of the files.
get_install_libs_url(type = "10.2")
2- save those files into the machine filesystem. We will use
/tmp/
here as an example .
3- install torch from files
install_torch_from_file(libtorch = "file:///tmp/libtorch-cxx11-abi-shared-with-deps-1.7.1%2Bcu101.zip",
liblantern = "file:///tmp/Linux-gpu-101.zip")