Marketplace genkit
Build production-ready AI workflows using Firebase Genkit. Use when creating flows, tool-calling agents, RAG pipelines, multi-agent systems, or deploying AI to Firebase/Cloud Run. Supports TypeScript, Go, and Python with Gemini, OpenAI, Anthropic, Ollama, and Vertex AI plugins.
install
source · Clone the upstream repo
git clone https://github.com/aiskillstore/marketplace
Claude Code · Install into ~/.claude/skills/
T=$(mktemp -d) && git clone --depth=1 https://github.com/aiskillstore/marketplace "$T" && mkdir -p ~/.claude/skills && cp -r "$T/skills/supercent-io/genkit" ~/.claude/skills/aiskillstore-marketplace-genkit && rm -rf "$T"
manifest:
skills/supercent-io/genkit/SKILL.mdsource content
Firebase Genkit
When to use this skill
- AI workflow orchestration: Building multi-step AI pipelines with type-safe inputs/outputs
- Flow-based APIs: Wrapping LLM calls into deployable HTTP endpoints
- Tool calling / agents: Equipping models with custom tools and implementing agentic loops
- RAG pipelines: Retrieval-augmented generation with vector databases (Pinecone, pgvector, Firestore, Chroma, etc.)
- Multi-agent systems: Coordinating multiple specialized AI agents
- Streaming responses: Real-time token-by-token output for chat or long-form content
- Firebase/Cloud Run deployment: Deploying AI functions to Google Cloud
- Prompt management: Managing prompts as versioned
files with Dotprompt.prompt
Installation & Setup
Step 1: Install the Genkit CLI
# npm (recommended for JavaScript/TypeScript) npm install -g genkit-cli # macOS/Linux binary curl -sL cli.genkit.dev | bash
Step 2: Create a TypeScript project
mkdir my-genkit-app && cd my-genkit-app npm init -y npm pkg set type=module npm install -D typescript tsx npx tsc --init mkdir src && touch src/index.ts
Step 3: Install Genkit core and a model plugin
# Core + Google AI (Gemini) — free tier, no credit card required npm install genkit @genkit-ai/google-genai # Or: Vertex AI (requires GCP project) npm install genkit @genkit-ai/vertexai # Or: OpenAI npm install genkit genkitx-openai # Or: Anthropic (Claude) npm install genkit genkitx-anthropic # Or: Ollama (local models) npm install genkit genkitx-ollama
Step 4: Configure API Key
# Google AI (Gemini) export GEMINI_API_KEY=your_key_here # OpenAI export OPENAI_API_KEY=your_key_here # Anthropic export ANTHROPIC_API_KEY=your_key_here
Core Concepts
Initializing Genkit
import { googleAI } from '@genkit-ai/google-genai'; import { genkit } from 'genkit'; const ai = genkit({ plugins: [googleAI()], model: googleAI.model('gemini-2.5-flash'), // default model });
Defining Flows
Flows are the core primitive: type-safe, observable, deployable AI functions.
