Clawra Selfie
Edit Clawra's reference image with Grok Imagine (xAI Aurora) and send selfies to messaging channels via OpenClaw
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Description
--- name: clawra-selfie description: Edit Clawra's reference image with Grok Imagine (xAI Aurora) and send selfies to messaging channels via OpenClaw allowed-tools: Bash(npm:*) Bash(npx:*) Bash(openclaw:*) Bash(curl:*) Read Write WebFetch --- # Clawra Selfie Edit a fixed reference image using xAI's Grok Imagine model and distribute it across messaging platforms (WhatsApp, Telegram, Discord, Slack, etc.) via OpenClaw. ## Reference Image The skill uses a fixed reference image hosted on jsDelivr CDN: ``` https://cdn.jsdelivr.net/gh/SumeLabs/clawra@main/assets/clawra.png ``` ## When to Use - User says "send a pic", "send me a pic", "send a photo", "send a selfie" - User says "send a pic of you...", "send a selfie of you..." - User asks "what are you doing?", "how are you doing?", "where are you?" - User describes a context: "send a pic wearing...", "send a pic at..." - User wants Clawra to appear in a specific outfit, location, or situation ## Quick Reference ### Required Environment Variables ```bash FAL_KEY=your_fal_api_key # Get from https://fal.ai/dashboard/keys OPENCLAW_GATEWAY_TOKEN=your_token # From: openclaw doctor --generate-gateway-token ``` ### Workflow 1. **Get user prompt** for how to edit the image 2. **Edit image** via fal.ai Grok Imagine Edit API with fixed reference 3. **Extract image URL** from response 4. **Send to OpenClaw** with target channel(s) ## Step-by-Step Instructions ### Step 1: Collect User Input Ask the user for: - **User context**: What should the person in the image be doing/wearing/where? - **Mode** (optional): `mirror` or `direct` selfie style - **Target channel(s)**: Where should it be sent? (e.g., `#general`, `@username`, channel ID) - **Platform** (optional): Which platform? (discord, telegram, whatsapp, slack) ## Prompt Modes ### Mode 1: Mirror Selfie (default) Best for: outfit showcases, full-body shots, fashion content ``` make a pic of this person, but [user's context]. the person is taking a mirror selfie ``` **Example**: "wearing a santa hat" → ``` make a pic of this person, but wearing a santa hat. the person is taking a mirror selfie ``` ### Mode 2: Direct Selfie Best for: close-up portraits, location shots, emotional expressions ``` a close-up selfie taken by herself at [user's context], direct eye contact with the camera, looking straight into the lens, eyes centered and clearly visible, not a mirror selfie, phone held at arm's length, face fully visible ``` **Example**: "a cozy cafe with warm lighting" → ``` a close-up selfie taken by herself at a cozy cafe with warm lighting, direct eye contact with the camera, looking straight into the lens, eyes centered and clearly visible, not a mirror selfie, phone held at arm's length, face fully visible ``` ### Mode Selection Logic | Keywords in Request | Auto-Select Mode | |---------------------|------------------| | outfit, wearing, clothes, dress, suit, fashion | `mirror` | | cafe, restaurant, beach, park, city, location | `direct` | | close-up, portrait, face, eyes, smile | `direct` | | full-body, mirror, reflection | `mirror` | ### Step 2: Edit Image with Grok Imagine Use the fal.ai API to edit the reference image: ```bash REFERENCE_IMAGE="https://cdn.jsdelivr.net/gh/SumeLabs/clawra@main/assets/clawra.png" # Mode 1: Mirror Selfie PROMPT="make a pic of this person, but <USER_CONTEXT>. the person is taking a mirror selfie" # Mode 2: Direct Selfie PROMPT="a close-up selfie taken by herself at <USER_CONTEXT>, direct eye contact with the camera, looking straight into the lens, eyes centered and clearly visible, not a mirror selfie, phone held at arm's length, face fully visible" # Build JSON payload with jq (handles escaping properly) JSON_PAYLOAD=$(jq -n \ --arg image_url "$REFERENCE_IMAGE" \ --arg prompt "$PROMPT" \ '{image_url: $image_url, prompt: $prompt, num_images: 1, output_format: "jpeg"}') curl -X POST "https://fal.run/xai/grok-imagine-image/edit" \ -H "Authorization: Key $FAL_KEY" \ -H "Content-Type: application/json" \ -d "$JSON_PAYLOAD" ``` **Response Format:** ```json { "images": [ { "url": "https://v3b.fal.media/files/...", "content_type": "image/jpeg", "width": 1024, "height": 1024 } ], "revised_prompt": "Enhanced prompt text..." } ``` ### Step 3: Send Image via OpenClaw Use the OpenClaw messaging API to send the edited image: ```bash openclaw message send \ --action send \ --channel "<TARGET_CHANNEL>" \ --message "<CAPTION_TEXT>" \ --media "<IMAGE_URL>" ``` **Alternative: Direct API call** ```bash curl -X POST "http://localhost:18789/message" \ -H "Authorization: Bearer $OPENCLAW_GATEWAY_TOKEN" \ -H "Content-Type: application/json" \ -d '{ "action": "send", "channel": "<TARGET_CHANNEL>", "message": "<CAPTION_TEXT>", "media": "<IMAGE_URL>" }' ``` ## Complete Script Example ```bash #!/bin/bash # grok-imagine-edit-send.sh # Check required environment variables if [ -z "$FAL_KEY" ]; then echo "Error: FAL_KEY environment variable not set" exit 1 fi # Fixed reference image REFERENCE_IMAGE="https://cdn.jsdelivr.net/gh/SumeLabs/clawra@main/assets/clawra.png" USER_CONTEXT="$1" CHANNEL="$2" MODE="${3:-auto}" # mirror, direct, or auto CAPTION="${4:-Edited with Grok Imagine}" if [ -z "$USER_CONTEXT" ] || [ -z "$CHANNEL" ]; then echo "Usage: $0 <user_context> <channel> [mode] [caption]" echo "Modes: mirror, direct, auto (default)" echo "Example: $0 'wearing a cowboy hat' '#general' mirror" echo "Example: $0 'a cozy cafe' '#general' direct" exit 1 fi # Auto-detect mode based on keywords if [ "$MODE" == "auto" ]; then if echo "$USER_CONTEXT" | grep -qiE "outfit|wearing|clothes|dress|suit|fashion|full-body|mirror"; then MODE="mirror" elif echo "$USER_CONTEXT" | grep -qiE "cafe|restaurant|beach|park|city|close-up|portrait|face|eyes|smile"; then MODE="direct" else MODE="mirror" # default fi echo "Auto-detected mode: $MODE" fi # Construct the prompt based on mode if [ "$MODE" == "direct" ]; then EDIT_PROMPT="a close-up selfie taken by herself at $USER_CONTEXT, direct eye contact with the camera, looking straight into the lens, eyes centered and clearly visible, not a mirror selfie, phone held at arm's length, face fully visible" else EDIT_PROMPT="make a pic of this person, but $USER_CONTEXT. the person is taking a mirror selfie" fi echo "Mode: $MODE" echo "Editing reference image with prompt: $EDIT_PROMPT" # Edit image (using jq for proper JSON escaping) JSON_PAYLOAD=$(jq -n \ --arg image_url "$REFERENCE_IMAGE" \ --arg prompt "$EDIT_PROMPT" \ '{image_url: $image_url, prompt: $prompt, num_images: 1, output_format: "jpeg"}') RESPONSE=$(curl -s -X POST "https://fal.run/xai/grok-imagine-image/edit" \ -H "Authorization: Key $FAL_KEY" \ -H "Content-Type: application/json" \ -d "$JSON_PAYLOAD") # Extract image URL IMAGE_URL=$(echo "$RESPONSE" | jq -r '.images[0].url') if [ "$IMAGE_URL" == "null" ] || [ -z "$IMAGE_URL" ]; then echo "Error: Failed to edit image" echo "Response: $RESPONSE" exit 1 fi echo "Image edited: $IMAGE_URL" echo "Sending to channel: $CHANNEL" # Send via OpenClaw openclaw message send \ --action send \ --channel "$CHANNEL" \ --message "$CAPTION" \ --media "$IMAGE_URL" echo "Done!" ``` ## Node.js/TypeScript Implementation ```typescript import { fal } from "@fal-ai/client"; import { exec } from "child_process"; import { promisify } from "util"; const execAsync = promisify(exec); const REFERENCE_IMAGE = "https://cdn.jsdelivr.net/gh/SumeLabs/clawra@main/assets/clawra.png"; interface GrokImagineResult { images: Array<{ url: string; content_type: string; width: number; height: number; }>; revised_prompt?: string; } type SelfieMode = "mirror" | "direct" | "auto"; function detectMode(userContext: string): "mirror" | "direct" { const mirrorKeywords = /outfit|wearing|clothes|dress|suit|fashion|full-body|mirror/i; const directKeywords = /cafe|restaurant|beach|park|city|close-up|portrait|face|eyes|smile/i; if (directKeywords.test(userContext)) return "direct"; if (mirrorKeywords.test(userContext)) return "mirror"; return "mirror"; // default } function buildPrompt(userContext: string, mode: "mirror" | "direct"): string { if (mode === "direct") { return `a close-up selfie taken by herself at ${userContext}, direct eye contact with the camera, looking straight into the lens, eyes centered and clearly visible, not a mirror selfie, phone held at arm's length, face fully visible`; } return `make a pic of this person, but ${userContext}. the person is taking a mirror selfie`; } async function editAndSend( userContext: string, channel: string, mode: SelfieMode = "auto", caption?: string ): Promise<string> { // Configure fal.ai client fal.config({ credentials: process.env.FAL_KEY! }); // Determine mode const actualMode = mode === "auto" ? detectMode(userContext) : mode; console.log(`Mode: ${actualMode}`); // Construct the prompt const editPrompt = buildPrompt(userContext, actualMode); // Edit reference image with Grok Imagine console.log(`Editing image: "${editPrompt}"`); const result = await fal.subscribe("xai/grok-imagine-image/edit", { input: { image_url: REFERENCE_IMAGE, prompt: editPrompt, num_images: 1, output_format: "jpeg" } }) as { data: GrokImagineResult }; const imageUrl = result.data.images[0].url; console.log(`Edited image URL: ${imageUrl}`); // Send via OpenClaw const messageCaption = caption || `Edited with Grok Imagine`; await execAsync( `openclaw message send --action send --channel "${channel}" --message "${messageCaption}" --media "${imageUrl}"` ); console.log(`Sent to ${channel}`); return imageUrl; } // Usage Examples // Mirror mode (auto-detected from "wearing") editAndSend( "wearing a cyberpunk outfit with neon lights", "#art-gallery", "auto", "Check out this AI-edited art!" ); // → Mode: mirror // → Prompt: "make a pic of this person, but wearing a cyberpunk outfit with neon lights. the person is taking a mirror selfie" // Direct mode (auto-detected from "cafe") editAndSend( "a cozy cafe with warm lighting", "#photography", "auto" ); // → Mode: direct // → Prompt: "a close-up selfie taken by herself at a cozy cafe with warm lighting, direct eye contact..." // Explicit mode override editAndSend("casual street style", "#fashion", "direct"); ``` ## Supported Platforms OpenClaw supports sending to: | Platform | Channel Format | Example | |----------|----------------|---------| | Discord | `#channel-name` or channel ID | `#general`, `123456789` | | Telegram | `@username` or chat ID | `@mychannel`, `-100123456` | | WhatsApp | Phone number (JID format) | `[email protected]` | | Slack | `#channel-name` | `#random` | | Signal | Phone number | `+1234567890` | | MS Teams | Channel reference | (varies) | ## Grok Imagine Edit Parameters | Parameter | Type | Default | Description | |-----------|------|---------|-------------| | `image_url` | string | required | URL of image to edit (fixed in this skill) | | `prompt` | string | required | Edit instruction | | `num_images` | 1-4 | 1 | Number of images to generate | | `output_format` | enum | "jpeg" | jpeg, png, webp | ## Setup Requirements ### 1. Install fal.ai client (for Node.js usage) ```bash npm install @fal-ai/client ``` ### 2. Install OpenClaw CLI ```bash npm install -g openclaw ``` ### 3. Configure OpenClaw Gateway ```bash openclaw config set gateway.mode=local openclaw doctor --generate-gateway-token ``` ### 4. Start OpenClaw Gateway ```bash openclaw gateway start ``` ## Error Handling - **FAL_KEY missing**: Ensure the API key is set in environment - **Image edit failed**: Check prompt content and API quota - **OpenClaw send failed**: Verify gateway is running and channel exists - **Rate limits**: fal.ai has rate limits; implement retry logic if needed ## Tips 1. **Mirror mode context examples** (outfit focus): - "wearing a santa hat" - "in a business suit" - "wearing a summer dress" - "in streetwear fashion" 2. **Direct mode context examples** (location/portrait focus): - "a cozy cafe with warm lighting" - "a sunny beach at sunset" - "a busy city street at night" - "a peaceful park in autumn" 3. **Mode selection**: Let auto-detect work, or explicitly specify for control 4. **Batch sending**: Edit once, send to multiple channels 5. **Scheduling**: Combine with OpenClaw scheduler for automated posts
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