Skip to content
llm-speed
wrapped·Jul 02, 2026
/r/r_mv8n8k9wu1e
your run

qwen2.5-coder

161
tok/sdecode
RTX 4090 (48GB) + AMD EPYC 7763 64-Core Processor (128c) + 1008GB
rank in tier
1/3RTX 4090 runs
best workload
concurrent-decode
where the rig flew
slowest workload
chat-long155 tok/s
where the rig struggled
backend
ollamaollama is llama.cpp under the hood; pure llama.cpp tends to nudge a few % faster.
faster than
  • gemma-2-9b-it on RTX 5090153 tok/s
  • gpt-oss-20b-MXFP4-Q4 on M3 Ultra153 tok/s
  • phi-4 on RTX 5090141 tok/s

This is a shareable view of one signed llm-speed suite-suite-v1 run. Numbers are not edited. The raw record has every workload, the public key, and the fingerprint hash.