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Airbyte Zendesk-Chat Connector for AI platforms

Project description

Zendesk-Chat

The Zendesk-Chat agent connector is a Python package that equips AI agents to interact with Zendesk-Chat 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.

Zendesk Chat enables real-time customer support through live chat. This connector provides access to chat transcripts, agents, departments, shortcuts, triggers, and other chat configuration data for analytics and support insights.

Supported Entities

  • accounts: Account information and billing details
  • agents: Chat agents with roles and department assignments
  • agent_timeline: Agent activity timeline (incremental export)
  • bans: Banned visitors (IP and visitor-based)
  • chats: Chat transcripts with full conversation history (incremental export)
  • departments: Chat departments for routing
  • goals: Conversion goals for tracking
  • roles: Agent role definitions
  • routing_settings: Account-level routing configuration
  • shortcuts: Canned responses for agents
  • skills: Agent skills for skill-based routing
  • triggers: Automated chat triggers

Rate Limits

Zendesk Chat API uses the Retry-After header for rate limit backoff. The connector handles this automatically.

Example questions

The Zendesk-Chat connector is optimized to handle prompts like these.

  • List all banned visitors
  • List all departments with their settings
  • Show me all chats from last week
  • List all agents in the support department
  • What are the most used chat shortcuts?
  • Show chat volume by department
  • What triggers are currently active?
  • Show agent activity timeline for today

Unsupported questions

The Zendesk-Chat connector isn't currently able to handle prompts like these.

  • Start a new chat session
  • Send a message to a visitor
  • Create a new agent
  • Update department settings
  • Delete a shortcut

Installation

uv pip install airbyte-agent-zendesk-chat

Usage

Connectors can run in open source or hosted mode.

Open source

In open source mode, you provide API credentials directly to the connector.

from airbyte_agent_zendesk_chat import ZendeskChatConnector
from airbyte_agent_zendesk_chat.models import ZendeskChatAuthConfig

connector = ZendeskChatConnector(
    auth_config=ZendeskChatAuthConfig(
        access_token="<Your Zendesk Chat OAuth 2.0 access token>"
    )
)

@agent.tool_plain # assumes you're using Pydantic AI
@ZendeskChatConnector.tool_utils
async def zendesk_chat_execute(entity: str, action: str, params: dict | None = None):
    return await connector.execute(entity, action, params or {})

Hosted

In hosted mode, API credentials are stored securely in Airbyte Cloud. 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.

from airbyte_agent_zendesk_chat import ZendeskChatConnector, AirbyteAuthConfig

connector = ZendeskChatConnector(
    auth_config=AirbyteAuthConfig(
        customer_name="<your_customer_name>",
        organization_id="<your_organization_id>",  # Optional for multi-org clients
        airbyte_client_id="<your-client-id>",
        airbyte_client_secret="<your-client-secret>"
    )
)

@agent.tool_plain # assumes you're using Pydantic AI
@ZendeskChatConnector.tool_utils
async def zendesk_chat_execute(entity: str, action: str, params: dict | None = None):
    return await connector.execute(entity, action, params or {})

Full documentation

Entities and actions

This connector supports the following entities and actions. For more details, see this connector's full reference documentation.

Entity Actions
Accounts Get
Agents List, Get, Search
Agent Timeline List
Bans List, Get
Chats List, Get, Search
Departments List, Get, Search
Goals List, Get
Roles List, Get
Routing Settings Get
Shortcuts List, Get, Search
Skills List, Get
Triggers List, Search

Authentication

For all authentication options, see the connector's authentication documentation.

Zendesk-Chat API docs

See the official Zendesk-Chat API reference.

Version information

  • Package version: 0.1.68
  • Connector version: 0.1.9
  • Generated with Connector SDK commit SHA: 5718dee300be8dbcbdece58f9474cf54625872e7
  • Changelog: View changelog

Project details


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