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极简的智能体开发框架

Project description

✨特性

  • 装饰器一键接入 Function Call(Pydantic 模型自动生成工具描述)
  • 工作流 Agent 管线,按指定顺序编排执行
  • 智能体间全局上下文共享
  • 结构化响应解析:可传入 response_format(Pydantic)强类型返回

🧱环境要求

  • Python ≥ 3.8
  • 有效的 OpenAI API Key

📦安装

pip install pyxbrain

🚀快速开始:接入一个工具

1. 创建工具文件

在你的项目目录下创建一个 demo.py 文件,定义工具函数:

from pydantic import BaseModel
from xbrain.core import Tool

class GenerateTag(BaseModel):
    """生成标签的工具模型"""
    topic: str
    """要生成标签的主题"""

@Tool(model=GenerateTag)
def generate_tag(topic: str):
    """生成标签的工具函数"""
    return f"tag: {topic}"

2. 配置 OpenAI

在项目入口处配置并运行 XBrain:

from xbrain.core import run
from xbrain.utils.config import Config
from demo import *  # 导入工具定义

# 配置 OpenAI 信息(配置将保存在用户主目录下的 ~/.xbrain/config.yaml 文件中)
config = Config()
config.set_openai_config(
    base_url="https://api.openai.com/v1",  # 或其他兼容的 API 端点
    api_key="YOUR_OPENAI_API_KEY",
    model="gpt-4o-2024-08-06",
)

# 调用 run 函数与智能体交互
messages = [{"role": "user", "content": "请为主题\“Python\”生成标签"}]
response = run(messages, user_prompt="你是一个能调用工具的助手")
print(response)

📐结构化响应(可选)

如果你希望模型严格返回某个结构,可以传入 response_format 参数(Pydantic 模型):

from pydantic import BaseModel
from xbrain.core import run
from xbrain.utils.config import Config

# 配置 OpenAI(首次使用需要)
config = Config()
config.set_openai_config(
    base_url="https://api.openai.com/v1",
    api_key="YOUR_OPENAI_API_KEY",
    model="gpt-4o-2024-08-06",
)

# 定义响应结构
class Summary(BaseModel):
    title: str
    """总结的标题"""
    keywords: list[str]
    """总结的关键词列表"""

# 发送消息并指定响应格式
messages = [{"role": "user", "content": "请总结:Python 是一种广泛使用的解释型、高级和通用的编程语言。它支持多种编程范式,包括结构化、面向对象和函数式编程。Python 被设计为易于阅读和编写,具有简洁的语法。"}]
response = run(messages, user_prompt="结构化助手", response_format=Summary)
print(f"标题: {response.title}")
print(f"关键词: {response.keywords}")

🧩工作流 Agent

通过继承 Agent 类定义智能体节点,并通过 WorkFlow 类按顺序执行:

from xbrain.core import Agent, WorkFlow

class A(Agent):
    def run(self, input):
        return f"{input} -> 处理后的数据A"

class B(Agent):
    def run(self, input):
        return f"{input} -> 处理后的数据B"

# 创建工作流并指定执行顺序
workflow = WorkFlow([A, B])

# 执行工作流
result = workflow.run("起始输入")
print(result)  # "起始输入 -> 处理后的数据A -> 处理后的数据B"

全局上下文共享

WorkFlow 支持智能体间的全局上下文共享,通过 self.global_context 可以在不同智能体间传递数据:

from xbrain.core import Agent, WorkFlow

class A(Agent):
    def run(self, input):
        # 在全局上下文中存储数据
        self.global_context["a"] = "a"
        return "agent1 输出"

class B(Agent):
    def run(self, input):
        # 从全局上下文中获取数据
        return self.global_context["a"]

workflow = WorkFlow([A, B])
result = workflow.run("test input")
print(result)  # "a"

⚙️配置管理

XBrain 使用 Config 类管理配置信息,配置将保存在用户主目录下的 ~/.xbrain/config.yaml 文件中。

配置 OpenAI

from xbrain.utils.config import Config

config = Config()
config.set_openai_config(
    base_url="https://api.openai.com/v1",  # API 端点
    api_key="YOUR_OPENAI_API_KEY",  # 你的 API Key
    model="gpt-4o-2024-08-06",  # 使用的模型
)

获取当前配置

from xbrain.utils.config import Config

config = Config()
# 通过属性直接获取配置
print(f"当前模型: {config.OPENAI_MODEL}")
print(f"API 端点: {config.OPENAI_BASE_URL}")

# 或通过 load_config() 方法获取完整配置
full_config = config.load_config()
print(f"OpenAI 配置: {full_config['openai']}")

🤝如何贡献

你可以通过 Fork 项目、提交 PR 或在 Issue 中提出你的想法和建议。具体操作可参考 贡献指南

建议阅读 《提问的智慧》《如何向开源社区提问题》《如何有效地报告 Bug》《如何向开源项目提交无法解答的问题》

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