CogVideo / README_zh.md
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CogVideo && CogVideoX

Read this in English.

🤗 在 CogVideoX Huggingface Space 体验视频生成模型

📚 查看 论文

👋 加入我们的 微信Discord

📍 前往 清影 API平台 体验更大规模的商业版视频生成模型。

项目更新

  • 🔥 News: 2024/8/6: 我们开源 3D Causal VAE,用于 CogVideoX-2B,可以几乎无损地重构视频。
  • 🔥 News: 2024/8/6: 我们开源 CogVideoX 系列视频生成模型的第一个模型, CogVideoX-2B
  • 🌱 Source: 2022/5/19: 我们开源了 CogVideo 视频生成模型(现在你可以在 CogVideo 分支中看到),这是首个开源的基于 Transformer 的大型文本生成视频模型,您可以访问 ICLR'23 论文 查看技术细节。 性能更强,参数量更大的模型正在到来的路上~,欢迎关注

CogVideoX-2B 视频作品

A detailed wooden toy ship with intricately carved masts and sails is seen gliding smoothly over a plush, blue carpet that mimics the waves of the sea. The ship's hull is painted a rich brown, with tiny windows. The carpet, soft and textured, provides a perfect backdrop, resembling an oceanic expanse. Surrounding the ship are various other toys and children's items, hinting at a playful environment. The scene captures the innocence and imagination of childhood, with the toy ship's journey symbolizing endless adventures in a whimsical, indoor setting.

The camera follows behind a white vintage SUV with a black roof rack as it speeds up a steep dirt road surrounded by pine trees on a steep mountain slope, dust kicks up from its tires, the sunlight shines on the SUV as it speeds along the dirt road, casting a warm glow over the scene. The dirt road curves gently into the distance, with no other cars or vehicles in sight. The trees on either side of the road are redwoods, with patches of greenery scattered throughout. The car is seen from the rear following the curve with ease, making it seem as if it is on a rugged drive through the rugged terrain. The dirt road itself is surrounded by steep hills and mountains, with a clear blue sky above with wispy clouds.

A street artist, clad in a worn-out denim jacket and a colorful bandana, stands before a vast concrete wall in the heart, holding a can of spray paint, spray-painting a colorful bird on a mottled wall.

In the haunting backdrop of a war-torn city, where ruins and crumbled walls tell a story of devastation, a poignant close-up frames a young girl. Her face is smudged with ash, a silent testament to the chaos around her. Her eyes glistening with a mix of sorrow and resilience, capturing the raw emotion of a world that has lost its innocence to the ravages of conflict.

模型介绍

CogVideoX是 清影 同源的开源版本视频生成模型。

下表战展示目前我们提供的视频生成模型列表,以及相关基础信息:

模型名字 CogVideoX-2B
提示词语言 English
推理显存消耗 (FP-16) 36GB using diffusers (will be optimized before the PR is merged) and 18GB using SAT
微调显存消耗 (bs=1) 42GB
提示词长度上限 226 Tokens
视频长度 6 seconds
帧率(每秒) 8 frames
视频分辨率 720 * 480
量化推理 不支持
多卡推理 不支持
下载地址 (Diffusers 模型) 🤗 Huggingface 🤖 ModelScope
下载地址 (SAT 模型) SAT

项目结构

本开源仓库将带领开发者快速上手 CogVideoX 开源模型的基础调用方式、微调示例。

inference

  • cli_demo: 更详细的推理代码讲解,常见参数的意义,在这里都会提及。
  • cli_vae_demo: 单独执行VAE的推理代码,目前需要71GB显存,将来会优化。
  • convert_demo: 如何将用户的输入转换成适合 CogVideoX的长输入。因为CogVideoX是在长文本上训练的,所以我们需要把输入文本的分布通过LLM转换为和训练一致的长文本。脚本中默认使用GLM4,也可以替换为GPT、Gemini等任意大语言模型。
  • web_demo: 一个简单的streamlit网页应用,展示如何使用 CogVideoX-2B 模型生成视频。

sat

  • sat_demo: 包含了 SAT 权重的推理代码和微调代码,推荐基于 CogVideoX 模型结构进行改进,创新的研究者使用改代码以更好的进行快速的堆叠和开发。

tools

本文件夹包含了一些工具,用于模型的转换 / Caption 等工作。

项目规划

  • CogVideoX 模型开源
    • CogVideoX 模型推理示例 (CLI / Web Demo)
    • CogVideoX 在线体验示例 (Huggingface Space)
    • CogVideoX 开源模型API接口示例 (Huggingface)
    • CogVideoX 模型微调示例 (SAT)
    • CogVideoX 模型微调示例 (Huggingface / SAT)
    • CogVideoX-Pro 开源(适配 CogVideoX-2B 套件)
    • CogVideoX 技术报告公开

我们欢迎您的贡献,您可以点击这里查看更多信息。

模型协议

本仓库代码使用 Apache 2.0 协议 发布。

本模型权重和模型实现代码根据 CogVideoX LICENSE 许可证发布。

CogVideo(ICLR'23)

CogVideo: Large-scale Pretraining for Text-to-Video Generation via Transformers 的官方repo位于CogVideo branch

CogVideo可以生成高帧率视频,下面展示了一个32帧的4秒视频。

High-frame-rate sample

Intro images

CogVideo的demo网站在https://models.aminer.cn/cogvideo。您可以在这里体验文本到视频生成。原始输入为中文。

引用

🌟 如果您发现我们的工作有所帮助,欢迎引用我们的文章,留下宝贵的stars

@article{yang2024cogvideox,
      title={CogVideoX: Text-to-Video Diffusion Models with An Expert Transformer}, 
      author={Zhuoyi Yang and Jiayan Teng and Wendi Zheng and Ming Ding and Shiyu Huang and JiaZheng Xu and Yuanming Yang and Xiaohan Zhang and Xiaotao Gu and Guanyu Feng and Da Yin and Wenyi Hong and Weihan Wang and Yean Cheng and Yuxuan Zhang and Ting Liu and Bin Xu and Yuxiao Dong and Jie Tang},
      year={2024},
}
@article{hong2022cogvideo,
  title={CogVideo: Large-scale Pretraining for Text-to-Video Generation via Transformers},
  author={Hong, Wenyi and Ding, Ming and Zheng, Wendi and Liu, Xinghan and Tang, Jie},
  journal={arXiv preprint arXiv:2205.15868},
  year={2022}
}