跳转到主要内容

标签(标签)

资源精选(342) Go开发(108) Go语言(103) Go(99) angular(82) LLM(78) 大语言模型(63) 人工智能(53) 前端开发(50) LangChain(43) golang(43) 机器学习(39) Go工程师(38) Go程序员(38) Go开发者(36) React(33) Go基础(29) Python(24) Vue(22) Web开发(20) Web技术(19) 精选资源(19) 深度学习(19) Java(18) ChatGTP(17) Cookie(16) android(16) 前端框架(13) JavaScript(13) Next.js(12) 安卓(11) 聊天机器人(10) typescript(10) 资料精选(10) NLP(10) 第三方Cookie(9) Redwoodjs(9) ChatGPT(9) LLMOps(9) Go语言中级开发(9) 自然语言处理(9) PostgreSQL(9) 区块链(9) mlops(9) 安全(9) 全栈开发(8) OpenAI(8) Linux(8) AI(8) GraphQL(8) iOS(8) 软件架构(7) RAG(7) Go语言高级开发(7) AWS(7) C++(7) 数据科学(7) whisper(6) Prisma(6) 隐私保护(6) JSON(6) DevOps(6) 数据可视化(6) wasm(6) 计算机视觉(6) 算法(6) Rust(6) 微服务(6) 隐私沙盒(5) FedCM(5) 智能体(5) 语音识别(5) Angular开发(5) 快速应用开发(5) 提示工程(5) Agent(5) LLaMA(5) 低代码开发(5) Go测试(5) gorm(5) REST API(5) kafka(5) 推荐系统(5) WebAssembly(5) GameDev(5) CMS(5) CSS(5) machine-learning(5) 机器人(5) 游戏开发(5) Blockchain(5) Web安全(5) Kotlin(5) 低代码平台(5) 机器学习资源(5) Go资源(5) Nodejs(5) PHP(5) Swift(5) devin(4) Blitz(4) javascript框架(4) Redwood(4) GDPR(4) 生成式人工智能(4) Angular16(4) Alpaca(4) 编程语言(4) SAML(4) JWT(4) JSON处理(4) Go并发(4) 移动开发(4) 移动应用(4) security(4) 隐私(4) spring-boot(4) 物联网(4) nextjs(4) 网络安全(4) API(4) Ruby(4) 信息安全(4) flutter(4) RAG架构(3) 专家智能体(3) Chrome(3) CHIPS(3) 3PC(3) SSE(3) 人工智能软件工程师(3) LLM Agent(3) Remix(3) Ubuntu(3) GPT4All(3) 软件开发(3) 问答系统(3) 开发工具(3) 最佳实践(3) RxJS(3) SSR(3) Node.js(3) Dolly(3) 移动应用开发(3) 低代码(3) IAM(3) Web框架(3) CORS(3) 基准测试(3) Go语言数据库开发(3) Oauth2(3) 并发(3) 主题(3) Theme(3) earth(3) nginx(3) 软件工程(3) azure(3) keycloak(3) 生产力工具(3) gpt3(3) 工作流(3) C(3) jupyter(3) 认证(3) prometheus(3) GAN(3) Spring(3) 逆向工程(3) 应用安全(3) Docker(3) Django(3) R(3) .NET(3) 大数据(3) Hacking(3) 渗透测试(3) C++资源(3) Mac(3) 微信小程序(3) Python资源(3) JHipster(3) 语言模型(2) 可穿戴设备(2) JDK(2) SQL(2) Apache(2) Hashicorp Vault(2) Spring Cloud Vault(2) Go语言Web开发(2) Go测试工程师(2) WebSocket(2) 容器化(2) AES(2) 加密(2) 输入验证(2) ORM(2) Fiber(2) Postgres(2) Gorilla Mux(2) Go数据库开发(2) 模块(2) 泛型(2) 指针(2) HTTP(2) PostgreSQL开发(2) Vault(2) K8s(2) Spring boot(2) R语言(2) 深度学习资源(2) 半监督学习(2) semi-supervised-learning(2) architecture(2) 普罗米修斯(2) 嵌入模型(2) productivity(2) 编码(2) Qt(2) 前端(2) Rust语言(2) NeRF(2) 神经辐射场(2) 元宇宙(2) CPP(2) 数据分析(2) spark(2) 流处理(2) Ionic(2) 人体姿势估计(2) human-pose-estimation(2) 视频处理(2) deep-learning(2) kotlin语言(2) kotlin开发(2) burp(2) Chatbot(2) npm(2) quantum(2) OCR(2) 游戏(2) game(2) 内容管理系统(2) MySQL(2) python-books(2) pentest(2) opengl(2) IDE(2) 漏洞赏金(2) Web(2) 知识图谱(2) PyTorch(2) 数据库(2) reverse-engineering(2) 数据工程(2) swift开发(2) rest(2) robotics(2) ios-animation(2) 知识蒸馏(2) 安卓开发(2) nestjs(2) solidity(2) 爬虫(2) 面试(2) 容器(2) C++精选(2) 人工智能资源(2) Machine Learning(2) 备忘单(2) 编程书籍(2) angular资源(2) 速查表(2) cheatsheets(2) SecOps(2) mlops资源(2) R资源(2) DDD(2) 架构设计模式(2) 量化(2) Hacking资源(2) 强化学习(2) flask(2) 设计(2) 性能(2) Sysadmin(2) 系统管理员(2) Java资源(2) 机器学习精选(2) android资源(2) android-UI(2) Mac资源(2) iOS资源(2) Vue资源(2) flutter资源(2) JavaScript精选(2) JavaScript资源(2) Rust开发(2) deeplearning(2) RAD(2)

