원클릭으로
findmy
Track Apple devices and AirTags via FindMy.app on macOS using AppleScript and screen capture.
Codex 또는 Claude로 설치 이 Prompt를 복사해 Codex, Claude 또는 다른 어시스턴트에 붙여 넣으면 Skill 페이지를 검토하고 설치를 진행할 수 있습니다.
메뉴
Track Apple devices and AirTags via FindMy.app on macOS using AppleScript and screen capture.
Codex 또는 Claude로 설치 이 Prompt를 복사해 Codex, Claude 또는 다른 어시스턴트에 붙여 넣으면 Skill 페이지를 검토하고 설치를 진행할 수 있습니다.
SOC 직업 분류 기준
Delegate coding tasks to Blackbox AI CLI agent. Multi-model agent with built-in judge that runs tasks through multiple LLMs and picks the best result. Requires the blackbox CLI and a Blackbox AI API key.
Query Solana blockchain data with USD pricing — wallet balances, token portfolios with values, transaction details, NFTs, whale detection, and live network stats. Uses Solana RPC + CoinGecko. No API key required.
Control Blender directly from Gauss via socket connection to the blender-mcp addon. Create 3D objects, materials, animations, and run arbitrary Blender Python (bpy) code. Use when user wants to create or modify anything in Blender.
Give the agent its own dedicated email inbox via AgentMail. Send, receive, and manage email autonomously using agent-owned email addresses (e.g. gauss-agent@agentmail.to).
Connect to a running NeuroSkill instance and incorporate the user's real-time cognitive and emotional state (focus, relaxation, mood, cognitive load, drowsiness, heart rate, HRV, sleep staging, and 40+ derived EXG scores) into responses. Requires a BCI wearable (Muse 2/S or OpenBCI) and the NeuroSkill desktop app running locally.
Migrate a user's OpenClaw customization footprint into Gauss Agent. Imports Gauss-compatible memories, SOUL.md, command allowlists, user skills, and selected workspace assets from ~/.openclaw, then reports exactly what could not be migrated and why.
| name | findmy |
| description | Track Apple devices and AirTags via FindMy.app on macOS using AppleScript and screen capture. |
| version | 1.0.0 |
| author | Gauss Agent |
| license | MIT |
| platforms | ["macos"] |
| metadata | {"gauss":{"tags":["FindMy","AirTag","location","tracking","macOS","Apple"]}} |
Track Apple devices and AirTags via the FindMy.app on macOS. Since Apple doesn't provide a CLI for FindMy, this skill uses AppleScript to open the app and screen capture to read device locations.
peekaboo for better UI automation:
brew install steipete/tap/peekaboo# Open Find My app
osascript -e 'tell application "FindMy" to activate'
# Wait for it to load
sleep 3
# Take a screenshot of the Find My window
screencapture -w -o /tmp/findmy.png
Then use vision_analyze to read the screenshot:
vision_analyze(image_url="/tmp/findmy.png", question="What devices/items are shown and what are their locations?")
# Switch to Devices tab
osascript -e '
tell application "System Events"
tell process "FindMy"
click button "Devices" of toolbar 1 of window 1
end tell
end tell'
# Switch to Items tab (AirTags)
osascript -e '
tell application "System Events"
tell process "FindMy"
click button "Items" of toolbar 1 of window 1
end tell
end tell'
If peekaboo is installed, use it for more reliable UI interaction:
# Open Find My
osascript -e 'tell application "FindMy" to activate'
sleep 3
# Capture and annotate the UI
peekaboo see --app "FindMy" --annotate --path /tmp/findmy-ui.png
# Click on a specific device/item by element ID
peekaboo click --on B3 --app "FindMy"
# Capture the detail view
peekaboo image --app "FindMy" --path /tmp/findmy-detail.png
Then analyze with vision:
vision_analyze(image_url="/tmp/findmy-detail.png", question="What is the location shown for this device/item? Include address and coordinates if visible.")
For monitoring an AirTag (e.g., tracking a cat's patrol route):
# 1. Open FindMy to Items tab
osascript -e 'tell application "FindMy" to activate'
sleep 3
# 2. Click on the AirTag item (stay on page — AirTag only updates when page is open)
# 3. Periodically capture location
while true; do
screencapture -w -o /tmp/findmy-$(date +%H%M%S).png
sleep 300 # Every 5 minutes
done
Analyze each screenshot with vision to extract coordinates, then compile a route.
vision_analyze to read screenshot content — don't try to parse pixels