first commit

Bu işleme şunda yer alıyor:
Donato Capitella
2025-09-03 20:42:44 +01:00
işleme a1501febb4
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FROM kyuz0/pytorch-therock-gfx1151-aotriton-builder:latest AS vllm-builder
# Clone vLLM repository (shallow clone)
RUN git clone --depth 1 https://github.com/vllm-project/vllm.git
# Install vLLM build dependencies and build vLLM
RUN source .venv/bin/activate && \
cd vllm && \
uv pip install ninja cmake wheel pybind11 && \
uv pip install --upgrade numba scipy huggingface-hub[cli] "numpy<2" && \
python use_existing_torch.py && \
sed -i '/amdsmi==/d' requirements/rocm-build.txt && \
sed -i '/pytorch-triton-rocm/d' requirements/rocm-build.txt && \
sed -i '/triton==/d' requirements/rocm-build.txt && \
uv pip install -r requirements/rocm-build.txt
# Apply gfx1151 fixes
RUN cd vllm && \
sed -i 's/gfx1200;gfx1201/gfx1151;gfx1200;gfx1201/' CMakeLists.txt && \
sed -i '/torch == 2.8.0,/d' pyproject.toml && \
sed -i 's/import torch/try:\n import torch\n from torch.utils.cpp_extension import CUDA_HOME, ROCM_HOME\n TORCH_AVAILABLE = True\nexcept ImportError:\n torch = None\n CUDA_HOME = None\n ROCM_HOME = None\n TORCH_AVAILABLE = False/' setup.py && \
sed -i 's/from torch.utils.cpp_extension import CUDA_HOME, ROCM_HOME/# Moved to try block above/' setup.py && \
sed -i 's/torch.version.cuda is None/TORCH_AVAILABLE and torch.version.cuda is None/' setup.py && \
sed -i 's/has_cuda = torch.version.cuda is not None/has_cuda = TORCH_AVAILABLE and torch.version.cuda is not None/' setup.py && \
sed -i 's/torch.version.hip is not None/TORCH_AVAILABLE and torch.version.hip is not None/' setup.py && \
sed -i 's/rocm_version = get_rocm_version() or torch.version.hip/rocm_version = get_rocm_version() or (torch.version.hip if TORCH_AVAILABLE else None)/' setup.py && \
sed -i 's/cuda_major, cuda_minor = torch.version.cuda.split(".")/cuda_major, cuda_minor = torch.version.cuda.split(".") if TORCH_AVAILABLE else ("0", "0")/' setup.py
# Fix ROCm platform detection
RUN cd vllm && \
git checkout HEAD -- vllm/platforms/__init__.py && \
sed -i '/def rocm_platform_plugin/,/return "vllm.platforms.rocm.RocmPlatform" if is_rocm else None/s/is_rocm = False/is_rocm = False/' vllm/platforms/__init__.py && \
sed -i '/def rocm_platform_plugin/,/return "vllm.platforms.rocm.RocmPlatform" if is_rocm else None/s/logger.debug("Checking if ROCm platform is available.")/logger.debug("Checking if ROCm platform is available.")\n \n # Skip amdsmi check due to segfault issues - default to ROCm for AMD systems/' vllm/platforms/__init__.py && \
sed -i '/def rocm_platform_plugin/,/return "vllm.platforms.rocm.RocmPlatform" if is_rocm else None/s/try:\n import amdsmi/try:\n import torch/' vllm/platforms/__init__.py && \
sed -i '/def rocm_platform_plugin/,/return "vllm.platforms.rocm.RocmPlatform" if is_rocm else None/s/amdsmi.amdsmi_init()/# amdsmi disabled - using torch detection/' vllm/platforms/__init__.py && \
