self-improvement-ci
"CI-only self-improvement workflow using gh-aw (GitHub Agentic Workflows). Captures recurring failure patterns and quality signals from pull request checks, emits structured learning candidates, and proposes durable prevention rules without interactive prompts. Use when: you want automated learning
npx skills add pskoett/pskoett-ai-skills --skill self-improvement-ciBefore / After 效果对比
0 组description 文档
name: self-improvement-ci description: "CI-only self-improvement workflow using gh-aw (GitHub Agentic Workflows). Captures recurring failure patterns and quality signals from pull request checks, emits structured learning candidates, and proposes durable prevention rules without interactive prompts. Use when: you want automated learning capture in CI/headless pipelines."
Self-Improvement CI
Install
npx skills add pskoett/pskoett-ai-skills/skills/self-improvement-ci
Purpose
Run self-improvement in CI without interactive chat loops:
- Inspect PR check results and CI failures
- Ingest learning candidates from
simplify-and-harden-ci - Deduplicate recurring patterns by stable
pattern_key - Emit promotion-ready suggestions for agent context/system prompts
Use self-improvement for interactive/local sessions.
Context Limitation (Important)
CI agents do not have peak task context from the original implementation session. Use this skill to aggregate recurring patterns across runs, not to infer nuanced one-off intent.
Implications:
- Favor stable
pattern_keyrecurrence signals over single-run conclusions - Require recurrence thresholds before promotion
- Route uncertain or high-impact recommendations to interactive review
Prerequisites
- GitHub Actions enabled for the repository
- GitHub CLI authenticated (
gh auth status) gh-awinstalled for authoring/validation:
gh extension install github/gh-aw
CI Contract
The CI skill must:
- Read only PR-scoped data (checks, workflow outcomes, existing learning entries)
- Avoid direct code modifications in CI
- Emit machine-readable learning output
- Recommend promotion only when recurrence thresholds are met
Output Schema
self_improvement_ci:
source:
pr_number: 123
commit_sha: "abc123"
candidates:
- pattern_key: "harden.input_validation"
source: "simplify-and-harden-ci"
recurrence_count: 3
first_seen: "2026-02-01"
last_seen: "2026-02-20"
severity: "high"
suggested_rule: "Validate and bound-check external inputs before use."
promotion_ready: true
summary:
candidates_total: 4
promotion_ready_total: 1
followup_required: true
Recurrence and Promotion Rules
- Track recurrence by
pattern_key - Default threshold for promotion:
recurrence_count >= 3- seen in
>= 2distinct tasks/runs - within a 30-day window
- Promotion targets:
CLAUDE.mdAGENTS.md.github/copilot-instructions.mdSOUL.md/TOOLS.mdwhen using openclaw workspace memory
Authoring Workflow (gh-aw)
Example-only templates live in references/workflow-example.md.
Keep examples outside .github/workflows until you explicitly decide to enable CI automation.
When ready:
- Copy the template into
.github/workflows/self-improvement-ci.md - Customize tool access, outputs, and policy thresholds
- Validate:
gh aw compile --validate --strict
- Trigger test run manually:
gh aw run self-improvement-ci --push
Integration with Other Skills
- Pair with
simplify-and-harden-cito ingestsimplify_and_harden.learning_loop.candidates - Feed promoted patterns back into
self-improvementmemory workflow for durable prevention rules
forum用户评价 (0)
发表评价
暂无评价,来写第一条吧
统计数据
用户评分
为此 Skill 评分