langchain-fundamentals

Créez des agents LangChain avec create_agent, définissez des outils et utilisez un middleware pour l'intervention humaine et la gestion des erreurs.

npx skills add https://github.com/langchain-ai/skills-benchmarks --skill langchain-fundamentals
Build production agents using `create_agent()`, middleware patterns, and the `@tool` decorator / `tool()` function. When creating LangChain agents, you MUST use create_agent(), with middleware for custom flows. All other alternatives are outdated.

<create_agent>

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

ParameterPurposeExample
modelLLM to use"anthropic:claude-sonnet-4-5" or model instance
toolsList of tools[search, calculator]
system_prompt / systemPromptAgent instructions"You are a helpful assistant"
checkpointerState persistenceMemorySaver()
middlewareProcessing hooks[HumanInTheLoopMiddleware] (Python) / [humanInTheLoopMiddleware({...})] (TypeScript)
</create_agent>
```python from langchain.agents import create_agent from langchain_core.tools import tool

@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)

</python>
<typescript>
```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);
Add MemorySaver checkpointer to maintain conversation state across invocations. ```python from langchain.agents import create_agent from langgraph.checkpoint.memory import MemorySaver

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"
## Defining Tools

Tools are functions that agents can call. Use the @tool decorator (Python) or tool() function (TypeScript).

```python from langchain_core.tools import tool

@tool def calculate(expression: str) -> str: """Evaluate a mathematical expression.

Args:
    expression: Math expression like "2 + 2" or "10 * 5"
"""
return str(eval(expression))
</python>
<typescript>
```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 for Agent Control

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().

```python from langchain.agents import create_agent from pydantic import BaseModel, Field

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, [email protected], 555-1234")

ContactInfo(name='John', email='[email protected]', 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, [email protected], 555-1234");
// { name: 'John', email: '[email protected]', phone: '555-1234' }

<model_config>

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=[...])

</model_config>

Clear descriptions help the agent know when to use each tool. ```python # WRONG: Vague or missing description @tool def bad_tool(input: str) -> str: """Does stuff.""" return "result"

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)
</python>
<typescript>
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)"),
  }),
});
Add checkpointer and thread_id for conversation memory across invocations. ```python # WRONG: No persistence - agent forgets between calls agent = create_agent(model="anthropic:claude-sonnet-4-5", tools=[search]) agent.invoke({"messages": [{"role": "user", "content": "I'm Bob"}]}) agent.invoke({"messages": [{"role": "user", "content": "What's my name?"}]}) # Agent doesn't remember!

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"
Set recursion_limit in the invoke config to prevent runaway agent loops. ```python # WRONG: No iteration limit - could loop forever result = agent.invoke({"messages": [("user", "Do research")]})

CORRECT: Set recursion_limit in config

result = agent.invoke( {"messages": [("user", "Do research")]}, config={"recursion_limit": 10}, # Stop after 10 steps )

</python>
<typescript>
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
);
Access the messages array from the result, not result.content directly. ```python # WRONG: Trying to access result.content directly result = agent.invoke({"messages": [{"role": "user", "content": "Hello"}]}) print(result.content) # AttributeError!

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

Plus de skills de langchain-ai

arxiv-search
langchain-ai
Recherche dans arXiv des prépublications et articles académiques par sujet avec récupération des résumés. Recherche par requête en physique, mathématiques, informatique, biologie, statistiques et domaines connexes. Limite de résultats configurable (10 articles par défaut) avec résultats triés par pertinence. Renvoie le titre et le résumé de chaque article correspondant. Nécessite le package Python arxiv ; installez-le via pip s'il n'est pas déjà présent.
official
blog-post
langchain-ai
Rédaction d'articles de blog longs avec délégation de recherche, modèles de contenu structurés et images de couverture générées par IA. Délègue la recherche à des sous-agents avant la rédaction, stocke les résultats en markdown pour référence et contexte. Impose une structure en cinq parties : accroche, contexte, contenu principal (3 à 5 sections), application pratique et conclusion avec appel à l'action. Génère des images de couverture optimisées pour le référencement à l'aide de prompts détaillés couvrant le sujet, le style, la composition, la couleur et l'éclairage. Produit des articles vers...
official
code-review
langchain-ai
Effectuer une revue de code structurée des modifications, en vérifiant l'exactitude, le style, les tests et les problèmes potentiels.
official
coding-prefs
langchain-ai
Lire les préférences de codage de l'utilisateur depuis /memory/coding-prefs.md avant de prendre des décisions de style non triviales, et ajouter de nouvelles préférences lorsque l'utilisateur donne…
official
competitor-analysis
langchain-ai
Lorsqu'on lui demande d'analyser des concurrents :
official
cudf-analytics
langchain-ai
Utiliser pour l'analyse de données accélérée par GPU sur des ensembles de données, des CSV ou des données tabulaires avec NVIDIA cuDF. Se déclenche lorsque les tâches impliquent des agrégations groupby, des statistiques…
official
cuml-machine-learning
langchain-ai
Utiliser pour l'apprentissage automatique accéléré par GPU sur des données tabulaires avec NVIDIA cuML. Se déclenche lorsque les tâches impliquent la classification, la régression, le clustering, la réduction de dimensionnalité…
official
data-visualization
langchain-ai
Utiliser pour créer des graphiques de qualité publication et des résumés d'analyse multi-panneaux. Se déclenche lorsque les tâches impliquent la visualisation de données, le traçage de résultats, la création…
official