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Cost & Pricing

Phi-3 on RTX 5080: Monthly Cost & Token Output

How much does it cost to run Phi-3 on an RTX 5080 per month? Full cost breakdown, token throughput, and API price comparison for dedicated GPU hosting.

Phi-3 on RTX 5080: Monthly Cost & Token Output

Dedicated RTX 5080 hosting for Phi-3 (3.8B) inference — fixed monthly pricing with unlimited tokens.

Monthly Cost Summary

175 tokens per second. At that speed, a typical 300-token chatbot response appears in under two seconds. The RTX 5080 pushes Phi-3 to its limits, delivering 453 million tokens monthly at an effective rate of just £0.24 per million. For a model this small, the throughput-to-cost ratio is remarkable.

MetricValue
GPURTX 5080 (16 GB VRAM)
ModelPhi-3 (3.8B parameters)
Monthly Server Cost£109/mo
Tokens/Second~175.0 tok/s
Tokens/Day (24h)~15,120,000
Tokens/Month~453,600,000
Effective Cost per 1M Tokens£0.2403

Extreme Throughput for a Compact Model

Phi-3’s efficiency shines brightest on latest-generation hardware. Here is how the economics compare to metered API services:

ProviderCost per 1M TokensGigaGPU Savings
GigaGPU (RTX 5080)£0.2403
Together.ai$0.10Comparable
Fireworks$0.20Comparable
Azure OpenAI$0.268% cheaper

Break-Even Analysis

Against Together.ai at $0.10/1M tokens, break-even arrives at approximately 1,090M tokens/month. While that exceeds single-stream capacity, the 5080’s 12 GB of free VRAM supports deep concurrent batching that can push practical throughput considerably higher under production load.

Hardware & Configuration Notes

Phi-3 uses just 4 GB of the 5080’s 16 GB VRAM. The 12 GB of headroom supports massive concurrent serving or multi-model deployments.

  • VRAM usage: Phi-3 requires approximately 4 GB VRAM. The RTX 5080 provides 16 GB, leaving 12 GB headroom for KV cache and batching.
  • Quantisation: Running in FP16 by default. INT8 or INT4 quantisation can reduce VRAM usage and increase throughput by 20–40% with minimal quality loss for most use cases.
  • Batching: With continuous batching enabled (e.g., vLLM or TGI), you can serve multiple concurrent users from a single GPU, increasing effective throughput significantly.
  • Scaling: Need more throughput? Add additional RTX 5080 nodes behind a load balancer. GigaGPU supports multi-server deployments with simple configuration.

Best Use Cases for Phi-3 on RTX 5080

  • Ultra-low-latency conversational interfaces
  • Real-time content suggestion and auto-completion
  • High-frequency API backends for lightweight LLM tasks
  • Embedded AI features in SaaS products
  • Parallel processing of thousands of short-form queries

175 tok/s Phi-3 — £109/Month

Deploy on a dedicated RTX 5080 for the fastest compact-model inference available.

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