← AI Hashrate

Can RTX 3090 Ti 24GB run DeepSeek-R1-0528-Qwen3-8B?

NVIDIA · 24 GB GDDR6X · 1008 GB/s bandwidth · DeepSeek · 8.2B · model ctx up to 128K

Yes — the RTX 3090 Ti 24GB (24 GB GDDR6X) can run DeepSeek-R1-0528-Qwen3-8B. At Q4 with the default 8K context it needs ≈ 7.15 GB VRAM (weights 4.51 GB + KV cache 1.64 GB + 1 GB runtime overhead), which fits within 24 GB. Decode at Q4/8K: ≈ 78.2 tok/s (estimated, batch 1). FP16 (≈ 19.04 GB) also fits, at ≈ 21.5 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)
Q44K6.33 GBYes78.2 est.
Q48K default7.15 GBYes78.2 est.
Q432K12.07 GBYes78.2 est.
FP164K18.22 GBYes21.5 est.
FP168K default19.04 GBYes21.5 est.
FP1632K23.96 GBNo61.7 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 3090 Ti 24GB VRAM
Q44.51 GB1.64 GB1 GB7.15 GB24 GB
FP1616.4 GB1.64 GB1 GB19.04 GB24 GB

Other GPUs that run DeepSeek-R1-0528-Qwen3-8B

All GPUs for DeepSeek-R1-0528-Qwen3-8B →

Other models for the RTX 3090 Ti 24GB

All models on the RTX 3090 Ti 24GB →