Torch: Difference between revisions
m (typo) |
(Marked this version for translation) |
||
Line 21: | Line 21: | ||
{{Command|luarocks install --local --deps-mode{{=}}all <package name>}} | {{Command|luarocks install --local --deps-mode{{=}}all <package name>}} | ||
<!--T:9--> | |||
If after this installation you are having trouble finding the packages at runtime, then add the following command<ref> https://github.com/luarocks/luarocks/wiki/Using-LuaRocks#Rocks_trees_and_the_Lua_libraries_path </ref> right before running "lua your_program.lua" | If after this installation you are having trouble finding the packages at runtime, then add the following command<ref> https://github.com/luarocks/luarocks/wiki/Using-LuaRocks#Rocks_trees_and_the_Lua_libraries_path </ref> right before running "lua your_program.lua" | ||
command: | command: | ||
eval $(luarocks path --bin) | <!--T:10--> | ||
eval $(luarocks path --bin) | |||
<!--T:11--> | |||
By experience, we often find packages that do not install well with <tt>luarocks</tt>. If you have a package that is not installed in the default module and need help installing it, please contact our [[Technical support]]. | By experience, we often find packages that do not install well with <tt>luarocks</tt>. If you have a package that is not installed in the default module and need help installing it, please contact our [[Technical support]]. | ||
<!--T:12--> | |||
<references /> | <references /> | ||
</translate> | </translate> |
Revision as of 19:06, 6 June 2018
"Torch is a scientific computing framework with wide support for machine learning algorithms that puts GPUs first. It is easy to use and efficient, thanks to an easy and fast scripting language, LuaJIT, and an underlying C/CUDA implementation."
Torch has a distant relationship to PyTorch.[1] PyTorch provides a Python interface to software with similar functionality, but PyTorch is not dependent on Torch. See PyTorch for instructions on using it.
Torch depends on CUDA. In order to use Torch you must first load a CUDA module, like so:
[name@server ~]$ module load cuda torch
Installing Lua packages
Torch comes with the Lua package manager, named luarocks. By design, luarocks will allow you to install new packages, but will not find the system packages. To install packages in your own folder, use the following:
[name@server ~]$ luarocks install --local --deps-mode=all <package name>
If after this installation you are having trouble finding the packages at runtime, then add the following command[2] right before running "lua your_program.lua" command:
eval $(luarocks path --bin)
By experience, we often find packages that do not install well with luarocks. If you have a package that is not installed in the default module and need help installing it, please contact our Technical support.
- ↑ See https://stackoverflow.com/questions/44371560/what-is-the-relationship-between-pytorch-and-torch, https://www.quora.com/What-are-the-differences-between-Torch-and-Pytorch, and https://discuss.pytorch.org/t/torch-autograd-vs-pytorch-autograd/1671/4 for some attempts to explain the connection.
- ↑ https://github.com/luarocks/luarocks/wiki/Using-LuaRocks#Rocks_trees_and_the_Lua_libraries_path