llama-server -fit off --no-mmap -ngl 999 --cpu-moe --batch-size 4096 --ubatch-size 4096 --tensor-split 0.55,0.45 --parallel 1
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model: "unsloth/NVIDIA-Nemotron-3-Nano-Omni-30B-A3B-Reasoning-GGUF :: NVIDIA-Nemotron-3-Nano-Omni-30B-A3B-Reasoning-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: 131072
batch_size: 4096Official seed run — gotcontext.ai lab rig (RTX 4070 Ada + RTX 5070 Blackwell, layer-split, Ryzen 5800XT, 128GB). Counter-example: tool-call probe FAILED — Nemotron-3 returns no tool_calls field, uses inline XML <tool_call><function=...> format inside system-prompt <tools> declarations (NOT OpenAI tools API). Cold load 189.4s. Hybrid Mamba+Attention+MoE + multimodal + reasoning (text-only here; mmproj NOT included). Math passes. RETIRED 2026-05-28: same Nemotron-3/Mamba+MoE family as nemotron-cascade-2 but slower AND no tool-call format compat.
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