Microsoft Q4_K_M 14B Parameters

VRAM Requirements for
Phi-4 14B Q4_K_M

To run Phi-4 14B locally at Q4_K_M quantization, you need at minimum 11 GB of GPU VRAM.

11 GB
Required VRAM
8.49 GB
File Size
16K tokens
Context Window
14B
Parameters
Estimated VRAM Required
11
GB
Mid-Range GPU Required
0 16GB
RTX 3080
48GB
A6000
80GB+

Recommended GPU Configurations

⚠️ 1.0 GB short
Budget $350 – $500

RTX 3080 (10GB)

10 GB

Used market gem. Tight on VRAM but viable for this workload.

Balanced $699 – $799

RTX 4070 Ti (12GB)

12 GB

Strong inference GPU. Handles 7-13B models comfortably.

Ultimate $1,599 – $1,999

RTX 4090 (24GB)

24 GB

Best consumer GPU. Breeze through 13B models at any quantization.

📊 VRAM Calculation Breakdown

Model File Size (Q4_K_M) 8.49 GB
Context Overhead (16,384 tokens × 14B × 2 ÷ 1M) 0.459 GB
System Buffer (OS + CUDA runtime) 2.00 GB
Total Required VRAM 11 GB

Try a Different Quantization

Use the interactive calculator to compare Phi-4 14B across all available formats.

Open Live Calculator →

Phi-4 14B — Other Quantizations

Advertisement Zone

Frequently Asked Questions

Can I run Phi-4 14B Q4_K_M on a consumer GPU?
Yes! At 11 GB VRAM required, a single high-end consumer GPU like the RTX 4090 (24GB) can handle this workload. You can also use multiple GPUs for tensor parallelism.
What happens if I don't have enough VRAM?
If your GPU VRAM is insufficient, llama.cpp and similar tools will offload model layers to system RAM (CPU inference). This is much slower — expect 10-50× the generation latency compared to full GPU inference.
Can I use multiple GPUs to run Phi-4 14B?
Yes! Tools like llama.cpp, vLLM, and Ollama support tensor parallelism across multiple GPUs. For example, 2× RTX 3090 (24GB each) gives you 48GB total VRAM, which can run many large models.
Is Q4_K_M quality good enough for production?
Q4_K_M is an excellent balance of quality and performance. Perplexity tests show minimal degradation (< 2%) vs FP16 for most models. Suitable for most production applications.