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UnverifiedRTX 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 WSL2CUDA

unsloth/gemma-4-31B-it-GGUF :: gemma-4-31B-it-Q3_K_M.gguf Q3_K_M @ 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

https://gotcontext.ai/benchmarks/runs/-9D1LjWgYoU
Decode
17.5tok/s
PP speed (tok/s)
Peak VRAM
21.2GB
Context
59ktokens
Batch
512parallel
Top 56% for this config16 runs
Flash Attn

Raw benchmark output

llama-server -ngl 60 --parallel 2 --chat-template-kwargs '{"enable_thinking":false}'

Not enough data yet to compare this combination. Submit more runs for this hardware + model to see a comparison.

Build diagnostics

Your build is within the typical range for this hardware. No obvious configuration issues detected.

Reproducibility recipe

Copy this to repeat or submit a similar build:

model: "unsloth/gemma-4-31B-it-GGUF :: gemma-4-31B-it-Q3_K_M.gguf"
quant: "Q3_K_M"
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: 60000
batch_size: 512

Notes from submitter

Official seed run — gotcontext.ai lab rig (RTX 4070 Ada + RTX 5070 Blackwell, layer-split, Ryzen 5800XT, 128GB). Measured range 17-18 tok/s; reported value is the midpoint. Counter-example: dense 31B at HALF the speed of MoE 26B-A4B on same hardware/same VRAM — documents the dense-vs-MoE performance gap. Cold load 2m, prefill 310 tok/s, VRAM 11.6 + 10.1 = 21.7 GB (similar to 26B-A4B). RETIRED 2026-05-28: documented too slow for agents. Dense-vs-MoE quality difference may justify for one-shot reasoning but not interactive agent loops. Per-slot ctx 30K at parallel 2 = sub-claude-CLI threshold. Thinking mode disabled via --chat-template-kwargs (165 chars of reasoning leak otherwise).

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