Linear authentication
This page documents the authentication and configuration options for the Linear agent connector.
Hosted mode (most cases)
In hosted mode, create the connector through the Airbyte Agent CLI or API, then execute operations using the CLI, Python SDK, or API. If you need a step-by-step guide, see the developer quickstart.
OAuth
Use the CLI for hosted OAuth connector creation when possible. It opens the hosted setup flow and avoids passing connector secrets through the command line:
airbyte-agent login
airbyte-agent connectors create --json '{
"workspace": "<your_workspace_name>",
"name": "linear"
}'
For API-first use cases, create a connector with OAuth credentials directly.
credentials fields you need:
| Field Name | Type | Required | Description |
|---|---|---|---|
client_id | str | Yes | Your Linear OAuth2 application client ID |
client_secret | str | Yes | Your Linear OAuth2 application client secret |
refresh_token | str | Yes | Your Linear OAuth2 refresh token |
access_token | str | No | Your Linear OAuth2 access token (optional if refresh_token is provided) |
Example request:
curl -X POST "https://api.airbyte.ai/api/v1/integrations/connectors" \
-H "Authorization: Bearer <YOUR_BEARER_TOKEN>" \
-H "Content-Type: application/json" \
-d '{
"workspace_name": "<WORKSPACE_NAME>",
"connector_type": "Linear",
"name": "My Linear Connector",
"credentials": {
"client_id": "<Your Linear OAuth2 application client ID>",
"client_secret": "<Your Linear OAuth2 application client secret>",
"refresh_token": "<Your Linear OAuth2 refresh token>",
"access_token": "<Your Linear OAuth2 access token (optional if refresh_token is provided)>"
}
}'
Token
Create a connector with Token credentials.
credentials fields you need:
| Field Name | Type | Required | Description |
|---|---|---|---|
api_key | str | Yes | Your Linear API key from Settings > API > Personal API keys |
Example request:
curl -X POST "https://api.airbyte.ai/api/v1/integrations/connectors" \
-H "Authorization: Bearer <YOUR_BEARER_TOKEN>" \
-H "Content-Type: application/json" \
-d '{
"workspace_name": "<WORKSPACE_NAME>",
"connector_type": "Linear",
"name": "My Linear Connector",
"credentials": {
"api_key": "<Your Linear API key from Settings > API > Personal API keys>"
}
}'
Execution
After creating the connector, execute operations using the CLI, Python SDK, or API.
If your Airbyte client can access multiple organizations, set the default organization with airbyte-agent organizations use, include organization_id in AirbyteAuthConfig, or include X-Organization-Id in raw API calls.
CLI
Authenticate with Airbyte:
airbyte-agent login
Create the connector. The CLI opens the hosted setup flow:
airbyte-agent connectors create --json '{
"workspace": "<your_workspace_name>",
"name": "linear"
}'
Describe the connector to see its supported entities and actions:
airbyte-agent connectors describe --json '{
"workspace": "<your_workspace_name>",
"name": "linear"
}'
Execute an action:
airbyte-agent connectors execute --json '{
"workspace": "<your_workspace_name>",
"name": "linear",
"entity": "<entity>",
"action": "<action>",
"params": {}
}'
Python SDK
The connect() factory returns a fully typed LinearConnector and reads AIRBYTE_CLIENT_ID / AIRBYTE_CLIENT_SECRET from the environment:
The recommended pattern is build_connector_tools, which gives the agent three tools bound to this connector: inspect_connector, read_skill_docs, and execute. The agent can inspect the connector, read only the skill-doc section it needs, and then execute:
inspect_connector() -> read_skill_docs() -> read_skill_docs(section="...") -> execute(entity, action, params)
- Pydantic AI
- LangChain
- OpenAI Agents
- FastMCP
from airbyte_agent_sdk import build_connector_tools
from pydantic_ai import Agent
from airbyte_agent_sdk import connect
from airbyte_agent_sdk.connectors.linear import LinearConnector
connector = connect("linear", workspace_name="<your_workspace_name>")
