Unverified Commit c3649e4f authored by Lukas Geiger's avatar Lukas Geiger Committed by GitHub
Browse files

[Docs] Fix syntax highlighting of shell commands (#19870)


Signed-off-by: default avatarLukas Geiger <lukas.geiger94@gmail.com>
parent 53243e5c
......@@ -12,7 +12,7 @@ vLLM now supports [BitBLAS](https://github.com/microsoft/BitBLAS) for more effic
Below are the steps to utilize BitBLAS with vLLM.
```console
```bash
pip install bitblas>=0.1.0
```
......
......@@ -9,7 +9,7 @@ Compared to other quantization methods, BitsAndBytes eliminates the need for cal
Below are the steps to utilize BitsAndBytes with vLLM.
```console
```bash
pip install bitsandbytes>=0.45.3
```
......@@ -54,6 +54,6 @@ llm = LLM(
Append the following to your model arguments for 4bit inflight quantization:
```console
```bash
--quantization bitsandbytes
```
......@@ -23,7 +23,7 @@ The FP8 types typically supported in hardware have two distinct representations,
To produce performant FP8 quantized models with vLLM, you'll need to install the [llm-compressor](https://github.com/vllm-project/llm-compressor/) library:
```console
```bash
pip install llmcompressor
```
......@@ -81,7 +81,7 @@ Since simple RTN does not require data for weight quantization and the activatio
Install `vllm` and `lm-evaluation-harness` for evaluation:
```console
```bash
pip install vllm lm-eval==0.4.4
```
......@@ -99,9 +99,9 @@ Evaluate accuracy with `lm_eval` (for example on 250 samples of `gsm8k`):
!!! note
Quantized models can be sensitive to the presence of the `bos` token. `lm_eval` does not add a `bos` token by default, so make sure to include the `add_bos_token=True` argument when running your evaluations.
```console
$ MODEL=$PWD/Meta-Llama-3-8B-Instruct-FP8-Dynamic
$ lm_eval \
```bash
MODEL=$PWD/Meta-Llama-3-8B-Instruct-FP8-Dynamic
lm_eval \
--model vllm \
--model_args pretrained=$MODEL,add_bos_token=True \
--tasks gsm8k --num_fewshot 5 --batch_size auto --limit 250
......
......@@ -11,7 +11,7 @@ title: GGUF
To run a GGUF model with vLLM, you can download and use the local GGUF model from [TheBloke/TinyLlama-1.1B-Chat-v1.0-GGUF](https://huggingface.co/TheBloke/TinyLlama-1.1B-Chat-v1.0-GGUF) with the following command:
```console
```bash
wget https://huggingface.co/TheBloke/TinyLlama-1.1B-Chat-v1.0-GGUF/resolve/main/tinyllama-1.1b-chat-v1.0.Q4_K_M.gguf
# We recommend using the tokenizer from base model to avoid long-time and buggy tokenizer conversion.
vllm serve ./tinyllama-1.1b-chat-v1.0.Q4_K_M.gguf \
......@@ -20,7 +20,7 @@ vllm serve ./tinyllama-1.1b-chat-v1.0.Q4_K_M.gguf \
You can also add `--tensor-parallel-size 2` to enable tensor parallelism inference with 2 GPUs:
```console
```bash
# We recommend using the tokenizer from base model to avoid long-time and buggy tokenizer conversion.
vllm serve ./tinyllama-1.1b-chat-v1.0.Q4_K_M.gguf \
--tokenizer TinyLlama/TinyLlama-1.1B-Chat-v1.0 \
......@@ -32,7 +32,7 @@ vllm serve ./tinyllama-1.1b-chat-v1.0.Q4_K_M.gguf \
GGUF assumes that huggingface can convert the metadata to a config file. In case huggingface doesn't support your model you can manually create a config and pass it as hf-config-path
```console
```bash
# If you model is not supported by huggingface you can manually provide a huggingface compatible config path
vllm serve ./tinyllama-1.1b-chat-v1.0.Q4_K_M.gguf \
--tokenizer TinyLlama/TinyLlama-1.1B-Chat-v1.0 \
......
