c-tracking
About
This skill enables package tracking across UPS, FedEx, USPS, and DHL directly through the `ordercli` CLI tool. It retrieves current status, delivery estimates, and shipment history without visiting carrier websites. Use it for quick, consolidated shipping updates by providing tracking numbers, with optional explicit carrier specification.
Quick Install
Claude Code
Recommendednpx skills add daxaur/openpaw -a claude-code/plugin add https://github.com/daxaur/openpawgit clone https://github.com/daxaur/openpaw.git ~/.claude/skills/c-trackingCopy and paste this command in Claude Code to install this skill
Documentation
What This Skill Does
Uses ordercli to look up package tracking information across all major carriers. Returns current status, location, and estimated delivery without opening a browser.
CLI Tool: ordercli
Common Commands
# Track a package (carrier auto-detected)
ordercli track 1Z999AA10123456784
# Specify carrier explicitly
ordercli track --carrier ups 1Z999AA10123456784
ordercli track --carrier fedex 123456789012
ordercli track --carrier usps 9400111899223397623472
ordercli track --carrier dhl 1234567890
# Get full shipment history/events
ordercli track --history 1Z999AA10123456784
# Track multiple packages
ordercli track 1Z999AA10123456784 9400111899223397623472
Supported Carriers
ups, fedex, usps, dhl
Usage Guidelines
- If the user provides a tracking number, attempt auto-detection first before specifying a carrier.
- Show: current status, last known location, and estimated delivery date.
- If tracking fails or carrier is unrecognized, ask the user to confirm the carrier name.
- Use
--historywhen the user asks for a full timeline of events.
Notes
- Tracking numbers must be exact — no spaces or dashes unless the carrier format requires them.
- Some carriers have delayed updates; results reflect the last carrier scan.
GitHub Repository
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