模型定价企业
500+ AI 模型 API,一次搞定,就在 CometAPI
模型 API
开发者
快速入门文档API 仪表板
公司
关于我们企业
资源
AI 模型博客更新日志支持
服务条款隐私政策
© 2026 CometAPI · All rights reserved
Home/Models/Flux/flux-pro-1.0-fill-finetuned
F

flux-pro-1.0-fill-finetuned

每次请求:$0.096
商用
概览
功能亮点
定价
API

Technical Specifications of flux-pro-1-0-fill-finetuned

flux-pro-1-0-fill-finetuned is CometAPI’s platform identifier for Black Forest Labs’ FLUX.1 Fill [pro] finetune image-editing endpoint. It is designed for inpainting workflows, where you provide an input image plus either a separate mask or an alpha mask, and the model edits only the specified regions based on a text prompt.

Model overview

  • Model ID: flux-pro-1-0-fill-finetuned
  • Provider / underlying model family: Black Forest Labs FLUX.1 Fill [pro] finetune.
  • Primary modality: Image-to-image, image editing, and masked inpainting.
  • Commercial use: Listed by CometAPI as supporting commercial use. (cometapi.com)
  • CometAPI pricing: $0.096 per request on the CometAPI model page at crawl time. (cometapi.com)

Documented request inputs

  • finetune_id: Required ID of the fine-tuned model to apply.
  • image: Required base64-encoded source image.
  • mask: Optional base64-encoded black-and-white mask; can be omitted if the original image already contains an alpha mask.
  • prompt: Text instruction describing the desired edits.
  • finetune_strength: Default 1.1, allowed range 0 to 2.0.
  • steps: Default 50, allowed range 15 to 50.
  • guidance: Default 60, allowed range 1.5 to 100.
  • prompt_upsampling: Optional boolean for more creative prompt rewriting.
  • seed: Optional integer for reproducibility.
  • output_format: jpeg or png, default jpeg.
  • safety_tolerance: Integer from 0 to 6, default 2.
  • Async delivery support: webhook_url and webhook_secret are supported.

Documented response fields

  • id: Generation task ID.
  • polling_url: URL for checking task status.
  • cost, input_mp, output_mp: Returned usage and image-size-related metadata.

What is flux-pro-1-0-fill-finetuned?

flux-pro-1-0-fill-finetuned is a specialized FLUX image-editing model endpoint for personalized inpainting. In practice, it combines the high-end FLUX.1 Fill [pro] editing workflow with a user-trained finetune, so you can modify selected parts of an existing image while preserving the rest of the scene and maintaining subject, product, brand, or style consistency.

Black Forest Labs describes its FLUX Pro finetuning system as a way to customize FLUX.1 [pro] using your own example images, including specific people, pets, clothing, stickers, brands, or visual styles. The company also states that combining finetuning with FLUX.1 Fill [pro] enables personalized inpainting for iterative editing of a given image.

So, if you already have a fine-tuned FLUX Pro concept model, this endpoint is the editing version that lets you apply that learned concept selectively inside masked regions instead of generating a brand-new image from scratch. That makes it especially useful for ad creative refreshes, product retouching, character-consistent edits, branded asset revisions, and localized image updates. This is an inference based on the endpoint behavior and Black Forest Labs’ finetuning description.

Main features of flux-pro-1-0-fill-finetuned

  • Personalized inpainting: Edits only the masked portions of an existing image while using a finetuned concept model to keep the result aligned with your custom subject or style.
  • Fine-tune aware editing: Requires a finetune_id, which means the endpoint is built to apply a previously trained FLUX Pro finetune during image modification.
  • Mask-based control: Supports both separate masks and alpha-mask workflows, making it practical for precise object replacement, cleanup, enhancement, or region-specific redesign.
  • Prompt-guided transformations: Uses natural-language prompts to describe the desired change inside the selected area, enabling flexible visual edits without manual compositing.
  • Adjustable style influence: finetune_strength lets you control how strongly the finetuned concept affects the final image, from subtle influence to highly pronounced personalization.
  • Quality and creativity controls: Parameters such as steps, guidance, and prompt_upsampling give developers control over fidelity, adherence to prompt, and creative variation.
  • Reproducible outputs: Optional seed support helps with repeatable testing and controlled iteration across versions of a creative asset.
  • Production-friendly async workflow: The endpoint returns a task ID and polling URL, and it also supports webhooks for automated pipelines.
  • Commercial deployment path: CometAPI lists the model as available for commercial use on its platform. (cometapi.com)

