إنشاء تيار عمل
مبني على SeaArt ComfyUI
creation

تيارات العمل المميزة

LTX2.3-Audio-video generation

LTX-2.3 is an open-source audio-video foundation model released by Lightricks. Its core feature is not simply generating video alone or producing video first and adding audio later. Instead, it places both video and audio within a single generation framework, directly producing synchronized visuals and sound. Officially, it is described as a DiT-based audio-video foundation model, meaning a joint audio-video generation model built on Diffusion Transformer architecture.Compared with many traditional video generation approaches, the biggest difference of LTX-2.3 is its native audio-visual synchronization. If a prompt includes speaking, singing, ambient sound, or rhythmic motion, the model attempts to align lip movements, actions, and sound within a single generation process, rather than relying on post-processing to dub audio or correct lip sync afterward. This makes it especially valuable for dialogue videos, character singing, and short narrative scenes.

LTX2.3-Audio-video generation

5.0

LTX-2.3 is an open-source audio-video foundation model released by Lightricks. Its core feature is not simply generating video alone or producing video first and adding audio later. Instead, it places both video and audio within a single generation framework, directly producing synchronized visuals and sound. Officially, it is described as a DiT-based audio-video foundation model, meaning a joint audio-video generation model built on Diffusion Transformer architecture.Compared with many traditional video generation approaches, the biggest difference of LTX-2.3 is its native audio-visual synchronization. If a prompt includes speaking, singing, ambient sound, or rhythmic motion, the model attempts to align lip movements, actions, and sound within a single generation process, rather than relying on post-processing to dub audio or correct lip sync afterward. This makes it especially valuable for dialogue videos, character singing, and short narrative scenes.
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SeaArt Comfy Helper
Flux.2 Pro&Flex

This workflow is providing access to two distinct versions: FLUX.2 Pro and FLUX.2 Flex. You can switch between them based on your specific needs for image precision and cost efficiency.🧩 Versions & Capabilities1. FLUX.2 ProCapabilities: Capable of generating high-quality images. Ideal for most standard creative tasks, style exploration, and rapid generation.Pricing (Credits):Text Only: 55 (≤1024px) / 70 (>1024px)Image Input: 80 (≤1024px) / 100 (>1024px)2. FLUX.2 FlexCapabilities: Compared to Pro, Flex excels in handling complex lighting, intricate textures, and adherence to long, complex prompts. It is the premier choice for ultimate image quality, commercial poster output, and high-precision editing tasks.Pricing (Credits):Text Only: 110 (≤1024px) / 140 (>1024px)Image Input: 220 (≤1024px) / 260 (>1024px)

Flux.2 Pro&Flex

4.9

This workflow is providing access to two distinct versions: FLUX.2 Pro and FLUX.2 Flex. You can switch between them based on your specific needs for image precision and cost efficiency.🧩 Versions & Capabilities1. FLUX.2 ProCapabilities: Capable of generating high-quality images. Ideal for most standard creative tasks, style exploration, and rapid generation.Pricing (Credits):Text Only: 55 (≤1024px) / 70 (>1024px)Image Input: 80 (≤1024px) / 100 (>1024px)2. FLUX.2 FlexCapabilities: Compared to Pro, Flex excels in handling complex lighting, intricate textures, and adherence to long, complex prompts. It is the premier choice for ultimate image quality, commercial poster output, and high-precision editing tasks.Pricing (Credits):Text Only: 110 (≤1024px) / 140 (>1024px)Image Input: 220 (≤1024px) / 260 (>1024px)
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SeaArt Comfy Helper

Wan Video

Wan2.2 VACE - Multimodal control-KJ

Continue the “unified editing/control” paradigm on the 2.2 backbone. The 2.2 backbone adopts a Mixture‑of‑Experts (MoE) design—high‑noise and low‑noise experts operating at different denoising stages—to improve quality and detail while keeping inference costs manageable. A representative controllable variant is Wan2.2‑VACE‑Fun‑A14B, which supports multi‑modal control conditions (Canny, Depth, OpenPose, MLSD, Trajectory, etc.). A typical workflow is: provide a reference image (to preserve identity/appearance) plus a driving video or its parsed control signals (e.g., pose sequence, trajectory, time‑varying depth/edges) to generate a video driven by that reference image. The VACE/Fun family provides these temporal control interfaces and the unified task support.

