
Genkit is a framework for building AI-powered applications. It provides open source libraries for Node.js and Go, along with tools to help you debug and iterate quickly.
Learn more in our documentation for Node.js and Go.
What can you build with Genkit?
Genkit is a versatile framework, which you can use to build many different types of AI applications. Common use cases include:
Intelligent agents: Create agents that understand user requests and perform tasks autonomously, such as personalized travel planning or itinerary generation.
- Example: Compass Travel Planning App
Data transformation: Convert unstructured data, like natural language, into structured formats (e.g., objects, SQL queries, tables) for integration into your app or data pipeline.
- Example: Add Natural Language AI Data Filters with Genkit
Retrieval-augmented generation: Create apps that provide accurate and contextually relevant responses by grounding generation with your own data sources, such as chatbots or question answering systems.
- Example: Build AI features powered by your data
Who should use Genkit?
Genkit is built for developers seeking to add generative AI to their apps with Node.js or Go, and can run anywhere these runtimes are supported. It’s designed around a plugin architecture that can work with any generative model API or vector database, with many integrations already available.
While developed by the Firebase team, Genkit can be used independently of Firebase or Google Cloud services.
Get started
- Node.js quickstart
- Next.js quickstart
- Go quickstart
[!NOTE] Genkit for Go is in alpha, so we only recommend it for prototyping.
Library key features
Unified generation API: Generate text, media, structured objects, and tool calls from any generative model using a single, adaptable API.
Vector database support: Add retrieval-augmented generation (RAG) to your apps with simple indexing and retrieval APIs that work across vector database providers.
Enhanced prompt engineering: Define rich prompt templates, model configurations, input/output schemas, and tools all within a single, runnable .prompt file.
AI workflows: Organize your AI app logic into Flows - functions designed for observability, streaming, integration with Genkit devtools, and easy deployment as API endpoints.
Built-in streaming: Stream content from your Genkit API endpoints to your client app to create snappy user experiences.
Development tools
Genkit provides a CLI and a local UI to streamline your AI development workflow.
CLI
The Genkit CLI includes commands for running and evaluating your Genkit functions (flows) and collecting telemetry and logs.
- Install:
npm i -g genkit - Run a command, wrapped with telemetry, a interactive developer UI, etc:
genkit start -- <command to run your code>
Developer UI
The Genkit developer UI is a local interface for testing, debugging, and iterating on your AI application.
Key features:
- Run: Execute and experiment with Genkit flows, prompts, queries, and more in dedicated playgrounds.
- Inspect: Analyze detailed traces of past executions, including step-by-step breakdowns of complex flows.
- Evaluate: Review the results of evaluations run against your flows, including performance metrics and links to relevant traces.

Plugin ecosystem
Extend Genkit with plugins for specific AI models, vector databases, and platform integrations from providers like Google and OpenAI.
- Node.js plugins: Explore on npm
- Go plugins: Explore on pkg.go.dev
Create and share your own plugins:
- Write Node.js plugins: Plugin Authoring Guide
- Write Go plugins: Plugin Authoring Guide
Find excellent examples of community-built plugins for OpenAI, Anthropic, Cohere, and more in this repository.
Try Genkit on IDX
Want to skip the local setup? Click below to try out Genkit using Project IDX, Google’s AI-assisted workspace for full-stack app development in the cloud.
Sample apps
Take a look at some samples of Genkit in use:
- “AI barista” – demonstrates simple LLM usage
- A simple chatbot with a JavaScript frontend – add history to LLM sessions
- Restaurant menu Q&A app – this sample shows progressively more sophisticated versions of a menu understanding app.
- Streaming to an Angular frontend
- js-schoolAgent: A simple school assistant system with a routing agent and specialized agents
- Prompts: Shows off several prompting techniques
Connect with us
Join the community: Stay updated, ask questions, and share your work with other Genkit users on our Discord server.
Provide feedback: Report issues or suggest new features using our GitHub issue tracker.
Contributing
Contributions to Genkit are welcome and highly appreciated! See our Contribution Guide to get started.
Authors
Genkit is built by Firebase with contributions from the Open Source Community.
Genkit MCP
Project Details
- firebase/genkit
- genkitx-mcp
- Apache License 2.0
- Last Updated: 4/21/2025
Categories
Recomended MCP Servers
MCP server for interfacing with Godot game engine. Provides tools for launching the editor, running projects, and capturing...
MCP server integrating CEDARScript grammar functionality into tool use.
A powerful browser automation and testing server using the Model Context Protocol (MCP). Enables AI agents to control...
Claude Custom Prompts MCP Server - Create and use custom prompt templates with Claude AI
A simple MCP server for Obsidian
MCP server for long term agent memory with Mem0. Also useful as a template to get you started...
Allow LLMs to control a browser with Browserbase and Stagehand
An MCP server implementation for accessing Obsidian via local REST API
ramp_mcp