category

构建UI组件可能是一项艰巨的任务。OpenUI旨在使流程变得有趣、快速和灵活。这也是我们在W&B使用的一个工具,用于测试和原型化我们的下一代工具,以便在LLM的基础上构建强大的应用程序。

Overview

 

 

OpenUI let's you describe UI using your imagination, then see it rendered live. You can ask for changes and convert HTML to React, Svelte, Web Components, etc. It's like v0 but open source and not as polished 😝.

 

Live Demo

 

Try the demo

Running Locally

 

You can also run OpenUI locally and use models available to OllamaInstall Ollama and pull a model like CodeLlama, then assuming you have git and python installed:

Note: There's a .python-version file that specifies openui as the virtual env name. Assuming you have pyenv and pyenv-virtualenv you can run the following from the root of the repository or just run pyenv local 3.X where X is the version of python you have installed.

pyenv virtualenv 3.12.2 openui
pyenv local openui
git clone https://github.com/wandb/openui
cd openui/backend
# You probably want to do this from a virtual environment
pip install .
# This must be set to use OpenAI models, find your api key here: https://platform.openai.com/api-keys
export OPENAI_API_KEY=xxx
# You may change the base url to use an OpenAI-compatible api by setting the OPENAI_BASE_URL environment variable
# export OPENAI_BASE_URL=https://api.myopenai.com/v1
python -m openui

Groq

 

To use the super fast Groq models, set GROQ_API_KEY to your Groq api key which you can find here. To use one of the Groq models, click the settings icon in the sidebar and choose from the list:

Select Groq models

You can also change the default base url used for Groq (if necessary), i.e.

export GROQ_BASE_URL=https://api.groq.com/openai/v1

Docker Compose

 

DISCLAIMER: This is likely going to be very slow. If you have a GPU you may need to change the tag of the ollama container to one that supports it. If you're running on a Mac, follow the instructions above and run Ollama natively to take advantage of the M1/M2.

From the root directory you can run:

docker-compose up -d
docker exec -it openui-ollama-1 ollama pull llava

If you have your OPENAI_API_KEY set in the environment already, just remove =xxx from the OPENAI_API_KEY line. You can also replace llava in the command above with your open source model of choice (llava is one of the only Ollama models that support images currently). You should now be able to access OpenUI at http://localhost:7878.

If you make changes to the frontend or backend, you'll need to run docker-compose build to have them reflected in the service.

Docker

 

You can build and run the docker file manually from the /backend directory:

docker build . -t wandb/openui --load
docker run -p 7878:7878 -e OPENAI_API_KEY -e GROQ_API_KEY wandb/openui

Now you can goto http://localhost:7878

Development

 

dev container is configured in this repository which is the quickest way to get started.

Codespace

 

New with options...

Choose more options when creating a Codespace, then select New with options.... Select the US West region if you want a really fast boot time. You'll also want to configure your OPENAI_API_KEY secret or just set it to xxx if you want to try Ollama (you'll want at least 16GB of Ram).

Once inside the code space you can run the server in one terminal: python -m openui --dev. Then in a new terminal:

cd /workspaces/openui/frontend
npm run dev

This should open another service on port 5173, that's the service you'll want to visit. All changes to both the frontend and backend will automatically be reloaded and reflected in your browser.

Ollama

 

The codespace installs ollama automaticaly and downloads the llava model. You can verify Ollama is running with ollama list if that fails, open a new terminal and run ollama serve. In Codespaces we pull llava on boot so you should see it in the list. You can select Ollama models from the settings gear icon in the upper left corner of the application. Any models you pull i.e. ollama pull llama will show up in the settings modal.

Select Ollama models

Gitpod

 

You can easily use Open UI via Gitpod, preconfigured with Open AI.

Open in Gitpod

On launch Open UI is automatically installed and launched.

Before you can use Gitpod:

  • Make sure you have a Gitpod account.
  • To use Open AI models set up the OPENAI_API_KEY environment variable in your Gitpod User Account. Set the scope to wandb/openui (or your repo if you forked it).

NOTE: Other (local) models might also be used with a bigger Gitpod instance type. Required models are not preconfigured in Gitpod but can easily be added as documented above.

Resources

 

See the readmes in the frontend and backend directories.

文章链接