A Beginner's Guide to AI

Dietmar Fischer

"A Beginner's Guide to AI" makes the complex world of Artificial Intelligence accessible to all. Each episode asks someone working with AI about what they do and how AI can help you. Ideal for novices, tech enthusiasts, and the simply curious, this podcast transforms AI learning into an engaging, digestible journey. Join us as we take the first steps into AI 🚀 Hosted on Acast. See acast.com/privacy for more information.

  1. Supervised vs Unsupervised Learning Explained with Real World Examples

    HACE 1 H

    Supervised vs Unsupervised Learning Explained with Real World Examples

    Artificial intelligence often feels mysterious. Machines detect spam, recommend products, analyse customers, and power countless digital tools. But behind all of these systems lies a surprisingly simple question: how do machines actually learn? In this episode of A Beginner’s Guide to AI, Prof GePharT breaks down one of the most important concepts in machine learning: the difference between supervised learning and unsupervised learning. You will discover how AI models learn from labelled data when the answers are already known, and how algorithms can explore raw data to uncover hidden patterns without guidance. These two learning strategies power many of the systems shaping modern technology. Using practical examples such as spam filters, customer segmentation, and simple analogies like cake classification, the episode explains how machines learn from data and why the training method makes a huge difference. Key takeaways include how supervised learning works with labelled datasets, how unsupervised learning reveals patterns in complex information, why training data quality matters, and how businesses use both methods to build intelligent systems. 📧💌📧 Tune in to get my thoughts and all episodes, don't forget to subscribe to our Newsletter: beginnersguide.nl 📧💌📧 About Dietmar Fischer Dietmar is a podcaster and AI marketer from Berlin. If you want to know how to get your AI or your digital marketing going, just contact him at argoberlin.com Quotes from the Episode Supervised learning teaches machines the answers. Unsupervised learning helps machines discover the questions.Artificial intelligence is not magic. It is pattern recognition powered by data.Machines do not wake up intelligent. They become intelligent through training. Chapters 00:00 The Two Ways Machines Learn 06:10 What Supervised Learning Really Means 18:45 Discovering Patterns with Unsupervised Learning 32:20 The Cake Example Explained 40:30 Real World AI Case Study Spam Filters and Customer Segmentation 52:15 Why AI Training Methods Matter Music credit: Modern Situations by Unicorn Heads Hosted on Acast. See acast.com/privacy for more information.

    29 min
  2. Building Scalable AI Agents: Chirag Agrawal Reveals How

    HACE 2 DÍAS

    Building Scalable AI Agents: Chirag Agrawal Reveals How

    Engineering the Future of AI with Chirag Agrawal: Context, Memory and Coordination Artificial Intelligence isn’t just getting smarter—it’s learning to coordinate. In this episode, Chirag Agrawal joins Dietmar Fischer to unpack how modern AI agents handle context, memory, and decision-making inside complex multi-agent systems. Together they explore how engineering, orchestration, and memory-sharing shape the next generation of AI architecture. 📧💌📧Tune in to get my thoughts and all episodes—don’t forget to ⁠⁠subscribe to our Newsletter⁠⁠: ⁠beginnersguide.nl⁠📧💌📧 You’ll hear how Chirag’s fascination with search led him to build early prototypes of intelligent assistants, and how today’s LLM agents extend that idea far beyond simple queries. He explains why AI isn’t one giant super-brain but a constellation of specialized agents—each performing specific tasks with shared or isolated memory—and how this design mirrors human collaboration. 🔑 Key Takeaways Why AI orchestration and context management are crucial for scalable systems The trade-offs between shared memory and independent agents What engineers mean by the ReAct Loop—reasoning and acting in tandem How multi-agent coordination is reshaping industries from healthcare to compliance Why the “AI supercomputer” myth ignores practical limits of context windows 💬 Quotes from the Episode “AI is just a higher form of search—it’s about finding the right action, not just information.” “Agents behave inhuman until you engineer context for them.” “Specialization in AI works the same way it does for people—each agent should do one thing really well.” “Coordination isn’t magic; it’s careful engineering.” “Context makes intelligence usable.” “A well-defined agent doesn’t need to do everything—it needs to do its one job perfectly.” ⏱️ Podcast Chapters 00:00 Welcome and Introduction 01:45 Chirag Agrawal’s Early Fascination with Search and AI 04:40 From Search Engines to “Find” Engines – How AI Takes Action 07:10 The Rise of AI Agents and Multi-Agent Systems 10:15 Why AI Agents Sometimes Behave “Inhuman” 13:30 Context, Memory, and Coordination: The Core Engineering Challenges 18:00 Shared vs. Isolated Memory – The Hive Mind Dilemma 22:30 Why We Need Many Agents, Not One Super-Computer 27:00 How the ReAct Loop Helps Agents Think and Act 30:40 Industries Adopting AI Agents: Compliance, Medicine, and Law 34:30 When AI Goes Off-Road – The Limits of Coordination 37:15 Building Responsible, Constrained Agents 40:10 The Future of AI and Why the Terminator Scenario Won’t Happen 42:20 Where to Find Chirag Agrawal & Closing Thoughts 🌐 Where to Find the Chirag Agrawal LinkedIn 🧑🏽‍🦱 linkedin.com/in/chirag-agrawalWebsite ➡️ ⁠chiraga.io⁠ 🎵 Music credit: “Modern Situations” by Unicorn Heads Hosted on Acast. See acast.com/privacy for more information.

