- Included a new JavaScript file for Mermaid configuration to ensure consistent diagram sizing across documentation. - Enhanced architecture documentation to reflect the updated pipeline engine structure, including VAD, ASR, TD, LLM, and TTS components. - Updated various sections to clarify the integration of external services and tools within the architecture. - Improved styling for Mermaid diagrams to enhance visual consistency and usability.
355 lines
8.5 KiB
Markdown
355 lines
8.5 KiB
Markdown
# 系统架构
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本文档详细介绍 Realtime Agent Studio (RAS) 的系统架构设计。
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---
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## 整体架构
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RAS 采用前后端分离的微服务架构,主要由三个核心服务组成:
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```mermaid
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flowchart TB
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subgraph Client["客户端"]
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Browser[Web 浏览器]
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Mobile[移动应用]
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ThirdParty[第三方系统]
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end
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subgraph Frontend["前端服务"]
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WebApp[React 管理控制台]
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end
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subgraph Backend["后端服务"]
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API[API 服务<br/>FastAPI]
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Engine[实时交互引擎<br/>WebSocket]
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end
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subgraph Storage["数据存储"]
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DB[(SQLite/PostgreSQL)]
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FileStore[文件存储]
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end
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subgraph External["外部服务"]
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OpenAI[OpenAI]
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SiliconFlow[SiliconFlow]
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DashScope[DashScope]
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LocalModel[本地模型]
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end
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subgraph Tools["工具"]
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Webhook[Webhook]
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ClientTool[客户端工具]
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Builtin[内建工具]
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end
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Browser --> WebApp
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Mobile -->|WebSocket| Engine
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ThirdParty -->|REST API| API
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WebApp -->|REST API| API
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WebApp -->|WebSocket| Engine
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API <--> DB
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API <--> FileStore
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Engine <--> API
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Engine --> External
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Engine --> Tools
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```
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---
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## 核心组件
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### 1. Web 前端 (React)
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管理控制台,提供可视化的配置和监控界面。
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| 功能模块 | 说明 |
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|---------|------|
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| 助手管理 | 创建、配置、测试智能助手 |
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| 资源库 | LLM/ASR/TTS/VAD 等模型管理 |
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| 知识库 | RAG 文档上传与管理 |
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| 历史记录 | 会话日志查询与回放 |
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| 仪表盘 | 实时数据统计 |
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| 调试控制台 | WebSocket 实时测试 |
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### 2. API 服务 (FastAPI)
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RESTful API 后端,处理所有管理操作。
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```mermaid
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flowchart LR
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subgraph API["API 服务"]
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Router[路由层]
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Service[业务逻辑层]
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Model[数据模型层]
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end
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Client[客户端] --> Router
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Router --> Service
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Service --> Model
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Model --> DB[(数据库)]
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```
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**主要职责:**
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- 助手 CRUD 操作
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- 模型资源管理
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- 知识库管理
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- 会话记录存储
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- 认证与授权
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### 3. 实时交互引擎 (Engine)
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核心组件,处理实时音视频对话。
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```mermaid
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flowchart TB
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subgraph Engine["实时交互引擎"]
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WS[WebSocket Handler]
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SM[会话管理器]
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subgraph Pipeline["管线式引擎"]
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VAD[声音活动检测 VAD]
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ASR[语音识别 ASR]
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TD[回合检测 TD]
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LLM[大语言模型 LLM]
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TTS[语音合成 TTS]
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end
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subgraph Realtime["实时交互引擎连接"]
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RTOpenAI[OpenAI Realtime]
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RTGemini[Gemini Live]
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RTDoubao[Doubao 实时交互]
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end
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subgraph Tools["工具"]
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Webhook[Webhook]
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ClientTool[客户端工具]
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Builtin[内建工具]
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end
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end
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Client[客户端] -->|音频流| WS
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WS --> SM
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SM --> Pipeline
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SM --> Realtime
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Pipeline --> LLM
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LLM --> Tools
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Realtime --> Tools
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Pipeline -->|文本/音频| WS
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Realtime -->|文本/音频| WS
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```
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### 外部服务与工具
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| 类别 | 说明 | 可选项 |
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|------|------|--------|
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| **外部服务** | 管线式引擎各环节所依赖的云/本地服务 | OpenAI、SiliconFlow、DashScope、本地模型 |
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| **实时交互引擎** | 实时交互引擎可连接的后端 | OpenAI Realtime、Gemini Live、Doubao 实时交互引擎 |
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| **工具** | 管线式 LLM 与实时交互引擎均可调用 | Webhook、客户端工具、内建工具 |
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---
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## 引擎架构
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### 管线式全双工引擎
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管线式引擎包含:**声音活动检测(VAD)**、**语音识别(ASR)**、**回合检测(TD)**、**大语言模型(LLM)**、**语音合成(TTS)**。外部服务可选用 **OpenAI**、**SiliconFlow**、**DashScope**、**本地模型**。LLM 可连接**工具**(Webhook、客户端工具、内建工具)。
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```mermaid
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sequenceDiagram
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participant C as 客户端
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participant E as 引擎
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participant VAD as VAD
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participant ASR as 语音识别
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participant TD as 回合检测
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participant LLM as 大语言模型
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participant TTS as 语音合成
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participant Tools as 工具
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C->>E: 音频流 (PCM)
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E->>VAD: 检测语音活动
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VAD-->>E: 有效语音段
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E->>ASR: 语音转文字
