Claude Code plugin for assessing RFEs against quality criteria using a structured rubric.
claude plugin marketplace add opendatahub-io/skills-registry
/plugin install assess-rfe@opendatahub-skills
/assess-rfe RHAIRFE-1234 # assess a single RFE
/assess-rfe RHAIRFE-* # bulk assess all RFEs in the project
/export-rubric # export the rubric to artifacts/rfe-rubric.md
Apache-2.0
Uses power tools
Uses Bash, Write, or Edit tools
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