website/docs/user-guide/features/delegation.md
The delegate_task tool spawns child AIAgent instances with isolated context, restricted toolsets, and their own terminal sessions. Each child gets a fresh conversation and works independently — only its final summary enters the parent's context.
delegate_task(
goal="Debug why tests fail",
context="Error: assertion in test_foo.py line 42",
toolsets=["terminal", "file"]
)
Up to 3 concurrent subagents by default (configurable, no hard ceiling):
delegate_task(tasks=[
{"goal": "Research topic A", "toolsets": ["web"]},
{"goal": "Research topic B", "toolsets": ["web"]},
{"goal": "Fix the build", "toolsets": ["terminal", "file"]}
])
:::warning Critical: Subagents Know Nothing
Subagents start with a completely fresh conversation. They have zero knowledge of the parent's conversation history, prior tool calls, or anything discussed before delegation. The subagent's only context comes from the goal and context fields the parent agent populates when it calls delegate_task.
:::
This means the parent agent must pass everything the subagent needs in the call:
# BAD - subagent has no idea what "the error" is
delegate_task(goal="Fix the error")
# GOOD - subagent has all context it needs
delegate_task(
goal="Fix the TypeError in api/handlers.py",
context="""The file api/handlers.py has a TypeError on line 47:
'NoneType' object has no attribute 'get'.
The function process_request() receives a dict from parse_body(),
but parse_body() returns None when Content-Type is missing.
The project is at /home/user/myproject and uses Python 3.11."""
)
The subagent receives a focused system prompt built from your goal and context, instructing it to complete the task and provide a structured summary of what it did, what it found, any files modified, and any issues encountered.
Research multiple topics simultaneously and collect summaries:
delegate_task(tasks=[
{
"goal": "Research the current state of WebAssembly in 2025",
"context": "Focus on: browser support, non-browser runtimes, language support",
"toolsets": ["web"]
},
{
"goal": "Research the current state of RISC-V adoption in 2025",
"context": "Focus on: server chips, embedded systems, software ecosystem",
"toolsets": ["web"]
},
{
"goal": "Research quantum computing progress in 2025",
"context": "Focus on: error correction breakthroughs, practical applications, key players",
"toolsets": ["web"]
}
])
Delegate a review-and-fix workflow to a fresh context:
delegate_task(
goal="Review the authentication module for security issues and fix any found",
context="""Project at /home/user/webapp.
Auth module files: src/auth/login.py, src/auth/jwt.py, src/auth/middleware.py.
The project uses Flask, PyJWT, and bcrypt.
Focus on: SQL injection, JWT validation, password handling, session management.
Fix any issues found and run the test suite (pytest tests/auth/).""",
toolsets=["terminal", "file"]
)
Delegate a large refactoring task that would flood the parent's context:
delegate_task(
goal="Refactor all Python files in src/ to replace print() with proper logging",
context="""Project at /home/user/myproject.
Use the 'logging' module with logger = logging.getLogger(__name__).
Replace print() calls with appropriate log levels:
- print(f"Error: ...") -> logger.error(...)
- print(f"Warning: ...") -> logger.warning(...)
- print(f"Debug: ...") -> logger.debug(...)
- Other prints -> logger.info(...)
Don't change print() in test files or CLI output.
Run pytest after to verify nothing broke.""",
toolsets=["terminal", "file"]
)
When you provide a tasks array, subagents run in parallel using a thread pool:
delegation.max_concurrent_children or the DELEGATION_MAX_CONCURRENT_CHILDREN env var; floor of 1, no hard ceiling). Batches larger than the limit return a tool error rather than being silently truncated.ThreadPoolExecutor with the configured concurrency limit as max workersSingle-task delegation runs directly without thread pool overhead.
You can configure a different model for subagents via config.yaml — useful for delegating simple tasks to cheaper/faster models:
# In ~/.hermes/config.yaml
delegation:
model: "google/gemini-flash-2.0" # Cheaper model for subagents
provider: "openrouter" # Optional: route subagents to a different provider
If omitted, subagents use the same model as the parent.
The toolsets parameter controls what tools the subagent has access to. Choose based on the task:
| Toolset Pattern | Use Case |
|---|---|
["terminal", "file"] | Code work, debugging, file editing, builds |
["web"] | Research, fact-checking, documentation lookup |
["terminal", "file", "web"] | Full-stack tasks (default) |
["file"] | Read-only analysis, code review without execution |
["terminal"] | System administration, process management |
Certain toolsets are blocked for subagents regardless of what you specify:
delegation — blocked for leaf subagents (the default). Retained for role="orchestrator" children, bounded by max_spawn_depth — see Depth Limit and Nested Orchestration below.clarify — subagents cannot interact with the usermemory — no writes to shared persistent memorycode_execution — children should reason step-by-stepsend_message — no cross-platform side effects (e.g., sending Telegram messages)Each subagent has an iteration limit (default: 50) that controls how many tool-calling turns it can take:
delegate_task(
goal="Quick file check",
context="Check if /etc/nginx/nginx.conf exists and print its first 10 lines",
max_iterations=10 # Simple task, don't need many turns
)
Subagents are killed as stuck if they go quiet for more than delegation.child_timeout_seconds wall-clock seconds. The default is 600 (10 minutes) — bumped up from 300s in earlier releases because high-reasoning models on non-trivial research tasks were getting killed mid-think. Tune it per-install:
delegation:
child_timeout_seconds: 600 # default
Lower it for fast local models; raise it for slow reasoning models on hard problems. The timer resets every time the child makes an API call or tool call — only genuinely idle workers trigger the kill.
