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Leadership Article Review Podcast
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Podcast Overview
Want to listen to your favorite articles on the go?! We’ve got you covered! Catch all of your favorites right here in your podcast feed!
Language
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Publishing Since
10/4/2024
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Recent Episodes

December 12, 2025
Reclaiming Human Leadership in the Age of AI: Evidence-Based Strategies for Navigating Disruption and Rediscovering Purpose, by Jonathan H. Westover PhD
Abstract: Artificial intelligence is fundamentally disrupting traditional leadership paradigms, forcing organizations to reconsider what leadership means when machines can process information faster, generate competent outputs, and automate decisions at scale. This disruption manifests across four interconnected domains: meaning-making, identity, organizational systems, and leader development. Rather than rendering human leadership obsolete, AI clarifies what leadership has always been for—stewarding purpose, creating connection, and exercising judgment in contexts machines cannot comprehend. Drawing on organizational behavior research, developmental psychology, and case studies across technology, healthcare, and financial services sectors, this article examines how leading organizations are responding to AI-driven leadership disruption. Evidence suggests successful navigation requires shifting from expertise-based authority to inquiry-driven facilitation, from control-oriented management to adaptive systems stewardship, and from horizontal skill acquisition to vertical developmental growth. Organizations that intentionally cultivate human-centered leadership capabilities—meaning stewardship, reflective practice, distributed intelligence, and developmental capacity—position themselves to thrive amid technological transformation while preserving the irreducibly human elements that create organizational vitality and stakeholder wellbeing. Learn more about your ad choices. Visit megaphone.fm/adchoices

December 11, 2025
The Myth of the Workless Future: Why AI Will Reshape—Not Replace—Human Labor, by Jonathan H. Westover PhD
Predictions of a fully automated, workless society within two decades have captured public imagination and policy attention. This article examines the empirical evidence and theoretical frameworks surrounding large-scale technological displacement, arguing that rather than eliminating work entirely, AI and automation are more likely to hollow out middle-skill occupations while preserving demand for high-touch human services and augmented knowledge work. Drawing on labor economics, organizational psychology, and technology adoption research, we identify three emerging workforce segments: AI-augmented super-workers, human-essential service providers, and a potentially marginalized middle tier facing structural displacement. The article evaluates organizational responses including skills development programs, hybrid human-AI work design, and social safety net innovations. We conclude that preventing a bifurcated "stipend society" requires proactive intervention in education systems, labor market institutions, and the psychological contract between workers, employers, and the state. The central challenge is not whether society can afford economic security for displaced workers, but whether existing political and cultural frameworks can accommodate such a transformation while preserving human agency and meaning. Learn more about your ad choices. Visit megaphone.fm/adchoices

December 9, 2025
Leveraging AI to Teach Cross-Cultural Management: An Evidence-Based Pedagogical Approach, by Jonathan H. Westover PhD
As artificial intelligence tools become ubiquitous in higher education, management educators face the challenge of integrating these technologies while maintaining pedagogical rigor and teaching critical evaluation skills. This article examines an experiential exercise that uses AI as both a learning tool and object of study in teaching cross-cultural management, specifically Hofstede's Cultural Dimensions framework. Drawing on experiential learning theory, constructivist pedagogy, and emerging research on AI literacy in business education, we analyze how structured AI interactions can simultaneously develop cultural competence and critical AI literacy. The article presents evidence-based design principles, documented implementation experiences from business schools, and forward-looking recommendations for educators seeking to balance technological innovation with foundational learning objectives. This pedagogical approach addresses the dual imperative of preparing students for AI-augmented workplaces while cultivating the analytical skepticism necessary to evaluate AI-generated information. Learn more about your ad choices. Visit megaphone.fm/adchoices
515 total episodes available
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This podcast updates daily.
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This podcast is available on 4 platforms including Apple Podcasts, Spotify, and more. You can also use the RSS feed directly.
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No, this podcast does not typically feature guests.
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