linear-cli
Linear CLI
A CLI to manage Linear issues from the command line, with git and jj integration.
Prerequisites
The linear command must be available on PATH. To check:
linear --version
If not installed, follow the instructions at: https://github.com/schpet/linear-cli?tab=readme-ov-file#install
Best Practices for Markdown Content
When working with issue descriptions or comment bodies that contain markdown, always prefer using file-based flags instead of passing content as command-line arguments:
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