
TVPaint Animation
The digital solution for your professional 2D animation projects.

Hardware-accelerated generative design for professional fashion prototyping and virtual visualization.

FashionAI by ASRock is a specialized generative AI application engineered to leverage the local compute power of ASRock’s high-performance motherboards and graphics cards. Positioned as a key pillar in the ASRock AI QuickPro software suite for 2026, it transitions professional fashion design from cloud-dependent latencies to localized, privacy-focused workflows. The technical architecture utilizes optimized Stable Diffusion checkpoints—specifically tuned for apparel textures and drapery—and integrates OpenVINO and DirectML acceleration to ensure sub-10 second rendering on consumer-grade hardware. It provides designers with a robust toolset for high-fidelity garment synthesis, texture mapping, and virtual model fitting. Unlike cloud-based competitors, FashionAI allows for unlimited iterations without recurring credit costs, targeting small-to-medium fashion houses and independent designers who require high-resolution output (up to 4K via integrated upscaling) while maintaining strict IP control over their design datasets. By 2026, the tool has evolved to support real-time fabric physics simulation previews, making it a critical bridge between conceptual sketching and digital twin creation.
FashionAI by ASRock is a specialized generative AI application engineered to leverage the local compute power of ASRock’s high-performance motherboards and graphics cards.
Explore all tools that specialize in text-to-image. This domain focus ensures FashionAI by ASRock delivers optimized results for this specific requirement.
Enables users to train hyper-local LoRA models on their own brand catalogs without uploading data to external servers.
Optimization for Intel Core Ultra processors and Arc GPUs to maximize TOPS (Tera Operations Per Second) during inference.
Allows simultaneous use of Canny, Depth, and Pose maps to precisely control garment silhouette and model posture.
Integrated ESRGAN-based upscaler designed specifically for textile patterns and stitch detail.
Algorithmically generates seamless fabric textures that can be exported for use in 3D software like CLO3D.
Automatically generates Alt-text and SEO tags for generated fashion assets using local LLM vision models.
Real-time feedback of GPU/CPU temperatures during long batch-render sessions via ASRock Polychrome Sync.
Ensure ASRock hardware (Intel 600/700 series or AMD 600 series motherboard) is installed.
Download the ASRock AI QuickPro installer from the official ASRock support portal.
Select 'FashionAI' from the module list during the installation phase.
Initialize the environment to download optimized model weights (Approx. 8GB).
Configure hardware acceleration settings (DirectML for AMD/Intel or CUDA for NVIDIA).
Import base design sketches or enter descriptive text prompts into the UI.
Apply LoRA (Low-Rank Adaptation) weights specific to seasonal fabric trends.
Execute 'High-Res Fix' to upscale initial low-resolution latent samples.
Utilize the In-painting tool to refine specific garment details like buttons or lace.
Export final high-fidelity renders to the local design repository.
All Set
Ready to go
Verified feedback from other users.
"Users praise the tool for its speed and lack of subscription fees, though some note the steep hardware requirements for optimal performance."
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