Skip to main content

Airbyte Zendesk-Talk Connector for AI platforms

Project description

Zendesk-Talk

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

Connector for the Zendesk Talk (Voice) API. Provides access to phone numbers, addresses, greetings, IVR configurations, call data, and agent/account statistics for Zendesk Talk voice support channels.

Example questions

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

  • List all phone numbers in our Zendesk Talk account
  • Show all addresses on file
  • List all IVR configurations
  • Show all greetings
  • List greeting categories
  • Show agent activity statistics
  • Show the account overview stats
  • Show current queue activity
  • Which phone numbers have SMS enabled?
  • Find agents who have missed the most calls today
  • What is the average call duration across all calls?
  • Which phone numbers are toll-free?

Unsupported questions

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

  • Create a new phone number
  • Delete an IVR configuration
  • Update a greeting
  • Make an outbound call

Installation

uv pip install airbyte-agent-zendesk-talk

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_talk import ZendeskTalkConnector
from airbyte_agent_zendesk_talk.models import ZendeskTalkApiTokenAuthConfig

connector = ZendeskTalkConnector(
    auth_config=ZendeskTalkApiTokenAuthConfig(
        email="<Your Zendesk account email address>",
        api_token="<Your Zendesk API token from Admin Center>"
    )
)

@agent.tool_plain # assumes you're using Pydantic AI
@ZendeskTalkConnector.tool_utils
async def zendesk_talk_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_talk import ZendeskTalkConnector, AirbyteAuthConfig

connector = ZendeskTalkConnector(
    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
@ZendeskTalkConnector.tool_utils
async def zendesk_talk_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
Phone Numbers List, Get, Context Store Search
Addresses List, Get, Context Store Search
Greetings List, Get, Context Store Search
Greeting Categories List, Get, Context Store Search
Ivrs List, Get, Context Store Search
Agents Activity List, Context Store Search
Agents Overview List, Context Store Search
Account Overview List, Context Store Search
Current Queue Activity List, Context Store Search
Calls List, Context Store Search
Call Legs List, Context Store Search

Authentication

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

Zendesk-Talk API docs

See the official Zendesk-Talk API reference.

Version information

  • Package version: 0.1.15
  • Connector version: 1.0.2
  • Generated with Connector SDK commit SHA: 6bf360a546d577c9f76e8a6b8abf9ffc4dbfcf3a
  • Changelog: View changelog

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

airbyte_agent_zendesk_talk-0.1.15.tar.gz (185.9 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

airbyte_agent_zendesk_talk-0.1.15-py3-none-any.whl (207.7 kB view details)

Uploaded Python 3

File details

Details for the file airbyte_agent_zendesk_talk-0.1.15.tar.gz.

File metadata

File hashes

Hashes for airbyte_agent_zendesk_talk-0.1.15.tar.gz
Algorithm Hash digest
SHA256 94a73450aa715e9484fd8eef67f1c12c189910bca4321356217bd66ef4adaa3e
MD5 b88b1d0e665f0bc9c1ee7ce62968f00f
BLAKE2b-256 7943f3c5e8f5fc9d9ae490a5c766106cef301b3c3fd8f800c564c481390cdea8

See more details on using hashes here.

File details

Details for the file airbyte_agent_zendesk_talk-0.1.15-py3-none-any.whl.

File metadata

File hashes

Hashes for airbyte_agent_zendesk_talk-0.1.15-py3-none-any.whl
Algorithm Hash digest
SHA256 df8c2270fe5e63c284aa5e661e3266f79de578852b00c155bcca4fa7161fdc0a
MD5 ebee81aaf8f092f131545270907e575f
BLAKE2b-256 6b678aee66a86a3be747eca24bc09ced32075db97c7b1d9733a4695104d7a09f

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page