......@@ -21,7 +21,7 @@ for more details on this and other advanced features.
You can quantize your own models by installing [GPTQModel](https://github.com/ModelCloud/GPTQModel) or picking one of the [5000+ models on Huggingface](https://huggingface.co/models?search=gptq).
```console
```bash
pip install -U gptqmodel --no-build-isolation -v
```
......@@ -60,7 +60,7 @@ Here is an example of how to quantize `meta-llama/Llama-3.2-1B-Instruct`:
To run an GPTQModel quantized model with vLLM, you can use [DeepSeek-R1-Distill-Qwen-7B-gptqmodel-4bit-vortex-v2](https://huggingface.co/ModelCloud/DeepSeek-R1-Distill-Qwen-7B-gptqmodel-4bit-vortex-v2) with the following command:
```console
```bash
python examples/offline_inference/llm_engine_example.py \
--model ModelCloud/DeepSeek-R1-Distill-Qwen-7B-gptqmodel-4bit-vortex-v2
```
......
......@@ -14,13 +14,13 @@ Please visit the HF collection of [quantized INT4 checkpoints of popular LLMs re
To use INT4 quantization with vLLM, you'll need to install the [llm-compressor](https://github.com/vllm-project/llm-compressor/) library:
```console
```bash
pip install llmcompressor
```
Additionally, install `vllm` and `lm-evaluation-harness` for evaluation:
```console
```bash
pip install vllm lm-eval==0.4.4
```
......@@ -116,8 +116,8 @@ model = LLM("./Meta-Llama-3-8B-Instruct-W4A16-G128")
To evaluate accuracy, you can use `lm_eval`:
```console
$ lm_eval --model vllm \
```bash
lm_eval --model vllm \
--model_args pretrained="./Meta-Llama-3-8B-Instruct-W4A16-G128",add_bos_token=true \
--tasks gsm8k \
--num_fewshot 5 \
......
......@@ -15,13 +15,13 @@ Please visit the HF collection of [quantized INT8 checkpoints of popular LLMs re
To use INT8 quantization with vLLM, you'll need to install the [llm-compressor](https://github.com/vllm-project/llm-compressor/) library:
```console
```bash
pip install llmcompressor
```
Additionally, install `vllm` and `lm-evaluation-harness` for evaluation:
```console
```bash
pip install vllm lm-eval==0.4.4
```
......@@ -122,8 +122,8 @@ model = LLM("./Meta-Llama-3-8B-Instruct-W8A8-Dynamic-Per-Token")
To evaluate accuracy, you can use `lm_eval`:
```console
$ lm_eval --model vllm \
```bash
lm_eval --model vllm \
--model_args pretrained="./Meta-Llama-3-8B-Instruct-W8A8-Dynamic-Per-Token",add_bos_token=true \
--tasks gsm8k \
--num_fewshot 5 \
......
......@@ -4,7 +4,7 @@ The [NVIDIA TensorRT Model Optimizer](https://github.com/NVIDIA/TensorRT-Model-O
We recommend installing the library with:
```console
```bash
pip install nvidia-modelopt
```
......
......@@ -65,7 +65,7 @@ For optimal model quality when using FP8 KV Cache, we recommend using calibrated
First, install the required dependencies:
```console
```bash
pip install llmcompressor
```
......
......@@ -13,7 +13,7 @@ AWQ, GPTQ, Rotation and SmoothQuant.
Before quantizing models, you need to install Quark. The latest release of Quark can be installed with pip:
```console
```bash
pip install amd-quark
```
......@@ -22,13 +22,13 @@ for more installation details.
Additionally, install `vllm` and `lm-evaluation-harness` for evaluation:
```console
```bash
pip install vllm lm-eval==0.4.4
```
## Quantization Process
After installing Quark, we will use an example to illustrate how to use Quark.
After installing Quark, we will use an example to illustrate how to use Quark.
