gpu.rocm.inc.md 9.23 KB
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# --8<-- [start:installation]
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vLLM supports AMD GPUs with ROCm 6.3 or above.
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!!! tip
    [Docker](#set-up-using-docker) is the recommended way to use vLLM on ROCm.

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!!! warning
    There are no pre-built wheels for this device, so you must either use the pre-built Docker image or build vLLM from source.
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# --8<-- [end:installation]
# --8<-- [start:requirements]
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- GPU: MI200s (gfx90a), MI300 (gfx942), MI350 (gfx950), Radeon RX 7900 series (gfx1100/1101), Radeon RX 9000 series (gfx1200/1201)
- ROCm 6.3 or above
    - MI350 requires ROCm 7.0 or above
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# --8<-- [end:requirements]
# --8<-- [start:set-up-using-python]
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There is no extra information on creating a new Python environment for this device.

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# --8<-- [end:set-up-using-python]
# --8<-- [start:pre-built-wheels]
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Currently, there are no pre-built ROCm wheels.
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# --8<-- [end:pre-built-wheels]
# --8<-- [start:build-wheel-from-source]
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0. Install prerequisites (skip if you are already in an environment/docker with the following installed):

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    - [ROCm](https://rocm.docs.amd.com/en/latest/deploy/linux/index.html)
    - [PyTorch](https://pytorch.org/)
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    For installing PyTorch, you can start from a fresh docker image, e.g, `rocm/pytorch:rocm6.4.3_ubuntu24.04_py3.12_pytorch_release_2.6.0`, `rocm/pytorch-nightly`. If you are using docker image, you can skip to Step 3.
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    Alternatively, you can install PyTorch using PyTorch wheels. You can check PyTorch installation guide in PyTorch [Getting Started](https://pytorch.org/get-started/locally/). Example:

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    ```bash
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    # Install PyTorch
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    pip uninstall torch -y
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    pip install --no-cache-dir torch torchvision --index-url https://download.pytorch.org/whl/rocm6.4
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    ```
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1. Install [Triton for ROCm](https://github.com/triton-lang/triton)
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    Install ROCm's Triton (the default triton-mlir branch) following the instructions from [ROCm/triton](https://github.com/ROCm/triton/blob/triton-mlir/README.md)
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    ```bash
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    python3 -m pip install ninja cmake wheel pybind11
    pip uninstall -y triton
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    git clone https://github.com/triton-lang/triton.git
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    cd triton
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    git checkout e5be006
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    if [ ! -f setup.py ]; then cd python; fi
    python3 setup.py install
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    cd ../..
    ```
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    !!! note
        If you see HTTP issue related to downloading packages during building triton, please try again as the HTTP error is intermittent.
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2. Optionally, if you choose to use CK flash attention, you can install [flash attention for ROCm](https://github.com/Dao-AILab/flash-attention)
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    Install ROCm's flash attention (v2.7.2) following the instructions from [ROCm/flash-attention](https://github.com/ROCm/flash-attention#amd-rocm-support)
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    Alternatively, wheels intended for vLLM use can be accessed under the releases.
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    For example, for ROCm 6.3, suppose your gfx arch is `gfx90a`. To get your gfx architecture, run `rocminfo |grep gfx`.
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    ```bash
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    git clone https://github.com/Dao-AILab/flash-attention.git
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    cd flash-attention
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    git checkout 1a7f4dfa
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    git submodule update --init
    GPU_ARCHS="gfx90a" python3 setup.py install
    cd ..
    ```
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    !!! note
        You might need to downgrade the "ninja" version to 1.10 as it is not used when compiling flash-attention-2 (e.g. `pip install ninja==1.10.2.4`)
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3. If you choose to build AITER yourself to use a certain branch or commit, you can build AITER using the following steps:

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    ```bash
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    python3 -m pip uninstall -y aiter
    git clone --recursive https://github.com/ROCm/aiter.git
    cd aiter
    git checkout $AITER_BRANCH_OR_COMMIT
    git submodule sync; git submodule update --init --recursive
    python3 setup.py develop
    ```

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    !!! note
        You will need to config the `$AITER_BRANCH_OR_COMMIT` for your purpose.
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4. Build vLLM. For example, vLLM on ROCM 6.3 can be built with the following steps:
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    ??? console "Commands"
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        ```bash
        pip install --upgrade pip

        # Build & install AMD SMI
        pip install /opt/rocm/share/amd_smi

        # Install dependencies
        pip install --upgrade numba \
            scipy \
            huggingface-hub[cli,hf_transfer] \
            setuptools_scm
        pip install "numpy<2"
        pip install -r requirements/rocm.txt