sed -i '/def rocm_platform_plugin/,/return "vllm.platforms.rocm.RocmPlatform" if is_rocm else None/s/try:\n if len(amdsmi.amdsmi_get_processor_handles()) > 0:/if hasattr(torch, '\''version'\'') and hasattr(torch.version, '\''hip'\'') and torch.version.hip is not None:/' vllm/platforms/__init__.py && \
sed -i '/def rocm_platform_plugin/,/return "vllm.platforms.rocm.RocmPlatform" if is_rocm else None/s/is_rocm = True\n logger.debug("Confirmed ROCm platform is available.")/is_rocm = True\n logger.debug("ROCm platform detected via torch.version.hip")/' vllm/platforms/__init__.py && \
sed -i '/def rocm_platform_plugin/,/return "vllm.platforms.rocm.RocmPlatform" if is_rocm else None/s/else:\n logger.debug("ROCm platform is not available because"\n " no GPU is found.")/else:\n # Fallback: assume ROCm if we'\''re not CUDA and not other platforms\n logger.debug("Defaulting to ROCm platform (amdsmi disabled due to segfault)")\n is_rocm = True/' vllm/platforms/__init__.py && \
sed -i '/def rocm_platform_plugin/,/return "vllm.platforms.rocm.RocmPlatform" if is_rocm else None/s/finally:\n amdsmi.amdsmi_shut_down()/finally:\n # amdsmi disabled\n pass/' vllm/platforms/__init__.py && \
sed -i '/def rocm_platform_plugin/,/return "vllm.platforms.rocm.RocmPlatform" if is_rocm else None/s/logger.debug("ROCm platform is not available because: %s", str(e))/logger.debug("ROCm platform check failed: %s", str(e))\n # Still default to ROCm as fallback\n is_rocm = True/' vllm/platforms/__init__.py
# Build vLLM
RUN source .venv/bin/activate && \
cd vllm && \
uv pip uninstall amdsmi || echo "amdsmi not installed" && \
printf '#!/bin/bash\necho "gfx1151"\n' > /usr/local/bin/amdgpu-arch && \
chmod +x /usr/local/bin/amdgpu-arch && \
printf '#!/bin/bash\necho "gfx1151"\n' > /usr/bin/amdgpu-arch && \
chmod +x /usr/bin/amdgpu-arch && \
printf '#!/bin/bash\necho "gfx1151"\n' > /bin/amdgpu-arch && \
chmod +x /bin/amdgpu-arch && \
export PYTORCH_ROCM_ARCH="gfx1151" && \
/torch-therock/.venv/bin/python -c "import torch; print('torch==' + torch.__version__)" > /tmp/constraints.txt && \
/torch-therock/.venv/bin/python -c "import triton; print('pytorch-triton-rocm==' + getattr(triton, '__version__', 'unknown'))" >> /tmp/constraints.txt || echo "# triton version not found" >> /tmp/constraints.txt && \
TORCH_CMAKE_PATH=$(/torch-therock/.venv/bin/python -c "import torch; print(torch.utils.cmake_prefix_path)") && \
VLLM_TARGET_DEVICE=rocm CMAKE_PREFIX_PATH="$TORCH_CMAKE_PATH" Torch_DIR="$TORCH_CMAKE_PATH/Torch" CMAKE_ARGS="-DGPU_TARGETS=gfx1151 -DHIP_TARGETS=gfx1151 -DAMDGPU_TARGETS=gfx1151" /torch-therock/.venv/bin/pip install . --no-build-isolation --constraint /tmp/constraints.txt
# Runtime stage
FROM archlinux:latest
# Install runtime dependencies + compilation tools
RUN pacman -Syu --noconfirm && \
pacman -S --noconfirm ca-certificates gcc make cmake ninja git && \
pacman -Scc --noconfirm && \
git clone --depth 1 https://github.com/pyenv/pyenv.git /opt/pyenv && \
export PYENV_ROOT=/opt/pyenv && \
export PATH=$PYENV_ROOT/bin:$PATH && \
eval "$(pyenv init -)" && \
pyenv install 3.12.9 && \
pyenv global 3.12.9
