deep agents orchestration

- SubAgentMiddleware: Delegate work via task tool to specialized agents

Safety Notice

This listing is imported from skills.sh public index metadata. Review upstream SKILL.md and repository scripts before running.

Copy this and send it to your AI assistant to learn

Install skill "deep agents orchestration" with this command: npx skills add langchain-ai/langchain-skills/langchain-ai-langchain-skills-deep-agents-orchestration

  • SubAgentMiddleware: Delegate work via task tool to specialized agents

  • TodoListMiddleware: Plan and track tasks via write_todos tool

  • HumanInTheLoopMiddleware: Require approval before sensitive operations

All three are automatically included in create_deep_agent() .

Subagents (Task Delegation)

Use Subagents When Use Main Agent When

Task needs specialized tools General-purpose tools sufficient

Want to isolate complex work Single-step operation

Need clean context for main agent Context bloat acceptable

Default subagent: "general-purpose" - automatically available with same tools/config as main agent.

@tool def search_papers(query: str) -> str: """Search academic papers.""" return f"Found 10 papers about {query}"

agent = create_deep_agent( subagents=[ { "name": "researcher", "description": "Conduct web research and compile findings", "system_prompt": "Search thoroughly, return concise summary", "tools": [search_papers], } ] )

Main agent delegates: task(agent="researcher", instruction="Research AI trends")

</python> <typescript> Create a custom "researcher" subagent with specialized tools for academic paper search.

import { createDeepAgent } from "deepagents";
import { tool } from "@langchain/core/tools";
import { z } from "zod";

const searchPapers = tool(
  async ({ query }) => `Found 10 papers about ${query}`,
  { name: "search_papers", description: "Search papers", schema: z.object({ query: z.string() }) }
);

const agent = await createDeepAgent({
  subagents: [
    {
      name: "researcher",
      description: "Conduct web research and compile findings",
      systemPrompt: "Search thoroughly, return concise summary",
      tools: [searchPapers],
    }
  ]
});

// Main agent delegates: task(agent="researcher", instruction="Research AI trends")

agent = create_deep_agent(
subagents=[
{
"name": "code-deployer",
"description": "Deploy code to production",
"system_prompt": "You deploy code after tests pass.",
"tools": [run_tests, deploy_to_prod],
"interrupt_on": {"deploy_to_prod": True},  # Require approval
}
],
checkpointer=MemorySaver()  # Required for interrupts
)

&#x3C;/python>
&#x3C;/ex-subagent-with-hitl>

&#x3C;fix-subagents-are-stateless>
&#x3C;python>
Subagents are stateless - provide complete instructions in a single call.
```python
# WRONG: Subagents don't remember previous calls
# task(agent='research', instruction='Find data')
# task(agent='research', instruction='What did you find?')  # Starts fresh!

# CORRECT: Complete instructions upfront
# task(agent='research', instruction='Find data on AI, save to /research/, return summary')

// CORRECT: Complete instructions upfront
// task research: Find data on AI, save to /research/, return summary

&#x3C;/typescript>
&#x3C;/fix-subagents-are-stateless>

&#x3C;fix-custom-subagents-dont-inherit-skills>
&#x3C;python>
Custom subagents don't inherit skills from the main agent.
```python
# WRONG: Custom subagent won't have main agent's skills
agent = create_deep_agent(
    skills=["/main-skills/"],
    subagents=[{"name": "helper", ...}]  # No skills inherited
)

# CORRECT: Provide skills explicitly (general-purpose subagent DOES inherit)
agent = create_deep_agent(
    skills=["/main-skills/"],
    subagents=[{"name": "helper", "skills": ["/helper-skills/"], ...}]
)

TodoList (Task Planning)

Use TodoList When
Skip TodoList When

Complex multi-step tasks
Simple single-action tasks

Long-running operations
Quick operations (&#x3C; 3 steps)

Each todo item has:

- content
: Description of the task

- status
: One of "pending"
, "in_progress"
, "completed"

agent = create_deep_agent()  # TodoListMiddleware included by default

result = agent.invoke({
"messages": [{"role": "user", "content": "Create a REST API: design models, implement CRUD, add auth, write tests"}]
}, config={"configurable": {"thread_id": "session-1"}})

Agent's planning via write_todos:

[

{"content": "Design data models", "status": "in_progress"},

{"content": "Implement CRUD endpoints", "status": "pending"},

{"content": "Add authentication", "status": "pending"},

{"content": "Write tests", "status": "pending"}

]

&#x3C;/python>
&#x3C;typescript>
Invoke an agent that automatically creates a todo list for a multi-step task.
```typescript
import { createDeepAgent } from "deepagents";

const agent = await createDeepAgent();  // TodoListMiddleware included

const result = await agent.invoke({
  messages: [{ role: "user", content: "Create a REST API: design models, implement CRUD, add auth, write tests" }]
}, { configurable: { thread_id: "session-1" } });

Access todo list from final state

todos = result.get("todos", [])
for todo in todos:
print(f"[{todo['status']}] {todo['content']}")

&#x3C;/python>
&#x3C;/ex-access-todo-state>

&#x3C;fix-todolist-requires-thread-id>
&#x3C;python>
Todo list state requires a thread_id for persistence across invocations.
```python
# WRONG: Fresh state each time without thread_id
agent.invoke({"messages": [...]})

