Episodios

  • Why you need to treat AI like the new guy, with Russ Henneberry
    Feb 4 2026

    In this episode of The AIQUALISER Podcast, John Bennett talks with Russ Henneberry, co-author of Digital Marketing for Dummies, about why AI often frustrates us, and why structure and judgement matter more than prompts, tools, or model choice.

    Russ reflects on a career shaped by repeated reinvention, from early internet marketing through to content, SEO, and platform shifts such as Google, Facebook, and now AI. He positions AI not as a creative shortcut or a mysterious intelligence, but as a general-purpose system that behaves predictably once its true nature and limits are understood.

    A central idea in the conversation is the “new guy” analogy. When AI delivers generic, bloated, or inconsistent outputs, it is usually because it lacks context. Russ explains that most frustration with AI comes from treating it as if it already knows the job, rather than recognising that it needs onboarding just like any new team member.

    The discussion moves on to why clever prompting rarely compensates for weak intent, unclear scope, or missing structure, and why letting AI run in auto mode can quietly undermine human thinking. AI will almost always overproduce, and the real work happens in editing, cutting back, and deciding what matters.

    Russ also cautions against constantly switching tools in search of better results. Staying with a small number of systems allows understanding to build properly, while novelty keeps attention scattered.

    If you have a question you’d like us to pick up in a future episode, you can get in touch at frmdb.ly/pod


    To find out more about Russ, visit theClick

    In This Episode
    • Why AI often feels inconsistent or disappointing
    • The “new guy” analogy, and what it explains about generic outputs
    • Why structure matters more than prompts or model choice
    • How auto mode can trade speed for judgement
    • Why AI overproduces, and why editing is essential
    • The risks of tool hopping versus going deep with a few systems
    • Why responsibility and authorship do not disappear as AI improves

    Chapters

    00:00 Introduction to Russ Henneberry

    10:11 What's Surprising About AI?

    14:42 Structuring AI for Effective Use

    23:43 The Importance of Learning AI Deeply

    36:28 Diving Deep into AI Tools

    46:29 Structuring AI for Business Planning

    57:34 Taking Responsibility for AI Outputs

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    1 h y 5 m
  • From playing with AI to building with it, with Dr Dan Maggs
    Jan 20 2026

    Many people try AI, enjoy it briefly, then struggle to make it genuinely useful. In this episode, John Bennett talks with Dr Dan Maggs about the shift from experimenting with AI to building practical tools, and what that makes possible for non-technical founders.

    They discuss how AI has moved from novelty to something you can actually build with, why context degradation causes long AI chats to break down, and how working with projects and workflows helps address those limits.

    Dan shares his own journey, from early experimentation to developing a working meal planning app, despite having no formal coding background. The conversation also looks at choosing AI tools without chasing every new release, using AI as a non-judgemental sounding board, and what this shift means for people who want to build personalised products.

    The episode closes with a listener question on structuring AI for complex tasks like business plans, and why thinking in terms of projects matters more than writing ever-longer prompts.

    If you have a question you’d like us to pick up in a future episode, you can get in touch at frmdb.ly/pod

    In this episode:

    • Why AI often starts as a novelty and then disappoints
    • What changes when you add context
    • Moving from prompts to building real tools
    • Building applications without traditional coding skills
    • Context degradation, and why AI chats “forget”
    • Designing around AI limits with apps and workflows
    • A real example, building a meal planning app
    • Choosing tools without chasing shiny objects
    • AI as a non-judgemental thinking partner
    • Listener question, structuring AI for business plans

    Chapters

    00:00 Introducing Dr Dan Maggs

    05:33 From fun to functionality

    12:24 Building solutions with AI

    19:42 Working around context degradation

    25:28 New tools and shiny objects

    34:30 Using AI as a non-judgemental sounding board

    38:56 AI is making customised products achievable

    48:09 Listener question: business plans

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    1 h y 5 m