Containerized local LLM stack for the Framework Desktop / Strix Halo,
plus the OpenCode harness on the Mac side.
- pyinfra/framework/: pyinfra deploy targeting the box
- llama.cpp (Vulkan), vLLM (ROCm), Ollama (ROCm with HSA override
for gfx1151), OpenWebUI
- Beszel (host + container + AMD GPU dashboard via sysfs)
- OpenLIT (LLM fleet metrics)
- Phoenix (per-trace agent waterfall)
- OpenHands (autonomous agent in a Docker sandbox)
- opencode/: OpenCode config + Phoenix bridge plugin (OTel exporter)
- install.sh deploys to ~/.config/opencode/
- StrixHaloSetup.md / StrixHaloMemory.md / Roadmap.md / TODO.md:
documentation and planning
- testing/qwen3-coder-30b/: small evaluation harness
Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
45 lines
1.9 KiB
Markdown
45 lines
1.9 KiB
Markdown
# TODO
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## ROCm / vLLM on Strix Halo (gfx1151)
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The Framework Desktop runs **Ubuntu 26.04 LTS**; AMD only ships ROCm
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7.2.3 packages for jammy (22.04) and noble (24.04). We installed the
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noble repo but pulled only `rocminfo` + `rocm-smi-lib` for host-side
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diagnostics — all heavy ROCm work runs in containers, which ship their
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own ROCm stack. This sidesteps the host-side libxml2 ABI mismatch (noble
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ships `libxml2.so.2`, 26.04 ships `libxml2.so.16`) that broke the native
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HIP toolchain.
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### Open questions
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- **Does `rocm/vllm:latest` actually run on Strix Halo's iGPU?** vLLM's
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AMD support officially targets datacenter cards (MI300X / gfx942).
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gfx1151 (RDNA 3.5 consumer) is a different ISA. If the stock image
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doesn't initialize the device, try `rocm/vllm-dev:nightly` or build
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from source against ROCm 7.x with `-DAMDGPU_TARGETS=gfx1151`.
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- **AMD support for 26.04** — watch https://repo.radeon.com/amdgpu-install/<latest>/ubuntu/
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for a directory matching the box's codename. AMD historically lags
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Ubuntu LTS by 6–12 months for ROCm packaging.
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### When 26.04 ROCm packages land
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If you ever want to do native ROCm work on the host (rather than via
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containers):
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1. Bump `ROCM_VERSION` and `AMDGPU_INSTALL_DEB` in `pyinfra/deploy.py`
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to the new release.
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2. Update the apt source URL path in `deploy.py` if AMD adds a new
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release codename (currently hardcoded to `noble`).
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3. Add a step that runs `amdgpu-install -y --usecase=rocm --no-dkms`
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(the current deploy explicitly avoids this to stay slim).
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4. `./run.sh`.
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For container-only workflows (current default), no action is needed —
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container images update independently of the host.
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## Pick a coding model (StrixHaloSetup Phase 6)
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Open question — research current Strix Halo benchmarks before
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committing. Candidates: Qwen3-Coder, DeepSeek-Coder-V3.x, GLM-4.6,
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Devstral, Kimi-K2. Track Kimi Linear separately via the weekly routine
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referenced in `StrixHaloSetup.md`.
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