Profound

著者: John Willis
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  • Ramblings about W. Edwards Deming in the digital transformation era. The general idea of the podcast is derived from Dr. Demming's seminal work described in his New Economics book - System of Profound Knowledge ( SoPK ). We'll try and get a mix of interviews from IT, Healthcare, and Manufacturing with the goal of aligning these ideas with Digital Transformation possibilities. Everything related to Dr. Deming's ideas is on the table (e.g., Goldratt, C.I. Lewis, Ohno, Shingo, Lean, Agile, and DevOps).

    © 2024 Profound
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あらすじ・解説

Ramblings about W. Edwards Deming in the digital transformation era. The general idea of the podcast is derived from Dr. Demming's seminal work described in his New Economics book - System of Profound Knowledge ( SoPK ). We'll try and get a mix of interviews from IT, Healthcare, and Manufacturing with the goal of aligning these ideas with Digital Transformation possibilities. Everything related to Dr. Deming's ideas is on the table (e.g., Goldratt, C.I. Lewis, Ohno, Shingo, Lean, Agile, and DevOps).

© 2024 Profound
エピソード
  • S4 E22 - Dr. Jabe Bloom - Navigating the Myths and Realities of AI with Pragmatism
    2024/10/27

    In this episode of The Profound Podcast, I sit down with Dr. Jabe Bloom, a researcher and expert in systems thinking, AI, and digital transformation. We explore Eric Lawson’s book The Myth of AI, tackling the contentious debate around artificial general intelligence (AGI). Dr. Bloom offers insights from his dissertation and divides the ongoing discourse on AI into two camps: dogmatists and pragmatists. Dogmatists believe AGI is inevitable, while pragmatists focus on the practical impacts of current AI technology, such as large language models (LLMs), and how these will reshape businesses, education, and society.

    Throughout the episode, Dr. Bloom explains his framework for thinking about AI, touching on proactionary versus precautionary approaches to its development and regulation. He also draws connections between these ideas and W. Edwards Deming’s principles, especially around abductive reasoning—a concept that links back to Dr. Bloom’s past discussions about AI’s potential in problem-solving.

    The conversation takes a critical view of AGI's feasibility, with Dr. Bloom emphasizing the current challenges AI faces in replicating abductive reasoning, which involves making intelligent guesses—a capability he argues machines have yet to achieve. We also dive into examples from fields like DevOps, healthcare, and city planning, discussing where AI has shown great promise and where it still falls short.

    Key takeaways from the episode include the importance of addressing present AI technologies and their immediate impacts on work and society, as well as the ongoing need for human oversight and critique when using AI systems.

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    1 時間 10 分
  • S4 E21 - Erik J. Larson - The Myth of AI and Unravelling The Hype
    2024/09/18

    In this episode of the Profound Podcast, I speak with Erik J. Larson, author of The Myth of Artificial Intelligence, about the speculative nature and real limitations of AI, particularly in relation to achieving Artificial General Intelligence (AGI). Larson delves into the philosophical and scientific misunderstandings surrounding AI, challenging the dominant narrative that AGI is just around the corner. Drawing from his expertise and experience in the field, Larson explains why much of the AI hype lacks empirical foundation. He emphasizes the limits of current AI models, particularly their reliance on inductive reasoning, which, though powerful, is insufficient for achieving human-like intelligence.

    Larson discusses how the field of AI has historically blended speculative futurism with genuine technological advancements, often fueled by financial incentives rather than scientific rigor. He highlights how this approach has led to misconceptions about AI’s capabilities, especially in the context of AGI. Drawing connections to philosophical theories of inference, Larson introduces deductive, inductive, and abductive reasoning, explaining how current AI systems fall short in their over-reliance on inductive methods. The conversation touches on the challenges of abduction (the "broken" form of reasoning humans often use) and the difficulty of replicating this in AI systems.

    Throughout the discussion, we explore the social and ethical implications of AI, including concerns about data limitations, the dangers of synthetic data, and the looming “data wall” that could hinder future AI progress. We also touch on broader societal impacts, such as how AI’s potential misuse and over-reliance might affect innovation and human intelligence.

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    1 時間 4 分
  • S4 E20 - Dr. Jabe Bloom - Navigating Complexity with Pragmatic Philosophy
    2024/09/04

    In this episode of The Profound Podcast, I have an enlightening conversation with Dr. Jabe Bloom, a prominent voice in the fields of DevOps and digital transformation. The discussion revolves around the philosophical underpinnings of scientific reasoning and its application to complex systems, particularly through the lens of Charles Sanders Peirce's work on abductive reasoning.

    Jabe Bloom begins by exploring Peirce’s contributions to philosophy, particularly how Peirce's concept of abductive reasoning offers a framework for making educated guesses in situations where data is incomplete or variables are unknown. This idea becomes especially pertinent when Bloom contrasts the scientific method typically used in complicated domains, like Lean manufacturing, with the unpredictability of complex systems, where multiple hypotheses might be equally valid.

    The conversation further delves into how these ideas connect to digital transformation, especially in organizations navigating the complexities of modern IT and business environments. Bloom highlights the importance of fostering environments where experimentation and educated guessing are encouraged, as this aligns with Peirce's pragmatic approach, which values the usefulness of an idea over its absolute truth.

    To wrap up, we also discuss the broader implications of Peirce’s work on modern AI and socio-technical systems, emphasizing the need for a deeper understanding of how these systems operate and how to integrate artificial intelligence into complex human processes.

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    1 時間 5 分

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