tools = build_connector_tools(connector, framework="pydantic_ai")
agent = Agent("openai:gpt-4o", tools=tools.as_list())
from airbyte_agent_sdk import build_connector_tools
from langchain_core.tools import StructuredTool
from airbyte_agent_sdk import connect
from airbyte_agent_sdk.connectors.linear import LinearConnector
connector = connect("linear", workspace_name="<your_workspace_name>")
tools = build_connector_tools(connector, framework="langchain")
langchain_tools = [
StructuredTool.from_function(
coroutine=tool,
name=tool.__name__,
description=tool.__doc__,
)
for tool in tools.as_list()
]
from airbyte_agent_sdk import build_connector_tools
from agents import Agent, function_tool
from airbyte_agent_sdk import connect
from airbyte_agent_sdk.connectors.linear import LinearConnector
connector = connect("linear", workspace_name="<your_workspace_name>")
tools = build_connector_tools(connector, framework="openai_agents")
openai_tools = [function_tool(tool, strict_mode=False) for tool in tools.as_list()]
agent = Agent(name="Linear Assistant", tools=openai_tools)
from airbyte_agent_sdk import build_connector_tools
from fastmcp import FastMCP
from airbyte_agent_sdk import connect
from airbyte_agent_sdk.connectors.linear import LinearConnector
connector = connect("linear", workspace_name="<your_workspace_name>")
mcp = FastMCP("Linear Agent")
for tool in build_connector_tools(connector, framework="mcp").as_list():
mcp.tool(tool)
Legacy alternatives
These examples are kept for existing integrations. For new agents, use build_connector_tools above. The legacy LinearConnector.tool_utils pattern loads the connector's full generated catalog into one broad execute tool description instead of letting the agent read skill docs on demand.
- Pydantic AI
- LangChain
- OpenAI Agents
- FastMCP
from pydantic_ai import Agent
from airbyte_agent_sdk import connect
from airbyte_agent_sdk.connectors.linear import LinearConnector
connector = connect("linear", workspace_name="<your_workspace_name>")
agent = Agent("openai:gpt-4o")
@agent.tool_plain
@LinearConnector.tool_utils
async def linear_execute(entity: str, action: str, params: dict | None = None):
return await connector.execute(entity, action, params or {})
from langchain_core.tools import tool
from airbyte_agent_sdk import connect
from airbyte_agent_sdk.connectors.linear import LinearConnector
connector = connect("linear", workspace_name="<your_workspace_name>")
@tool
@LinearConnector.tool_utils
async def linear_execute(entity: str, action: str, params: dict | None = None):
"""Execute Linear connector operations."""
result = await connector.execute(entity, action, params or {})
# connector.execute returns a Pydantic envelope for typed actions; fall back to raw data otherwise.
return result.model_dump(mode="json") if hasattr(result, "model_dump") else result
from agents import Agent, function_tool
from airbyte_agent_sdk import connect
from airbyte_agent_sdk.connectors.linear import LinearConnector
connector = connect("linear", workspace_name="<your_workspace_name>")
# strict_mode=False because `params: dict` is permissive and the default strict
# JSON schema rejects objects with additionalProperties.
@function_tool(strict_mode=False)
@LinearConnector.tool_utils(framework="openai_agents")
async def linear_execute(entity: str, action: str, params: dict | None = None):
"""Execute Linear connector operations."""
result = await connector.execute(entity, action, params or {})
return result.model_dump(mode="json") if hasattr(result, "model_dump") else result
agent = Agent(name="Linear Assistant", tools=[linear_execute])
from fastmcp import FastMCP
from airbyte_agent_sdk import connect
from airbyte_agent_sdk.connectors.linear import LinearConnector
connector = connect("linear", workspace_name="<your_workspace_name>")
mcp = FastMCP("Linear Agent")
@mcp.tool
@LinearConnector.tool_utils
async def linear_execute(entity: str, action: str, params: dict | None = None):
"""Execute Linear connector operations."""
