AI For the C Suite with Chad Harvey™

Chad Harvey

AI For the C Suite with Chad Harvey™ interviews industry expert guests to keep you informed and entertained in the world of AI for Business. If you’re a C Suite member looking to learn more about how AI will impact your business, you’ve found the right podcast. Generative AI is the most disruptive General Purpose Technology we have seen in the last 45 years. It holds tremendous promise when leveraged properly and tremendous peril for those that disregard its existence. AI for the C-Suite with Chad Harvey™ is a continuous learning and application experience which exists to unite, elevate and equip CEO’s, Presidents, Owners and C-suite leaders to navigate the Exponential Age.

  1. 2d ago

    Two Clocks, One Gap: The AI Adoption Opportunity Middle Market Leaders Can Still Claim | AI For The C-Suite EP 67

    Four out of five companies in this country have not yet started using AI — not falling behind, not experimenting, not started. Meanwhile, AI capability is doubling at roughly the interval of a business quarter. That gap between two clocks on the same wall is not a crisis. For the leaders who understand it, it is a position. In this episode, Chad introduces a Three-Dial framework for cutting through AI noise and reading the signals that actually matter. Dial one covers the pace of capability growth and why the trajectory, not any single data point, is the right unit of measurement. Dial two reframes the augmentation-versus-automation debate with data on who actually captures value from these tools — and it is not the organizations that simply bought licenses. Dial three surfaces a labor signal that is being widely misread: the quiet thinning of entry-level roles in AI-exposed fields is not a headcount story, it is a succession question — and middle market leaders are uniquely positioned to get ahead of it. Chad closes with three actions you can execute this quarter: rescope one analytical workflow as AI drafts and your expert judges, move resources from software seats to enablement, and open the five-year succession question with your leadership team before the answer gets expensive. If you are running a middle market company and you want a clear-eyed read on where the real opportunity is — and what the hype machine is not telling you — this episode is your starting point. The AI Signal Brief — June 2026 The handful of indicators that actually move — and what each one means for a middle-market leadership team. As of 6 June 2026. Verdict: capability racing, adoption early. The gap that frames everything. Frontier capability is doubling roughly every 4 months. Meanwhile only about 19.8% of U.S. firms are using AI at all. The space between those two numbers is the whole story: the hype says you're behind, but the data says the field is wide open — and the bottleneck on value is your organization's capacity to absorb AI, not the technology's ability to deliver it. The executive read. Two clocks are running at very different speeds. The capability clock is sprinting — the length of work an AI agent can carry on its own has been doubling about every four months, and the best systems now reach the ceiling of what researchers can reliably measure. The adoption clock is barely ticking — only about one in five U.S. businesses has started. For a middle-market CEO, the gap between those two clocks, not the raw capability number, is the strategic position. That gap reframes the job. If capability is racing ahead while deployment lags, the constraint on AI value in your business is almost never the model — it's absorptive capacity: workflow redesign, skills, trust, and integration. The people who get the most from AI are experienced operators who restructure how the work is done, and collaborative "augmentation" use is currently winning over hands-off "automation." The winners this cycle won't be the firms with the best AI; they'll be the ones that built the capacity to absorb it. Read the dials below as decisions, not statistics — and remember one month is never a trend. — THE FAST CLOCK: capability frontier — METR autonomous time-horizon — about 16 hours of expert work, at the limit of what we can measure. So what: an agent can now carry a task that takes a skilled person roughly two working days, and the frontier is bumping the ceiling of the measurement itself. Now what: re-scope one multi-day