{
  "docId": "019dd923-5de0-76bd-a168-72f79e6765ec",
  "docSlug": "801529f85e24d23e",
  "documentTitle": "Generative AI Making Waves",
  "authorId": "OliverWyman",
  "authorName": "AWS",
  "documentKindSlug": "consulting-deck",
  "documentKindLabel": "Consulting deck",
  "sourceTypeSlug": "strategy_consulting",
  "sourceTypeLabel": "Strategy consulting",
  "presentationDate": null,
  "orientation": "landscape",
  "aspectRatio": 1.778,
  "pageNumber": 43,
  "pageCount": 64,
  "prevPage": 42,
  "nextPage": 44,
  "slideType": "initiative_list",
  "function": "present_solution",
  "density": "balanced",
  "nDataPoints": 0,
  "notes": "The slide uses a custom matrix/table structure to map AI use cases to business functions.",
  "elementsJson": [
    "headline_text",
    "paragraph",
    "comparison_table",
    "icon_grid",
    "footnote"
  ],
  "metadataConfidence": 1,
  "imagePath": null,
  "slideHref": "/slides/019dd923-5de0-76bd-a168-72f79e6765ec/43",
  "deckHref": "/decks/019dd923-5de0-76bd-a168-72f79e6765ec",
  "deckJsonHref": "/decks/019dd923-5de0-76bd-a168-72f79e6765ec.json",
  "deckAnchorHref": "/decks/019dd923-5de0-76bd-a168-72f79e6765ec#slide-43",
  "components": [
    {
      "bbox": {
        "h": 0.03,
        "w": 0.3,
        "x": 0.63,
        "y": 0.91
      },
      "kind": "legend",
      "text": "Relative Impact: High (orange), Medium (half-filled), Low (empty)",
      "attrs": null,
      "subkind": null,
      "toolName": null,
      "toolSlug": null,
      "confidence": null,
      "componentId": "17139114-222e-408e-aaeb-2779cc690469",
      "frameworkName": null,
      "frameworkSlug": null
    },
    {
      "bbox": {
        "h": 0.15,
        "w": 0.86,
        "x": 0.07,
        "y": 0.14
      },
      "kind": "paragraph",
      "text": "While many inroads have been made to digitize retail banking, there remains room for improvement. GenAI could close the gaps. Employee-facing use cases unique to retail banking tend to be in credit and financial wellness.",
      "attrs": null,
      "subkind": "paragraph",
      "toolName": null,
      "toolSlug": null,
      "confidence": null,
      "componentId": "4f5c4f02-94ed-42a3-88c8-2392b06b665d",
      "frameworkName": null,
      "frameworkSlug": null
    },
    {
      "bbox": {
        "h": 0.03,
        "w": 0.3,
        "x": 0.07,
        "y": 0.94
      },
      "kind": "source-note",
      "text": "Sources: Celent interviews, research, surveys, and analysis © CELENT",
      "attrs": null,
      "subkind": null,
      "toolName": null,
      "toolSlug": null,
      "confidence": null,
      "componentId": "05a5c4f9-f9fa-4c0f-a9bb-e6b4e2b9dd39",
      "frameworkName": null,
      "frameworkSlug": null
    },
    {
      "bbox": {
        "h": 0.45,
        "w": 0.86,
        "x": 0.07,
        "y": 0.45
      },
      "kind": "table",
      "text": "Matrix of Use Case Type vs Wave and Functional Area (Customer Engagement, Risk & Compliance, Infrastructure)",
      "attrs": null,
      "subkind": "data",
      "toolName": null,
      "toolSlug": null,
      "confidence": null,
      "componentId": "7b68d3e8-0ccb-4171-9863-9c2c96036c4b",
      "frameworkName": null,
      "frameworkSlug": null
    },
    {
      "bbox": {
        "h": 0.05,
        "w": 0.6,
        "x": 0.07,
        "y": 0.05
      },
      "kind": "title",
      "text": "USE CASES UNIQUE TO RETAIL BANKING: EMPLOYEE-FACING (1/2)",
      "attrs": null,
      "subkind": "headline",
      "toolName": null,
      "toolSlug": null,
      "confidence": null,
      "componentId": "10d687b2-0ee9-4224-949b-4caa709abeab",
      "frameworkName": null,
      "frameworkSlug": null
    }
  ],
  "metrics": [],
  "tools": [
    {
      "name": "Table data",
      "slug": "table-data",
      "agent": null,
      "layer": "slide",
      "matchId": "fe10cc9e-d193-4a83-b9c5-704819e4e543",
      "evidence": "table/data: Matrix of Use Case Type vs Wave and Functional Area (Customer Engagement, Risk & Compliance, Infrastructure)",
      "confidence": 0.8
    }
  ],
  "frameworks": [],
  "arcBeats": [
    {
      "to": 60,
      "from": 25,
      "beatId": "47b1b5cb-5ae4-43c1-b920-6173393fb113",
      "arcName": "The Consultant's Gambit",
      "arcSlug": "consultants-gambit",
      "beatName": "Solution & Approach",
      "beatSlug": "consultants-gambit-solution-approach",
      "evidence": "The document presents the solution and approach, including adoption waves, use cases, and the path forward",
      "position": 2,
      "confidence": 0.8,
      "parentBeatName": "Turn",
      "parentBeatSlug": "turn"
    },
    {
      "to": 57,
      "from": 43,
      "beatId": "912839c9-3858-40be-af54-4d9d176a522a",
      "arcName": "The Consultant's Gambit",
      "arcSlug": "consultants-gambit",
      "beatName": "Evidence & Proof",
      "beatSlug": "consultants-gambit-evidence-proof",
      "evidence": "The document provides evidence and proof of the potential impact of generative AI",
      "position": 3,
      "confidence": 0.8,
      "parentBeatName": "Evidence",
      "parentBeatSlug": "evidence"
    }
  ],
  "loops": [],
  "imagePathAlt": null,
  "thumbSrc": null,
  "thumbSrcAlt": null,
  "locked": true
}