FLUX.2-klein-9B-Nunchaku
tonera's FLUX.2-klein-9B-Nunchaku packs 9 billion parameters into a image-generation model. FLUX.2-klein-9B-Nunchaku is an open-weights image model with roughly 9 billion parameters.
by tonera · 9B parameters
Best for
Ways to use FLUX.2-klein-9B-Nunchaku in osFoundry
Connect with your own key (BYOK)
Open the key dialog and paste your tonera API key. osFoundry discovers FLUX.2-klein-9B-Nunchaku automatically — assign it to a Maestro role (router, direct, orchestrator, or fallback) in the Pipeline tab and it is live in every chat. Your key, your provider account — no token markup.
Deploy a dedicated endpoint
FLUX.2-klein-9B-Nunchaku is open-weights — run it locally for free, or deploy a dedicated GPU endpoint in your workspace for reserved capacity with no rate limits.
Use it in a Room App
Room Apps declare AI features in their manifest, then call them with invokeAI:
import { invokeAI } from '@osfoundry/app-sdk'
// 'summarize' is an AI feature declared in your app manifest.
const result = await invokeAI('summarize', userText)
Call it from your own apps
Once a model is wired into your workspace you can host it as an API and reach it from your own services, scripts, or CI — outside osFoundry.
What hardware can run FLUX.2-klein-9B-Nunchaku
FLUX.2-klein-9B-Nunchaku runs on a single 16GB consumer GPU (~6 GB VRAM with KV-cache headroom). Full-precision inference fits on a single H100 80GB at FP16 precision (~22 GB).
FLUX.2-klein-9B-Nunchaku vs similar models
Licence
Unspecified — Licence terms not specified — verify the upstream model card before commercial use.
Check upstream documentation.
Frequently asked about FLUX.2-klein-9B-Nunchaku
Is FLUX.2-klein-9B-Nunchaku free to use?
FLUX.2-klein-9B-Nunchaku is free to run locally on your own hardware. Hosted access through osFoundry is metered (input Free (local), output Free (local)). You can switch between local and hosted at any time.
Can I use FLUX.2-klein-9B-Nunchaku commercially?
Commercial use is allowed with conditions. Licence terms not specified — verify the upstream model card before commercial use. Check upstream documentation.
How much VRAM does FLUX.2-klein-9B-Nunchaku need?
Approximately 6 GB at Q4 quantisation, or 22 GB at full FP16 precision. Fits on a single 24GB consumer GPU.
Can I run FLUX.2-klein-9B-Nunchaku locally?
Yes. FLUX.2-klein-9B-Nunchaku is open-weights and runs locally on a workstation GPU. osFoundry's local runtime handles model loading, quantisation, and routing.
What is FLUX.2-klein-9B-Nunchaku best at?
FLUX.2-klein-9B-Nunchaku is well-suited to image to image.
How do I use FLUX.2-klein-9B-Nunchaku in osFoundry?
Paste your tonera API key in the key dialog (or deploy the open weights for self-hostable models), assign FLUX.2-klein-9B-Nunchaku to a Maestro role in the Pipeline tab, then use it in chat, Room Apps via invokeAI, or your own apps.
Published by tonera on March 27, 2026. Source: https://huggingface.co/tonera/FLUX.2-klein-9B-Nunchaku