Wan2.2 VACE - Multimodal control-KJ

4.7

Continue the “unified editing/control” paradigm on the 2.2 backbone. The 2.2 backbone adopts a Mixture‑of‑Experts (MoE) design—high‑noise and low‑noise experts operating at different denoising stages—to improve quality and detail while keeping inference costs manageable. A representative controllable variant is Wan2.2‑VACE‑Fun‑A14B, which supports multi‑modal control conditions (Canny, Depth, OpenPose, MLSD, Trajectory, etc.). A typical workflow is: provide a reference image (to preserve identity/appearance) plus a driving video or its parsed control signals (e.g., pose sequence, trajectory, time‑varying depth/edges) to generate a video driven by that reference image. The VACE/Fun family provides these temporal control interfaces and the unified task support.
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SeaArt Comfy Helper
Wan2.2‑Fun-Inp-KJ

Wan2.2‑Fun‑InP is part of the Wan2.2‑Fun series. It supports conditioning on a start frame and an end frame to estimate the in‑between transition and produce temporally consistent video results for controllable image‑to‑video applications.What it addresses:Traditional image‑to‑video workflows typically extend motion from a single starting image. By adding an optional end keyframe, Fun‑InP helps the motion, composition, and overall content progress toward a specified target, making transitions easier to control and the sequence more coherent.Inputs: start‑frame image, end‑frame image (optional text prompt / control signals).Output: a video clip made up of interpolated middle frames, with the first and last frames visually consistent with the provided keyframes.

Wan2.2‑Fun-Inp-KJ

4.5

Wan2.2‑Fun‑InP is part of the Wan2.2‑Fun series. It supports conditioning on a start frame and an end frame to estimate the in‑between transition and produce temporally consistent video results for controllable image‑to‑video applications.What it addresses:Traditional image‑to‑video workflows typically extend motion from a single starting image. By adding an optional end keyframe, Fun‑InP helps the motion, composition, and overall content progress toward a specified target, making transitions easier to control and the sequence more coherent.Inputs: start‑frame image, end‑frame image (optional text prompt / control signals).Output: a video clip made up of interpolated middle frames, with the first and last frames visually consistent with the provided keyframes.
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SeaArt Comfy Helper
Wan2.1 Minimax-Remover - Video erase -KJ

Core Focus: Video-level object removal. Given a sequence of video frames and a corresponding mask, it seamlessly removes the masked object and fills in the background while maintaining temporal consistency, minimizing artifacts or remnants.Method Highlights:Minimum-Maximum Optimization: Tames bad noise during training and inference, improving the model's robustness to masked regions and reducing the probability of object regeneration.Two-Stage Architecture: First, a simplified DiT (Diffusion Transformer) structure is used to learn the removal capability; then, a version with fewer sampling steps and faster inference is obtained through "CFG de-distillation."Efficiency Features: Extremely low inference steps (approximately 6 steps in the official example), and does not rely on CFG, resulting in high speed and low resource consumption, suitable for long videos/batch processing. References

Wan2.1 Minimax-Remover - Video erase -KJ

3.0

Core Focus: Video-level object removal. Given a sequence of video frames and a corresponding mask, it seamlessly removes the masked object and fills in the background while maintaining temporal consistency, minimizing artifacts or remnants.Method Highlights:Minimum-Maximum Optimization: Tames bad noise during training and inference, improving the model's robustness to masked regions and reducing the probability of object regeneration.Two-Stage Architecture: First, a simplified DiT (Diffusion Transformer) structure is used to learn the removal capability; then, a version with fewer sampling steps and faster inference is obtained through "CFG de-distillation."Efficiency Features: Extremely low inference steps (approximately 6 steps in the official example), and does not rely on CFG, resulting in high speed and low resource consumption, suitable for long videos/batch processing. References
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SeaArt Comfy Helper
LongCat-Video extension