The Quark quantization process can be listed for 5 steps as below:
1. Load the model
......@@ -209,8 +209,8 @@ Now, you can load and run the Quark quantized model directly through the LLM ent
Or, you can use `lm_eval` to evaluate accuracy:
```console
$ lm_eval --model vllm \
```bash
lm_eval --model vllm \
--model_args pretrained=Llama-2-70b-chat-hf-w-fp8-a-fp8-kvcache-fp8-pertensor-autosmoothquant,kv_cache_dtype='fp8',quantization='quark' \
--tasks gsm8k
```
......@@ -222,7 +222,7 @@ to quantize large language models more conveniently. It supports quantizing mode
of different quantization schemes and optimization algorithms. It can export the quantized model
and run evaluation tasks on the fly. With the script, the example above can be:
```console
```bash
python3 quantize_quark.py --model_dir meta-llama/Llama-2-70b-chat-hf \
--output_dir /path/to/output \
--quant_scheme w_fp8_a_fp8 \
......
......@@ -4,7 +4,7 @@ TorchAO is an architecture optimization library for PyTorch, it provides high pe
We recommend installing the latest torchao nightly with
```console
```bash
# Install the latest TorchAO nightly build
# Choose the CUDA version that matches your system (cu126, cu128, etc.)
pip install \
......
......@@ -351,7 +351,7 @@ Here is a summary of a plugin file:
Then you can use this plugin in the command line like this.
```console
```bash
--enable-auto-tool-choice \
--tool-parser-plugin <absolute path of the plugin file>
--tool-call-parser example \
......
......@@ -26,7 +26,7 @@ The easiest way to launch a Trainium or Inferentia instance with pre-installed N
- After launching the instance, follow the instructions in [Connect to your instance](https://docs.aws.amazon.com/AWSEC2/latest/UserGuide/AccessingInstancesLinux.html) to connect to the instance
- Once inside your instance, activate the pre-installed virtual environment for inference by running
```console
```bash
source /opt/aws_neuronx_venv_pytorch_2_6_nxd_inference/bin/activate
```
......@@ -47,7 +47,7 @@ Currently, there are no pre-built Neuron wheels.
To build and install vLLM from source, run:
```console
```bash
git clone https://github.com/vllm-project/vllm.git
cd vllm
pip install -U -r requirements/neuron.txt
......@@ -66,7 +66,7 @@ Refer to [vLLM User Guide for NxD Inference](https://awsdocs-neuron.readthedocs-
To install the AWS Neuron fork, run the following:
```console
```bash
git clone -b neuron-2.23-vllm-v0.7.2 https://github.com/aws-neuron/upstreaming-to-vllm.git
cd upstreaming-to-vllm
pip install -r requirements/neuron.txt
......@@ -100,7 +100,7 @@ to perform most of the heavy lifting which includes PyTorch model initialization
To configure NxD Inference features through the vLLM entrypoint, use the `override_neuron_config` setting. Provide the configs you want to override
as a dictionary (or JSON object when starting vLLM from the CLI). For example, to disable auto bucketing, include
```console
```python
override_neuron_config={
"enable_bucketing":False,
}
......@@ -108,7 +108,7 @@ override_neuron_config={
or when launching vLLM from the CLI, pass
```console
```bash
--override-neuron-config "{\"enable_bucketing\":false}"
```
......
......@@ -78,13 +78,13 @@ Currently, there are no pre-built CPU wheels.
??? Commands
```console
$ docker build -f docker/Dockerfile.cpu \
```bash
docker build -f docker/Dockerfile.cpu \
--tag vllm-cpu-env \
--target vllm-openai .