    48 min
  3. Stop wasting your Copilot licenses — Jim Spignardo’s brutal checklist

    HACE 4 DÍAS

    Stop wasting your Copilot licenses — Jim Spignardo’s brutal checklist

    Artificial Intelligence is moving from experimentation to everyday business reality. But most organisations still struggle with one key question: How do you actually implement AI across a company? In this episode of Beginner’s Guide to AI, Dietmar Fischer speaks with Jim Spagnardo, enterprise AI strategist at ProArch, about what it really takes to roll out AI inside organisations. Jim explains why AI adoption is less about technology and more about culture, leadership, and data readiness. He introduces the idea of the three Ds of work — the dull, the draining, and the distracting tasks that AI can remove so people can focus on higher-value work. They also discuss when companies should use tools like Microsoft Copilot, when it makes sense to build a custom data and AI platform, and why data governance becomes critical once AI is introduced. If you are a business leader trying to understand how AI will reshape your organisation, this conversation offers a practical look at the challenges — and opportunities — ahead. 📧💌📧 Tune in to get my thoughts and all episodes, don't forget to ⁠⁠⁠⁠subscribe to our Newsletter⁠⁠⁠⁠: beginnersguide.nl 📧💌📧 About the host, Dietmar Fischer: Dietmar Fischer is a podcaster and AI marketer from Berlin. If you want to get your AI or digital marketing projects started, contact him at argoberlin.com. Interesting details and takeaways • Why leaders must mandate AI adoption and how to structure a Smart Start engagement. • The three Ds (dull, draining, distracting) as a simple way to position benefits for end users. • How Copilot reduces context switching and the security/data protections needed to use it responsibly. • Practical, measurable first use cases and how to track success via clear KPIs. • Advice for students and early-career professionals: be a self-starter and learn AI skills now. Quotes from the episode “We have to show people we’re taking away the dull, the draining, and the distracting so they can do creative work.” “There’s nowhere to hide: bad data surfaces weaknesses far faster when you use AI.” “If you’re going to succeed, go after high-value, low-effort, high-return use cases first.” “This affects everybody — it’s not just moving infrastructure; it changes conversations and who you have to talk to.” “Copilot lives inside your environment — users don’t have to context-switch and it knows your organisation.” “Don’t wait for formal education to teach this; be a self-starter and learn before you need it.” Chapters 00:00 Welcome and why Jim got into AI 03:40 From IT conversations to the C-suite: changing who you must talk to 07:05 The three Ds: removing dull, draining, and distracting work 10:40 When to choose Copilot versus building your own data platform 14:30 Copilot advantages and data governance considerations 18:20 Visual reasoning, demos and the “Barcelona photo” moment 22:15 Smart Start: executive briefings, champions and use case workshops 27:00 Writing with AI and transparency in authoring content 30:10 Risks, regulations and advice for the next generation 33:45 Where to find Jim and closing thoughts Where to find the Jim: LinkedIn: linkedin.com/in/spignardo/Website: ProArch.com Music credit: "Modern Situations" by Unicorn Heads 🎵 Hosted on Acast. See acast.com/privacy for more information.

