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wwwzhouhui/jimeng-free-api-all

Jimeng AI Free 服务支持即梦超强图像与视频生成能力,包含即梦 4.0 文生图等多款模型,提供文生图、图生图、视频生成功能(官方每日赠 66 积分,可生成 66 次),零配置部署且支持多路 token。 接口与 OpenAI 完全兼容,需从即梦官网获取 sessionid 作为 Authorization 的 Bearer Token,支持多账号接入。提供 Docker 部署方式及 dockerhub 镜像,可通过多种接口调用,包括对话补全、视频生成、图像生成(文生图、图生图)等,满足多样化生成需求。

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What it does

This project creates a free, unofficial gateway to Jimeng AI's powerful image and video generation tools — letting anyone use Jimeng's capabilities (like turning text into images or videos) through a standardized interface that's compatible with OpenAI's widely-adopted API format. Users log in to Jimeng's platform once to get a session token, then plug it into this service to generate images and videos programmatically, with Jimeng's free daily allowance of 66 generations included.

Why it matters

This represents a growing trend of developers unlocking premium AI generation capabilities for free by reverse-engineering consumer platforms, which puts pressure on AI companies to offer competitive official APIs or risk losing control of how their technology is accessed and distributed. For PMs and founders, it signals strong market demand for affordable multimodal AI generation (images, video, audio) and highlights how OpenAI's API format has become the de facto industry standard that new tools are expected to match.

8Active

On the radar — signal detected

Stars
867
Forks
233
Contributors
6
Language
TypeScript

Score updated Feb 24, 2026

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