result = await connector.execute(entity, action, params or {})
return result.model_dump(mode="json") if hasattr(result, "model_dump") else result
Or pass credentials explicitly (equivalent, useful when you're not loading them from the environment):
- Pydantic AI
- LangChain
- OpenAI Agents
- FastMCP
from airbyte_agent_sdk import build_connector_tools
from pydantic_ai import Agent
from airbyte_agent_sdk.connectors.linear import LinearConnector
from airbyte_agent_sdk.types import AirbyteAuthConfig
connector = LinearConnector(
auth_config=AirbyteAuthConfig(
workspace_name="<your_workspace_name>",
organization_id="<your_organization_id>", # Optional for multi-org clients
airbyte_client_id="<your-client-id>",
airbyte_client_secret="<your-client-secret>"
)
)
tools = build_connector_tools(connector, framework="pydantic_ai")
agent = Agent("openai:gpt-4o", tools=tools.as_list())
from airbyte_agent_sdk import build_connector_tools
from langchain_core.tools import StructuredTool
from airbyte_agent_sdk.connectors.linear import LinearConnector
from airbyte_agent_sdk.types import AirbyteAuthConfig
connector = LinearConnector(
auth_config=AirbyteAuthConfig(
workspace_name="<your_workspace_name>",
organization_id="<your_organization_id>", # Optional for multi-org clients
airbyte_client_id="<your-client-id>",
airbyte_client_secret="<your-client-secret>"
)
)
tools = build_connector_tools(connector, framework="langchain")
langchain_tools = [
StructuredTool.from_function(
coroutine=tool,
name=tool.__name__,
description=tool.__doc__,
)
for tool in tools.as_list()
]
from airbyte_agent_sdk import build_connector_tools
from agents import Agent, function_tool
from airbyte_agent_sdk.connectors.linear import LinearConnector
from airbyte_agent_sdk.types import AirbyteAuthConfig
connector = LinearConnector(
auth_config=AirbyteAuthConfig(
workspace_name="<your_workspace_name>",
organization_id="<your_organization_id>", # Optional for multi-org clients
airbyte_client_id="<your-client-id>",
airbyte_client_secret="<your-client-secret>"
)
)
tools = build_connector_tools(connector, framework="openai_agents")
openai_tools = [function_tool(tool, strict_mode=False) for tool in tools.as_list()]
agent = Agent(name="Linear Assistant", tools=openai_tools)
from airbyte_agent_sdk import build_connector_tools
from fastmcp import FastMCP
from airbyte_agent_sdk.connectors.linear import LinearConnector
from airbyte_agent_sdk.types import AirbyteAuthConfig
connector = LinearConnector(
auth_config=AirbyteAuthConfig(
workspace_name="<your_workspace_name>",
organization_id="<your_organization_id>", # Optional for multi-org clients
airbyte_client_id="<your-client-id>",
airbyte_client_secret="<your-client-secret>"
)
)
mcp = FastMCP("Linear Agent")
for tool in build_connector_tools(connector, framework="mcp").as_list():
mcp.tool(tool)
API
curl -X POST 'https://api.airbyte.ai/api/v1/integrations/connectors/<connector_id>/execute' \
-H 'Authorization: Bearer <YOUR_BEARER_TOKEN>' \
-H 'X-Organization-Id: <YOUR_ORGANIZATION_ID>' \
-H 'Content-Type: application/json' \
-d '{"entity": "<entity>", "action": "<action>", "params": {}}'
Open source mode
In open source mode, provide API credentials directly to the connector.
OAuth
credentials fields you need:
| Field Name | Type | Required | Description |
|---|---|---|---|
client_id | str | Yes | Your Linear OAuth2 application client ID |
client_secret | str | Yes | Your Linear OAuth2 application client secret |
refresh_token | str | Yes | Your Linear OAuth2 refresh token |
access_token | str | No | Your Linear OAuth2 access token (optional if refresh_token is provided) |
Example request:
from airbyte_agent_sdk.connectors.linear import LinearConnector
from airbyte_agent_sdk.connectors.linear.models import LinearOauth2AuthConfig
connector = LinearConnector(
auth_config=LinearOauth2AuthConfig(
client_id="<Your Linear OAuth2 application client ID>",
client_secret="<Your Linear OAuth2 application client secret>",
refresh_token="<Your Linear OAuth2 refresh token>",
access_token="<Your Linear OAuth2 access token (optional if refresh_token is provided)>"
)
)
Token
credentials fields you need:
| Field Name | Type | Required | Description |
|---|---|---|---|
api_key | str | Yes | Your Linear API key from Settings > API > Personal API keys |
Example request:
from airbyte_agent_sdk.connectors.linear import LinearConnector
from airbyte_agent_sdk.connectors.linear.models import LinearLinearApiKeyAuthenticationAuthConfig
connector = LinearConnector(
auth_config=LinearLinearApiKeyAuthenticationAuthConfig(
api_key="<Your Linear API key from Settings > API > Personal API keys>"
)
)