# Launching OpenAI server
$ docker run --rm \
# Launching OpenAI server
docker run --rm \
--privileged=true \
--shm-size=4g \
-p 8000:8000 \
......@@ -123,7 +123,7 @@ vLLM CPU backend supports the following vLLM features:
- We highly recommend to use TCMalloc for high performance memory allocation and better cache locality. For example, on Ubuntu 22.4, you can run:
```console
```bash
sudo apt-get install libtcmalloc-minimal4 # install TCMalloc library
find / -name *libtcmalloc* # find the dynamic link library path
export LD_PRELOAD=/usr/lib/x86_64-linux-gnu/libtcmalloc_minimal.so.4:$LD_PRELOAD # prepend the library to LD_PRELOAD
......@@ -132,7 +132,7 @@ python examples/offline_inference/basic/basic.py # run vLLM
- When using the online serving, it is recommended to reserve 1-2 CPU cores for the serving framework to avoid CPU oversubscription. For example, on a platform with 32 physical CPU cores, reserving CPU 30 and 31 for the framework and using CPU 0-29 for OpenMP:
```console
```bash
export VLLM_CPU_KVCACHE_SPACE=40
export VLLM_CPU_OMP_THREADS_BIND=0-29
vllm serve facebook/opt-125m
......@@ -140,7 +140,7 @@ vllm serve facebook/opt-125m
or using default auto thread binding:
```console
```bash
export VLLM_CPU_KVCACHE_SPACE=40
export VLLM_CPU_NUM_OF_RESERVED_CPU=2
vllm serve facebook/opt-125m
......@@ -189,7 +189,7 @@ vllm serve facebook/opt-125m
- Tensor Parallel is supported for serving and offline inferencing. In general each NUMA node is treated as one GPU card. Below is the example script to enable Tensor Parallel = 2 for serving:
```console
```bash
VLLM_CPU_KVCACHE_SPACE=40 VLLM_CPU_OMP_THREADS_BIND="0-31|32-63" \
vllm serve meta-llama/Llama-2-7b-chat-hf \
-tp=2 \
......@@ -198,7 +198,7 @@ vllm serve facebook/opt-125m
or using default auto thread binding:
```console
```bash
VLLM_CPU_KVCACHE_SPACE=40 \
vllm serve meta-llama/Llama-2-7b-chat-hf \
-tp=2 \
......
......@@ -25,11 +25,11 @@ Currently the CPU implementation for macOS supports FP32 and FP16 datatypes.
After installation of XCode and the Command Line Tools, which include Apple Clang, execute the following commands to build and install vLLM from the source.
```console
```bash
git clone https://github.com/vllm-project/vllm.git
cd vllm
pip install -r requirements/cpu.txt
pip install -e .
pip install -e .
```
!!! note
......
First, install recommended compiler. We recommend to use `gcc/g++ >= 12.3.0` as the default compiler to avoid potential problems. For example, on Ubuntu 22.4, you can run:
```console
```bash
sudo apt-get update -y
sudo apt-get install -y gcc-12 g++-12 libnuma-dev python3-dev
sudo update-alternatives --install /usr/bin/gcc gcc /usr/bin/gcc-12 10 --slave /usr/bin/g++ g++ /usr/bin/g++-12
......@@ -8,14 +8,14 @@ sudo update-alternatives --install /usr/bin/gcc gcc /usr/bin/gcc-12 10 --slave /
Second, clone vLLM project:
```console
```bash
git clone https://github.com/vllm-project/vllm.git vllm_source
cd vllm_source
```
Third, install Python packages for vLLM CPU backend building:
```console
```bash
pip install --upgrade pip
pip install "cmake>=3.26.1" wheel packaging ninja "setuptools-scm>=8" numpy
pip install -v -r requirements/cpu.txt --extra-index-url https://download.pytorch.org/whl/cpu
......@@ -23,13 +23,13 @@ pip install -v -r requirements/cpu.txt --extra-index-url https://download.pytorc
Finally, build and install vLLM CPU backend:
```console
```bash
VLLM_TARGET_DEVICE=cpu python setup.py install
```
If you want to develop vllm, install it in editable mode instead.
```console
```bash
VLLM_TARGET_DEVICE=cpu python setup.py develop
```
......
......@@ -26,7 +26,7 @@ Currently the CPU implementation for s390x architecture supports FP32 datatype o
Install the following packages from the package manager before building the vLLM. For example on RHEL 9.4:
```console
```bash
dnf install -y \
which procps findutils tar vim git gcc g++ make patch make cython zlib-devel \
libjpeg-turbo-devel libtiff-devel libpng-devel libwebp-devel freetype-devel harfbuzz-devel \
......@@ -35,7 +35,7 @@ dnf install -y \
Install rust>=1.80 which is needed for `outlines-core` and `uvloop` python packages installation.