# Copy complete environment from builder
COPY --from=vllm-builder /opt/pyenv /opt/pyenv
COPY --from=vllm-builder /torch-therock/.venv /torch-therock/.venv
COPY --from=vllm-builder /torch-therock/*.sh /torch-therock/
# Set environment
ENV PYENV_ROOT=/opt/pyenv
ENV PYENV_VERSION=3.12.9
ENV PATH="/opt/pyenv/versions/3.12.9/bin:/torch-therock/.venv/bin:$PATH"
ENV PYTORCH_ROCM_ARCH=gfx1151
WORKDIR /torch-therock
# Test installation
RUN /torch-therock/.venv/bin/python -c "import torch; print('PyTorch version:', torch.__version__)" && \
/torch-therock/.venv/bin/python -c "import vllm; print('vLLM version:', vllm.__version__)"
# Toolbx compatibility - fix permissions and add environment setup
RUN chmod -R a+rwX /torch-therock
# Copy toolbx scripts
COPY scripts/vllm-env.sh /etc/profile.d/vllm-env.sh
COPY scripts/vllm-banner.sh /etc/profile.d/vllm-banner.sh
RUN chmod 644 /etc/profile.d/vllm-env.sh /etc/profile.d/vllm-banner.sh
CMD ["bash", "-c", "source .venv/bin/activate && bash"]
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# AMD Strix Halo — vLLM Toolbox/Container (gfx1151, PyTorch + AOTriton)
An **Arch-based** Docker/Podman container that is **Toolbx-compatible** (usable as a Fedora toolbox) for serving LLMs with **vLLM** on **AMD Ryzen AI Max “Strix Halo” (gfx1151)**. Built on the PyTorch + AOTriton base to make ROCm on Strix Halo practical for daytoday use.
> **Built on:** [https://github.com/kyuz0/amd-strix-halo-pytorch-gfx1151-aotriton](https://github.com/kyuz0/amd-strix-halo-pytorch-gfx1151-aotriton)
> **Credits:** **lhl** (build tools/scripts), **ssweens** (Archbased Dockerfiles), and the **AMD Strix Halo Home Lab Discord** for testing/support.
---
## 1) Toolbx vs Docker/Podman
The `kyuz0/pytorch-therock-gfx1151-aotriton-builder` image can be used both as: 
## &#x20;
* **Fedora Toolbx (recommended for development):** Toolbx shares your **HOME** and user, so models/configs live on the host. Great for iterating quickly while keeping the host clean. 
* **Docker/Podman (recommended for deployment/perf):** Use for running vLLM as a service (host networking, IPC tuning, etc.). Always **mount a host directory** for model weights so they stay outside the container.
---
## 2) Quickstart — Fedora Toolbx (development)
Create a toolbox that exposes the GPU and relaxes seccomp to avoid ROCm syscall issues:
```bash
toolbox create vllm \
--image docker.io/kyuz0/vllm-therock-gfx1151-aotriton:latest \
-- --device /dev/dri --device /dev/kfd \
--group-add video --group-add render --security-opt seccomp=unconfined
```
Enter it:
```bash
toolbox enter vllm
```
**Model storage (Toolbx):** keep weights **outside** the toolbox under your HOME so they persist. Recommended path:
```bash
mkdir -p ~/vllm-models
```
Serve a model with vLLM (downloads to `~/vllm-models`; if the model isn't present, it will be fetched from Hugging Face automatically):
```bash
vllm serve Qwen/Qwen2.5-7B-Instruct \
--host 0.0.0.0 --port 8000 \
--download-dir ~/vllm-models
```
> Toolbx shares HOME by design, so `~/vllm-models` stays on the host and survives toolbox updates.