import { genkit, z } from 'genkit'; import { googleAI } from '@genkit-ai/google-genai'; const ai = genkit({ plugins: [googleAI()] }); // Input/output schemas with Zod const SummaryInputSchema = z.object({ text: z.string().describe('Text to summarize'), maxWords: z.number().optional().default(100), }); const SummaryOutputSchema = z.object({ summary: z.string(), keyPoints: z.array(z.string()), }); export const summarizeFlow = ai.defineFlow( { name: 'summarizeFlow', inputSchema: SummaryInputSchema, outputSchema: SummaryOutputSchema, }, async ({ text, maxWords }) => { const { output } = await ai.generate({ model: googleAI.model('gemini-2.5-flash'), prompt: `Summarize the following text in at most ${maxWords} words and extract key points:\n\n${text}`, output: { schema: SummaryOutputSchema }, }); if (!output) throw new Error('No output generated'); return output; } ); // Call the flow const result = await summarizeFlow({ text: 'Long article content here...', maxWords: 50, }); console.log(result.summary);
Generating Content
// Simple text generation const { text } = await ai.generate({ model: googleAI.model('gemini-2.5-flash'), prompt: 'Explain quantum computing in one sentence.', }); // Structured output const { output } = await ai.generate({ prompt: 'List 3 programming languages with their use cases', output: { schema: z.object({ languages: z.array(z.object({ name: z.string(), useCase: z.string(), })), }), }, }); // With system prompt const { text: response } = await ai.generate({ system: 'You are a senior TypeScript engineer. Be concise.', prompt: 'What is the difference between interface and type in TypeScript?', }); // Multimodal (image + text) const { text: description } = await ai.generate({ prompt: [ { text: 'What is in this image?' }, { media: { url: 'https://example.com/image.jpg', contentType: 'image/jpeg' } }, ], });
Streaming Flows
export const streamingFlow = ai.defineFlow( { name: 'streamingFlow', inputSchema: z.object({ topic: z.string() }), streamSchema: z.string(), // type of each chunk outputSchema: z.object({ full: z.string() }), }, async ({ topic }, { sendChunk }) => { const { stream, response } = ai.generateStream({ prompt: `Write a detailed essay about ${topic}.`, }); for await (const chunk of stream) { sendChunk(chunk.text); // stream each token to client } const { text } = await response; return { full: text }; } ); // Client-side consumption const stream = streamingFlow.stream({ topic: 'AI ethics' }); for await (const chunk of stream.stream) { process.stdout.write(chunk); } const finalOutput = await stream.output;
Tool Calling (Agents)
import { z } from 'genkit'; // Define tools const getWeatherTool = ai.defineTool( { name: 'getWeather', description: 'Get current weather for a city', inputSchema: z.object({ city: z.string() }), outputSchema: z.object({ temp: z.number(), condition: z.string() }), }, async ({ city }) => { // Call real weather API return { temp: 22, condition: 'sunny' }; } ); const searchWebTool = ai.defineTool( { name: 'searchWeb', description: 'Search the web for information', inputSchema: z.object({ query: z.string() }), outputSchema: z.string(), }, async ({ query }) => { // Call search API return `Search results for: ${query}`; } ); // Agent flow with tools export const agentFlow = ai.defineFlow( { name: 'agentFlow', inputSchema: z.object({ question: z.string() }), outputSchema: z.string(), }, async ({ question }) => { const { text } = await ai.generate({ prompt: question, tools: [getWeatherTool, searchWebTool], returnToolRequests: false, // auto-execute tools }); return text; } );
Prompts with Dotprompt
Manage prompts as versioned
.prompt files:
# src/prompts/summarize.prompt --- model: googleai/gemini-2.5-flash input: schema: text: string style?: string output: schema: summary: string sentiment: string --- Summarize the following text in a {{style, default: "professional"}} tone: {{text}} Return JSON with summary and sentiment (positive/negative/neutral).
