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crewAI/docs/en/learn/a2a-agent-delegation.mdx
2026-01-14 22:46:53 -05:00

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---
title: Agent-to-Agent (A2A) Protocol
description: Agents delegate tasks to remote A2A agents and/or operate as A2A-compliant server agents.
icon: network-wired
mode: "wide"
---
## A2A Agent Delegation
CrewAI treats [A2A protocol](https://a2a-protocol.org/latest/) as a first-class delegation primitive, enabling agents to delegate tasks, request information, and collaborate with remote agents, as well as act as A2A-compliant server agents.
In client mode, agents autonomously choose between local execution and remote delegation based on task requirements.
## How It Works
When an agent is configured with A2A capabilities:
1. The Agent analyzes each task
2. It decides to either:
- Handle the task directly using its own capabilities
- Delegate to a remote A2A agent for specialized handling
3. If delegating, the agent communicates with the remote A2A agent through the protocol
4. Results are returned to the CrewAI workflow
<Note>
A2A delegation requires the `a2a-sdk` package. Install with: `uv add 'crewai[a2a]'` or `pip install 'crewai[a2a]'`
</Note>
## Basic Configuration
<Warning>
`crewai.a2a.config.A2AConfig` is deprecated and will be removed in v2.0.0. Use `A2AClientConfig` for connecting to remote agents and/or `A2AServerConfig` for exposing agents as servers.
</Warning>
Configure an agent for A2A delegation by setting the `a2a` parameter:
```python Code
from crewai import Agent, Crew, Task
from crewai.a2a import A2AClientConfig
agent = Agent(
role="Research Coordinator",
goal="Coordinate research tasks efficiently",
backstory="Expert at delegating to specialized research agents",
llm="gpt-4o",
a2a=A2AClientConfig(
endpoint="https://example.com/.well-known/agent-card.json",
timeout=120,
max_turns=10
)
)
task = Task(
description="Research the latest developments in quantum computing",
expected_output="A comprehensive research report",
agent=agent
)
crew = Crew(agents=[agent], tasks=[task], verbose=True)
result = crew.kickoff()
```
## Client Configuration Options
The `A2AClientConfig` class accepts the following parameters:
<ParamField path="endpoint" type="str" required>
The A2A agent endpoint URL (typically points to `.well-known/agent-card.json`)
</ParamField>
<ParamField path="auth" type="AuthScheme" default="None">
Authentication scheme for the A2A agent. Supports Bearer tokens, OAuth2, API keys, and HTTP authentication.
</ParamField>
<ParamField path="timeout" type="int" default="120">
Request timeout in seconds
</ParamField>
<ParamField path="max_turns" type="int" default="10">
Maximum number of conversation turns with the A2A agent
</ParamField>
<ParamField path="response_model" type="type[BaseModel]" default="None">
Optional Pydantic model for requesting structured output from an A2A agent. A2A protocol does not
enforce this, so an A2A agent does not need to honor this request.
</ParamField>
<ParamField path="fail_fast" type="bool" default="True">
Whether to raise an error immediately if agent connection fails. When `False`, the agent continues with available agents and informs the LLM about unavailable ones.
</ParamField>
<ParamField path="trust_remote_completion_status" type="bool" default="False">
When `True`, returns the A2A agent's result directly when it signals completion. When `False`, allows the server agent to review the result and potentially continue the conversation.
</ParamField>
<ParamField path="updates" type="UpdateConfig" default="StreamingConfig()">
Update mechanism for receiving task status. Options: `StreamingConfig`, `PollingConfig`, or `PushNotificationConfig`.
</ParamField>
<ParamField path="transport_protocol" type="Literal['JSONRPC', 'GRPC', 'HTTP+JSON']" default="JSONRPC">
Transport protocol for A2A communication. Options: `JSONRPC` (default), `GRPC`, or `HTTP+JSON`.
</ParamField>
<ParamField path="accepted_output_modes" type="list[str]" default='["application/json"]'>
Media types the client can accept in responses.