analytical workflow as "agent drafts, human judges" and pilot it this quarter rather than waiting. Source: metr.org Doubling rate of capability — time-horizon doubling about every 4 months (down from ~7). So what: the pace of capability gain has roughly halved its doubling time since 2023, with no plateau visible. Now what: assume next year's frontier model is materially stronger than today's, and build that into any 12-month roadmap. Source: metr.org "Novel reasoning" benchmark fall-rate — ARC-AGI-2 frontier in the mid-80s%; meta-systems above 95%; the holdout (HLE) still around 35%. So what: the tests built specifically to stump AI are falling fast, and the few that still hold are the real frontier. Now what: retire "AI can't really reason" as a planning assumption, and treat the remaining holdouts as the clock that matters. Source: arcprize.org Frontier training compute — growing about 5x per year (doubling ~5 months). So what: the raw fuel behind capability keeps compounding, with no sign of slowing through the decade. Now what: don't bet your strategy on an imminent capability ceiling — there isn't one in view. Source: epoch.ai Algorithmic efficiency — about 3x per year, same result for one-third the compute. So what: even if compute growth stalled, models keep getting more capable per dollar on a predictable curve. Now what: capability you can't justify today gets affordable on schedule — plan for the curve, not today's price. Source: epoch.ai Inference cost at fixed quality — halving about every 2 months (9–900x per year by tier). So what: "too expensive to deploy at scale" has a very short shelf life right now. Now what: re-run the business case on any shelved AI project every two quarters — the unit economics flip underneath you. Source: epoch.ai — THE SLOW CLOCK: diffusion & real-world impact — U.S. firm adoption (Census) — about 19.8% of businesses using AI, ~37% at firms with 250+ staff. So what: only about one in five firms has even started; the hype says you're late, the data says the field is wide open. Now what: play this as a lead position, not a laggard one — move deliberately and well, not frantically. Source: census.gov How people actually use AI (Anthropic Index) — collaborative "augmentation" now dominant (~52%); hands-off use eased from a peak. So what: this is not a straight march to automation — as AI spreads, people use it more collaboratively and across more tasks. Now what: frame AI internally as leverage for your people, not replacement of them — it's both accurate and adoption-friendly. Source: anthropic.com Entry-level labor signal (Stanford / ADP) — ages 22–25 in exposed roles down about 13–16%; senior staff steady or up. So what: the bottom rung of the career ladder is thinning while experienced workers hold their ground. Now what: treat this as a 5-year succession question, not a layoff cue — where do your future senior people come from? Source: digitaleconomy.stanford.edu Productivity field studies — real but uneven, gains concentrate with experienced operators. So what: the value is genuine, but it accrues to people and teams who restructure how the work is done — not to tool access alone. Now what: invest in enablement (skills and workflow redesign), not just licenses — that's where the return lives. Source: nber.org — IGNORE THE NOISE: loud signals that carry no information — Launch demos and viral threads — staged, cherry-picked, and optimized for reaction. Funding rounds and valuations — capital and commercial traction are not capability. Saturated benchmarks (e.g. MMLU) — uninformative once scores sit near the ceiling. Pundit timelines and prediction markets — a thermometer of sentiment, not a measurement. Any figure quoted without a confidence interval — especially at the frontier, where the error bars are now enormous. How to read this brief. The trajectory is the unit — one month is noise, so judge direction and rate across a quarter or two before acting. Even the best yardstick is bending: the strongest capability measure (METR) is now hitting its ceiling, so read frontier numbers as "at least," not "exactly." An AI for the C Suite® intelligence brief. Compiled 6 June 2026; next review July 2026. AI isn't a trend or a buzzword and it's certainly not something you can afford to ignore. Join the AI for the C Suite community today: https://aiforthecsuite.com/ #chadharvey #aiforthecsuite #aic

