firebase-vertex-ai
Execute firebase platform expert with Vertex AI Gemini integration for Authentication, Firestore, Storage, Functions, Hosting, and AI-powered features. Use when asked to "setup firebase", "deploy to firebase", or "integrate vertex ai with firebase". Trigger with relevant phrases based on skill purpose.
Allowed Tools
Provided by Plugin
jeremy-firebase
Firebase platform expert for Firestore, Auth, Functions, and Vertex AI integration
Installation
This skill is included in the jeremy-firebase plugin:
/plugin install jeremy-firebase@claude-code-plugins-plus
Click to copy
Instructions
Firebase Vertex AI
Operate Firebase projects end-to-end (Auth, Firestore, Functions, Hosting) and integrate Gemini/Vertex AI safely for AI-powered features.
Overview
Use this skill to design, implement, and deploy Firebase applications that call Vertex AI/Gemini from Cloud Functions (or other GCP services) with secure secrets handling, least-privilege IAM, and production-ready observability.
Prerequisites
- Node.js runtime and Firebase CLI access for the target project
- A Firebase project (billing enabled for Functions/Vertex AI as needed)
- Vertex AI API enabled and permissions to call Gemini/Vertex AI from your backend
- Secrets managed via env vars or Secret Manager (never in client code)
Instructions
- Initialize Firebase (or validate an existing repo): Hosting/Functions/Firestore as required.
- Implement backend integration:
- add a Cloud Function/HTTP endpoint that calls Gemini/Vertex AI
- validate inputs and return structured responses
- Configure data and security:
- Firestore rules + indexes
- Storage rules (if applicable)
- Auth providers and authorization checks
- Deploy and verify:
- deploy Functions/Hosting
- run smoke tests against deployed endpoints
- Add ops guardrails:
- logging/metrics
- alerting for error spikes
- basic cost controls (budgets/quotas) where appropriate
Output
- A deployable Firebase project structure (configs + Functions/Hosting as needed)
- Secure backend code that calls Gemini/Vertex AI (with secrets handled correctly)
- Firestore/Storage rules and index guidance
- A verification checklist (local + deployed) and CI-ready commands
Error Handling
- Auth failures: identify the principal and missing permission/role; fix with least privilege.
- Billing/API issues: detect which API or quota is blocking and provide remediation steps.
- Firestore rule/index problems: provide minimal repro queries and rule fixes.
- Vertex AI call failures: surface model/region mismatches and add retries/backoff for transient errors.
Examples
Example: Gemini-backed chat API on Firebase
- Request: “Deploy Hosting + a Function that powers a Gemini chat endpoint.”
- Result:
/api/chatfunction, Secret Manager wiring, and smoke tests.
Example: Firestore-powered RAG
- Request: “Build a RAG flow that embeds docs and answers with citations.”
- Result: ingestion plan, embedding + index strategy, and evaluation prompts.
Resources
- Full detailed guide (kept for reference):
${CLAUDESKILLDIR}/references/SKILL.full.md - Firebase docs: https://firebase.google.com/docs
- Cloud Functions for Firebase: https://firebase.google.com/docs/functions
- Vertex AI docs: https://cloud.google.com/vertex-ai/docs