```console
```bash
curl https://sh.rustup.rs -sSf | sh -s -- -y && \
. "$HOME/.cargo/env"
```
......@@ -45,7 +45,7 @@ Execute the following commands to build and install vLLM from the source.
!!! tip
Please build the following dependencies, `torchvision`, `pyarrow` from the source before building vLLM.
```console
```bash
sed -i '/^torch/d' requirements-build.txt # remove torch from requirements-build.txt since we use nightly builds
pip install -v \
--extra-index-url https://download.pytorch.org/whl/nightly/cpu \
......
......@@ -68,7 +68,7 @@ For more information about using TPUs with GKE, see:
Create a TPU v5e with 4 TPU chips:
```console
```bash
gcloud alpha compute tpus queued-resources create QUEUED_RESOURCE_ID \
--node-id TPU_NAME \
--project PROJECT_ID \
......@@ -156,13 +156,13 @@ See [deployment-docker-pre-built-image][deployment-docker-pre-built-image] for i
You can use <gh-file:docker/Dockerfile.tpu> to build a Docker image with TPU support.
```console
```bash
docker build -f docker/Dockerfile.tpu -t vllm-tpu .
```
Run the Docker image with the following command:
```console
```bash
# Make sure to add `--privileged --net host --shm-size=16G`.
docker run --privileged --net host --shm-size=16G -it vllm-tpu
```
......@@ -185,6 +185,6 @@ docker run --privileged --net host --shm-size=16G -it vllm-tpu
Install OpenBLAS with the following command:
```console
```bash
sudo apt-get install --no-install-recommends --yes libopenblas-base libopenmpi-dev libomp-dev
```
......@@ -22,7 +22,7 @@ Therefore, it is recommended to install vLLM with a **fresh new** environment. I
You can install vLLM using either `pip` or `uv pip`:
```console
```bash
# Install vLLM with CUDA 12.8.
# If you are using pip.
pip install vllm --extra-index-url https://download.pytorch.org/whl/cu128
......@@ -37,7 +37,7 @@ We recommend leveraging `uv` to [automatically select the appropriate PyTorch in
As of now, vLLM's binaries are compiled with CUDA 12.8 and public PyTorch release versions by default. We also provide vLLM binaries compiled with CUDA 12.6, 11.8, and public PyTorch release versions:
```console
```bash
# Install vLLM with CUDA 11.8.
export VLLM_VERSION=0.6.1.post1
export PYTHON_VERSION=312
......@@ -52,7 +52,7 @@ LLM inference is a fast-evolving field, and the latest code may contain bug fixe
##### Install the latest code using `pip`
```console
```bash
pip install -U vllm \
--pre \
--extra-index-url https://wheels.vllm.ai/nightly
......@@ -62,7 +62,7 @@ pip install -U vllm \
Another way to install the latest code is to use `uv`:
```console
```bash
uv pip install -U vllm \
--torch-backend=auto \
--extra-index-url https://wheels.vllm.ai/nightly
......@@ -72,7 +72,7 @@ uv pip install -U vllm \
If you want to access the wheels for previous commits (e.g. to bisect the behavior change, performance regression), due to the limitation of `pip`, you have to specify the full URL of the wheel file by embedding the commit hash in the URL:
```console
```bash
export VLLM_COMMIT=33f460b17a54acb3b6cc0b03f4a17876cff5eafd # use full commit hash from the main branch
pip install https://wheels.vllm.ai/${VLLM_COMMIT}/vllm-1.0.0.dev-cp38-abi3-manylinux1_x86_64.whl
```
......@@ -83,7 +83,7 @@ Note that the wheels are built with Python 3.8 ABI (see [PEP 425](https://peps.p
If you want to access the wheels for previous commits (e.g. to bisect the behavior change, performance regression), you can specify the commit hash in the URL:
```console
```bash
export VLLM_COMMIT=72d9c316d3f6ede485146fe5aabd4e61dbc59069 # use full commit hash from the main branch
uv pip install vllm \
--torch-backend=auto \
......@@ -99,7 +99,7 @@ The `uv` approach works for vLLM `v0.6.6` and later and offers an easy-to-rememb
If you only need to change Python code, you can build and install vLLM without compilation. Using `pip`'s [`--editable` flag](https://pip.pypa.io/en/stable/topics/local-project-installs/#editable-installs), changes you make to the code will be reflected when you run vLLM:
```console
```bash
git clone https://github.com/vllm-project/vllm.git
cd vllm
VLLM_USE_PRECOMPILED=1 pip install --editable .