    13 min
  2. Jun 1

    Why Your AI Strategy Is Failing (And What to Do About It) | AI for the C-Suite EP 66

    Most organizations are trying to skip straight to AI orchestration — and it's costing them. Melissa Reeve, founder of HyperAdaptive Solutions and author of HyperAdaptive: Rewiring the Enterprise to Become AI Native, joins Chad Harvey to break down why the support structures that would actually make AI work are being skipped, what a real AI transformation roadmap looks like, and why giants will fall if they don't rewire now. Melissa spent 25 years as a marketing exec and agile thought leader — including a run as the first VP of Marketing at Scaled Agile, where she helped scale from 60,000 to over a million people trained in their framework. Now she's applied that operating model lens to AI, building her five-stage HyperAdaptive model from 18 months of research into how organizations like Toyota, FedEx, and JP Morgan are actually becoming AI native. In this episode: 🎹 Why AI is like a piano — easy to touch, hard to master 🏗️ The support structures most mid-market companies are missing 📡 What the AI Activation Hub is and why your org needs one 🔄 The AI Learning Flywheel — how knowledge flows up and down your org 🎯 Why every leader needs an AI North Star (and what Moderna's looks like) ⚠️ The bifurcation problem: AI power users vs. everybody else 🧱 Why legacy operating models rooted in Taylorism won't survive AI 📊 How AI is breaking the annual budget cycle — and why that's a good thing 🤝 Why middle management isn't obsolete — it's your secret alignment weapon 🏆 The 1% Club: the organizations that will actually win the AI race Whether you're a CFO at a $300M manufacturer or a COO at an 80M SaaS company, this episode gives you a clear-eyed, stage-by-stage framework for building an AI-native organization without burning through capital or burning out your people. 📖 HyperAdaptive by Melissa Reeve — available on Amazon and major retailers 🌐 hyperadaptive.solutions 🔗 Connect with Melissa on LinkedIn: melissa.m.reeve     🎙️ AI for the C-Suite is the show for senior leaders who know AI matters and need to figure out what to do about it. Subscribe wherever you get your podcasts and follow us on LinkedIn. 🌐 aiforthecsuite.com

    1 hr
  3. May 25

    Core, Harness, Envelope, Spikes: The Four-Layer Framework for Evaluating Any AI Product | AI For The C-Suite EP 65

    Most AI vendor evaluations collapse the layers for simplicity. This episode gives you a reason not to. When two products run on the same underlying model but feel completely different in practice, most teams can't explain why. That confusion makes clean purchasing decisions harder, weakens your RFP, and leaves you reacting to demos instead of driving the evaluation. The answer comes down to architecture. In this episode, Chad introduces a four-layer AI architecture framework borrowed from an unlikely source: virology. The four layers are Core (the large language model itself), Harness (the configuration layer that defines personality, memory, and logic), Envelope (the deployment surface that determines who accesses the AI and how), and Spikes (the tools and integrations that let AI take action inside your business). Each layer does different work. Once you can see them separately, vendor comparisons stop being apples to socket wrenches. Chad also walks through four specific questions to put to any vendor or internal champion presenting an AI proposal (one question per layer) so you can identify where the real differentiation is and where the marketing language is doing the heavy lifting. For a mid-market organization making a six or seven figure technology decision, this framework is a practical starting point for structuring any AI evaluation conversation. AI For the C Suite® podcast keeps C-Suite leaders informed and engaged in the world of AI for business. If you're a CEO, President, Owner, or C-suite leader looking to understand how AI will impact your organization, you've found the right podcast. Join the AI for the C Suite® community today: https://aiforthecsuite.com/#chadharvey #aiforthecsuite #aic

    12 min
  4. May 18

    You Don't Need an AI Strategy — You Need This Instead | AI For The C-Suite EP 64

    What if everything you've been told about getting started with AI is wrong? In this episode, Chad sits down with Charlene Li — New York Times bestselling author, founder of Altimeter Group, and one of the most respected voices in business transformation — to challenge some of the most common assumptions leaders hold about AI adoption. Her new book, Winning with AI: The 90-Day Blueprint for Success (co-authored with Dr. Katja Walsh), cuts through the noise with a deceptively simple premise: you don't need an AI strategy. You need AI in service of the strategy you already have. Chad and Charlene cover a lot of ground in this one — and it moves fast. In this episode: Why leading with an AI strategy is the wrong move — and what to do instead The real reason organizations are drowning in pilots and not seeing results Why readiness assessments and feasibility studies are just expensive procrastination What "Goldilocks governance" looks like — and how mid-market companies can build it without dedicated headcount The difference between responsible AI and ethical AI (and why it matters more than most leaders realize) How to use AI to figure out how to use AI Why speed is the new moat — and what that means for organizations that are still on the sidelines The generational divide around AI adoption, and what the data from Stanford and the OECD tells us about what's really going on What AI fluency actually looks like in practice — and how leaders can model it for their teams Charlene also shares the moment that made her throw out the readiness assessment she'd already built for the book, why shadow AI is more dangerous than adoption, and what the 20% is that AI still can't replicate. If you're a senior leader who knows AI matters but isn't sure where to start — this episode is the answer.   Get the book: WinningWithAIbook.com Connect with Charlene: linkedin.com/in/charleneli | charleneli.com