</ParamField>
<ParamField path="supported_transports" type="list[str]" default='["JSONRPC"]'>
Ordered list of transport protocols the client supports.
</ParamField>
<ParamField path="use_client_preference" type="bool" default="False">
Whether to prioritize client transport preferences over server.
</ParamField>
<ParamField path="extensions" type="list[str]" default="[]">
Extension URIs the client supports.
</ParamField>
## Authentication
For A2A agents that require authentication, use one of the provided auth schemes:
<Tabs>
<Tab title="Bearer Token">
```python bearer_token_auth.py lines
from crewai.a2a import A2AClientConfig
from crewai.a2a.auth import BearerTokenAuth
agent = Agent(
role="Secure Coordinator",
goal="Coordinate tasks with secured agents",
backstory="Manages secure agent communications",
llm="gpt-4o",
a2a=A2AClientConfig(
endpoint="https://secure-agent.example.com/.well-known/agent-card.json",
auth=BearerTokenAuth(token="your-bearer-token"),
timeout=120
)
)
```
</Tab>
<Tab title="API Key">
```python api_key_auth.py lines
from crewai.a2a import A2AClientConfig
from crewai.a2a.auth import APIKeyAuth
agent = Agent(
role="API Coordinator",
goal="Coordinate with API-based agents",
backstory="Manages API-authenticated communications",
llm="gpt-4o",
a2a=A2AClientConfig(
endpoint="https://api-agent.example.com/.well-known/agent-card.json",
auth=APIKeyAuth(
api_key="your-api-key",
location="header", # or "query" or "cookie"
name="X-API-Key"
),
timeout=120
)
)
```
</Tab>
<Tab title="OAuth2">
```python oauth2_auth.py lines
from crewai.a2a import A2AClientConfig
from crewai.a2a.auth import OAuth2ClientCredentials
agent = Agent(
role="OAuth Coordinator",
goal="Coordinate with OAuth-secured agents",
backstory="Manages OAuth-authenticated communications",
llm="gpt-4o",
a2a=A2AClientConfig(
endpoint="https://oauth-agent.example.com/.well-known/agent-card.json",
auth=OAuth2ClientCredentials(
token_url="https://auth.example.com/oauth/token",
client_id="your-client-id",
client_secret="your-client-secret",
scopes=["read", "write"]
),
timeout=120
)
)
```
</Tab>
<Tab title="HTTP Basic">
```python http_basic_auth.py lines
from crewai.a2a import A2AClientConfig
from crewai.a2a.auth import HTTPBasicAuth
agent = Agent(
role="Basic Auth Coordinator",
goal="Coordinate with basic auth agents",
backstory="Manages basic authentication communications",
llm="gpt-4o",
a2a=A2AClientConfig(
endpoint="https://basic-agent.example.com/.well-known/agent-card.json",
auth=HTTPBasicAuth(
username="your-username",
password="your-password"
),
timeout=120
)
)
```
</Tab>
</Tabs>
## Multiple A2A Agents
Configure multiple A2A agents for delegation by passing a list:
```python Code
from crewai.a2a import A2AClientConfig
from crewai.a2a.auth import BearerTokenAuth
agent = Agent(
role="Multi-Agent Coordinator",
goal="Coordinate with multiple specialized agents",
backstory="Expert at delegating to the right specialist",
llm="gpt-4o",
a2a=[
A2AClientConfig(
endpoint="https://research.example.com/.well-known/agent-card.json",
timeout=120
),
A2AClientConfig(
endpoint="https://data.example.com/.well-known/agent-card.json",
auth=BearerTokenAuth(token="data-token"),
timeout=90
)
]
)
```
The LLM will automatically choose which A2A agent to delegate to based on the task requirements.
