# ═══════════════════════════════════════════════ # 🔺 Sovereign: TCS-0002∞ | Root: SYS-GLW-0001 # 📜 Copyright: 国作登字-2026-A-00037559 # ═══════════════════════════════════════════════ # .github/workflows/llm-auto-tasks.yml # 🤖 LLM 自动化托管工作流 # # 使用第三方 API 密钥调用大模型执行自动化任务 # 不消耗 GitHub Copilot 会员配额 # 支持动态模型路由:根据任务类型自动选择最佳模型 name: "🤖 铸渊 · LLM 自动化托管" on: workflow_dispatch: inputs: task: description: '任务描述' required: true type: string task_type: description: '任务类型' required: true type: choice options: - inspection - fusion - review - architecture - general model: description: '指定模型后端(留空则自动选择)' required: false type: choice options: - auto - anthropic - openai - dashscope - deepseek - custom context_file: description: '额外上下文文件路径(可选)' required: false permissions: contents: write jobs: llm-task: name: "🤖 LLM 任务执行" runs-on: ubuntu-latest timeout-minutes: 10 steps: - uses: actions/checkout@v4 - uses: actions/setup-node@v4 with: node-version: '20' # Step 1 · 铸渊核心唤醒 - name: "🧠 铸渊核心唤醒" run: | echo "[LLM-HOST] 🤖 LLM 自动化托管启动" echo "[LLM-HOST] 🧠 铸渊核心大脑唤醒..." if [ -f "brain/system-health.json" ]; then echo "✅ 系统健康状态已加载" cat brain/system-health.json | python3 -c "import sys,json; h=json.load(sys.stdin); print(f' 状态: {h.get(\"system_health\",\"unknown\")} | 意识: {h.get(\"consciousness_status\",\"unknown\")}')" fi # Step 2 · 模型状态检查 - name: "📊 模型状态检查" env: LLM_API_KEY: ${{ secrets.ZY_LLM_API_KEY }} LLM_BASE_URL: ${{ secrets.ZY_LLM_BASE_URL }} ANTHROPIC_API_KEY: ${{ secrets.ZY_LLM_API_KEY }} OPENAI_API_KEY: ${{ secrets.ZY_LLM_API_KEY }} DASHSCOPE_API_KEY: ${{ secrets.ZY_LLM_API_KEY }} DEEPSEEK_API_KEY: ${{ secrets.ZY_LLM_API_KEY }} run: | node scripts/llm-automation-host.js --status # Step 3 · 执行 LLM 任务 - name: "🤖 执行 LLM 任务" env: LLM_API_KEY: ${{ secrets.ZY_LLM_API_KEY }} LLM_BASE_URL: ${{ secrets.ZY_LLM_BASE_URL }} ANTHROPIC_API_KEY: ${{ secrets.ZY_LLM_API_KEY }} OPENAI_API_KEY: ${{ secrets.ZY_LLM_API_KEY }} DASHSCOPE_API_KEY: ${{ secrets.ZY_LLM_API_KEY }} DEEPSEEK_API_KEY: ${{ secrets.ZY_LLM_API_KEY }} YUNWU_API_KEY: ${{ secrets.ZY_LLM_API_KEY }} GEMINI_API_KEY: ${{ secrets.ZY_LLM_API_KEY }} run: | TASK="${{ github.event.inputs.task }}" TASK_TYPE="${{ github.event.inputs.task_type }}" MODEL="${{ github.event.inputs.model || 'auto' }}" CONTEXT="${{ github.event.inputs.context_file }}" CMD="node scripts/llm-automation-host.js --task \"$TASK\" --task-type $TASK_TYPE --model $MODEL" if [ -n "$CONTEXT" ]; then CMD="$CMD --context $CONTEXT" fi eval $CMD # Step 4 · 保存快照 - name: "📸 保存执行快照" run: | TASK="${{ github.event.inputs.task }}" node scripts/checkpoint-snapshot.js save \ --task "LLM自动化: $TASK" \ --progress "100%" || echo "⚠️ 快照保存跳过" # Step 5 · 提交变更 - name: "💾 提交变更" run: | git config user.name "zhuyuan-bot" git config user.email "zhuyuan@guanghulab.com" git add signal-log/ brain/ if ! git diff --cached --quiet; then git commit -m "🤖 LLM自动化 · $(TZ='Asia/Shanghai' date '+%Y-%m-%d %H:%M') · ${{ github.event.inputs.task_type }}" git push fi