Agent skill

Human-Machine Brainstorm (人机风暴)

This skill should be used when the user asks to "人机风暴", "Human-Machine Brainstorm", "human storm", "ccb brainstorm", "需求对齐调度", "spec convergence", or wants a CCB-based multi-model requirement alignment loop with Codex as the dispatcher.

Stars 190
Forks 12

Install this agent skill to your Project

npx add-skill https://github.com/cnfjlhj/ai-collab-playbook/tree/main/skills/full/human-machine-brainstorm

SKILL.md

Human-Machine Brainstorm (HMB) — CCB Dispatcher Loop

Purpose

Run a repeatable multi-model requirement alignment loop in CCB where:

  • Codex acts as the dispatcher (facilitator + router).
  • Claude Code acts as the scribe (single source of truth spec author).
  • OpenCode (Gemini) acts as the divergent thinker (alternatives + ASCII prototypes).

Keep every round auditable by exporting per-provider context into ./.ccb/history/ and keeping the canonical spec in ./.ccb/spec/.

Hard Rules

  • Treat ./.ccb/spec/overview.md as the single source of truth. Only Claude Code edits it.
  • Never assume panes “share context”. Always broadcast updates explicitly.
  • Enforce question IDs in this format:
    • Claude: C-Q01, C-Q02, ...
    • OpenCode: O-Q01, O-Q02, ...
  • Accept user answers only in ID-addressed form (so routing is deterministic).

Quick Start (zero-friction, recommended)

This workflow is optimized for a 2×Codex setup:

  • Cmd pane runs a dedicated Codex Chair (dispatcher).
  • The normal Codex provider pane participates as a reviewer/solver (not just idle).
  1. Create (or choose) a topic directory (recommended location: $HOME/ccb-startups/...).

    • Optional helper: bash $HOME/.codex/skills/human-machine-brainstorm/scripts/hmb-init.sh "<topic-slug>"
  2. Start CCB.

    • If CCB global config enables the chair cmd pane, just run: ccb
    • Otherwise: ccb claude codex opencode cmd (fallback)
  3. Talk only to the Codex Chair (cmd pane).

    • Paste the raw requirement.
    • The chair broadcasts to claude, opencode, and participant codex via ask.
    • Use the round prompt template in references/round_prompt_template.md if needed.

Round Loop (R1/R2/R3...)

Step A — Broadcast (dispatcher = Codex Chair)

Send the same “Round prompt” to:

  • ask claude "<ROUND PROMPT>"
  • ask opencode "<ROUND PROMPT>"
  • ask codex "<ROUND PROMPT>" (participant Codex pane)

Require them to respond with:

  • 10–20 numbered questions using C-Q## / O-Q## / P-Q##
  • 1 ASCII diagram (flow/state/component)
  • 1 short “current assumptions” list

Step B — Collect Answers (human)

Ask the human to answer in this format:

  • C-Q01: ...
  • C-Q02: ...
  • O-Q01: ...
  • P-Q01: ...

Optionally allow a shared block:

  • SHARED: ... (facts that apply to both)

Step C — Route Answers (dispatcher = Codex)

Send Claude only C-* + SHARED. Send OpenCode only O-* + SHARED. Send participant Codex only P-* + SHARED.

Step D — Export Evidence (end of round)

From the cmd pane (or any shell pane) run:

  • ./.ccb/bin/round-save.sh 20

This writes:

  • ./.ccb/history/claude-<timestamp>.md
  • ./.ccb/history/codex-<timestamp>.md
  • ./.ccb/history/opencode-<timestamp>.md

Step E — Update Spec (scribe = Claude Code)

Ask Claude to update:

  • ./.ccb/spec/overview.md (bump version vN)
  • ./.ccb/spec/open_questions.md (close answered questions)
  • ./.ccb/spec/decisions.md (record non-reversible decisions)
  • ./.ccb/spec/changelog.md (vN → vN+1 diff)

Then re-run another round until all reviewers say “no blocking issues”.

Final Handoff to GPT-5.2 (new session)

Provide a clean handoff pack:

  • ./.ccb/spec/overview.md
  • ./.ccb/spec/decisions.md
  • ./.ccb/spec/open_questions.md (should be empty or non-blocking)
  • ./.ccb/spec/changelog.md

Instruct GPT-5.2 to:

  • Treat the spec as authoritative
  • Output an executable plan first
  • Use multi-agent decomposition for implementation/testing/review

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