......@@ -118,7 +118,7 @@ This command will do the following:
In case you see an error about wheel not found when running the above command, it might be because the commit you based on in the main branch was just merged and the wheel is being built. In this case, you can wait for around an hour to try again, or manually assign the previous commit in the installation using the `VLLM_PRECOMPILED_WHEEL_LOCATION` environment variable.
```console
```bash
export VLLM_COMMIT=72d9c316d3f6ede485146fe5aabd4e61dbc59069 # use full commit hash from the main branch
export VLLM_PRECOMPILED_WHEEL_LOCATION=https://wheels.vllm.ai/${VLLM_COMMIT}/vllm-1.0.0.dev-cp38-abi3-manylinux1_x86_64.whl
pip install --editable .
......@@ -134,7 +134,7 @@ You can find more information about vLLM's wheels in [install-the-latest-code][i
If you want to modify C++ or CUDA code, you'll need to build vLLM from source. This can take several minutes:
```console
```bash
git clone https://github.com/vllm-project/vllm.git
cd vllm
pip install -e .
......@@ -160,7 +160,7 @@ There are scenarios where the PyTorch dependency cannot be easily installed via
To build vLLM using an existing PyTorch installation:
```console
```bash
git clone https://github.com/vllm-project/vllm.git
cd vllm
python use_existing_torch.py
......@@ -173,7 +173,7 @@ pip install --no-build-isolation -e .
Currently, before starting the build process, vLLM fetches cutlass code from GitHub. However, there may be scenarios where you want to use a local version of cutlass instead.
To achieve this, you can set the environment variable VLLM_CUTLASS_SRC_DIR to point to your local cutlass directory.
```console
```bash
git clone https://github.com/vllm-project/vllm.git
cd vllm
VLLM_CUTLASS_SRC_DIR=/path/to/cutlass pip install -e .
......@@ -184,7 +184,7 @@ VLLM_CUTLASS_SRC_DIR=/path/to/cutlass pip install -e .
To avoid your system being overloaded, you can limit the number of compilation jobs
to be run simultaneously, via the environment variable `MAX_JOBS`. For example:
```console
```bash
export MAX_JOBS=6
pip install -e .
```
......@@ -194,7 +194,7 @@ A side effect is a much slower build process.
Additionally, if you have trouble building vLLM, we recommend using the NVIDIA PyTorch Docker image.
```console
```bash
# Use `--ipc=host` to make sure the shared memory is large enough.
docker run \
--gpus all \
......@@ -205,14 +205,14 @@ docker run \
If you don't want to use docker, it is recommended to have a full installation of CUDA Toolkit. You can download and install it from [the official website](https://developer.nvidia.com/cuda-toolkit-archive). After installation, set the environment variable `CUDA_HOME` to the installation path of CUDA Toolkit, and make sure that the `nvcc` compiler is in your `PATH`, e.g.:
```console
```bash
export CUDA_HOME=/usr/local/cuda
export PATH="${CUDA_HOME}/bin:$PATH"
```
Here is a sanity check to verify that the CUDA Toolkit is correctly installed:
```console
```bash
nvcc --version # verify that nvcc is in your PATH
${CUDA_HOME}/bin/nvcc --version # verify that nvcc is in your CUDA_HOME
```
......@@ -223,7 +223,7 @@ vLLM can fully run only on Linux but for development purposes, you can still bui
Simply disable the `VLLM_TARGET_DEVICE` environment variable before installing:
```console
```bash
export VLLM_TARGET_DEVICE=empty
pip install -e .
