GenAI Level UP

GenAI Level UP
GenAI Level UP

Learn and Level up your Generative AI expertise. Everyone can listen and learn GenAI any time, any where. Whether you're just starting or looking to dive deep, this series covers everything from Level 1 to 10 – from foundational concepts like neural networks to advanced topics like multimodal models and ethical AI. Each level is packed with expert insights, actionable takeaways, and engaging discussions that make learning AI accessible and inspiring. 🔊 Stay tuned as we launch this transformative learning adventure – one podcast at a time. Let’s level up together! 💡✨ #learn #generative #ai

  1. Titans: Learning to Memorize at Test Time

    18. JAN.

    Titans: Learning to Memorize at Test Time

    Are current AI models hitting a memory wall? Join us as we delve into the fascinating research behind "Titans: Learning to Memorize at Test Time," an innovative approach to AI learning. The podcast covers key concepts from the paper, including: The challenges of long-term memory in AI, noting that models like Transformers are good at understanding immediate relationships but struggle with retaining information from the past. How the Titan model addresses these limitations by equipping AI with both short-term and long-term memory. The concept of "learning to memorize at test time", where the model figures out what is important to remember as it encounters new information. The use of a surprise-based approach, where the model prioritizes information that is most surprising or unexpected. The combination of surprise-based long-term memory with a more traditional short-term memory. The way long-term memory is stored, which is within the parameters of a deep neural network. The use of a technique similar to gradient descent with momentum for efficient memory formation. The model's built-in forgetting mechanism to manage memory capacity and prioritize important information. The use of attention to guide the search for relevant information in long-term memory. The ability of Titans to handle longer sequences of information by using long-term memory to free up short-term memory. The advantages of Titans in real-world applications such as language modeling, common sense reasoning, and the needle in a haystack problem. The three variants of the Titan architecture: Memory as a Context (MAC), Memory as a Gate (MAG), and Memory as a Layer (MAL). Each variant uses long-term memory differently.

    18 Min.
  2. Generative AI: Ethical Considerations, Future Trends, and a Path for Continued Learning - Level 10

    20.12.2024

    Generative AI: Ethical Considerations, Future Trends, and a Path for Continued Learning - Level 10

    This final episode wraps up our journey into the world of generative AI, providing a crucial overview of the ethical and societal considerations, and emerging trends shaping the future of this rapidly evolving field. We'll synthesize key concepts discussed throughout the series, and highlight resources for continued learning, providing a solid foundation for listeners to further their own exploration of generative AI. In this episode we will: Delve into the ethical implications of generative AI, including discussions on bias, fairness, privacy, intellectual property, and the potential for misuse. We will also cover the importance of responsible AI development and highlight the need for regulatory frameworks. Explore emerging trends in generative AI, such as advancements in model architectures, integration with other technologies, personalization, and sustainability efforts. We will discuss the potential societal impacts of generative AI, including effects on employment, and the importance of human-AI collaboration. Synthesize key learnings from previous episodes to give a comprehensive review of the field of generative AI, ranging from the fundamentals of deep learning, variational autoencoders, and GANs to more advanced topics like diffusion models, multimodal AI, and large language models. Offer a pathway for continued learning, including recommended readings, online courses, and practical exercises. We will highlight resources like the "Mapping the Ethics of Generative AI: A Comprehensive Scoping Review", and others that can support ongoing growth in this area. This episode serves as a springboard for your continued exploration of Generative AI, equipping you with the knowledge to engage thoughtfully with the ethical and societal implications while also helping you to keep up with the latest advancements. #genai #levelup #level10 #learn #generativeai #ai #aipapers #podcast #deeplearning #machinelearning #ethic

    20 Min.
  3. From Noise to Creation: Diffusion Models - Level 8

    19.12.2024

    From Noise to Creation: Diffusion Models - Level 8

    Explore the revolutionary world of diffusion models, a cutting-edge AI technology that learns to reverse the process of turning data into noise to generate new, high-quality content. We'll break down the science behind these models, including how they use stochastic differential equations (SDEs) to transform data and the role of the score function in guiding the reverse process. We'll discuss how methods like SMLD and DDPM fit into this framework, and examine the differences between VE and VP SDEs, and how they relate to different types of noise. We'll cover sampling methods like predictor-corrector (PC) samplers, and how they combine prediction and correction for better results. You'll also learn about the many applications of diffusion models, including image and music generation, protein design, text-to-image synthesis, controllable text generation and solving inverse problems. We'll touch on conditional generation using techniques like classifier guidance and classifier-free guidance, and how they allow for more control and adaptability. Finally, we'll explore how diffusion models are being used for black-box optimization, and why the quality of training data matters. Online Tutorials: "Understanding Diffusion Models: A Deep Dive into Generative AI" on Unite.AI: An in-depth article exploring the workings of diffusion models and their significance in generative AI. "Diffusion and Score-Based Generative Models" on MIT OpenCourseWare: A tutorial covering the theory, methods, and applications of diffusion and score-based generative models. Whether you're an AI enthusiast, researcher, or curious listener, this episode will ignite your imagination and inspire you to dream big. #genai #levelup #level8 #learn #generativeai #ai #aipapers #podcast #deeplearning #machinelearning #diffusionmodels #sde #diffusion

    14 Min.

Info

Learn and Level up your Generative AI expertise. Everyone can listen and learn GenAI any time, any where. Whether you're just starting or looking to dive deep, this series covers everything from Level 1 to 10 – from foundational concepts like neural networks to advanced topics like multimodal models and ethical AI. Each level is packed with expert insights, actionable takeaways, and engaging discussions that make learning AI accessible and inspiring. 🔊 Stay tuned as we launch this transformative learning adventure – one podcast at a time. Let’s level up together! 💡✨ #learn #generative #ai

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