Limits of Algorithmic Advantage - Tessa Morgan - ebook

Limits of Algorithmic Advantage ebook

Tessa Morgan

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Opis

This book examines how machine learning applications confer enterprise‑level capabilities on small businesses while probing the inherent limits of such algorithmic advantage. It treats the empowerment not as a straightforward gain but as a shift that reconfigures internal logic and external relations, inviting inquiry into where the advantage ceases to hold. Three systems illustrate this tension. First, automated decision‑making tools redistribute authority across roles, flattening traditional hierarchies and creating new dependencies on data quality and model transparency. Second, real‑time analytics reshape information flow patterns, enabling rapid responses but also amplifying noise when signals are misinterpreted, which affects coordination between units. Third, incentive structures evolve as performance metrics become tied to algorithmic outputs, prompting alignment between short‑term gains and long‑term resilience while raising questions about accountability and adaptability. Each system demonstrates how the advantage extends only so far before countervailing forces emerge, requiring continual reassessment of the underlying assumptions. For German and European enterprises, the evolving balance between algorithmic power and its limits informs long‑term strategic positioning. Organizations must monitor how technological shifts interact with regulatory frameworks, market dynamics, and organizational culture to sustain competitiveness without overreliance on any single capability.

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Liczba stron: 171

Rok wydania: 2026

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