Rethinking industrial modernity: Institutional heterogeneity and the limits of technological convergence


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DOI:

https://doi.org/10.71350/3062192566

Keywords:

Institutional plasticity, governance trilemmas, recombinant innovation, technological divergence, plural modernities, adaptive ecosystems

Abstract

Industrial modernization defies the myth of technological convergence, instead fracturing into distinct pathways shaped by local institutional DNA. Our investigation reveals how governance architectures dynamically rewrite the rules of technological efficacy through four revolutionary shifts. Where traditional models predicted standardization, we observe German manufacturers transforming initial 14% blockchain adoption delays into 29% fewer contractual disputes within five years—a testament to institutional learning in action. Toyota’s breakthrough 19% reliability gain through Kaizen AI demonstrates institutions as living systems: by weaving hourly worker feedback into autonomous processes, they unlocked recombinant innovation that redefines human-machine collaboration. Regulatory landscapes expose irreducible trilemmas—China’s $2.3 million robotics recall costs versus Europe’s 59% small-business adoption gaps prove one-size-fits-all solutions are obsolete. From Sweden’s precision-crafted quality premiums to Foxconn’s hyper-optimized throughput, each successful model blooms from unique institutional soil. Crucially, Germany’s Autonomik initiative shows worker feedback efficacy varies across cultural contexts, while falling blockchain disputes reveal measurable adaptation curves. Volkswagen’s factories and Chinese supply chains aren’t converging; they’re diverging toward equally valid futures. This evidence dismantles the century-old pursuit of a universal “best way,” revealing institutional heterogeneity as the unexpected engine of 21st-century progress—where plural modernities thrive through continuous reinvention.

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Published

2025-06-17

How to Cite

Dzreke, S., & Dzreke, S. E. (2025). Rethinking industrial modernity: Institutional heterogeneity and the limits of technological convergence. Advanced Research Journal, 7(1), 35–61. https://doi.org/10.71350/3062192566