Agentic AI: The Future of Intelligent Systems

Episode 86 : When Markets Trade Themselves - The Rise of Agentic Trading Systems

5 min · 7 de abr de 2026
Portada del episodio Episode 86 : When Markets Trade Themselves - The Rise of Agentic Trading Systems

Descripción

For years, trading evolved from rules-based algorithms to machine learning models. Faster, smarter—but still reactive. This episode explores a deeper shift. Not models that trade, but systems of agents that behave like a trading organization. Sensing agents that observe markets.Strategy agents that propose trades.Risk agents that challenge decisions.Execution agents that act. And learning agents that evolve the system over time. This is not just automation. It’s autonomy. And when these systems begin interacting with each other, markets stop being driven by individual decisions and start becoming systems of continuous interaction. In this episode, we break down: * Why agentic trading is fundamentally different from algo and ML-based trading * How to design a multi-agent trading system in practice * The role of risk, control, and architecture in autonomous markets * And why the real edge is no longer strategy—but system design Because when markets begin to trade themselves, you are no longer building a model. You are designing a system that decides.

Comentarios

0

Sé la primera persona en comentar

¡Regístrate ahora y únete a la comunidad de Agentic AI: The Future of Intelligent Systems!

Prueba gratis

Empieza 7 días de prueba

$99 / mes después de la prueba. · Cancela cuando quieras.

  • Podcasts solo en Podimo
  • 20 horas de audiolibros al mes
  • Podcast gratuitos

Todos los episodios

96 episodios

episode Episode 94: Agentic AI ROI — Why Most Organizations Aren't Seeing Business Value Yet artwork

Episode 94: Agentic AI ROI — Why Most Organizations Aren't Seeing Business Value Yet

Organizations around the world are investing billions in Agentic AI. New foundation models are released almost every month, intelligent agents are becoming more capable, and the pace of innovation has never been faster. So why are so many organizations still struggling to demonstrate meaningful ROI? In this episode of Agentic AI: The Future of Intelligent Systems, we explore one of the biggest questions facing business leaders today: Why isn't Agentic AI delivering the business value everyone expected? The answer may not lie in the technology itself. It lies in the growing gap between the speed of AI innovation and the pace of business transformation. Drawing on recent industry research, including Deloitte's finding that most organizations expect AI ROI to take two to four years, while only a small percentage of organizations deploying Agentic AI report significant business returns today, we examine why realizing ROI is far more than simply deploying intelligent agents. In this episode, we discuss: • Why business transformation moves much slower than AI innovation. • Why deploying AI agents is not the same as transforming business processes. • How the token-based economics of AI changes development, testing, experimentation, and innovation. • Why continuous model releases create new challenges for prompts, embeddings, evaluations, and production systems. • Why organizations are no longer managing software—but managing evolving intelligence. • The architectural challenge of balancing deterministic software with probabilistic AI to build resilient enterprise systems. Agentic AI has the potential to transform every industry. But achieving sustainable ROI requires far more than adopting the latest model. It requires redesigning workflows, modernizing enterprise architecture, establishing governance, and building organizations that can evolve alongside AI itself. Because perhaps the biggest challenge isn't building more intelligent agents. It's building organizations capable of transforming quickly enough to turn intelligence into lasting business value.

19 de jul de 20268 min
episode Episode 93: Physical AI — The Next Frontier for Agentic Systems artwork

Episode 93: Physical AI — The Next Frontier for Agentic Systems

For decades, AI has lived behind screens—answering questions, generating content, and assisting human decision-making. But a new frontier is emerging. Physical AI is taking agentic intelligence beyond the digital realm and into the physical world. From autonomous robots and smart factories to self-driving vehicles and intelligent infrastructure, intelligent agents are increasingly able not only to perceive and reason, but also to act. In this episode of Agentic AI: The Future of Intelligent Systems, we explore how advances in foundation models, multimodal AI, robotics, digital twins, and agentic architectures are converging to create a new generation of embodied intelligent systems. We discuss: • What Physical AI is and how it differs from traditional robotics. • Why Physical AI represents the next frontier for agentic systems. • The technologies enabling embodied intelligence. • Real-world applications across manufacturing, logistics, healthcare, mobility, and smart infrastructure. • The challenges of safety, trust, governance, and sustainability. • Why designing efficient and sustainable Physical AI systems will be critical for the future. The age of digital agents has only just begun. The age of physical agents may be next. Join us as we explore Physical AI—the next frontier for agentic systems.

