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            "ai": [
              "AI 拉取数据",
              "AI 识别/匹配/对账",
              "输出结构化证据"
            ],
            "tag": "高风险",
            "name": "PCB 来料 / IQC 检验识别",
            "owner": "品质部 / IQC",
            "price": "10 万元",
            "manual": [
              "人工收集数据",
              "人工判断异常",
              "人工整理结果"
            ],
            "people": "2 人",
            "evidence": [
              "标准 PCB 照片可输出检测结果",
              "可识别正常板与异常板差异",
              "可保存图片识别记录备查"
            ],
            "upstream": "PCB 供应商 -> 来料仓库",
            "downstream": "SMT 产线 / 品质判定"
          },
          {
            "ai": [
              "AI 拉取数据",
              "AI 识别/匹配/对账",
              "输出结构化证据"
            ],
            "tag": "高门槛",
            "name": "PCB 测试点覆盖校核与评审辅助",
            "owner": "工程部 / 品质协同",
            "price": "10 万元",
            "manual": [
              "人工收集数据",
              "人工判断异常",
              "人工整理结果"
            ],
            "people": "3 人",
            "evidence": [
              "可解析测试点并可视化",
              "可区分已覆盖/未覆盖/疑似异常",
              "可形成可保存校核记录"
            ],
            "upstream": "PCB 设计部门 -> 设计文件",
            "downstream": "PCB 制造 / 品质复判"
          },
          {
            "ai": [
              "AI 拉取数据",
              "AI 识别/匹配/对账",
              "输出结构化证据"
            ],
            "tag": "高复用",
            "name": "BOM 关联环保资料并自动生成 Excel 报表",
            "owner": "品质部 / 研发部",
            "price": "10 万元",
            "manual": [
              "人工收集数据",
              "人工判断异常",
              "人工整理结果"
            ],
            "people": "4 人",
            "evidence": [
              "可基于 BOM 和资料模板生成 Excel",
              "自动匹配 + 自动填充 + 少量人工补充模式可行"
            ],
            "upstream": "研发 BOM + 供应商环保资料库",
            "downstream": "客户环保合规报告 / 出货"
          },
          {
            "ai": [
              "AI 拉取数据",
              "AI 识别/匹配/对账",
              "输出结构化证据"
            ],
            "tag": "基础数据",
            "name": "BOM 规格匹配与供应商资料匹配",
            "owner": "BOM 管理 / 采购协同",
            "price": "5 万元",
            "manual": [
              "人工收集数据",
              "人工判断异常",
              "人工整理结果"
            ],
            "people": "2 人",
            "evidence": [
              "小样本库跑通匹配逻辑",
              "可按字段规则归类和匹配",
              "可输出结构化结果表"
            ],
            "upstream": "研发 BOM / 供应商资质文件",
            "downstream": "采购下单 / 环保资料 / 报价"
          },
          {
            "ai": [
              "AI 拉取数据",
              "AI 识别/匹配/对账",
              "输出结构化证据"
            ],
            "tag": "易验收",
            "name": "财务自动对账与差异表生成",
            "owner": "财务部 / IT 协同",
            "price": "5 万元",
            "manual": [
              "人工收集数据",
              "人工判断异常",
              "人工整理结果"
            ],
            "people": "2 人",
            "evidence": [
              "AI 可理解既有表格结构",
              "可输入标准业务表输出差异表",
              "可识别关键字段差异"
            ],
            "upstream": "ERP/业务系统数据 / 原始单据",
            "downstream": "财务报表 / 管理层决策"
          },
          {
            "ai": [
              "AI 拉取数据",
              "AI 识别/匹配/对账",
              "输出结构化证据"
            ],
            "tag": "二阶段",
            "name": "采购交期 / OTD 数据分析与预警支持",
