Flux 2 Lora Gallery Image to Image

fal-ai/flux-2-lora-gallery/apartment-staging
Virtually furnishes an empty apartment
Inference
Commercial use

Input

Additional Settings

Customize your input with more control.

Result

Idle

What would you like to do next?

Your request will cost $0.021 per processed megapixel.

Logs

Flux 2 Apartment Staging LoRA | [image-to-image]

Black Forest Labs' FLUX.2 architecture delivers specialized apartment staging capabilities at $0.021 per megapixel through fine-tuned LoRA adaptation. This model trades general-purpose image editing flexibility for domain-specific furniture placement accuracy, using a constrained LoRA scale (0-2x) to maintain architectural coherence while adding furnishings. Built for real estate professionals and interior designers who need consistent, photorealistic virtual staging without manual 3D modeling.

Use Cases: Real Estate Virtual Staging | Interior Design Mockups | Property Marketing Automation


Performance

At $0.021 per megapixel, this specialized endpoint costs roughly half of general-purpose FLUX.2 editing workflows while maintaining the same 40-step inference quality baseline.

MetricResultContext
SpecializationApartment staging onlyLoRA fine-tuned for furniture placement vs general editing
Inference Steps40 steps (default)Configurable 1-50 range, trades speed for detail fidelity
Cost per Megapixel$0.021Approximately 48 megapixel generations per $1.00 on fal
Output Flexibility1-4 images per requestBatch generation with consistent seed support
LoRA Strength Control0-2x scalingFine-tune staging intensity vs original architecture preservation

Purpose-Built Image Transformation

FLUX.2's LoRA Gallery approach constrains the base model's parameter space to a narrow furniture placement domain, preventing the semantic drift common in general-purpose image-to-image workflows when users want "just add a couch, don't redesign the room."

What this means for you:

  • Architectural preservation: LoRA scale parameter (0-2x) lets you dial staging intensity without losing wall angles, lighting, or spatial proportions that matter for property listings

  • Prompt simplicity: "Furnish this room with modern furniture and decor" works reliably because the model's already trained on staging vocabulary, no need for negative prompts or multi-paragraph instructions

  • Flexible output sizing: Input image dimensions auto-detected or manually specified via `image_size` enum, maintaining aspect ratios critical for MLS photo standards

  • Reproducible results: Seed control enables A/B testing different furniture styles on identical room geometry, crucial for client presentations comparing staging options


Technical Specifications

SpecDetails
ArchitectureFLUX.2
Input FormatsImage URL (empty room photo) + text prompt
Output FormatsPNG, JPEG, WebP (configurable)
Resolution HandlingAuto-detects input dimensions or accepts manual `image_size` override
LicenseCommercial use permitted

API Documentation | Quickstart Guide | Enterprise Pricing


How It Stacks Up

FLUX.1 [dev] Image to Image ($0.025/megapixel) – Flux 2 Apartment Staging LoRA prioritizes domain-specific staging accuracy through LoRA constraints at slightly lower cost ($0.021 vs $0.025). FLUX.1 [dev] offers broader general-purpose editing flexibility for workflows requiring diverse transformation types beyond furniture placement.

Flux 2 Image to Image ($0.025/megapixel) – Flux 2 Apartment Staging LoRA trades general editing versatility for specialized apartment staging at 16% lower cost. Flux 2 Image to Image handles arbitrary image transformations where staging-specific constraints would limit creative control.

FLUX.1 Kontext [pro] Image to Image – Flux 2 Apartment Staging LoRA focuses on single-image staging workflows with LoRA fine-tuning, while FLUX.1 Kontext emphasizes multi-image reference conditioning for complex context-aware edits requiring multiple input sources.