:::tip Diagnostic dump on zero-call timeout
If a subagent times out having made zero API calls (usually: provider unreachable, auth failure, or tool-schema rejection), delegate_task writes a structured diagnostic to ~/.hermes/logs/subagent-timeout-<session>-<timestamp>.log containing the subagent's config snapshot, credential-resolution trace, and any early error messages. Much easier to root-cause than the previous silent-timeout behavior.
:::
/agents)The TUI ships a /agents overlay (alias /tasks) that turns recursive delegate_task fan-out into a first-class audit surface:
The classic CLI just prints /agents as a text summary; the TUI is where the overlay shines. See TUI — Slash commands.
By default, delegation is flat: a parent (depth 0) spawns children (depth 1), and those children cannot delegate further. This prevents runaway recursive delegation.
For multi-stage workflows (research → synthesis, or parallel orchestration over sub-problems), a parent can spawn orchestrator children that can delegate their own workers:
delegate_task(
goal="Survey three code review approaches and recommend one",
role="orchestrator", # Allows this child to spawn its own workers
context="...",
)
role="leaf" (default): child cannot delegate further — identical to the flat-delegation behavior.role="orchestrator": child retains the delegation toolset. Gated by delegation.max_spawn_depth (default 1 = flat, so role="orchestrator" is a no-op at defaults). Raise max_spawn_depth to 2 to allow orchestrator children to spawn leaf grandchildren; 3+ for deeper trees. There is no upper ceiling — cost is the practical limit.delegation.orchestrator_enabled: false: global kill switch that forces every child to leaf regardless of the role parameter.Cost warning: With max_spawn_depth: 3 and max_concurrent_children: 3, the tree can reach 3×3×3 = 27 concurrent leaf agents. Each extra level multiplies spend — raise max_spawn_depth intentionally.
:::warning delegate_task is synchronous — not durable
delegate_task runs inside the parent's current turn. It blocks the parent until every child finishes (or is cancelled). It is not a background job queue:
/stop, /new), all active children are cancelled and return status="interrupted". Their in-progress work is discarded.status="interrupted", exit_reason="interrupted"), but because the parent was interrupted too, that result often never makes it into a user-visible reply.For durable long-running work that must survive interrupts or outlive the current turn, use:
cronjob (action=create) — schedules a separate agent run; immune to parent-turn interrupts.terminal(background=True, notify_on_complete=True) — long-running shell commands that keep running while the agent does other things.
:::role="orchestrator" children can delegate further, and only when max_spawn_depth is raised from its default of 1 (flat). Disable globally with orchestrator_enabled: false.delegate_task, clarify, memory, send_message, execute_code. Orchestrator subagents retain delegate_task but still cannot use the other four.| Factor | delegate_task | execute_code |
|---|---|---|
| Reasoning | Full LLM reasoning loop | Just Python code execution |
| Context | Fresh isolated conversation | No conversation, just script |
| Tool access | All non-blocked tools with reasoning | 7 tools via RPC, no reasoning |
| Parallelism | 3 concurrent subagents by default (configurable) | Single script |
| Best for | Complex tasks needing judgment | Mechanical multi-step pipelines |
| Token cost | Higher (full LLM loop) | Lower (only stdout returned) |
| User interaction | None (subagents can't clarify) | None |
Rule of thumb: Use delegate_task when the subtask requires reasoning, judgment, or multi-step problem solving. Use execute_code when you need mechanical data processing or scripted workflows.
# In ~/.hermes/config.yaml
delegation:
max_iterations: 50 # Max turns per child (default: 50)
# max_concurrent_children: 3 # Parallel children per batch (default: 3)
# max_spawn_depth: 1 # Tree depth (floor 1, no ceiling, default 1 = flat). Raise to 2 to allow orchestrator children to spawn leaves; 3+ for deeper trees.
# orchestrator_enabled: true # Disable to force all children to leaf role.
model: "google/gemini-3-flash-preview" # Optional provider/model override
provider: "openrouter" # Optional built-in provider
api_mode: anthropic_messages # optional; auto-detected from base_url for anthropic_messages endpoints
# Or use a direct custom endpoint instead of provider:
delegation:
model: "qwen2.5-coder"
base_url: "http://localhost:1234/v1"
api_key: "local-key"
# api_mode: "anthropic_messages" # Optional. Wire protocol override for base_url ("chat_completions", "codex_responses", or "anthropic_messages"). Empty = auto-detect from URL (e.g. /anthropic suffix). Set explicitly for endpoints the heuristic can't classify (Azure AI Foundry, MiniMax, Zhipu GLM, LiteLLM proxies, …).
When base_url points at an Anthropic-compatible endpoint — for example a path ending in /anthropic, an Azure Foundry Claude route, or a MiniMax /anthropic proxy — api_mode is auto-detected as anthropic_messages so the subagent uses the right wire format without you setting anything. Set api_mode explicitly when the auto-detection guess is wrong (rare).
:::tip The agent handles delegation automatically based on the task complexity. You don't need to explicitly ask it to delegate — it will do so when it makes sense. :::