Marketing Case Bootcamp

Marketing Case Bootcamp

Marketing Case Bootcamp Podcast squeezes real‑world cases, cutting‑edge marketing‑tech updates, and the week’s biggest industry news into punchy, coffee‑chat episodes. We spot the business glitch, sketch a smart plan, showcase the tools shaping tomorrow, and turn insight into clicks and cash. Perfect for commute learning, interview prep, or sparking next‑level ideas—hit play, stay current, and start solving.

  1. 1d ago

    Lead Scoring | Why One Number Sends Reps After the Wrong Leads

    Most lead scoring models hand sales a single 0-to-100 number that is secretly answering two different questions at once: is this the right kind of buyer, and are they ready to buy now. This episode unpacks why that single score quietly misroutes your reps — sending them after a college student poking around the pricing page instead of a perfect-fit VP who went quiet — and walks through the fit-versus-intent framework that fixes it. The whole thing runs on a worked B2B SaaS example: 1,000 marketing leads a month against a five-rep SDR team that can only seriously work about 300 of them. What we cover: Why behavioral points (pricing-page visits, demo views, repeat sessions) compound while firmographic fit points stay capped — and how that skews the top of every single-score listBuilding the fit score from two years of closed-won data, weighted for which accounts retain, not just which ones signWhy intent is perishable — scoring behavioral signals on a decay curve so a 60-day-old pricing visit stops counting as "hot"The fit-vs-intent 2x2 and its four quadrants: Priority, Nurture, Triage, and Hold — and the play for eachThe SDR-capacity math: how a single-score model burns roughly 210 conversations a month on a pool that closes at 1%The reallocation — working 130 routed leads instead of 300, with the deal count holding and half the rep capacity freedTwo changes to make this week: gate intent behind a real fit floor, and add decay to every behavioral signalClosing question we leave you with: if you split your current leads into this two-by-two grid today, how many of your sales team's hours are being burned chasing fake intent in the trap quadrant? Go to marketingcasebootcamp.com for hands-on case simulation practice on this exact business problem — build the routing rules and capacity math the way you would on the job. If this one helped, share with other marketer folks.

    18 min
  2. May 22

    Google Marketing Live 2026 | The Year Execution Moved to Gemini

    Google held Marketing Live 2026, and under the product news there was a single through-line: the parts of a marketer's job that used to be done by hand — writing the ad, picking the keyword, building the lead form, reading the report — are being handed to Gemini. This episode walks the five shifts that follow from that change, who is actually writing the words your customers read now, and where Google's own headline numbers deserve a skeptical read. What we cover: Why AI Mode (1B+ monthly users) and AI Overviews (2.5B+) change what you optimize for — the shape of the query, not the rankingAds that became answers: Conversational Discovery, Highlighted Answers, AI-Powered Shopping, and a Business Agent for Leads — all composed by GeminiUniversal Commerce Protocol and the Universal Cart: agentic checkout with Nike, Sephora, Target, Walmart, and Wayfair across a 60-billion-listing Shopping GraphGemini in the back office: Ask Advisor across Ads/Analytics/Merchant Center, Asset Studio, Meridian moving into Analytics 360, and Qualified Future ConversionsYouTube as a performance engine: Shorts incrementality (45% not on TikTok, 65% not on Reels), Demand Gen product feeds, and Ask YouTubeWhere to keep your skeptic hat on: $6 back per $1, +15% conversions, 82% of discovery journeys — Google's own marketing mathThe one concrete move this week: run a real high-intent query in AI Mode and read how Gemini describes your brandClosing question we leave you with: As AI-native search and agentic commerce become the default standard, what happens to the challenger brands and the new startups that don't have massive feeds of historical data to train these AI agents? How do you break into an AI's consideration set when the machine already thinks it knows the best answer? Go to marketingcasebootcamp.com to get hands-on case simulation practice on the exact decisions behind these AI shifts — you learn this by making the calls, not just hearing the theory. And please share this breakdown with other marketer folks so they can build their quantitative judgment too. Read the full written blog on Marketing Case Bootcamp. Read the announcements on the Google Ads & Commerce blog.

