llama-server -fit off -ngl 99 --parallel 1
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model: "unsloth/granite-4.1-30b-GGUF :: granite-4.1-30b-UD-Q4_K_XL.gguf"
quant: "UD-Q4_K_XL"
hardware: "RTX 4070 12GB (Ada sm_89) + RTX 5070 12GB (Blackwell sm_120), layer-split via llama.cpp on Ryzen 5800XT Zen 3, 128 GB DDR4, Docker Desktop WSL2"
context_length: 65536
batch_size: 512Official seed run — gotcontext.ai lab rig (RTX 4070 Ada + RTX 5070 Blackwell, layer-split, Ryzen 5800XT, 128GB). Cold load 95.9s. Base model ibm-granite/granite-4.1-30b, 28.87B params, 'granite' arch (NOT granitehybrid — different from 4.0 H lineup). Trained for tool use per IBM repo README. Diagnosed 2026-05-28: 131K ctx + parallel 2 OOMs KV cache (needed 4.75 GB on CUDA0, only ~3 GB free after model). Granite GQA with hidden_size pushes per-token KV cost high for dense 30B. Fix: 65K ctx + parallel 1 → ~2.4 GB KV, fits. Cannot back claude-CLI FAST profile (no subagent fan-out at parallel 1).
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