# Subagents (experimental) Subagents are specialized agents that operate within your main Gemini CLI session. They are designed to handle specific, complex tasks—like deep codebase analysis, documentation lookup, or domain-specific reasoning—without cluttering the main agent's context or toolset. > **Note: Subagents are currently an experimental feature.** > > To use custom subagents, you must explicitly enable them in your > `settings.json`: > > ```json > { > "experimental": { "enableAgents": true } > } > ``` > > **Warning:** Subagents currently operate in > ["YOLO mode"](../reference/configuration.md#command-line-arguments), meaning > they may execute tools without individual user confirmation for each step. > Proceed with caution when defining agents with powerful tools like > `run_shell_command` or `write_file`. ## What are subagents? Subagents are "specialists" that the main Gemini agent can hire for a specific job. - **Focused context:** Each subagent has its own system prompt and persona. - **Specialized tools:** Subagents can have a restricted or specialized set of tools. - **Independent context window:** Interactions with a subagent happen in a separate context loop, which saves tokens in your main conversation history. Subagents are exposed to the main agent as a tool of the same name. When the main agent calls the tool, it delegates the task to the subagent. Once the subagent completes its task, it reports back to the main agent with its findings. ## How to use subagents You can use subagents through automatic delegation or by explicitly forcing them in your prompt. ### Automatic delegation Gemini CLI's main agent is instructed to use specialized subagents when a task matches their expertise. For example, if you ask "How does the auth system work?", the main agent may decide to call the `codebase_investigator` subagent to perform the research. ### Forcing a subagent (@ syntax) You can explicitly direct a task to a specific subagent by using the `@` symbol followed by the subagent's name at the beginning of your prompt. This is useful when you want to bypass the main agent's decision-making and go straight to a specialist. **Example:** ```bash @codebase_investigator Map out the relationship between the AgentRegistry and the LocalAgentExecutor. ``` When you use the `@` syntax, the CLI injects a system note that nudges the primary model to use that specific subagent tool immediately. ## Built-in subagents Gemini CLI comes with the following built-in subagents: ### Codebase Investigator - **Name:** `codebase_investigator` - **Purpose:** Analyze the codebase, reverse engineer, and understand complex dependencies. - **When to use:** "How does the authentication system work?", "Map out the dependencies of the `AgentRegistry` class." - **Configuration:** Enabled by default. You can override its settings in `settings.json` under `agents.overrides`. Example (forcing a specific model and increasing turns): ```json { "agents": { "overrides": { "codebase_investigator": { "modelConfig": { "model": "gemini-3-flash-preview" }, "runConfig": { "maxTurns": 50 } } } } } ``` ### CLI Help Agent - **Name:** `cli_help` - **Purpose:** Get expert knowledge about Gemini CLI itself, its commands, configuration, and documentation. - **When to use:** "How do I configure a proxy?", "What does the `/rewind` command do?" - **Configuration:** Enabled by default. ### Generalist Agent - **Name:** `generalist_agent` - **Purpose:** Route tasks to the appropriate specialized subagent. - **When to use:** Implicitly used by the main agent for routing. Not directly invoked by the user. - **Configuration:** Enabled by default. No specific configuration options. ### Browser Agent (experimental) - **Name:** `browser_agent` - **Purpose:** Automate web browser tasks — navigating websites, filling forms, clicking buttons, and extracting information from web pages — using the accessibility tree. - **When to use:** "Go to example.com and fill out the contact form," "Extract the pricing table from this page," "Click the login button and enter my credentials." > **Note:** This is a preview feature currently under active development. #### Prerequisites The browser agent requires: - **Chrome** version 144 or later (any recent stable release will work). - **Node.js** with `npx` available (used to launch the [`chrome-devtools-mcp`](https://www.npmjs.com/package/chrome-devtools-mcp) server). #### Enabling the browser agent The browser agent is disabled by default. Enable it in your `settings.json`: ```json { "agents": { "overrides": { "browser_agent": { "enabled": true } } } } ``` #### Session modes The `sessionMode` setting controls how Chrome is launched and managed. Set it under `agents.browser`: ```json { "agents": { "overrides": { "browser_agent": { "enabled": true } }, "browser": { "sessionMode": "persistent" } } } ``` The available modes are: | Mode | Description | | :----------- | :------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------ | | `persistent` | **(Default)** Launches Chrome with a persistent profile stored at `~/.gemini/cli-browser-profile/`. Cookies, history, and settings are preserved between sessions. | | `isolated` | Launches Chrome with a temporary profile that is deleted after each session. Use this for clean-state automation. | | `existing` | Attaches to an already-running Chrome instance. You must enable remote debugging first by navigating to `chrome://inspect/#remote-debugging` in Chrome. No new browser process is launched. | #### Configuration reference All browser-specific settings go under `agents.browser` in your `settings.json`. | Setting | Type | Default | Description | | :------------ | :-------- | :------------- | :---------------------------------------------------------------------------------------------- | | `sessionMode` | `string` | `"persistent"` | How Chrome is managed: `"persistent"`, `"isolated"`, or `"existing"`. | | `headless` | `boolean` | `false` | Run Chrome in headless mode (no visible window). | | `profilePath` | `string` | — | Custom path to a browser profile directory. | | `visualModel` | `string` | — | Model override for the visual agent (for example, `"gemini-2.5-computer-use-preview-10-2025"`). | #### Security The browser agent enforces the following security restrictions: - **Blocked URL patterns:** `file://`, `javascript:`, `data:text/html`, `chrome://extensions`, and `chrome://settings/passwords` are always blocked. - **Sensitive action confirmation:** Actions like form filling, file uploads, and form submissions require user confirmation through the standard policy engine. #### Visual agent By default, the browser agent interacts with pages through the accessibility tree using element `uid` values. For tasks that require visual identification (for example, "click the yellow button" or "find the red error message"), you can enable the visual agent by setting a `visualModel`: ```json { "agents": { "overrides": { "browser_agent": { "enabled": true } }, "browser": { "visualModel": "gemini-2.5-computer-use-preview-10-2025" } } } ``` When enabled, the agent gains access to the `analyze_screenshot` tool, which captures a screenshot and sends it to the vision model for analysis. The model returns coordinates and element descriptions that the browser agent uses with the `click_at` tool for precise, coordinate-based interactions. > **Note:** The visual agent requires API key or Vertex AI authentication. It is > not available when using "Sign in with Google". ## Creating custom subagents You can create your own subagents to automate specific workflows or enforce specific personas. To use custom subagents, you must enable them in your `settings.json`: ```json { "experimental": { "enableAgents": true } } ``` ### Agent definition files Custom agents are defined as Markdown files (`.md`) with YAML frontmatter. You can place them in: 1. **Project-level:** `.gemini/agents/*.md` (Shared with your team) 2. **User-level:** `~/.gemini/agents/*.md` (Personal agents) ### File format The file **MUST** start with YAML frontmatter enclosed in triple-dashes `---`. The body of the markdown file becomes the agent's **System Prompt**. **Example: `.gemini/agents/security-auditor.md`** ```markdown --- name: security-auditor description: Specialized in finding security vulnerabilities in code. kind: local tools: - read_file - grep_search model: gemini-3-flash-preview temperature: 0.2 max_turns: 10 --- You are a ruthless Security Auditor. Your job is to analyze code for potential vulnerabilities. Focus on: 1. SQL Injection 2. XSS (Cross-Site Scripting) 3. Hardcoded credentials 4. Unsafe file operations When you find a vulnerability, explain it clearly and suggest a fix. Do not fix it yourself; just report it. ``` ### Configuration schema | Field | Type | Required | Description | | :------------- | :----- | :------- | :------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------ | | `name` | string | Yes | Unique identifier (slug) used as the tool name for the agent. Only lowercase letters, numbers, hyphens, and underscores. | | `description` | string | Yes | Short description of what the agent does. This is visible to the main agent to help it decide when to call this subagent. | | `kind` | string | No | `local` (default) or `remote`. | | `tools` | array | No | List of tool names this agent can use. Supports wildcards: `*` (all tools), `mcp_*` (all MCP tools), `mcp_server_*` (all tools from a server). **If omitted, it inherits all tools from the parent session.