Chat & AssistantGoogle · Mar 2025

Gemma 3 27B Hardware Requirements

The 2025 Gemma flagship — exceptionally natural writing tone and vision input on a 24GB card. Gemma 4 31B is the upgrade path, but the 27B's prose style still has fans.

Best-in-class writing toneVision inputFits 24GB at Q4

VRAM needed (Q4, 8k context)

19.5 GB

Cheapest GPU that runs it: RX 7900 XT (~$588 used)

Check Price on Amazon

Updated July 2026. Estimates — see methodology below.

VRAM by Quantization

Weights + KV cache at 8k context + 1.2GB system overhead. Q4_K_M is the community default — quality loss is negligible for most use.

QuantizationWeightsKV cache (8k)Total VRAMCheapest GPU that fits
Q4_K_M

Recommended — near-lossless for most use, half the size of Q8

16.4 GB2.0 GB19.5 GBRX 7900 XT (~$588 used)
Q5_K_M

Slightly higher quality than Q4 for ~18% more VRAM

19.2 GB2.0 GB22.4 GBRX 7900 XTX (~$838 used)
Q8_0

Effectively lossless — use if you have VRAM to spare

28.7 GB2.0 GB31.8 GBRTX 5090 (from $2,800)
FP16

Full precision — only for fine-tuning or maximum fidelity

54.0 GB2.0 GB57.2 GBMulti-GPU / Mac territory

Longer context costs VRAM

KV cache grows linearly with context: 8k → 2.0 GB · 32k → 7.8 GB · 128k → 31.3 GB. If you plan to feed whole documents or codebases, size your GPU for the context you actually need, not just the weights.

Best GPUs for Gemma 3 27B

Best Value

AMD Radeon RX 7900 XT

20GB · ~$588 used · ~24 tok/s

AMD Radeon RX 7900 XT

The cheapest way to run Gemma 3 27B well. Expect comfortable responses at ~24 tokens/sec.

Best Performance

NVIDIA GeForce RTX 5090

32GB · $2,800–3,600 street · ~55 tok/s

NVIDIA GeForce RTX 5090

The fastest single-GPU experience for Gemma 3 27B. Expect fast responses at ~55 tokens/sec.

GPU Compatibility (Q4, 8k context)

Every GPU in our database, scored against Gemma 3 27B. Speed is estimated decode rate — memory-bandwidth-bound, so VRAM and bandwidth matter more than shader count.

GPUVRAMVerdictEst. speedPrice
RX 7900 XTX24 GBRuns great~29 tok/sFast~$838 usedCheck price
RTX 309024 GBRuns great~29 tok/sFast~$1,150 usedCheck price
RTX 409024 GBRuns great~31 tok/sFast~$2,375 usedCheck price
RTX 509032 GBRuns great~55 tok/sFastfrom $2,800Check price
RX 7900 XT20 GBTight fit~24 tok/sComfortable~$588 usedCheck price
RTX 306012 GBPartial offload~$238 used
Arc B57010 GBPartial offloadfrom $225
Arc B58012 GBPartial offloadfrom $250
RX 6700 XT12 GBPartial offload~$315 used
Arc A77016 GBPartial offloadfrom $300
RX 7700 XT12 GBPartial offload~$415 used
RX 6800 XT16 GBPartial offload~$438 used
RTX 308010 GBPartial offload~$463 used
RX 7800 XT16 GBPartial offload~$488 used
RTX 407012 GBPartial offload~$500 used
RTX 4070 SUPER12 GBPartial offload~$563 used
RTX 5060 Ti16 GBPartial offloadfrom $550
RX 907016 GBPartial offloadfrom $575
RTX 507012 GBPartial offloadfrom $600
RX 9070 XT16 GBPartial offloadfrom $600
RTX 4070 Ti SUPER16 GBPartial offload~$750 used
RTX 4080 SUPER16 GBPartial offload~$900 used
RTX 5070 Ti16 GBPartial offloadfrom $900
RTX 508016 GBPartial offloadfrom $1,250
RTX 40608 GBNot enough VRAM~$275 used
RX 76008 GBNot enough VRAMfrom $250
RTX 4060 Ti8 GBNot enough VRAM~$338 used
RTX 30708 GBNot enough VRAM~$338 used
RTX 50608 GBNot enough VRAMfrom $325

Run it in one command

With Ollama installed, this pulls the default quant and starts chatting:

$ ollama run gemma3:27b

Frequently Asked Questions

How much VRAM do I need to run Gemma 3 27B?+

At the recommended Q4_K_M quantization with 8k context, Gemma 3 27B needs roughly 19.5GB of VRAM (16.4GB weights + KV cache + overhead). Q8 needs about 31.8GB and full FP16 about 57.2GB.

What is the cheapest GPU that runs Gemma 3 27B?+

AMD Radeon RX 7900 XT (20GB, ~$588 used) is the cheapest current GPU in our database that runs Gemma 3 27B fully in VRAM at an estimated ~24 tokens/sec.

Can I run Gemma 3 27B on an RTX 3060?+

Only partially — the RTX 3060 12GB can offload some layers to system RAM, but expect a large speed penalty.

Can I run Gemma 3 27B on a Mac?+

Yes, if the Mac has enough unified memory: budget roughly 19.5GB of RAM for the Q4 version (plus what macOS itself uses). Apple Silicon runs GGUF models well via Ollama or LM Studio.

Can I run Gemma 3 27B on CPU only?+

Technically yes with enough system RAM, but a dense 27B model on CPU is slow — usually a few tokens/sec at best. Fine for testing, painful for daily use.

Is Gemma 3 27B free for commercial use?+

Yes. Gemma 3 27B is released under the Gemma Terms of Use, which permits commercial use.

Related Models

How we calculate these numbers

VRAM = model weights (parameters × bits per weight ÷ 8) + KV cache (architecture-specific bytes per token × context length) + ~1.2GB runtime overhead. Speed estimates assume decode is memory-bandwidth-bound at ~50% utilization (lower for MoE models, which pay routing overhead), matching typical llama.cpp performance on consumer cards; real results vary with runtime, drivers, and settings. Quant sizes reflect GGUF K-quants, which keep some layers at higher precision. Figures are estimates for planning, not guarantees — when in doubt, buy more VRAM than you need today. Prices shown are launch MSRP; mid-2026 street prices often run well above MSRP due to the ongoing memory shortage, and used 24GB cards are holding their value unusually well.