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Can RTX 3080 10GB run Phi-4-mini-reasoning?

NVIDIA · 10 GB GDDR6X · 760 GB/s bandwidth · Microsoft · 3.8B · model ctx up to 128K

Yes — the RTX 3080 10GB (10 GB GDDR6X) can run Phi-4-mini-reasoning. At Q4 with the default 8K context it needs ≈ 3.85 GB VRAM (weights 2.09 GB + KV cache 0.76 GB + 1 GB runtime overhead), which fits within 10 GB. Decode at Q4/8K: ≈ 127.3 tok/s (estimated, batch 1). FP16 (≈ 9.36 GB) also fits, at ≈ 35.0 tok/s (estimated). Estimates come from memory-bandwidth math; rows tagged measured override estimates. Relative ranking is more reliable than absolute tok/s. Methodology.

Fit & speed by quant and context

QuantContextVRAM neededFits?tok/s (decode)
Q44K3.47 GBYes127.3 est.
Q48K default3.85 GBYes127.3 est.
Q432K6.13 GBYes127.3 est.
FP164K8.98 GBYes35.0 est.
FP168K default9.36 GBYes35.0 est.
FP1632K11.64 GBNo73.8 est.

Fits = weights + KV(ctx) + 1 GB overhead ≤ 95% of VRAM. Measured anchors are context-agnostic; the fit verdict is recomputed per context. A missing tok/s means the model is far beyond this card (offload-only territory).

VRAM breakdown at 8K context

QuantWeightsKV cacheOverheadTotal neededRTX 3080 10GB VRAM
Q42.09 GB0.76 GB1 GB3.85 GB10 GB
FP167.6 GB0.76 GB1 GB9.36 GB10 GB

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