🐱 LongCat-Video: Infinite Video Extension Workflow【One-Sentence Intro】Break the duration limit of AI video generation 🚀What Can It Do?This is an advanced workflow based on the **Wan2.1** model, designed to solve the core pain points of AI videos being "too short" and "disjointed when extended."♾️ Infinite Extension Just provide an image or a short video clip, and the workflow will automatically generate subsequent frames like a "relay race," theoretically allowing for infinite generation.Seamless "Invisible" Stitching It automatically trims the awkward beginnings of extended segments, making the transition between clips as smooth as silk, with absolutely no visible stitching marks.【Use Cases】Creating ultra-long looping landscape videos.Producing coherent narrative shorts, no longer limited by the 5-second barrier.

LongCat-Video extension

4.3

🐱 LongCat-Video: Infinite Video Extension Workflow【One-Sentence Intro】Break the duration limit of AI video generation 🚀What Can It Do?This is an advanced workflow based on the **Wan2.1** model, designed to solve the core pain points of AI videos being "too short" and "disjointed when extended."♾️ Infinite Extension Just provide an image or a short video clip, and the workflow will automatically generate subsequent frames like a "relay race," theoretically allowing for infinite generation.Seamless "Invisible" Stitching It automatically trims the awkward beginnings of extended segments, making the transition between clips as smooth as silk, with absolutely no visible stitching marks.【Use Cases】Creating ultra-long looping landscape videos.Producing coherent narrative shorts, no longer limited by the 5-second barrier.
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SeaArt Comfy Helper

اختيار جديد

卓越总部工作流程

This workflow aims to create high-quality images without being a turtle slow. It consists of a USDU acting as a refiner and a chain of detailers. The result is very good quality images with an execution time of less than one minute and thirty seconds. Times range from 1:10 to 1:30 minutes.It is optimized to work with the recommended latent resolutions for Illustrious-XL, which are close to 832x1216. These resolutions avoid long, deformed bodies, elongated faces, broken columns, etc. Don't worry, the workflow refinement leaves the images with tremendous quality.I left a Preview Image from the initial Ksmapler so you can see if your Checkpoint, LoRA, and Prompt are causing problems (if your problem comes from here, it's a problem with your own model configuration, LoRA, and prompt; don't blame the workflow!).If you have questions, suggestions, or want to point out errors, feel free to comment. Oh, and don't forget to post your artwork! :3

卓越总部工作流程

5.0

This workflow aims to create high-quality images without being a turtle slow. It consists of a USDU acting as a refiner and a chain of detailers. The result is very good quality images with an execution time of less than one minute and thirty seconds. Times range from 1:10 to 1:30 minutes.It is optimized to work with the recommended latent resolutions for Illustrious-XL, which are close to 832x1216. These resolutions avoid long, deformed bodies, elongated faces, broken columns, etc. Don't worry, the workflow refinement leaves the images with tremendous quality.I left a Preview Image from the initial Ksmapler so you can see if your Checkpoint, LoRA, and Prompt are causing problems (if your problem comes from here, it's a problem with your own model configuration, LoRA, and prompt; don't blame the workflow!).If you have questions, suggestions, or want to point out errors, feel free to comment. Oh, and don't forget to post your artwork! :3
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Pls win Pls
فعالية التحدي
أساسي
توليد الفيديو
توليد صوتي
توليد ثلاثي الأبعاد
FLUX
أسلوب
تصميم
تصوير فوتوغرافي
معالجة الصور
طرق إبداعية للعب
فلترة العقدة
فلترة

مرحبا بكم في تيار العمل من SeaArt AI

بسط عمليتك الإبداعية باستخدام تيارات عمل مولد فن الـAI من SeaArt، والتي صُنعت لتلبية الاحتياجات المتنوعة للفنانين والمصممين والمبدعين. من صور الـAI إلى فيديوهات الـAI، تقدم SeaArt AI كل ما تحتاجه لتحقيق رؤيتك الفنية.

