All 5 Phase 2 items done: crash detection, port retry, graceful shutdown verification, VRAM monitoring, concurrent requests. Concurrency findings documented. Co-Authored-By: Virgil <virgil@lethean.io>
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5.2 KiB
TODO.md — go-rocm Task Queue
Dispatched from core/go orchestration. Pick up tasks in order.
Phase 0: Environment Setup (on Linux homelab)
- Install ROCm 6.x — ROCm 7.2.0 already installed.
rocm-smishows RX 7800 XT (gfx1100). Kernel 6.17.0. (Charon, 19 Feb 2026) - Build llama-server with HIP — Built from llama.cpp
11c325c. Installed to/usr/local/bin/llama-server. (Charon, 19 Feb 2026) - Test manual inference — Gemma3-4B-Q4_K_M: 109 tok/s decode, 396 tok/s prefill. See FINDINGS.md for full results. (Charon, 19 Feb 2026)
- HSA_OVERRIDE_GFX_VERSION benchmark — N/A: GPU is actually gfx1100 (not gfx1101 as Virgil noted). No override needed. (Charon, 19 Feb 2026)
Critical Discovery: iGPU Crash
The Ryzen 9 9950X iGPU shows up as ROCm Device 1, reports 100GB free (system RAM), and crashes llama-server when it tries to split tensors across devices. HIP_VISIBLE_DEVICES=0 is REQUIRED when spawning llama-server. See FINDINGS.md for details.
Phase 1: Core Implementation
- GPU detection —
Available()checks/dev/kfd+findLlamaServer(). Commit1d8d65f. (19 Feb 2026) - Server lifecycle —
server.go: spawn, health poll (100ms/60s timeout), SIGTERM/SIGKILL shutdown.serverEnv()filters HIP_VISIBLE_DEVICES. Commit9aa7f62. (19 Feb 2026) - HTTP client —
internal/llamacpp/: health check, SSE parser, ChatComplete + Complete withiter.Seq[string]. Commits3c75677,def3167. (19 Feb 2026) - TextModel implementation —
model.go: wraps llamacpp client, maps inference types, mutex-protected Err(). Commita8c4947. (19 Feb 2026) - Integration test — 3 tests (Generate, Chat, ContextCancellation) with Gemma3-1B on RX 7800 XT. All pass. Commit
0e68d71. (19 Feb 2026)
Phase 2: Robustness
- Server crash recovery —
server.alive()detects process exit; Generate/Chat return error immediately if dead. Commits2c4966e,c07f37a. (Charon, 19 Feb 2026) - Port conflict handling —
startServer()retries up to 3 times with new port on process exit. Only retries on exit, not timeout. Commitsc50a8e9,b7342ec. (Charon, 19 Feb 2026) - Graceful shutdown — Already worked in Phase 1. Integration test confirms server survives context cancellation and generates again. Commit
a6e647c. (Charon, 19 Feb 2026) - Memory monitoring —
GetVRAMInfo()reads sysfs, auto-detects dGPU by largest VRAM. Uint64 underflow guard on Free. Commits501de83,954c570. (Charon, 19 Feb 2026) - Concurrent requests — 3 goroutines calling Generate() simultaneously all get output. llama-server serialises via 1 slot (default). Commit
a6e647c. (Charon, 19 Feb 2026)
Phase 3: Model Support
- GGUF model discovery — Implement model path scanning: find .gguf files, parse metadata (model name, params, quant level, size). Return structured inventory.
- Chat templates — llama-server handles chat templates natively via
--chat-template. Verify Gemma3, Qwen3, Llama3 templates work. If not, add template formatting in model.go. - Context window sizing — Auto-detect optimal context window from model metadata. Default to 4096 if unknown.
Phase 4: Performance
- Benchmark suite — Measure: tokens/sec (prefill + decode), time-to-first-token, VRAM usage, for Qwen3-8B-Q4, Gemma3-4B, Llama3-8B on the RX 7800 XT. Compare with mlx on M3 Ultra.
- Flash attention — Verify
-DGGML_HIP_ROCWMMA_FATTN=ONgives real speedup on gfx1100. Benchmark with and without. - Batch inference — llama-server supports multiple slots for concurrent inference. Test parallel prompts for go-i18n's batch classification use case.
Phase 5: Alternative Backends
- Direct HIP/CGO — Evaluate whether direct HIP CGO bindings (like go-mlx does for Metal) would be worth the effort. Only if llama-server subprocess becomes a bottleneck.
- vLLM backend — vLLM supports ROCm and has better batching. Could be an alternative subprocess backend for high-throughput scenarios.
Model Inventory (on Linux homelab)
Download to /data/models/ (or wherever the homelab stores data):
- Qwen3-8B-Q4_K_M.gguf (~5GB, fits 16GB VRAM with room for context)
- Gemma3-4B-Q4_K_M.gguf (~3GB)
- Llama-3.1-8B-Q4_K_M.gguf (~5GB)
Environment Variables
| Variable | Default | Purpose |
|---|---|---|
ROCM_LLAMA_SERVER_PATH |
llama-server (PATH lookup) |
Path to llama-server binary |
HIP_VISIBLE_DEVICES |
0 (MUST set) |
Mask iGPU — Ryzen 9 iGPU crashes llama-server |
HSA_OVERRIDE_GFX_VERSION |
unset | Not needed (GPU is native gfx1100) |
ROCM_MODEL_DIR |
none | Default directory for model discovery |
Upstream Dependencies
- go-inference defines the TextModel/Backend interfaces this package implements
- go-ml will wrap this backend (Virgil creates backend_rocm.go when the API is ready)
- go-i18n may use this for batch classification on Linux (Phase 4)
Workflow
- Virgil in core/go writes tasks here after research
- This repo's session (on Linux homelab) picks up tasks in phase order
- Mark
[x]when done, note commit hash - New discoveries → add tasks, flag in FINDINGS.md