nixpkgs/pkgs/development/libraries/onnxruntime/default.nix
2019-10-02 00:47:58 -07:00

63 lines
1.8 KiB
Nix

{ stdenv, fetchFromGitHub, glibcLocales
, cmake, python3
}:
stdenv.mkDerivation rec {
pname = "onnxruntime";
version = "0.5.0";
src = fetchFromGitHub {
owner = "microsoft";
repo = "onnxruntime";
rev = "v${version}";
sha256 = "0s8ylc5xr55490hbz7zn3hnp9dnyp92d320ln8xw5hqkw3mgyr3p";
# TODO: use nix-versions of grpc, onnx, eigen, googletest, etc.
# submodules increase src size and compile times significantly
# not currently feasible due to how integrated cmake build is with git
fetchSubmodules = true;
};
# TODO: build server, and move .so's to lib output
outputs = [ "out" "dev" ];
nativeBuildInputs = [
cmake
python3 # for shared-lib or server
];
cmakeDir = "../cmake";
cmakeFlags = [
"-Donnxruntime_USE_OPENMP=ON"
"-Donnxruntime_BUILD_SHARED_LIB=ON"
"-Donnxruntime_ENABLE_LTO=ON"
];
# ContribOpTest.StringNormalizerTest sets locale to en_US.UTF-8"
preCheck = stdenv.lib.optionalString stdenv.isLinux ''
export LOCALE_ARCHIVE="${glibcLocales}/lib/locale/locale-archive"
'';
doCheck = true;
postInstall = ''
rm -r $out/bin # ctest runner
'';
meta = with stdenv.lib; {
description = "Cross-platform, high performance scoring engine for ML models";
longDescription = ''
ONNX Runtime is a performance-focused complete scoring engine
for Open Neural Network Exchange (ONNX) models, with an open
extensible architecture to continually address the latest developments
in AI and Deep Learning. ONNX Runtime stays up to date with the ONNX
standard with complete implementation of all ONNX operators, and
supports all ONNX releases (1.2+) with both future and backwards
compatibility.
'';
homepage = "https://github.com/microsoft/onnxruntime";
license = licenses.mit;
maintainers = with maintainers; [ jonringer ];
};
}