## Error Handling
Control how agent connection failures are handled using the `fail_fast` parameter:
```python Code
from crewai.a2a import A2AClientConfig
# Fail immediately on connection errors (default)
agent = Agent(
role="Research Coordinator",
goal="Coordinate research tasks",
backstory="Expert at delegation",
llm="gpt-4o",
a2a=A2AClientConfig(
endpoint="https://research.example.com/.well-known/agent-card.json",
fail_fast=True
)
)
# Continue with available agents
agent = Agent(
role="Multi-Agent Coordinator",
goal="Coordinate with multiple agents",
backstory="Expert at working with available resources",
llm="gpt-4o",
a2a=[
A2AClientConfig(
endpoint="https://primary.example.com/.well-known/agent-card.json",
fail_fast=False
),
A2AClientConfig(
endpoint="https://backup.example.com/.well-known/agent-card.json",
fail_fast=False
)
]
)
```
When `fail_fast=False`:
- If some agents fail, the LLM is informed which agents are unavailable and can delegate to working agents
- If all agents fail, the LLM receives a notice about unavailable agents and handles the task directly
- Connection errors are captured and included in the context for better decision-making
## Update Mechanisms
Control how your agent receives task status updates from remote A2A agents:
<Tabs>
<Tab title="Streaming (Default)">
```python streaming_config.py lines
from crewai.a2a import A2AClientConfig
from crewai.a2a.updates import StreamingConfig
agent = Agent(
role="Research Coordinator",
goal="Coordinate research tasks",
backstory="Expert at delegation",
llm="gpt-4o",
a2a=A2AClientConfig(
endpoint="https://research.example.com/.well-known/agent-card.json",
updates=StreamingConfig()
)
)
```
</Tab>
<Tab title="Polling">
```python polling_config.py lines
from crewai.a2a import A2AClientConfig
from crewai.a2a.updates import PollingConfig
agent = Agent(
role="Research Coordinator",
goal="Coordinate research tasks",
backstory="Expert at delegation",
llm="gpt-4o",
a2a=A2AClientConfig(
endpoint="https://research.example.com/.well-known/agent-card.json",
updates=PollingConfig(
interval=2.0,
timeout=300.0,
max_polls=100
)
)
)
```
</Tab>
<Tab title="Push Notifications">
```python push_notifications_config.py lines
from crewai.a2a import A2AClientConfig
from crewai.a2a.updates import PushNotificationConfig
agent = Agent(
role="Research Coordinator",
goal="Coordinate research tasks",
backstory="Expert at delegation",
llm="gpt-4o",
a2a=A2AClientConfig(
endpoint="https://research.example.com/.well-known/agent-card.json",
updates=PushNotificationConfig(
url="{base_url}/a2a/callback",
token="your-validation-token",
timeout=300.0
)
)
)
```
</Tab>
</Tabs>
## Exposing Agents as A2A Servers
You can expose your CrewAI agents as A2A-compliant servers, allowing other A2A clients to delegate tasks to them.
### Server Configuration
Add an `A2AServerConfig` to your agent to enable server capabilities:
```python a2a_server_agent.py lines
from crewai import Agent
from crewai.a2a import A2AServerConfig
agent = Agent(
role="Data Analyst",
goal="Analyze datasets and provide insights",
backstory="Expert data scientist with statistical analysis skills",
llm="gpt-4o",
a2a=A2AServerConfig(url="https://your-server.com")
)
```
### Server Configuration Options
<ParamField path="name" type="str" default="None">
Human-readable name for the agent. Defaults to the agent's role if not provided.
</ParamField>
<ParamField path="description" type="str" default="None">
Human-readable description. Defaults to the agent's goal and backstory if not provided.
</ParamField>
<ParamField path="version" type="str" default="1.0.0">
Version string for the agent card.
</ParamField>
<ParamField path="skills" type="list[AgentSkill]" default="[]">
List of agent skills. Auto-generated from agent tools if not provided.
</ParamField>
<ParamField path="capabilities" type="AgentCapabilities" default="AgentCapabilities(streaming=True, push_notifications=False)">
Declaration of optional capabilities supported by the agent.
