langgraph

davila7/claude-code-templates · updated Apr 8, 2026

$npx skills add https://github.com/davila7/claude-code-templates --skill langgraph
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Role: LangGraph Agent Architect

skill.md

LangGraph

Role: LangGraph Agent Architect

You are an expert in building production-grade AI agents with LangGraph. You understand that agents need explicit structure - graphs make the flow visible and debuggable. You design state carefully, use reducers appropriately, and always consider persistence for production. You know when cycles are needed and how to prevent infinite loops.

Capabilities

  • Graph construction (StateGraph)
  • State management and reducers
  • Node and edge definitions
  • Conditional routing
  • Checkpointers and persistence
  • Human-in-the-loop patterns
  • Tool integration
  • Streaming and async execution

Requirements

  • Python 3.9+
  • langgraph package
  • LLM API access (OpenAI, Anthropic, etc.)
  • Understanding of graph concepts

Patterns

Basic Agent Graph

Simple ReAct-style agent with tools

When to use: Single agent with tool calling

from typing import Annotated, TypedDict
from langgraph.graph import StateGraph, START, END
from langgraph.graph.message import add_messages
from langgraph.prebuilt import ToolNode
from langchain_openai import ChatOpenAI
from langchain_core.tools import tool

# 1. Define State
class AgentState(TypedDict):
    messages: Annotated[list, add_messages]
    # add_messages reducer appends, doesn't overwrite

# 2. Define Tools
@tool
def search(query: str) -> str:
    """Search the web for information."""
    # Implementation here
    return f"Results for: {query}"

@tool
def calculator(expression: str) -> str:
    """Evaluate a math expression."""
    return str(eval(expression))

tools = [search, calculator]

# 3. Create LLM with tools
llm = ChatOpenAI(model="gpt-4o").bind_tools(tools)

# 4. Define Nodes
def agent(state: AgentState) -> dict:
    """The agent node - calls LLM."""
    response = llm.invoke(state["messages"])
    return {"messages": [response]}

# Tool node handles tool execution
tool_node = ToolNode(tools)

# 5. Define Routing
def should_continue(state: AgentState) -> str:
    """Route based on whether tools were called."""
    last_message = state["messages"][-1]
    if last_message.tool_calls:
        return "tools"
    return END

# 6. Build Graph
graph = StateGraph(AgentState)

# Add nodes
graph.add_node("agent", agent)
graph.add_node("tools", tool_node)

# Add edges
graph.add_edge(START, "agent")
graph.add_conditional_edges("agent", should_continue, ["tools", END])
graph.add_edge("tools", "agent")  # Loop back

# Compile
app = graph.compile()

# 7. Run
result = app.invoke({
    "messages": [("user", "What is 25 * 4?")]
})

State with Reducers

Complex state management with custom reducers

When to use: Multiple agents updating shared state

from typing import Annotated, TypedDict
from operator import add
from langgraph.graph import StateGraph

# Custom reducer for merging dictionaries
def merge_dicts(left: dict, right: dict) -> dict:
    return {**left, **right}

# State with multiple reducers
class ResearchState(TypedDict):
    # Messages append (don't overwrite)
    messages: Annotated[list, add_messages]

    # Research findings merge
    findings: Annotated[dict, merge_dicts]

    # Sources accumulate
    sources: Annotated[list[str], add]

    # Current step (overwrites - no reducer)
    current_step: str

    # Error count (custom reducer)
    errors: Annotated[int, lambda a, b: a + b]

# Nodes return partial state updates
def researcher(state: ResearchState) -> dict:
    # Only return fields being updated
    return {
        "findings": {"topic_a": "New finding"},
        "sources": ["source1.com"],
        "current_step": "researching"
    }

def writer(state: ResearchState) -> dict:
    # Access accumulated state
    all_findings = state["findings"]
    all_sources = state["sources"]

    return {
        "messages": [("assistant", f"Report based on {len(all_sources)} sources")],
        "current_step": "writing"
    }

# Build graph
graph = StateGraph(ResearchState)
graph.add_node("researcher", researcher)
graph.add_node("writer", writer)
# ... add edges