# CORRECT: Use thread_id
config = {"configurable": {"thread_id": "user-session"}}
agent.invoke({"messages": [...]}, config=config)  # Todos preserved

Human-in-the-Loop (Approval Workflows)

Use HITL When
Skip HITL When

High-stakes operations (DB writes, deployments)
Read-only operations

Compliance requires human oversight
Fully automated workflows

agent = create_deep_agent(
interrupt_on={
"write_file": True,  # All decisions allowed
"execute_sql": {"allowed_decisions": ["approve", "reject"]},
"read_file": False,  # No interrupts
},
checkpointer=MemorySaver()  # REQUIRED for interrupts
)

&#x3C;/python>
&#x3C;typescript>
Configure which tools require human approval before execution.
```typescript
import { createDeepAgent } from "deepagents";
import { MemorySaver } from "@langchain/langgraph";

const agent = await createDeepAgent({
  interruptOn: {
    write_file: true,
    execute_sql: { allowedDecisions: ["approve", "reject"] },
    read_file: false,
  },
  checkpointer: new MemorySaver()  // REQUIRED
});

agent = create_deep_agent(
interrupt_on={"write_file": True},
checkpointer=MemorySaver()
)

config = {"configurable": {"thread_id": "session-1"}}

Step 1: Agent proposes write_file - execution pauses

result = agent.invoke({
"messages": [{"role": "user", "content": "Write config to /prod.yaml"}]
}, config=config)

Step 2: Check for interrupts

state = agent.get_state(config)
if state.next:
print(f"Pending action")

Step 3: Approve and resume

result = agent.invoke(Command(resume={"decisions": [{"type": "approve"}]}), config=config)

&#x3C;/python>
&#x3C;typescript>
Complete workflow: trigger an interrupt, check state, approve action, and resume execution.
```typescript
import { createDeepAgent } from "deepagents";
import { MemorySaver, Command } from "@langchain/langgraph";

const agent = await createDeepAgent({
  interruptOn: { write_file: true },
  checkpointer: new MemorySaver()
});

const config = { configurable: { thread_id: "session-1" } };

// Step 1: Agent proposes write_file - execution pauses
let result = await agent.invoke({
  messages: [{ role: "user", content: "Write config to /prod.yaml" }]
}, config);

// Step 2: Check for interrupts
const state = await agent.getState(config);
if (state.next) {
  console.log("Pending action");
}

// Step 3: Approve and resume
result = await agent.invoke(
  new Command({ resume: { decisions: [{ type: "approve" }] } }), config
);

- Subagent names, tools, models, system prompts

- Which tools require approval

- Allowed decision types per tool

- TodoList content and structure

What Agents CANNOT Configure

- Tool names (task
, write_todos
)

- HITL protocol (approve/edit/reject structure)

- Skip checkpointer requirement for interrupts

- Make subagents stateful (they're ephemeral)

CORRECT

agent = create_deep_agent(interrupt_on={"write_file": True}, checkpointer=MemorySaver())

&#x3C;/python>
&#x3C;typescript>
Checkpointer is required when using interruptOn for HITL workflows.
```typescript
// WRONG
const agent = await createDeepAgent({ interruptOn: { write_file: true } });

// CORRECT
const agent = await createDeepAgent({ interruptOn: { write_file: true }, checkpointer: new MemorySaver() });

CORRECT

config = {"configurable": {"thread_id": "session-1"}}
agent.invoke({...}, config=config)

Resume with Command using same config

agent.invoke(Command(resume={"decisions": [{"type": "approve"}]}), config=config)

&#x3C;/python>
&#x3C;typescript>
A consistent thread_id is required to resume interrupted workflows.
```typescript
// WRONG: Can't resume without thread_id
await agent.invoke({ messages: [...] });

// CORRECT
const config = { configurable: { thread_id: "session-1" } };
await agent.invoke({ messages: [...] }, config);
// Resume with Command using same config
await agent.invoke(new Command({ resume: { decisions: [{ type: "approve" }] } }), config);

Source Transparency

This detail page is rendered from real SKILL.md content. Trust labels are metadata-based hints, not a safety guarantee.

Related Skills

Related by shared tags or category signals.

Web3

deep-agents-memory

No summary provided by upstream source.

Repository SourceNeeds Review
Web3

langgraph fundamentals

No summary provided by upstream source.

Repository SourceNeeds Review
Web3

langchain fundamentals

No summary provided by upstream source.

Repository SourceNeeds Review
Web3

langchain-rag

No summary provided by upstream source.

Repository SourceNeeds Review