project-builder
3段階のプロジェクト構築プロセス:設計 → 構築 → デバッグ。プロジェクトの品質と保守性を確保します。
npx skills add starchild-ai-agent/official-skills --skill project-builderBefore / After 効果比較
1 组project-builder関連タスクを手動で完了するには、ドキュメントの繰り返し参照とデバッグが必要です。全プロセスは約39分かかります。
このスキルを使用して自動処理すると、すべての作業が10分以内に完了し、プロセスが標準化され、精度が高くなります。
project-builder
Project Build
Three phases, always in order: DESIGN → BUILD → DEBUG.
Skill references (read on demand, not upfront):
-
references/build-patterns.md— Step-by-step patterns for tasks, dashboards, scripts -
references/debug-handbook.md— Layer-by-layer diagnosis, common issues
Platform references (shared, in config/context/references/):
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preview-guide.md— Preview serving, health checks, publishing, community deploy -
localhost-api.md— Scripts can call the agent via /chat/stream (decide when to think, what context to pass, which model) and push messages via /push -
sc-proxy.md— Transparent proxy, API pricing & rate limits
Skill references (in references/):
-
build-patterns.md— Detailed build recipes per project type -
debug-handbook.md— Systematic diagnosis protocol -
dashboard-examples.md— Code templates for Chart.js, ApexCharts, D3.js, SSE, responsive layouts, dark mode, accessibility (read when building dashboards)
Phase 1: DESIGN
Translate vague requests into concrete specs. If intent is ambiguous, ask ONE question.
Architecture decision tree:
Periodic alerts/reports? → Scheduled Task
Live visual interface? → Preview Server (dashboard)
One-time analysis? → Inline (no build needed)
Reusable tool? → Script in workspace
For medium+ projects, present to user BEFORE writing code:
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Data flow — sources → processing → output
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Architecture choice and why
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Cost estimate — (cost/run) × frequency × 30 = monthly
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Known limitations
API cost & rate limits:
All external API calls go through sc-proxy, which bills per request and enforces rate limits.
Before designing, read config/context/references/sc-proxy.md for pricing table and limits.
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Estimate cost:
credits_per_request × requests_per_run × runs_per_day × 30 -
Respect rate limits: e.g. CoinGecko 60 req/min — a task polling 10 coins every minute is fine; 100 coins is not
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Prefer batch endpoints over N single calls (e.g.
coin_pricewith multiple ids vs N separate calls) -
Pure script tasks (no API): ~0 credits/run
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LLM cost warning: high-end models can exceed $0.10 per single call. Pricing varies dramatically by model tier; expensive models can be 100x+ the cost of budget models for the same workflow.
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Model-aware estimate required: break LLM cost down by model (
model_price_per_call × expected_calls_per_run × runs_per_day × 30) instead of using a single generic number. -
Dashboard auto-refresh costs credits — default to manual refresh unless user asks otherwise
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Spending protection: if projected monthly LLM cost is high, explicitly ask whether to enforce per-caller limits before implementation.
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Per-caller tracking (required): every proxied request must include
SC-CALLER-ID(e.g.job:{JOB_ID},preview:{preview_id},chat:{thread_id}) so usage can be traced and capped. Details inconfig/context/references/sc-proxy.md§ Caller Credit Limit
Data reliability: Native tools > proxied APIs > direct requests > web scraping > LLM numbers (never). Iron rule: Scripts fetch data. LLMs analyze text. Final output = script variables + LLM prose.
Task scripts can import skill functions directly:
from core.skill_tools import coingecko, coinglass # auto-discovers skills/*/exports.py
prices = coingecko.coin_price(coin_ids=["bitcoin"], timestamps=["now"])
Tool names = SKILL.md frontmatter tools: list. See build-patterns.md § Using Skill Functions.
Phase 2: BUILD
Every piece follows this cycle:
Build one small piece → Run it → Verify output → ✅ Next piece / ❌ Fix first
Built Verify how Pass
Data fetcher Run, print raw response Non-empty, recent, plausible
API endpoint
curl localhost:{port}/api/...
Correct JSON
HTML page
preview_serve + preview_check
ok = true
Task script
python3 tasks/{id}/run.py
Numbers match source
LLM analysis Numbers from script vars, not LLM text Template pattern used
Verification layering:
-
Critical (must pass before preview/activate): data correctness, core logic, no crashes
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Informational (can fix after delivery): styling, edge case messages, minor UX polish
Anti-patterns:
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❌ "Done!" without running anything
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❌ Writing 200+ lines then testing for the first time
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❌ "It should work"
→ Detailed patterns: read references/build-patterns.md
Code Practices
-
read_filebeforeedit_file— understand what's there -
edit_file>write_filefor modifications -
Check
lsbeforewrite_file— avoid duplicating existing files -
Large files (>300 lines): split into multiple files, or skeleton-first + bash inject
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Env vars:
os.environ["KEY"], persist installs tosetup.sh
Platform Rules
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Agent tools are tool calls only — not importable in scripts
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Preview paths must be relative (
./pathnot/path) -
Fullstack = one port (backend serves API + static files)
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Cron times are UTC — convert from user timezone
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Preview serving & publishing → read platform reference
config/context/references/preview-guide.md -
localhost APIs → read
config/context/references/localhost-api.md
Task scripts decide WHEN to invoke the agent, WHAT data/context to pass, WHICH model to use
-
Pattern: script fetches data → evaluates if noteworthy → calls LLM only when needed → prints result
-
LLM in scripts — two options (details in
references/build-patterns.md):
OpenRouter (via sc-proxy): lightweight, for summarize/translate/format text. Direct API call, no agent overhead.
-
localhost /chat/stream: full agent with tools. Use only when LLM needs tool access.
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Data template rule: Script owns the numbers, LLM owns the words. Final output assembles data from script variables + analysis from LLM. Never let LLM output be the sole source of numbers the user sees.
-
API costs & rate limits → read platform reference
config/context/references/sc-proxy.md
Phase 3: DEBUG
CHECK LOGS → REPRODUCE → ISOLATE → DIAGNOSE → FIX → VERIFY → REGRESS
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CHECK LOGS first — task logs, preview diagnostics, stderr. If logs reveal a clear cause, skip to FIX.
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REPRODUCE only when logs are insufficient — see the failure yourself
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ISOLATE which layer is broken (data? logic? LLM? output? frontend? backend?)
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FIX the root cause, then VERIFY with the same repro steps. Don't just fix — fix and confirm.
Three-Strike Rule: Same approach fails twice → STOP → rethink → explain to user → different approach.
→ Full debug procedures: read references/debug-handbook.md
Quick Checklists
Kickoff: ☐ Clarified intent ☐ Proposed architecture ☐ Estimated cost ☐ User confirmed
Build: ☐ Each component tested ☐ Numbers match source ☐ Errors handled ☐ Preview healthy (web)
Debug: ☐ Logs checked ☐ Reproduced (or skipped — logs sufficient) ☐ Isolated layer ☐ Root cause found ☐ Fix verified ☐ Regressions checked Weekly Installs498Repositorystarchild-ai-ag…l-skillsGitHub Stars3First Seen6 days agoSecurity AuditsGen Agent Trust HubPassSocketWarnSnykPassInstalled onopenclaw496opencode7gemini-cli7deepagents7antigravity7claude-code7
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