{
  "docId": "019dd923-5de0-76bd-a16b-451df9a6d149",
  "docSlug": "e97464cc0a103dac",
  "documentTitle": "Southeast Asia&#x27;s Green Economy",
  "authorId": "Bain",
  "authorName": "Bain & Company",
  "documentKindSlug": "consulting-deck",
  "documentKindLabel": "Consulting deck",
  "sourceTypeSlug": "strategy_consulting",
  "sourceTypeLabel": "Strategy consulting",
  "presentationDate": null,
  "orientation": "landscape",
  "aspectRatio": 1.778,
  "pageNumber": 139,
  "pageCount": 174,
  "prevPage": 138,
  "nextPage": 140,
  "slideType": "client_example",
  "function": "illustrate_case",
  "density": "balanced",
  "nDataPoints": 3,
  "notes": null,
  "elementsJson": [
    "comparison_table",
    "big_number",
    "icon_grid"
  ],
  "metadataConfidence": 1,
  "imagePath": null,
  "slideHref": "/slides/019dd923-5de0-76bd-a16b-451df9a6d149/139",
  "deckHref": "/decks/019dd923-5de0-76bd-a16b-451df9a6d149",
  "deckJsonHref": "/decks/019dd923-5de0-76bd-a16b-451df9a6d149.json",
  "deckAnchorHref": "/decks/019dd923-5de0-76bd-a16b-451df9a6d149#slide-139",
  "components": [
    {
      "bbox": {
        "h": 0.05,
        "w": 0.06,
        "x": 0.37,
        "y": 0.72
      },
      "kind": "metric",
      "text": "45%",
      "attrs": null,
      "subkind": "big-number",
      "toolName": null,
      "toolSlug": null,
      "confidence": null,
      "componentId": "7c05e704-c23b-434e-b58a-12ad90be0a2a",
      "frameworkName": null,
      "frameworkSlug": null
    },
    {
      "bbox": {
        "h": 0.05,
        "w": 0.1,
        "x": 0.21,
        "y": 0.72
      },
      "kind": "metric",
      "text": "166 Mt",
      "attrs": null,
      "subkind": "big-number",
      "toolName": null,
      "toolSlug": null,
      "confidence": null,
      "componentId": "a6224509-e0a4-407c-ba84-31e681864f7f",
      "frameworkName": null,
      "frameworkSlug": null
    },
    {
      "bbox": {
        "h": 0.05,
        "w": 0.06,
        "x": 0.59,
        "y": 0.72
      },
      "kind": "metric",
      "text": "20%",
      "attrs": null,
      "subkind": "big-number",
      "toolName": null,
      "toolSlug": null,
      "confidence": null,
      "componentId": "fd4c13e7-d50e-4caa-ad19-064f3e994d87",
      "frameworkName": null,
      "frameworkSlug": null
    },
    {
      "bbox": null,
      "kind": "metric",
      "text": "GHG emission reduction: 166 Mt",
      "attrs": null,
      "subkind": "primary",
      "toolName": "Quantification",
      "toolSlug": "quantification",
      "confidence": null,
      "componentId": "019dd952-0490-77fe-9d3d-e7e68098bf2f",
      "frameworkName": null,
      "frameworkSlug": null
    },
    {
      "bbox": {
        "h": 0.02,
        "w": 0.2,
        "x": 0.05,
        "y": 0.96
      },
      "kind": "source-note",
      "text": "Sources: Autodesk; DeepMind; Airbus; Hannover Messe",
      "attrs": null,
      "subkind": null,
      "toolName": null,
      "toolSlug": null,
      "confidence": null,
      "componentId": "834fa436-d2ff-441c-8807-0ed6fe8e4a77",
      "frameworkName": null,
      "frameworkSlug": null
    },
    {
      "bbox": {
        "h": 0.65,
        "w": 0.88,
        "x": 0.06,
        "y": 0.21
      },
      "kind": "table",
      "text": "Comparison table with rows for Overview, Benefits, and Impact for Airbus and Google DeepMind.",
      "attrs": null,
      "subkind": "data",
      "toolName": null,
      "toolSlug": null,
      "confidence": null,
      "componentId": "62c864a1-01bb-4048-b968-8de9459805ea",
      "frameworkName": null,
      "frameworkSlug": null
    },
    {
      "bbox": {
        "h": 0.1,
        "w": 0.8,
        "x": 0.05,
        "y": 0.06
      },
      "kind": "title",
      "text": "Several proven AI and generative AI applications are already delivering measurable GHG emission reductions across corporations globally",
      "attrs": null,
      "subkind": "headline",
      "toolName": null,
      "toolSlug": null,
      "confidence": null,
      "componentId": "c69ec365-d6a0-4fbe-ac17-933a160e2567",
      "frameworkName": null,
      "frameworkSlug": null
    }
  ],
  "metrics": [],
  "tools": [
    {
      "name": "Action Titles",
      "slug": "action-titles",
      "agent": "Architect",
      "layer": "slide",
      "matchId": "019dd95a-1804-770a-b240-d66f3e4b8dcd",
      "evidence": "'Several proven AI and generative AI applications are already delivering measurable GHG emission reductions'",
      "confidence": 78
    },
    {
      "name": "Table data",
      "slug": "table-data",
      "agent": null,
      "layer": "slide",
      "matchId": "df2fda37-7c3e-4e59-af5d-6f78d4ffaffa",
      "evidence": "Comparison table with rows for Overview, Benefits, and Impact for Airbus and Google DeepMind.",
      "confidence": 0.8
    }
  ],
  "frameworks": [],
  "arcBeats": [
    {
      "to": 145,
      "from": 59,
      "beatId": "019dd95a-07a5-761b-9144-94c0617c4e8b",
      "arcName": "The Consultant's Gambit",
      "arcSlug": "consultants-gambit",
      "beatName": "Evidence & Proof",
      "beatSlug": "consultants-gambit-evidence-proof",
      "evidence": "Bioeconomy, grid, EV, finance, carbon markets, green AI deep dives with sizing and case studies",
      "position": 4,
      "confidence": 88,
      "parentBeatName": "Evidence",
      "parentBeatSlug": "evidence"
    },
    {
      "to": 151,
      "from": 59,
      "beatId": "019dd95a-07a5-761b-9144-a5b7a27b3bf4",
      "arcName": "The Triple Take",
      "arcSlug": "triple-take",
      "beatName": "The Action (Now What)",
      "beatSlug": "triple-take-the-action-now-what",
      "evidence": "Per-system implementation levers and recommendations",
      "position": 3,
      "confidence": 70,
      "parentBeatName": "Resolution",
      "parentBeatSlug": "resolution"
    }
  ],
  "loops": [
    {
      "to": 145,
      "from": 130,
      "name": "Paradox Resolver",
      "slug": "20-paradox-resolver",
      "bestFor": "Strategic pivots, innovation pitches, challenging conventional wisdom",
      "matchId": "019dd95a-088c-724c-b313-67501415b55e",
      "evidence": "AI/data centers strain power (pp.132-135) but AI use-cases enable 3-5% emission reductions (pp.138-140).",
      "position": 14,
      "objective": "Reconcile AI's energy demand with AI's emissions-reduction upside",
      "structure": "The Apparent Contradiction -> Why Both Seem True -> The Deeper Truth That Reconciles",
      "confidence": 80,
      "description": "Introduce a seeming contradiction that captures attention, then resolve it with a deeper truth"
    }
  ],
  "imagePathAlt": null,
  "thumbSrc": null,
  "thumbSrcAlt": null,
  "locked": true
}