Enterprise IT Failures Increasingly Severe as Infrastructure Concentrates in Hyperscalers
IT practitioners observe a pattern of less frequent but more catastrophic system failures as businesses concentrate infrastructure in a handful of cloud providers and data centers. Single third-party vendor errors now cascade across multiple companies and industries simultaneously. The concentration of critical business systems into shared infrastructure creates systemic brittleness that observability and incident response tooling has not kept pace with.
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