How to access and integrate flux-pro-1-0-fill-finetuned

Step 1: Sign Up for API Key

Sign up on CometAPI and create your API key from the dashboard. Once you have your key, you can authenticate requests to the flux-pro-1-0-fill-finetuned API and start integrating the model into your application. CometAPI lists this model as available on its platform with sample code and API resources to help streamline integration. (cometapi.com)

Step 2: Send Requests to flux-pro-1-0-fill-finetuned API

Send a request to the flux-pro-1-0-fill-finetuned API using your preferred HTTP client or SDK. Include your API key, the model ID flux-pro-1-0-fill-finetuned, and the required request payload for your use case. For this model, that typically means providing a source image, a mask or alpha mask, a prompt, and a finetune_id so the endpoint can apply your trained concept during inpainting. Black Forest Labs documents this endpoint as POST /v1/flux-pro-1.0-fill-finetuned with configurable parameters such as finetune_strength, steps, guidance, output_format, and optional webhook settings.

Step 3: Retrieve and Verify Results

Retrieve the generation result using the response metadata returned by the API. For flux-pro-1-0-fill-finetuned, the documented response includes a task id and polling_url, along with usage-related fields such as cost, input_mp, and output_mp. Verify that the edited output matches the intended masked region, preserves surrounding context, and reflects the finetuned concept consistently before promoting it into production workflows.

flux-pro-1.0-fill-finetuned 的功能

了解 flux-pro-1.0-fill-finetuned 的核心能力,帮助提升性能与可用性,并改善整体体验。

flux-pro-1.0-fill-finetuned 的定价

查看 flux-pro-1.0-fill-finetuned 的竞争性定价,满足不同预算与使用需求,灵活方案确保随需求扩展。
Comet 价格 (USD / M Tokens)官方定价 (USD / M Tokens)折扣
每次请求:$0.096
每次请求:$0.12
-20%

flux-pro-1.0-fill-finetuned 的示例代码与 API

获取完整示例代码与 API 资源,简化 flux-pro-1.0-fill-finetuned 的集成流程,我们提供逐步指导,助你发挥模型潜能。

更多模型

G

Nano Banana 2

输入:$0.4/M
输出:$2.4/M
核心能力概览:分辨率:最高 4K(4096×4096),与 Pro 相当。参考图像一致性:最多 14 张参考图像(10 个物体 + 4 个角色),保持风格/角色一致性。极端纵横比:新增 1:4、4:1、1:8、8:1 比例,适用于长图、海报和横幅。文本渲染:高级文本生成,适用于信息图和营销海报版式。搜索增强:集成 Google Search + 图片搜索。Grounding:内置思维过程;生成前先对复杂提示进行推理。
C

Claude Opus 4.7

输入:$4/M
输出:$20/M
用于智能体和编程的最智能模型
C

Claude Opus 4.6

输入:$4/M
输出:$20/M
Claude Opus 4.6 是 Anthropic 的“Opus”级大型语言模型,于 2026 年 2 月发布。其定位为知识工作与研究工作流的主力模型——提升长上下文推理、多步骤规划、工具使用(包括代理型软件工作流),以及计算机使用类任务,如自动生成幻灯片和电子表格。
A

Claude Sonnet 4.6

输入:$2.4/M
输出:$12/M
Claude Sonnet 4.6 是迄今为止我们最强大的 Sonnet 模型。它对模型在编码、计算机使用、长上下文推理、智能体规划、知识工作和设计等方面的能力进行了全面升级。Sonnet 4.6 还在 beta 阶段提供 1M token 上下文窗口。
O

GPT-5.4 nano

输入:$0.16/M
输出:$1/M
GPT-5.4 nano 专为速度和成本最为关键的任务而设计,例如分类、数据提取、排序以及子智能体。
O

GPT-5.4 mini

输入:$0.6/M
输出:$3.6/M
GPT-5.4 mini 将 GPT-5.4 的优势融入到一款更快速、更高效、专为大规模工作负载设计的模型中。