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  • GenAI, AI Agents and Agentic AI what are the differences and best use cases part 2
    2025/05/11

    This 2nd episode on a 2 part series analyzes how GenAI has evolved to deliver automation through AI Agents and Agentic AI. It highlights the differences between both of them citing many sources from IBM, Anthropic McKinsey and Gartner amongst others as well as their best use cases and differences and also mentioning some of the risks.

    1. Generative AI (GenAI)

    Generative AI refers to reactive systems that wait for user input, typically a prompt, to generate content1. Their job is to generate some kind of content based on what was provided in the prompt.

    2. AI Agents

    AI Agents are typically built to do specific tasks5. They are designed to help users with actions like answering questions, organizing a calendar, or managing an email inbox. Think of them as virtual helpers that do exactly what you tell them to do, without thinking for themselves. They are great at automating simple, repetitive tasks but don't have the autonomy or decision-making abilities that Agentic AI does

    3. Agentic AI

    Agentic AI is a type of AI that is all about autonomy16. It refers to AI systems that possess the capacity to make autonomous decisions and take actions to achieve specific goals with limited or no direct human intervention17.... The term "agentic" refers to these models' agency, or, their capacity to act independently and purposefully18.

    Unlike AI Agents built for specific tasks, Agentic AI can make decisions, take actions, and even learn on its own to achieve specific goals16. They are proactive systems,

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    19 分
  • GenAI, AI Agents and Agentic AI what are the differences and best use cases part 1
    2025/05/11

    This first episode on a 2 part series analyzes how GenAI has evolved to deliver automation through AI Agents and Agentic AI. It highlights the differences between both of them citing many sources from IBM, Anthropic McKinsey and Gartner amongst others as well as their best use cases and differences and also mentioning some of the risks.

    1. Generative AI (GenAI)

    Generative AI refers to reactive systems that wait for user input, typically a prompt, to generate content1. Their job is to generate some kind of content based on what was provided in the prompt.

    2. AI Agents

    AI Agents are typically built to do specific tasks5. They are designed to help users with actions like answering questions, organizing a calendar, or managing an email inbox. Think of them as virtual helpers that do exactly what you tell them to do, without thinking for themselves. They are great at automating simple, repetitive tasks but don't have the autonomy or decision-making abilities that Agentic AI does

    3. Agentic AI

    Agentic AI is a type of AI that is all about autonomy16. It refers to AI systems that possess the capacity to make autonomous decisions and take actions to achieve specific goals with limited or no direct human intervention17.... The term "agentic" refers to these models' agency, or, their capacity to act independently and purposefully18.

    Unlike AI Agents built for specific tasks, Agentic AI can make decisions, take actions, and even learn on its own to achieve specific goals16. They are proactive systems,

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    12 分
  • The New Era of Quantum Computing and its effects on AI
    2025/03/02

    Quantum computing is rapidly evolving from a theoretical concept to a tangible technology with the potential to revolutionize various fields, especially AI. Significant progress has been made in qubit technology, error correction, and algorithm development. This technology is poised to accelerate AI advancements in areas like machine learning, optimization, cryptography, and drug discovery.

    Key Themes and Ideas:

    1. Challenges and Solutions:
    • Error Sensitivity: Quantum computers are highly susceptible to noise and environmental disturbances, leading to computational errors. "One of the biggest challenges with quantum computers is that they’re incredibly sensitive to the smallest changes, or ‘noise’ in their environment."
    • Qubit Coherence and Stability: Maintaining qubit coherence for sufficient computation time is a significant hurdle.
    • Scalability: Building larger, more stable quantum systems while reducing error rates remains a challenge.
    1. Impact on Artificial Intelligence:
    • Accelerated AI Advancements: Quantum computing has the potential to drastically accelerate AI capabilities in various areas.
    • Machine Learning: Quantum machine learning models can improve natural language processing, image recognition, and autonomous systems.
    • Optimization: Quantum optimization algorithms can enhance supply chain management, logistics, and financial modeling.
    • Drug Discovery and Materials Science: Quantum simulations can accelerate drug discovery, materials science, and climate modeling.
    • Cryptography: Quantum cryptography offers robust security solutions for data protection and communication.
    • Uncertain Timeline: The exact timeline for a quantum "singularity" (a point where quantum computers achieve practical, widespread utility) is uncertain and debated.

