Folgen

  • Tools Empowering Large Language Models
    Feb 24 2026

    In this episode of Rheminiscing, Dr. Tony Rhem breaks down what large language models (LLMs) are, how tools like ChatGPT, Gemini, and Claude actually work, and why the real value comes from how humans collaborate with them. You’ll learn the basics of token-by-token prediction, why LLMs feel intelligent even though they operate on probability, and how today’s models differ in strengths (reasoning, multimodal understanding, and contextual alignment). Dr. Rhem also demonstrates the power of well-structured prompting with a live example focused on patient engagement in healthcare, then closes with practical best practices: define intent, provide context, iterate, and verify outputs with trusted sources, keeping humans accountable and “AI-informed,” not AI-driven. #ArtificialIntelligence #AI #GenerativeAI #largelanguagemodels #llm #chatgpt #googlegemini #anthropicclaude #promptengineering #aiprompts #aitools #aiproductivity #ailiteracy #responsibleai #aigovernance #humanintheloop #aialignment

    Key themes: AI and the future of work, AI Strategy, Generative AI, AI governance

    Mehr anzeigen Weniger anzeigen
    10 Min.
  • Rheminiscing Episode 5 - AI & Future of Work Recap, and AI Strategy
    Feb 10 2026

    This episode revisits a powerful conversation with Dr. Annie Green, exploring how artificial intelligence (AI), knowledge management, and digital transformation are reshaping the future of work. Building on those insights, Tony Rhem and his AI co-host Georgia unpack why a clear, well-defined AI strategy is no longer optional for organizations or individuals.

    The discussion emphasizes that an AI strategy is a living framework, not a static document. As technologies evolve, so must the strategy, ensuring alignment between business objectives, workforce capabilities, data governance, and ethical AI practices. Without a plan, AI initiatives often lead to confusion, bias, duplicated efforts, and wasted investment.

    A strong AI strategy is framed around four foundational pillars:

    Purpose and alignment with measurable business or mission goals

    People and skills, ensuring AI literacy from executives to practitioners

    Data and infrastructure, grounded in strong data governance and security

    Ethics and governance, embedding transparency, explainability, accountability, and oversight from day one

    The episode also highlights why organizations frequently rush into AI tools without building a foundation—chasing innovation instead of solving the right problems. The solution is pairing AI strategy with AI policy and governance frameworks, creating clear rules of engagement that drive responsible, trustworthy, and sustainable AI adoption.

    Importantly, the conversation extends beyond large enterprises. Small and mid-sized businesses, professionals, and individuals are encouraged to develop their own AI strategies—“pick a lane,” build depth in a specific AI discipline (such as generative AI, AI governance, or algorithmic assessments), and align learning with clear goals.

    The episode closes with a direct message: AI without strategy is risk at scale. Strategy and accountability are inseparable, and ethics must be designed into AI systems—not bolted on later. AI strategy, done right, becomes ethics in action.

    Bottom line: Technology moves fast, but purpose, governance, and strategy are what keep AI on course.

    Key themes: AI and the future of work, AI Strategy, Generative AI, AI governance

    Mehr anzeigen Weniger anzeigen
    12 Min.
  • AI and the Future of Work with Guest Dr. Annie Green
    Jan 20 2026

    In this episode, I speak with Dr. Annie Green about AI and how it has and will continue to influence how we work, live, and play.

    Key themes: AI and the future of work, AI Strategy, Generative AI, AI governance

    Mehr anzeigen Weniger anzeigen
    21 Min.
  • AI Then and Now
    Jan 6 2026

    AI in the late 1980s, starting with rule-based expert systems built in languages like Lisp and Prolog for Fortune 1000 companies and government agencies. Over the decades, my work has evolved from developing expert systems to integrating AI into enterprise applications, advancing through the big-data era, deep learning, and ultimately generative AI.

    Later I pioneered approaches that merged knowledge management with AI, providing personalized, knowledge-driven systems. As generative AI and transformers emerged in the late 2010s and 2020s, the focus shifted toward responsible AI, AI ethics, and governance, emphasizing that advancing AI isn’t just about smarter machines—it requires guardrails to ensure alignment with human values. Without governance, AI risks scaling bad decisions at high speed, making ethical oversight essential.

    Key themes: AI and the future of work, AI Strategy, Generative AI, AI governance

    Mehr anzeigen Weniger anzeigen
    12 Min.
  • Generative AI
    Nov 18 2025

    Generative AI isn't just about flashy images, polished essays, or realistic voices. It’s a class of AI systems designed not merely to analyze information but to create new content—text, images, audio, video, 3D models, and even synthetic data. These models learn from massive datasets and use that knowledge to produce original outputs, making them far more than a novelty; they represent a fundamental shift in how knowledge, creativity, and digital content are generated.

    Key themes: AI and the future of work, AI Strategy, Generative AI, AI governance

    Mehr anzeigen Weniger anzeigen
    11 Min.
  • Large Language Models
    Nov 4 2025

    Episode 1: Understanding Large Language Models — The Brains Behind Modern AI

    In this debut episode of RHEMINISCING with Dr. Tony Rhem, Dr. Tony draws on over four decades of experience in artificial intelligence and knowledge management to demystify one of today’s most transformative technologies — Large Language Models (LLMs).

    From his early days building expert systems in Prolog and Lisp to today’s generative AI revolution, Dr. Tony explains how LLMs work, why they matter, and what it takes to use them responsibly. Joined by his AI co-host, Georgia, they unpack the inner workings of LLMs, how they process language, generate human-like responses, and are reshaping how organizations manage, retrieve, and trust knowledge.

    This episode goes beyond the hype to explore AI readiness, data integrity, and ethical oversight, tackling questions such as:

    • Can we trust AI systems to make decisions in healthcare, law, or finance without human oversight?
    • What happens when poor information architecture undermines AI outputs?
    • How do we balance accessibility, innovation, and governance in the age of generative AI?

    If you’ve ever wondered what really powers chatbots, copilots, or intelligent knowledge portals, or how AI is transforming the way we think, work, and learn, this episode is for you!


    Key themes: AI and the future of work, AI Strategy, Generative AI, AI governance

    Mehr anzeigen Weniger anzeigen
    10 Min.
  • RHEMINISCING with Dr. Tony Rhem Podcast Trailer
    Nov 1 2025

    This is the trailer for RHEMINISCING, a thought-provoking podcast hosted by Dr. Tony Rhem, a globally recognized expert in AI, Knowledge Management, and ethical tech innovation. Through strategic reflection and future-forward insight, this podcast examines the transformative journey of artificial intelligence from its early roots in expert systems and neural networks to today’s generative and agentic system powerhouses and tomorrow’s possible AGI and Quantum AI solutions.

    Key themes: AI and the future of work, AI Strategy, Generative AI, AI governance

    Mehr anzeigen Weniger anzeigen
    2 Min.