</ParamField>
<ParamField path="default_input_modes" type="list[str]" default='["text/plain", "application/json"]'>
Supported input MIME types.
</ParamField>
<ParamField path="default_output_modes" type="list[str]" default='["text/plain", "application/json"]'>
Supported output MIME types.
</ParamField>
<ParamField path="url" type="str" default="None">
Preferred endpoint URL. If set, overrides the URL passed to `to_agent_card()`.
</ParamField>
<ParamField path="preferred_transport" type="Literal['JSONRPC', 'GRPC', 'HTTP+JSON']" default="JSONRPC">
Transport protocol for the preferred endpoint.
</ParamField>
<ParamField path="protocol_version" type="str" default="0.3">
A2A protocol version this agent supports.
</ParamField>
<ParamField path="provider" type="AgentProvider" default="None">
Information about the agent's service provider.
</ParamField>
<ParamField path="documentation_url" type="str" default="None">
URL to the agent's documentation.
</ParamField>
<ParamField path="icon_url" type="str" default="None">
URL to an icon for the agent.
</ParamField>
<ParamField path="additional_interfaces" type="list[AgentInterface]" default="[]">
Additional supported interfaces (transport and URL combinations).
</ParamField>
<ParamField path="security" type="list[dict[str, list[str]]]" default="[]">
Security requirement objects for all agent interactions.
</ParamField>
<ParamField path="security_schemes" type="dict[str, SecurityScheme]" default="{}">
Security schemes available to authorize requests.
</ParamField>
<ParamField path="supports_authenticated_extended_card" type="bool" default="False">
Whether agent provides extended card to authenticated users.
</ParamField>
<ParamField path="signatures" type="list[AgentCardSignature]" default="[]">
JSON Web Signatures for the AgentCard.
</ParamField>
### Combined Client and Server
An agent can act as both client and server by providing both configurations:
```python Code
from crewai import Agent
from crewai.a2a import A2AClientConfig, A2AServerConfig
agent = Agent(
role="Research Coordinator",
goal="Coordinate research and serve analysis requests",
backstory="Expert at delegation and analysis",
llm="gpt-4o",
a2a=[
A2AClientConfig(
endpoint="https://specialist.example.com/.well-known/agent-card.json",
timeout=120
),
A2AServerConfig(url="https://your-server.com")
]
)
```
## Best Practices
<CardGroup cols={2}>
<Card title="Set Appropriate Timeouts" icon="clock">
Configure timeouts based on expected A2A agent response times. Longer-running tasks may need higher timeout values.
</Card>
<Card title="Limit Conversation Turns" icon="comments">
Use `max_turns` to prevent excessive back-and-forth. The agent will automatically conclude conversations before hitting the limit.
</Card>
<Card title="Use Resilient Error Handling" icon="shield-check">
Set `fail_fast=False` for production environments with multiple agents to gracefully handle connection failures and maintain workflow continuity.
</Card>
<Card title="Secure Your Credentials" icon="lock">
Store authentication tokens and credentials as environment variables, not in code.
</Card>
<Card title="Monitor Delegation Decisions" icon="eye">
Use verbose mode to observe when the LLM chooses to delegate versus handle tasks directly.
</Card>
</CardGroup>
## Supported Authentication Methods
- **Bearer Token** - Simple token-based authentication
- **OAuth2 Client Credentials** - OAuth2 flow for machine-to-machine communication
- **OAuth2 Authorization Code** - OAuth2 flow requiring user authorization
- **API Key** - Key-based authentication (header, query param, or cookie)
- **HTTP Basic** - Username/password authentication
- **HTTP Digest** - Digest authentication (requires `httpx-auth` package)
## Learn More
For more information about the A2A protocol and reference implementations:
- [A2A Protocol Documentation](https://a2a-protocol.org)
- [A2A Sample Implementations](https://github.com/a2aproject/a2a-samples)
- [A2A Python SDK](https://github.com/a2aproject/a2a-python)