V100 vs RTX 4080 Super Pro - GPU Benchmark Comparison

Direct performance comparison between the V100 and RTX 4080 Super Pro across 45 standardized AI benchmarks collected from our production fleet. Testing shows the V100 winning 3 out of 45 benchmarks (7% win rate), while the RTX 4080 Super Pro wins 42 tests. All benchmark results are automatically gathered from active rental servers, providing real-world performance data.

vLLM High-Throughput Inference: V100 27% slower

For production API servers and multi-agent AI systems running multiple concurrent requests, the V100 is 27% slower than the RTX 4080 Super Pro (median across 3 benchmarks). For Qwen/Qwen3-4B, the V100 reaches 401 tokens/s while RTX 4080 Super Pro achieves 549 tokens/s (27% slower). The V100 wins none out of 3 high-throughput tests, making the RTX 4080 Super Pro better suited for production API workloads.

Ollama Single-User Inference: V100 12% slower

For personal AI assistants and local development with one request at a time, the V100 is 12% slower than the RTX 4080 Super Pro (median across 12 benchmarks). Running gpt-oss:20b, the V100 generates 113 tokens/s while RTX 4080 Super Pro achieves 141 tokens/s (20% slower). The V100 wins 2 out of 12 single-user tests, making the RTX 4080 Super Pro the better choice for local AI development.

Image Generation: V100 41% slower

For Stable Diffusion, SDXL, and Flux workloads, the V100 is 41% slower than the RTX 4080 Super Pro (median across 22 benchmarks). Testing sd3.5-large, the V100 completes at 0.50 images/min while RTX 4080 Super Pro achieves 2.5 images/min (80% slower). The V100 wins none out of 22 image generation tests, making the RTX 4080 Super Pro the better choice for Stable Diffusion workloads.

Vision AI: V100 32% lower throughput

For high-concurrency vision workloads (16-64 parallel requests), the V100 delivers 32% lower throughput than the RTX 4080 Super Pro (median across 4 benchmarks). Testing llava-1.5-7b, the V100 processes 53 images/min while RTX 4080 Super Pro achieves 175 images/min (70% slower). The V100 wins none out of 4 vision tests, making the RTX 4080 Super Pro the better choice for high-throughput vision AI workloads.

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About These Benchmarks of V100 vs RTX 4080 Super Pro

Our benchmarks are collected automatically from servers having GPUs of type V100 and RTX 4080 Super Pro in our fleet. Unlike synthetic lab tests, these results come from real production servers handling actual AI workloads - giving you transparent, real-world performance data.

LLM Inference Benchmarks

We test both vLLM (High-Throughput) and Ollama (Single-User) frameworks. vLLM benchmarks show how V100 and RTX 4080 Super Pro perform with 16-64 concurrent requests - perfect for production chatbots, multi-agent AI systems, and API servers. Ollama benchmarks measure single-request speed for personal AI assistants and local development. Models tested include Llama 3.1, Qwen3, DeepSeek-R1, and more.

Image Generation Benchmarks

Image generation benchmarks cover Flux, SDXL, and SD3.5 architectures. That's critical for AI art generation, design prototyping, and creative applications. Focus on single prompt generation speed to understand how V100 and RTX 4080 Super Pro handle your image workloads.

Vision AI Benchmarks

Vision benchmarks test multimodal and document processing with high concurrent load (16-64 parallel requests) using real-world test data. LLaVA 1.5 7B (7B parameter Vision-Language Model) analyzes a photograph of an elderly woman in a flower field with a golden retriever, testing scene understanding and visual reasoning at batch size 32 to report images per minute. TrOCR-base (334M parameter OCR model) processes 2,750 pages of Shakespeare's Hamlet scanned from historical books with period typography at batch size 16, measuring pages per minute for document digitization. See how V100 and RTX 4080 Super Pro handle production-scale visual AI workloads - critical for content moderation, document processing, and automated image analysis.

System Performance

We also include CPU compute power (affecting tokenization and preprocessing) and NVMe storage speeds (critical for loading large models and datasets) - the complete picture for your AI workloads.

TAIFlops Score

The TAIFlops (Trooper AI FLOPS) score shown in the first row combines all AI benchmark results into a single number. Using the RTX 3090 as baseline (100 TAIFlops), this score instantly tells you how V100 and RTX 4080 Super Pro compare overall for AI workloads. Learn more about TAIFlops β†’

Note: Results may vary based on system load and configuration. These benchmarks represent median values from multiple test runs.

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