        # Build vLLM for MI210/MI250/MI300.
        export PYTORCH_ROCM_ARCH="gfx90a;gfx942"
        python3 setup.py develop
        ```
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    This may take 5-10 minutes. Currently, `pip install .` does not work for ROCm installation.
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    !!! tip
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        - Triton flash attention is used by default. For benchmarking purposes, it is recommended to run a warm-up step before collecting perf numbers.
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        - Triton flash attention does not currently support sliding window attention. If using half precision, please use CK flash-attention for sliding window support.
        - To use CK flash-attention or PyTorch naive attention, please use this flag `export VLLM_USE_TRITON_FLASH_ATTN=0` to turn off triton flash attention.
        - The ROCm version of PyTorch, ideally, should match the ROCm driver version.
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!!! tip
    - For MI300x (gfx942) users, to achieve optimal performance, please refer to [MI300x tuning guide](https://rocm.docs.amd.com/en/latest/how-to/tuning-guides/mi300x/index.html) for performance optimization and tuning tips on system and workflow level.
      For vLLM, please refer to [vLLM performance optimization](https://rocm.docs.amd.com/en/latest/how-to/tuning-guides/mi300x/workload.html#vllm-performance-optimization).
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# --8<-- [end:build-wheel-from-source]
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# --8<-- [start:pre-built-images]
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The [AMD Infinity hub for vLLM](https://hub.docker.com/r/rocm/vllm/tags) offers a prebuilt, optimized
docker image designed for validating inference performance on the AMD Instinct™ MI300X accelerator.

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!!! tip
    Please check [LLM inference performance validation on AMD Instinct MI300X](https://rocm.docs.amd.com/en/latest/how-to/performance-validation/mi300x/vllm-benchmark.html)
    for instructions on how to use this prebuilt docker image.
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# --8<-- [end:pre-built-images]
# --8<-- [start:build-image-from-source]
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Building the Docker image from source is the recommended way to use vLLM with ROCm.

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#### (Optional) Build an image with ROCm software stack

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Build a docker image from [docker/Dockerfile.rocm_base](https://github.com/vllm-project/vllm/blob/main/docker/Dockerfile.rocm_base) which setup ROCm software stack needed by the vLLM.
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**This step is optional as this rocm_base image is usually prebuilt and store at [Docker Hub](https://hub.docker.com/r/rocm/vllm-dev) under tag `rocm/vllm-dev:base` to speed up user experience.**
If you choose to build this rocm_base image yourself, the steps are as follows.

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It is important that the user kicks off the docker build using buildkit. Either the user put DOCKER_BUILDKIT=1 as environment variable when calling docker build command, or the user needs to set up buildkit in the docker daemon configuration /etc/docker/daemon.json as follows and restart the daemon:
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```json
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{
    "features": {
        "buildkit": true
    }
}
```

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To build vllm on ROCm 6.3 for MI200 and MI300 series, you can use the default:

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```bash
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DOCKER_BUILDKIT=1 docker build \
    -f docker/Dockerfile.rocm_base \
    -t rocm/vllm-dev:base .
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```

#### Build an image with vLLM

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First, build a docker image from [docker/Dockerfile.rocm](https://github.com/vllm-project/vllm/blob/main/docker/Dockerfile.rocm) and launch a docker container from the image.
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It is important that the user kicks off the docker build using buildkit. Either the user put `DOCKER_BUILDKIT=1` as environment variable when calling docker build command, or the user needs to set up buildkit in the docker daemon configuration /etc/docker/daemon.json as follows and restart the daemon:
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```bash
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{
    "features": {
        "buildkit": true
    }
}
```

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[docker/Dockerfile.rocm](https://github.com/vllm-project/vllm/blob/main/docker/Dockerfile.rocm) uses ROCm 6.3 by default, but also supports ROCm 5.7, 6.0, 6.1, and 6.2, in older vLLM branches.
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It provides flexibility to customize the build of docker image using the following arguments:

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- `BASE_IMAGE`: specifies the base image used when running `docker build`. The default value `rocm/vllm-dev:base` is an image published and maintained by AMD. It is being built using [docker/Dockerfile.rocm_base](https://github.com/vllm-project/vllm/blob/main/docker/Dockerfile.rocm_base)
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- `ARG_PYTORCH_ROCM_ARCH`: Allows to override the gfx architecture values from the base docker image
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Their values can be passed in when running `docker build` with `--build-arg` options.

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To build vllm on ROCm 6.3 for MI200 and MI300 series, you can use the default:
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```bash
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DOCKER_BUILDKIT=1 docker build -f docker/Dockerfile.rocm -t vllm-rocm .
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```

To run the above docker image `vllm-rocm`, use the below command:

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??? console "Command"
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    ```bash
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    docker run -it \
    --network=host \
    --group-add=video \
    --ipc=host \
    --cap-add=SYS_PTRACE \
    --security-opt seccomp=unconfined \
    --device /dev/kfd \
    --device /dev/dri \
    -v <path/to/model>:/app/model \
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    vllm-rocm
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    ```
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Where the `<path/to/model>` is the location where the model is stored, for example, the weights for llama2 or llama3 models.

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# --8<-- [end:build-image-from-source]
# --8<-- [start:supported-features]
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See [feature-x-hardware][feature-x-hardware] compatibility matrix for feature support information.
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# --8<-- [end:supported-features]