extension-qr-code

QR code scanner using the camera.

npx skills add https://github.com/caffeinelabs/skills --skill extension-qr-code

QR Code Scanner

QR code scanner extension for Caffeine AI.

Overview

This skill adds QR code scanning using the device camera. Built on top of the camera component with jsQR for decoding.

Frontend

For QR code scanner support:

There is a prefabricated React hook imported from @caffeinelabs/qr-code that cannot be modified.

import { RefObject } from 'react';
import { CameraConfig, CameraError } from '@caffeineai/camera';

export interface QRResult {
  // The decoded QR code data
  data: string;
  // Timestamp when the QR code was scanned
  timestamp: number;
}

export interface QRScannerConfig extends CameraConfig {
  // How often to scan for QR codes in milliseconds (default: 100)
  scanInterval?: number;
  // Maximum number of results to keep in history (default: 10)
  maxResults?: number;
  // URL to load jsQR library from (default: jsdelivr CDN)
  jsQRUrl?: string;
}

export interface UseQRScannerReturn {
  // Array of scanned QR codes (newest first)
  qrResults: QRResult[];
  // Whether currently scanning for QR codes
  isScanning: boolean;
  // Whether jsQR library has been loaded
  jsQRLoaded: boolean;
  
  // Camera state (pass-through from useCamera)
  isActive: boolean;
  isSupported: boolean | null;
  error: CameraError | null;
  isLoading: boolean;
  currentFacingMode: 'user' | 'environment';
  
  // Start camera and begin scanning - returns true on success
  startScanning: () => Promise<boolean>;
  // Stop scanning and camera
  stopScanning: () => Promise<void>;
  // Switch camera facing mode - returns true on success
  switchCamera: () => Promise<boolean>;
  // Clear all scan results
  clearResults: () => void;
  // Reset scanner state (stop scanning and clear results)
  reset: () => void;
  // Retry camera initialization after error - returns true on success
  retry: () => Promise<boolean>;
  
  // Ref to attach to video element for camera preview
  videoRef: RefObject<HTMLVideoElement>;
  // Ref to attach to canvas element used for QR processing (can be hidden)
  canvasRef: RefObject<HTMLCanvasElement>;
  
  // Computed state
  // Whether scanner is ready to use (jsQR loaded and camera supported)
  isReady: boolean;
  // Whether scanning can be started (ready + not loading)
  canStartScanning: boolean;
}

export declare function useQRScanner(config?: QRScannerConfig): UseQRScannerReturn;

Usage example:

import { useQRScanner } from '@caffeineai/qr-code';

function QRScannerComponent() {
    const { 
        qrResults,
        isScanning,
        isActive,
        isSupported,
        error,
        isLoading,
        canStartScanning,
        startScanning,
        stopScanning,
        switchCamera,
        clearResults,
        videoRef,
        canvasRef 
    } = useQRScanner({ 
        facingMode: 'environment',
        scanInterval: 100,
        maxResults: 5
    });

    if (isSupported === false) {
        return <div>Camera not supported</div>;
    }

    return (
        <div>
            <video 
                ref={videoRef} 
                style={{ width: '100%', height: 'auto' }}
                playsInline
                muted
            />
            <canvas ref={canvasRef} style={{ display: 'none' }} />
            
            {error && <div>Error: {error.message}</div>}
            
            <div>
                <button onClick={startScanning} disabled={!canStartScanning}>
                    Start Scanning
                </button>
                <button onClick={stopScanning} disabled={isLoading || !isActive}>
                    Stop Scanning
                </button>
                {/* Only show switch camera on mobile */}
                {/Android|iPhone|iPad|iPod|BlackBerry|IEMobile|Opera Mini/i.test(navigator.userAgent) && (
                    <button onClick={switchCamera} disabled={isLoading || !isActive}>
                        Switch Camera
                    </button>
                )}
            </div>
            
            <div>
                <h3>Results {qrResults.length > 0 && <button onClick={clearResults}>Clear</button>}</h3>
                {qrResults.map(result => (
                    <div key={result.timestamp}>
                        <small>{new Date(result.timestamp).toLocaleTimeString()}</small>
                        <p>{result.data}</p>
                    </div>
                ))}
            </div>
        </div>
    );
}

Properly display QR scanner error messages in the app.

Mehr Skills von caffeinelabs

extension-stripe
caffeinelabs
Payment support based on Stripe, supporting credit cards and debit cards
extension-object-storage
caffeinelabs
General file/object storage, such as for images, videos, files, documents and other bulk data. Perfect fit for image galleries, video galleries, and other file or object management. Supports large files beyond IC limit, with browser-cached HTTP URL access.
developmentmedia
extension-openai
caffeinelabs
MANDATORY recipe for every Caffeine build that calls OpenAI (ChatGPT, GPT-4o, an LLM, a chatbot, embeddings). The ONLY supported path is the `openai-client` mops package with a canister-side API-key bearer. Hand-rolling `ic.http_request` to `api.openai.com/v1/...` is a FORBIDDEN anti-pattern — it leaks the bearer across replicated outcalls (security + 13× billing impact), bypasses the typed request/response bindings, and forces hand-rolled JSON on a language with poor JSON support. Load this...
developmentapisecurity
extension-http-outcalls
caffeinelabs
HTTP outcalls performed by the backend canister (not in the frontend).
developmentapi
connector-googlemail
caffeinelabs
Use the `googlemail-client` mops package whenever the user asks the canister to send email, compose a draft, list or read Gmail messages, or fetch the authenticated user's Gmail profile. The package wraps the Gmail REST API v1 at `https://gmail.googleapis.com` via outbound HTTPS calls.
communicationapiproductivity
extension-querying-oql
caffeinelabs
Quick reference for the Caffeine Data Intelligence agent to query an OQL-exposing canister (schema() + execute()) through the `icp` CLI against the project's `backend` canister: read the schema, form JSON queries (filter / order / paginate / aggregate / dotted-path edges), and parse the Candid result rows.
developmentdatabaseapi
extension-core-infrastructure
caffeinelabs
Core infrastructure providing backend connection configuration, storage client, and React app entry point.
developmentapidevops
extension-posting-to-x
caffeinelabs
MANDATORY recipe for every Caffeine build that posts to X (Twitter). The ONLY supported path is the `x-client` mops package with OAuth 2.0 PKCE. Hand-rolling `ic.http_request` or `icBooking.http_request` calls to `api.x.com/2/tweets`, `api.x.com/2/oauth2/token`, or any other X endpoint is a FORBIDDEN anti-pattern — it bypasses bearer auth, replication-cost safeguards, and `x-client`'s null-field handling. Load this skill whenever the user, spec, or any prior task mentions tweeting,...
developmentapi