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  "docSlug": "8141e074e67aa064",
  "documentTitle": "Distress Alert July 2024",
  "authorId": "AlvarezMarsal",
  "authorName": "Alvarez & Marsal",
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  "nDataPoints": 16,
  "notes": "The chart displays distress percentages for various sectors, with Fashion Retail at 14.6% and Automotive at 4.4%.",
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      "text": "Corporate distress has increased in 10 out of 16 industry groups covered in the ADA.",
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      "kind": "chart",
      "text": "Chart 3: Corporate distress by sector",
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      "text": "Distress level: 14.6%",
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      "kind": "paragraph",
      "text": "In the latest data, Fashion Retail emerged as the most distressed sector, followed by Media & Entertainment Services, Chemical & Others, Commodities and Specialised Retail. Companies in Construction and Business Services in 2023 have experienced a significant rise in levels of distress versus 2022. We discuss the main sector findings in more detail in the following pages.",
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      "kind": "paragraph",
      "text": "Corporate distress has increased in 10 out of 16 industry groups covered in the ADA. Two sectors showed stable, albeit elevated, levels of distress compared to the year 2022, while four industries saw a decrease.",
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      "text": "4 Specialised Retail includes Computer and Electronics Retail, Consumer Electronics, Drug Retail, Home Furnishings, Home Improvement Retail, Household Appliances, among other sub-sectors.",
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      "kind": "title",
      "text": "03 SECTOR TRENDS",
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