Deepgram MCP connector
OAuth 2.1/DCR TranscriptionAIConnect to Deepgram MCP. Transcribe audio, generate speech, and manage transcription projects using Deepgram's AI-powered speech recognition API.
Deepgram MCP connector
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Install the SDK
Section titled “Install the SDK”Terminal window npm install @scalekit-sdk/nodeTerminal window pip install scalekit -
Set your credentials
Section titled “Set your credentials”Add your Scalekit credentials to your
.envfile. Find values in app.scalekit.com > Developers > API Credentials..env SCALEKIT_ENVIRONMENT_URL=<your-environment-url>SCALEKIT_CLIENT_ID=<your-client-id>SCALEKIT_CLIENT_SECRET=<your-client-secret> -
Authorize and make your first call
Section titled “Authorize and make your first call”quickstart.ts import { ScalekitClient } from '@scalekit-sdk/node'import 'dotenv/config'const scalekit = new ScalekitClient(process.env.SCALEKIT_ENV_URL,process.env.SCALEKIT_CLIENT_ID,process.env.SCALEKIT_CLIENT_SECRET,)const actions = scalekit.actionsconst connector = 'deepgrammcp'const identifier = 'user_123'// Generate an authorization link for the userconst { link } = await actions.getAuthorizationLink({ connectionName: connector, identifier })console.log('Authorize Deepgram MCP:', link)process.stdout.write('Press Enter after authorizing...')await new Promise(r => process.stdin.once('data', r))// Make your first callconst result = await actions.executeTool({connector,identifier,toolName: 'deepgrammcp_search_deepgram_knowledge_sources',toolInput: { query: 'YOUR_QUERY' },})console.log(result)quickstart.py import osfrom scalekit.client import ScalekitClientfrom dotenv import load_dotenvload_dotenv()scalekit_client = ScalekitClient(env_url=os.getenv("SCALEKIT_ENV_URL"),client_id=os.getenv("SCALEKIT_CLIENT_ID"),client_secret=os.getenv("SCALEKIT_CLIENT_SECRET"),)actions = scalekit_client.actionsconnection_name = "deepgrammcp"identifier = "user_123"# Generate an authorization link for the userlink_response = actions.get_authorization_link(connection_name=connection_name,identifier=identifier,)print("Authorize Deepgram MCP:", link_response.link)input("Press Enter after authorizing...")# Make your first callresult = actions.execute_tool(tool_input={"query":"YOUR_QUERY"},tool_name="deepgrammcp_search_deepgram_knowledge_sources",connection_name=connection_name,identifier=identifier,)print(result)
What you can do
Section titled “What you can do”Connect this agent connector to let your agent:
- Search deepgram knowledge sources — Search Deepgram documentation and knowledge sources for the most relevant results for a given query
Tool list
Section titled “Tool list”Use the exact tool names from the Tool list below when you call execute_tool. If you’re not sure which name to use, list the tools available for the current user first.
deepgrammcp_search_deepgram_knowledge_sources
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Search Deepgram documentation and knowledge sources for the most relevant results for a given query. 1 param
Search Deepgram documentation and knowledge sources for the most relevant results for a given query.
Name Type Required Description
query string required A single, well-formed natural-language query to search Deepgram knowledge sources. Must be a complete sentence.