    Conclusion:

    Quantum computing is a dynamic and rapidly advancing field with significant potential to transform AI and various other industries. Overcoming current challenges related to qubit stability, error correction, and scalability will be crucial for realizing this potential. The substantial investments and ongoing research efforts by leading technology companies and governments suggest that practical, fault-tolerant quantum computers are becoming increasingly likely in the coming years.

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    13 分
  • DeepSeek China's GenAI Champion - Intro and highlight
    2025/02/02

    DeepSeek, a Chinese AI startup, is rapidly gaining prominence by developing and openly releasing highly competitive, cost-effective AI models. Its innovative techniques, including reinforcement learning and a mixture-of-experts architecture, allow for superior performance while minimizing training costs. This has disrupted the AI market, sparking price wars and forcing established companies like OpenAI and Google to adapt. While facing challenges such as access to advanced computing resources and potential censorship concerns, DeepSeek's open-source approach and focus on efficiency are reshaping the AI landscape. The company's strategic partnerships and rapid innovation position it as a major player to watch.

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    14 分
  • Top 15 AI Likely Trends for 2025
    2024/12/31

    This episode explores not only the overall AI Landscape advancements of 2025 but it builds upon the AI evolution in 2024 and its incredible advancements.

    Some key likely trends that we will see AI evolving into during 2025 are:

    1. Clearly its pervasiveness and growing ubiquity in everyday life.
    2. The growth of Generative AI and its increased capabilities
    3. AI influenced if not determined healthcare
    4. Continued AI Relevance and adoption in Education
    5. And also AI Driven Environment Relevant systems - key word "sustainability"

    ... Maye even Quantum AI?...

    To learn more listen to this unique view of the likely trends we will experience with the Advancement of AI in 2025.

    And with that, thank you for your audience in 2024 and wish you a healthy and successful NEW YEAR 2025! May the worth of AI and all its benefits be with you!!

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    25 分
  • 2024_ A Landmark Year for Artificial Intelligence
    2024/12/25

    This Episode summarizes the main milestones that AI achieved during the year 2024. From becoming a promising advancement to receiving 2 Nobel Prizes, one for Physics and one for Chemistry. Of course too many other advancements in this field have taken place in 2024, nevertheless in this case we review some of the major events including the new LLM by Google Gemini 2.0 Trillium Chip making an incredible accelerator in AI Model Performance, The Nobel Price in AI Ethics, a must that AI should never be without in its Governance Framework, The Centerstage take over by Gen AI as well as medical applications. The investment focus and competition that AI has driven as it establishes itself as a mainstream technology with true scientific and practical applications across the board. And of course also making reference to real challenges, be it in bias or displacements in the job market, concerns about regulatory, ethics and privacy concerns.

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    9 分
  • Brief Summary of the types of AI as well as AGI and ASI
    2024/11/10

    The podcast explores the different types of artificial intelligence (AI) and their capabilities.

    It distinguishes between narrow AI (weak AI), which performs specific tasks, general AI (strong AI) with broad human-like cognitive abilities, and superintelligent AI (ASI), which surpasses human intelligence in all aspects.

    It also explores the AI categories based on functionality (e.g., reactive machines, limited memory, theory of mind), learning models (supervised, unsupervised, reinforcement, and deep learning),

    It exemplifies specific branches of AI like machine learning, robotics, and natural language processing.

    Finally, it concludes with an examination of Artificial General Intelligence (AGI), exploring its potential benefits, risks, and societal implications.

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    19 分
  • Physics Nobel Prize 2024 goes to 2 Physicists for their contribution to AI's Neural Networks
    2024/10/27

    For the First Time in History the Nobel Prize in Physics is awarded for work related to AI.

    This now gives AI and its related fields of study a new place in Academic History

    The 2024 Nobel Prize in Physics was awarded to John Hopfield and Geoffrey Hinton for their groundbreaking work in artificial neural networks. Hopfield, known for his Hopfield network, focused on bridging the gap between physics, biology, and computer science, using insights from the brain to improve AI. Hinton, considered the "godfather of AI," developed methods allowing computers to recognize patterns in data, revolutionizing fields like speech and image processing.

    Both researchers, while optimistic about AI's potential, have raised concerns about the technology's rapid advancement, Inevitably as it may be in its benefits to humanity, the further this technology goes the more its potential to transform society as a whole. Present concerns range from its potential for job displacement, misuse, and the possibility of AI exceeding human intelligence. At the same time its benefits are far outreaching and will continue to demonstrate its incredible capacity for scientific and technological breakthroughs.

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    8 分