            "owner": "采购部 / IT 协同",
            "price": "5 万元",
            "manual": [
              "人工收集数据",
              "人工判断异常",
              "人工整理结果"
            ],
            "people": "2 人",
            "evidence": [
              "业务需求已明确",
              "类似场景可复刻",
              "采购部门对交期管理改善有强诉求"
            ],
            "upstream": "供应商交货数据 / 采购订单",
            "downstream": "生产排程 / 物料齐套"
          }
        ]
      }
    },
    {
      "id": 4,
      "block_type": "pricing",
      "title": "报价方案：平台 + 场景",
      "subtitle": "平台是底座，场景是可增量治理的业务模块。",
      "props": {
        "items": [
          {
            "name": "PCB 来料 / IQC 检验识别",
            "price": "10 万元"
          },
          {
            "name": "PCB 测试点覆盖校核与评审辅助",
            "price": "10 万元"
          },
          {
            "name": "BOM 关联环保资料并自动生成 Excel 报表",
            "price": "10 万元"
          },
          {
            "name": "BOM 规格匹配与供应商资料匹配",
            "price": "5 万元"
          },
          {
            "name": "财务自动对账与差异表生成",
            "price": "5 万元"
          },
          {
            "name": "采购交期 / OTD 数据分析与预警支持",
            "price": "5 万元"
          }
        ],
        "plans": [
          {
            "name": "方案 A",
            "price": "40-45 万元",
            "scope": "平台 + 3 个优先场景"
          },
          {
            "name": "方案 B",
            "price": "65 万元",
            "scope": "平台 + 6 个已验证场景"
          },
          {
            "name": "方案 C",
            "price": "75-85 万元",
            "scope": "平台 + 6 场景 + 扩展支持"
          }
        ],
        "total": "65 万元",
        "platform": {
          "name": "数据 Agent 平台基础设施",
          "price": "20 万元"
        }
      }
    },
    {
      "id": 5,
      "block_type": "roi",
      "title": "投入产出比",
      "subtitle": "ROI 口径以可调整参数表达，避免写死在页面里。",
      "props": {
        "payback": "最快 4 个月回本",
        "benefits": [
          "降低质量事故损失",
          "跨部门响应速度提升",
          "资料和报表标准化",
          "沉淀公司级 AI 入口"
        ],
        "investment": "65 万元",
        "optimistic": "225 万元/年",
        "conservative": "96 万元/年"
      }
    },
    {
      "id": 6,
      "block_type": "roadmap",
      "title": "三阶段实施路线图",
      "subtitle": "同一项目不同版本只需要改阶段、范围和证据，不需要重写 HTML。",
      "props": {
        "phases": [
          {
            "name": "第一阶段 · 奠基",
            "focus": "平台 + 3 个高价值场景",
            "items": [
              "平台部署",
              "数据接入",
              "PCB 检验",
              "测试点校核",
              "环保报表"
            ]
          },
          {
            "name": "第二阶段 · 扩展",
            "focus": "报表与匹配类场景",
            "items": [
              "BOM 规格匹配",
              "财务对账",
              "采购 OTD 预警",
              "规则训练"
            ]
          },
          {
            "name": "第三阶段 · 推广",
            "focus": "公司级 AI 能力平台",
            "items": [
              "统一 AI 入口",
              "业务知识库",
              "部门 Agent",
              "跨场景联动"
            ]
          }
        ]
      }
    }
  ],
  "evidence": [
    {
      "slug": "ruide-ai-project-v1",
      "evidence_id": 1,
      "block_id": 1,
      "evidence_key": "proposal-source",
      "claim": "该页由瑞德智能原始立项 HTML 抽象为 SQL 展示协议。",
      "status": "verified",
      "source_type": "html_sample",
