Exa
The Exa agent connector is a Python package that equips AI agents to interact with Exa through strongly typed, well-documented tools. It's ready to use directly in your Python app, in an agent framework, or exposed through an MCP.
Exa is an AI-powered search engine that finds the exact content you're looking for on the web using embeddings-based search. This connector provides access to Exa's search, contents retrieval, and find-similar endpoints. All endpoints use POST requests with JSON bodies. Requires an Exa API key from dashboard.exa.ai.
Example prompts
The Exa connector is optimized to handle prompts like these.
- Search for latest news on Airbyte
- Find web pages similar to https://airbyte.com
- Get the full text content of https://airbyte.com
- Search for AI research papers published this year
- Find company pages related to data integration startups
Entities and actions
This connector supports the following entities and actions. For more details, see this connector's full reference documentation.
| Entity | Actions |
|---|---|
| Search Results | List |
| Contents | List |
| Similar Results | List |
Exa API docs
See the official Exa API reference.
Interfaces
Use the Exa connector through the Airbyte Agent CLI, the Python SDK, or the API.
CLI
Install the CLI:
curl -fsSL https://airbyte.ai/install.sh | bash
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": "exa"
}'
Describe the connector to see its supported entities and actions:
airbyte-agent connectors describe --json '{
"workspace": "<your_workspace_name>",
"name": "exa"
}'
Execute an action:
airbyte-agent connectors execute --json '{
"workspace": "<your_workspace_name>",
"name": "exa",
"entity": "search_results",
"action": "list"
}'
Python SDK
Installation
uv pip install airbyte-agent-sdk
Usage
Connectors can run in hosted or open source mode.
Hosted
In hosted mode, API credentials are stored securely in Airbyte Agents. You provide your Airbyte credentials instead.
If your Airbyte client can access multiple organizations, also set organization_id.
This example assumes you've already authenticated your connector with Airbyte. See Authentication to learn more about authenticating. If you need a step-by-step guide, see the hosted execution tutorial.
The connect() factory returns a fully typed ExaConnector and reads AIRBYTE_CLIENT_ID / AIRBYTE_CLIENT_SECRET from the environment:
- Pydantic AI
- LangChain
- OpenAI Agents
- FastMCP
from pydantic_ai import Agent
from airbyte_agent_sdk import connect
from airbyte_agent_sdk.connectors.exa import ExaConnector
connector = connect("exa", workspace_name="<your_workspace_name>")
agent = Agent("openai:gpt-4o")
@agent.tool_plain
@ExaConnector.tool_utils
async def exa_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.exa import ExaConnector
connector = connect("exa", workspace_name="<your_workspace_name>")
@tool
@ExaConnector.tool_utils
async def exa_execute(entity: str, action: str, params: dict | None = None):
"""Execute Exa 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.exa import ExaConnector
connector = connect("exa", 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)
@ExaConnector.tool_utils(framework="openai_agents")
async def exa_execute(entity: str, action: str, params: dict | None = None):
"""Execute Exa 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="Exa Assistant", tools=[exa_execute])
from fastmcp import FastMCP
from airbyte_agent_sdk import connect
from airbyte_agent_sdk.connectors.exa import ExaConnector
connector = connect("exa", workspace_name="<your_workspace_name>")
mcp = FastMCP("Exa Agent")
@mcp.tool
@ExaConnector.tool_utils
async def exa_execute(entity: str, action: str, params: dict | None = None):
"""Execute Exa 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 pydantic_ai import Agent
from airbyte_agent_sdk.connectors.exa import ExaConnector
from airbyte_agent_sdk.types import AirbyteAuthConfig
connector = ExaConnector(
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>"
)
)
agent = Agent("openai:gpt-4o")
@agent.tool_plain
@ExaConnector.tool_utils
async def exa_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.connectors.exa import ExaConnector
from airbyte_agent_sdk.types import AirbyteAuthConfig
connector = ExaConnector(
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>"
)
)
@tool
@ExaConnector.tool_utils
async def exa_execute(entity: str, action: str, params: dict | None = None):
"""Execute Exa 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.connectors.exa import ExaConnector
from airbyte_agent_sdk.types import AirbyteAuthConfig
connector = ExaConnector(
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>"
)
)
# strict_mode=False because `params: dict` is permissive and the default strict
# JSON schema rejects objects with additionalProperties.
@function_tool(strict_mode=False)
@ExaConnector.tool_utils(framework="openai_agents")
async def exa_execute(entity: str, action: str, params: dict | None = None):
"""Execute Exa 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="Exa Assistant", tools=[exa_execute])
from fastmcp import FastMCP
from airbyte_agent_sdk.connectors.exa import ExaConnector
from airbyte_agent_sdk.types import AirbyteAuthConfig
connector = ExaConnector(
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("Exa Agent")
@mcp.tool
@ExaConnector.tool_utils
async def exa_execute(entity: str, action: str, params: dict | None = None):
"""Execute Exa connector operations."""
result = await connector.execute(entity, action, params or {})
return result.model_dump(mode="json") if hasattr(result, "model_dump") else result
Open source
In open source mode, you provide API credentials directly to the connector.
- Pydantic AI
- LangChain
- OpenAI Agents
- FastMCP
from pydantic_ai import Agent
from airbyte_agent_sdk.connectors.exa import ExaConnector
from airbyte_agent_sdk.connectors.exa.models import ExaAuthConfig
connector = ExaConnector(
auth_config=ExaAuthConfig(
api_key="<Your Exa API key from dashboard.exa.ai/api-keys>"
)
)
agent = Agent("openai:gpt-4o")
@agent.tool_plain
@ExaConnector.tool_utils
async def exa_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.connectors.exa import ExaConnector
from airbyte_agent_sdk.connectors.exa.models import ExaAuthConfig
connector = ExaConnector(
auth_config=ExaAuthConfig(
api_key="<Your Exa API key from dashboard.exa.ai/api-keys>"
)
)
@tool
@ExaConnector.tool_utils
async def exa_execute(entity: str, action: str, params: dict | None = None):
"""Execute Exa 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.connectors.exa import ExaConnector
from airbyte_agent_sdk.connectors.exa.models import ExaAuthConfig
connector = ExaConnector(
auth_config=ExaAuthConfig(
api_key="<Your Exa API key from dashboard.exa.ai/api-keys>"
)
)
# strict_mode=False because `params: dict` is permissive and the default strict
# JSON schema rejects objects with additionalProperties.
@function_tool(strict_mode=False)
@ExaConnector.tool_utils(framework="openai_agents")
async def exa_execute(entity: str, action: str, params: dict | None = None):
"""Execute Exa 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="Exa Assistant", tools=[exa_execute])
from fastmcp import FastMCP
from airbyte_agent_sdk.connectors.exa import ExaConnector
from airbyte_agent_sdk.connectors.exa.models import ExaAuthConfig
connector = ExaConnector(
auth_config=ExaAuthConfig(
api_key="<Your Exa API key from dashboard.exa.ai/api-keys>"
)
)
mcp = FastMCP("Exa Agent")
@mcp.tool
@ExaConnector.tool_utils
async def exa_execute(entity: str, action: str, params: dict | None = None):
"""Execute Exa connector operations."""
result = await connector.execute(entity, action, params or {})
return result.model_dump(mode="json") if hasattr(result, "model_dump") else result
Authentication
For all authentication options, see the connector's authentication documentation.
IP allow list
If your organization restricts access to specific IPs, add the Airbyte Agents IP addresses to your allow list.
Version information
Connector version: 1.0.0