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ASR-->>E: 转写文本
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E->>TD: 回合边界
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TD-->>E: 可送 LLM 的输入
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E->>LLM: 生成回复
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LLM->>Tools: 可选:调用工具
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Tools-->>LLM: 工具结果
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LLM-->>E: 回复文本 (流式)
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E->>TTS: 文字转语音
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TTS-->>E: 音频流
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E->>C: 播放音频
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```
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**特点:**
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- 灵活选择各环节供应商(OpenAI、SiliconFlow、DashScope、本地模型)
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- 可独立优化 VAD、ASR、TD、LLM、TTS 每个环节
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- LLM 与工具联动(Webhook、客户端工具、内建工具)
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- 延迟约 500-1500ms
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### 实时交互引擎
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实时交互引擎可连接**实时交互引擎**,包括 **OpenAI Realtime**、**Gemini Live**、**Doubao 实时交互引擎**等,同样可连接**工具**(Webhook、客户端工具、内建工具)。
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### 原生多模态引擎
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使用端到端多模态模型(如 GPT-4o Realtime):
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```mermaid
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sequenceDiagram
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participant C as 客户端
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participant E as 引擎
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participant RT as Realtime Model
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C->>E: 音频流
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E->>RT: 音频输入
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RT-->>E: 音频输出 (流式)
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E->>C: 播放音频
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```
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**特点:**
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- 更低延迟 (< 300ms)
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- 更自然的语音交互
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- 依赖特定模型供应商
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---
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## 数据流
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### WebSocket 会话流程
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```mermaid
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sequenceDiagram
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participant C as 客户端
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participant E as 引擎
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participant API as API 服务
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participant DB as 数据库
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C->>E: 连接 ws://.../ws?assistant_id=xxx
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E->>API: 获取助手配置
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API->>DB: 查询助手
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DB-->>API: 助手数据
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API-->>E: 配置信息
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C->>E: session.start
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E-->>C: session.started
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E-->>C: config.resolved
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loop 对话循环
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C->>E: 音频帧 (binary)
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E-->>C: input.speech_started
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E-->>C: transcript.delta
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E-->>C: transcript.final
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E-->>C: assistant.response.delta
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E-->>C: output.audio.start
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E-->>C: 音频帧 (binary)
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E-->>C: output.audio.end
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end
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C->>E: session.stop
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E->>API: 保存会话记录
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API->>DB: 存储
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E-->>C: session.stopped
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```
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### 智能打断流程
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```mermaid
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sequenceDiagram
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participant C as 客户端
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participant E as 引擎
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participant TTS as TTS 服务
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Note over E: 正在播放 TTS 音频
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E->>C: 音频帧...
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C->>E: 用户说话 (VAD 检测)
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E->>E: 触发打断
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E->>TTS: 停止合成
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E-->>C: output.audio.interrupted
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Note over E: 处理新的用户输入
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E-->>C: input.speech_started
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```
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---
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## 部署架构
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### 开发环境
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```mermaid
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flowchart LR
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subgraph Local["本地开发"]
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Web[npm run dev<br/>:3000]
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API[uvicorn<br/>:8080]
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Engine[python main.py<br/>:8000]
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DB[(SQLite)]
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end
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Web --> API
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Web --> Engine
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API --> DB
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Engine --> API
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```
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## 技术选型
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| 组件 | 技术 | 选型理由 |
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|------|------|---------|
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| **前端框架** | React 18 | 成熟生态,组件化开发 |
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| **状态管理** | Zustand | 轻量级,TypeScript 友好 |
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| **UI 组件** | Tailwind CSS | 原子化 CSS,快速开发 |
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| **后端框架** | FastAPI | 高性能,自动 API 文档 |
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| **WebSocket** | websockets | Python 异步 WebSocket |
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| **ORM** | SQLAlchemy | 功能完善,支持多数据库 |
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| **数据库** | SQLite/PostgreSQL | 开发简单/生产可靠 |
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---
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## 扩展性设计
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### 模型适配器模式
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```mermaid
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classDiagram
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class ModelAdapter {
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<<interface>>
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+generate(prompt) string
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+stream(prompt) AsyncIterator
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}
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class OpenAIAdapter {
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+generate(prompt) string
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+stream(prompt) AsyncIterator
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}
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class AzureAdapter {
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+generate(prompt) string
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+stream(prompt) AsyncIterator
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}
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class LocalAdapter {
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+generate(prompt) string
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+stream(prompt) AsyncIterator
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}
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ModelAdapter <|-- OpenAIAdapter
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ModelAdapter <|-- AzureAdapter
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ModelAdapter <|-- LocalAdapter
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```
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通过适配器模式,可以轻松接入新的模型供应商。
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---
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## 相关文档
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- [WebSocket 协议](../api-reference/websocket.md) - 详细的协议规范
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- [部署概览](../deployment/index.md) - Docker 部署
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- [核心概念](../concepts/index.md) - 助手、管线等概念说明
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