Cognitive orchestration: The evolutionary advantage of AI in post-strategic enterprises
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Anahtar Kelimeler

Cognitive orchestration
post-strategic enterprise
evolutionary advantage
AI governance
dynamic resource allocation
algorithmic strategy

Nasıl Atıf Yapılır

Dzreke, S. S. (2026). Cognitive orchestration: The evolutionary advantage of AI in post-strategic enterprises. Contemporary Perspectives, 2(1), 60–77. https://doi.org/10.71350/3108610111

Özet

NVIDIA’s AI-driven pivot during the 2023 GPU shortage—reallocating 78% of R&D to edge AI within 45 days to capture $12B in market value—epitomizes the transformative potential of cognitive orchestration. Yet 73% of enterprises remain strategically brittle, constrained by ossified 18-month planning cycles that crumble under volatility like generative AI disruption. This research employs mixed methods—longitudinal analysis of 200 firms, an AI maturity survey, and eight enterprise case studies—to demonstrate that AI-orchestrated organizations achieve 19% faster strategic pivots and 14% higher profitability by replacing static planning with continuous cognitive adaptation. Top performers deploy neural resource networks, algorithmic sense-response loops, and evolutionary fitness functions to transform volatility into competitive speciation. Introducing the Cognitive Orchestration Maturity Model (COMM) and Post-Strategic Transition Framework, this study provides a blueprint for converting environmental turbulence into evolutionary advantage, while rigorously addressing governance imperatives to prevent runaway optimization.

https://doi.org/10.71350/3108610111
PDF (English)

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Telif Hakkı (c) 2026 Simon Suwanzy Dzreke