Certified - Introduction to AI Audio Course

Jason Edwards

The Introduction to Artificial Intelligence (Audio Course) provides a comprehensive, audio-first journey through the foundations, applications, and future directions of AI. Listeners will explore how machines learn, reason, and act, with episodes covering technical concepts, industry use cases, ethical issues, and global impacts. Designed for students, professionals, and career changers alike, this course delivers clear, structured insights that make AI accessible and relevant across domains. Produced by BareMetalCyber.com

  1. 에피소드1

    Episode 1 — Orientation — What is Artificial Intelligence?

    Artificial Intelligence is a term everyone has heard, but few understand in depth. In this opening episode, we cut through the hype and get to the core: what does it actually mean when we say a system is “intelligent”? You’ll hear how the idea of machines that mimic human thought emerged, why early approaches like rule-based programming fell short, and how modern data-driven methods reshaped the field. We’ll compare narrow AI systems that perform single tasks with the elusive concept of general AI, which aims to mirror human versatility. Along the way, you’ll see how perception, reasoning, and action became the three pillars of AI research, and why public imagination, fueled by science fiction, has always been part of the story. We’ll then connect those foundations to the AI tools shaping the present day. From recommendation engines to voice assistants, from neural networks to natural language processing, modern AI has become inseparable from daily life. But with progress come challenges: the risks of bias, the importance of explainability, and the ethical questions that will define AI’s future. By the end of this episode, you’ll have a working definition of Artificial Intelligence, clarity about its scope, and a strong sense of why understanding AI matters not just for technologists, but for anyone preparing for a world where these systems play a growing role. Produced by BareMetalCyber.com, where you’ll find more cyber prepcasts, books, and information to strengthen your certification path.

    31분
  2. 에피소드2

    Episode 2 — Course Roadmap — How to Learn AI in Audio Form

    This PrepCast is designed to teach Artificial Intelligence in a way that fits into real life: no slides, no diagrams, no heavy math on the page — just clear explanations you can absorb anywhere. In this roadmap episode, we walk through the design of the series, showing how the episodes are structured so you can either listen sequentially and build a complete foundation or drop into individual topics as needed. You’ll learn why each installment follows a consistent format — introduction, two core sections, and a summary — and how repetition of key concepts and glossary deep dives will strengthen retention. Think of it as an audio curriculum that respects your time while ensuring you come away with durable understanding. The roadmap also previews what lies ahead. You’ll move from the origins of AI to its technical foundations in algorithms, logic, and machine learning, then into applied domains like healthcare, finance, and robotics. Ethical dimensions — bias, fairness, privacy, and employment — are given their own focus, before the series closes with future directions such as Artificial General Intelligence, quantum computing, and AI-driven creativity. Whether you’re a student, a career changer, or a professional seeking context, this PrepCast is built to meet you where you are and take you further. This orientation ensures you’ll know what to expect and how to get the most out of the journey. Produced by BareMetalCyber.com, where you’ll find more cyber prepcasts, books, and information to strengthen your certification path.

    24분
  3. 에피소드3

    Episode 3 — A Brief History of AI — From Turing to Transformers

    Artificial Intelligence didn’t appear overnight; it has a story stretching back more than seven decades. In this episode, we step into that story, beginning with Alan Turing’s famous question — can machines think? — and the Turing Test that followed as an early benchmark for intelligence. We’ll visit the 1956 Dartmouth Conference where the term “Artificial Intelligence” was first coined, and hear how optimism in the 1960s gave way to the harsh realities of AI winters when funding dried up and promises went unmet. From expert systems of the 1980s to the revival of neural networks in the 1990s, AI has repeatedly risen, stumbled, and reinvented itself. Each cycle brought fresh lessons about the limits of rule-based programming and the importance of data and computation. The second half of the story connects history directly to the present. You’ll discover how the rise of big data, cloud computing, and open-source frameworks unlocked the deep learning breakthroughs of the 2010s. Landmarks such as Deep Blue defeating a chess champion and AlphaGo mastering the game of Go showed the world just how far AI could go. From computer vision to natural language processing, today’s transformer models represent the culmination of decades of work, not an overnight miracle. Understanding this journey provides essential context: it explains why current AI systems work the way they do, what challenges they’ve inherited, and why progress today feels both rapid and inevitable. Produced by BareMetalCyber.com, where you’ll find more cyber prepcasts, books, and information to strengthen your certification path.

    27분
  4. 에피소드4

    Episode 4 — AI vs. Machine Learning vs. Deep Learning — Key Distinctions

    AI, machine learning, and deep learning are terms often used interchangeably, but they are not the same — and confusing them makes it harder to understand the field. This episode clears the fog by breaking down how these layers of terminology connect. We’ll begin with Artificial Intelligence as the broadest category: any system designed to mimic aspects of human thought. Within that sits machine learning, where computers improve performance by finding patterns in data rather than relying solely on fixed rules. And within machine learning lies deep learning, a powerful subset that uses multi-layered neural networks to handle tasks like vision, speech, and natural language at unprecedented scale. You’ll also hear why these distinctions matter in practice. Traditional AI still has value in symbolic reasoning and expert systems, while machine learning dominates in predictive analytics, and deep learning fuels the breakthroughs behind self-driving cars, virtual assistants, and generative text systems. We’ll cover tradeoffs in interpretability, data needs, and computational demands, showing why organizations choose one approach over another depending on their goals. By the end of this episode, you’ll be able to explain clearly what separates AI, machine learning, and deep learning — and why those differences matter not just for exams or interviews, but for making sense of real-world technologies. Produced by BareMetalCyber.com, where you’ll find more cyber prepcasts, books, and information to strengthen your certification path.

    28분
  5. 에피소드5

    Episode 5 — How Machines “Think” — Algorithms and Representations

    When people talk about machines “thinking,” they’re not talking about human intuition or creativity. They’re talking about algorithms — structured sets of instructions — and representations, the ways information is stored and processed. In this episode, we look at how computers encode numbers, words, and images, and how those encodings become the raw material for reasoning. You’ll learn about symbolic approaches, where knowledge is captured in logical rules, and sub-symbolic approaches, where data is represented in weights and layers of a neural network. Search strategies, heuristics, and optimization methods illustrate how machines explore possibilities and choose among them. We also explore the tradeoffs and challenges that come with these approaches. Symbolic reasoning provides transparency but struggles with flexibility, while neural representations capture complexity but resist easy interpretation. You’ll hear how problems are framed in state spaces, graphs, and features, and why abstractions matter for scaling to real-world complexity. From edge detection in vision to word embeddings in natural language, this episode shows the mechanics of how machines “think,” setting the stage for understanding how algorithms evolve into learning systems. Produced by BareMetalCyber.com, where you’ll find more cyber prepcasts, books, and information to strengthen your certification path.

    27분

소개

The Introduction to Artificial Intelligence (Audio Course) provides a comprehensive, audio-first journey through the foundations, applications, and future directions of AI. Listeners will explore how machines learn, reason, and act, with episodes covering technical concepts, industry use cases, ethical issues, and global impacts. Designed for students, professionals, and career changers alike, this course delivers clear, structured insights that make AI accessible and relevant across domains. Produced by BareMetalCyber.com