```
......@@ -238,7 +238,7 @@ See [deployment-docker-pre-built-image][deployment-docker-pre-built-image] for i
Another way to access the latest code is to use the docker images:
```console
```bash
export VLLM_COMMIT=33f460b17a54acb3b6cc0b03f4a17876cff5eafd # use full commit hash from the main branch
docker pull public.ecr.aws/q9t5s3a7/vllm-ci-postmerge-repo:${VLLM_COMMIT}
```
......
......@@ -31,17 +31,17 @@ Currently, there are no pre-built ROCm wheels.
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:
```console
```bash
# Install PyTorch
$ pip uninstall torch -y
$ pip install --no-cache-dir --pre torch --index-url https://download.pytorch.org/whl/nightly/rocm6.3
pip uninstall torch -y
pip install --no-cache-dir --pre torch --index-url https://download.pytorch.org/whl/nightly/rocm6.3
```
1. Install [Triton flash attention for ROCm](https://github.com/ROCm/triton)
Install ROCm's Triton flash attention (the default triton-mlir branch) following the instructions from [ROCm/triton](https://github.com/ROCm/triton/blob/triton-mlir/README.md)
```console
```bash
python3 -m pip install ninja cmake wheel pybind11
pip uninstall -y triton
git clone https://github.com/OpenAI/triton.git
......@@ -62,7 +62,7 @@ Currently, there are no pre-built ROCm wheels.
For example, for ROCm 6.3, suppose your gfx arch is `gfx90a`. To get your gfx architecture, run `rocminfo |grep gfx`.
```console
```bash
git clone https://github.com/ROCm/flash-attention.git
cd flash-attention
git checkout b7d29fb
......@@ -76,7 +76,7 @@ Currently, there are no pre-built ROCm wheels.
3. If you choose to build AITER yourself to use a certain branch or commit, you can build AITER using the following steps:
```console
```bash
python3 -m pip uninstall -y aiter
git clone --recursive https://github.com/ROCm/aiter.git
cd aiter
......@@ -148,7 +148,7 @@ If you choose to build this rocm_base image yourself, the steps are as follows.
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 setup buildkit in the docker daemon configuration /etc/docker/daemon.json as follows and restart the daemon:
```console
```json
{
"features": {
"buildkit": true
......@@ -158,7 +158,7 @@ It is important that the user kicks off the docker build using buildkit. Either
To build vllm on ROCm 6.3 for MI200 and MI300 series, you can use the default:
```console
```bash
DOCKER_BUILDKIT=1 docker build \
-f docker/Dockerfile.rocm_base \
-t rocm/vllm-dev:base .
......@@ -169,7 +169,7 @@ DOCKER_BUILDKIT=1 docker build \
First, build a docker image from <gh-file:docker/Dockerfile.rocm> and launch a docker container from the image.
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 setup buildkit in the docker daemon configuration /etc/docker/daemon.json as follows and restart the daemon:
```console
```bash
{
"features": {
"buildkit": true
......@@ -187,13 +187,13 @@ Their values can be passed in when running `docker build` with `--build-arg` opt
To build vllm on ROCm 6.3 for MI200 and MI300 series, you can use the default:
```console
```bash
DOCKER_BUILDKIT=1 docker build -f docker/Dockerfile.rocm -t vllm-rocm .
```
To build vllm on ROCm 6.3 for Radeon RX7900 series (gfx1100), you should pick the alternative base image:
```console
```bash
DOCKER_BUILDKIT=1 docker build \
--build-arg BASE_IMAGE="rocm/vllm-dev:navi_base" \
-f docker/Dockerfile.rocm \
......@@ -205,7 +205,7 @@ To run the above docker image `vllm-rocm`, use the below command:
??? Command
```console
```bash
docker run -it \
--network=host \
--group-add=video \
......
Markdown is supported
0% or .
You are about to add 0 people to the discussion. Proceed with caution.
Finish editing this message first!
Please register or to comment