    21 min
  3. May 19

    First 90 Days as a Marketing Hire | The Diagnose, Build, Ship Playbook

    The marketers who get promoted within their first 18 months don't ship a flagship campaign in month one — they spend 30 days listening, 30 days building one thing, and 30 days shipping one named result. This episode unpacks the diagnose-build-ship playbook for the first 90 days as a new marketing hire, with concrete deliverables at each checkpoint: the day-30 audit memo, the day-60 experiment, and the day-90 result memo with a CFO-recognized number on it. It also doubles as an interview framework — a question you can bring to your final round to find out whether the company has actually thought about your role. What we cover: Why the dashboard you walk into on day one is lying to you — and why your week-four campaign will land on top of that liePhase 1 (days 1-30): the three diagnose moves — reading four quarters of internal reports, the 30-minute adjacent-team conversations, and auditing one number end-to-endThe day-30 memo as both a deliverable AND your protection if the role doesn't work outPhase 2 (days 31-60): how to pick the ONE thing — small enough to finish, tied to a CFO-recognized metric, testing a broken assumption from your diagnose memoWhy writing down your test design and success threshold BEFORE the data comes in protects you from goalpost-movingPhase 3 (days 61-90): the result memo with the number front and center, the cross-functional sponsor, and the reversible-rollout tripwireHow to use this same framework in your final-round interview to evaluate whether the role is actually right for youThree things to do this week — pick the audit number, schedule the five adjacent-team conversations, block out four Fridays for memo-writingClosing question we leave you with: if you're already in your first 90 days, what's the one number on your dashboard you'd most want to be able to defend — and have you started the audit yet? Go to marketingcasebootcamp.com for hands-on case simulation practice on this exact career scenario — work through real first-90-days decision artifacts the way you'd build them on the job. If this one helped, share your journey with other marketer folks.

    20 min
  4. Apr 30

    Performance Marketing Incrementality | Behind Airbnb's $1B Paid Media Budget Cut

    In Q2 2020, Brian Chesky walked into a room of Airbnb marketing leaders and told them to turn off paid marketing — not pause, turn off. Total marketing spend dropped from $1.62B in 2019 to $545M in 2020, and by Q4 91% of Airbnb's traffic was direct or unpaid. The performance team's worst fear never showed up. This episode unpacks what Chesky was actually testing — brand-search cannibalization, not "brand vs. performance" — and why the math on incremental paid lift gets brutal once your direct-traffic share crosses 70%. What we cover: The real question behind the cut: how much paid-attributed traffic would have come anywayBrand-search cannibalization — why it can absorb 60–80% of paid-search budget without anyone noticingThe three numbers from Airbnb's S-1 that made the call obvious: 90% direct/unpaid floor, $1.08B spend cut, 22% YoY Q4 2020 revenue growthWhy "incremental ROAS" on last-touch attribution is a vanity number, not an incrementality numberA three-question framework any marketer can run on their own paid budget — direct-traffic share, holdout-test discipline, six-week paid-off survivabilityThree moves you can make this week: brand-vs-non-brand split, one-week branded-search holdout, taking the result to the CFO before the CMOWhy the Airbnb lesson isn't "cut performance" — it's that brand strength sets a ceiling on how much incremental work paid can ever doClosing question we leave you with: if your CFO ran the same incrementality test on your paid budget tomorrow, how much of your spend would survive the room? Go to marketingcasebootcamp.com for hands-on case simulation practice on this exact business problem — pull a brand-vs-non-brand split, design a holdout, and pressure-test your own paid-search budget the way Chesky pressure-tested Airbnb's. If this one helped, share with other marketer folks. Read the full written case on Marketing Case Bootcamp.

