包含: - 核心配置文件(AGENTS.md, SOUL.md, USER.md等) - 记忆系统(memory/文件夹) - 技能库(skills/文件夹) - 小说内容(novel/文件夹) - .gitignore配置
170 lines
4.2 KiB
Markdown
170 lines
4.2 KiB
Markdown
# Agent 定义方法
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## 导入方法
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- LLM Agent: `import veagent "github.com/volcengine/veadk-go/agent/llmagent"`
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- Sequential Agent: `import "github.com/volcengine/veadk-go/agent/workflowagents/sequentialagent"`
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- Loop Agent: `import "github.com/volcengine/veadk-go/agent/workflowagents/loopagent"`
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- Parallel Agent: `import "github.com/volcengine/veadk-go/agent/workflowagents/parallelagent"`
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其中,LLM Agent 是最基础的智能体(由 LLM 启动进行自主决策),Sequential Agent 是按顺序执行的智能体,Loop Agent 是循环执行的智能体,Parallel Agent 是并行执行的智能体。
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## 代码规范
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### 1、你可以通过如下方式定义智能体:
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```go
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import (
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"context"
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"fmt"
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veagent "github.com/volcengine/veadk-go/agent/llmagent"
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"github.com/volcengine/veadk-go/apps"
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"github.com/volcengine/veadk-go/apps/agentkit_server_app"
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vetool "github.com/volcengine/veadk-go/tool"
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"google.golang.org/adk/agent"
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"google.golang.org/adk/agent/llmagent"
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"google.golang.org/adk/tool"
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)
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func main() {
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ctx := context.Background()
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subAgent, err := veagent.New(&veagent.Config{
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Config: llmagent.Config{
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Name: "...",
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Description: "...",
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Instruction: `...`,
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},
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ModelName: "...",
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})
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if err != nil {
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fmt.Printf("NewLLMAgent subAgent failed: %v", err)
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return
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}
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rootAgent, err := veagent.New(&veagent.Config{
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Config: llmagent.Config{
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Name: "...",
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Description: "...",
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Instruction: `...`,
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SubAgents: []agent.Agent{subAgent},
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},
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ModelName: "...",
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})
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if err != nil {
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fmt.Printf("NewLLMAgent rootAgent failed: %v", err)
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return
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}
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app := agentkit_server_app.NewAgentkitServerApp(apps.DefaultApiConfig())
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err = app.Run(ctx, &apps.RunConfig{
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AgentLoader: agent.NewSingleLoader(rootAgent),
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})
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if err != nil {
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fmt.Printf("Run failed: %v", err)
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}
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}
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```
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### 2、可以生成一个强制按顺序执行的智能体:
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```go
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import (
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"context"
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"fmt"
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veagent "github.com/volcengine/veadk-go/agent/llmagent"
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"github.com/volcengine/veadk-go/agent/workflowagents/sequentialagent"
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"github.com/volcengine/veadk-go/apps"
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"github.com/volcengine/veadk-go/apps/agentkit_server_app"
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"google.golang.org/adk/agent"
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"google.golang.org/adk/agent/llmagent"
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)
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func main() {
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ctx := context.Background()
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agent1, err := veagent.New(&veagent.Config{
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Config: llmagent.Config{
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Name: "...",
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Description: "...",
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Instruction: "...",
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},
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})
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if err != nil {
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fmt.Printf("NewLLMAgent agent1 failed: %v", err)
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return
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}
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agent2, err := veagent.New(&veagent.Config{
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Config: llmagent.Config{
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Name: "...",
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Description: "...",
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Instruction: "...",
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},
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})
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if err != nil {
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fmt.Printf("NewLLMAgent agent failed: %v", err)
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return
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}
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rootAgent, err := sequentialagent.New(sequentialagent.Config{
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AgentConfig: agent.Config{
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Name: "...",
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SubAgents: []agent.Agent{agent1, agent2},
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Description: "...",
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},
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})
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if err != nil {
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fmt.Printf("NewSequentialAgent failed: %v", err)
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return
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}
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app := agentkit_server_app.NewAgentkitServerApp(apps.DefaultApiConfig())
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err = app.Run(ctx, &apps.RunConfig{
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AgentLoader: agent.NewSingleLoader(rootAgent),
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})
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if err != nil {
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fmt.Printf("Run failed: %v", err)
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}
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}
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```
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`agent1` 与 `agent2` 将会严格按顺序执行
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注意,根智能体的命名必须为 `rootAgent`。
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## 让 Agent 结构化输出
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为保证更高的准确率和 Agent 执行时的可控性,使用结构化输出是一种有效的手段。
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在定义 Agent 时,通过 `model_extra_config={"response_format": ...}` 可以让 Agent 结构化输出。其中,`...` 是你定义的 Pydantic 模型,用于描述 Agent 的输出格式。
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```python
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from pydantic import BaseModel
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from veadk import Agent, Runner
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# 定义分步解析模型(对应业务场景的结构化响应)
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class Step(BaseModel):
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explanation: str # 步骤说明
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output: str # 步骤计算结果
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# 定义最终响应模型(包含分步过程和最终答案)
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class MathResponse(BaseModel):
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steps: list[Step] # 解题步骤列表
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final_answer: str # 最终答案
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agent = Agent(
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instruction="你是一位数学辅导老师,需详细展示解题步骤",
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model_extra_config={"response_format": MathResponse},
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)
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```
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