Files
nixpkgs/pkgs/development/libraries/science/math/libtorch/bin.nix
Dark Steveneq 646b892680
Some checks failed
Periodic Merges (6h) / master → staging-nixos (push) Failing after 12m50s
Periodic Merges (6h) / master → staging-next (push) Failing after 12m54s
Periodic Merges (24h) / merge-base(master,staging) → haskell-updates (push) Failing after 11m54s
Periodic Merges (6h) / staging-next → staging (push) Failing after 12m13s
Periodic Merges (24h) / staging-next-25.05 → staging-25.05 (push) Failing after 13m24s
Periodic Merges (24h) / release-25.05 → staging-next-25.05 (push) Failing after 14m28s
push sheeet
2025-10-09 14:15:47 +02:00

119 lines
3.3 KiB
Nix

{
callPackage,
stdenv,
fetchzip,
lib,
libcxx,
llvmPackages,
config,
addDriverRunpath,
patchelf,
fixDarwinDylibNames,
cudaSupport ? config.cudaSupport,
}:
let
# The binary libtorch distribution statically links the CUDA
# toolkit. This means that we do not need to provide CUDA to
# this derivation. However, we should ensure on version bumps
# that the CUDA toolkit for `passthru.tests` is still
# up-to-date.
version = "2.5.0";
device = if cudaSupport then "cuda" else "cpu";
srcs = import ./binary-hashes.nix version;
unavailable = throw "libtorch is not available for this platform";
in
stdenv.mkDerivation {
inherit version;
pname = "libtorch";
src = fetchzip srcs."${stdenv.hostPlatform.system}-${device}" or unavailable;
nativeBuildInputs =
if stdenv.hostPlatform.isDarwin then
[ fixDarwinDylibNames ]
else
[ patchelf ] ++ lib.optionals cudaSupport [ addDriverRunpath ];
dontBuild = true;
dontConfigure = true;
dontStrip = true;
installPhase = ''
# Copy headers and CMake files.
mkdir -p $dev
cp -r include $dev
cp -r share $dev
install -Dm755 -t $out/lib lib/*${stdenv.hostPlatform.extensions.sharedLibrary}*
# We do not care about Java support...
rm -f $out/lib/lib*jni* 2> /dev/null || true
# Fix up library paths for split outputs
substituteInPlace $dev/share/cmake/Torch/TorchConfig.cmake \
--replace \''${TORCH_INSTALL_PREFIX}/lib "$out/lib" \
substituteInPlace \
$dev/share/cmake/Caffe2/Caffe2Targets-release.cmake \
--replace \''${_IMPORT_PREFIX}/lib "$out/lib" \
'';
postFixup =
let
rpath = lib.makeLibraryPath [ stdenv.cc.cc ];
in
lib.optionalString stdenv.hostPlatform.isLinux ''
find $out/lib -type f \( -name '*.so' -or -name '*.so.*' \) | while read lib; do
echo "setting rpath for $lib..."
patchelf --set-rpath "${rpath}:$out/lib" "$lib"
${lib.optionalString cudaSupport ''
addDriverRunpath "$lib"
''}
done
''
+ lib.optionalString stdenv.hostPlatform.isDarwin ''
for f in $out/lib/*.dylib; do
otool -L $f
done
for f in $out/lib/*.dylib; do
if otool -L $f | grep "@rpath/libomp.dylib" >& /dev/null; then
install_name_tool -change "@rpath/libomp.dylib" ${llvmPackages.openmp}/lib/libomp.dylib $f
fi
install_name_tool -id $out/lib/$(basename $f) $f || true
for rpath in $(otool -L $f | grep rpath | awk '{print $1}');do
install_name_tool -change $rpath $out/lib/$(basename $rpath) $f
done
done
for f in $out/lib/*.dylib; do
otool -L $f
done
'';
outputs = [
"out"
"dev"
];
passthru.tests.cmake = callPackage ./test {
inherit cudaSupport;
};
meta = with lib; {
description = "C++ API of the PyTorch machine learning framework";
homepage = "https://pytorch.org/";
sourceProvenance = with sourceTypes; [ binaryNativeCode ];
# Includes CUDA and Intel MKL, but redistributions of the binary are not limited.
# https://docs.nvidia.com/cuda/eula/index.html
# https://www.intel.com/content/www/us/en/developer/articles/license/onemkl-license-faq.html
license = licenses.bsd3;
maintainers = with maintainers; [ junjihashimoto ];
platforms = [
"aarch64-darwin"
"x86_64-linux"
];
};
}