** | | `model` | string | No | Specific model to use (e.g., `gemini-3-preview`). Defaults to `inherit` (uses the main session model). | | `temperature` | number | No | Model temperature (0.0 - 2.0). Defaults to `1`. | | `max_turns` | number | No | Maximum number of conversation turns allowed for this agent before it must return. Defaults to `30`. | | `timeout_mins` | number | No | Maximum execution time in minutes. Defaults to `10`. | ### Tool wildcards When defining `tools` for a subagent, you can use wildcards to quickly grant access to groups of tools: - `*`: Grant access to all available built-in and discovered tools. - `mcp_*`: Grant access to all tools from all connected MCP servers. - `mcp_my-server_*`: Grant access to all tools from a specific MCP server named `my-server`. ### Isolation and recursion protection Each subagent runs in its own isolated context loop. This means: - **Independent history:** The subagent's conversation history does not bloat the main agent's context. - **Isolated tools:** The subagent only has access to the tools you explicitly grant it. - **Recursion protection:** To prevent infinite loops and excessive token usage, subagents **cannot** call other subagents. If a subagent is granted the `*` tool wildcard, it will still be unable to see or invoke other agents. ## Managing subagents You can manage subagents interactively using the `/agents` command or persistently via `settings.json`. ### Interactive management (/agents) If you are in an interactive CLI session, you can use the `/agents` command to manage subagents without editing configuration files manually. This is the recommended way to quickly enable, disable, or re-configure agents on the fly. For a full list of sub-commands and usage, see the [`/agents` command reference](../reference/commands.md#agents). ### Persistent configuration (settings.json) While the `/agents` command and agent definition files provide a starting point, you can use `settings.json` for global, persistent overrides. This is useful for enforcing specific models or execution limits across all sessions. #### `agents.overrides` Use this to enable or disable specific agents or override their run configurations. ```json { "agents": { "overrides": { "security-auditor": { "enabled": false, "runConfig": { "maxTurns": 20, "maxTimeMinutes": 10 } } } } } ``` #### `modelConfigs.overrides` You can target specific subagents with custom model settings (like system instruction prefixes or specific safety settings) using the `overrideScope` field. ```json { "modelConfigs": { "overrides": [ { "match": { "overrideScope": "security-auditor" }, "modelConfig": { "generateContentConfig": { "temperature": 0.1 } } } ] } } ``` ### Optimizing your subagent The main agent's system prompt encourages it to use an expert subagent when one is available. It decides whether an agent is a relevant expert based on the agent's description. You can improve the reliability with which an agent is used by updating the description to more clearly indicate: - Its area of expertise. - When it should be used. - Some example scenarios. For example, the following subagent description should be called fairly consistently for Git operations. > Git expert agent which should be used for all local and remote git operations. > For example: > > - Making commits > - Searching for regressions with bisect > - Interacting with source control and issues providers such as GitHub. If you need to further tune your subagent, you can do so by selecting the model to optimize for with `/model` and then asking the model why it does not think that your subagent was called with a specific prompt and the given description. ## Remote subagents (Agent2Agent) (experimental) Gemini CLI can also delegate tasks to remote subagents using the Agent-to-Agent (A2A) protocol. > **Note: Remote subagents are currently an experimental feature.** See the [Remote Subagents documentation](remote-agents) for detailed configuration, authentication, and usage instructions. ## Extension subagents Extensions can bundle and distribute subagents. See the [Extensions documentation](../extensions/index.md#subagents) for details on how to package agents within an extension.