RTX 3050 - Order Now
Home / Blog / Benchmarks / Mistral 7B on RTX 4060: Performance Benchmark & Cost, Category: Benchmarks, Slug: mistral-7b-on-rtx-4060-benchmark, Excerpt: Mistral 7B benchmarked on RTX 4060: 22.0 tok/s at 4-bit GGUF Q4_K_M, VRAM usage, cost per 1M tokens, and deployment configuration., Internal links: 9 –>
Benchmarks

Mistral 7B on RTX 4060: Performance Benchmark & Cost, Category: Benchmarks, Slug: mistral-7b-on-rtx-4060-benchmark, Excerpt: Mistral 7B benchmarked on RTX 4060: 22.0 tok/s at 4-bit GGUF Q4_K_M, VRAM usage, cost per 1M tokens, and deployment configuration., Internal links: 9 –>

Mistral 7B benchmarked on RTX 4060: 22.0 tok/s at 4-bit GGUF Q4_K_M, VRAM usage, cost per 1M tokens, and deployment configuration.

Discontinued: GigaGPU no longer hosts the RTX 4060. For our current generation equivalent, see RTX 5060 hosting. The content below reflects historical 4060-series benchmarks and pricing.

Mistral 7B has become something of a default choice for teams building their first self-hosted LLM application. It is well-documented, widely supported, and consistently delivers solid output quality across general tasks. Pair it with the RTX 4060 and you get a combination that just works — 22 tokens per second, predictable memory usage, and a monthly cost that will not raise eyebrows in any budget review. We put it through its paces on GigaGPU dedicated servers.

Steady and Reliable Throughput

MetricValue
Tokens/sec (single stream)22.0 tok/s
Tokens/sec (batched, bs=8)28.6 tok/s
Per-token latency45.5 ms
PrecisionINT4
Quantisation4-bit GGUF Q4_K_M
Max context length4K
Performance ratingGood

Benchmark conditions: single-stream generation, 512-token prompt, 256-token completion, llama.cpp or vLLM backend. GGUF Q4_K_M via llama.cpp or vLLM FP16.

At 22 tok/s, responses arrive at a comfortable reading pace. Mistral’s grouped-query attention architecture helps it maintain consistent throughput even as prompt lengths vary — something that is not always true for other 7B models. The batched performance of 28.6 tok/s makes it practical for small teams sharing a single GPU.

A Clean Memory Fit

ComponentVRAM
Model weights (4-bit GGUF Q4_K_M)5.0 GB
KV cache + runtime~0.8 GB
Total RTX 4060 VRAM8 GB
Free headroom~3.0 GB

The 4060’s 8 GB frame buffer gives Mistral 7B 3 GB of breathing room at 4-bit quantisation. That headroom means you can extend the context window slightly, run a lightweight inference server alongside the model, or simply enjoy the stability that comes from not operating at the memory ceiling. It is a meaningfully better experience than the RTX 3050 where every megabyte counts.

Predictable Costs

Cost MetricValue
Server cost£0.35/hr (£69/mo)
Cost per 1M tokens£4.419
Tokens per £1226296
Break-even vs API~1 req/day

£69 per month for a dedicated Mistral 7B server that you control end-to-end. At £4.42 per million tokens single-stream, you are paying roughly a quarter of what most hosted APIs charge. Batching pushes the effective cost down to about £2.76 per million tokens. For teams processing any meaningful volume, the economics are overwhelmingly in favour of self-hosting. Review the numbers on our benchmark comparison and cost calculator.

The Sensible Default

Not every GPU choice needs to be exciting. The RTX 4060 running Mistral 7B is the sensible, reliable option — good enough for development, testing, and light production. It will not win any speed records, but it will run without drama at a price that makes self-hosting a no-brainer for teams already committed to Mistral.

Quick deploy:

docker run --gpus all -p 8080:8080 ghcr.io/ggerganov/llama.cpp:server -m /models/mistral-7b.Q4_K_M.gguf --host 0.0.0.0 --port 8080 -ngl 99

See our Mistral hosting guide and GPU comparison for Mistral. Compare against LLaMA 3 8B on RTX 4060, or browse all benchmarks.

Mistral 7B at £69/mo

The reliable workhorse. RTX 4060, 8GB VRAM, UK datacenter, full root access.

Order Now

Need a Dedicated GPU Server?

Deploy from RTX 3050 to RTX 5090. Full root access, NVMe storage, 1Gbps — UK datacenter.

Browse GPU Servers

gigagpu

We benchmark, deploy, and optimise GPU infrastructure for AI workloads. All data in our guides comes from real-world testing on our UK-based dedicated GPU servers.

Ready to deploy your AI workload?

Dedicated GPU servers from our UK datacenter. NVMe storage, 1Gbps networking, full root access.

Browse GPU Servers Contact Sales

Have a question? Need help?