
Arcee Trinity Nano 6B on NVIDIA GeForce RTX 3090
Yes — RTX 3090 runs Arcee Trinity Nano 6B excellently at Q8_0 — 165 tok/s. 24 GB VRAM with plenty of headroom.
Model Size
6B
Device VRAM
24 GB
Bandwidth
936 GB/s
Quantization
Q8_0
Performance by Quantization
OwnRig currently has one published compatibility entry for Arcee Trinity Nano 6B on NVIDIA GeForce RTX 3090 at Q8_0. This is the best supported pairing we can stand behind today.
| Quantization | Speed | TTFT | Fits in VRAM | Rating | Confidence |
|---|---|---|---|---|---|
| Q8_0 | 165 tok/s | 30ms | ✓ Yes | Excellent | estimated |
Notes
Q8_0
6B MoE (1B active). Q8_0 7.5GB on 24GB discrete gpu.
About Arcee Trinity Nano 6B
Arcee Trinity Nano 6B (6B) is a chat, coding, multi-purpose model. Arcee AI's smallest Mixture-of-Experts model. 6B total parameters with only 1B active per token (128 experts, 8 selected + 1 shared). Runs on consumer GPUs, edge devices, and mobile; fits at full Q8_0 precision on any GPU with 8 GB of VRAM. Still a preview release, so expect rough edges in some workflows. US-built, Apache 2.0 licensed.
View all Arcee Trinity Nano 6B hardware options →About NVIDIA GeForce RTX 3090
NVIDIA GeForce RTX 3090 has 24 GB at 936 GB/s. Street price: $899.
See all models NVIDIA GeForce RTX 3090 can run →Builds with NVIDIA GeForce RTX 3090
Extreme AI Workstation
Dual GPUs that run the biggest AI models at a smart price
Runs 8 models
High-End Home AI Server
Your household's private AI: chatbots, code tools, and more
Runs 12 models
Mid-Range Home AI Server
Serve multiple AI models to every device at home
Runs 9 models
Estimate method: Estimated from MoE architecture (active params per token), quantization size, and device bandwidth. Reference hardware source: huggingface.co (2026-03-14)
Performance varies by driver version, inference engine, quantization method, context length, and system configuration. Figures shown are estimates based on community benchmarks and may not reflect your exact setup. Product names are trademarks of their respective owners. OwnRig is independent and not affiliated with any hardware or AI model provider.