langchain-fundamentals

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排名: #908

安装

npx skills add https://github.com/langchain-ai/langchain-skills --skill langchain-fundamentals

Creating Agents with create_agent create_agent() is the recommended way to build agents. It handles the agent loop, tool execution, and state management. Agent Configuration Options Parameter Purpose Example model LLM to use "anthropic:claude-sonnet-4-5" or model instance tools List of tools [search, calculator] system_prompt / systemPrompt Agent instructions "You are a helpful assistant" checkpointer State persistence MemorySaver() middleware Processing hooks [HumanInTheLoopMiddleware] (Python) / [humanInTheLoopMiddleware({...})] (TypeScript) @tool def get_weather(location: str) -> str: """Get current weather for a location. Args: location: City name """ return f"Weather in {location}: Sunny, 72F" agent = create_agent( model="anthropic:claude-sonnet-4-5", tools=[get_weather], system_prompt="You are a helpful assistant." ) result = agent.invoke({ "messages": [{"role": "user", "content": "What's the weather in Paris?"}] }) print(result["messages"][-1].content) typescript import { createAgent } from "langchain"; import { tool } from "@langchain/core/tools"; import { z } from "zod"; const getWeather = tool( async ({ location }) => `Weather in ${location}: Sunny, 72F`, { name: "get_weather", description: "Get current weather for a location.", schema: z.object({ location: z.string().describe("City name") }), } ); const agent = createAgent({ model: "anthropic:claude-sonnet-4-5", tools: [getWeather], systemPrompt: "You are a helpful assistant.", }); const result = await agent.invoke({ messages: [{ role: "user", content: "What's the weather in Paris?" }], }); console.log(result.messages[result.messages.length - 1].content); checkpointer = MemorySaver() agent = create_agent( model="anthropic:claude-sonnet-4-5", tools=[search], checkpointer=checkpointer, ) config = {"configurable": {"thread_id": "user-123"}} agent.invoke({"messages": [{"role": "user", "content": "My name is Alice"}]}, config=config) result = agent.invoke({"messages": [{"role": "user", "content": "What's my name?"}]}, config=config) Agent remembers: "Your name is Alice" </python> <typescript> Add MemorySaver checkpointer to maintain conversation state across invocations.typescript import { createAgent } from "langchain"; import { MemorySaver } from "@langchain/langgraph"; const checkpointer = new MemorySaver(); const agent = createAgent({ model: "anthropic:claude-sonnet-4-5", tools: [search], checkpointer, }); const config = { configurable: { thread_id: "user-123" } }; await agent.invoke({ messages: [{ role: "user", content: "My name is Alice" }] }, config); const result = await agent.invoke({ messages: [{ role: "user", content: "What's my name?" }] }, config); // Agent remembers: "Your name is Alice" Tools are functions that agents can call. Use the @tool decorator (Python) or tool() function (TypeScript). @tool def calculate(expression: str) -> str: """Evaluate a mathematical expression. Args: expression: Math expression like "2 + 2" or "10 * 5" """ return str(eval(expression)) typescript import { tool } from "@langchain/core/tools"; import { z } from "zod"; const calculate = tool( async ({ expression }) => String(eval(expression)), { name: "calculate", description: "Evaluate a mathematical expression.", schema: z.object({ expression: z.string().describe("Math expression like '2 + 2' or '10 * 5'"), }), } ); Middleware intercepts the agent loop to add human approval, error handling, logging, and more. A deep understanding of middleware is essential for production agents — use HumanInTheLoopMiddleware (Python) / humanInTheLoopMiddleware (TypeScript) for approval workflows, and @wrap_tool_call (Python) / createMiddleware (TypeScript) for custom hooks. Key imports: from langchain . agents . middleware import HumanInTheLoopMiddleware , wrap_tool_call import { humanInTheLoopMiddleware , createMiddleware } from "langchain" ; Key patterns: HITL : middleware=[HumanInTheLoopMiddleware(interrupt_on={"dangerous_tool": True})] — requires checkpointer + thread_id Resume after interrupt : agent.invoke(Command(resume={"decisions": [{"type": "approve"}]}), config=config) Custom middleware : @wrap_tool_call decorator (Python) or createMiddleware({ wrapToolCall: ... }) (TypeScript) <structured_output> Structured Output Get typed, validated responses from agents using response_format or with_structured_output() . class ContactInfo(BaseModel): name: str email: str phone: str = Field(description="Phone number with area code") Option 1: Agent with structured output agent = create_agent(model="gpt-4.1", tools=[search], response_format=ContactInfo) result = agent.invoke({"messages": [{"role": "user", "content": "Find