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Announcing StackOne Defender: leading open-source prompt injection guard for your agent Read More

Fireflies.ai MCP Server
for AI Agents

Production-ready Fireflies.ai MCP server with extensible actions — plus built-in authentication, security, and optimized execution.

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Fireflies.ai MCP Server
Built by StackOne StackOne

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14 Agent Actions

Create, read, update, and delete across Fireflies.ai — and extend your agent's capabilities with custom actions.

Authentication

Agent Tool Authentication

Per-user OAuth in one call. Your Fireflies.ai MCP server gets session-scoped tokens with zero credentials stored on your infra.

Agent Auth →

Security

Agent Protection

Every Fireflies.ai tool response scanned for prompt injection in milliseconds — 88.7% accuracy, all running on CPU.

Prompt Injection Defense →

Performance

Max Agent Context. Min Cost.

Free up to 96% of your agent's context window to enhance reasoning and reduce cost, on every Fireflies.ai call.

Tools Discovery →

What is the Fireflies.ai MCP Server?

A Fireflies.ai MCP server lets AI agents read and write Fireflies.ai data through the Model Context Protocol — Anthropic's open standard for connecting LLMs to external tools. StackOne's Fireflies.ai MCP server ships with pre-built actions, fully extensible via the Connector Builder — plus managed authentication, prompt injection defense, and optimized agent context. Connect it from MCP clients like Claude Desktop, Cursor, and VS Code, or from agent frameworks like OpenAI Agents SDK, LangChain, and Vercel AI SDK.

All Fireflies.ai MCP Tools and Actions

Every action from Fireflies.ai's API, ready for your agent. Create, read, update, and delete — scoped to exactly what you need.

Analytics

  • Get Analytics

    Retrieve team analytics including conversation metrics (filler words, questions, talk/listen ratio, words per minute) and meeting statistics (count, duration). Note: analytics data may not be available on all Fireflies plans.

Channels

  • List Channels

    Retrieve a list of channels by querying transcripts that have channel assignments. Channels are created in the Fireflies web UI and can be used to organize transcripts.

Contacts

  • List Contacts

    Retrieve a list of contacts from meetings (people who have participated in meetings)

Soundbites

  • Create Soundbite

    Create a soundbite (clip) from a transcript by specifying start and end timestamps

  • Get Soundbite

    Retrieve detailed information about a specific soundbite including captions and sources

  • List Soundbites

    Retrieve a list of soundbites. At least one filter (mine, transcript_id, or my_team) must be provided, otherwise the API returns an error.

Transcripts

  • List Transcripts

    Retrieve a list of transcripts with optional filtering by date range, keyword search, or host email

  • Get Transcript

    Retrieve detailed information about a specific transcript including full conversation text and summary

Transcript Privacys

  • Set Transcript Privacy

    Update the privacy setting of a transcript (link, owner, participants, teammatesandparticipants, or teammates)

Transcript Channels

  • Update Transcript Channel

    Update the channel assignment for a transcript (moves transcript to specified channel)

Meeting Summarys

  • Get Meeting Summary

    Get the AI-generated summary for a specific meeting.

Meetings

  • Search Meetings

    Search meeting transcripts by keyword with optional filters.

Users

  • Get User

    Retrieve information about the current API key owner

  • List Users

    Retrieve a list of all users within your team

Set Up Your Fireflies.ai MCP Server in Minutes

One endpoint. Any framework. Your agent is talking to Fireflies.ai in under 10 lines of code.

MCP Clients

Agent Frameworks

Claude Desktop
{
  "mcpServers": {
    "stackone": {
      "command": "npx",
      "args": [
        "-y",
        "mcp-remote@latest",
        "https://api.stackone.com/mcp?x-account-id=<account_id>",
        "--header",
        "Authorization: Basic <YOUR_BASE64_TOKEN>"
      ]
    }
  }
}

More AI & ML MCP Servers

Fireflies.ai MCP Server FAQ

Fireflies.ai MCP server vs direct API integration — what's the difference?
A Fireflies.ai MCP server and direct API integration serve different use cases. Direct API integration is for software-to-software — backend code calling Fireflies.ai. A Fireflies.ai MCP server is for AI agents — MCP clients like Claude and Cursor, plus framework agents built with OpenAI, LangChain, or Vercel AI — discovering and calling Fireflies.ai at runtime. StackOne provides both.
How does Fireflies.ai authentication work for AI agents?
Fireflies.ai authentication for AI agents works through a StackOne Connect Session. Create one via the dashboard or the SDK — you get an auth link and ready-to-paste config for Claude Desktop, Cursor, and other MCP clients. Your user authenticates their own Fireflies.ai account; StackOne handles token exchange, storage, and refresh. Credentials never reach the LLM, and each user is isolated via origin_owner_id.
Are Fireflies.ai MCP tools vulnerable to prompt injection?
Yes — Fireflies.ai MCP tools can be vulnerable to indirect prompt injection. Any tool that reads user-written content — documents, messages, tickets, records, or free-text fields — is a potential vector. StackOne Defender scans every tool response before it enters the agent's context — regex patterns in ~1ms, then a MiniLM classifier in ~4ms. 88.7% accuracy, CPU-only.
What is the context bloat of a Fireflies.ai agent and how do I avoid it?
Context bloat happens when Fireflies.ai tool schemas and API responses eat your Fireflies.ai agent's memory, preventing it from reasoning effectively. A single Fireflies.ai query can return a massive JSON response, and connecting multiple tools compounds the problem. Tools Discovery and Code Mode reduce context bloat — loading only relevant tools per query and keeping raw responses out of the agent's context.
Can I limit which actions my Fireflies.ai agent can access?
Yes — you can limit which actions your Fireflies.ai agent can access directly from the StackOne dashboard. Toggle actions on or off, or restrict them to specific accounts, with no code changes to your agent. Session tokens can be scoped to exact actions so if one leaks, exposure stays contained.
Can I create custom agent actions for my Fireflies.ai MCP server?
Yes — you can create custom agent actions for your Fireflies.ai MCP server using Connector Builder. It's an integration agent your coding assistant (Claude Code, Cursor, or Copilot) can invoke to research Fireflies.ai's API, generate production-ready connector YAML, test against the live API, and validate before you ship.
When should I NOT use a Fireflies.ai MCP server?
Skip a Fireflies.ai MCP server if your integration is purely software-to-software — direct Fireflies.ai API integration is simpler when no AI agent is involved. For deterministic, compliance-critical operations (financial transactions, regulatory reporting), direct API gives you predictable behavior without agent-driven decision-making. MCP shines when AI agents need to dynamically discover and call Fireflies.ai actions at runtime.
What AI frameworks and AI clients does the StackOne Fireflies.ai MCP server support?
The StackOne Fireflies.ai MCP server supports both. MCP clients (paste-and-go apps): Claude Desktop, Claude Code, Cursor, VS Code, Goose. Agent frameworks (code SDKs you build with): OpenAI Agents SDK, Anthropic, Vercel AI, Google ADK, CrewAI, Pydantic AI, LangChain, LangGraph, Azure AI Foundry.

Put your AI agents to work

All the tools you need to build and scale AI agent integrations, with best-in-class connectivity, execution, and security.