>
> **Cache note (Toolbx):** vLLM will also write compiled kernels to `~/.cache/vllm/torch_compile_cache/` in your HOME. For example:
>
> ```bash
> du -sh ~/.cache/vllm/torch_compile_cache/
> # e.g., 138M /home/kyuz0/.cache/vllm/torch_compile_cache/
> ```
---
## 3) Testing the API
Once the server is up (from section 2), hit the OpenAIcompatible endpoint:
```bash
curl -X POST http://localhost:8000/v1/chat/completions \
-H "Content-Type: application/json" \
-d '{"model":"Qwen/Qwen2.5-7B-Instruct","messages":[{"role":"user","content":"Hello! Test the performance."}]}'
```
You should receive a JSON response with a `choices[0].message.content` reply.
---
## 4) Quickstart — Podman/Docker
Prefer this for persistent services. **Always mount a host directory for weights** so they live outside the container. If the model isn't present, vLLM will fetch it from **Hugging Face** into the mapped directory.
```bash
podman run \
-d \
--name vllm \
--network host \
--device /dev/kfd \
--device /dev/dri \
--group-add video \
--group-add render \
-v ~/vllm-models:/models \
-v ~/.cache/vllm:/root/.cache/vllm \
docker.io/kyuz0/vllm-therock-gfx1151-aotriton:latest \
bash -lc 'source /torch-therock/.venv/bin/activate; \
TORCH_ROCM_AOTRITON_ENABLE_EXPERIMENTAL=1 \
vllm serve Qwen/Qwen2.5-7B-Instruct --dtype float16 \
--host 0.0.0.0 --port 8000 --download-dir /models'
```
> Not using `--network host`? Map a port instead: `-p 8000:8000`.
---
## 5) Models, dtypes & storage
* Start with **Qwen/Qwen2.5-7B-Instruct**; larger models may work but are less forgiving on unified memory.
* Use `--dtype float16` unless you have a reason to change.
* **Storage discipline:**
* **Toolbx:** `--download-dir ~/vllm-models` (lives in your HOME on the host).
* **Podman/Docker:** `-v ~/vllm-models:/models` and `--download-dir /models`.
---
## 6) Performance notes (short)
* The image is built on the PyTorch + **AOTriton** base; enabling `TORCH_ROCM_AOTRITON_ENABLE_EXPERIMENTAL=1` can improve startup/throughput on some models.
* vLLM flags you might tune later: `--gpu-memory-utilization`, `--max-num-seqs`, `--max-model-len`. Start simple; add knobs only if needed.
---
## 7) Requirements (host)
**Hardware & drivers**
* AMD Strix Halo APU (gfx1151).
* Working amdgpu stack with `/dev/kfd` (ROCm compute) and `/dev/dri` (graphics).
* Your user in the **video** and **render** groups.
**Unified memory setup (HIGHLY recommended)**
Enable large GTT/unified memory so the iGPU can borrow system RAM for bigger models:
1. **Kernel parameters** (append to your GRUB cmdline):
```
amd_iommu=off amdgpu.gttsize=131072 ttm.pages_limit=33554432
```
| Parameter | Purpose |
| -------------------------- | ---------------------------- |
| `amd_iommu=off` | Reduces latency |
| `amdgpu.gttsize=131072` | 128 GiB GTT (unified memory) |
| `ttm.pages_limit=33554432` | Large pinned allocations |
2. **BIOS**: allocate **minimal VRAM** to the iGPU (e.g., **512 MB**) and rely on unified memory.
3. **Fedora example** (GRUB): edit `/etc/default/grub` → `GRUB_CMDLINE_LINUX=...` then:
```bash
sudo grub2-mkconfig -o /boot/grub2/grub.cfg
sudo reboot
```
**Container runtime**
* Podman or Docker installed (examples use Podman; replace with Docker if preferred).
---
## 8) Acknowledgements & Links
* Base images & docs: [https://github.com/kyuz0/amd-strix-halo-pytorch-gfx1151-aotriton](https://github.com/kyuz0/amd-strix-halo-pytorch-gfx1151-aotriton)
* Upstreams: [vLLM](https://github.com/vllm-project/vllm), [ROCm/TheRock](https://github.com/ROCm/TheRock), [AOTriton](https://github.com/ROCm/aotriton)
* Community: **AMD Strix Halo Home Lab Discord** — [https://discord.gg/pnPRyucNrG](https://discord.gg/pnPRyucNrG)
* Big thanks to **lhl** and **ssweens** for prior art and inspiration.
