L
localai.computer
ModelsGPUsSystemsAI SetupsBuildsOpenClawMethodology

Resources

  • Methodology
  • Submit Benchmark
  • About

Browse

  • AI Models
  • GPUs
  • PC Builds

Guides

  • OpenClaw Guide
  • How-To Guides

Legal

  • Privacy
  • Terms
  • Contact

© 2025 localai.computer. Hardware recommendations for running AI models locally.

ℹ️We earn from qualifying purchases through affiliate links at no extra cost to you. This supports our free content and research.

Can NVIDIA A100 80GB SXM4 run google/embeddinggemma-300m?

Runs Q480GB VRAM availableRequires 1GB+

NVIDIA A100 80GB SXM4 meets the minimum VRAM requirement for Q4 inference of google/embeddinggemma-300m. Review the quantization breakdown below to see how higher precision settings impact VRAM and throughput.

What this means for you

NVIDIA A100 80GB SXM4 can run google/embeddinggemma-300m with Q4 quantization. At approximately 353 tokens/second, you can expect Excellent speed - conversational response times under 1 second.

You have 79GB headroom, which is sufficient for system overhead and smooth operation.

Quantization breakdown

QuantizationVRAM neededVRAM availableEstimated speedVerdict
Q41GB80GB353.21 tok/s✅ Fits comfortably
Q81GB80GB221.11 tok/s✅ Fits comfortably
FP161GB80GB136.69 tok/s✅ Fits comfortably

Suitable alternatives

AMD Instinct MI300X
192GB
970.37 tok/s
Price: —
NVIDIA H200 SXM 141GB
141GB
849.23 tok/s
Price: —
AMD Instinct MI250X
128GB
605.34 tok/s
Price: —
NVIDIA H200 SXM 141GB
141GB
597.05 tok/s
Price: —
AMD Instinct MI300X
192GB
587.69 tok/s
Price: —

More questions

NVIDIA A100 80GB SXM4 specs & pricingFull guide for google/embeddinggemma-300mgoogle/embeddinggemma-300m speed on NVIDIA A100 80GB SXM4google/embeddinggemma-300m Q4 requirements