لماذا استخدام تيار العمل لـComfyUI على SeaArt AI؟

واجهة بسيطة

يوفر SeaArt AI واجهة بديهية تجعل تكوين تيارات العمل سهلا للغاية. جميع تيارات العمل مصممة خصوصا للجميع، حتى إذا لم تكن لديك خبرة في البرمجة.

تيارات العمل القابلة التخصيص

صمم تيار عملك بطريقتك الخاصة. من تدريب LoRA المتقدم إلى توليد معقد النص إلى الصورة، كل خطوة قابل التعديل لتلبية احتياجاتك.

كفاءة عالية

يعمل SeaArt على تحسين عمليات إنشاء فن الـAI. استمتع بأوقات تصيير أسرع وعقبات تقنية أقل. أنشئ مرئيات مذهلة بسرعة.

تيارات العمل المتعددة على SeaArt AI

آلاف من تيارات العمل لإنشاء فن الـAI

افتح رؤيتك الفنية باستخدام تيار عمل SeaArt. صل إلى آلاف من تيارات العمل المضبوطة المسبقة لتوليد فن الـAI بسهولة بصيغ مثل النص إلى الصورة، الصورة إلى الصورة، والصورة إلى الفيديو. تتكامل تيارات العمل هذه مع نماذج الـAI القوية مثل Flux وSD 3.5 وغيرها من الخيارات الشعبية، بما في ذلك ControlNet، مما يمنحك المرونة لإنشاء مرئيات مذهلة تناسب تفضيلاتك.

تيارات العمل القابلة التخصيص على SeaArt AI

التحكم الكامل باستخدام تيارات العمل القابلة التخصيص

بمساعدة تيار عمل SeaArt، تتمتع بالتحكم الكامل في عملية التوليد الخاصة بك. نحن نقدم خيارات تخصيص قوية تسمح لك بتخصيص تيارات العمل وفقا لاحتياجاتك المحددة. اضبط المعلمات، غيّر نماذج الـAI، والف الإعدادات دقيقا لضمان أن المخرج النهائي يطابق رؤيتك.

الأسئلة الشائعة

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ما هو تيار عمل ComfyUI؟

تيار العمل من SeaArt AI هو أداة مبتكرة تتجاوز تعليمات نصية بسيطة. على عكس مولدات فن الـAI التقليدية، يقدم SeaArt نظام تيار العمل البصري، حيث يمكنك بناء تيارات العمل المخصصة للتحكم في عملية توليد الصورة والفيديو بدقة محببة.

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أي نوع من فن الـAI يمكنني استخدام تيارات العمل لتوليده؟

تسمح تيارات العمل هذه بإنشاء مجموعة واسعة من فن الـAI بسهولة، بما في ذلك التصويرات الشخصية الواقعية، المناظر الطبيعية الخيالية، شخصيات الأنمي، والإبداعات التجريدية. يمكنك إنشاء النص إلى الصورة، الصورة إلى الصورة، والصورة إلى الفيديو بسهولة، بالإضافة إلى تطبيق نقلات الأسلوب، وحتى توليد نماذج ثلاثية الأبعاد.

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هل تيار عمل ComfyUI مناسب للمبتدئين؟

نعم! بفضل واجهة السحب والإفلات الودية الاستخدام والمعاينات في الوقت الحقيقي، فإن تيار العمل من SeaArt مناسب للمستخدمين المبتدئين والمتقدمين على حد سواء، مما يجعل تبسيط إنشاء فن الـAI.

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هل يمكنني تخصيص تيار العمل الخاص بي؟

نعم. يقدم SeaArt AI إعدادات مخصصة متنوعة تسمح لك بضبط تيار العمل وفقا لاحتياجات مشروعك المحددة.