Data Center NVIDIA

NVIDIA V100 16GB

Volta Architecture · 16GB HBM2 · PCIe

VRAM
16GB
FP16
125.0
TDP
300W
Hardware Price
-
MSRP: $6.0k
Cloud from
-
0 providers

Quick Insights

Performance/Dollar
N/A
FP16 performance per $1000
VRAM/Dollar
N/A
VRAM per $1000
vs Data Center Average
-30% perf
FP16 TFLOPS comparison
Cloud Availability
Not available
Check providers

Specifications

VRAM 16GB HBM2
Memory Bandwidth 900 GB/s
FP16 TFLOPS 125.0
Tensor TFLOPS 125.0
FP32 TFLOPS 15.7
TDP 300W
Form Factor -
Architecture Volta
NVLink No
Release Date 2017-06-21

Cloud GPU Pricing

No cloud pricing data available for NVIDIA V100 16GB yet.

Browse All Providers →

NVIDIA V100 16GB vs Alternatives

Compare NVIDIA V100 16GB with similar GPUs from other brands.

GPU VRAM FP16 TFLOPS Bandwidth Hardware Price Cloud Price
NVIDIA V100 16GB Current 16GB 125.0 900 GB/s - - -
AMD Radeon RX 7900 XT AMD 20GB (+25%) 104.0 (-17%) 800 GB/s - - Compare
AMD Radeon RX 7900 XTX AMD 24GB (+50%) 122.0 (-2%) 960 GB/s - - Compare
AMD Instinct MI100 AMD 32GB (+100%) 184.6 (+48%) 1.2 TB/s - - Compare

Best Use Cases

No specific use case recommendations for NVIDIA V100 16GB yet.

Browse All Use Cases →

Compare NVIDIA V100 16GB

Other NVIDIA GPUs

Frequently Asked Questions about NVIDIA V100 16GB

Pricing for NVIDIA V100 16GB varies. Check our cloud pricing section for rental options starting at various rates.

Yes, the NVIDIA V100 16GB with 16GB VRAM is suitable for many AI/ML workloads. For large language models, you may need multiple GPUs or consider higher-VRAM options like A100 or H100.

Consider buying for long-term, heavy usage (>4 hrs/day). Rent from cloud providers for short-term projects, experimentation, or when you need to scale quickly.

With 16GB VRAM and 125.0 FP16 TFLOPS, the NVIDIA V100 16GB can run: Stable Diffusion, smaller LLMs (7B quantized), deep learning training, and gaming at high settings.

The NVIDIA V100 16GB offers 16GB VRAM and 125.0 FP16 performance at its price point. Compare with similar GPUs using our comparison tool above. Key factors: VRAM for model size, TFLOPS for speed, and price for budget.