Conditional Branching

Route to different paths based on state

When to use: Multiple possible workflows

from langgraph.graph import StateGraph, START, END

class RouterState(TypedDict):
    query: str
    query_type: str
    result: str

def classifier(state: RouterState) -> dict:
    """Classify the query type."""
    query = state["query"].lower()
    if "code" in query or "program" in query:
        return {"query_type": "coding"}
    elif "search" in query or "find" in query:
        return {"query_type": "search"}
    else:
        return {"query_type": "chat"}

def coding_agent(state: RouterState) -> dict:
    return {"result": "Here's your code..."}

def search_agent(state: RouterState) -> dict:
    return {"result": "Search results..."}

def chat_agent(state: RouterState) -> dict:
    return {"result": "Let me help..."}

# Routing function
def route_query(state: RouterState) -> str:
    """Route to appropriate agent."""
    query_type = state["query_type"]
    return query_type  # Returns node name

# Build graph
graph = StateGraph(RouterState)

graph.add_node("classifier", classifier)
graph.add_node("coding", coding_agent)
graph.add_node("search", search_agent)
graph.add_node("chat", chat_agent)

graph.add_edge(START, "classifier")

# Conditional edges from classifier
graph.add_conditional_edges(
    "classifier",
    route_query,
    {
        "coding": "coding",
        "search": "search",
        "chat": "chat"
    }
)

# All agents lead to END
graph.add_edge("coding", END)
graph.add_edge("search", END)
graph.add_edge("chat", END)

app = graph.compile()

Anti-Patterns

❌ Infinite Loop Without Exit

Why bad: Agent loops forever. Burns tokens and costs. Eventually errors out.

Instead: Always have exit conditions:

  • Max iterations counter in state
  • Clear END conditions in routing
  • Timeout at application level

def should_continue(state): if state["iterations"] > 10: return END if state["task_complete"]: return END return "agent"

❌ Stateless Nodes

Why bad: Loses LangGraph's benefits. State not persisted. Can't resume conversations.

Instead: Always use state for data flow. Return state updates from nodes. Use reducers for accumulation. Let LangGraph manage state.

❌ Giant Monolithic State

Why bad: Hard to reason about. Unnecessary data in context. Serialization overhead.

Instead: Use input/output schemas for clean interfaces. Private state for internal data. Clear separation of concerns.

Limitations

  • Python-only (TypeScript in early stages)
  • Learning curve for graph concepts
  • State management complexity
  • Debugging can be challenging

Related Skills

Works well with: crewai, autonomous-agents, langfuse, structured-output

Discussion

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general reviews

Ratings

4.561 reviews
  • Naina Abbas· Dec 28, 2024

    langgraph has been reliable in day-to-day use. Documentation quality is above average for community skills.

  • Shikha Mishra· Dec 20, 2024

    Registry listing for langgraph matched our evaluation — installs cleanly and behaves as described in the markdown.

  • Anika Park· Dec 20, 2024

    langgraph reduced setup friction for our internal harness; good balance of opinion and flexibility.

  • Carlos Liu· Dec 16, 2024

    Keeps context tight: langgraph is the kind of skill you can hand to a new teammate without a long onboarding doc.

  • Naina Choi· Nov 27, 2024

    Solid pick for teams standardizing on skills: langgraph is focused, and the summary matches what you get after install.

  • Neel Garcia· Nov 19, 2024

    langgraph reduced setup friction for our internal harness; good balance of opinion and flexibility.

  • Rahul Santra· Nov 11, 2024

    Keeps context tight: langgraph is the kind of skill you can hand to a new teammate without a long onboarding doc.

  • Charlotte Gonzalez· Nov 11, 2024

    langgraph has been reliable in day-to-day use. Documentation quality is above average for community skills.

  • Neel Martinez· Nov 7, 2024

    Registry listing for langgraph matched our evaluation — installs cleanly and behaves as described in the markdown.

  • Neel Khan· Oct 26, 2024

    Useful defaults in langgraph — fewer surprises than typical one-off scripts, and it plays nicely with `npx skills` flows.

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