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#!/usr/bin/env bash
# vLLM Toolbox banner
gpu_name() {
local name=""
if command -v rocm-smi >/dev/null 2>&1; then
name=$(rocm-smi --showproductname --csv 2>/dev/null | tail -n1 | cut -d, -f2)
[[ -z "$name" ]] && name=$(rocm-smi --showproductname 2>/dev/null | grep -m1 -E 'Product Name|Card series' | sed 's/.*: //')
fi
if [[ -z "$name" ]]; then
name="Unknown AMD GPU"
fi
printf '%s\n' "$name"
}
vllm_version() {
python -c "import vllm; print(vllm.__version__)" 2>/dev/null || echo "unknown"
}
# Simple model selector
vllm_start() {
echo
echo "Select a model to serve:"
echo "1) Qwen2.5-7B-Instruct (recommended, ~14GB VRAM)"
echo "2) Llama-3.1-8B-Instruct (~16GB VRAM)"
echo "3) Qwen3-8B (~16GB VRAM, latest with thinking mode)"
echo
read -p "Choose [1-3]: " choice
case $choice in
1) vllm serve Qwen/Qwen2.5-7B-Instruct --host 0.0.0.0 --port 8000 --download-dir ~/models --dtype float16 --max-model-len 32768 ;;
2) vllm serve meta-llama/Llama-3.1-8B-Instruct --host 0.0.0.0 --port 8000 --download-dir ~/models --dtype float16 --max-model-len 32768 ;;
3) vllm serve Qwen/Qwen3-8B --host 0.0.0.0 --port 8000 --download-dir ~/models --dtype float16 --max-model-len 32768 --enable-reasoning --reasoning-parser qwen3 ;;
*) echo "Invalid choice." ;;
esac
}
GPU="$(gpu_name)"
VLLM_VER="$(vllm_version)"
echo
echo "vLLM Toolbox - AMD STRIX HALO (gfx1151)"
echo "GPU: $GPU"
echo "vLLM: $VLLM_VER"
echo
echo "Commands:"
echo " vllm_start - Start model server"
echo " vllm_test - Test API"
echo " ls ~/models - List downloaded models"
echo
echo "Server will be available at: http://localhost:8000"
echo
# Test alias
alias vllm_test='curl -X POST http://localhost:8000/v1/chat/completions -H "Content-Type: application/json" -d '\''{"model":"auto","messages":[{"role":"user","content":"Hello!"}]}'\'''
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#!/usr/bin/env bash
# Auto-activate vLLM environment for toolbx
# Activate PyTorch + vLLM environment
source /torch-therock/.venv/bin/activate
# ROCm and performance environment variables
export PYTORCH_ROCM_ARCH=gfx1151
export TORCH_ROCM_AOTRITON_ENABLE_EXPERIMENTAL=1
export VLLM_USE_TRITON_FLASH_ATTN=0
export TORCH_COMPILE_DEBUG=1
export VLLM_COMPILE_LEVEL=3
# Detect and export ROCm toolchain paths
eval "$(
python3 - <<'PY'
try:
import pathlib, _rocm_sdk_core as r
base = pathlib.Path(r.__file__).parent / "lib" / "llvm" / "bin"
lib = pathlib.Path(r.__file__).parent / "lib"
print(f'export TRITON_HIP_LLD_PATH="{base / "ld.lld"}"')
print(f'export TRITON_HIP_CLANG_PATH="{base / "clang++"}"')
print(f'export LD_LIBRARY_PATH="{lib}:$LD_LIBRARY_PATH"')
except ImportError:
pass
PY
)" 2>/dev/null || true
# Enable flash attention
export FLASH_ATTENTION_TRITON_AMD_ENABLE=TRUE