gog
About
gog is a CLI tool for interacting with Google Workspace services like Gmail, Calendar, Drive, and Contacts directly from your terminal. Use it to automate tasks such as searching emails, sending messages, managing calendar events, and querying Drive files. It requires an initial OAuth setup but then provides a streamlined way to script Google Workspace operations.
Documentation
gog
Use gog for Gmail/Calendar/Drive/Contacts. Requires OAuth setup.
Setup (once)
gog auth credentials /path/to/client_secret.jsongog auth add [email protected] --services gmail,calendar,drive,contactsgog auth list
Common commands
- Gmail search:
gog gmail search 'newer_than:7d' --max 10 - Gmail send:
gog gmail send --to [email protected] --subject "Hi" --body "Hello" - Calendar:
gog calendar events <calendarId> --from <iso> --to <iso> - Drive:
gog drive search "query" --max 10 - Contacts:
gog contacts list --max 20
Notes
- Set
[email protected]to avoid repeating--account. - Confirm before sending mail or creating events.
Quick Install
/plugin add https://github.com/steipete/clawdis/tree/main/gogCopy and paste this command in Claude Code to install this skill
GitHub 仓库
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