Adapticx AI

Adapticx Technologies Ltd

Adapticx AI is a podcast designed to make advanced AI understandable, practical, and inspiring. We explore the evolution of intelligent systems with the goal of empowering innovators to build responsible, resilient, and future-proof solutions. Clear, accessible, and grounded in engineering reality—this is where the future of intelligence becomes understandable.

  1. AI Safety & Governance

    ٢١ يناير

    AI Safety & Governance

    In this episode, we examine why AI safety and governance have become unavoidable as general-purpose AI systems move into every layer of society. We explore how the shift from narrow models to general-purpose AI amplifies risk, why high-level “responsible AI” principles often fail in practice, and what it takes to build systems that can be trusted at scale. We break down the core pillars of trustworthy AI—fairness, reliability, transparency, and human oversight—and follow them across the full AI lifecycle, from pre-training and fine-tuning to deployment and continuous monitoring. The discussion also tackles real failure modes, from hallucinations and bias to misinformation, dual-use risks, and the limits of current alignment techniques. This episode covers: Why general-purpose AI fundamentally changes the risk landscapeThe pillars of trustworthy AI: fairness, safety, transparency, and oversightThe AI lifecycle: pre-training, fine-tuning, deployment, and monitoringHallucinations, bias amplification, and misinformation risksAlignment challenges, red teaming, and accountability gapsMarket concentration, environmental costs, and global governance This episode is part of the Adapticx AI Podcast. Listen via the link provided or search “Adapticx” on Apple Podcasts, Spotify, Amazon Music, or most podcast platforms. Sources and Further Reading Additional references and extended material are available at: https://adapticx.co.uk

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  2. From Deployed AI to What Comes Next (Trailer)

    المقطع الترويجي للموسم ٧

    From Deployed AI to What Comes Next (Trailer)

    Season 7 begins at a turning point. AI is no longer confined to research papers and demos—it is deployed, operational, and shaping real-world systems at scale. This season focuses on what changes when models move from experiments to production infrastructure. We explore how organizations build, monitor, and maintain AI systems whose behavior is probabilistic rather than deterministic. What reliability means when models can adapt, fail in unexpected ways, and influence high-stakes decisions. And how engineering practices evolve when AI is treated not as a tool, but as a collaborator embedded in workflows. The season also looks ahead to the next frontier: reasoning models, planning systems, and autonomous agents capable of using tools, coordinating tasks, and acting toward goals. Alongside these capabilities come urgent questions of safety, governance, and control—how risks are identified, how responsibility is enforced, and how oversight scales with capability. Finally, we examine one of the defining debates of this era: open versus closed models. Who should control powerful AI systems, how transparency affects innovation and safety, and what these choices mean for the long-term trajectory toward AGI. Season 7 is about AI in the world—how it behaves in production, how it is governed, and how today’s decisions shape what comes next. This episode is part of the Adapticx AI Podcast. Listen via the link provided or search “Adapticx” on Apple Podcasts, Spotify, Amazon Music, or most podcast platforms. Sources and Further Reading Additional references and extended material are available at: https://adapticx.co.uk

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Adapticx AI is a podcast designed to make advanced AI understandable, practical, and inspiring. We explore the evolution of intelligent systems with the goal of empowering innovators to build responsible, resilient, and future-proof solutions. Clear, accessible, and grounded in engineering reality—this is where the future of intelligence becomes understandable.