// Load and use dotprompt const summarizePrompt = ai.prompt('summarize'); const { output } = await summarizePrompt({ text: 'Article content here...', style: 'casual', });
RAG — Retrieval-Augmented Generation
import { devLocalVectorstore } from '@genkit-ai/dev-local-vectorstore'; import { textEmbedding004 } from '@genkit-ai/google-genai'; const ai = genkit({ plugins: [ googleAI(), devLocalVectorstore([{ indexName: 'documents', embedder: textEmbedding004, }]), ], }); // Index documents await ai.index({ indexer: devLocalVectorstoreIndexer('documents'), docs: [ { content: [{ text: 'Document 1 content...' }], metadata: { source: 'doc1' } }, { content: [{ text: 'Document 2 content...' }], metadata: { source: 'doc2' } }, ], }); // RAG flow export const ragFlow = ai.defineFlow( { name: 'ragFlow', inputSchema: z.object({ question: z.string() }), outputSchema: z.string(), }, async ({ question }) => { // Retrieve relevant documents const docs = await ai.retrieve({ retriever: devLocalVectorstoreRetriever('documents'), query: question, options: { k: 3 }, }); // Generate answer grounded in retrieved docs const { text } = await ai.generate({ system: 'Answer questions using only the provided context.', prompt: question, docs, }); return text; } );
Chat Sessions
export const chatFlow = ai.defineFlow( { name: 'chatFlow', inputSchema: z.object({ message: z.string(), sessionId: z.string() }), outputSchema: z.string(), }, async ({ message, sessionId }) => { const session = ai.loadSession(sessionId) ?? ai.createSession({ sessionId }); const chat = session.chat({ system: 'You are a helpful assistant.', }); const { text } = await chat.send(message); return text; } );
Multi-Agent Systems
// Specialist agents const researchAgent = ai.defineFlow( { name: 'researchAgent', inputSchema: z.string(), outputSchema: z.string() }, async (query) => { const { text } = await ai.generate({ system: 'You are a research expert. Gather facts and cite sources.', prompt: query, tools: [searchWebTool], }); return text; } ); const writerAgent = ai.defineFlow( { name: 'writerAgent', inputSchema: z.string(), outputSchema: z.string() }, async (brief) => { const { text } = await ai.generate({ system: 'You are a professional writer. Write clear, engaging content.', prompt: brief, }); return text; } ); // Orchestrator delegates to specialists export const contentPipelineFlow = ai.defineFlow( { name: 'contentPipelineFlow', inputSchema: z.object({ topic: z.string() }), outputSchema: z.string(), }, async ({ topic }) => { const research = await researchAgent(`Research: ${topic}`); const article = await writerAgent(`Write an article based on: ${research}`); return article; } );
Developer Tools
CLI Commands
# Start Developer UI + connect to your app genkit start -- npx tsx --watch src/index.ts genkit start -o -- npx tsx src/index.ts # auto-open browser # Run a specific flow from CLI genkit flow:run summarizeFlow '{"text": "Hello world", "maxWords": 10}' # Run with streaming output genkit flow:run streamingFlow '{"topic": "AI"}' -s # Evaluate a flow genkit eval:flow ragFlow --input eval-inputs.json # View all commands genkit --help # Disable analytics telemetry genkit config set analyticsOptOut true
Developer UI
The Developer UI runs at http://localhost:4000 and provides:
- Flow runner: Execute flows with custom JSON inputs
- Trace inspector: Visualize each step (generate, embed, retrieve, tool calls)
- Prompt playground: Test prompts interactively
- Model tester: Compare outputs across different models
- Evaluator: Run evaluation datasets against flows
# Add npm script for convenience # package.json "scripts": { "genkit:dev": "genkit start -- npx tsx --watch src/index.ts" } npm run genkit:dev
Deployment
Firebase Cloud Functions
import { onCallGenkit } from 'firebase-functions/https'; import { defineSecret } from 'firebase-functions/params'; const apiKey = defineSecret('GOOGLE_AI_API_KEY'); export const summarize = onCallGenkit( { secrets: [apiKey] }, summarizeFlow );
firebase deploy --only functions
Express.js Server
import express from 'express'; import { expressHandler } from 'genkit/express'; const app = express(); app.use(express.json()); app.post('/summarize', expressHandler(summarizeFlow)); app.post('/chat', expressHandler(chatFlow)); app.listen(3000, () => console.log('Server running on port 3000'));
Cloud Run
