dograh/sdk/python
Abhishek Kumar 6d93be3ef6 fix: number pool initialization in multi telephony setup
If there are multiple telephony configurations, the form number should be initialized from the campaigns given telephonic configuration rather than the organization default telephonic configuration.
2026-05-08 14:48:53 +05:30
..
src/dograh_sdk fix: number pool initialization in multi telephony setup 2026-05-08 14:48:53 +05:30
.gitignore feat: refactor node spec and add mcp tools (#244) 2026-04-21 07:56:16 +05:30
LICENSE feat: refactor node spec and add mcp tools (#244) 2026-04-21 07:56:16 +05:30
pyproject.toml chore: bump sdk version 2026-05-02 17:04:12 +05:30
README.md feat: refactor node spec and add mcp tools (#244) 2026-04-21 07:56:16 +05:30

dograh-sdk

Typed builder for Dograh voice-AI workflows. Fetches the node-spec catalog from the Dograh backend at session start, validates every call against it at the call site, and produces ReactFlowDTO-compatible JSON.

Install

pip install dograh-sdk

For local development against a checked-out monorepo:

pip install -e sdk/python/

Usage

from dograh_sdk import DograhClient, Workflow

with DograhClient(base_url="http://localhost:8000", api_key="...") as client:
    wf = Workflow(client=client, name="loan_qualification")

    start = wf.add(
        type="startCall",
        name="greeting",
        prompt="You are Sarah from Acme Loans. Greet the caller warmly.",
        greeting_type="text",
        greeting="Hi {{first_name}}, this is Sarah.",
    )
    qualify = wf.add(
        type="agentNode",
        name="qualify",
        prompt="Ask about loan amount and timeline.",
    )
    done = wf.add(type="endCall", name="done", prompt="Thank the caller.")

    wf.edge(start, qualify, label="interested", condition="Caller expressed interest.")
    wf.edge(qualify, done, label="done", condition="Qualification complete.")

    client.save_workflow(workflow_id=123, workflow=wf)

What gets validated at the call site

The SDK fetches the spec for each node type via get_node_type and raises ValidationError immediately when:

  • an unknown field is passed (catches typos)
  • a required field is missing or empty
  • a scalar type is wrong (e.g., string for a boolean)
  • an options value isn't in the allowed list

When a spec carries an llm_hint, the hint is appended to the error message so an LLM agent can self-correct on retry:

tool_uuids: expected tool_refs, got str
  Hint: List of tool UUIDs from `list_tools`.

Server-side Pydantic validators run on save and surface anything the SDK lets through (compound invariants, cross-field rules).

Environment

DOGRAH_API_URL=http://localhost:8000   # default
DOGRAH_API_KEY=sk-...                  # sent as X-API-Key

License

BSD 2-Clause — see LICENSE.