28 de jun de 20267 min
episode Episode 92: The Intelligence Dependency Problem — A Hidden Risk in Agentic AI artwork

Episode 92: The Intelligence Dependency Problem — A Hidden Risk in Agentic AI

What happens when the intelligence your AI agents depend on suddenly changes? In the age of Agentic AI, organizations are increasingly building workflows around frontier models for reasoning, planning, memory, orchestration, and decision-making. But what if access evolves? What if a model becomes unavailable? What if regulations shift? What if regional access changes? What if the intelligence layer your agents depend on no longer behaves the same way? In this episode of Agentic AI: The Future of Intelligent Systems, we explore a growing strategic challenge that many organizations may not yet be fully considering: The Access Problem. Using recent developments around frontier AI models — including discussions surrounding access changes to advanced models such as Fable 5 and Mythos 5 — this episode examines a broader shift in how advanced AI capabilities are increasingly being viewed: Not only as software products… But as strategic capabilities. In this episode, we explore: ✅ Why Agentic AI creates a new dependency on intelligence itself ✅ How evolving access, regulation, and policy may shape AI strategy ✅ The hidden risk of single-model dependency ✅ Why enterprises may need multi-model and resilient AI architectures ✅ The rise of Resilient Intelligence Architecture in the Agentic era Because perhaps the future of AI strategy will not simply be about access to the smartest model… But about building systems resilient to changing access to intelligence. 🎧 Listen now and rethink what resilience means in the age of Agentic AI. #AgenticAI #ArtificialIntelligence #AI #AIAgents #EnterpriseAI #ResponsibleAI #AIArchitecture #DigitalTransformation #FutureOfAI #AIStrategy Learn more: leanagenticai.com

14 de jun de 20266 min
episode Episode 91 : The Token Shock — Why Companies Are Running Out of AI Budget artwork

Episode 91 : The Token Shock — Why Companies Are Running Out of AI Budget

What happens when organizations discover that their AI budget is disappearing faster than expected? In this episode of Agentic AI: The Future of Intelligence Systems, we take a deep dive into one of the biggest hidden challenges emerging in the age of Agentic AI: Token Shock. As enterprises rapidly adopt AI copilots, coding assistants, and autonomous agents, a surprising reality is beginning to surface: AI does not behave like traditional software. Agents think. Reason. Retry. Search. Call tools. And sometimes continue working quietly in the background long after users move on. What feels like one simple request may actually trigger hundreds of hidden reasoning steps underneath. And suddenly… organizations are asking difficult questions: • Why are AI costs rising so quickly? • Do all tasks really need the largest models? • Are agents overthinking simple work? • What happens when token spending scales across thousands of employees? • Why are some companies reportedly exhausting AI budgets far faster than expected? In this episode, we explore: ✅ The hidden economics of tokens ✅ Why Agentic AI changes enterprise cost models ✅ The rise of reasoning budgets and token governance ✅ How invisible retries, tool usage, and agent workflows drive spending ✅ Why the future of AI may be about smarter intelligence, not just more intelligence Because perhaps the future winners in Agentic AI will not be the organizations consuming the most intelligence… But the organizations using intelligence wisely. 🎧 Listen now and rethink the hidden cost of intelligent systems. #AgenticAI #ArtificialIntelligence #AI #GenerativeAI #AIAgents #EnterpriseAI #TokenEconomics #LeanAI #ResponsibleAI #DigitalTransformation Learn more: leanagenticai.com

7 de jun de 20268 min
episode Episode 90: Understanding the Water Footprint of Agentic AI: The Hidden Resource Behind Intelligence artwork

Episode 90: Understanding the Water Footprint of Agentic AI: The Hidden Resource Behind Intelligence

Artificial Intelligence often feels invisible. You ask a question. An answer appears. An agent completes a task. Everything feels instant, effortless, and digital. But beneath every intelligent interaction lies something physical. In this episode, we explore one of the least discussed — yet increasingly important — aspects of Agentic AI: Water. Why would AI systems depend on water? How do data centres cool the massive infrastructure powering intelligent systems? Why might autonomous AI agents change the scale of resource consumption? And why does where computation happens matter just as much as how much computation happens? We unpack the hidden relationship between Agentic AI, data centre cooling, electricity generation, and water scarcity, while separating hype from reality. This episode is not about fear or slowing innovation. It is about awareness. Because the future of intelligence may not simply be about building smarter systems — but building systems that are efficient, responsible, and mindful of the invisible resources quietly supporting them. 🎙️ In this episode: • Why AI has a water story • How data centres use water for cooling • The hidden link between electricity and water • Why Agentic AI may change the equation • Water scarcity and why location matters • Building intelligent systems responsibly Because every intelligent interaction may feel digital — but somewhere beneath the surface, physical resources are quietly at work.

30 de may de 20268 min