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github.com/ROCm/AMDMIGraphX @rocm-7.2.4

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README

AMD MIGraphX

AMD MIGraphX is AMD's graph inference engine, which accelerates machine learning model inference.

[!NOTE] The published documentation is available at MIGraphX in an organized, easy-to-read format, with search and a table of contents. The documentation source files reside in the docs folder of this repository. As with all ROCm projects, the documentation is open source. For more information on contributing to the documentation, see Contribute to ROCm documentation.

[!NOTE] You must install ROCm before installing MIGraphX.

Installing from binaries

Install binaries using:

sudo apt update && sudo apt install -y migraphx

Header files and libraries are installed under /opt/rocm-<version>, where <version> is the ROCm version.

Building from source

You have three options for building from source:

  • ROCm build tool: Uses rbuild to install prerequisites, then you can build the libraries with a single command.

  • CMake: Uses a script to install prerequisites, then you can use CMake to build the source.

  • Docker: Builds a Docker image with all prerequisites installed, then you can build the MIGraphX sources inside a Docker container.

Build prerequisites

The following is a list of prerequisites for building MIGraphX.

  • ROCm CMake modules required
  • MIOpen for running on the GPU
  • rocBLAS for running on the GPU
  • HIP for running on the GPU
  • Protobuf for reading onnx files
  • Half, an IEEE 754-based half-precision floating point library
  • pybind11 for python bindings
  • JSON for model serialization to json string format
  • MessagePack for model serialization to binary format
  • SQLite3 to create database of kernels' tuning information or run queries on existing database

Installing the ROCm build tool rbuild.

  1. Install rocm-cmake, pip3, rocblas, and miopen-hip:

    bash sudo apt install -y rocm-cmake python3-pip rocblas miopen-hip

  2. Set up and activate python venv for rbuild: bash python3 -m venv venv_rbuild source venv_rbuild/bin/activate

  3. Install rbuild in the python venv:

    bash pip install https://github.com/RadeonOpenCompute/rbuild/archive/master.tar.gz

[!NOTE] You can deactivate the python virtual environment with deactivate.

Compile using the ROCm build tool rbuild.

  1. Follow instructions in installing rbuild

  2. Build MIGraphX source code:

    bash rbuild build -d depend -B build -DGPU_TARGETS=$(/opt/rocm/bin/rocminfo | grep -o -m1 'gfx.*')

Once completed, all prerequisites are in the depend folder and MIGraphX is in the build directory.

[!NOTE] If you get an rbuild: command not found error, it's because rbuild is installed in $HOME/.local/bin, which is not in PATH. You can either export PATH as export PATH=$HOME/.local/bin:$PATH to add the folder to PATH, or add the option --prefix /usr/local in the pip3 command when installing rbuild.

Use CMake to build MIGraphX

  1. Follow instructions in installing rbuild

  2. Install the prerequisites:

    bash rbuild prepare -d depend

    This puts all the prerequisites are in depend the folder. They can be used in the cmake configuration as -DCMAKE_PREFIX_PATH=depend.

    If you have sudo access, as an alternative to the rbuild command, you can install the prerequisites in the same way as a Dockerfile, by calling ./tools/install_prereqs.sh.

    By default, all prerequisites are installed at the default location (/usr/local) and are accessible by all users. For the default location, sudo is required to run the script. You can also specify a different location using ./tools/install_prereqs.sh $custom_location.

  3. Go to the project folder and create a build directory:

    bash mkdir build cd build

  4. Configure CMake. If the prerequisites are installed at the default location /usr/local, use:

    bash CXX=/opt/rocm/llvm/bin/clang++ cmake .. -DGPU_TARGETS=$(/opt/rocm/bin/rocminfo | grep -o -m1 'gfx.*')

    Otherwise, you need to set -DCMAKE_PREFIX_PATH=$your_loc to configure CMake.

  5. Build MIGraphX source code:

    cpp make -j$(nproc)

    You can verify this using:

    cpp make -j$(nproc) check

  6. Install MIGraphX libraries:

    cpp make install

Use Docker

The easiest way to set up the development environment is to use Docker.

  1. With the Dockerfile, build a Docker image:

    bash docker build -t migraphx .

  2. Enter the development environment using docker run:

    bash docker run --device='/dev/kfd' --device='/dev/dri' -v=`pwd`:/code/AMDMIGraphX -w /code/AMDMIGraphX --group-add video -it migraphx

  3. In the Docker container, all required prerequisites are already installed, so you can go to the folder /code/AMDMIGraphX and follow the steps (starting from 2) in the Use CMake to build MIGraphX.

Using the MIGraphX Python module

To use MIGraphX's Python module, you can set PYTHONPATH or use the .deb package:

  • Setting PYTHONPATH:

    bash export PYTHONPATH=/opt/rocm/lib:$PYTHONPATH

  • Creating the deb package:

    bash make package

    This provides the path for .deb package.

    To install:

    bash dpkg -i <path_to_deb_file>

Calling MIGraphX APIs

To use MIGraphX's C/C++ API in your CMake project, you must set CMAKE_PREFIX_PATH to the MIGraphX installation location and run:

find_package(migraphx)
target_link_libraries(myApp migraphx::c)

Where myApp is the CMake target in your project.

Building for development

Using rbuild, you can install the dependencies for development with:

rbuild develop -DGPU_TARGETS=$(/opt/rocm/bin/rocminfo | grep -o -m1 'gfx.*')

This installs development dependencies in the deps directory and configures cmake to use those dependencies in the build directory. You can change these directories by passing the --deps-dir and --build-dir flags to the rbuild command:

rbuild develop --build-dir build_rocm_55 --deps-dir /home/user/deps_dir

Building the documentation

HTML and PDF documentation can be built using:

cmake --build . --config Release --target doc OR make doc

This will build a local searchable web site inside the docs/html folder.

Documentation is built using Doxygen and rocm-docs-core

Run the steps below to build documentation locally. You can reuse the same venv from installing rbuild.

cd docs

pip3 install -r sphinx/requirements.txt

python3 -m sphinx -T -E -b html -d _build/doctrees -D language=en . _build/html

Depending on your setup sudo may be required for the pip install.

Formatting the code

All the code is formatted using clang-format. To format a file, use:

clang-format-10 -style=file -i <path-to-source-file>

Also, githooks can be installed to format the code per-commit:

./.githooks/install

Core symbols most depended-on inside this repo

Shape

Method 5,241
Function 5,062
Class 3,369
Enum 31

Languages

C++86%
Python14%
C1%

Modules by API surface

test/onnx/gen_onnx.py1,038 symbols
src/api/api.cpp270 symbols
src/api/include/migraphx/migraphx.hpp169 symbols
tools/api.py123 symbols
src/simplify_algebra.cpp116 symbols
src/include/migraphx/matcher.hpp102 symbols
test/verify/test_arg_ops.cpp99 symbols
src/shape_transform_descriptor.cpp97 symbols
src/targets/gpu/fuse_ops.cpp93 symbols
src/simplify_reshapes.cpp88 symbols
src/module.cpp83 symbols
src/include/migraphx/operation.hpp78 symbols

For agents

$ claude mcp add AMDMIGraphX \
  -- python -m otcore.mcp_server <graph>

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