一键导入
fake-jira-skill
Query Jira for bugs in a project and summarize coverage gaps. Test fixture for e2e external-state field detection.
用 Codex 或 Claude 帮你安装 复制这段 Prompt,粘贴到 Codex、Claude 或其他助手里,让它检查 Skill 页面并帮你完成安装。
菜单
Query Jira for bugs in a project and summarize coverage gaps. Test fixture for e2e external-state field detection.
用 Codex 或 Claude 帮你安装 复制这段 Prompt,粘贴到 Codex、Claude 或其他助手里,让它检查 Skill 页面并帮你完成安装。
基于 SOC 职业分类
Generate eval.yaml for the agent eval harness. Two modes - (1) Skill-based - examines SKILL.md, sub-skills, scripts, test cases to verify implementation quality, OR (2) Prompt-based - tests agent capabilities using custom analysis prompts (documentation effectiveness, pattern understanding, API usage, constraint compliance). Produces complete config with execution mode, dataset schema, outputs, judges, models, thresholds. Use when setting up evaluation, testing skills/documentation, adding quality checks, or benchmarking. Auto-triggered by /eval-run when eval.yaml missing. Triggered by "how do I know if my skill/docs work?"
Generate evaluation test cases for an eval.yaml. Sources cases per generation.strategy - skill analysis (default), synthetic LLM generation from generation prompts (documentation and agent-capability evals), or MLflow production traces. Bootstraps a starter dataset or augments an existing one to improve coverage. Use when setting up evaluation, when the user needs test cases, when coverage is too thin, or after /eval-analyze when no dataset exists yet. Triggers on "create test cases", "generate test data", "need test inputs", "make a dataset", "add more cases", "improve coverage", "generate documentation eval cases". Also useful when /eval-run reports "no test cases found."
MLflow integration for evaluation — sync datasets, log run results, push/pull feedback between the harness and MLflow traces. Use when the user wants to log eval results to MLflow, sync test cases to MLflow datasets, connect judge scores to traces, pull MLflow annotations for eval-optimize, or view results in the MLflow UI. Triggers on "log to mlflow", "sync dataset", "push results", "mlflow integration", "view in mlflow".
Automated skill improvement loop. Runs eval, identifies judge failures, reads traces and rationale, edits the SKILL.md to fix issues, re-runs to verify, and checks for regressions. Use when the user wants to automatically improve a skill based on eval results, fix failing judges, make the skill better, auto-fix quality issues, improve scores, or iterate until all judges pass. Triggers on "optimize the skill", "make it pass", "auto-fix", "improve the scores", "why is it failing". Works best after /eval-run has produced results to learn from.
Interactive review of evaluation results. Presents judge scores and skill outputs for human feedback, then proposes SKILL.md improvements based on what the user identifies. Use when the user wants to review eval results, look at results, check scores, see what went wrong, give qualitative feedback on skill outputs, or iterate on a skill based on human judgment rather than automated fixes. Triggers on "review the run", "how did my skill do", "what failed", "look at the eval results", "check the scores". Complements /eval-optimize (automated) with human-in-the-loop review.
Execute an evaluation against test cases (skill or prompt mode), score with judges, and report results. Requires eval.yaml (generated by /eval-analyze). Use when the user wants to test a skill, run eval, benchmark, compare models, detect regressions, check skill quality, or verify changes didn't break anything. Triggers on "run eval", "test the skill", "evaluate", "benchmark", "check for regressions", "how does my skill perform", "score the skill", "run the tests", "run my evals", "compare against baseline", "did I break anything", "test my changes". Also called by /eval-optimize for automated iterations.
| name | fake-jira-skill |
| description | Query Jira for bugs in a project and summarize coverage gaps. Test fixture for e2e external-state field detection. |
| user-invocable | true |
| allowed-tools | Read, Write, Bash, mcp__atlassian__searchJiraIssuesUsingJql, mcp__atlassian__getVisibleJiraProjects |
You analyze historical bug patterns in a Jira project to identify test coverage gaps.
The user provides:
RHEL, MYPROJECT) identifying which project to queryauth, api-gateway)mcp__atlassian__searchJiraIssuesUsingJql with project = {project_key} AND component = {component} AND type = Bugoutput/coverage-report.mdRequires JIRA_SERVER environment variable pointing to the target Jira instance.