Llama 4 Scout 17B 16E Instruct (Q2_K) — 385.3 GBon NVIDIA H100
Overview
Llama 4 Scout 17B 16E Instruct is a 17B parameter moe language model by Meta, with code, multilingual, tool-calls, vision capabilities. It supports a context window of up to 10,485,760 tokens.
Llama 4 Scout 17B 16E Instruct is a Mixture-of-Experts model from Meta with 17 billion parameters per expert and 16 experts, activating one expert per token. It supports vision, code generation, tool calling, and 12 languages, making it one of the most versatile models in the Llama 4 family. Scout targets the efficiency-focused segment, offering multimodal capabilities at lower compute cost than dense models of similar quality. Its 10M token context window is among the largest available, and it quantizes well for self-hosted multi-GPU deployments.
At Q2_K quantization (low quality tier), the model weighs 36.85 GB. This fits within the 80 GB of VRAM on NVIDIA H100, enabling full GPU inference.
The NVIDIA H100 80 GB is a datacenter GPU with 80 GB of HBM3 VRAM and 3350 GB/s memory bandwidth. It delivers 1979 FP16 TFLOPS on the Hopper architecture, making it the fastest single-GPU option for large language model inference. It handles models up to 70B parameters with high throughput. Built for datacenter teams running demanding production AI workloads.
Hardware Requirements
| Model size | 36.85 GB |
| VRAM available | 80 GB |
| VRAM used | 385.3 GB |
| System RAM | |
| Min RAM required | 36.9 GB |
| GPU layers | 0 / 48 |
| Context size | 2,097,152 |
| Backend | cuda13 |
| Flash attention | No |
| Reading from disk | Yes |
Performance Notes
Deploy
Prerequisites
Ensure your GPU nodes are prepared with the NVIDIA container toolkit:
ansible-playbook prositronic.infra.nvidia_container_toolkit
Command
helmfile --state-values-file <(curl -s https://www.prositronic.eu/values/llama-4-scout-17b-16e-instruct/q2_k/nvidia-h100-80gb.yaml) apply
Generated values.yaml
/values/llama-4-scout-17b-16e-instruct/q2_k/nvidia-h100-80gb.yaml
Loading values…
Frequently Asked Questions
How much VRAM does Llama 4 Scout 17B 16E Instruct (Q2_K) need?
The Q2_K quantization of Llama 4 Scout 17B 16E Instruct requires 36.85 GB. The 80 GB of VRAM on NVIDIA H100 is insufficient for GPU layers, so inference runs on CPU.
Can I run Llama 4 Scout 17B 16E Instruct on NVIDIA H100?
It is possible but not recommended. NVIDIA H100 does not have enough VRAM to accelerate Llama 4 Scout 17B 16E Instruct (Q2_K), so inference will rely on CPU and system RAM.
What is quantization?
Quantization reduces a model's numerical precision from its original floating-point format to a more compact representation. This shrinks the file size and VRAM footprint, making it possible to run large models on consumer hardware. The trade-off is a small reduction in output quality. Q2_K compresses Llama 4 Scout 17B 16E Instruct from its original size down to 36.85 GB.
What quantization should I choose for Llama 4 Scout 17B 16E Instruct?
Q2_K is a low-quality quantization. Higher-quality quants (Q8, Q6) preserve more model accuracy but need more VRAM. Lower quants (Q4, Q3, Q2) reduce VRAM usage at the cost of some quality. Choose based on your available hardware and quality requirements.
Why are some layers offloaded to CPU?
NVIDIA H100 has 80 GB of VRAM, but Llama 4 Scout 17B 16E Instruct (Q2_K) requires approximately 36.85 GB. Only 0 of 48 layers fit in VRAM; the remaining layers run on CPU, which is slower but still functional.
What is MoE and how does it affect deployment?
Llama 4 Scout 17B 16E Instruct uses a Mixture-of-Experts (MoE) architecture with 16 experts, of which 1 are active per token. This means only a fraction of the model weights are used for each inference step, allowing MoE models to be larger in total parameter count while remaining efficient at inference time.
How do I run Llama 4 Scout 17B 16E Instruct (Q2_K) with Ollama?
Run ollama run llama4:17b-scout-16e-instruct-q2_k to start Llama 4 Scout 17B 16E Instruct (Q2_K). Ollama handles downloading the model weights automatically on first run.