    1h 3m
  5. May 11

    The Harness: Why the Model Is No Longer the Competitive Advantage | AI For The C-Suite EP 63

    In your next vendor meeting, someone is going to say the word "agent" three or four times. You'll nod. Notes will get taken. And the word will do almost no actual work in the room. That's the problem this episode is built to solve. Chad's Jargon Watch covers 15 terms that have crystallized in the last 90 days (including "harness") and is organized around three layers every C-suite leader needs to understand: architecture, failure modes, and money and trust. The architecture terms (harness, context engineering, MCP, A2A) explain what actually surrounds the model and why that wrapper is the new competitive moat. One analysis from earlier this year attributed approximately 65% of enterprise AI failures to harness defects - not model deficits. The failure mode terms (context rot, the reasoning trap, memory poisoning, sycophancy 2.0, shadow AI agents) describe what goes wrong and why traditional monitoring often doesn't catch it. The money and trust terms (agent washing, AWU, the inference cost paradox, KYA, sovereign AI) carry direct procurement and governance implications — including why any per-seat contract signed in 2024 or 2025 may already be worth renegotiating. The broader point underneath all 15 terms: AI vocabulary in 2026 has stopped describing what the model does. It's started describing who's responsible when it does something wrong. That shift has real consequences for how you evaluate vendors, structure contracts, and govern the agents already running inside your organization. This episode gives you a working vocabulary and a set of practical moves you can use in your next vendor meeting, board conversation, or contract review... starting this week. AI For the C Suite™ podcast keeps C-Suite leaders informed and engaged in the world of AI for business. If you're a CEO, President, Owner, or C-suite leader looking to understand how AI will impact your organization, you've found the right podcast. AI for the C-Suite™ is a continuous learning and application experience that exists to unite, elevate, and equip leaders to navigate the Exponential Age. Join the AI for the C Suite community today: https://aiforthecsuite.com/ #chadharvey #aiforthecsuite #aic

    23 min
  6. May 4

    The Four Modes of Working With AI | AI For The C-Suite EP 62

    Most organizations have rolled out AI tools and called it a strategy. They've issued logins, run compliance training, and watched adoption numbers tick up — while the actual quality of the work stayed flat. The problem isn't the tool. It's the mental model. If your people are treating AI like a search bar, they're only accessing a fraction of what's possible. Geoff Gibbins has spent close to 20 years helping organizations figure out what actually works at the intersection of strategy, technology, and human behavior. In this episode, he makes a sharp and practical case for shifting from AI as a tool to AI as a collaborator — and walks through a four-mode framework that gives leaders and their teams a real working vocabulary for that shift. You'll hear why a study of 450 people found that managers consistently scored lower than individual contributors on AI collaboration quality — and what that means for how you're modeling behavior on your own team. You'll also hear why workers in their fifties outperformed workers in their twenties, and what that data suggests about the habits we need to build deliberately. Geoff also introduces a three-part measurement system — Results, Relationship, and Resilience — that gives mid-market leaders a practical way to assess whether their AI investment is actually paying off beyond license counts and time-saved metrics. Geoff Gibbins is the founder of Human Machines and the author of Critical Intelligence, a book on strengthening human thinking in the age of AI. He previously served as a partner at Accenture and has worked with organizations including Walmart, Nestlé, Coca-Cola, and Vanguard. This episode gives you a concrete framework for evaluating and improving how your organization actually collaborates with AI — and three specific moves you can make starting Monday. AI For the C Suite™ podcast keeps C-Suite leaders informed and engaged in the world of AI for business. If you're a CEO, President, Owner, or C-suite leader looking to understand how AI will impact your organization, you've found the right podcast. Generative AI is the most disruptive General Purpose Technology we have seen in the last 45 years. It holds tremendous promise when leveraged properly and tremendous peril for those who disregard its existence. AI for the C-Suite™ is a continuous learning and application experience that exists to unite, elevate, and equip leaders to navigate the Exponential Age. Watch the full episode: https://youtu.be/qeQ-ImaG-dI Join the AI for the C Suite community today: https://aiforthecsuite.com/ #chadharvey #aiforthecsuite #aic

