My First Tech

Dayan Ruben

Reflecting on our first experience with technology is like stepping back into a moment of pure discovery. This podcast from a software creator for those shaping the tech world and curious minds. Each episode dives into a new language, tool, or trend, offering practical insights and real-world examples to help developers navigate and innovate in today’s evolving landscape. Made with AI and curiosity using NotebookML (notebooklm.google) by Dayan Ruben (dayanruben.com).

  1. 2025. 09. 20.

    The SLM Revolution: Why Smaller, Specialized AI is the Future

    There's an incredible buzz around AI agents, with the prevailing wisdom suggesting that bigger is always better. The industry has poured billions into monolithic, Large Language Models (LLMs) to power these new autonomous systems. But what if this dominant approach is fundamentally misaligned with what agents truly need? This episode dives deep into compelling new research from Nvidia that makes a powerful case for a paradigm shift: the future of agentic AI isn't bigger, it's smaller. We unpack the core arguments for why Small Language Models (SLMs) are poised to become the new standard, offering superior efficiency, dramatic cost savings, and unprecedented operational flexibility. Join us as we explore: Surprising, real-world examples where compact SLMs are already outperforming massive LLM giants on critical tasks like tool use and code generation. The key economic and operational benefits of adopting a modular, "Lego-like" approach with specialized SLMs. A clear-eyed look at the practical barriers holding back adoption and the counter-arguments from the "LLM-first" world. A concrete, 6-step roadmap for organizations to begin transitioning and harnessing the power of a more agile, cost-effective SLM architecture. This isn't just an incremental improvement; it's a potential reshaping of the AI landscape. Tune in to understand why the biggest revolution in AI might just be the smallest. The research paper discussed in this episode, "Small Language Models Are the Future of Agentic AI," can be found on arXiv:https://arxiv.org/pdf/2506.02153

    32분
  2. 2025. 04. 26.

    Algorithms for Artificial Intelligence: Understanding the Building Blocks

    Ever tried to understand how AI actually learns, only to get lost in a sea of equations and jargon? This episode is your fast track through the fundamentals of machine learning, breaking down complex concepts into understandable nuggets. Drawing inspiration from Stanford course materials, we ditch the dense textbook approach and offer a clear, conversational deep dive into the core mechanics of AI learning. Join us as we explore: Linear Predictors: The versatile workhorses of early ML, from classifying spam to predicting prices. Feature Extraction: The art of turning raw data (like an email) into numbers the algorithm can understand. Weights & Scores: How AI weighs different information (like ingredients in a recipe) to make a prediction using the dot product. Loss Minimization & Margin: How do we measure when AI gets it wrong, and how does it use that feedback (like the concept of 'margin') to improve? Optimization Powerhouses: Unpacking Gradient Descent and its faster cousin, Stochastic Gradient Descent (SGD) – the engines that drive the learning process. Whether you're curious about AI or need a refresher on the basics, this episode provides a solid foundation, explaining how machines learn without needing an advanced degree. Get ready to understand the building blocks of artificial intelligence! Stanford's Algorithms for Artificial Intelligence: https://web.stanford.edu/~mossr/pdf/alg4ai.pdf

    25분

소개

Reflecting on our first experience with technology is like stepping back into a moment of pure discovery. This podcast from a software creator for those shaping the tech world and curious minds. Each episode dives into a new language, tool, or trend, offering practical insights and real-world examples to help developers navigate and innovate in today’s evolving landscape. Made with AI and curiosity using NotebookML (notebooklm.google) by Dayan Ruben (dayanruben.com).