    21 min
  5. Apr 23

    Google AI Max Migration | Behind the September DSA Sunset

    Google's AI Max moved out of beta on April 15, 2026, which starts the countdown to the September forced migration off Dynamic Search Ads. This episode unpacks what intent-based auctions actually change under the hood — DSA, Automatically Created Assets, and campaign-level broad match all replaced in one motion — why voluntary early migration is the correct call, and how to run a clean pilot before Q4 forces your paid team to learn a new auction model during the worst quarter of the year. Microsoft announced a parallel "agentic web" AI Max equivalent on April 21, so this isn't a Google-only shift; it's the leading edge of paid search moving from keyword-specified to outcome-specified across every major platform. What we cover: The three campaign primitives AI Max replaces in one motion — Dynamic Search Ads, Automatically Created Assets (ACA), and campaign-level broad match• Intent-based vs. keyword-based auctions: why Google now reads query, landing page, and creative as one bundle and ranks by predicted conversionGoogle's headline 7% conversion / conversion-value lift claim and how to actually read itWhy September is the wrong time to learn a new auction — the "Q4 budgets already committed" trapThe 5-item migration QA checklist: baseline the legacy campaign, start with a non-hero campaign, write text guidelines before flipping, rebuild reporting around query-level data, and set a 14-day no-touch window after launchText guidelines as the new control surface — how to write brand rules the AI will actually respect (e.g. banning "cheap" or "discount" in generated headlines)Microsoft's parallel "agentic web" AI Max equivalent and what the platform convergence means for search marketersThe skill-stack rebuild: shifting from bid-manager to AI-manager — writing text guidelines, curating landing pages, and reading query-level + cross-headline reports Read the full written case on Marketing Case Bootcamp. Read the original Digiday coverage of the AI Max GA announcement.

    11 min
  6. Apr 22

    Retail Media Incrementality | Behind Sam's Club MAP's Rest-of-Market Report

    This episode unpacks Sam's Club MAP's new Rest-of-Market (ROM) analysis — a retail media incrementality study that actually names its control group, uses a deterministic identity layer (logged-in member IDs and SKU-level household matches), and reports an iROAS net of baseline rather than a blended gross. We walk through what that means, why that combination is rare, and how to use it as a test against every other RMN you're buying from — Walmart Connect, Kroger Precision, Target Roundel, and the rest. What we cover: What incrementality actually is — the one-line subtraction (iROAS = (revenue with ads − revenue without ads) / ad spend), and why constructing an honest control group is the hard part, not the mathWhy last-touch ROAS has survived a decade of known-misleading-ness — the quiet incentive alignment between platforms, brand teams, and finance leads that keeps the fiction in placeWhat Sam's Club's MAP and ROM report do differently — deterministic member IDs as the identity spine, SKU-level matches extending to partner retailers, real members on both sides of the subtraction instead of modeled audiences or look-alikesThe three-question framework for pressure-testing any RMN's incrementality claims — (1) is there a real, observable control group? (2) is the identity join deterministic or probabilistic? (3) is the reported iROAS net of baseline or gross?What typical vendor answers look like — and what "we estimate baseline using predictive algorithms" really tells youHow gross ROAS and net iROAS usually diverge — why a 5x gross often collapses to a 1.2x–1.5x net, and why that range is often still worth buying but a different budget conversationThe disclosure curve from here — why Kroger Precision, Target Roundel, and Walmart Connect all have CFO customers asking the same questions, and what the budget reallocation across a year probably looks likeA practical move for this week — how to pressure-test one of your own retail media contracts, and why the stalling pattern is itself the answerClosing question we leave you with: how will true retail media incrementality change the way you plan your next campaign? --- Want to practice this exact business problem? Go to marketingcasebootcamp.com for hands-on case simulation practice on this exact business problem — so when you're in the boardroom, you know what to ask and how to spot the accounting fictions. If this episode was useful, share it with other marketer folks — especially anyone still trusting a last-touch dashboard to dictate their budget. Read the full written case on Marketing Case Bootcamp. Read the original Sam's Club MAP announcement on Walmart Corporate.

    20 min

Ratings & Reviews

5
out of 5
7 Ratings

About

Marketing Case Bootcamp Podcast squeezes real‑world cases, cutting‑edge marketing‑tech updates, and the week’s biggest industry news into punchy, coffee‑chat episodes. We spot the business glitch, sketch a smart plan, showcase the tools shaping tomorrow, and turn insight into clicks and cash. Perfect for commute learning, interview prep, or sparking next‑level ideas—hit play, stay current, and start solving.

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