    1h 6m
  7. Apr 27

    The Extended Cognition Layer: Why Your AI Posture Matters More Than Your Prompts | AI For The C-Suite EP 61

    Most executives using AI today have a posture problem. They treat the tool like an Oracle, a search engine, or a writing assistant. All three postures have you standing outside the tool, trading instructions over a wall. None of them are getting the job done. In this episode, Chad unpacks the two commitments that define a working philosophy for using AI well. The first: AI is an extended cognition layer - an external component of your own thinking apparatus, not a source of answers but an instrument for better thinking. The second: you retain judgment. Every substantive decision still sits with you, regardless of how confident the model sounds. Together, these commitments form a pairing. Extended cognition without retained judgment becomes abdication. Retained judgment without extended cognition means you're leaving most of the value on the table. Most executives violate one of the two. Chad also names a third element that determines whether the pairing works at all: humility at entry. The "just do it, give me what I want" posture leaks quality from every prompt you write. Chad shows you what to do instead, including one specific move you can practice tomorrow that inverts the default and sharpens your thinking before the AI touches any actual work. If you've been frustrated by generic AI outputs, or if you've noticed your team starting to co-pilot its way through strategic work without enough critical examination, this episode gives you a framework for getting both the speed and the rigor. The tools aren't the problem. The posture is. AI For the C Suite™ keeps C-Suite leaders informed and engaged in the world of AI for business. If you're a CEO, President, Owner, or C-suite leader looking to understand how AI will impact your organization, you've found the right podcast.  Join the AI for the C Suite community today: https://aiforthecsuite.com/ #chadharvey #aiforthecsuite #aic

    12 min
  8. Apr 20

    Ondar Tarlow | AI Strategy Isn’t About Tools It’s About Workflow | AI For The C Suite EP 60

    Most organizations in regulated industries aren't slow on AI because of compliance. They're slow because no one has decided to be brave enough to move. In this episode, Chad sits down with Ondar Tarlow — a marketing executive who led AI adoption inside financial services organizations before most CMOs were willing to have the conversation. Ondar's team deployed propensity modeling and machine learning to identify the next best product for existing customers, drove a 5x improvement in campaign performance, and cut production time by 75% using generative AI tools layered into their creative workflow. The conversation goes well beyond marketing tactics. Ondar makes the case that AI should never be compartmentalized inside IT — or any single department — and walks through a practical framework for how middle market leaders can get started: map the workflow first, identify high-leverage use cases, and treat AI as an assistant that helps your team do more in less time, not a replacement for the people already doing the work. You'll also hear Ondar and Chad dig into what it actually looks like to navigate the tension between moving fast and managing compliance risk in a regulated environment — and why the leaders who manage that tension best are the ones willing to align marketing, legal, and risk teams around a shared strategy before they start testing. Ondar Tarlow is a CMO and consultant with more than 20 years of experience in financial services, motorsports, and lifestyle brands. His hands-on experience with AI adoption in highly regulated environments makes his perspective directly applicable for middle market leaders who are ready to move past the conversation and into action. Walk away from this episode with a clearer starting point for mapping AI into your existing workflows — and a sharper sense of what's actually holding your organization back. Watch the full episode: youtu.be/VOyAn_BX3Qw Connect with Ondar: ondartarlow.org

    1h 1m

Ratings & Reviews

5
out of 5
4 Ratings

About

AI For the C Suite with Chad Harvey™ interviews industry expert guests to keep you informed and entertained in the world of AI for Business. If you’re a C Suite member looking to learn more about how AI will impact your business, you’ve found the right podcast. Generative AI is the most disruptive General Purpose Technology we have seen in the last 45 years. It holds tremendous promise when leveraged properly and tremendous peril for those that disregard its existence. AI for the C-Suite with Chad Harvey™ is a continuous learning and application experience which exists to unite, elevate and equip CEO’s, Presidents, Owners and C-suite leaders to navigate the Exponential Age.

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