M2 Pro
68 AI models fit in 16 GB VRAM at Q4 native. 15 more run with CPU offloading. Real benchmarks below.
llama.cpp 0.2.x · CUDA 12 · Ubuntu 22.04 · Prices verified on Amazon · methodology →
Execution Context
Ver oferta atual
Amazon affiliate link for M2 Pro
Alguns links são links de afiliado da Amazon. Podemos receber uma comissão sem custo adicional para si. O cookie da Amazon pode durar até 24 horas após o clique.
Full Specifications
Apple · 2023-01
| VRAM | 16 GB Unified Memory |
| Bandwidth | 200 GB/s |
| FP16 TFLOPS | 6.8 |
| AI Score | 30 / 140 |
| Tensor Cores | 16 |
| TDP | 30 W |
| Price Band | Integrada |
| Released | 2023-01 |
AI Benchmarks
Real inference measurements — llama.cpp Q4_K_M
| Task | Result |
|---|---|
| Llama 1B Q4 | 105 tok/s |
| Llama 3B Q4 | 42 tok/s |
| Llama 7B Q4 | 28 tok/s |
| Llama 13B Q4 | 9 tok/s |
| Llama 30B Q4 | VRAM N/A |
| Llama 70B Q4 | Offload or multi-GPU |
| Stable Diffusion 512px | 12s / img |
| Whisper Large RTF | 1.2x |
RTF < 1.0 = faster than real time. For Stable Diffusion and Whisper lower is better; for tokens/s higher is better.
Compare M2 Pro with another GPU
Is an upgrade worth it? Compare specs and real benchmarks side by side.
Open comparator →Compatible AI Models — M2 Pro
68 models run fully in VRAM · 15 with CPU offloading
Flux.1 Dev
Whisper Large V3
Stable Diffusion 3.5 Large
Stable Diffusion 3.5 Medium
Gemma 4 27B
Gemma 2 27B
Mistral Small 3
Phi-4
Show all 68 compatible models →
Also runs with CPU offloading (15)
- FLUX.2 Dev 8.8 GB Q2
- Qwen2.5-Coder 32B 9.6 GB Q2 How to install →
- DeepSeek R1 Distill 32B 9.6 GB Q2 How to install →
- Qwen2.5 32B 9.6 GB Q2 How to install →
- Qwen3.5 35B-A3B 9.6 GB Q2 How to install →
- Gemma 3 27B 8.1 GB Q2 How to install →
- Gemma 4 31B 8.5 GB Q2 How to install →
- Mixtral 8x7B 14 GB Q2 How to install →
- Qwen3 32B 8.8 GB Q2 How to install →
- Qwen3-Coder 30B-A3B 8.3 GB Q2 How to install →
- Qwen3 30B-A3B 8.3 GB Q2 How to install →
- CodeLlama 34B 10 GB Q2 How to install →
- Yi 1.5 34B 10 GB Q2 How to install →
- Nous Hermes 2 Mixtral 8x7B 13 GB Q2 How to install →
- Phi-3.5 MoE 11 GB Q2 How to install →
M2 Pro · Amazon
Os precos de GPU mudam com frequencia entre lojas. Consulte a oferta atual antes de comprar.
Ver oferta atualAlguns links são links de afiliado da Amazon. Podemos receber uma comissão sem custo adicional para si. O cookie da Amazon pode durar até 24 horas após o clique.
M2 Pro for Local AI
La M2 Pro con 16GB de Unified Memory es una opción equilibrada para IA local. Puede correr modelos 7B y 13B en Q4 sin problemas, y modelos 7B en FP16. Es ideal para usuarios que quieren una experiencia fluida con los modelos más populares como Llama 3.1 8B, Mistral 7B, Phi-4 o Qwen2.5 14B.
Los benchmarks reales muestran 28 tokens/segundo en Llama 7B Q4. Para generación de imágenes, Stable Diffusion XL y SD 3.5 Medium caben perfectamente. Whisper Large V3 para transcripción de audio también es compatible.
Con 16GB de VRAM tienes acceso a 68 modelos completos y 15 adicionales con offloading parcial. Usa la calculadora de VRAM para ver las opciones de cuantización disponibles para cada modelo.
Plan your full AI build
M2 Pro · 16 GB VRAM — configure PSU, RAM, storage and check compatible models.
Related articles
Not sure which model to run on your M2 Pro?
The VRAM calculator tells you exactly which quantization you need.
Get the best price for M2 Pro
Open Amazon with our affiliate link and check availability, variants, and current deals.