# Build and deploy gcloud run deploy genkit-app \ --source . \ --region us-central1 \ --set-env-vars GEMINI_API_KEY=$GEMINI_API_KEY
Supported Plugins
Model Providers
| Plugin | Package | Models |
|---|---|---|
| Google AI | | Gemini 2.5 Flash/Pro |
| Vertex AI | | Gemini, Imagen, Claude |
| OpenAI | | GPT-4o, o1, etc. |
| Anthropic | | Claude 3.5/3 |
| AWS Bedrock | | Claude, Titan, etc. |
| Ollama | | Local models |
| DeepSeek | | DeepSeek-R1 |
| xAI (Grok) | | Grok models |
Vector Databases
| Plugin | Package |
|---|---|
| Dev Local (testing) | |
| Pinecone | |
| pgvector | |
| Chroma | |
| Cloud Firestore | |
| LanceDB | |
Best Practices
- Always define input/output schemas — Use Zod objects for Dev UI labeled fields and API safety
- Use flows for all AI logic — Even simple calls; flows give you tracing and deployment for free
- Store API keys in environment variables — Never hardcode; use Firebase Secrets for production
- Use
to trace custom steps — Wrap non-Genkit code inai.run()
for trace visibilityai.run() - Stream long-form content — Use
withdefineFlow
+streamSchema
for better UXsendChunk - Separate concerns with agents — Specialized subflows > one monolithic flow
- Use Dotprompt for team prompts —
files enable versioning, review, and reuse.prompt
Constraints
Must Do
- Define schemas for all flow inputs and outputs
- Handle
output fromnull
— throw meaningful errorsgenerate() - Set
when running flows separately from the dev serverGENKIT_ENV=dev - Use
(not raw Cloud Functions) when deploying to FirebaseonCallGenkit
Must Not Do
- Never hardcode API keys in source code
- Do not use
outside a flow if you need tracing/observabilitygenerate() - Do not call
without a command — always passgenkit start-- <your-run-command> - Avoid blocking the event loop in tool handlers — use
async/await
References
- Official Docs
- Get Started Guide
- Developer Tools
- Flows Reference
- Tool Calling
- RAG Guide
- Multi-Agent Systems
- Dotprompt
- GitHub Repository
- API References
Examples
Example 1: Minimal Flow
import { googleAI } from '@genkit-ai/google-genai'; import { genkit, z } from 'genkit'; const ai = genkit({ plugins: [googleAI()] }); export const helloFlow = ai.defineFlow( { name: 'helloFlow', inputSchema: z.object({ name: z.string() }), outputSchema: z.string(), }, async ({ name }) => { const { text } = await ai.generate(`Say hello to ${name} in a creative way.`); return text; } ); // Run it const greeting = await helloFlow({ name: 'World' }); console.log(greeting);
Example 2: Full RAG + Agent Pipeline
import { googleAI, textEmbedding004 } from '@genkit-ai/google-genai'; import { devLocalVectorstore } from '@genkit-ai/dev-local-vectorstore'; import { genkit, z } from 'genkit'; const ai = genkit({ plugins: [ googleAI(), devLocalVectorstore([{ indexName: 'kb', embedder: textEmbedding004 }]), ], }); // Index knowledge base documents const indexKnowledgeBase = ai.defineFlow( { name: 'indexKB', inputSchema: z.array(z.string()) }, async (texts) => { await ai.index({ indexer: devLocalVectorstoreIndexer('kb'), docs: texts.map(text => ({ content: [{ text }] })), }); } ); // Answer questions using RAG export const answerFlow = ai.defineFlow( { name: 'answerFlow', inputSchema: z.object({ question: z.string() }), outputSchema: z.object({ answer: z.string(), sources: z.number() }), }, async ({ question }) => { const docs = await ai.retrieve({ retriever: devLocalVectorstoreRetriever('kb'), query: question, options: { k: 5 }, }); const { text } = await ai.generate({ system: 'Answer only from the provided context. If unsure, say so.', prompt: question, docs, }); return { answer: text, sources: docs.length }; } );
Example 3: Multi-Model Comparison
import { googleAI } from '@genkit-ai/google-genai'; import { openAI } from 'genkitx-openai'; import { genkit, z } from 'genkit'; const ai = genkit({ plugins: [googleAI(), openAI()] }); export const compareModelsFlow = ai.defineFlow( { name: 'compareModelsFlow', inputSchema: z.object({ prompt: z.string() }), outputSchema: z.object({ gemini: z.string(), gpt4o: z.string() }), }, async ({ prompt }) => { const [geminiResult, gptResult] = await Promise.all([ ai.generate({ model: googleAI.model('gemini-2.5-flash'), prompt }), ai.generate({ model: 'openai/gpt-4o', prompt }), ]); return { gemini: geminiResult.text, gpt4o: gptResult.text, }; } );