    51 min
  4. Your “Revenue” Is Probably Wrong and Ritish Chugh Tells You Why

    HACE 6 DÍAS

    Your “Revenue” Is Probably Wrong and Ritish Chugh Tells You Why

    🎙️ Ritish Chugh (Airbnb analytics engineering) joins Dietmar Fischer to unpack a problem almost every company has, but few name clearly: your metrics do not mean the same thing across teams. Finance, marketing, and sales can all talk about “revenue” and still end up in dashboard chaos. The result is wasted time, slow decisions, and leadership that does not fully trust analytics or AI. In this episode, Ritish introduces the idea of the human data pipeline: the person who stitches together conflicting definitions, tribal knowledge, and unspoken assumptions just to answer basic business questions. Then we move into the fix: unified metric definitions, a data dictionary for business metrics, and a semantic layer that acts as a translator between raw data schemas and business meaning. That foundation is what makes natural language querying and conversational analytics viable at scale, without turning AI into a confident hallucination machine. We also cover why AI adoption in analytics stalls when organizations prioritize models and infrastructure but neglect data quality, validation frameworks, and metrics governance. If you want AI to support decision-making, you need governed metrics, clear ownership, and a system that produces consistent answers across BI tools, SQL, and AI agents. Finally, Ritish shares wow moments from using AI tools to summarize years of code and PRs, generate deeper test coverage, and reduce time spent on manual SQL by building agents on top of a semantic layer. 📧💌📧 Tune in to get my thoughts and all episodes, don't forget to ⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠subscribe to our Newsletter⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠: ⁠⁠⁠⁠beginnersguide.nl⁠⁠⁠⁠ 📧💌📧 About Dietmar Fischer: Dietmar is a podcaster and AI marketer from Berlin. If you want to know how to get your AI or your digital marketing going, just contact him at argoberlin.com Chapters 00:00 From data consulting to Airbnb and AI as a junior analyst 02:22 The human data pipeline and why metrics never match across departments 07:32 The fix: unified metric definitions, data dictionary, and the semantic layer translator 13:32 Why AI adoption stalls: data quality, trust, validation, and metrics governance 26:36 Data abundance, experimentation, and AI assisted A/B testing with humans in the loop 33:37 Wow moments with AI, role transformation, and why the Terminator is not invited (yet) Quotes from the Episode “AI just acts like a junior analyst, which is always available for you.”“The first thing is… build that level of data definition that is unified for all.”“No matter what AI models they’re using… if the data… is not up to the mark, it’s not going to give you the right results. It’s always going to hallucinate.”“Every department has a different interpretation and definition of the metric.”“I spend a lot of time really doing reconciliation between the numbers and data…”“The most important thing happening is transformation…” Where to find Ritish: ➡️ You connect with him on LinkedIn: linkedin.com/in/ritish-chugh/ 📌 Keywords you’ll hear in action: semantic layer, data dictionary, metrics governance framework, unified metric definitions, governed metrics, natural language querying, conversational analytics, agentic analytics, data quality for AI adoption. Music credit: "Modern Situations" by Unicorn Heads Hosted on Acast. See acast.com/privacy for more information.

    49 min
  5. This AI Can Read Your Brain in 20 Minutes: Katarina Maloney Tells You How

