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Cost & Pricing

Mixtral 8x7B on RTX 5090: Monthly Cost & Token Output

How much does it cost to run Mixtral 8x7B on an RTX 5090 per month? Full cost breakdown, token throughput, and API price comparison for dedicated GPU hosting.

Mixtral 8x7B on RTX 5090: Monthly Cost & Token Output

Dedicated RTX 5090 hosting for Mixtral 8x7B (46.7B) inference — fixed monthly pricing with unlimited tokens.

Monthly Cost Summary

Mixtral 8x7B’s mixture-of-experts architecture delivers GPT-3.5-class quality in an open-source package. The RTX 5090 is the only single consumer GPU with enough VRAM to run the full 46.7B parameter model in FP16. At £179/month, you get 190 million tokens of monthly capacity with zero vendor lock-in.

MetricValue
GPURTX 5090 (32 GB VRAM)
ModelMixtral 8x7B (46.7B parameters)
Monthly Server Cost£179/mo
Tokens/Second~73.5 tok/s
Tokens/Day (24h)~6,350,400
Tokens/Month~190,512,000
Effective Cost per 1M Tokens£0.9396

Open-Source Quality, Dedicated Hardware Pricing

Mixtral 8x7B through API providers can get expensive at scale. Here is where self-hosted hardware stands:

ProviderCost per 1M TokensGigaGPU Savings
GigaGPU (RTX 5090)£0.9396
Together.ai$0.60Comparable
Fireworks$0.50Comparable
Groq$0.24Comparable

Break-Even Analysis

Compared to Groq at $0.24/1M tokens, break-even arrives at approximately 745.8M tokens/month. Mixtral’s MoE architecture is efficient at inference time — only ~13B parameters activate per forward pass — making the 73.5 tok/s throughput strong for a model of this quality class.

Hardware & Configuration Notes

Mixtral 8x7B requires ~26 GB VRAM, leaving 6 GB free on the 5090’s 32 GB. That is tight but workable for moderate batching. INT4 quantisation can free significant additional VRAM.

  • VRAM usage: Mixtral 8x7B requires approximately 26 GB VRAM. The RTX 5090 provides 32 GB, leaving 6 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 5090 nodes behind a load balancer. GigaGPU supports multi-server deployments with simple configuration.

Best Use Cases for Mixtral 8x7B on RTX 5090

  • Production chatbots requiring GPT-3.5-class quality without API dependency
  • Complex reasoning and multi-step task completion
  • Enterprise document analysis and question answering
  • Code generation with strong instruction-following
  • High-quality content generation at scale

GPT-3.5-Class Quality, £399/Month

Run Mixtral 8x7B on a dedicated RTX 5090. No per-token charges, no vendor lock-in, full model control.

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