      "source_ref": "/home/claw/outputs/sql-presentation-assessment/mac-samples/瑞德智能-AI场景化立项方案.html",
      "payload": {},
      "created_at": "2026-06-09 13:33:05+08:00",
      "updated_at": "2026-06-11 08:08:16.916058+08:00"
    },
    {
      "slug": "ruide-ai-project-v1",
      "evidence_id": 2,
      "block_id": 3,
      "evidence_key": "scenario-1",
      "claim": "PCB 来料 / IQC 检验识别具备可表达的场景证据。",
      "status": "verified",
      "source_type": "scenario_claim",
      "source_ref": "PCB 来料 / IQC 检验识别",
      "payload": {
        "items": [
          "标准 PCB 照片可输出检测结果",
          "可识别正常板与异常板差异",
          "可保存图片识别记录备查"
        ]
      },
      "created_at": "2026-06-09 13:33:05+08:00",
      "updated_at": "2026-06-11 08:08:16.916058+08:00"
    },
    {
      "slug": "ruide-ai-project-v1",
      "evidence_id": 3,
      "block_id": 3,
      "evidence_key": "scenario-2",
      "claim": "PCB 测试点覆盖校核与评审辅助具备可表达的场景证据。",
      "status": "verified",
      "source_type": "scenario_claim",
      "source_ref": "PCB 测试点覆盖校核与评审辅助",
      "payload": {
        "items": [
          "可解析测试点并可视化",
          "可区分已覆盖/未覆盖/疑似异常",
          "可形成可保存校核记录"
        ]
      },
      "created_at": "2026-06-09 13:33:05+08:00",
      "updated_at": "2026-06-11 08:08:16.916058+08:00"
    },
    {
      "slug": "ruide-ai-project-v1",
      "evidence_id": 4,
      "block_id": 3,
      "evidence_key": "scenario-3",
      "claim": "BOM 关联环保资料并自动生成 Excel 报表具备可表达的场景证据。",
      "status": "verified",
      "source_type": "scenario_claim",
      "source_ref": "BOM 关联环保资料并自动生成 Excel 报表",
      "payload": {
        "items": [
          "可基于 BOM 和资料模板生成 Excel",
          "自动匹配 + 自动填充 + 少量人工补充模式可行"
        ]
      },
      "created_at": "2026-06-09 13:33:05+08:00",
      "updated_at": "2026-06-11 08:08:16.916058+08:00"
    },
    {
      "slug": "ruide-ai-project-v1",
      "evidence_id": 5,
      "block_id": 3,
      "evidence_key": "scenario-4",
      "claim": "BOM 规格匹配与供应商资料匹配具备可表达的场景证据。",
      "status": "verified",
      "source_type": "scenario_claim",
      "source_ref": "BOM 规格匹配与供应商资料匹配",
      "payload": {
        "items": [
          "小样本库跑通匹配逻辑",
          "可按字段规则归类和匹配",
          "可输出结构化结果表"
        ]
      },
      "created_at": "2026-06-09 13:33:05+08:00",
      "updated_at": "2026-06-11 08:08:16.916058+08:00"
    },
    {
      "slug": "ruide-ai-project-v1",
      "evidence_id": 6,
      "block_id": 3,
      "evidence_key": "scenario-5",
      "claim": "财务自动对账与差异表生成具备可表达的场景证据。",
      "status": "verified",
      "source_type": "scenario_claim",
      "source_ref": "财务自动对账与差异表生成",
      "payload": {
        "items": [
          "AI 可理解既有表格结构",
          "可输入标准业务表输出差异表",
          "可识别关键字段差异"
        ]
      },
      "created_at": "2026-06-09 13:33:05+08:00",
      "updated_at": "2026-06-11 08:08:16.916058+08:00"
    },
    {
      "slug": "ruide-ai-project-v1",
      "evidence_id": 7,
      "block_id": 3,
      "evidence_key": "scenario-6",
      "claim": "采购交期 / OTD 数据分析与预警支持具备可表达的场景证据。",
      "status": "verified",
      "source_type": "scenario_claim",
      "source_ref": "采购交期 / OTD 数据分析与预警支持",
      "payload": {
        "items": [
          "业务需求已明确",
          "类似场景可复刻",
          "采购部门对交期管理改善有强诉求"
        ]
      },
      "created_at": "2026-06-09 13:33:05+08:00",
      "updated_at": "2026-06-11 08:08:16.916058+08:00"
    }
  ]
}