    7 MAR

    This AI Can Read Your Brain in 20 Minutes: Katarina Maloney Tells You How

    The Future of Mental Health: AI Meets the Human Brain with Katarina Maloney // REPOST In this episode of Beginner’s Guide to AI, Dietmar Fischer speaks with Katarina Maloney, entrepreneur and founder of IQMind.ai, about a new frontier in AI-powered healthcare: understanding and treating the human brain through data, neuroscience, and artificial intelligence. Katarina explains how advances in AI diagnostics, brain scanning technology, and neurofeedback are beginning to transform how we approach mental health conditions such as depression, anxiety, PTSD, ADHD, and traumatic brain injuries. Instead of relying solely on traditional trial-and-error treatments, her approach focuses on measuring brain activity directly and using AI-driven analysis to identify patterns and imbalances in brainwave activity. The technology behind IQMind combines non-invasive brain scans, biofeedback systems, and large-scale data analysis to create a personalized picture of a patient’s neurological state. By analyzing brainwave patterns and correlating them with clinical data, AI can help identify potential issues faster and more accurately than conventional methods. Patients then undergo targeted brain training sessions, where the system uses reward-based neurofeedback to encourage healthier brainwave activity. According to Maloney, this approach has shown promising results in improving symptoms of depression, anxiety, PTSD, and cognitive dysfunction, while also opening the door to new possibilities in precision medicine and mental health innovation. Beyond clinical treatment, the conversation also explores broader implications of AI in neuroscience and healthcare. Katarina discusses the future of personalized brain health, how AI could accelerate research by identifying patterns in thousands of brain scans, and why data privacy and ethical frameworks will become increasingly important as brain data becomes more measurable. The interview offers a glimpse into a rapidly evolving field where artificial intelligence may help doctors better understand the brain, shorten diagnostic timelines, and ultimately move healthcare away from generalized treatments toward highly personalized, AI-assisted care. Katarina reveals how AI diagnostics and non-invasive brain treatments are transforming mental health—from PTSD and ADHD to athlete performance optimization. 📧💌📧 Tune in to get my thoughts and all episodes—don’t forget to subscribe to our Newsletter: ⁠beginnersguide.nl⁠ 📧💌📧 ✨ Highlights: The future of personalized brain healthHow AI diagnostics speed up treatment and accuracyWhy brain energy and electricity matter more than chemistryInsights into neurofeedback, biofeedback, and real-world healing 🧠 Quotes from the Episode: “Our mission is to make brain health measurable, trackable, and fixable.”“AI is a tool—it saves lives because it diagnoses faster and more precisely.”“The old model of trial-and-error medicine is behind us.” 🎧 Chapters: [00:00] Welcome & Introduction [02:15] What AI Does to the Human Brain [05:20] Diagnosing Depression and PTSD with AI [10:10] The Science Behind Brainwave Training [16:45] From Trial-and-Error Medicine to Personalized Brain Health [21:50] How IQMind.ai Uses AI for Diagnostics [28:00] Non-Invasive Treatments and Real-Life Results [33:40] Peak Performance and Brain Optimization for Athletes [38:20] Data Privacy and Ethical Concerns in Brain Tech [43:50] The Future of AI in Healthcare and Human Potential 🌐 Where to find Katarina: Website: IQMind.ai LinkedIn: Katarina Maloney 🎵 Music credit: "Modern Situations" by Unicorn Heads Hosted on Acast. See acast.com/privacy for more information.

    42 min
  6. The Best AI Hacks for Small Businesses (ft. Wendy Keir) // REPOST

    5 MAR

    The Best AI Hacks for Small Businesses (ft. Wendy Keir) // REPOST

    In this episode of Beginner’s Guide to AI, Wendy Keir shares practical ways small business owners can use AI tools to save time, reduce decision fatigue, and build a “team” of custom GPT agents. From naming her CEO agent “Lucas” to a dead-simple rule — one GPT, one job — Wendy shows how entrepreneurs can turn AI into a reliable thinking partner for growth in 2025. 🚀 📧💌📧 Tune in to get my thoughts and all episodes, don't forget to ⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠subscribe to our Newsletter⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠: ⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠beginnersguide.nl⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠ 📧💌📧 💡 Key highlights Practical AI tools for small businesses: email drafting, planning, campaign support, weekly reviews Custom GPTs / agents: why one GPT, one job beats generic prompting AI productivity & time savings: ~7 hours/week saved; ~£1,000/week during campaigns Adoption mindset: staying in the driver’s seat; context > canned prompts Accessibility & inclusion: how AI levels the playing field for solopreneurs and small teams Beginner’s Guide to AI takeaways: concrete workflows any entrepreneur can start today ➡️ Quotes from the Episode “I don’t encourage anyone to prompt — I encourage them to create an agent that fulfills a specific role.” “One GPT, one job. You don’t want multiple personalities in one agent.” “AI levels the playing field for everybody; it meets you where you’re at.” 🧾 Chapters (experimental)00:00 Welcome & intro to Wendy Keir03:45 Why AI clicked for a dyslexic entrepreneur08:30 From prompts to agents: one GPT, one job14:20 Building a family of business agents (CEO, coach, marketing, sales)20:15 Daily workflow with “Lucas” the CEO agent27:40 Time and money saved with AI in campaigns34:10 Overcoming resistance and starting small40:00 Personal aha moments, patterns, and “coding” change43:11 Where to find Wendy Keir & closing Where to find the Wendy? Best way is to go to her website: wendykeir.com Music credit: "Modern Situations" by Unicorn Heads 🎧✨ Hosted on Acast. See acast.com/privacy for more information.