contact for John"}]}) print(result["structured_response"]) # ContactInfo(name='John', ...) Option 2: Model-level structured output (no agent needed) from langchain_openai import ChatOpenAI model = ChatOpenAI(model="gpt-4.1") structured_model = model.with_structured_output(ContactInfo) response = structured_model.invoke("Extract: John, john@example.com , 555-1234") ContactInfo(name='John', email=' john@example.com ', phone='555-1234') </python> <typescript>typescript import { ChatOpenAI } from "@langchain/openai"; import { z } from "zod"; const ContactInfo = z.object({ name: z.string(), email: z.string().email(), phone: z.string().describe("Phone number with area code"), }); // Model-level structured output const model = new ChatOpenAI({ model: "gpt-4.1" }); const structuredModel = model.withStructuredOutput(ContactInfo); const response = await structuredModel.invoke("Extract: John, john@example.com, 555-1234"); // { name: 'John', email: 'john@example.com', phone: '555-1234' } Model Configuration create_agent accepts model strings ( "anthropic:claude-sonnet-4-5" , "openai:gpt-4.1" ) or model instances for custom settings: from langchain_anthropic import ChatAnthropic agent = create_agent ( model = ChatAnthropic ( model = "claude-sonnet-4-5" , temperature = 0 ) , tools = [ . . . ] ) CORRECT: Clear, specific description with Args @tool def search(query: str) -> str: """Search the web for current information about a topic. Use this when you need recent data or facts. Args: query: The search query (2-10 words recommended) """ return web_search(query) Clear descriptions help the agent know when to use each tool. typescript // WRONG: Vague description const badTool = tool(async ({ input }) => "result", { name: "bad_tool", description: "Does stuff.", // Too vague! schema: z.object({ input: z.string() }), }); // CORRECT: Clear, specific description const search = tool(async ({ query }) => webSearch(query), { name: "search", description: "Search the web for current information about a topic. Use this when you need recent data or facts.", schema: z.object({ query: z.string().describe("The search query (2-10 words recommended)"), }), }); CORRECT: Add checkpointer and thread_id from langgraph.checkpoint.memory import MemorySaver agent = create_agent( model="anthropic:claude-sonnet-4-5", tools=[search], checkpointer=MemorySaver(), ) config = {"configurable": {"thread_id": "session-1"}} agent.invoke({"messages": [{"role": "user", "content": "I'm Bob"}]}, config=config) agent.invoke({"messages": [{"role": "user", "content": "What's my name?"}]}, config=config) Agent remembers: "Your name is Bob" </python> <typescript> Add checkpointer and thread_id for conversation memory across invocations.typescript // WRONG: No persistence const agent = createAgent({ model: "anthropic:claude-sonnet-4-5", tools: [search] }); await agent.invoke({ messages: [{ role: "user", content: "I'm Bob" }] }); await agent.invoke({ messages: [{ role: "user", content: "What's my name?" }] }); // Agent doesn't remember! // CORRECT: Add checkpointer and thread_id import { MemorySaver } from "@langchain/langgraph"; const agent = createAgent({ model: "anthropic:claude-sonnet-4-5", tools: [search], checkpointer: new MemorySaver(), }); const config = { configurable: { thread_id: "session-1" } }; await agent.invoke({ messages: [{ role: "user", content: "I'm Bob" }] }, config); await agent.invoke({ messages: [{ role: "user", content: "What's my name?" }] }, config); // Agent remembers: "Your name is Bob" CORRECT: Set recursion_limit in config result = agent.invoke( {"messages": [("user", "Do research")]}, config={"recursion_limit": 10}, # Stop after 10 steps ) Set recursionLimit in the invoke config to prevent runaway agent loops. typescript // WRONG: No iteration limit const result = await agent.invoke({ messages: [["user", "Do research"]] }); // CORRECT: Set recursionLimit in config const result = await agent.invoke( { messages: [["user", "Do research"]] }, { recursionLimit: 10 }, // Stop after 10 steps ); CORRECT: Access messages from result dict result = agent.invoke({"messages": [{"role": "user", "content": "Hello"}]}) print(result["messages"][-1].content) # Last message content </python> <typescript> Access the messages array from the result, not result.content directly.typescript // WRONG: Trying to access result.content directly const result = await agent.invoke({ messages: [{ role: "user", content: "Hello" }] }); console.log(result.content); // undefined! // CORRECT: Access messages from result object const result = await agent.invoke({ messages: [{ role: "user", content: "Hello" }] }); console.log(result.messages[result.messages.length - 1].content); // Last message content

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