P

project-builder

by @starchild-ai-agentv
4.4(17)

Three-stage project building process: Design → Build → Debug, ensuring project quality and maintainability.

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Installation
npx skills add starchild-ai-agent/official-skills --skill project-builder
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Before / After Comparison

1
Before

Manually completing project-builder related tasks requires repeatedly consulting documentation and debugging. The entire process takes approximately 39 minutes.

After

Using this Skill for automated processing, all work is completed within 10 minutes, with standardized processes and high accuracy.

SKILL.md

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/):

  • 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:

  • Data flow — sources → processing → output

  • Architecture choice and why

  • Cost estimate — (cost/run) × frequency × 30 = monthly

  • 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.

  • 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

  • Prefer batch endpoints over N single calls (e.g. coin_price with multiple ids vs N separate calls)

  • Pure script tasks (no API): ~0 credits/run

  • 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.

  • 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

  • Spending protection: if projected monthly LLM cost is high, explicitly ask whether to enforce per-caller limits before implementation.

  • 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 in config/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

  • Informational (can fix after delivery): styling, edge case messages, minor UX polish

Anti-patterns:

  • ❌ "Done!" without running anything

  • ❌ Writing 200+ lines then testing for the first time

  • ❌ "It should work"

→ Detailed patterns: read references/build-patterns.md

Code Practices

  • read_file before edit_file — understand what's there

  • edit_file > write_file for modifications

  • Check ls before write_file — avoid duplicating existing files

  • Large files (>300 lines): split into multiple files, or skeleton-first + bash inject

  • Env vars: os.environ["KEY"], persist installs to setup.sh

Platform Rules

  • Agent tools are tool calls only — not importable in scripts

  • Preview paths must be relative (./path not /path)

  • Fullstack = one port (backend serves API + static files)

  • Cron times are UTC — convert from user timezone

  • 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.

  • 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

  • CHECK LOGS first — task logs, preview diagnostics, stderr. If logs reveal a clear cause, skip to FIX.

  • REPRODUCE only when logs are insufficient — see the failure yourself

  • ISOLATE which layer is broken (data? logic? LLM? output? frontend? backend?)

  • 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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Installs3.0K
Rating4.4 / 5.0
Version
Updated2026年5月23日
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Timeline

Created2026年4月15日
Last Updated2026年5月23日