    50 min
  7. Why “AI Strategy” Doesn’t Exist: Dr. Rebecca Homkes on Value Creation and Growth

    3 MAR

    Why “AI Strategy” Doesn’t Exist: Dr. Rebecca Homkes on Value Creation and Growth

    🚀 AI is everywhere, but most organizations are still stuck in “pockets of productivity” that never turn into real business impact. In this episode, Dr. Rebecca Homkes explains how leaders can move from GenAI dabbling to deliberate adoption that drives real value creation. You will learn why “AI strategy” is the wrong framing, how to think about AI as part of growth strategy, and how to build the conditions for organization wide transformation. We cover the adoption curve problem, why ROI is often capped at team level, and the four planks leaders must run in parallel: platform, governance, capability building, and performance transformation. Key highlights and keywords ✅ AI growth strategy and value creation ✅ deliberate AI adoption vs dabbling ✅ responsible AI governance that enables action ✅ capability building for leaders and teams ✅ Survive Reset Thrive framework for uncertain times ✅ learning velocity as the differentiator of high performers 📧💌📧 Tune in to get my thoughts and all episodes, don't forget to ⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠subscribe to our Newsletter⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠: ⁠⁠⁠⁠beginnersguide.nl⁠⁠⁠⁠ 📧💌📧 About Dietmar Fischer: Dietmar is a podcaster and AI marketer from Berlin. If you want to know how to get your AI or your digital marketing going, just contact him at argoberlin.com Chapters 00:00 AI as growth strategy and value creation, not a standalone AI strategy 03:05 Dabbling vs deliberate adoption, why ROI stays capped and metrics go wrong 08:00 The four planks: platform, governance, capability building, performance transformation 18:55 Adoption reality: bottom up change, middle management fears, jobs, and the bubble question 29:45 Survive Reset Thrive: the uncertainty playbook and why reset is the power move 43:05 Where to find Rebecca, newsletters, and the constants leaders should anchor on Quotes from the Episode “AI does not change the concept of value creation. The role of AI is to enable, support, and accelerate that value creating journey.” “You need to work on all four of these at the same time. Most organizational structures are built for sequential governance, not parallel pathing.” “Heads down execution mode is seen as a point of pride. You should be telling me I am in heads up learning mode.” Where to find the Rebecca: - Her personal website: rebeccahomkes.com - The book: surviveresetthrive.com - The SRT methodology: srtstrategy.com Music credit: "Modern Situations" by Unicorn Heads Hosted on Acast. See acast.com/privacy for more information.

    50 min
  8. ChatGPT Is More Persuasive Than Humans - and Sam Altman Warned Us About It

    1 MAR

    ChatGPT Is More Persuasive Than Humans - and Sam Altman Warned Us About It

    AI Is Agreeing With You at 3 A.M. and That’s the Problem Artificial intelligence is evolving from a tool into something far more influential. In this episode of Beginner’s Guide to AI, Prof. GePhardT explores Sam Altman’s AI warning about superhuman persuasion and why conversational systems like ChatGPT are already reshaping opinions, emotions, and mental health outcomes. We break down how AI superhuman persuasion works, why personalization and emotional validation increase trust, and how AI companion apps can unintentionally fuel emotional dependency. Drawing on research about AI persuasion outperforming humans, this episode explains the risks of AI emotional manipulation and what it means for marketing, society, and vulnerable users. 📧💌📧 Tune in to get my thoughts and all episodes, don't forget to subscribe to our Newsletter: beginnersguide.nl 📧💌📧 About Dietmar Fischer Dietmar is a podcaster and AI marketer from Berlin. If you want to know how to get your AI or your digital marketing going, just contact him at argoberlin.com Quotes from the Episode The danger is not that AI becomes evil. The danger is that it becomes convincingly kind.If an AI agreed with you every time, would you become wiser or more fragileThe real story about AI isn’t how smart it becomes. It’s how convincing it already is. This episode is essential listening for anyone interested in AI ethics, AI mental health risks, ChatGPT persuasion, and the future of persuasive technology. Music credit: Modern Situations by Unicorn Heads Hosted on Acast. See acast.com/privacy for more information.

    32 min

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"A Beginner's Guide to AI" makes the complex world of Artificial Intelligence accessible to all. Each episode asks someone working with AI about what they do and how AI can help you. Ideal for novices, tech enthusiasts, and the simply curious, this podcast transforms AI learning into an engaging, digestible journey. Join us as we take the first steps into AI 🚀 Hosted on Acast. See acast.com/privacy for more information.

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