Home

Awesome

<div align="center"><a name="readme-top"></a> <img height="180" src="https://mdn.alipayobjects.com/huamei_iwk9zp/afts/img/A*eco6RrQhxbMAAAAAAAAAAAAADgCCAQ/original"> <h1>Ant Design X</h1>

Craft AI-driven interfaces effortlessly.

CI status codecov NPM version

NPM downloads antd

Changelog · Report Bug · Request Feature · English · 中文

</div>

demos

✨ Features

📦 Installation

npm install @ant-design/x --save
yarn add @ant-design/x
pnpm add @ant-design/x

🖥️ Import in Browser

Add script and link tags in your browser and use the global variable antd.

We provide antdx.js, antdx.min.js, and antdx.min.js.map in the dist directory of the npm package.

🧩 Atomic Components

Based on the RICH interaction paradigm, we provide numerous atomic components for various stages of interaction to help you flexibly build your AI dialogue applications:

Below is an example of using atomic components to create a simple chatbot interface:

import React from 'react';
import {
  // Message bubble
  Bubble,
  // Input box
  Sender,
} from '@ant-design/x';

const messages = [
  {
    content: 'Hello, Ant Design X!',
    role: 'user',
  },
];

const App = () => (
  <div>
    <Bubble.List items={messages} />
    <Sender />
  </div>
);

export default App;

⚡️ Integrating Model Inference Service

We help you integrate standard model inference services out of the box by providing runtime tools like useXAgent, XRequest, etc.

Here is an example of integrating Qwen:

Note: 🔥 dangerouslyApiKey has security risks, more details can be found in the documentation.

import { useXAgent, Sender, XRequest } from '@ant-design/x';
import React from 'react';

const { create } = XRequest({
  baseURL: 'https://dashscope.aliyuncs.com/compatible-mode/v1',
  dangerouslyApiKey: process.env['DASHSCOPE_API_KEY'],
  model: 'qwen-plus',
});

const Component: React.FC = () => {
  const [agent] = useXAgent({
    request: async (info, callbacks) => {
      const { messages, message } = info;
      const { onUpdate } = callbacks;

      // current message
      console.log('message', message);
      // messages list
      console.log('messages', messages);

      let content: string = '';

      try {
        create(
          {
            messages: [{ role: 'user', content: message }],
            stream: true,
          },
          {
            onSuccess: (chunks) => {
              console.log('sse chunk list', chunks);
            },
            onError: (error) => {
              console.log('error', error);
            },
            onUpdate: (chunk) => {
              console.log('sse object', chunk);

              const data = JSON.parse(chunk.data);

              content += data?.choices[0].delta.content;

              onUpdate(content);
            },
          },
        );
      } catch (error) {
        // handle error
      }
    },
  });

  function onRequest(message: string) {
    agent.request(
      { message },
      {
        onUpdate: () => {},
        onSuccess: () => {},
        onError: () => {},
      },
    );
  }

  return <Sender onSubmit={onRequest} />;
};

🔄 Efficient Data Flow Management

We help you efficiently manage the data flow of AI chat applications out of the box by providing the useXChat runtime tool:

Here is an example of integrating OpenAI:

import { useXAgent, useXChat, Sender, Bubble } from '@ant-design/x';
import OpenAI from 'openai';
import React from 'react';

const client = new OpenAI({
  apiKey: process.env['OPENAI_API_KEY'],
  dangerouslyAllowBrowser: true,
});

const Demo: React.FC = () => {
  const [agent] = useXAgent({
    request: async (info, callbacks) => {
      const { messages, message } = info;

      const { onSuccess, onUpdate, onError } = callbacks;

      // current message
      console.log('message', message);

      // history messages
      console.log('messages', messages);

      let content: string = '';

      try {
        const stream = await client.chat.completions.create({
          model: 'gpt-4o',
          // if chat context is needed, modify the array
          messages: [{ role: 'user', content: message }],
          // stream mode
          stream: true,
        });

        for await (const chunk of stream) {
          content += chunk.choices[0]?.delta?.content || '';

          onUpdate(content);
        }

        onSuccess(content);
      } catch (error) {
        // handle error
        // onError();
      }
    },
  });

  const {
    // use to send message
    onRequest,
    // use to render messages
    messages,
  } = useXChat({ agent });

  const items = messages.map(({ message, id }) => ({
    // key is required, used to identify the message
    key: id,
    content: message,
  }));

  return (
    <div>
      <Bubble.List items={items} />
      <Sender onSubmit={onRequest} />
    </div>
  );
};

export default Demo;

Use modularized antd

@ant-design/x supports ES modules tree shaking by default.

TypeScript

@ant-design/x provides a built-in ts definition.

Non-React Implementations

Welcome to contribute!

Companies using antdx

Ant Design X is widely used in AI-driven user interfaces within Ant Group. If your company and products use Ant Design X, feel free to leave a comment here.

Contributing

Please read our CONTRIBUTING.md first.

If you'd like to help us improve antd, just create a Pull Request. Feel free to report bugs and issues here.

If you're new to posting issues, we ask that you read How To Ask Questions The Smart Way and How to Ask a Question in Open Source Community and How to Report Bugs Effectively prior to posting. Well written bug reports help us help you!

Need Help?

If you encounter any issues while using Ant Design X, you can seek help through the following channels. We also encourage experienced users to assist newcomers via these platforms.

When asking questions on GitHub Discussions, it's recommended to use the Q&A tag.

  1. GitHub Discussions
  2. GitHub Issues