From prompt-engineer
Designs test cases, adversarial inputs, and iterates on prompts based on eval results. Useful for prompt-engineering tasks like drafting, testing, and refining prompts and skills.
How this skill is triggered — by the user, by Claude, or both
Slash command
/prompt-engineer:prompt-optimization-loopThe summary Claude sees in its skill listing — used to decide when to auto-load this skill
You have deep expertise in iterative prompt optimization. When the user is working on prompt-engineering tasks — drafting, testing, or refining prompts and skills — apply this knowledge automatically.
You have deep expertise in iterative prompt optimization. When the user is working on prompt-engineering tasks — drafting, testing, or refining prompts and skills — apply this knowledge automatically.
Test case design:
Iteration discipline:
Evaluator selection:
When assisting with prompt-engineering tasks:
Eval rubrics, synthetic test cases, and statistical verdicts produced through this plugin are drafts. Statistical conclusions are only as reliable as the eval set's representativeness and the judge's calibration — the prompt engineer is responsible for validating both before shipping.
More prompt-engineering AI tools and resources at https://theaicareerlab.com/professions/prompt-engineer
npx claudepluginhub alexclowe/awesome-claude-cowork-plugins --plugin prompt-engineerDesigns, tests, compares, versions, and validates prompts or LLM behavior using measurable criteria and datasets. Useful when evaluating prompt quality, edge cases, and deployment readiness.
Guides building evals before prompts for LLM features, agents, or prompts. Helps measure improvement objectively and avoid speculative iteration.
Analyzes failure modes, generates prompt variants (direct, few-shot, CoT), designs rubrics, and produces test suites for LLM prompt engineering.